def build_longitudinal_consensus(labels_dir_1, labels_dir_2, result_dir, recompute=True): # create result dir utils.mkdir(result_dir) # list all segmentations path_labels_1 = utils.list_files(labels_dir_1) path_labels_2 = utils.list_files(labels_dir_2) for path_lab_1, path_lab_2 in zip(path_labels_1, path_labels_2): # check if result is already saved path_result = os.path.join(result_dir, os.path.basename(path_lab_1)) if (not os.path.isfile(path_result)) | recompute: # load volumes lab_1, aff, h = utils.load_volume(path_lab_1, im_only=False) lab_2 = utils.load_volume(path_lab_2) # compute and save consensus dist_masp_1 = edit_volumes.compute_distance_map(lab_1, crop_margin=20) dist_masp_2 = edit_volumes.compute_distance_map(lab_2, crop_margin=20) consensus = (np.mean(np.stack([dist_masp_1, dist_masp_2], axis=-1), axis=-1) > 0) * 1 utils.save_volume(consensus, aff, h, path_result)
def dice_evaluation(gt_dir, seg_dir, path_label_list, path_result_dice_array): """Computes Dice scores for all labels contained in path_segmentation_label_list. Files in gt_folder and seg_folder are matched by sorting order. :param gt_dir: folder containing ground truth files. :param seg_dir: folder containing evaluation files. :param path_label_list: path of numpy vector containing all labels to compute the Dice for. :param path_result_dice_array: path where the resulting Dice will be writen as numpy array. :return: numpy array containing all dice scores (labels in rows, subjects in columns). """ # create result folder if not os.path.exists(os.path.dirname(path_result_dice_array)): os.mkdir(os.path.dirname(path_result_dice_array)) # get list label maps to compare path_gt_labels = utils.list_images_in_folder(gt_dir) path_segs = utils.list_images_in_folder(seg_dir) if len(path_gt_labels) != len(path_segs): print('different number of files in data folders, had {} and {}'.format(len(path_gt_labels), len(path_segs))) # load labels list label_list, neutral_labels = utils.get_list_labels(label_list=path_label_list, FS_sort=True, labels_dir=gt_dir) label_list_sorted = np.sort(label_list) # initialise result matrix dice_coefs = np.zeros((label_list.shape[0], len(path_segs))) # loop over segmentations for idx, (path_gt, path_seg) in enumerate(zip(path_gt_labels, path_segs)): utils.print_loop_info(idx, len(path_segs), 10) # load gt labels and segmentation gt_labels = utils.load_volume(path_gt, dtype='int') seg = utils.load_volume(path_seg, dtype='int') # crop images gt_labels, cropping = edit_volumes.crop_volume_around_region(gt_labels, margin=10) seg = edit_volumes.crop_volume_with_idx(seg, cropping) # compute dice scores tmp_dice = fast_dice(gt_labels, seg, label_list_sorted) dice_coefs[:, idx] = tmp_dice[np.searchsorted(label_list_sorted, label_list)] # write dice results np.save(path_result_dice_array, dice_coefs) return dice_coefs
def dilate_lesions(labels_dir, result_dir, recompute=True): utils.mkdir(result_dir) path_labels = utils.list_images_in_folder(labels_dir) for path_label in path_labels: path_result_label = os.path.join(result_dir, os.path.basename(path_label)) if (not os.path.isfile(path_result_label)) | recompute: label, aff, h = utils.load_volume(path_label, im_only=False) # define lesion, WM, and LV masks WM = (label == 2) | (label == 41) lesion = label == 77 LV_and_lesion = (label == 4) | lesion # morphological operations to bridge the gaps between lesions and LV morph_struct = utils.build_binary_structure(2, len(WM.shape)) LV_and_lesion = binary_dilation(LV_and_lesion, morph_struct) LV_and_lesion = binary_erosion(LV_and_lesion, morph_struct) lesion = (LV_and_lesion & WM) | lesion label[lesion] = 77 # save new label maps utils.save_volume(label, aff, h, path_result_label)
def paste_lesions_on_buckner(lesion_dir, buckner_dir, result_dir, dilate=2, recompute=False): path_lesions = utils.list_images_in_folder(lesion_dir) path_buckners = utils.list_images_in_folder(buckner_dir) utils.mkdir(result_dir) # loop over buckner label maps loop_info = utils.LoopInfo(len(path_buckners), 1, 'processing', True) for idx_buckner, path_buckner in enumerate(path_buckners): loop_info.update(idx_buckner) buckner_name = os.path.basename(path_buckner).replace( '_seg', '').replace('.nii.gz', '') buckner = utils.load_volume(path_buckner) WM = (buckner == 2) | (buckner == 7) | (buckner == 16) | ( buckner == 41) | (buckner == 46) # loop over challenge data for path_lesion in path_lesions: lesion_name = os.path.basename(path_lesion).replace( '.samseg_and_lesions.nii.gz', '') path_result = os.path.join( result_dir, buckner_name + '_' + lesion_name + '.nii.gz') if (not os.path.isfile(path_result)) | recompute: lesion = utils.load_volume(path_lesion) assert lesion.shape == buckner.shape, 'lesions should have same shape as buckner labels' # define lesion, WM, and LV masks lesion = (lesion == 77) & WM LV_and_lesion = (buckner == 4) | lesion # morphological operations to bridge the gaps between lesions and LV morph_struct = utils.build_binary_structure( dilate, len(lesion.shape)) lesion = binary_dilation(LV_and_lesion, morph_struct) lesion = binary_erosion(lesion, morph_struct) lesion = lesion & WM buckner_lesions = np.where(lesion, 77, buckner) # save map utils.save_volume(buckner_lesions, None, None, path_result)
def cross_validate_posteriors_threshold(list_seg_dir, list_posteriors_dir, list_gt_dir, list_thresholds, recompute=True): for fold_idx, (seg_dir, posteriors_dir, gt_dir) in enumerate( zip(list_seg_dir, list_posteriors_dir, list_gt_dir)): path_dice = os.path.join(os.path.dirname(seg_dir), 'dice_lesions_for_thresholds.npy') path_dice_means = os.path.join( os.path.dirname(seg_dir), 'dice_lesions_means_for_thresholds.npy') if (not os.path.isfile(path_dice)) | ( not os.path.isfile(path_dice_means)) | recompute: path_segs = [path for path in utils.list_images_in_folder(seg_dir)] path_posteriors = [ path for path in utils.list_images_in_folder(posteriors_dir) ] path_gts = [path for path in utils.list_images_in_folder(gt_dir)] dice = np.zeros((len(list_thresholds), len(path_gts))) for subject_idx, (path_seg, path_post, path_gt) in enumerate( zip(path_segs, path_posteriors, path_gts)): seg = utils.load_volume(path_seg) posteriors = utils.load_volume(path_post) gt = utils.load_volume(path_gt) seg[seg == 77] = 2 for idx, threshold in enumerate(list_thresholds): tmp_seg = deepcopy(seg) lesion_mask = posteriors > threshold tmp_seg[lesion_mask] = 77 dice[idx, subject_idx] = fast_dice(gt, tmp_seg, [77]) np.save(path_dice, dice) np.save(path_dice_means, np.mean(dice, axis=1)) dice_means = np.load(path_dice_means) max_threshold = list_thresholds[np.argmax(dice_means)] print('max threshold for fold {0}: {1:.2f}'.format( fold_idx, max_threshold))
def estimate_t2_cropping(image_dir, result_dir=None, dilation=5): """This function takes all the hippocampus images (with 2 channels) within the specified directory, and estimates the cropping dimensions around the hippocampus in the t2 channel. It returns the mean and sts deviation for the minimal and maximal croppings, proportional to image size. :param image_dir: path of the folder containing hippocampus images :param result_dir: if not None, path of the folder where to write the computed statistics. :param dilation: dilation coefficient used to extract full brain mask. Default is 5. :returns t2_cropping_stats: numpy vector of size 4 [mean min crop, std min crop, mean max crop, std max crop] """ # create result dir if result_dir is not None: if not os.path.exists(result_dir): os.mkdir(result_dir) # loop through images list_image_paths = utils.list_images_in_folder(image_dir) max_cropping_proportions = np.zeros(len(list_image_paths)) min_cropping_proportions = np.zeros(len(list_image_paths)) for im_idx, image_path in enumerate(list_image_paths): utils.print_loop_info(im_idx, len(list_image_paths), 10) # load t2 channel im = utils.load_volume(image_path) t2 = im[..., 1] shape = t2.shape hdim = int(np.argmax(shape)) # mask image _, mask = edit_volumes.mask_volume(t2, threshold=0, dilate=dilation, return_mask=True) # find cropping indices indices = np.nonzero(mask)[hdim] min_cropping_proportions[im_idx] = np.maximum( np.min(indices) + int(dilation / 2), 0) / shape[hdim] max_cropping_proportions[im_idx] = np.minimum( np.max(indices) - int(dilation / 2), shape[hdim]) / shape[hdim] # compute and save stats t2_cropping_stats = np.array([ np.mean(min_cropping_proportions), np.std(min_cropping_proportions), np.mean(max_cropping_proportions), np.std(max_cropping_proportions) ]) # save stats if necessary if result_dir is not None: np.save(os.path.join(result_dir, 't2_cropping_stats.npy'), t2_cropping_stats) return t2_cropping_stats
def build_model_inputs(path_images, path_label_maps, batchsize=1): # get label info _, _, n_dims, n_channels, _, _ = utils.get_volume_info(path_images[0]) # Generate! while True: # randomly pick as many images as batchsize indices = npr.randint(len(path_label_maps), size=batchsize) # initialise input lists list_images = list() list_label_maps = list() for idx in indices: # add image image = utils.load_volume(path_images[idx], aff_ref=np.eye(4)) if n_channels > 1: list_images.append(utils.add_axis(image, axis=0)) else: list_images.append(utils.add_axis(image, axis=[0, -1])) # add labels labels = utils.load_volume(path_label_maps[idx], dtype='int', aff_ref=np.eye(4)) list_label_maps.append(utils.add_axis(labels, axis=[0, -1])) # build list of inputs of augmentation model list_inputs = [list_images, list_label_maps] if batchsize > 1: # concatenate individual input types if batchsize > 1 list_inputs = [np.concatenate(item, 0) for item in list_inputs] else: list_inputs = [item[0] for item in list_inputs] yield list_inputs
def inter_rater_reproducibility_cross_val_exp(manual_seg_dir, ref_image_dir=None, recompute=True): # list subjects list_subjects = utils.list_subfolders(manual_seg_dir) # create result directories if ref_image_dir is not None: realigned_seg_dir = os.path.join(os.path.dirname(manual_seg_dir), 'registered_to_t1') list_ref_subjects = utils.list_images_in_folder(ref_image_dir) else: realigned_seg_dir = os.path.join(os.path.dirname(manual_seg_dir), 'realigned') list_ref_subjects = [None] * len(list_subjects) utils.mkdir(realigned_seg_dir) path_dice = os.path.join(realigned_seg_dir, 'dice.npy') # loop over subjects dice = list() if (not os.path.isfile(path_dice)) | recompute: for subject_dir, ref_subject in zip(list_subjects, list_ref_subjects): # align all images to first image if ref_subject is not None: ref_image = ref_subject else: ref_image = utils.list_images_in_folder(subject_dir)[0] result_dir = os.path.join(realigned_seg_dir, os.path.basename(subject_dir)) edit_volumes.mri_convert_images_in_dir(subject_dir, result_dir, interpolation='nearest', reference_dir=ref_image, same_reference=True, recompute=recompute) # load all volumes and compute distance maps list_segs = [ utils.load_volume(path) for path in utils.list_images_in_folder(result_dir) ] list_distance_maps = [ edit_volumes.compute_distance_map(labels, crop_margin=20) for labels in list_segs ] distance_maps = np.stack(list_distance_maps, axis=-1) n_raters = len(list_segs) # compare each segmentation to the consensus of all others tmp_dice = list() for i, seg in enumerate(list_segs): tmp_distance_maps = distance_maps[..., np.arange(n_raters) != i] tmp_distance_maps = (np.mean(tmp_distance_maps, axis=-1) > 0) * 1 seg = (seg > 0) * 1 tmp_dice.append(2 * np.sum(tmp_distance_maps * seg) / (np.sum(tmp_distance_maps) + np.sum(seg))) dice.append(tmp_dice) np.save(path_dice, np.array(dice))
def prepare_hippo_training_atlases(labels_dir, result_dir, image_dir=None, image_result_dir=None, smooth=True, crop_margin=50, recompute=True): """This function prepares training label maps from CobraLab. It first crops each atlas around the right and left hippocampi, with a margin. It then equalises the shape of these atlases by croppping them to the size of the smallest hippocampus. Finally it realigns the obtained atlases to FS orientation axes. :param labels_dir: path of directory with label maps to prepare :param result_dir: path of directory where prepared atlases will be writen :param image_dir: (optional) path of directory with images corresponding to the label maps to prepare. This can be sued to prepare a dataset of real images for supervised training. :param image_result_dir: (optional) path of directory where images corresponding to prepared atlases will be writen :param smooth: (optional) whether to smooth the final cropped label maps :param crop_margin: (optional) margin to add around hippocampi when cropping :param recompute: (optional) whether to recompute result files even if they already exists""" # create results dir if not os.path.exists(result_dir): os.mkdir(result_dir) tmp_result_dir = os.path.join(result_dir, 'first_cropping') if not os.path.exists(tmp_result_dir): os.mkdir(tmp_result_dir) if image_dir is not None: assert image_result_dir is not None, 'image_result_dir should not be None if image_dir is specified' if not os.path.exists(image_result_dir): os.mkdir(image_result_dir) tmp_image_result_dir = os.path.join(image_result_dir, 'first_cropping') if not os.path.exists(tmp_image_result_dir): os.mkdir(tmp_image_result_dir) else: tmp_image_result_dir = None # list labels and images labels_paths = utils.list_images_in_folder(labels_dir) if image_dir is not None: path_images = utils.list_images_in_folder(image_dir) else: path_images = [None] * len(labels_paths) # crop all atlases around hippo print('\ncropping around hippo') shape_array = np.zeros((len(labels_paths)*2, 3)) for idx, (path_label, path_image) in enumerate(zip(labels_paths, path_images)): utils.print_loop_info(idx, len(labels_paths), 1) # crop left hippo first path_label_first_crop_l = os.path.join(tmp_result_dir, os.path.basename(path_label).replace('.nii', '_left.nii')) lab, aff, h = utils.load_volume(path_label, im_only=False) lab_l, croppping_idx, aff_l = edit_volumes.crop_volume_around_region(lab, crop_margin, list(range(20101, 20109)), aff=aff) if (not os.path.exists(path_label_first_crop_l)) | recompute: utils.save_volume(lab_l, aff_l, h, path_label_first_crop_l) else: lab_l = utils.load_volume(path_label_first_crop_l) if path_image is not None: path_image_first_crop_l = os.path.join(tmp_image_result_dir, os.path.basename(path_image).replace('.nii', '_left.nii')) if (not os.path.exists(path_image_first_crop_l)) | recompute: im, aff, h = utils.load_volume(path_image, im_only=False) im, aff = edit_volumes.crop_volume_with_idx(im, croppping_idx, aff) utils.save_volume(im, aff, h, path_image_first_crop_l) shape_array[2*idx, :] = np.array(lab_l.shape) # crop right hippo and flip them path_label_first_crop_r = os.path.join(tmp_result_dir, os.path.basename(path_label).replace('.nii', '_right_flipped.nii')) lab, aff, h = utils.load_volume(path_label, im_only=False) lab_r, croppping_idx, aff_r = edit_volumes.crop_volume_around_region(lab, crop_margin, list(range(20001, 20009)), aff=aff) if (not os.path.exists(path_label_first_crop_r)) | recompute: lab_r = edit_volumes.flip_volume(lab_r, direction='rl', aff=aff_r) utils.save_volume(lab_r, aff_r, h, path_label_first_crop_r) else: lab_r = utils.load_volume(path_label_first_crop_r) if path_image is not None: path_image_first_crop_r = os.path.join(tmp_image_result_dir, os.path.basename(path_image).replace('.nii', '_right.nii')) if (not os.path.exists(path_image_first_crop_r)) | recompute: im, aff, h = utils.load_volume(path_image, im_only=False) im, aff = edit_volumes.crop_volume_with_idx(im, croppping_idx, aff) im = edit_volumes.flip_volume(im, direction='rl', aff=aff) utils.save_volume(im, aff, h, path_image_first_crop_r) shape_array[2*idx+1, :] = np.array(lab_r.shape) # list croppped files path_labels_first_cropped = utils.list_images_in_folder(tmp_result_dir) if tmp_image_result_dir is not None: path_images_first_cropped = utils.list_images_in_folder(tmp_image_result_dir) else: path_images_first_cropped = [None] * len(path_labels_first_cropped) # crop all label maps to same size print('\nequalising shapes') new_shape = np.min(shape_array, axis=0).astype('int32') for i, (path_label, path_image) in enumerate(zip(path_labels_first_cropped, path_images_first_cropped)): utils.print_loop_info(i, len(path_labels_first_cropped), 1) # get cropping indices path_lab_cropped = os.path.join(result_dir, os.path.basename(path_label)) lab, aff, h = utils.load_volume(path_label, im_only=False) lab_shape = lab.shape min_cropping = np.array([np.maximum(int((lab_shape[i]-new_shape[i])/2), 0) for i in range(3)]) max_cropping = np.array([min_cropping[i] + new_shape[i] for i in range(3)]) # crop labels and realign on adni format if (not os.path.exists(path_lab_cropped)) | recompute: lab, aff = edit_volumes.crop_volume_with_idx(lab, np.concatenate([min_cropping, max_cropping]), aff) # realign on adni format lab = np.flip(lab, axis=2) aff[0:3, 0:3] = np.array([[-0.6, 0, 0], [0, 0, -0.6], [0, -0.6, 0]]) utils.save_volume(lab, aff, h, path_lab_cropped) # crop image and realign on adni format if path_image is not None: path_im_cropped = os.path.join(image_result_dir, os.path.basename(path_image)) if (not os.path.exists(path_im_cropped)) | recompute: im, aff, h = utils.load_volume(path_image, im_only=False) im, aff = edit_volumes.crop_volume_with_idx(im, np.concatenate([min_cropping, max_cropping]), aff) im = np.flip(im, axis=2) aff[0:3, 0:3] = np.array([[-0.6, 0, 0], [0, 0, -0.6], [0, -0.6, 0]]) im = edit_volumes.mask_volume(im, lab) utils.save_volume(im, aff, h, path_im_cropped) # correct all labels to left values print('\ncorrecting labels') list_incorrect_labels = [77, 80, 251, 252, 253, 254, 255, 29, 41, 42, 43, 44, 46, 47, 49, 50, 51, 52, 54, 58, 60, 61, 62, 63, 7012, 20001, 20002, 20004, 20005, 20006, 20007, 20008] list_correct_labels = [2, 3, 2, 2, 2, 2, 2, 2, 2, 3, 4, 5, 7, 8, 10, 11, 12, 13, 18, 26, 28, 2, 30, 31, 20108, 20101, 20102, 20104, 20105, 20106, 20107, 20108] edit_volumes.correct_labels_in_dir(result_dir, list_incorrect_labels, list_correct_labels, result_dir) # smooth labels if smooth: print('\nsmoothing labels') edit_volumes.smooth_labels_in_dir(result_dir, result_dir)
def preprocess_adni_hippo(path_t1, path_t2, path_aseg, result_dir, target_res, padding_margin=85, remove=False, path_freesurfer='/usr/local/freesurfer/', verbose=True, recompute=True): """This function builds a T1+T2 multimodal image from the ADNI dataset. It first rescales intensities of each channel between 0 and 255. It then resamples the T2 image (which are 0.4*0.4*2.0 resolution) to target resolution. The obtained T2 is then padded in all directions by the padding_margin param (typically large 85). The T1 and aseg are then resampled like the T2 using mri_convert. Now that the T1, T2 and asegs are aligned and at the same resolution, we crop them around the right and left hippo. Finally, the T1 and T2 are concatenated into one single multimodal image. :param path_t1: path input T1 (typically at 1mm isotropic) :param path_t2: path input T2 (typically cropped around the hippo in sagittal axis, 0.4x0.4x2.0) :param path_aseg: path input segmentation (typically at 1mm isotropic) :param result_dir: path of directory where prepared images and labels will be writen. :param target_res: resolution at which to resample the label maps, and the images. Can be a number (isotropic resolution), a sequence, or a 1d numpy array. :param padding_margin: (optional) margin to add around hippocampi when cropping :param remove: (optional) whether to delete temporary files. Default is True. :param path_freesurfer: (optional) path of FreeSurfer home, to use mri_convert :param verbose: (optional) whether to print out mri_convert output when resampling images :param recompute: (optional) whether to recompute result files even if they already exists """ # create results dir if not os.path.isdir(result_dir): os.mkdir(result_dir) path_test_im_right = os.path.join(result_dir, 'hippo_right.nii.gz') path_test_aseg_right = os.path.join(result_dir, 'hippo_right_aseg.nii.gz') path_test_im_left = os.path.join(result_dir, 'hippo_left.nii.gz') path_test_aseg_left = os.path.join(result_dir, 'hippo_left_aseg.nii.gz') if (not os.path.isfile(path_test_im_right)) | (not os.path.isfile(path_test_aseg_right)) | \ (not os.path.isfile(path_test_im_left)) | (not os.path.isfile(path_test_aseg_left)) | recompute: # set up FreeSurfer os.environ['FREESURFER_HOME'] = path_freesurfer os.system(os.path.join(path_freesurfer, 'SetUpFreeSurfer.sh')) mri_convert = os.path.join(path_freesurfer, 'bin/mri_convert.bin') # rescale T1 path_t1_rescaled = os.path.join(result_dir, 't1_rescaled.nii.gz') if (not os.path.isfile(path_t1_rescaled)) | recompute: im, aff, h = utils.load_volume(path_t1, im_only=False) im = edit_volumes.rescale_volume(im) utils.save_volume(im, aff, h, path_t1_rescaled) # rescale T2 path_t2_rescaled = os.path.join(result_dir, 't2_rescaled.nii.gz') if (not os.path.isfile(path_t2_rescaled)) | recompute: im, aff, h = utils.load_volume(path_t2, im_only=False) im = edit_volumes.rescale_volume(im) utils.save_volume(im, aff, h, path_t2_rescaled) # resample T2 to target res path_t2_resampled = os.path.join(result_dir, 't2_rescaled_resampled.nii.gz') if (not os.path.isfile(path_t2_resampled)) | recompute: str_res = ' '.join([str(r) for r in utils.reformat_to_list(target_res, length=3)]) cmd = mri_convert + ' ' + path_t2_rescaled + ' ' + path_t2_resampled + ' --voxsize ' + str_res cmd += ' -odt float' if not verbose: cmd += ' >/dev/null 2>&1' _ = os.system(cmd) # pad T2 path_t2_padded = os.path.join(result_dir, 't2_rescaled_resampled_padded.nii.gz') if (not os.path.isfile(path_t2_padded)) | recompute: t2, aff, h = utils.load_volume(path_t2_resampled, im_only=False) t2_padded = np.pad(t2, padding_margin, 'constant') aff[:3, -1] = aff[:3, -1] - (aff[:3, :3] @ (padding_margin * np.ones((3, 1)))).T utils.save_volume(t2_padded, aff, h, path_t2_padded) # resample T1 and aseg accordingly path_t1_resampled = os.path.join(result_dir, 't1_rescaled_resampled.nii.gz') if (not os.path.isfile(path_t1_resampled)) | recompute: cmd = mri_convert + ' ' + path_t1_rescaled + ' ' + path_t1_resampled + ' -rl ' + path_t2_padded cmd += ' -odt float' if not verbose: cmd += ' >/dev/null 2>&1' _ = os.system(cmd) path_aseg_resampled = os.path.join(result_dir, 'aseg_resampled.nii.gz') if (not os.path.isfile(path_aseg_resampled)) | recompute: cmd = mri_convert + ' ' + path_aseg + ' ' + path_aseg_resampled + ' -rl ' + path_t2_padded cmd += ' -rt nearest -odt float' if not verbose: cmd += ' >/dev/null 2>&1' _ = os.system(cmd) # crop images and concatenate T1 and T2 for lab, side in zip([17, 53], ['left', 'right']): path_test_image = os.path.join(result_dir, 'hippo_{}.nii.gz'.format(side)) path_test_aseg = os.path.join(result_dir, 'hippo_{}_aseg.nii.gz'.format(side)) if (not os.path.isfile(path_test_image)) | (not os.path.isfile(path_test_aseg)) | recompute: aseg, aff, h = utils.load_volume(path_aseg_resampled, im_only=False) tmp_aseg, cropping, tmp_aff = edit_volumes.crop_volume_around_region(aseg, margin=30, masking_labels=lab, aff=aff) if side == 'right': tmp_aseg = edit_volumes.flip_volume(tmp_aseg, direction='rl', aff=tmp_aff) utils.save_volume(tmp_aseg, tmp_aff, h, path_test_aseg) if (not os.path.isfile(path_test_image)) | recompute: t1 = utils.load_volume(path_t1_resampled) t1 = edit_volumes.crop_volume_with_idx(t1, crop_idx=cropping) t1 = edit_volumes.mask_volume(t1, tmp_aseg, dilate=6, erode=5) t2 = utils.load_volume(path_t2_padded) t2 = edit_volumes.crop_volume_with_idx(t2, crop_idx=cropping) t2 = edit_volumes.mask_volume(t2, tmp_aseg, dilate=6, erode=5) if side == 'right': t1 = edit_volumes.flip_volume(t1, direction='rl', aff=tmp_aff) t2 = edit_volumes.flip_volume(t2, direction='rl', aff=tmp_aff) test_image = np.stack([t1, t2], axis=-1) utils.save_volume(test_image, tmp_aff, h, path_test_image) # remove unnecessary files if remove: list_files_to_remove = [path_t1_rescaled, path_t2_rescaled, path_t2_resampled, path_t2_padded, path_t1_resampled, path_aseg_resampled] for path in list_files_to_remove: os.remove(path)
def dice_evaluation(gt_dir, seg_dir, label_list, compute_distances=False, compute_score_whole_structure=False, path_dice=None, path_hausdorff=None, path_mean_distance=None, crop_margin_around_gt=10, recompute=True, verbose=True): """This function computes Dice scores between two sets of labels maps in gt_dir (ground truth) and seg_dir (typically predictions). Labels maps in both folders are matched by sorting order. :param gt_dir: path of directory with gt label maps :param seg_dir: path of directory with label maps to compare to gt_dir. Matched to gt label maps by sorting order. :param label_list: list of label values for which to compute evaluation metrics. Can be a sequence, a 1d numpy array, or the path to such array. :param compute_distances: (optional) whether to compute distances (Hausdorff and mean distance) between the surfaces of GT and predicted labels. Default is False. :param compute_score_whole_structure: (optional) whether to also compute the selected scores for the whole segmented structure (i.e. scores are computed for a single structure obtained by regrouping all non-zero values). If True, the resulting scores are added as an extra row to the result matrices. Default is False. :param path_dice: path where the resulting Dice will be writen as numpy array. Default is None, where the array is not saved. :param path_hausdorff: path where the resulting Hausdorff distances will be writen as numpy array (only if compute_distances is True). Default is None, where the array is not saved. :param path_mean_distance: path where the resulting mean distances will be writen as numpy array (only if compute_distances is True). Default is None, where the array is not saved. :param crop_margin_around_gt: (optional) margin by which to crop around the gt volumes, in order to copute the scores more efficiently. If None, no cropping is performed. :param recompute: (optional) whether to recompute the already existing results. Default is True. :param verbose: (optional) whether to print out info about the remaining number of cases. :return: numpy array containing all Dice scores (labels in rows, subjects in columns). Also returns numpy arrays with the same structures for Hausdorff and mean distances if compute_distances is True. """ # check whether to recompute compute_dice = not os.path.isfile(path_dice) if (path_dice is not None) else True if compute_distances: compute_hausdorff = not os.path.isfile(path_hausdorff) if ( path_hausdorff is not None) else True compute_mean_dist = not os.path.isfile(path_mean_distance) if ( path_mean_distance is not None) else True else: compute_hausdorff = compute_mean_dist = False if compute_dice | compute_hausdorff | compute_mean_dist | recompute: # get list label maps to compare path_gt_labels = utils.list_images_in_folder(gt_dir) path_segs = utils.list_images_in_folder(seg_dir) if len(path_gt_labels) != len(path_segs): print( 'gt and segmentation folders must have the same amount of label maps.' ) # load labels list label_list, _ = utils.get_list_labels(label_list=label_list, FS_sort=True, labels_dir=gt_dir) n_labels = len(label_list) # initialise result matrices if compute_score_whole_structure: max_dists = np.zeros((n_labels + 1, len(path_segs))) mean_dists = np.zeros((n_labels + 1, len(path_segs))) dice_coefs = np.zeros((n_labels + 1, len(path_segs))) else: max_dists = np.zeros((n_labels, len(path_segs))) mean_dists = np.zeros((n_labels, len(path_segs))) dice_coefs = np.zeros((n_labels, len(path_segs))) # loop over segmentations loop_info = utils.LoopInfo(len(path_segs), 10, 'evaluating') for idx, (path_gt, path_seg) in enumerate(zip(path_gt_labels, path_segs)): if verbose: loop_info.update(idx) # load gt labels and segmentation gt_labels = utils.load_volume(path_gt, dtype='int') seg = utils.load_volume(path_seg, dtype='int') # crop images if crop_margin_around_gt is not None: gt_labels, cropping = edit_volumes.crop_volume_around_region( gt_labels, margin=crop_margin_around_gt) seg = edit_volumes.crop_volume_with_idx(seg, cropping) # compute Dice scores dice_coefs[:n_labels, idx] = fast_dice(gt_labels, seg, label_list) # compute Dice scores for whole structures if compute_score_whole_structure: temp_gt = (gt_labels > 0) * 1 temp_seg = (seg > 0) * 1 dice_coefs[-1, idx] = dice(temp_gt, temp_seg) else: temp_gt = temp_seg = None # compute average and Hausdorff distances if compute_distances: # compute unique label values unique_gt_labels = np.unique(gt_labels) unique_seg_labels = np.unique(seg) # compute max/mean surface distances for all labels for index, label in enumerate(label_list): if (label in unique_gt_labels) & (label in unique_seg_labels): mask_gt = np.where(gt_labels == label, True, False) mask_seg = np.where(seg == label, True, False) max_dists[index, idx], mean_dists[index, idx] = surface_distances( mask_gt, mask_seg) else: max_dists[index, idx] = max(gt_labels.shape) mean_dists[index, idx] = max(gt_labels.shape) # compute max/mean distances for whole structure if compute_score_whole_structure: max_dists[-1, idx], mean_dists[-1, idx] = surface_distances( temp_gt, temp_seg) # write results if path_dice is not None: utils.mkdir(os.path.dirname(path_dice)) np.save(path_dice, dice_coefs) if compute_distances and path_hausdorff is not None: utils.mkdir(os.path.dirname(path_hausdorff)) np.save(path_hausdorff, max_dists) if compute_distances and path_mean_distance is not None: utils.mkdir(os.path.dirname(path_mean_distance)) np.save(path_mean_distance, mean_dists) else: dice_coefs = np.load(path_dice) if compute_distances: max_dists = np.load(path_hausdorff) mean_dists = np.load(path_mean_distance) else: max_dists = mean_dists = None if compute_distances: return dice_coefs, max_dists, mean_dists else: return dice_coefs, None, None
def dice_evaluation(gt_folder, seg_folder, path_segmentation_label_list, path_result_dice_array): """Computes Dice scores for all labels contained in path_segmentation_label_list. Files in gt_folder and seg_folder are matched by sorting order. :param gt_folder: folder containing ground truth files. :param seg_folder: folder containing evaluation files. :param path_segmentation_label_list: path of numpy vector containing all labels to compute the Dice for. :param path_result_dice_array: path where the resulting Dice will be writen as numpy array. :return: numpy array containing all dice scores (labels in rows, subjects in columns). """ # get list of automated and manual segmentations list_path_gt_labels = utils.list_images_in_folder(gt_folder) list_path_segs = utils.list_images_in_folder(seg_folder) if len(list_path_gt_labels) != len(list_path_segs): warnings.warn( 'both data folders should have the same length, had {} and {}'. format(len(list_path_gt_labels), len(list_path_segs))) # load labels list label_list, neutral_labels = utils.get_list_labels( label_list=path_segmentation_label_list, FS_sort=True, labels_dir=gt_folder) # create result folder if not os.path.exists(os.path.dirname(path_result_dice_array)): os.mkdir(os.path.dirname(path_result_dice_array)) # initialise result matrix dice_coefs = np.zeros((label_list.shape[0], len(list_path_segs))) # start analysis for im_idx, (path_gt, path_seg) in enumerate( zip(list_path_gt_labels, list_path_segs)): utils.print_loop_info(im_idx, len(list_path_segs), 10) # load gt labels and segmentation gt_labels = utils.load_volume(path_gt, dtype='int') seg = utils.load_volume(path_seg, dtype='int') n_dims = len(gt_labels.shape) # crop images gt_labels, cropping = edit_volumes.crop_volume_around_region(gt_labels, margin=10) if n_dims == 2: seg = seg[cropping[0]:cropping[2], cropping[1]:cropping[3]] elif n_dims == 3: seg = seg[cropping[0]:cropping[3], cropping[1]:cropping[4], cropping[2]:cropping[5]] else: raise Exception( 'cannot evaluate images with more than 3 dimensions') # extract list of unique labels label_list_sorted = np.sort(label_list) tmp_dice = fast_dice(gt_labels, seg, label_list_sorted) dice_coefs[:, im_idx] = tmp_dice[np.searchsorted(label_list_sorted, label_list)] # write dice results np.save(path_result_dice_array, dice_coefs) return dice_coefs
def build_model_input_generator(images_paths, labels_paths, n_channels, im_shape, scaling_range=None, rotation_range=None, shearing_range=None, nonlin_shape_fact=0.0625, nonlin_std_dev=3, batch_size=1): # Generate! while True: # randomly pick as many images as batch_size indices = npr.randint(len(images_paths), size=batch_size) # initialise input tensors images_all = [] labels_all = [] aff_all = [] nonlinear_field_all = [] for idx in indices: # add image image = utils.load_volume(images_paths[idx]) if n_channels > 1: images_all.append(utils.add_axis(image, axis=0)) else: images_all.append(utils.add_axis(image, axis=-2)) # add labels labels = utils.load_volume(labels_paths[idx], dtype='int') labels_all.append(utils.add_axis(labels, axis=-2)) # get affine transformation: rotate, scale, shear (translation done during random cropping) n_dims, _ = utils.get_dims(im_shape) scaling = utils.draw_value_from_distribution(scaling_range, size=n_dims, centre=1, default_range=.15) if n_dims == 2: rotation_angle = utils.draw_value_from_distribution(rotation_range, default_range=15.0) else: rotation_angle = utils.draw_value_from_distribution(rotation_range, size=n_dims, default_range=15.0) shearing = utils.draw_value_from_distribution(shearing_range, size=n_dims ** 2 - n_dims, default_range=.01) aff = utils.create_affine_transformation_matrix(n_dims, scaling, rotation_angle, shearing) aff_all.append(utils.add_axis(aff)) # add non linear field deform_shape = utils.get_resample_shape(im_shape, nonlin_shape_fact, len(im_shape)) nonlinear_field = npr.normal(loc=0, scale=nonlin_std_dev * npr.rand(), size=deform_shape) nonlinear_field_all.append(utils.add_axis(nonlinear_field)) # build list of inputs of the augmentation model inputs_vals = [images_all, labels_all, aff_all, nonlinear_field_all] # put images and labels (concatenated if batch_size>1) into a tuple of 2 elements: (cat_images, cat_labels) if batch_size > 1: inputs_vals = [np.concatenate(item, 0) for item in inputs_vals] else: inputs_vals = [item[0] for item in inputs_vals] yield inputs_vals
def sample_intensity_stats_from_single_dataset(image_dir, labels_dir, labels_list, classes_list=None, max_channel=3, rescale=True): """This function aims at estimating the intensity distributions of K different structure types from a set of images. The distribution of each structure type is modelled as a Gaussian, parametrised by a mean and a standard deviation. Because the intensity distribution of structures can vary accross images, we additionally use Gausian priors for the parameters of each Gaussian distribution. Therefore, the intensity distribution of each structure type is described by 4 parameters: a mean/std for the mean intensity, and a mean/std for the std deviation. This function uses a set of images along with corresponding segmentations to estimate the 4*K parameters. Structures can share the same statistics by being regrouped into classes of similar structure types. Images can be multi-modal (n_channels), in which case different statistics are estimated for each modality. :param image_dir: path of directory with images to estimate the intensity distribution :param labels_dir: path of directory with segmentation of input images. They are matched with images by sorting order. :param labels_list: list of labels for which to evaluate mean and std intensity. Can be a sequence, a 1d numpy array, or the path to a 1d numpy array. :param classes_list: (optional) enables to regroup structures into classes of similar intensity statistics. Intenstites associated to regrouped labels will thus contribute to the same Gaussian during statistics estimation. Can be a sequence, a 1d numpy array, or the path to a 1d numpy array. It should have the same length as labels_list, and contain values between 0 and K-1, where K is the total number of classes. Default is all labels have different classes (K=len(labels_list)). :param max_channel: (optional) maximum number of channels to consider if the data is multispectral. Default is 3. :param rescale: (optional) whether to rescale images between 0 and 255 before intensity estimation :return: 2 numpy arrays of size (2*n_channels, K), one with the evaluated means/std for the mean intensity, and one for the mean/std for the standard deviation. Each block of two rows correspond to a different modality (channel). For each block of two rows, the first row represents the mean, and the second represents the std. """ # list files path_images = utils.list_images_in_folder(image_dir) path_labels = utils.list_images_in_folder(labels_dir) assert len(path_images) == len(path_labels), 'image and labels folders do not have the same number of files' # reformat list labels and classes labels_list = np.array(utils.reformat_to_list(labels_list, load_as_numpy=True, dtype='int')) if classes_list is not None: classes_list = np.array(utils.reformat_to_list(classes_list, load_as_numpy=True, dtype='int')) else: classes_list = np.arange(labels_list.shape[0]) assert len(classes_list) == len(labels_list), 'labels and classes lists should have the same length' # get unique classes unique_classes, unique_indices = np.unique(classes_list, return_index=True) n_classes = len(unique_classes) if not np.array_equal(unique_classes, np.arange(n_classes)): raise ValueError('classes_list should only contain values between 0 and K-1, ' 'where K is the total number of classes. Here K = %d' % n_classes) # initialise result arrays n_dims, n_channels = utils.get_dims(utils.load_volume(path_images[0]).shape, max_channels=max_channel) means = np.zeros((len(path_images), n_classes, n_channels)) stds = np.zeros((len(path_images), n_classes, n_channels)) # loop over images loop_info = utils.LoopInfo(len(path_images), 10, 'estimating', print_time=True) for idx, (path_im, path_la) in enumerate(zip(path_images, path_labels)): loop_info.update(idx) # load image and label map image = utils.load_volume(path_im) la = utils.load_volume(path_la) if n_channels == 1: image = utils.add_axis(image, -1) # loop over channels for channel in range(n_channels): im = image[..., channel] if rescale: im = edit_volumes.rescale_volume(im) stats = sample_intensity_stats_from_image(im, la, labels_list, classes_list=classes_list) means[idx, :, channel] = stats[0, :] stds[idx, :, channel] = stats[1, :] # compute prior parameters for mean/std mean_means = np.mean(means, axis=0) std_means = np.std(means, axis=0) mean_stds = np.mean(stds, axis=0) std_stds = np.std(stds, axis=0) # regroup prior parameters in two different arrays: one for the mean and one for the std prior_means = np.zeros((2 * n_channels, n_classes)) prior_stds = np.zeros((2 * n_channels, n_classes)) for channel in range(n_channels): prior_means[2 * channel, :] = mean_means[:, channel] prior_means[2 * channel + 1, :] = std_means[:, channel] prior_stds[2 * channel, :] = mean_stds[:, channel] prior_stds[2 * channel + 1, :] = std_stds[:, channel] return prior_means, prior_stds
else: assert os.path.isfile(path_t1_images), "files does not exist: %s " \ "\nplease make sure the path and the extension are correct" % path_t1_images images_to_segment_t1 = [path_t1_images] images_to_segment_t2 = [path_t2_images] path_predictions = [path_predictions] # Do the actual work print('Found %d images' % len(images_to_segment_t1)) for idx, (path_image_t1, path_image_t2, path_prediction) in enumerate( zip(images_to_segment_t1, images_to_segment_t2, path_predictions)): print(' Working on image %d ' % (idx + 1)) print(' ' + path_image_t1 + ', ' + path_image_t2) im1, aff1, hdr1 = utils.load_volume(path_image_t1, im_only=False, dtype='float') im1, aff1 = edit_volumes.resample_volume(im1, aff1, [1.0, 1.0, 1.0]) aff_ref = np.eye(4) im1, aff1_mod = edit_volumes.align_volume_to_ref(im1, aff1, aff_ref=aff_ref, return_aff=True, n_dims=3) im2, aff2, hdr2 = utils.load_volume(path_image_t2, im_only=False, dtype='float') im2 = edit_volumes.resample_volume_like(im1, aff1_mod, im2, aff2) minimum = np.min(im1) im1 = im1 - minimum
def build_model_inputs(path_label_maps, n_labels, batchsize=1, n_channels=1, generation_classes=None, prior_distributions='uniform', prior_means=None, prior_stds=None, use_specific_stats_for_channel=False, mix_prior_and_random=False): """ This function builds a generator to be fed to the lab2im model. It enables to generate all the required inputs, according to the operations performed in the model. :param path_label_maps: list of the paths of the input label maps. :param n_labels: number of labels in the input label maps. :param batchsize: (optional) numbers of images to generate per mini-batch. Default is 1. :param n_channels: (optional) number of channels to be synthetised. Default is 1. :param generation_classes: (optional) Indices regrouping generation labels into classes of same intensity distribution. Regouped labels will thus share the same Gaussian when samling a new image. Can be a sequence or a 1d numpy array. It should have the same length as generation_labels, and contain values between 0 and K-1, where K is the total number of classes. Default is all labels have different classes. :param prior_distributions: (optional) type of distribution from which we sample the GMM parameters. Can either be 'uniform', or 'normal'. Default is 'uniform'. :param prior_means: (optional) hyperparameters controlling the prior distributions of the GMM means. Because these prior distributions are uniform or normal, they require by 2 hyperparameters. Thus prior_means can be: 1) a sequence of length 2, directly defining the two hyperparameters: [min, max] if prior_distributions is uniform, [mean, std] if the distribution is normal. The GMM means of are independently sampled at each mini_batch from the same distribution. 2) an array of shape (2, K), where K is the number of classes (K=len(generation_labels) if generation_classes is not given). The mean of the Gaussian distribution associated to class k in [0, ...K-1] is sampled at each mini-batch from U(prior_means[0,k], prior_means[1,k]) if prior_distributions is uniform, or from N(prior_means[0,k], prior_means[1,k]) if prior_distributions is normal. 3) an array of shape (2*n_mod, K), where each block of two rows is associated to hyperparameters derived from different modalities. In this case, if use_specific_stats_for_channel is False, we first randomly select a modality from the n_mod possibilities, and we sample the GMM means like in 2). If use_specific_stats_for_channel is True, each block of two rows correspond to a different channel (n_mod=n_channels), thus we select the corresponding block to each channel rather than randomly drawing it. 4) the path to such a numpy array. Default is None, which corresponds to prior_means = [25, 225]. :param prior_stds: (optional) same as prior_means but for the standard deviations of the GMM. Default is None, which corresponds to prior_stds = [5, 25]. :param use_specific_stats_for_channel: (optional) whether the i-th block of two rows in the prior arrays must be only used to generate the i-th channel. If True, n_mod should be equal to n_channels. Default is False. :param mix_prior_and_random: (optional) if prior_means is not None, enables to reset the priors to their default values for half of thes cases, and thus generate images of random contrast. """ # get label info _, _, n_dims, _, _, _ = utils.get_volume_info(path_label_maps[0]) # allocate unique class to each label if generation classes is not given if generation_classes is None: generation_classes = np.arange(n_labels) # Generate! while True: # randomly pick as many images as batchsize indices = npr.randint(len(path_label_maps), size=batchsize) # initialise input lists list_label_maps = [] list_means = [] list_stds = [] for idx in indices: # add labels to inputs lab = utils.load_volume(path_label_maps[idx], dtype='int', aff_ref=np.eye(4)) list_label_maps.append(utils.add_axis(lab, axis=[0, -1])) # add means and standard deviations to inputs means = np.empty((1, n_labels, 0)) stds = np.empty((1, n_labels, 0)) for channel in range(n_channels): # retrieve channel specific stats if necessary if isinstance(prior_means, np.ndarray): if (prior_means.shape[0] > 2) & use_specific_stats_for_channel: if prior_means.shape[0] / 2 != n_channels: raise ValueError("the number of blocks in prior_means does not match n_channels. This " "message is printed because use_specific_stats_for_channel is True.") tmp_prior_means = prior_means[2 * channel:2 * channel + 2, :] else: tmp_prior_means = prior_means else: tmp_prior_means = prior_means if (prior_means is not None) & mix_prior_and_random & (npr.uniform() > 0.5): tmp_prior_means = None if isinstance(prior_stds, np.ndarray): if (prior_stds.shape[0] > 2) & use_specific_stats_for_channel: if prior_stds.shape[0] / 2 != n_channels: raise ValueError("the number of blocks in prior_stds does not match n_channels. This " "message is printed because use_specific_stats_for_channel is True.") tmp_prior_stds = prior_stds[2 * channel:2 * channel + 2, :] else: tmp_prior_stds = prior_stds else: tmp_prior_stds = prior_stds if (prior_stds is not None) & mix_prior_and_random & (npr.uniform() > 0.5): tmp_prior_stds = None # draw means and std devs from priors tmp_classes_means = utils.draw_value_from_distribution(tmp_prior_means, n_labels, prior_distributions, 125., 100., positive_only=True) tmp_classes_stds = utils.draw_value_from_distribution(tmp_prior_stds, n_labels, prior_distributions, 15., 10., positive_only=True) if npr.uniform() > 0.95: # reset the background to 0 in 10% of cases tmp_classes_means[0] = 0 tmp_classes_stds[0] = 0 tmp_means = utils.add_axis(tmp_classes_means[generation_classes], axis=[0, -1]) tmp_stds = utils.add_axis(tmp_classes_stds[generation_classes], axis=[0, -1]) means = np.concatenate([means, tmp_means], axis=-1) stds = np.concatenate([stds, tmp_stds], axis=-1) list_means.append(means) list_stds.append(stds) # build list of inputs for generation model list_inputs = [list_label_maps, list_means, list_stds] if batchsize > 1: # concatenate each input type if batchsize > 1 list_inputs = [np.concatenate(item, 0) for item in list_inputs] else: list_inputs = [item[0] for item in list_inputs] yield list_inputs
def preprocess_asegs(aseg_dir, lesion_gt_dir, list_incorrect, list_correct, lesion_label_in_gt=77, dilate=2, recompute=False): # align asegs to gt dir (cropping to same dimension) cropped_dir = aseg_dir + '_cropped' edit_volumes.mri_convert_images_in_dir(aseg_dir, cropped_dir, interpolation='nearest', reference_dir=lesion_gt_dir, recompute=recompute) # correct for aseg labels corrected_dir = cropped_dir + '_corrected' edit_volumes.correct_labels_in_dir(cropped_dir, list_incorrect, list_correct, corrected_dir, smooth=False, recompute=recompute) # list gt and aseg, and create result dir list_lesion_labels = utils.list_images_in_folder(lesion_gt_dir) list_aseg_labels = utils.list_images_in_folder(corrected_dir) inpainted_dir = corrected_dir + '_lesion_inpainted' utils.mkdir(inpainted_dir) # loop over subjects for path_lesion_label, path_aseg_label in zip(list_lesion_labels, list_aseg_labels): path_result = os.path.join(inpainted_dir, os.path.basename(path_aseg_label)) if (not os.path.isfile(path_result)) | recompute: # paste lesion label lesions = utils.load_volume(path_lesion_label) aseg_label, aff, h = utils.load_volume(path_aseg_label, im_only=False) lesion_mask = lesions == lesion_label_in_gt aseg_label[lesion_mask] = 77 utils.save_volume(aseg_label, aff, h, path_result) # dilate lesion and ventricle dilated_dir = inpainted_dir + '_dilated' utils.mkdir(dilated_dir) list_inpainted_aseg = utils.list_images_in_folder(inpainted_dir) for path_aseg in list_inpainted_aseg: path_result = os.path.join(dilated_dir, os.path.basename(path_aseg)) if (not os.path.isfile(path_result)) | recompute: # define lesion, WM, and LV masks aseg, aff, h = utils.load_volume(path_aseg, im_only=False) WM = aseg == 2 LV = aseg == 4 lesion = aseg == 77 # morphological operations to bridge the gaps between lesions and LV morph_struct = utils.build_binary_structure( dilate, len(aseg.shape)) dilated_LV_or_lesion = binary_dilation(LV | lesion, morph_struct) filled_LV_or_lesion = binary_erosion(dilated_LV_or_lesion, morph_struct) LV = LV | (filled_LV_or_lesion & WM) aseg[LV] = 4 # save map utils.save_volume(aseg, aff, h, path_result)
] else: assert os.path.isfile(path_images), "files does not exist: %s " \ "\nplease make sure the path and the extension are correct" % path_images images_to_segment = [path_images] path_predictions = [path_predictions] # Do the actual work print('Found %d images' % len(images_to_segment)) for idx, (path_image, path_prediction) in enumerate( zip(images_to_segment, path_predictions)): print(' Working on image %d ' % (idx + 1)) print(' ' + path_image) im, aff, hdr = utils.load_volume(path_image, im_only=False, dtype='float') if args['ct']: im[im < 0] = 0 im[im > 80] = 80 im, aff = edit_volumes.resample_volume(im, aff, [1.0, 1.0, 1.0]) aff_ref = np.eye(4) im, aff2 = edit_volumes.align_volume_to_ref(im, aff, aff_ref=aff_ref, return_aff=True, n_dims=3) im = im - np.min(im) im = im / np.max(im) I = im[np.newaxis, ..., np.newaxis] W = (np.ceil(np.array(I.shape[1:-1]) / 32.0) * 32).astype('int') idx = np.floor((W - I.shape[1:-1]) / 2).astype('int')
def postprocess_samseg(list_samseg_dir, list_gt_dir, path_segmentation_labels, incorrect_labels, correct_labels, list_posteriors_dir=None, list_thresholds=None, recompute=False): """ This function processes the samseg segmentations: it corrects the labels (right/left and 99 to 77), resamples them to the space of gt_dir, and computes the Dice scores for 1) all_subjects vs. testing subjects only, and 2) all ROIs vs. lesions only. It requires that all segmentations are sorted in three subfolders inside samseg_main_dir: t1, flair, and t1_flair. IMPORTANT: Images are expected to have to following naming convention: <subject_id>.samseg.<contrast>.lesion.mgz, where <contrast> must either be t1, flair, ***t1_flair*** :param list_samseg_dir: main samseg dir containing the three subfolders t1, flair, t1_flair :param list_gt_dir: folder with the gt label maps for all subjects :param path_segmentation_labels: list of segmentation labels :param incorrect_labels: list of samseg incorrect labels :param correct_labels: list of labels to correct the wrong one with :param recompute: whether to recompute files """ if list_posteriors_dir is None: list_posteriors_dir = [None] * len(list_samseg_dir) for samseg_dir, gt_dir, posteriors_dir, threshold in zip( list_samseg_dir, list_gt_dir, list_posteriors_dir, list_thresholds): # define result directories samseg_corrected_dir = samseg_dir + '_corrected' samseg_preprocessed_dir = samseg_dir + '_preprocessed' if (not os.path.isdir(samseg_preprocessed_dir)) | recompute: # regroup right/left labels and change 99 to 77 edit_volumes.correct_labels_in_dir(samseg_dir, incorrect_labels, correct_labels, samseg_corrected_dir, recompute=recompute) # resample to gt format edit_volumes.mri_convert_images_in_dir(samseg_corrected_dir, samseg_preprocessed_dir, interpolation='nearest', reference_dir=gt_dir, recompute=recompute) # replace lesions by thresholded lesion posteriors if posteriors_dir is not None: # resample posteriors to gt format posteriors_preprocessed_dir = posteriors_dir + '_preprocessed' edit_volumes.mri_convert_images_in_dir(posteriors_dir, posteriors_preprocessed_dir, reference_dir=gt_dir, recompute=recompute) # list hard segmentations and posteriors samseg_postprocessed_dir = samseg_dir + '_postprocessed' utils.mkdir(samseg_postprocessed_dir) path_segs = [ path for path in utils.list_images_in_folder( samseg_preprocessed_dir) ] path_posteriors = [ path for path in utils.list_images_in_folder( posteriors_preprocessed_dir) ] for subject_idx, (path_seg, path_post) in enumerate( zip(path_segs, path_posteriors)): path_result = os.path.join(samseg_postprocessed_dir, os.path.basename(path_seg)) if (not os.path.isfile(path_result)) | recompute: # replace segmented lesions by thresholded posteriors seg, aff, h = utils.load_volume(path_seg, im_only=False) posteriors = utils.load_volume(path_post) seg[seg == 77] = 2 seg[posteriors > threshold] = 77 utils.save_volume(seg, aff, h, path_result) else: samseg_postprocessed_dir = samseg_preprocessed_dir # compute dice scores with path_dice_testing = os.path.join(samseg_postprocessed_dir, 'dice.npy') path_dice_lesions_testing = os.path.join(samseg_postprocessed_dir, 'dice_lesions.npy') if (not os.path.isfile(path_dice_testing)) | recompute: dice_evaluation(gt_dir, samseg_postprocessed_dir, path_segmentation_labels, path_dice_testing) if (not os.path.isfile(path_dice_lesions_testing)) | recompute: dice = np.load(path_dice_testing) np.save(path_dice_lesions_testing, dice[4, :])
def build_model_inputs(path_label_maps, n_labels, batchsize=1, n_channels=1, generation_classes=None, prior_distributions='uniform', prior_means=None, prior_stds=None, use_specific_stats_for_channel=False, mix_prior_and_random=False, apply_linear_trans=True, scaling_bounds=None, rotation_bounds=None, shearing_bounds=None, background_paths=None): """ This function builds a generator to be fed to the lab2im model. It enables to generate all the required inputs, according to the operations performed in the model. :param path_label_maps: list of the paths of the input label maps. :param n_labels: number of labels in the input label maps. :param batchsize: (optional) numbers of images to generate per mini-batch. Default is 1. :param n_channels: (optional) number of channels to be synthetised. Default is 1. :param generation_classes: (optional) Indices regrouping generation labels into classes of same intensity distribution. Regouped labels will thus share the same Gaussian when samling a new image. Can be a sequence or a 1d numpy array. It should have the same length as generation_labels, and contain values between 0 and K-1, where K is the total number of classes. Default is all labels have different classes. :param prior_distributions: (optional) type of distribution from which we sample the GMM parameters. Can either be 'uniform', or 'normal'. Default is 'uniform'. :param prior_means: (optional) hyperparameters controlling the prior distributions of the GMM means. Because these prior distributions are uniform or normal, they require by 2 hyperparameters. Thus prior_means can be: 1) a sequence of length 2, directly defining the two hyperparameters: [min, max] if prior_distributions is uniform, [mean, std] if the distribution is normal. The GMM means of are independently sampled at each mini_batch from the same distribution. 2) an array of shape (2, K), where K is the number of classes (K=len(generation_labels) if generation_classes is not given). The mean of the Gaussian distribution associated to class k in [0, ...K-1] is sampled at each mini-batch from U(prior_means[0,k], prior_means[1,k]) if prior_distributions is uniform, or from N(prior_means[0,k], prior_means[1,k]) if prior_distributions is normal. 3) an array of shape (2*n_mod, K), where each block of two rows is associated to hyperparameters derived from different modalities. In this case, if use_specific_stats_for_channel is False, we first randomly select a modality from the n_mod possibilities, and we sample the GMM means like in 2). If use_specific_stats_for_channel is True, each block of two rows correspond to a different channel (n_mod=n_channels), thus we select the corresponding block to each channel rather than randomly drawing it. 4) the path to such a numpy array. Default is None, which corresponds to prior_means = [25, 225]. :param prior_stds: (optional) same as prior_means but for the standard deviations of the GMM. Default is None, which corresponds to prior_stds = [5, 25]. :param use_specific_stats_for_channel: (optional) whether the i-th block of two rows in the prior arrays must be only used to generate the i-th channel. If True, n_mod should be equal to n_channels. Default is False. :param mix_prior_and_random: (optional) if prior_means is not None, enables to reset the priors to their default values for half of thes cases, and thus generate images of random contrast. :param apply_linear_trans: (optional) whether to apply affine deformation. Default is True. :param scaling_bounds: (optional) if apply_linear_trans is True, the scaling factor for each dimension is sampled from a uniform distribution of predefined bounds. Can either be: 1) a number, in which case the scaling factor is independently sampled from the uniform distribution of bounds (1-scaling_bounds, 1+scaling_bounds) for each dimension. 2) a sequence, in which case the scaling factor is sampled from the uniform distribution of bounds (1-scaling_bounds[i], 1+scaling_bounds[i]) for the i-th dimension. 3) a numpy array of shape (2, n_dims), in which case the scaling factor is sampled from the uniform distribution of bounds (scaling_bounds[0, i], scaling_bounds[1, i]) for the i-th dimension. If None (default), scaling_range = 0.15 :param rotation_bounds: (optional) same as scaling bounds but for the rotation angle, except that for cases 1 and 2, the bounds are centred on 0 rather than 1, i.e. (0+rotation_bounds[i], 0-rotation_bounds[i]). If None (default), rotation_bounds = 15. :param shearing_bounds: (optional) same as scaling bounds. If None (default), shearing_bounds = 0.01. :param background_paths: (optional) list of paths of label maps to replace the soft brain tissues (label 258) with. """ # get label info _, _, n_dims, _, _, _ = utils.get_volume_info(path_label_maps[0]) # allocate unique class to each label if generation classes is not given if generation_classes is None: generation_classes = np.arange(n_labels) # Generate! while True: # randomly pick as many images as batchsize indices = npr.randint(len(path_label_maps), size=batchsize) # initialise input lists list_label_maps = [] list_means = [] list_stds = [] list_affine_transforms = [] for idx in indices: # add labels to inputs y = utils.load_volume(path_label_maps[idx], dtype='int', aff_ref=np.eye(4)) if background_paths is not None: idx_258 = np.where(y == 258) if np.any(idx_258): background = utils.load_volume(background_paths[npr.randint(len(background_paths))], dtype='int', aff_ref=np.eye(4)) background_shape = background.shape if np.all(np.array(background_shape) == background_shape[0]): # flip if same dimensions background = np.flip(background, tuple([i for i in range(3) if np.random.normal() > 0])) assert background.shape == y.shape, 'background patches should have same shape than training ' \ 'labels. Had {0} and {1}'.format(background.shape, y.shape) y[idx_258] = background[idx_258] list_label_maps.append(utils.add_axis(y, axis=-2)) # add means and standard deviations to inputs means = np.empty((n_labels, 0)) stds = np.empty((n_labels, 0)) for channel in range(n_channels): # retrieve channel specific stats if necessary if isinstance(prior_means, np.ndarray): if (prior_means.shape[0] > 2) & use_specific_stats_for_channel: if prior_means.shape[0] / 2 != n_channels: raise ValueError("the number of blocks in prior_means does not match n_channels. This " "message is printed because use_specific_stats_for_channel is True.") tmp_prior_means = prior_means[2 * channel:2 * channel + 2, :] else: tmp_prior_means = prior_means else: tmp_prior_means = prior_means if (prior_means is not None) & mix_prior_and_random & (npr.uniform() > 0.5): tmp_prior_means = None if isinstance(prior_stds, np.ndarray): if (prior_stds.shape[0] > 2) & use_specific_stats_for_channel: if prior_stds.shape[0] / 2 != n_channels: raise ValueError("the number of blocks in prior_stds does not match n_channels. This " "message is printed because use_specific_stats_for_channel is True.") tmp_prior_stds = prior_stds[2 * channel:2 * channel + 2, :] else: tmp_prior_stds = prior_stds else: tmp_prior_stds = prior_stds if (prior_stds is not None) & mix_prior_and_random & (npr.uniform() > 0.5): tmp_prior_stds = None # draw means and std devs from priors tmp_classes_means = utils.draw_value_from_distribution(tmp_prior_means, n_labels, prior_distributions, 125., 100., positive_only=True) tmp_classes_stds = utils.draw_value_from_distribution(tmp_prior_stds, n_labels, prior_distributions, 15., 10., positive_only=True) tmp_means = utils.add_axis(tmp_classes_means[generation_classes], -1) tmp_stds = utils.add_axis(tmp_classes_stds[generation_classes], -1) means = np.concatenate([means, tmp_means], axis=1) stds = np.concatenate([stds, tmp_stds], axis=1) list_means.append(utils.add_axis(means)) list_stds.append(utils.add_axis(stds)) # add linear transform to inputs if apply_linear_trans: # get affine transformation: rotate, scale, shear (translation done during random cropping) scaling = utils.draw_value_from_distribution(scaling_bounds, size=n_dims, centre=1, default_range=.15) if n_dims == 2: rotation = utils.draw_value_from_distribution(rotation_bounds, default_range=15.0) else: rotation = utils.draw_value_from_distribution(rotation_bounds, size=n_dims, default_range=15.0) shearing = utils.draw_value_from_distribution(shearing_bounds, size=n_dims**2-n_dims, default_range=.01) affine_transform = utils.create_affine_transformation_matrix(n_dims, scaling, rotation, shearing) list_affine_transforms.append(utils.add_axis(affine_transform)) # build list of inputs of augmentation model list_inputs = [list_label_maps, list_means, list_stds] if apply_linear_trans: list_inputs.append(list_affine_transforms) # concatenate individual input types if batchsize > 1 if batchsize > 1: list_inputs = [np.concatenate(item, 0) for item in list_inputs] else: list_inputs = [item[0] for item in list_inputs] yield list_inputs
def evaluation(gt_dir, seg_dir, label_list, mask_dir=None, compute_score_whole_structure=False, path_dice=None, path_hausdorff=None, path_hausdorff_99=None, path_hausdorff_95=None, path_mean_distance=None, crop_margin_around_gt=10, list_incorrect_labels=None, list_correct_labels=None, use_nearest_label=False, recompute=True, verbose=True): """This function computes Dice scores, as well as surface distances, between two sets of labels maps in gt_dir (ground truth) and seg_dir (typically predictions). Labels maps in both folders are matched by sorting order. The resulting scores are saved at the specified locations. :param gt_dir: path of directory with gt label maps :param seg_dir: path of directory with label maps to compare to gt_dir. Matched to gt label maps by sorting order. :param label_list: list of label values for which to compute evaluation metrics. Can be a sequence, a 1d numpy array, or the path to such array. :param mask_dir: (optional) path of directory with masks of areas to ignore for each evaluated segmentation. Matched to gt label maps by sorting order. Default is None, where nothing is masked. :param compute_score_whole_structure: (optional) whether to also compute the selected scores for the whole segmented structure (i.e. scores are computed for a single structure obtained by regrouping all non-zero values). If True, the resulting scores are added as an extra row to the result matrices. Default is False. :param path_dice: path where the resulting Dice will be writen as numpy array. Default is None, where the array is not saved. :param path_hausdorff: path where the resulting Hausdorff distances will be writen as numpy array (only if compute_distances is True). Default is None, where the array is not saved. :param path_hausdorff_99: same as for path_hausdorff but for the 99th percentile of the boundary distance. :param path_hausdorff_95: same as for path_hausdorff but for the 95th percentile of the boundary distance. :param path_mean_distance: path where the resulting mean distances will be writen as numpy array (only if compute_distances is True). Default is None, where the array is not saved. :param crop_margin_around_gt: (optional) margin by which to crop around the gt volumes, in order to copute the scores more efficiently. If None, no cropping is performed. :param list_incorrect_labels: (optional) this option enables to replace some label values in the maps in seg_dir by other label values. Can be a list, a 1d numpy array, or the path to such an array. The incorrect labels can then be replaced either by specified values, or by the nearest value (see below). :param list_correct_labels: (optional) list of values to correct the labels specified in list_incorrect_labels. Correct values must have the same order as their corresponding value in list_incorrect_labels. :param use_nearest_label: (optional) whether to correct the incorrect lavel values with the nearest labels. :param recompute: (optional) whether to recompute the already existing results. Default is True. :param verbose: (optional) whether to print out info about the remaining number of cases. """ # check whether to recompute compute_dice = not os.path.isfile(path_dice) if (path_dice is not None) else True compute_hausdorff = not os.path.isfile(path_hausdorff) if ( path_hausdorff is not None) else False compute_hausdorff_99 = not os.path.isfile(path_hausdorff_99) if ( path_hausdorff_99 is not None) else False compute_hausdorff_95 = not os.path.isfile(path_hausdorff_95) if ( path_hausdorff_95 is not None) else False compute_mean_dist = not os.path.isfile(path_mean_distance) if ( path_mean_distance is not None) else False compute_hd = [ compute_hausdorff, compute_hausdorff_99, compute_hausdorff_95 ] if compute_dice | any(compute_hd) | compute_mean_dist | recompute: # get list label maps to compare path_gt_labels = utils.list_images_in_folder(gt_dir) path_segs = utils.list_images_in_folder(seg_dir) path_gt_labels = utils.reformat_to_list(path_gt_labels, length=len(path_segs)) if len(path_gt_labels) != len(path_segs): print( 'gt and segmentation folders must have the same amount of label maps.' ) if mask_dir is not None: path_masks = utils.list_images_in_folder(mask_dir) if len(path_masks) != len(path_segs): print('not the same amount of masks and segmentations.') else: path_masks = [None] * len(path_segs) # load labels list label_list, _ = utils.get_list_labels(label_list=label_list, FS_sort=True, labels_dir=gt_dir) n_labels = len(label_list) max_label = np.max(label_list) + 1 # initialise result matrices if compute_score_whole_structure: max_dists = np.zeros((n_labels + 1, len(path_segs), 3)) mean_dists = np.zeros((n_labels + 1, len(path_segs))) dice_coefs = np.zeros((n_labels + 1, len(path_segs))) else: max_dists = np.zeros((n_labels, len(path_segs), 3)) mean_dists = np.zeros((n_labels, len(path_segs))) dice_coefs = np.zeros((n_labels, len(path_segs))) # loop over segmentations loop_info = utils.LoopInfo(len(path_segs), 10, 'evaluating', print_time=True) for idx, (path_gt, path_seg, path_mask) in enumerate( zip(path_gt_labels, path_segs, path_masks)): if verbose: loop_info.update(idx) # load gt labels and segmentation gt_labels = utils.load_volume(path_gt, dtype='int') seg = utils.load_volume(path_seg, dtype='int') if path_mask is not None: mask = utils.load_volume(path_mask, dtype='bool') gt_labels[mask] = max_label seg[mask] = max_label # crop images if crop_margin_around_gt is not None: gt_labels, cropping = edit_volumes.crop_volume_around_region( gt_labels, margin=crop_margin_around_gt) seg = edit_volumes.crop_volume_with_idx(seg, cropping) if list_incorrect_labels is not None: seg = edit_volumes.correct_label_map(seg, list_incorrect_labels, list_correct_labels, use_nearest_label) # compute Dice scores dice_coefs[:n_labels, idx] = fast_dice(gt_labels, seg, label_list) # compute Dice scores for whole structures if compute_score_whole_structure: temp_gt = (gt_labels > 0) * 1 temp_seg = (seg > 0) * 1 dice_coefs[-1, idx] = dice(temp_gt, temp_seg) else: temp_gt = temp_seg = None # compute average and Hausdorff distances if any(compute_hd) | compute_mean_dist: # compute unique label values unique_gt_labels = np.unique(gt_labels) unique_seg_labels = np.unique(seg) # compute max/mean surface distances for all labels for index, label in enumerate(label_list): if (label in unique_gt_labels) & (label in unique_seg_labels): mask_gt = np.where(gt_labels == label, True, False) mask_seg = np.where(seg == label, True, False) tmp_max_dists, mean_dists[index, idx] = surface_distances( mask_gt, mask_seg, [100, 99, 95]) max_dists[index, idx, :] = np.array(tmp_max_dists) else: mean_dists[index, idx] = max(gt_labels.shape) max_dists[index, idx, :] = np.array( [max(gt_labels.shape)] * 3) # compute max/mean distances for whole structure if compute_score_whole_structure: tmp_max_dists, mean_dists[-1, idx] = surface_distances( temp_gt, temp_seg, [100, 99, 95]) max_dists[-1, idx, :] = np.array(tmp_max_dists) # write results if path_dice is not None: utils.mkdir(os.path.dirname(path_dice)) np.save(path_dice, dice_coefs) if path_hausdorff is not None: utils.mkdir(os.path.dirname(path_hausdorff)) np.save(path_hausdorff, max_dists[..., 0]) if path_hausdorff_99 is not None: utils.mkdir(os.path.dirname(path_hausdorff_99)) np.save(path_hausdorff_99, max_dists[..., 1]) if path_hausdorff_95 is not None: utils.mkdir(os.path.dirname(path_hausdorff_95)) np.save(path_hausdorff_95, max_dists[..., 2]) if path_mean_distance is not None: utils.mkdir(os.path.dirname(path_mean_distance)) np.save(path_mean_distance, max_dists[..., 2])
def __init__(self, labels_dir, generation_labels=None, output_labels=None, n_neutral_labels=None, padding_margin=None, batchsize=1, n_channels=1, target_res=None, output_shape=None, output_div_by_n=None, prior_distributions='uniform', generation_classes=None, prior_means=None, prior_stds=None, use_specific_stats_for_channel=False, flipping=True, apply_linear_trans=True, scaling_bounds=None, rotation_bounds=None, shearing_bounds=None, apply_nonlin_trans=True, nonlin_std=3., nonlin_shape_factor=0.0625, blur_background=True, data_res=None, thickness=None, downsample=False, blur_range=1.15, crop_channel_2=None, apply_bias_field=True, bias_field_std=0.3, bias_shape_factor=0.025): """ This class is wrapper around the labels_to_image_model model. It contains the GPU model that generates images from labels maps, and a python generator that suplies the input data for this model. To generate pairs of image/labels you can just call the method generate_image() on an object of this class. :param labels_dir: path of folder with all input label maps, or to a single label map. # IMPORTANT !!! # Each time we provide a parameter with separate values for each axis (e.g. with a numpy array or a sequence), # these values refer to the RAS axes. # label maps-related parameters :param generation_labels: (optional) list of all possible label values in the input label maps. Default is None, where the label values are directly gotten from the provided label maps. If not None, can be a sequence or a 1d numpy array, or the path to a 1d numpy array. If flipping is true (i.e. right/left flipping is enabled), generation_labels should be organised as follows: background label first, then non-sided labels (e.g. CSF, brainstem, etc.), then all the structures of the same hemisphere (can be left or right), and finally all the corresponding contralateral structures in the same order. :param output_labels: (optional) list of all the label values to keep in the output label maps (in no particular order). Should be a subset of the values contained in generation_labels. Label values that are in generation_labels but not in output_labels are reset to zero. Can be a sequence, a 1d numpy array, or the path to a 1d numpy array. By default output labels are equal to generation labels. :param n_neutral_labels: (optional) number of non-sided generation labels. Default is total number of label values. :param padding_margin: (optional) margin by which to pad the input labels with zeros. Padding is applied prior to any other operation. Can be an integer (same padding in all dimensions), a sequence, a 1d numpy array, or the path to a 1d numpy array. Default is no padding. # output-related parameters :param batchsize: (optional) numbers of images to generate per mini-batch. Default is 1. :param n_channels: (optional) number of channels to be synthetised. Default is 1. :param target_res: (optional) target resolution of the generated images and corresponding label maps. If None, the outputs will have the same resolution as the input label maps. Can be a number (isotropic resolution), a sequence, a 1d numpy array, or the path to a 1d numpy array. :param output_shape: (optional) shape of the output image, obtained by randomly cropping the generated image. Can be an integer (same size in all dimensions), a sequence, a 1d numpy array, or the path to a 1d numpy array. :param output_div_by_n: (optional) forces the output shape to be divisible by this value. It overwrites output_shape if necessary. Can be an integer (same size in all dimensions), a sequence, a 1d numpy array, or the path to a 1d numpy array. # GMM-sampling parameters :param generation_classes: (optional) Indices regrouping generation labels into classes of same intensity distribution. Regouped labels will thus share the same Gaussian when samling a new image. Can be a sequence, a 1d numpy array, or the path to a 1d numpy array. It should have the same length as generation_labels, and contain values between 0 and K-1, where K is the total number of classes. Default is all labels have different classes (K=len(generation_labels)). :param prior_distributions: (optional) type of distribution from which we sample the GMM parameters. Can either be 'uniform', or 'normal'. Default is 'uniform'. :param prior_means: (optional) hyperparameters controlling the prior distributions of the GMM means. Because these prior distributions are uniform or normal, they require by 2 hyperparameters. Thus prior_means can be: 1) a sequence of length 2, directly defining the two hyperparameters: [min, max] if prior_distributions is uniform, [mean, std] if the distribution is normal. The GMM means of are independently sampled at each mini_batch from the same distribution. 2) an array of shape (2, K), where K is the number of classes (K=len(generation_labels) if generation_classes is not given). The mean of the Gaussian distribution associated to class k in [0, ...K-1] is sampled at each mini-batch from U(prior_means[0,k], prior_means[1,k]) if prior_distributions is uniform, and from N(prior_means[0,k], prior_means[1,k]) if prior_distributions is normal. 3) an array of shape (2*n_mod, K), where each block of two rows is associated to hyperparameters derived from different modalities. In this case, if use_specific_stats_for_channel is False, we first randomly select a modality from the n_mod possibilities, and we sample the GMM means like in 2). If use_specific_stats_for_channel is True, each block of two rows correspond to a different channel (n_mod=n_channels), thus we select the corresponding block to each channel rather than randomly drawing it. 4) the path to such a numpy array. Default is None, which corresponds to prior_means = [25, 225]. :param prior_stds: (optional) same as prior_means but for the standard deviations of the GMM. Default is None, which corresponds to prior_stds = [5, 25]. :param use_specific_stats_for_channel: (optional) whether the i-th block of two rows in the prior arrays must be only used to generate the i-th channel. If True, n_mod should be equal to n_channels. Default is False. # spatial deformation parameters :param flipping: (optional) whether to introduce right/left random flipping. Default is True. :param apply_linear_trans: (optional) whether to apply affine deformation. Default is True. :param scaling_bounds: (optional) if apply_linear_trans is True, the scaling factor for each dimension is sampled from a uniform distribution of predefined bounds. Can either be: 1) a number, in which case the scaling factor is independently sampled from the uniform distribution of bounds (1-scaling_bounds, 1+scaling_bounds) for each dimension. 2) a sequence, in which case the scaling factor is sampled from the uniform distribution of bounds (1-scaling_bounds[i], 1+scaling_bounds[i]) for the i-th dimension. 3) a numpy array of shape (2, n_dims), in which case the scaling factor is sampled from the uniform distribution of bounds (scaling_bounds[0, i], scaling_bounds[1, i]) for the i-th dimension. 4) the path to such a numpy array. If None (default), scaling_range = 0.15 :param rotation_bounds: (optional) same as scaling bounds but for the rotation angle, except that for cases 1 and 2, the bounds are centred on 0 rather than 1, i.e. (0+rotation_bounds[i], 0-rotation_bounds[i]). If None (default), rotation_bounds = 15. :param shearing_bounds: (optional) same as scaling bounds. If None (default), shearing_bounds = 0.01. :param apply_nonlin_trans: (optional) whether to apply non linear elastic deformation. If true, a diffeomorphic deformation field is obtained by first sampling a small tensor from the normal distribution, resizing it to image size, and integrationg it. Default is True. :param nonlin_std: (optional) If apply_nonlin_trans is True, maximum value for the standard deviation of the normal distribution from which we sample the first tensor for synthesising the deformation field. :param nonlin_shape_factor: (optional) If apply_nonlin_trans is True, ratio between the size of the input label maps and the size of the sampled tensor for synthesising the deformation field. # blurring/resampling parameters :param blur_background: (optional) whether to produce an unrealistic background or not. If True, the background is generated/blurred with the other labels, according to the values of prior_means and prior_stds. Also, it is reset to zero-background with a probability of 0.2. If False, the background is reset to zero, or can be replaced by a low-intensity background with a probability of 0.5. Additionally we correct for edge blurring effects. Default is True. :param data_res: (optional) acquisition resolution to mimick. If provided, the images sampled from the GMM are blurred to mimick data that would be: 1) acquired at the given acquisition resolution, and 2) resample at target_resolution. Default is None, where images are isotropically blurred to introduce some spatial correlation between voxels. If the generated images are uni-modal, data_res can be a number (isotropic acquisition resolution), a sequence, a 1d numpy array, or the path to a 1d numy array. In the multi-modal case, it should be given as a numpy array (or a path) of size (n_mod, n_dims), where each row is the acquisition resolution of the correspionding chanel. :param thickness: (optional) if data_res is provided, we can further specify the slice thickness of the low resolution images to mimick. If the generated images are uni-modal, data_res can be a number (isotropic acquisition resolution), a sequence, a 1d numpy array, or the path to a 1d numy array. In the multi-modal case, it should be given as a numpy array (or a path) of size (n_mod, n_dims), where each row is the acquisition resolution of the correspionding chanel. :param downsample: (optional) whether to actually downsample the volume image to data_res. Default is False, except when thickness is provided, and thickness < data_res. :param blur_range: (optional) Randomise the standard deviation of the blurring kernels, (whether data_res is given or not). At each mini_batch, the standard deviation of the blurring kernels are multiplied by a coefficient sampled from a uniform distribution with bounds [1/blur_range, blur_range]. If None, no randomisation. Default is 1.15. :param crop_channel_2: (optional) stats for cropping second channel along the anterior-posterior axis. Should be a vector of length 4, with bounds of uniform distribution for cropping the front and back of the image (in percentage). None is no croppping. # bias field parameters :param apply_bias_field: (optional) whether to apply a bias field to the final image. Default is True. If True, the bias field is obtained by sampling a first tensor from normal distribution, resizing it to image size, and rescaling the values to positive number by taking the voxel-wise exponential. Default is True. :param bias_field_std: (optional) If apply_nonlin_trans is True, maximum value for the standard deviation of the normal distribution from which we sample the first tensor for synthesising the bias field. :param bias_shape_factor: (optional) If apply_bias_field is True, ratio between the size of the input label maps and the size of the sampled tensor for synthesising the bias field. """ # prepare data files if ('.nii.gz' in labels_dir) | ('.nii' in labels_dir) | ( '.mgz' in labels_dir) | ('.npz' in labels_dir): self.labels_paths = [labels_dir] else: self.labels_paths = utils.list_images_in_folder(labels_dir) assert len(self.labels_paths) > 0, "Could not find any training data" # generation parameters _, self.aff, self.header = utils.load_volume(self.labels_paths[0], im_only=False) self.labels_shape, _, self.n_dims, _, _, self.atlas_res = utils.get_volume_info( self.labels_paths[0], aff_ref=np.eye(4)) self.n_channels = n_channels if generation_labels is not None: self.generation_labels = utils.load_array_if_path( generation_labels) else: self.generation_labels = utils.get_list_labels( labels_dir=labels_dir) if output_labels is not None: self.output_labels = utils.load_array_if_path(output_labels) else: self.output_labels = self.generation_labels if n_neutral_labels is not None: self.n_neutral_labels = n_neutral_labels else: self.n_neutral_labels = self.generation_labels.shape[0] self.target_res = utils.load_array_if_path(target_res) self.batchsize = batchsize # preliminary operations self.padding_margin = utils.load_array_if_path(padding_margin) self.flipping = flipping self.output_shape = utils.load_array_if_path(output_shape) self.output_div_by_n = output_div_by_n # GMM parameters self.prior_distributions = prior_distributions if generation_classes is not None: self.generation_classes = utils.load_array_if_path( generation_classes) assert self.generation_classes.shape == self.generation_labels.shape, \ 'if provided, generation labels should have the same shape as generation_labels' unique_classes = np.unique(self.generation_classes) assert np.array_equal(unique_classes, np.arange(np.max(unique_classes)+1)), \ 'generation_classes should a linear range between 0 and its maximum value.' else: self.generation_classes = np.arange( self.generation_labels.shape[0]) self.prior_means = utils.load_array_if_path(prior_means) self.prior_stds = utils.load_array_if_path(prior_stds) self.use_specific_stats_for_channel = use_specific_stats_for_channel # linear transformation parameters self.apply_linear_trans = apply_linear_trans self.scaling_bounds = utils.load_array_if_path(scaling_bounds) self.rotation_bounds = utils.load_array_if_path(rotation_bounds) self.shearing_bounds = utils.load_array_if_path(shearing_bounds) # elastic transformation parameters self.apply_nonlin_trans = apply_nonlin_trans self.nonlin_std = nonlin_std self.nonlin_shape_factor = nonlin_shape_factor # blurring parameters self.blur_background = blur_background self.data_res = utils.load_array_if_path(data_res) self.thickness = utils.load_array_if_path(thickness) self.downsample = downsample self.blur_range = blur_range self.crop_second_channel = utils.load_array_if_path(crop_channel_2) # bias field parameters self.apply_bias_field = apply_bias_field self.bias_field_std = bias_field_std self.bias_shape_factor = bias_shape_factor # build transformation model self.labels_to_image_model, self.model_output_shape = self._build_labels_to_image_model( ) # build generator for model inputs self.model_inputs_generator = self._build_model_inputs_generator() # build brain generator self.brain_generator = self._build_brain_generator()