def generate_train_batch(self): pid = self.dataset_pids[self.patient_ix] patient = self._data[pid] # data shape: from (c, z, y, x) to (c, y, x, z). data = np.transpose(np.load(patient['data'], mmap_mode='r'), axes=(3, 1, 2, 0)).copy() seg = np.transpose(np.load(patient['seg'], mmap_mode='r'), axes=(3, 1, 2, 0))[0].copy() batch_class_targets = np.array([patient['class_target']]) # pad data if smaller than patch_size seen during training. if np.any([ data.shape[dim + 1] < ps for dim, ps in enumerate(self.patch_size) ]): new_shape = [data.shape[0]] + [ np.max([data.shape[dim + 1], self.patch_size[dim]]) for dim, ps in enumerate(self.patch_size) ] data = dutils.pad_nd_image( data, new_shape ) # use 'return_slicer' to crop image back to original shape. seg = dutils.pad_nd_image(seg, new_shape) # get 3D targets for evaluation, even if network operates in 2D. 2D predictions will be merged to 3D in predictor. if self.cf.dim == 3 or self.cf.merge_2D_to_3D_preds: out_data = data[np.newaxis] out_seg = seg[np.newaxis, np.newaxis] out_targets = batch_class_targets batch_3D = { 'data': out_data, 'seg': out_seg, 'class_target': out_targets, 'pid': pid } converter = ConvertSegToBoundingBoxCoordinates( dim=3, get_rois_from_seg_flag=False, class_specific_seg_flag=self.cf.class_specific_seg_flag) batch_3D = converter(**batch_3D) batch_3D.update({ 'patient_bb_target': batch_3D['bb_target'], 'patient_roi_labels': batch_3D['class_target'], 'original_img_shape': out_data.shape }) if self.cf.dim == 2: out_data = np.transpose(data, axes=(3, 0, 1, 2)) # (z, c, y, x ) out_seg = np.transpose(seg, axes=(2, 0, 1))[:, np.newaxis] out_targets = np.array( np.repeat(batch_class_targets, out_data.shape[0], axis=0)) # if set to not None, add neighbouring slices to each selected slice in channel dimension. if self.cf.n_3D_context is not None: slice_range = range(self.cf.n_3D_context, out_data.shape[0] + self.cf.n_3D_context) out_data = np.pad( out_data, ((self.cf.n_3D_context, self.cf.n_3D_context), (0, 0), (0, 0), (0, 0)), 'constant', constant_values=0) out_data = np.array([ np.concatenate([ out_data[ii] for ii in range(slice_id - self.cf.n_3D_context, slice_id + self.cf.n_3D_context + 1) ], axis=0) for slice_id in slice_range ]) batch_2D = { 'data': out_data, 'seg': out_seg, 'class_target': out_targets, 'pid': pid } converter = ConvertSegToBoundingBoxCoordinates( dim=2, get_rois_from_seg_flag=False, class_specific_seg_flag=self.cf.class_specific_seg_flag) batch_2D = converter(**batch_2D) if self.cf.merge_2D_to_3D_preds: batch_2D.update({ 'patient_bb_target': batch_3D['patient_bb_target'], 'patient_roi_labels': batch_3D['patient_roi_labels'], 'original_img_shape': out_data.shape }) else: batch_2D.update({ 'patient_bb_target': batch_2D['bb_target'], 'patient_roi_labels': batch_2D['class_target'], 'original_img_shape': out_data.shape }) out_batch = batch_3D if self.cf.dim == 3 else batch_2D patient_batch = out_batch # crop patient-volume to patches of patch_size used during training. stack patches up in batch dimension. # in this case, 2D is treated as a special case of 3D with patch_size[z] = 1. if np.any( [data.shape[dim + 1] > self.patch_size[dim] for dim in range(3)]): patch_crop_coords_list = dutils.get_patch_crop_coords( data[0], self.patch_size) new_img_batch, new_seg_batch, new_class_targets_batch = [], [], [] for cix, c in enumerate(patch_crop_coords_list): seg_patch = seg[c[0]:c[1], c[2]:c[3], c[4]:c[5]] new_seg_batch.append(seg_patch) # if set to not None, add neighbouring slices to each selected slice in channel dimension. # correct patch_crop coordinates by added slices of 3D context. if self.cf.dim == 2 and self.cf.n_3D_context is not None: tmp_c_5 = c[5] + (self.cf.n_3D_context * 2) if cix == 0: data = np.pad( data, ((0, 0), (0, 0), (0, 0), (self.cf.n_3D_context, self.cf.n_3D_context)), 'constant', constant_values=0) else: tmp_c_5 = c[5] new_img_batch.append(data[:, c[0]:c[1], c[2]:c[3], c[4]:tmp_c_5]) data = np.array(new_img_batch) # (n_patches, c, x, y, z) seg = np.array( new_seg_batch)[:, np.newaxis] # (n_patches, 1, x, y, z) batch_class_targets = np.repeat(batch_class_targets, len(patch_crop_coords_list), axis=0) if self.cf.dim == 2: if self.cf.n_3D_context is not None: data = np.transpose(data[:, 0], axes=(0, 3, 1, 2)) else: # all patches have z dimension 1 (slices). discard dimension data = data[..., 0] seg = seg[..., 0] patch_batch = { 'data': data, 'seg': seg, 'class_target': batch_class_targets, 'pid': pid } patch_batch['patch_crop_coords'] = np.array(patch_crop_coords_list) patch_batch['patient_bb_target'] = patient_batch[ 'patient_bb_target'] patch_batch['patient_roi_labels'] = patient_batch[ 'patient_roi_labels'] patch_batch['original_img_shape'] = patient_batch[ 'original_img_shape'] converter = ConvertSegToBoundingBoxCoordinates( self.cf.dim, get_rois_from_seg_flag=False, class_specific_seg_flag=self.cf.class_specific_seg_flag) patch_batch = converter(**patch_batch) out_batch = patch_batch self.patient_ix += 1 if self.patient_ix == len(self.dataset_pids): self.patient_ix = 0 out_batch['data'][:, self.cf.drop_channels_test, ] = 0. return out_batch
def generate_train_batch(self, pid=None): if pid is None: pid = self.dataset_pids[self.patient_ix] patient = self._data[pid] # already swapped dimensions in pp from (c,)z,y,x to c,y,x,z or h,w,d to ease 2D/3D-case handling data = np.load(patient['data'], mmap_mode='r').astype('float16')[np.newaxis] seg = np.load(patient[self.gt_prefix+'seg']).astype('uint8')[np.newaxis] data_shp_raw = data.shape plot_bg = data[self.cf.plot_bg_chan] if self.cf.plot_bg_chan not in self.chans else None data = data[self.chans] discarded_chans = len( [c for c in np.setdiff1d(np.arange(data_shp_raw[0]), self.chans) if c < self.cf.plot_bg_chan]) spatial_shp = data[0].shape # spatial dims need to be in order x,y,z assert spatial_shp == seg[0].shape, "spatial shape incongruence betw. data and seg" if np.any([spatial_shp[i] < ps for i, ps in enumerate(self.patch_size)]): new_shape = [np.max([spatial_shp[i], self.patch_size[i]]) for i in range(len(self.patch_size))] data = dutils.pad_nd_image(data, new_shape) # use 'return_slicer' to crop image back to original shape. seg = dutils.pad_nd_image(seg, new_shape) if plot_bg is not None: plot_bg = dutils.pad_nd_image(plot_bg, new_shape) if self.cf.dim == 3 or self.cf.merge_2D_to_3D_preds: # adds the batch dim here bc won't go through MTaugmenter out_data = data[np.newaxis] out_seg = seg[np.newaxis] if plot_bg is not None: out_plot_bg = plot_bg[np.newaxis] # data and seg shape: (1,c,x,y,z), where c=1 for seg batch_3D = {'data': out_data, 'seg': out_seg} for o in self.cf.roi_items: batch_3D[o] = np.array([patient[self.gt_prefix+o]]) converter = ConvertSegToBoundingBoxCoordinates(3, self.cf.roi_items, False, self.cf.class_specific_seg) batch_3D = converter(**batch_3D) batch_3D.update({'patient_bb_target': batch_3D['bb_target'], 'original_img_shape': out_data.shape}) for o in self.cf.roi_items: batch_3D["patient_" + o] = batch_3D[o] if self.cf.dim == 2: out_data = np.transpose(data, axes=(3, 0, 1, 2)).astype('float32') # (c,y,x,z) to (b=z,c,x,y), use z=b as batchdim out_seg = np.transpose(seg, axes=(3, 0, 1, 2)).astype('uint8') # (c,y,x,z) to (b=z,c,x,y) batch_2D = {'data': out_data, 'seg': out_seg} for o in self.cf.roi_items: batch_2D[o] = np.repeat(np.array([patient[self.gt_prefix+o]]), len(out_data), axis=0) converter = ConvertSegToBoundingBoxCoordinates(2, self.cf.roi_items, False, self.cf.class_specific_seg) batch_2D = converter(**batch_2D) if plot_bg is not None: out_plot_bg = np.transpose(plot_bg, axes=(2, 0, 1)).astype('float32') if self.cf.merge_2D_to_3D_preds: batch_2D.update({'patient_bb_target': batch_3D['patient_bb_target'], 'original_img_shape': out_data.shape}) for o in self.cf.roi_items: batch_2D["patient_" + o] = batch_3D[o] else: batch_2D.update({'patient_bb_target': batch_2D['bb_target'], 'original_img_shape': out_data.shape}) for o in self.cf.roi_items: batch_2D["patient_" + o] = batch_2D[o] out_batch = batch_3D if self.cf.dim == 3 else batch_2D out_batch.update({'pid': np.array([patient['pid']] * len(out_data))}) if self.cf.plot_bg_chan in self.chans and discarded_chans > 0: # len(self.chans[:self.cf.plot_bg_chan])<data_shp_raw[0]: assert plot_bg is None plot_bg = int(self.cf.plot_bg_chan - discarded_chans) out_plot_bg = plot_bg if plot_bg is not None: out_batch['plot_bg'] = out_plot_bg # eventual tiling into patches spatial_shp = out_batch["data"].shape[2:] if np.any([spatial_shp[ix] > self.patch_size[ix] for ix in range(len(spatial_shp))]): patient_batch = out_batch print("patientiterator produced patched batch!") patch_crop_coords_list = dutils.get_patch_crop_coords(data[0], self.patch_size) new_img_batch, new_seg_batch = [], [] for c in patch_crop_coords_list: new_img_batch.append(data[:, c[0]:c[1], c[2]:c[3], c[4]:c[5]]) seg_patch = seg[:, c[0]:c[1], c[2]: c[3], c[4]:c[5]] new_seg_batch.append(seg_patch) shps = [] for arr in new_img_batch: shps.append(arr.shape) data = np.array(new_img_batch) # (patches, c, x, y, z) seg = np.array(new_seg_batch) if self.cf.dim == 2: # all patches have z dimension 1 (slices). discard dimension data = data[..., 0] seg = seg[..., 0] patch_batch = {'data': data.astype('float32'), 'seg': seg.astype('uint8'), 'pid': np.array([patient['pid']] * data.shape[0])} for o in self.cf.roi_items: patch_batch[o] = np.repeat(np.array([patient[self.gt_prefix+o]]), len(patch_crop_coords_list), axis=0) #patient-wise (orig) batch info for putting the patches back together after prediction for o in self.cf.roi_items: patch_batch["patient_"+o] = patient_batch["patient_"+o] if self.cf.dim == 2: # this could also be named "unpatched_2d_roi_items" patch_batch["patient_" + o + "_2d"] = patient_batch[o] patch_batch['patch_crop_coords'] = np.array(patch_crop_coords_list) patch_batch['patient_bb_target'] = patient_batch['patient_bb_target'] if self.cf.dim == 2: patch_batch['patient_bb_target_2d'] = patient_batch['bb_target'] patch_batch['patient_data'] = patient_batch['data'] patch_batch['patient_seg'] = patient_batch['seg'] patch_batch['original_img_shape'] = patient_batch['original_img_shape'] if plot_bg is not None: patch_batch['patient_plot_bg'] = patient_batch['plot_bg'] converter = ConvertSegToBoundingBoxCoordinates(self.cf.dim, self.cf.roi_items, get_rois_from_seg=False, class_specific_seg=self.cf.class_specific_seg) patch_batch = converter(**patch_batch) out_batch = patch_batch self.patient_ix += 1 if self.patient_ix == len(self.dataset_pids): self.patient_ix = 0 return out_batch