Пример #1
0
def model_selection_with_convfeats(args):
    # Load img, blobs and masks
    imgs, blobs, paths = lidc.load(pts=True, set_name=args.ds_tr)
    pred_blobs = detect.read_blobs('data/{}-lidc-pred-blobs.pkl'.format(
        args.detector))
    masks = np.load('data/aam-lidc-pred-masks.npy')
    assert len(imgs) == len(masks) and len(pred_blobs) == len(masks)

    # Load folds
    folds = util.model_selection_folds(imgs)

    # Create rois
    #rois = create_rois(imgs, masks, pred_blobs, args, real_blobs=blobs)

    #  Set up CV
    frocs = []
    legends = ['Fold {}'.format(i + 1) for i in range(util.NUM_VAL_FOLDS)]
    fold_idx = 0

    import time
    from sklearn.neighbors import KNeighborsClassifier

    for tr, te in folds:
        print "Load features fold {}".format(fold_idx)
        start = time.time()
        feats_tr, Y_tr = load_features('data/{}-f{}-lidc-feats'.format(
            args.detector, fold_idx))
        print 'tr time {}'.format(time.time() - start)

        start = time.time()
        feats_te = np.load('data/{}-f{}-te-lidc-feats.npy'.format(
            args.detector, fold_idx))
        print 'te time {}'.format(time.time() - start)
        print "-> tr {}, {}, te {}".format(feats_tr.shape, Y_tr.shape,
                                           feats_te.shape)

        # Train/test model
        print "Evaluate clf"
        #clf = KNeighborsClassifier(n_neighbors=3)
        clf = LinearSVC(C=args.svm_C)
        froc = evaluate_classifier(clf, feats_tr, Y_tr, blobs[te],
                                   pred_blobs[te], feats_te)
        frocs.append(froc)

        # Record model results
        current_frocs = [eval.average_froc([froc_i]) for froc_i in frocs]
        util.save_froc(current_frocs,
                       'data/lsvm-z-C{}-{}-folds-froc'.format(
                           args.svm_C, args.detector),
                       legends[:len(frocs)],
                       with_std=False)
        fold_idx += 1

    legends = ['Val FROC (LIDC-IDRI)']
    average_froc = eval.average_froc(frocs, np.linspace(0.0, 10.0, 101))
    util.save_froc([average_froc],
                   'data/lsvm-z-C{}-{}-val-froc'.format(
                       args.svm_C, args.detector),
                   legends,
                   with_std=True)
Пример #2
0
def model_selection(model_name, args):
    # Load img, blobs and masks
    imgs, blobs, paths = lidc.load(pts=True, set_name=args.ds_tr)
    if args.ds_tr != args.ds_val:
        _, blobs_val, _ = lidc.load(pts=True, set_name=args.ds_val)
    else:
        blobs_val = blobs

    pred_blobs = detect.read_blobs('data/{}-lidc-pred-blobs.pkl'.format(
        args.detector))
    masks = np.load('data/aam-lidc-pred-masks.npy')
    assert len(imgs) == len(masks) and len(pred_blobs) == len(masks)

    # Load folds
    folds = util.model_selection_folds(imgs)

    # Create rois
    rois = create_rois(imgs, masks, pred_blobs, args, real_blobs=blobs)
    rois_val = create_rois(imgs, masks, pred_blobs, args, real_blobs=blobs_val)

    #  Set up CV
    frocs = []
    legends = ['Fold {}'.format(i + 1) for i in range(util.NUM_VAL_FOLDS)]
    fold_idx = 0

    for tr, te in folds:
        # Load and setup model
        model = neural.create_network(model_name, args,
                                      (1, args.roi_size, args.roi_size))
        model.network.summary()
        model.name = model.name + '.fold-{}'.format(fold_idx + 1)
        if args.load_model:
            print "Loading model: data/{}".format(model.name)
            model.load('data/' + model.name)

        # Train/test model
        froc = evaluate_model(model, blobs[tr], pred_blobs[tr], rois[tr],
                              blobs_val[te], pred_blobs[te], rois_val[te],
                              args.load_model)
        frocs.append(froc)

        # Record model results
        current_frocs = [eval.average_froc([froc_i]) for froc_i in frocs]
        util.save_froc(current_frocs,
                       'data/{}-{}-folds-froc'.format(model.name[:-7],
                                                      args.detector),
                       legends[:len(frocs)],
                       with_std=False)
        model.save('data/' + model.name)
        fold_idx += 1

    legends = ['Val FROC (LIDC-IDRI)']
    average_froc = eval.average_froc(frocs, np.linspace(0.0, 10.0, 101))
    util.save_froc([average_froc],
                   'data/{}-{}-val-froc'.format(model.name[:-7],
                                                args.detector),
                   legends,
                   with_std=True)
Пример #3
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def save_blobs(method, args):
    images, blobs = lidc.load()
    masks = np.load('data/aam-lidc-pred-masks.npy')
    print 'masks shape {}'.format(masks.shape)
    pred_blobs, probs = detect_blobs(images,
                                     masks,
                                     args.threshold,
                                     real_blobs=blobs,
                                     method=method)
    write_blobs(
        pred_blobs,
        'data/{}-{}-aam-lidc-pred-blobs.pkl'.format(method, args.threshold))

    froc = eval.froc(blobs, pred_blobs, probs, distance='rad')
    froc = eval.average_froc([froc], DETECTOR_FPPI_RANGE)
    abpi = average_bppi(pred_blobs)

    util.save_froc([froc],
                   'data/{}-{}-lidc-blobs-froc'.format(method, args.threshold),
                   ['{} FROC on LIDC dataset'.format(method)],
                   fppi_max=100)
    np.savetxt('data/{}-{}-lidc-blobs-abpi.txt'.format(method, args.threshold),
               np.array([abpi]))
    print('Average blobs per image LIDC {}'.format(abpi))

    images, blobs = jsrt.load(set_name='jsrt140p')
    masks = np.load('data/aam-jsrt140p-pred-masks.npy')
    pred_blobs, probs = detect_blobs(images,
                                     masks,
                                     args.threshold,
                                     real_blobs=blobs,
                                     method=method)
    write_blobs(
        pred_blobs, 'data/{}-{}-aam-jsrt140p-pred-blobs.pkl'.format(
            method, args.threshold))

    froc = eval.froc(blobs, pred_blobs, probs, distance='rad')
    froc = eval.average_froc([froc], DETECTOR_FPPI_RANGE)
    abpi = average_bppi(pred_blobs)

    util.save_froc([froc],
                   'data/{}-{}-jsrt140p-blobs-froc'.format(
                       method, args.threshold),
                   ['{} FROC on JSRT140 positives dataset'.format(method)],
                   fppi_max=100)
    np.savetxt(
        'data/{}-{}-jsrt140p-blobs-abpi.txt'.format(method, args.threshold),
        np.array([abpi]))
    print('Average blobs per image JSRT positives {}'.format(abpi))
Пример #4
0
def model_evaluation_tr_lidc_te_jsrt(model_name, args):
    imgs_tr, blobs_tr = lidc.load()
    pred_blobs_tr = detect.read_blobs('data/{}-lidc-pred-blobs.pkl'.format(
        args.detector))
    masks_tr = np.load('data/aam-lidc-pred-masks.npy')
    imgs_te, blobs_te = jsrt.load(set_name='jsrt140p')
    pred_blobs_te = detect.read_blobs('data/{}-jsrt140p-pred-blobs.pkl'.format(
        args.detector))
    masks_te = np.load('data/aam-jsrt140p-pred-masks.npy')

    rois_tr = create_rois(imgs_tr, masks_tr, pred_blobs_tr, args)
    rois_te = create_rois(imgs_te, masks_te, pred_blobs_te, args)

    model = neural.create_network(model_name, args,
                                  (1, args.roi_size, args.roi_size))
    model.name += '-{}-lidc'.format(args.detector)
    froc = evaluate_model(model, blobs_tr, pred_blobs_tr, rois_tr, blobs_te,
                          pred_blobs_te, rois_te)
    froc = eval.average_froc([froc])

    legends = ['Test FROC (JSRT positives)']
    util.save_froc([froc],
                   'data/{}-{}-lidc-jsrt-froc'.format(model.name,
                                                      args.detector),
                   legends,
                   with_std=False)
Пример #5
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def exp_eval_ots_jsrt_only(args):
    # load LIDC & JSRT-positives data
    network = VGG16(mode='ots-feat', pool_layer=args.pool_layer)
    print "Model Evaluation Protocol 2"
    imgs, blobs = jsrt.load(set_name='jsrt140p')
    pred_blobs = detect.read_blobs('data/{}-jsrt140p-pred-blobs.pkl'.format(
        args.detector))
    masks = np.load('data/aam-jsrt140p-pred-masks.npy')
    rois = lnd.create_rois(imgs, masks, pred_blobs, args)
    folds = KFold(n_splits=5, shuffle=True,
                  random_state=util.FOLDS_SEED).split(imgs)

    fold_idx = 0
    frocs = []
    legends = ['Fold {}'.format(i + 1) for i in range(5)]
    for tr, te in folds:
        # Eval classifier
        rois_tr, Y_tr, _, _ = neural.create_train_test_sets(
            blobs_tr, pred_blobs_tr, rois[tr], None, None, None)
        generator = augment.get_default_generator(
            (args.roi_size, args.roi_size))
        rois_tr, Y_tr = augment.balance_and_perturb(rois_tr, Y_tr, generator)

        clf = LinearSVC(C=args.svm_c)
        froc = evaluate_classifier(clf, rois_tr, Y_tr, blobs[te],
                                   pred_blobs[te], feats[te])
        frocs.append(froc)

        current_frocs = [eval.average_froc([froc_i]) for froc_i in frocs]
        util.save_froc(current_frocs,
                       'data/lsvm-{}-jsrtonly-folds'.format(args.detector),
                       legends[:len(frocs)],
                       with_std=False)
        fold_idx += 1

    froc = eval.average_froc(frocs)
    legends = ['Test FROC (JSRT positives)']
    util.save_froc([froc],
                   'data/lsvm-{}-jsrtonly'.format(args.detector),
                   legends,
                   with_std=True)
Пример #6
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def save_performance_history(model_name, args, rois, blobs, pred_blobs, folds):
    model = neural.create_network(model_name, args,
                                  (1, args.roi_size, args.roi_size))
    model_name = model.name
    epochs = model.training_params['nb_epoch']
    frocs = []
    legends = []

    fold_idx = 0
    for tr, te in folds:
        model.load('data/' + model_name + '.fold-{}'.format(fold_idx + 1))
        frocs.append([])
        epochs_set = list(range(1, epochs + 1, 2))

        for epoch in epochs_set:
            weights_file_name = 'data/{}.weights.{:02d}.hdf5'.format(
                model.name, epoch)
            model.network.load_weights(weights_file_name)
            pred_blobs_te, probs_te = neural.predict_proba(
                model, pred_blobs[te], rois[te])
            frocs[fold_idx].append(
                eval.froc(blobs[te], pred_blobs_te, probs_te))
        fold_idx += 1

    frocs = np.array(frocs)
    froc_history = []
    aucs_history = []
    legends = []

    i = 0
    print "check -> frocs.shape {}".format(frocs.shape)
    for epoch in range(1, epochs + 1, 2):
        frocs_by_epoch = frocs[:, i]
        froc_history.append(
            eval.average_froc(np.array(frocs_by_epoch),
                              np.linspace(0.0, 10.0, 101)))
        aucs_history.append([])
        aucs_history[-1].append(
            util.auc(froc_history[-1], np.linspace(0.2, 4.0, 101))**2)
        aucs_history[-1].append(
            util.auc(froc_history[-1], np.linspace(0.0, 5.0, 101))**2)
        aucs_history[-1].append(
            util.auc(froc_history[-1], np.linspace(0.0, 10.0, 101))**2)
        legends.append('Val FROC (LIDC-IDRI), epoch {}'.format(epoch))
        i += 1

    util.save_froc(froc_history,
                   'data/{}-val-froc-by-epoch'.format(model_name),
                   legends,
                   with_std=False)
    util.save_aucs(list(range(1, epochs + 1, 2)), aucs_history,
                   'data/{}-val-aucs'.format(model_name),
                   ['AUC between 2-4', 'AUC between 0-5', 'AUC between 0-10'])
Пример #7
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def model_evaluation_jsrt_only(model_name, args):
    print "Model Evaluation Protocol 2"
    imgs, blobs = jsrt.load(set_name='jsrt140p')
    pred_blobs = detect.read_blobs('data/{}-jsrt140p-pred-blobs.pkl'.format(
        args.detector))
    masks = np.load('data/aam-jsrt140p-pred-masks.npy')
    rois = create_rois(imgs, masks, pred_blobs, args)
    folds = KFold(n_splits=5, shuffle=True,
                  random_state=util.FOLDS_SEED).split(imgs)

    fold_idx = 0
    frocs = []
    legends = ['Fold {}'.format(i + 1) for i in range(5)]
    for tr, te in folds:
        model = neural.create_network(model_name, args,
                                      (1, args.roi_size, args.roi_size))
        model.name = model.name + '-{}-lidc.fold-{}'.format(
            args.detector, fold_idx + 1)
        froc = evaluate_model(model, blobs[tr], pred_blobs[tr], rois[tr],
                              blobs[te], pred_blobs[te], rois[te])
        frocs.append(froc)

        current_frocs = [eval.average_froc([froc_i]) for froc_i in frocs]
        util.save_froc(current_frocs,
                       'data/{}-{}-only-jsrt-folds'.format(
                           model.name[:-7], args.detector),
                       legends[:len(frocs)],
                       with_std=False)
        model.save('data/' + model.name)
        fold_idx += 1

    froc = eval.average_froc(frocs)
    legends = ['Test FROC (JSRT positives)']
    util.save_froc([froc],
                   'data/{}-{}-only-jsrt'.format(model.name[:-7],
                                                 args.detector),
                   legends,
                   with_std=True)
Пример #8
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def model_selection_unsup(model_name, args):
    imgs, blobs, paths = lidc.load(pts=True)
    pred_blobs = detect.read_blobs('data/{}-lidc-pred-blobs.pkl'.format(
        args.detector))
    masks = np.load('data/aam-lidc-pred-masks.npy')

    assert len(imgs) == len(masks) and len(pred_blobs) == len(masks)

    folds = util.model_selection_folds(imgs)
    rois = create_rois(imgs, masks, pred_blobs, args, real_blobs=blobs)

    frocs = []
    legends = ['Fold {}'.format(i + 1) for i in range(util.NUM_VAL_FOLDS)]

    fold_idx = 0
    for tr, te in folds:
        model = neural.create_network(model_name, args,
                                      (1, args.roi_size, args.roi_size))
        model.name = model.name + '.fold-{}'.format(fold_idx + 1)
        froc = evaluate_model(model, blobs[tr], pred_blobs[tr], rois[tr],
                              blobs[te], pred_blobs[te], rois[te])
        frocs.append(froc)

        current_frocs = [eval.average_froc([froc_i]) for froc_i in frocs]
        util.save_froc(current_frocs,
                       'data/{}-{}-folds-froc'.format(model_name,
                                                      args.detector),
                       legends[:len(frocs)],
                       with_std=False)
        model.save('data/' + model.name)
        fold_idx += 1

    legends = ['Val FROC (LIDC-IDRI)']
    average_froc = eval.average_froc(frocs, np.linspace(0.0, 10.0, 101))
    util.save_froc([average_froc],
                   'data/{}-{}-val-froc'.format(model_name, args.detector),
                   legends,
                   with_std=True)
Пример #9
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def detection_vs_distance(method, args):
    images, blobs = lidc.load()
    masks = np.load('data/aam-lidc-pred-masks.npy')
    pred_blobs, probs = detect_blobs(images,
                                     masks,
                                     args.threshold,
                                     real_blobs=blobs,
                                     method=method)
    write_blobs(
        pred_blobs,
        'data/{}-{}-aam-lidc-pred-blobs.pkl'.format(method, args.threshold))

    froc = eval.froc(blobs, pred_blobs, probs, distance='rad')
    froc = eval.average_froc([froc], DETECTOR_FPPI_RANGE)
Пример #10
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def froc_by_epochs(data,
                   blobs,
                   augmented_blobs,
                   rois,
                   folds,
                   network_model,
                   nb_epochs=30,
                   epoch_interval=2):
    network_init = None
    roi_size = 32
    streams = 'none'

    imgs = []
    masks = []
    for i in range(len(data)):
        img, lung_mask = data.get(i, downsample=True)
        sampled, lce, norm = preprocess.preprocess_hardie(img,
                                                          lung_mask,
                                                          downsample=True)
        imgs.append([lce])
        masks.append(lung_mask)
    imgs = np.array(imgs)
    masks = np.array(masks)

    # Hardcoding blob set shapes
    blobs2 = blobs
    blobs = blobs.reshape((len(blobs), 3))

    nb_checkpoints = int(nb_epochs / epoch_interval)
    epochs = np.linspace(epoch_interval, nb_checkpoints * epoch_interval,
                         nb_checkpoints).astype(np.int)

    av_frocs = []
    names = []
    aucs1 = []
    aucs2 = []
    for epoch in epochs:
        frocs = []
        fold = 1
        for tr_idx, te_idx in folds:
            print "Fold {} ...".format(fold)
            X_train, Y_train, X_test, Y_test = neural.create_train_test_sets(
                rois[tr_idx],
                augmented_blobs[tr_idx],
                blobs[tr_idx],
                rois[te_idx],
                augmented_blobs[te_idx],
                blobs[te_idx],
                streams=streams,
                detector=True)

            # load network
            network = neural.create_network(network_model,
                                            X_train.shape,
                                            fold,
                                            streams,
                                            detector=False)
            name = 'data/{}_fold_{}.epoch_{}'.format(network_model, fold,
                                                     epoch)
            network.network.load_weights('{}_weights.h5'.format(name))

            # open network on detector mode
            detector_network = neural.create_network(network_model,
                                                     X_train.shape,
                                                     fold,
                                                     streams,
                                                     detector=True)
            copy_weights(network, detector_network)

            # evaluate network on test
            blobs_te_pred, probs_te_pred = detect_with_network(
                detector_network, imgs[te_idx], masks[te_idx], fold=fold)

            froc = eval.froc(blobs2[te_idx], blobs_te_pred, probs_te_pred)
            frocs.append(froc)
            fold += 1

        names.append('{}, epoch {}'.format(network_model, epoch))
        ops = eval.average_froc(frocs, fppi_range)
        av_frocs.append(ops)
        aucs1.append(util.auc(ops, range(0, 60)))
        aucs2.append(util.auc(ops, range(0, 40)))
        util.save_auc(
            np.array(range(1,
                           len(aucs1) + 1)) * epoch_interval, aucs1,
            'data/{}-auc-0-60'.format(network_model))
        util.save_auc(
            np.array(range(1,
                           len(aucs2) + 1)) * epoch_interval, aucs2,
            'data/{}-auc-0-40'.format(network_model))

    return av_frocs, names
Пример #11
0
def eval_cnn_detector(data, blobs, augmented_blobs, rois, folds, model):
    fold = 1
    network_init = None
    roi_size = 32
    streams = 'none'

    imgs = []
    masks = []
    for i in range(len(data)):
        img, lung_mask = data.get(i, downsample=True)
        sampled, lce, norm = preprocess.preprocess_hardie(img,
                                                          lung_mask,
                                                          downsample=True)
        imgs.append([lce])
        masks.append(lung_mask)
    imgs = np.array(imgs)
    masks = np.array(masks)

    # Hardcoding blob set shapes
    blobs2 = blobs
    blobs = blobs.reshape((len(blobs), 3))

    frocs = []
    for tr_idx, te_idx in folds:
        print "Fold {} ...".format(fold)
        X_train, Y_train, X_test, Y_test = neural.create_train_test_sets(
            rois[tr_idx],
            augmented_blobs[tr_idx],
            blobs[tr_idx],
            rois[te_idx],
            augmented_blobs[te_idx],
            blobs[te_idx],
            streams=streams,
            detector=True)

        network = neural.create_network(model,
                                        X_train.shape,
                                        fold,
                                        streams,
                                        detector=False)
        if network_init is not None:
            network.network.load_weights('data/{}_fold_{}_weights.h5'.format(
                network_init, fold))

        # save network
        name = 'data/{}_fold_{}'.format(model, fold)
        history = network.fit(X_train,
                              Y_train,
                              X_test,
                              Y_test,
                              streams=(streams != 'none'),
                              cropped_shape=(roi_size, roi_size),
                              checkpoint_prefix=name,
                              checkpoint_interval=2,
                              loss='mse')
        network.save(name)

        # open network on detector mode
        network.network.summary()
        detector_network = neural.create_network(model,
                                                 X_train.shape,
                                                 fold,
                                                 streams,
                                                 detector=True)
        detector_network.network.summary()
        copy_weights(network, detector_network)
        #network.network.load_weights('{}_weights.h5'.format(name))
        #network.load(name)

        # evaluate network on test
        blobs_te_pred, probs_te_pred = detect_with_network(detector_network,
                                                           imgs[te_idx],
                                                           masks[te_idx],
                                                           fold=fold)

        froc = eval.froc(blobs2[te_idx], blobs_te_pred, probs_te_pred)
        frocs.append(froc)
        fold += 1

    av_froc = eval.average_froc(frocs, fppi_range)
    return av_froc