{ "imports": [ "$import glob", "$import os" ], "bundle_root": ".", "ckpt_dir": "$@bundle_root + '/models'", "output_dir": "$@bundle_root + '/eval'", "dataset_dir": "$@bundle_root + '/data'", "images": "$[{'artery':a, 'vein':b, 'excret':c }for a,b,c in zip(glob.glob(@dataset_dir + '/*/12.nii.gz'), glob.glob(@dataset_dir + '/*/22-.nii.gz'), glob.glob(@dataset_dir + '/*/32-.nii.gz'))]", "labels": "$list(glob.glob(@dataset_dir + '/*/merged.nii.gz'))", "device": "$torch.device('cuda:0' if torch.cuda.is_available() else 'cpu')", "network_def": { "_target_": "SegResNet", "in_channels": 3, "out_channels": 6, "init_filters": 32, "upsample_mode": "deconv", "dropout_prob": 0.2, "norm_name": "group", "blocks_down": [ 1, 2, 2, 4 ], "blocks_up": [ 1, 1, 1 ] }, "network": "$@network_def.to(@device)", "preprocessing": { "_target_": "Compose", "transforms": [ { "_target_": "LoadImaged", "keys": [ "artery", "vein", "excret", "label" ] }, { "_target_": "EnsureChannelFirstd", "keys": [ "artery", "vein", "excret" ] }, { "_target_": "Orientationd", "keys": [ "artery", "vein", "excret" ], "axcodes": "LPS" }, { "_target_": "Spacingd", "keys": [ "artery", "vein", "excret" ], "pixdim": [ 0.8, 0.8, 0.8 ], "mode": "bilinear" }, { "_target_": "scripts.my_transforms.ConcatImages", "keys_merge": [ "artery", "vein", "excret" ], "keys_out": "image" }, { "_target_": "ScaleIntensityRanged", "keys": "image", "a_min": -1000, "a_max": 1000, "b_min": 0.0, "b_max": 1.0, "clip": true }, { "_target_": "EnsureTyped", "keys": "image" } ] }, "dataset": { "_target_": "Dataset", "data": "$[{'label': l, **i} for i, l in zip(@images, @labels)]", "transform": "@preprocessing" }, "dataloader": { "_target_": "DataLoader", "dataset": "@dataset", "batch_size": 1, "shuffle": false, "num_workers": 4 }, "inferer": { "_target_": "SlidingWindowInferer", "roi_size": [ 96, 96, 96 ], "sw_batch_size": 4, "overlap": 0.25 }, "postprocessing": { "_target_": "Compose", "transforms": [ { "_target_": "Invertd", "transform": "$@preprocessing", "device": "@device", "keys": "pred", "orig_keys": "artery", "meta_keys": "pred_meta_dict", "nearest_interp": false, "to_tensor": true }, { "_target_": "Activationsd", "keys": "pred", "softmax": false, "sigmoid": true }, { "_target_": "AsDiscreted", "keys": "pred", "threshold": 0.5 }, { "_target_": "scripts.my_transforms.MergeClassesd", "keys": "pred" }, { "_target_": "SaveImaged", "keys": "pred", "meta_keys": "pred_meta_dict", "data_root_dir": "@dataset_dir", "output_dir": "@output_dir" }, { "_target_": "SaveImaged", "keys": "label", "data_root_dir": "@dataset_dir", "output_dir": "@output_dir" } ] }, "handlers": [ { "_target_": "CheckpointLoader", "load_path": "$@ckpt_dir + '/model.pt'", "load_dict": { "model": "@network" }, "strict": "True" }, { "_target_": "StatsHandler", "iteration_log": false } ], "evaluator": { "_target_": "SupervisedEvaluator", "device": "@device", "val_data_loader": "@dataloader", "network": "@network", "inferer": "@inferer", "postprocessing": "@postprocessing", "val_handlers": "@handlers", "amp": false }, "inference": [ "$setattr(torch.backends.cudnn, 'benchmark', True)", "$@evaluator.run()" ] }