from light_training.dataloading.dataset import get_train_val_test_loader_from_train from monai.utils import set_determinism import torch import os import numpy as np import SimpleITK as sitk from medpy import metric import argparse from tqdm import tqdm import numpy as np set_determinism(123) parser = argparse.ArgumentParser() parser.add_argument("--pred_name", required=True, type=str) results_root = "prediction_results" args = parser.parse_args() pred_name = args.pred_name def cal_metric(gt, pred, voxel_spacing): if pred.sum() > 0 and gt.sum() > 0: dice = metric.binary.dc(pred, gt) hd95 = metric.binary.hd95(pred, gt, voxelspacing=voxel_spacing) return np.array([dice, hd95]) else: return np.array([0.0, 50]) def each_cases_metric(gt, pred, voxel_spacing): classes_num = 3 class_wise_metric = np.zeros((classes_num, 2)) for cls in range(0, classes_num): class_wise_metric[cls, ...] = cal_metric(pred[cls], gt[cls], voxel_spacing) print(class_wise_metric) return class_wise_metric def convert_labels(labels): ## TC, WT and ET labels = labels.unsqueeze(dim=0) result = [(labels == 1) | (labels == 3), (labels == 1) | (labels == 3) | (labels == 2), labels == 3] return torch.cat(result, dim=0).float() if __name__ == "__main__": data_dir = "./data/fullres/train" raw_data_dir = "./data/raw_data/BraTS2023/ASNR-MICCAI-BraTS2023-GLI-Challenge-TrainingData/" train_ds, val_ds, test_ds = get_train_val_test_loader_from_train(data_dir) print(len(test_ds)) all_results = np.zeros((250,3,2)) ind = 0 for batch in tqdm(test_ds, total=len(test_ds)): properties = batch["properties"] case_name = properties["name"] gt_itk = os.path.join(raw_data_dir, case_name, f"seg.nii.gz") voxel_spacing = [1, 1, 1] gt_itk = sitk.ReadImage(gt_itk) gt_array = sitk.GetArrayFromImage(gt_itk).astype(np.int32) gt_array = torch.from_numpy(gt_array) gt_array = convert_labels(gt_array).numpy() pred_itk = sitk.ReadImage(f"./{results_root}/{pred_name}/{case_name}.nii.gz") pred_array = sitk.GetArrayFromImage(pred_itk) m = each_cases_metric(gt_array, pred_array, voxel_spacing) all_results[ind, ...] = m ind += 1 os.makedirs(f"./{results_root}/result_metrics/", exist_ok=True) np.save(f"./{results_root}/result_metrics/{pred_name}.npy", all_results) result = np.load(f"./{results_root}/result_metrics/{pred_name}.npy") print(result.shape) print(result.mean(axis=0)) print(result.std(axis=0))