# Copyright 2020 Division of Medical Image Computing, German Cancer Research Center (DKFZ), Heidelberg, Germany # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from collections import OrderedDict from nnunet.paths import nnUNet_raw_data from batchgenerators.utilities.file_and_folder_operations import * import shutil if __name__ == "__main__": base = "/media/yunlu/10TB/research/other_data/Multi-Atlas Labeling Beyond the Cranial Vault/RawData/" task_id = 17 task_name = "AbdominalOrganSegmentation" prefix = 'ABD' foldername = "Task%03.0d_%s" % (task_id, task_name) out_base = join(nnUNet_raw_data, foldername) imagestr = join(out_base, "imagesTr") imagests = join(out_base, "imagesTs") labelstr = join(out_base, "labelsTr") maybe_mkdir_p(imagestr) maybe_mkdir_p(imagests) maybe_mkdir_p(labelstr) train_folder = join(base, "Training/img") label_folder = join(base, "Training/label") test_folder = join(base, "Test/img") train_patient_names = [] test_patient_names = [] train_patients = subfiles(train_folder, join=False, suffix = 'nii.gz') for p in train_patients: serial_number = int(p[3:7]) train_patient_name = f'{prefix}_{serial_number:03d}.nii.gz' label_file = join(label_folder, f'label{p[3:]}') image_file = join(train_folder, p) shutil.copy(image_file, join(imagestr, f'{train_patient_name[:7]}_0000.nii.gz')) shutil.copy(label_file, join(labelstr, train_patient_name)) train_patient_names.append(train_patient_name) test_patients = subfiles(test_folder, join=False, suffix=".nii.gz") for p in test_patients: p = p[:-7] image_file = join(test_folder, p + ".nii.gz") serial_number = int(p[3:7]) test_patient_name = f'{prefix}_{serial_number:03d}.nii.gz' shutil.copy(image_file, join(imagests, f'{test_patient_name[:7]}_0000.nii.gz')) test_patient_names.append(test_patient_name) json_dict = OrderedDict() json_dict['name'] = "AbdominalOrganSegmentation" json_dict['description'] = "Multi-Atlas Labeling Beyond the Cranial Vault Abdominal Organ Segmentation" json_dict['tensorImageSize'] = "3D" json_dict['reference'] = "https://www.synapse.org/#!Synapse:syn3193805/wiki/217789" json_dict['licence'] = "see challenge website" json_dict['release'] = "0.0" json_dict['modality'] = { "0": "CT", } json_dict['labels'] = OrderedDict({ "00": "background", "01": "spleen", "02": "right kidney", "03": "left kidney", "04": "gallbladder", "05": "esophagus", "06": "liver", "07": "stomach", "08": "aorta", "09": "inferior vena cava", "10": "portal vein and splenic vein", "11": "pancreas", "12": "right adrenal gland", "13": "left adrenal gland"} ) json_dict['numTraining'] = len(train_patient_names) json_dict['numTest'] = len(test_patient_names) json_dict['training'] = [{'image': "./imagesTr/%s" % train_patient_name, "label": "./labelsTr/%s" % train_patient_name} for i, train_patient_name in enumerate(train_patient_names)] json_dict['test'] = ["./imagesTs/%s" % test_patient_name for test_patient_name in test_patient_names] save_json(json_dict, os.path.join(out_base, "dataset.json"))