nnUNet_calvingfront_detection
/
nnunet
/dataset_conversion
/Task029_LiverTumorSegmentationChallenge.py
# 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 | |
import SimpleITK as sitk | |
from batchgenerators.utilities.file_and_folder_operations import * | |
from multiprocessing import Pool | |
import numpy as np | |
from nnunet.configuration import default_num_threads | |
from scipy.ndimage import label | |
def export_segmentations(indir, outdir): | |
niftis = subfiles(indir, suffix='nii.gz', join=False) | |
for n in niftis: | |
identifier = str(n.split("_")[-1][:-7]) | |
outfname = join(outdir, "test-segmentation-%s.nii" % identifier) | |
img = sitk.ReadImage(join(indir, n)) | |
sitk.WriteImage(img, outfname) | |
def export_segmentations_postprocess(indir, outdir): | |
maybe_mkdir_p(outdir) | |
niftis = subfiles(indir, suffix='nii.gz', join=False) | |
for n in niftis: | |
print("\n", n) | |
identifier = str(n.split("_")[-1][:-7]) | |
outfname = join(outdir, "test-segmentation-%s.nii" % identifier) | |
img = sitk.ReadImage(join(indir, n)) | |
img_npy = sitk.GetArrayFromImage(img) | |
lmap, num_objects = label((img_npy > 0).astype(int)) | |
sizes = [] | |
for o in range(1, num_objects + 1): | |
sizes.append((lmap == o).sum()) | |
mx = np.argmax(sizes) + 1 | |
print(sizes) | |
img_npy[lmap != mx] = 0 | |
img_new = sitk.GetImageFromArray(img_npy) | |
img_new.CopyInformation(img) | |
sitk.WriteImage(img_new, outfname) | |
if __name__ == "__main__": | |
train_dir = "/media/fabian/DeepLearningData/tmp/LITS-Challenge-Train-Data" | |
test_dir = "/media/fabian/My Book/datasets/LiTS/test_data" | |
output_folder = "/media/fabian/My Book/MedicalDecathlon/MedicalDecathlon_raw_splitted/Task029_LITS" | |
img_dir = join(output_folder, "imagesTr") | |
lab_dir = join(output_folder, "labelsTr") | |
img_dir_te = join(output_folder, "imagesTs") | |
maybe_mkdir_p(img_dir) | |
maybe_mkdir_p(lab_dir) | |
maybe_mkdir_p(img_dir_te) | |
def load_save_train(args): | |
data_file, seg_file = args | |
pat_id = data_file.split("/")[-1] | |
pat_id = "train_" + pat_id.split("-")[-1][:-4] | |
img_itk = sitk.ReadImage(data_file) | |
sitk.WriteImage(img_itk, join(img_dir, pat_id + "_0000.nii.gz")) | |
img_itk = sitk.ReadImage(seg_file) | |
sitk.WriteImage(img_itk, join(lab_dir, pat_id + ".nii.gz")) | |
return pat_id | |
def load_save_test(args): | |
data_file = args | |
pat_id = data_file.split("/")[-1] | |
pat_id = "test_" + pat_id.split("-")[-1][:-4] | |
img_itk = sitk.ReadImage(data_file) | |
sitk.WriteImage(img_itk, join(img_dir_te, pat_id + "_0000.nii.gz")) | |
return pat_id | |
nii_files_tr_data = subfiles(train_dir, True, "volume", "nii", True) | |
nii_files_tr_seg = subfiles(train_dir, True, "segmen", "nii", True) | |
nii_files_ts = subfiles(test_dir, True, "test-volume", "nii", True) | |
p = Pool(default_num_threads) | |
train_ids = p.map(load_save_train, zip(nii_files_tr_data, nii_files_tr_seg)) | |
test_ids = p.map(load_save_test, nii_files_ts) | |
p.close() | |
p.join() | |
json_dict = OrderedDict() | |
json_dict['name'] = "LITS" | |
json_dict['description'] = "LITS" | |
json_dict['tensorImageSize'] = "4D" | |
json_dict['reference'] = "see challenge website" | |
json_dict['licence'] = "see challenge website" | |
json_dict['release'] = "0.0" | |
json_dict['modality'] = { | |
"0": "CT" | |
} | |
json_dict['labels'] = { | |
"0": "background", | |
"1": "liver", | |
"2": "tumor" | |
} | |
json_dict['numTraining'] = len(train_ids) | |
json_dict['numTest'] = len(test_ids) | |
json_dict['training'] = [{'image': "./imagesTr/%s.nii.gz" % i, "label": "./labelsTr/%s.nii.gz" % i} for i in train_ids] | |
json_dict['test'] = ["./imagesTs/%s.nii.gz" % i for i in test_ids] | |
with open(os.path.join(output_folder, "dataset.json"), 'w') as f: | |
json.dump(json_dict, f, indent=4, sort_keys=True) |