| import sys |
| import SimpleITK as sitk |
| import json |
| import glob |
| import os |
| from tqdm import tqdm |
| import numpy as np |
| import torch |
|
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| |
| def get_ct_normalisation_values(ct_plan_path): |
| """ |
| Get the mean and standard deviation for CT normalisation. |
| """ |
| |
| with open(ct_plan_path, "r") as f: |
| ct_plan = json.load(f) |
|
|
| ct_mean = ct_plan['foreground_intensity_properties_per_channel']["0"]['mean'] |
| ct_std = ct_plan['foreground_intensity_properties_per_channel']["0"]['std'] |
| print(f"CT mean: {ct_mean}, CT std: {ct_std}") |
| return ct_mean, ct_std |
|
|
| def revert_normalisation(pred_path, ct_mean, ct_std, save_path=None, mask_path=None, mask_outside_value=-1000): |
| """ |
| Revert the normalisation of a CT image. |
| """ |
| if save_path is None: |
| save_path = pred_path + '_revert_norm' |
| os.makedirs(save_path, exist_ok=True) |
| imgs = glob.glob(os.path.join(pred_path, "*.nii.gz")) + \ |
| glob.glob(os.path.join(pred_path, "*.mha")) |
|
|
| if mask_path: |
| print(f"Applying mask from {mask_path} with outside value {mask_outside_value}") |
| else: |
| print("No mask provided, normalisation will be applied to all images.") |
| for img in tqdm(imgs): |
| img_sitk = sitk.ReadImage(img) |
| img_array = sitk.GetArrayFromImage(img_sitk) |
| img_array = img_array * ct_std + ct_mean |
| img_sitk_reverted = sitk.GetImageFromArray(img_array) |
| img_sitk_reverted.CopyInformation(img_sitk) |
|
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| |
| if mask_path: |
| filename = os.path.basename(img) |
| filename = filename.replace('_0000', '') if '_0000' in filename else filename |
| mask_itk = sitk.ReadImage(os.path.join(mask_path, filename)) |
| img_sitk_reverted = sitk.Mask(img_sitk_reverted, mask_itk, outsideValue=mask_outside_value) |
| sitk.WriteImage(img_sitk_reverted, os.path.join(save_path, os.path.basename(img))) |
| |
| import SimpleITK as sitk |
| import numpy as np |
|
|
| def print_sitk_space(img: sitk.Image, name: str = "img"): |
| if not isinstance(img, sitk.Image): |
| print(f"[{name}] 不是 SimpleITK.Image(得到 {type(img)}),没有空间信息可打印。") |
| return |
| size = img.GetSize() |
| spacing = img.GetSpacing() |
| origin = img.GetOrigin() |
| direction = np.array(img.GetDirection()) |
| dim = img.GetDimension() |
| if direction.size == dim*dim: |
| direction = direction.reshape(dim, dim) |
|
|
| print(f"[{name}] size (x,y,z) = {size}") |
| print(f"[{name}] spacing (x,y,z) = {spacing}") |
| print(f"[{name}] origin (x,y,z) = {origin}") |
| print(f"[{name}] direction matrix =\n{direction}") |
| print(f"[{name}] pixel type = {img.GetPixelIDTypeAsString()}") |
|
|
| def revert_normalisation_modified(pred_path, ct_mean, ct_std, save_path=None, |
| mask_path=None, mask_sitk=None, mask_outside_value=-1000): |
| if save_path is None: |
| save_path = pred_path + '_revert_norm' |
| os.makedirs(save_path, exist_ok=True) |
|
|
| imgs = glob.glob(os.path.join(pred_path, "*.nii.gz")) + \ |
| glob.glob(os.path.join(pred_path, "*.mha")) |
|
|
| if mask_path: |
| print(f"Applying mask from {mask_path} with outside value {mask_outside_value}") |
| elif mask_sitk is not None: |
| print(f"Applying provided mask_sitk with outside value {mask_outside_value}") |
| else: |
| print("No mask provided, normalisation will be applied to all images.") |
|
|
| for img in tqdm(imgs): |
| img_sitk = sitk.ReadImage(img) |
| img_array = sitk.GetArrayFromImage(img_sitk) |
| img_array = img_array * ct_std + ct_mean |
| img_sitk_reverted = sitk.GetImageFromArray(img_array) |
| img_sitk_reverted.CopyInformation(img_sitk) |
|
|
| if mask_path: |
| filename = os.path.basename(img) |
| filename = filename.replace('_0000', '') if '_0000' in filename else filename |
| mask_itk = sitk.ReadImage(os.path.join(mask_path, filename)) |
| img_sitk_reverted = sitk.Mask(img_sitk_reverted, mask_itk, outsideValue=mask_outside_value) |
| elif mask_sitk is not None: |
| img_sitk_reverted = sitk.Mask(img_sitk_reverted, mask_sitk, outsideValue=mask_outside_value) |
|
|
| sitk.WriteImage(img_sitk_reverted, os.path.join(save_path, os.path.basename(img))) |
| def revert_normalisation_single_modified(pred_sitk, ct_mean, ct_std, mask_sitk=None, mr_sitk = None,outside_value=-1000): |
| print(type(pred_sitk)) |
| |
| |
| |
| arr = pred_sitk * float(ct_std) + float(ct_mean) |
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| if mask_sitk is not None: |
| out = sitk.Mask(arr, mask_sitk, outsideValue=outside_value) |
|
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| return out |
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| def revert_normalisation_single(pred_sitk, ct_mean, ct_std): |
| arr = sitk.GetArrayFromImage(pred_sitk) |
| arr = arr * ct_std + ct_mean |
| reverted = sitk.GetImageFromArray(arr) |
| reverted.CopyInformation(pred_sitk) |
| return reverted |
| if __name__ == "__main__": |
| ct_plan_path = "/datasets/work/hb-synthrad2023/work/synthrad2025/bw_workplace/data/nnunet_struct/preprocessed/Dataset203_synthrad2025_task1_CT/nnUNetPlans.json" |
| ct_mean, ct_std = get_ct_normalisation_values(ct_plan_path) |
| pred_path = "/datasets/work/hb-synthrad2023/work/synthrad2025/bw_workplace/data/nnunet_struct/results/Dataset202_synthrad2025_task1_MR_mask/nnUNetTrainerMRCT__nnUNetPlans__3d_fullres/fold_0/validation" |
| revert_normalisation(pred_path, ct_mean, ct_std, save_path=pred_path + "_revert_norm") |
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