import os import numpy as np import pandas as pd import SimpleITK as sitk from skimage.measure import label, regionprops from glob import glob from tqdm import tqdm masks = sorted(glob('luna25_ts_seg/*.nii.gz')) record = [] for mask_file in tqdm(masks): mask_itk = sitk.ReadImage(mask_file) mask_arr = sitk.GetArrayFromImage(mask_itk) unit_volume = np.prod(mask_itk.GetSpacing()) binary_mask = (mask_arr == 2).astype(int) # Extract nodule label labeled_mask = label(binary_mask, connectivity=3) # 3D connectivity properties = regionprops(labeled_mask) for prop in properties: # print(f"Region {prop.label}: Centroid = {prop.centroid}, Volume = {prop.area} voxels") record.append({ 'mask_file': os.path.basename(mask_file), 'centroid': np.round(prop.centroid, 3), 'volume_px': int(prop.area), 'volume_mm3': np.round(prop.area * unit_volume, 3), 'bbox': np.array(prop.bbox), # 'axis_major_length': prop.axis_major_length, # 'axis_minor_length': prop.axis_minor_length }) record_df = pd.DataFrame(record) record_df.to_csv('metadata.csv', index=False)