A Deep Learning-Based Approach for Glomeruli Instance Segmentation from Multistained Renal Biopsy Pathologic Images.

Journal: The American journal of pathology
PMID:

Abstract

Glomeruli instance segmentation from pathologic images is a fundamental step in the automatic analysis of renal biopsies. Glomerular histologic manifestations vary widely among diseases and cases, and several special staining methods are necessary for pathologic diagnosis. A robust model is needed to segment and classify glomeruli with different staining methods and apply in cases with various glomerular pathologic changes. Herein, pathologic images from renal biopsy slides stained with three basic special staining methods were used to build the data sets. The snapshot group included 1970 glomeruli from 516 patients, and the whole-slide image group included 8665 glomeruli from 148 patients. Cascade Mask region-based convolutional neural net architecture was trained to detect, classify, and segment glomeruli into three categories: i) GN, structural normal; ii) global sclerosis; and iii) glomerular with other lesions. In the snapshot group, total glomeruli, GN, global sclerosis, and glomerular with other lesions achieved an F1 score of 0.914, 0.896, 0.681, and 0.756, respectively, which were comparable with those in the whole-slide image group (0.940, 0.839, 0.806, and 0.753, respectively). Among the three categories, GN achieved the best instance segmentation effect in both groups, as determined by average precision, average recall, F1 score, and Mask mean Intersection over Union. The present model segments and classifies multistained glomeruli with efficiency and robustness. It can be applied as the first step for more detailed glomerular histologic analysis.

Authors

  • Lei Jiang
    Department of Thoracic Surgery, Shanghai Pulmonary Hospital, Tongji University, Shanghai 200433, China.
  • Wenkai Chen
    School of Information and Communication Engineering, Beijing University of Posts and Telecommunications, Beijing, China.
  • Bao Dong
    Department of Nephrology, Peking University People's Hospital, Beijing, China.
  • Ke Mei
    School of Information and Communication Engineering, Beijing University of Posts and Telecommunications, Beijing, China.
  • Chuang Zhu
    The Center for Data Science, the Beijing Key Laboratory of Network System Architecture and Convergence, the School of Information and Communication Engineering, Beijing University of Posts and Telecommunications, Xitucheng Road, Beijing, China. czhu@bupt.edu.cn.
  • Jun Liu
    Department of Radiology, Second Xiangya Hospital, Changsha, Hunan, China.
  • Meishun Cai
    Department of Nephrology, Peking University People's Hospital, Beijing, China.
  • Yu Yan
    School of Preclinical Medicine, Guangxi Medical University, No. 22, Shuangyong Road, Nanning, Guangxi 530021, China.
  • Gongwei Wang
    Department of Pathology, Peking University People's Hospital, Beijing, China.
  • Li Zuo
    Department of Nephrology, Peking University People's Hospital, Beijing, China.
  • Hongxia Shi
    Electron Microscope Lab, Peking University People's Hospital, Beijing, China. Electronic address: hxshi55@sina.com.