Exploring the subtle and novel renal pathological changes in diabetic nephropathy using clustering analysis with deep learning.

Journal: Scientific reports
PMID:

Abstract

To decrease the number of chronic kidney disease (CKD), early diagnosis of diabetic kidney disease is required. We performed invariant information clustering (IIC)-based clustering on glomerular images obtained from nephrectomized kidneys of patients with and without diabetes. We also used visualizing techniques (gradient-weighted class activation mapping (Grad-CAM) and generative adversarial networks (GAN)) to identify the novel and early pathological changes on light microscopy in diabetic nephropathy. Overall, 13,251 glomerular images (7,799 images from diabetes cases and 5,542 images from non-diabetes cases) obtained from 45 patients in Kanazawa Medical University were clustered into 10 clusters by IIC. Diabetic clusters that mainly contained glomerular images from diabetes cases (Clusters 0, 1, and 2) and non-diabetic clusters that mainly contained glomerular images from non-diabetes cases (Clusters 8 and 9) were distinguished in the t-distributed stochastic neighbor embedding (t-SNE) analysis. Grad-CAM demonstrated that the outer portions of glomerular capillaries in diabetic clusters had characteristic lesions. Cycle-GAN showed that compared to Bowman's space, smaller glomerular tufts was a characteristic lesion of diabetic clusters. These findings might be the subtle and novel pathological changes on light microscopy in diabetic nephropathy.

Authors

  • Tomohisa Yabe
    Department of Nephrology, Kanazawa Medical University, 1-1 Daigaku, Uchinada, 920-0293, Ishikawa, Japan.
  • Yuko Tsuruyama
    Department of Internal medicine, Futatsuya Hospital, Kahoku, Japan.
  • Kazutoshi Nomura
    Department of Nephrology, Kanazawa Medical University, 1-1 Daigaku, Uchinada, 920-0293, Ishikawa, Japan.
  • Ai Fujii
    Department of Nephrology, Kanazawa Medical University, 1-1 Daigaku, Uchinada, 920-0293, Ishikawa, Japan.
  • Yuto Matsuda
    Department of Nephrology, Kanazawa Medical University, 1-1 Daigaku, Uchinada, 920-0293, Ishikawa, Japan.
  • Keiichiro Okada
    Department of Nephrology, Kanazawa Medical University, 1-1 Daigaku, Uchinada, 920-0293, Ishikawa, Japan.
  • Shogo Yamakoshi
    Division of Electrical, Information and Communication Engineering, Kanazawa University, Kanazawa, Japan.
  • Yuya Hamabe
    Division of Electrical, Information and Communication Engineering, Kanazawa University, Kanazawa, Japan.
  • Shogo Omote
    Division of Electrical, Information and Communication Engineering, Kanazawa University, Kanazawa, Japan.
  • Akihiro Shioya
    Department of Pathology and Laboratory Medicine, Kanazawa Medical University, Uchinada, Japan.
  • Norifumi Hayashi
    Department of Nephrology, Kanazawa Medical University, 1-1 Daigaku, Uchinada, 920-0293, Ishikawa, Japan.
  • Keiji Fujimoto
    Department of Nephrology, Kanazawa Medical University, 1-1 Daigaku, Uchinada, 920-0293, Ishikawa, Japan.
  • Yuki Todo
    School of Electrical and Computer Engineering, Kanazawa University, Kanazawa-shi 920-1192, Japan.
  • Tatsuro Tanaka
    Department of Maxillofacial Radiology, Graduate School of Medical and Dental Sciences, Kagoshima University, Kagoshima, Japan.
  • Sohsuke Yamada
    Department of Pathology and Laboratory Medicine, Kanazawa Medical University, Uchinada, Japan.
  • Akira Shimizu
    Department of Analytic Human Pathology, Nippon Medical School, Tokyo 113-8602, Japan. ashimizu@nms.ac.jp.
  • Katsuhito Miyazawa
    Department of Urology, Kanazawa Medical University, Uchinada, Japan.
  • Hitoshi Yokoyama
    Department of Nephrology, Kanazawa Medical University School of Medicine, Kanazawa, Japan.
  • Kengo Furuichi
    Department of Nephrology, Kanazawa Medical University, 1-1 Daigaku, Uchinada, 920-0293, Ishikawa, Japan. furuichi@kanazawa-med.ac.jp.