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Chronic Changes on Kidney Histology by a Multiclass Artificial Intelligence Model.

Publication ,  Journal Article
Denic, A; Asghar, MS; Stetzik, L; Reynolds, A; Jagtap, JM; Kumar, M; Mullan, AF; Janowczyk, AR; Alexander, MP; Smith, ML; Salem, FE; Rule, AD ...
Published in: Kidney Int Rep
August 2025

INTRODUCTION: Chronic changes in kidney histology are often approximated by using human vision but with limited accuracy. METHODS: An interactive annotation tool trained an artificial intelligence (AI) model for segmenting structures on whole slide images (WSIs) of kidney tissue. A total of 20,509 annotations trained the AI model with 20 classes of structures, including separate detection of cortex from medulla. We compared the AI model detections with human-based annotations in an independent validation set. The AI model was then applied to 1426 donors and 1699 patients with renal tumor to calculate chronic changes as defined by measures of nephron size (glomerular volume, cortex volume per glomerulus, and mean tubular areas) and nephrosclerosis (globally sclerotic glomeruli, increased interstitium, increased tubular atrophy (TA), arteriolar hyalinosis (AH), and artery luminal stenosis from intimal thickening). We then assessed whether chronic kidney disease (CKD) outcomes were associated with these chronic changes. RESULTS: During the AI model validation step, the agreement between the AI detections and human annotations was similar to the agreement between human pairs, except that the AI model showed less agreement with AH. Chronic changes calculated solely from AI-based detections associated with low glomerular filtration rate (GFR) during follow-up after kidney donation and with kidney failure after a radical nephrectomy for tumor. A chronicity score based on AI detections was calculated from cortex per glomerulus, percent glomerulosclerosis, TA foci density, and mean area of AH lesions and showed good prognostic discrimination for kidney failure (cross-validation C-statistic = 0.819). CONCLUSION: A multiclass AI model can help automate quantification of chronic changes on WSIs of kidney histology.

Duke Scholars

Published In

Kidney Int Rep

DOI

EISSN

2468-0249

Publication Date

August 2025

Volume

10

Issue

8

Start / End Page

2668 / 2679

Location

United States

Related Subject Headings

  • 42 Health sciences
  • 32 Biomedical and clinical sciences
 

Citation

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Denic, A., Asghar, M. S., Stetzik, L., Reynolds, A., Jagtap, J. M., Kumar, M., … Rule, A. D. (2025). Chronic Changes on Kidney Histology by a Multiclass Artificial Intelligence Model. Kidney Int Rep, 10(8), 2668–2679. https://doi.org/10.1016/j.ekir.2025.05.035
Denic, Aleksandar, Muhammad S. Asghar, Lucas Stetzik, Austin Reynolds, Jaidip M. Jagtap, Mahesh Kumar, Aidan F. Mullan, et al. “Chronic Changes on Kidney Histology by a Multiclass Artificial Intelligence Model.Kidney Int Rep 10, no. 8 (August 2025): 2668–79. https://doi.org/10.1016/j.ekir.2025.05.035.
Denic A, Asghar MS, Stetzik L, Reynolds A, Jagtap JM, Kumar M, et al. Chronic Changes on Kidney Histology by a Multiclass Artificial Intelligence Model. Kidney Int Rep. 2025 Aug;10(8):2668–79.
Denic, Aleksandar, et al. “Chronic Changes on Kidney Histology by a Multiclass Artificial Intelligence Model.Kidney Int Rep, vol. 10, no. 8, Aug. 2025, pp. 2668–79. Pubmed, doi:10.1016/j.ekir.2025.05.035.
Denic A, Asghar MS, Stetzik L, Reynolds A, Jagtap JM, Kumar M, Mullan AF, Janowczyk AR, Alexander MP, Smith ML, Salem FE, Barisoni L, Rule AD. Chronic Changes on Kidney Histology by a Multiclass Artificial Intelligence Model. Kidney Int Rep. 2025 Aug;10(8):2668–2679.
Journal cover image

Published In

Kidney Int Rep

DOI

EISSN

2468-0249

Publication Date

August 2025

Volume

10

Issue

8

Start / End Page

2668 / 2679

Location

United States

Related Subject Headings

  • 42 Health sciences
  • 32 Biomedical and clinical sciences