End-to-end interstitial fibrosis assessment of kidney biopsies with a machine learning-based model

Author:

Liu Zhi-Yong1,Lin Chi-Hung1,Wang Hsiang-Sheng2,Wen Mei-Chin3,Lin Wei-Chou4,Huang Shun-Chen5,Tu Kun-Hua6,Kuo Chang-Fu17,Chen Tai-Di2ORCID

Affiliation:

1. Center for Artificial Intelligence in Medicine, Chang Gung Memorial Hospital Linkou Main Branch , Taoyuan , Taiwan

2. Department of Anatomic Pathology, Chang Gung Memorial Hospital Linkou Main Branch , Taoyuan , Taiwan

3. Department of Pathology, China Medical University Hsinchu Hospital , Hsinchu , Taiwan

4. Department of Pathology, National Taiwan University Hospital , Taipei, Taiwan

5. Department of Anatomic Pathology, Chang Gung Memorial Hospital Kaohsiung Branch , Kaohsiung, Taiwan

6. Kidney Research Center, Department of Nephrology, Chang Gung Memorial Hospital Linkou Main Branch , Taoyuan , Taiwan

7. Division of Rheumatology, Allergy, and Immunology, Chang Gung Memorial Hospital Linkou Main Branch , Taoyuan , Taiwan

Abstract

ABSTRACT Background The extent of interstitial fibrosis in the kidney not only correlates with renal function at the time of biopsy but also predicts future renal outcome. However, its assessment by pathologists lacks good agreement. The aim of this study is to construct a machine learning-based model that enables automatic and reliable assessment of interstitial fibrosis in human kidney biopsies. Methods Validated cortex, glomerulus and tubule segmentation algorithms were incorporated into a single model to assess the extent of interstitial fibrosis. The model performances were compared with expert renal pathologists and correlated with patients’ renal functional data. Results Compared with human raters, the model had the best agreement [intraclass correlation coefficient (ICC) 0.90] to the reference in 50 test cases. The model also had a low mean bias and the narrowest 95% limits of agreement. The model was robust against colour variation on images obtained at different times, through different scanners, or from outside institutions with excellent ICCs of 0.92–0.97. The model showed significantly better test-retest reliability (ICC 0.98) than humans (ICC 0.76–0.94) and the amount of interstitial fibrosis inferred by the model strongly correlated with 405 patients’ serum creatinine (r = 0.65–0.67) and estimated glomerular filtration rate (r = −0.74 to −0.76). Conclusions This study demonstrated that a trained machine learning-based model can faithfully simulate the whole process of interstitial fibrosis assessment, which traditionally can only be carried out by renal pathologists. Our data suggested that such a model may provide more reliable results, thus enabling precision medicine.

Funder

Chang Gung Memorial Hospital

Centre for Artificial Intelligence in Medicine

Publisher

Oxford University Press (OUP)

Subject

Transplantation,Nephrology

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