4.6 Article

Image Analysis Pipeline for Renal Allograft Evaluation and Fibrosis Quantification

Journal

KIDNEY INTERNATIONAL REPORTS
Volume 6, Issue 7, Pages 1878-1887

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ekir.2021.04.019

Keywords

digital pathology; fibrosis; kidney transplantation

Funding

  1. Woodruff Health Sciences Center of Emory University

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Digital pathology technology allows for automatic detection of glomeruli and selection of cortical regions of interest in kidney allograft biopsy specimens. The automatic fibrosis quantification was moderately correlated with pathologists' assessment, but not significantly associated with eGFR or allograft survival. This pipeline provides a promising method for developing and applying image analysis algorithms in kidney pathology.
Introduction: Digital pathology improves the standardization and reproducibility of kidney biopsy specimen assessment. We developed a pipeline allowing the analysis of many images without requiring human preprocessing and illustrate its use with a simple algorithm for quantification of interstitial fibrosis on a large dataset of kidney allograft biopsy specimens. Methods: Masson trichrome-stained images from kidney allograft biopsy specimens were used to train and validate a glomeruli detection algorithm using a VGG19 convolutional neural network and an automatic cortical region of interest (ROI) selection algorithm including cortical regions containing all predicted glomeruli. A positive-pixel count algorithm was used to quantify interstitial fibrosis on the ROIs and the association between automatic fibrosis and pathologist evaluation, estimated glomerular filtration rate (GFR) and allograft survival was assessed. Results: The glomeruli detection (F1 score of 0.87) and ROIs selection (F1 score 0.83 [SD 0.13]) algorithms displayed high accuracy. The correlation between the automatic fibrosis quantification on manually and automatically selected ROIs was high (r = 1.00 [0.99-1.00]). Automatic fibrosis quantification was only moderately correlated with pathologists' assessment and was not significantly associated with eGFR or allograft survival. Conclusion: This pipeline can automatically and accurately detect glomeruli and select cortical ROIs that can easily be used to develop, validate, and apply image analysis algorithms.

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