Evaluation of Kidney Histological Images Using Unsupervised Deep Learning

Evaluating histopathology via machine learning has gained research and clinical interest, and the performance of supervised learning tasks has been described in various areas of medicine. Unsupervised learning of histological images has the advantage of reproducibility for labeling; however, the rel...

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Published inKidney international reports Vol. 6; no. 9; pp. 2445 - 2454
Main Authors Sato, Noriaki, Uchino, Eiichiro, Kojima, Ryosuke, Sakuragi, Minoru, Hiragi, Shusuke, Minamiguchi, Sachiko, Haga, Hironori, Yokoi, Hideki, Yanagita, Motoko, Okuno, Yasushi
Format Journal Article
LanguageEnglish
Published United States Elsevier Inc 01.09.2021
Elsevier
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ISSN2468-0249
2468-0249
DOI10.1016/j.ekir.2021.06.008

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Summary:Evaluating histopathology via machine learning has gained research and clinical interest, and the performance of supervised learning tasks has been described in various areas of medicine. Unsupervised learning of histological images has the advantage of reproducibility for labeling; however, the relationship between unsupervised evaluation and clinical information remains unclear in nephrology. We propose an unsupervised approach combining convolutional neural networks (CNNs) and a visualization algorithm to cluster the histological images and calculate the score for patients. We applied the approach to the entire images or patched images of the glomerulus of kidney biopsy samples stained with hematoxylin and eosin obtained from 68 patients with immunoglobulin A nephropathy. We assessed the relationship between the obtained scores and clinical variables of urinary occult blood, urinary protein, serum creatinine (SCr), systolic blood pressure, and age. The glomeruli of the patients were classified into 12 distinct classes and 10 patches. The output of the fine-tuned CNN, which we defined as the histological scores, had significant relationships with assessed clinical variables. In addition, the clustering and visualization results suggested that the defined clusters captured important findings when evaluating renal histopathology. For the score of the patch-based cluster containing crescentic glomeruli, SCr (coefficient = 0.09, P = 0.019) had a significant relationship. The proposed approach could successfully extract features that were related to the clinical variables from the kidney biopsy images along with the visualization for interpretability. The approach could aid in the quantified evaluation of renal histopathology. [Display omitted]
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ISSN:2468-0249
2468-0249
DOI:10.1016/j.ekir.2021.06.008