2021
DOI: 10.1016/j.ajpath.2021.05.005
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Deep-Learning–Driven Quantification of Interstitial Fibrosis in Digitized Kidney Biopsies

Abstract: Interstitial fibrosis and tubular atrophy (IFTA) on a renal biopsy are strong indicators of disease chronicity and prognosis. Techniques that are typically used for IFTA grading remain manual, leading to variability among pathologists. Accurate IFTA estimation using computational techniques can reduce this variability and provide quantitative assessment by capturing the pathologic features. Using trichrome-stained whole slide images (WSIs) processed from human renal biopsies, we developed a deep learning (DL) … Show more

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Cited by 35 publications
(12 citation statements)
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References 45 publications
(50 reference statements)
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“…The quantification of fibrosis has been the subject of several studies [39][40][41][42]. Artificial neural networks have been developed for the assessment of fibrosis in trichrome-stained kidney slides [43], [44] and recently the first neural network for sclerotic glomeruli and IFTA segmentation in PAS-stained slides was presented,…”
Section: Correlation Between Chronic Tissue Scores and The Course Of ...mentioning
confidence: 99%
“…The quantification of fibrosis has been the subject of several studies [39][40][41][42]. Artificial neural networks have been developed for the assessment of fibrosis in trichrome-stained kidney slides [43], [44] and recently the first neural network for sclerotic glomeruli and IFTA segmentation in PAS-stained slides was presented,…”
Section: Correlation Between Chronic Tissue Scores and The Course Of ...mentioning
confidence: 99%
“…Another ML pipeline was developed for glomerular localization in whole kidney sections for automated assessment of glomerular injury [ 64 ]. Average precision for glomerular localization was reported as 96.94%, with an average recall of 96.79%.…”
Section: Realizing the Clinical Potential Of Aimentioning
confidence: 99%
“…Der Vorteil solcher Systeme ist, dass direkt eine bestimmte, diagnostisch oder klinisch relevante Information generiert wird. Klassifikationsanwendungen in der Nephropathologie umfassen bislang beispielsweise die Einordnung glomerulärer Läsionen [ 24 , 28 ], die Zuweisung einer diagnostischen Klasse in Nierentransplantatbiopsien [ 19 ] oder die Graduierung der Fibrose in Nierenbiopsien [ 29 ]. Die Nephropathologie profitiert hierbei von anerkannten Definitionen, die dabei helfen, die Trainingsdaten konsistent zu annotieren, beispielsweise für glomeruläre Läsionen [ 11 ] oder für diagnostische Kategorien der Nierentransplantatabstoßung [ 20 ].…”
Section: Klassifikationunclassified