Fibrosis severity scoring on Sirius red histology with multiple-instance deep learning.

Biological imaging Pub Date : 2023-07-18 eCollection Date: 2023-01-01 DOI:10.1017/S2633903X23000144
Sneha N Naik, Roberta Forlano, Pinelopi Manousou, Robert Goldin, Elsa D Angelini
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Abstract

Non-alcoholic fatty liver disease (NAFLD) is now the leading cause of chronic liver disease, affecting approximately 30% of people worldwide. Histopathology reading of fibrosis patterns is crucial to diagnosing NAFLD. In particular, separating mild from severe stages corresponds to a critical transition as it correlates with clinical outcomes. Deep Learning for digitized histopathology whole-slide images (WSIs) can reduce high inter- and intra-rater variability. We demonstrate a novel solution to score fibrosis severity on a retrospective cohort of 152 Sirius-Red WSIs, with fibrosis stage annotated at slide level by an expert pathologist. We exploit multiple instance learning and multiple-inferences to address the sparsity of pathological signs. We achieved an accuracy of , an F1 score of and an AUC of . These results set new state-of-the-art benchmarks for this application.

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基于多实例深度学习的天狼星红组织纤维化严重程度评分
非酒精性脂肪性肝病(NAFLD)目前是慢性肝病的主要原因,影响全球约30%的人。纤维化模式的组织病理学读数对NAFLD的诊断至关重要。特别是,区分轻度和严重阶段对应于一个关键的转变,因为它与临床结果相关。数字化组织病理学全幻灯片图像(WSIs)的深度学习可以减少图像间和内部的高变异性。我们展示了一种新的解决方案,在152个天狼星-红色wsi的回顾性队列中评分纤维化严重程度,由病理学专家在玻片水平上注释纤维化阶段。我们利用多实例学习和多推理来解决病理体征的稀疏性。我们实现了78.98\pm 5.86% $的准确率,77.99\pm 5.64% $的F1分数和0.87\pm 0.06 $的AUC。这些结果为该应用程序设置了新的最先进的基准。
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