LUPUS NEPHRITIS SUBTYPE CLASSIFICATION WITH ONLY SLIDE LEVEL LABELS

Amit Sharma, Ekansh Chauhan, Megha S Uppin, Rajasekhar Liza, C.V. Jawahar, P K Vinod
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Abstract

Lupus Nephritis classification has historically relied on labor-intensive and meticulous glomerular-level labeling of renal structures in whole slide images (WSIs). However, this approach presents a formidable challenge due to its tedious and resource-intensive nature, limiting its scalability and practicality in clinical settings. In response to this challenge, our work introduces a novel methodology that utilizes only slide-level labels, eliminating the need for granular glomerular-level labeling. A comprehensive multi-stained lupus nephritis digital histopathology WSI dataset was created from the Indian population, which is the largest of its kind. LupusNet, a deep learning MIL-based model, was developed for the subtype classification of LN. The results underscore its effectiveness, achieving an AUC score of 91.0%, an F1-score of 77.3%, and an accuracy of 81.1% on our dataset in distinguishing membranous and diffused classes of LN.
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狼疮性肾炎亚型分型,仅以幻灯片标示
狼疮性肾炎的分类历来依赖于全幻灯片图像(WSIs)中对肾脏结构进行劳动密集和细致的肾小球水平标记。然而,由于其繁琐和资源密集的性质,这种方法提出了一个巨大的挑战,限制了其在临床环境中的可扩展性和实用性。为了应对这一挑战,我们的工作引入了一种新的方法,该方法仅使用滑动水平标记,消除了颗粒肾小球水平标记的需要。从印度人群中创建了一个全面的多染色狼疮性肾炎数字组织病理学WSI数据集,这是同类数据集中最大的。LupusNet是一种基于深度学习mil的LN亚型分类模型。结果强调了它的有效性,在我们的数据集上,区分膜性和弥漫性LN的AUC得分为91.0%,f1得分为77.3%,准确率为81.1%。
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