Artificial intelligence-based multi-class histopathologic classification of kidney neoplasms

Dibson D. Gondim , Khaleel I. Al-Obaidy , Muhammad T. Idrees , John N. Eble , Liang Cheng
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引用次数: 2

Abstract

Artificial intelligence (AI)-based techniques are increasingly being explored as an emerging ancillary technique for improving accuracy and reproducibility of histopathological diagnosis. Renal cell carcinoma (RCC) is a malignancy responsible for 2% of cancer deaths worldwide. Given that RCC is a heterogenous disease, accurate histopathological classification is essential to separate aggressive subtypes from indolent ones and benign mimickers. There are early promising results using AI for RCC classification to distinguish between 2 and 3 subtypes of RCC. However, it is not clear how an AI-based model designed for multiple subtypes of RCCs, and benign mimickers would perform which is a scenario closer to the real practice of pathology. A computational model was created using 252 whole slide images (WSI) (clear cell RCC: 56, papillary RCC: 81, chromophobe RCC: 51, clear cell papillary RCC: 39, and, metanephric adenoma: 6). 298,071 patches were used to develop the AI-based image classifier. 298,071 patches (350 × 350-pixel) were used to develop the AI-based image classifier. The model was applied to a secondary dataset and demonstrated that 47/55 (85%) WSIs were correctly classified. This computational model showed excellent results except to distinguish clear cell RCC from clear cell papillary RCC. Further validation using multi-institutional large datasets and prospective studies are needed to determine the potential to translation to clinical practice.

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基于人工智能的肾肿瘤多类别组织病理分类
基于人工智能(AI)的技术作为一种新兴的辅助技术被越来越多地探索,以提高组织病理学诊断的准确性和可重复性。肾细胞癌(RCC)是一种恶性肿瘤,占全球癌症死亡人数的2%。鉴于肾细胞癌是一种异质性疾病,准确的组织病理学分类对于区分侵袭性亚型、惰性亚型和良性模仿者至关重要。使用人工智能对碾压细胞进行分类,可以区分2和3种碾压细胞亚型,结果很有希望。然而,目前尚不清楚为多种亚型rcc设计的基于人工智能的模型,以及良性模仿者将如何表现,这是一个更接近真实病理实践的场景。使用252张完整的WSI图像(透明细胞RCC: 56张,乳头状RCC: 81张,憎色细胞RCC: 51张,透明细胞乳头状RCC: 39张,后肾腺瘤:6张)建立计算模型,使用298,071个斑块开发基于人工智能的图像分类器。使用298,071块(350 × 350像素)补丁开发基于人工智能的图像分类器。该模型应用于二级数据集,并证明47/55 (85%)wsi被正确分类。该计算模型除了无法区分透明细胞RCC和透明细胞乳头状RCC外,还显示出良好的结果。需要使用多机构大数据集和前瞻性研究进一步验证,以确定转化为临床实践的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Pathology Informatics
Journal of Pathology Informatics Medicine-Pathology and Forensic Medicine
CiteScore
3.70
自引率
0.00%
发文量
2
审稿时长
18 weeks
期刊介绍: The Journal of Pathology Informatics (JPI) is an open access peer-reviewed journal dedicated to the advancement of pathology informatics. This is the official journal of the Association for Pathology Informatics (API). The journal aims to publish broadly about pathology informatics and freely disseminate all articles worldwide. This journal is of interest to pathologists, informaticians, academics, researchers, health IT specialists, information officers, IT staff, vendors, and anyone with an interest in informatics. We encourage submissions from anyone with an interest in the field of pathology informatics. We publish all types of papers related to pathology informatics including original research articles, technical notes, reviews, viewpoints, commentaries, editorials, symposia, meeting abstracts, book reviews, and correspondence to the editors. All submissions are subject to rigorous peer review by the well-regarded editorial board and by expert referees in appropriate specialties.
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