Optimization of deep learning models for the prediction of gene mutations using unsupervised clustering

IF 3.4 2区 医学 Q1 PATHOLOGY Journal of Pathology Clinical Research Pub Date : 2022-11-14 DOI:10.1002/cjp2.302
Zihan Chen, Xingyu Li, Miaomiao Yang, Hong Zhang, Xu Steven Xu
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引用次数: 6

Abstract

Deep learning models are increasingly being used to interpret whole-slide images (WSIs) in digital pathology and to predict genetic mutations. Currently, it is commonly assumed that tumor regions have most of the predictive power. However, it is reasonable to assume that other tissues from the tumor microenvironment may also provide important predictive information. In this paper, we propose an unsupervised clustering-based multiple-instance deep learning model for the prediction of genetic mutations using WSIs of three cancer types obtained from The Cancer Genome Atlas. Our proposed model facilitates the identification of spatial regions related to specific gene mutations and exclusion of patches that lack predictive information through the use of unsupervised clustering. This results in a more accurate prediction of gene mutations when compared with models using all image patches on WSIs and two recently published algorithms for all three different cancer types evaluated in this study. In addition, our study validates the hypothesis that the prediction of gene mutations solely based on tumor regions on WSI slides may not always provide the best performance. Other tissue types in the tumor microenvironment could provide a better prediction ability than tumor tissues alone. These results highlight the heterogeneity in the tumor microenvironment and the importance of identification of predictive image patches in digital pathology prediction tasks.

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利用无监督聚类优化基因突变预测的深度学习模型
深度学习模型越来越多地被用于解释数字病理学中的全幻灯片图像(wsi)和预测基因突变。目前,人们普遍认为肿瘤区域具有大部分的预测能力。然而,我们有理由假设来自肿瘤微环境的其他组织也可能提供重要的预测信息。在本文中,我们提出了一种基于无监督聚类的多实例深度学习模型,用于使用从癌症基因组图谱中获得的三种癌症类型的wsi来预测基因突变。我们提出的模型有助于识别与特定基因突变相关的空间区域,并通过使用无监督聚类排除缺乏预测信息的斑块。与使用wsi上所有图像补丁的模型和两种最近发表的针对本研究中评估的所有三种不同癌症类型的算法相比,这可以更准确地预测基因突变。此外,我们的研究验证了仅基于WSI载玻片上的肿瘤区域预测基因突变可能并不总是提供最佳性能的假设。肿瘤微环境中的其他组织类型比单独的肿瘤组织提供更好的预测能力。这些结果突出了肿瘤微环境的异质性以及在数字病理预测任务中识别预测图像斑块的重要性。
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来源期刊
Journal of Pathology Clinical Research
Journal of Pathology Clinical Research Medicine-Pathology and Forensic Medicine
CiteScore
7.40
自引率
2.40%
发文量
47
审稿时长
20 weeks
期刊介绍: The Journal of Pathology: Clinical Research and The Journal of Pathology serve as translational bridges between basic biomedical science and clinical medicine with particular emphasis on, but not restricted to, tissue based studies. The focus of The Journal of Pathology: Clinical Research is the publication of studies that illuminate the clinical relevance of research in the broad area of the study of disease. Appropriately powered and validated studies with novel diagnostic, prognostic and predictive significance, and biomarker discover and validation, will be welcomed. Studies with a predominantly mechanistic basis will be more appropriate for the companion Journal of Pathology.
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