准确预测乳腺癌复发的计算病理学:基于深度学习的工具的开发和验证。

IF 7.1 1区 医学 Q1 PATHOLOGY
Ziyu Su, Yongxin Guo, Robert Wesolowski, Gary Tozbikian, Nathaniel S O'Connell, M Khalid Khan Niazi, Metin N Gurcan
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引用次数: 0

摘要

准确的复发风险分层对于优化乳腺癌患者的治疗方案至关重要。目前的预后工具,如Oncotype DX (ODX),为HR+/HER2-患者提供了有价值的基因组信息,但受到成本和可及性的限制,特别是在服务不足的人群中。在这项研究中,我们提出了deep - bcr - auto,这是一种基于深度学习的计算病理学方法,可以通过常规h&e染色的整张幻灯片图像(wsi)预测乳腺癌复发风险。我们的方法在两个独立的队列中得到验证:TCGA-BRCA数据集和俄亥俄州立大学(OSU)的内部数据集。Deep-BCR-Auto在将患者分为低复发风险和高复发风险类别方面表现出色。在TCGA-BRCA数据集上,该模型的受试者工作特征曲线下面积(AUROC)为0.827,显著优于现有的弱监督模型(p=0.041)。在独立的OSU数据集中,Deep-BCR-Auto保持了很强的泛化能力,AUROC为0.832,准确率为82.0%,特异性为85.0%,敏感性为67.7%。这些发现突出了计算病理学作为复发风险评估的成本效益替代方案的潜力,扩大了个性化治疗策略的可及性。本研究强调了将基于深度学习的计算病理学整合到不同临床环境中乳腺癌预后的常规病理评估中的临床应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational Pathology for Accurate Prediction of Breast Cancer Recurrence: Development and Validation of a Deep Learning-based Tool.

Accurate recurrence risk stratification is crucial for optimizing treatment plans for breast cancer patients. Current prognostic tools like Oncotype DX (ODX) offer valuable genomic insights for HR+/HER2- patients but are limited by cost and accessibility, particularly in underserved populations. In this study, we present Deep-BCR-Auto, a deep learning-based computational pathology approach that predicts breast cancer recurrence risk from routine H&E-stained whole slide images (WSIs). Our methodology was validated on two independent cohorts: the TCGA-BRCA dataset and an in-house dataset from The Ohio State University (OSU). Deep-BCR-Auto demonstrated robust performance in stratifying patients into low- and high-recurrence risk categories. On the TCGA-BRCA dataset, the model achieved an area under the receiver operating characteristic curve (AUROC) of 0.827, significantly outperforming existing weakly supervised models (p=0.041). In the independent OSU dataset, Deep-BCR-Auto maintained strong generalizability, achieving an AUROC of 0.832, along with 82.0% accuracy, 85.0% specificity, and 67.7% sensitivity. These findings highlight the potential of computational pathology as a cost-effective alternative for recurrence risk assessment, broadening access to personalized treatment strategies. This study underscores the clinical utility of integrating deep learning-based computational pathology into routine pathological assessment for breast cancer prognosis across diverse clinical settings.

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来源期刊
Modern Pathology
Modern Pathology 医学-病理学
CiteScore
14.30
自引率
2.70%
发文量
174
审稿时长
18 days
期刊介绍: Modern Pathology, an international journal under the ownership of The United States & Canadian Academy of Pathology (USCAP), serves as an authoritative platform for publishing top-tier clinical and translational research studies in pathology. Original manuscripts are the primary focus of Modern Pathology, complemented by impactful editorials, reviews, and practice guidelines covering all facets of precision diagnostics in human pathology. The journal's scope includes advancements in molecular diagnostics and genomic classifications of diseases, breakthroughs in immune-oncology, computational science, applied bioinformatics, and digital pathology.
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