从全切片图像到生物标记预测:计算病理学中的端到端弱监督深度学习

IF 13.1 1区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS Nature Protocols Pub Date : 2024-09-16 DOI:10.1038/s41596-024-01047-2
Omar S. M. El Nahhas, Marko van Treeck, Georg Wölflein, Michaela Unger, Marta Ligero, Tim Lenz, Sophia J. Wagner, Katherine J. Hewitt, Firas Khader, Sebastian Foersch, Daniel Truhn, Jakob Nikolas Kather
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引用次数: 0

摘要

血沉和伊红染色的全切片图像(WSI)是诊断癌症的基础。近年来,基于深度学习的计算病理学方法的发展使得直接从 WSIs 预测生物标记物成为可能。然而,如何准确地将组织表型与生物标记物大规模地联系起来,仍然是精准肿瘤学中复杂生物标记物民主化的关键挑战。本协议描述了病理学中实体瘤关联建模(STAMP)的实用工作流程,通过使用深度学习直接从 WSI 预测生物标记物。STAMP 工作流程与生物标记物无关,允许将遗传学和临床病理学表格数据与组织病理学图像一起作为额外输入。该协议包括五个主要阶段,已成功应用于各种研究问题:正式问题定义、数据预处理、建模、评估和临床转化。STAMP 工作流程的与众不同之处在于它是一个协作框架,临床医生和工程师都可以利用它来建立计算病理学领域的研究项目。作为一项示例任务,我们将 STAMP 应用于预测结直肠癌的微卫星不稳定性(MSI)状态,结果表明 STAMP 在识别 MSI 高的肿瘤方面表现准确。此外,我们还提供了一个开源代码库,该代码库已在全球多家医院部署,用于建立计算病理学工作流程。STAMP 工作流程需要一个工作日的计算实践和基本的命令行知识。
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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From whole-slide image to biomarker prediction: end-to-end weakly supervised deep learning in computational pathology

Hematoxylin- and eosin-stained whole-slide images (WSIs) are the foundation of diagnosis of cancer. In recent years, development of deep learning-based methods in computational pathology has enabled the prediction of biomarkers directly from WSIs. However, accurately linking tissue phenotype to biomarkers at scale remains a crucial challenge for democratizing complex biomarkers in precision oncology. This protocol describes a practical workflow for solid tumor associative modeling in pathology (STAMP), enabling prediction of biomarkers directly from WSIs by using deep learning. The STAMP workflow is biomarker agnostic and allows for genetic and clinicopathologic tabular data to be included as an additional input, together with histopathology images. The protocol consists of five main stages that have been successfully applied to various research problems: formal problem definition, data preprocessing, modeling, evaluation and clinical translation. The STAMP workflow differentiates itself through its focus on serving as a collaborative framework that can be used by clinicians and engineers alike for setting up research projects in the field of computational pathology. As an example task, we applied STAMP to the prediction of microsatellite instability (MSI) status in colorectal cancer, showing accurate performance for the identification of tumors high in MSI. Moreover, we provide an open-source code base, which has been deployed at several hospitals across the globe to set up computational pathology workflows. The STAMP workflow requires one workday of hands-on computational execution and basic command line knowledge.

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来源期刊
Nature Protocols
Nature Protocols 生物-生化研究方法
CiteScore
29.10
自引率
0.70%
发文量
128
审稿时长
4 months
期刊介绍: Nature Protocols focuses on publishing protocols used to address significant biological and biomedical science research questions, including methods grounded in physics and chemistry with practical applications to biological problems. The journal caters to a primary audience of research scientists and, as such, exclusively publishes protocols with research applications. Protocols primarily aimed at influencing patient management and treatment decisions are not featured. The specific techniques covered encompass a wide range, including but not limited to: Biochemistry, Cell biology, Cell culture, Chemical modification, Computational biology, Developmental biology, Epigenomics, Genetic analysis, Genetic modification, Genomics, Imaging, Immunology, Isolation, purification, and separation, Lipidomics, Metabolomics, Microbiology, Model organisms, Nanotechnology, Neuroscience, Nucleic-acid-based molecular biology, Pharmacology, Plant biology, Protein analysis, Proteomics, Spectroscopy, Structural biology, Synthetic chemistry, Tissue culture, Toxicology, and Virology.
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Author Correction: Creating custom synthetic genomes in Escherichia coli with REXER and GENESIS. Biolayer interferometry for measuring the kinetics of protein-protein interactions and nanobody binding. RNA sample optimization for cryo-EM analysis. High-throughput glycosaminoglycan extraction and UHPLC-MS/MS quantification in human biofluids. Versatile synthesis of uniform mesoporous superparticles from stable monomicelle units.
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