打开黑盒:空间转录组学与高级别浆液性癌中人工智能检测到的预后区域的相关性。

IF 7.1 1区 医学 Q1 PATHOLOGY
Anna Ray Laury , Shuyu Zheng , Niina Aho , Robin Fallegger , Satu Hänninen , Julio Saez-Rodriguez , Jovan Tanevski , Omar Youssef , Jing Tang , Olli Mikael Carpén
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引用次数: 0

摘要

基于图像的深度学习模型可用于从标准H&E病理切片中提取新信息,然而,对人工智能(AI)检测到的特征进行生物学解读仍是一项挑战。高分化浆液性卵巢癌(HGSC)的特点是侵袭性和化疗耐药,但其预后也具有显著的变异性。我们对这种疾病的了解非常有限,部分原因是肿瘤异质性很大。我们之前训练了一个人工智能模型,以识别与预后状况高度相关但用传统形态学方法无法区分的 HGSC 肿瘤区域。在此,我们应用空间转录组学进一步分析了 16 例患者(每个预后组 8 例)中人工智能识别的肿瘤区域,并确定了接受原发去势手术和铂类化疗的患者中与疾病预后相关的分子特征。我们检查了来自 1)人工智能模型识别出的与短期或长期化疗反应高度相关的区域,以及 2)来自相同肿瘤的背景肿瘤区域(人工智能模型未识别出与结果状态高度相关)的 FFPE 组织。我们的研究表明,人工智能识别区域的转录组特征比来自相同肿瘤的背景区域更明显,在预测预后方面更有优势,并且在多个通路上存在差异,包括与 HGSC 化疗耐药相关的通路。此外,我们还发现不同的肿瘤亚群富集了预后差和预后好的区域,这表明它们之间存在独特的相互作用模式。总之,我们的工作证明了人工智能引导的空间转录组分析可以提高对患者预后相关生物特征的识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Opening the Black Box: Spatial Transcriptomics and the Relevance of Artificial Intelligence–Detected Prognostic Regions in High-Grade Serous Carcinoma

Image-based deep learning models are used to extract new information from standard hematoxylin and eosin pathology slides; however, biological interpretation of the features detected by artificial intelligence (AI) remains a challenge. High-grade serous carcinoma of the ovary (HGSC) is characterized by aggressive behavior and chemotherapy resistance, but also exhibits striking variability in outcome. Our understanding of this disease is limited, partly due to considerable tumor heterogeneity. We previously trained an AI model to identify HGSC tumor regions that are highly associated with outcome status but are indistinguishable by conventional morphologic methods. Here, we applied spatially resolved transcriptomics to further profile the AI-identified tumor regions in 16 patients (8 per outcome group) and identify molecular features related to disease outcome in patients who underwent primary debulking surgery and platinum-based chemotherapy. We examined formalin-fixed paraffin-embedded tissue from (1) regions identified by the AI model as highly associated with short or extended chemotherapy response, and (2) background tumor regions (not identified by the AI model as highly associated with outcome status) from the same tumors. We show that the transcriptomic profiles of AI-identified regions are more distinct than background regions from the same tumors, are superior in predicting outcome, and differ in several pathways including those associated with chemoresistance in HGSC. Further, we find that poor outcome and good outcome regions are enriched by different tumor subpopulations, suggesting distinctive interaction patterns. In summary, our work presents proof of concept that AI-guided spatial transcriptomic analysis improves recognition of biologic features relevant to patient outcomes.

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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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