DNA甲基化
甲基化
分类器(UML)
癌
生物
医学
肿瘤科
计算生物学
病理
人工智能
基因
遗传学
计算机科学
基因表达
作者
Adam D. Walker,Camila Fang,Chanel Schroff,Jonathan Serrano,Varshini Vasudevaraja,Yiying Yang,Sarra Belakhoua,Arline Faustin,Christopher William,David Zagzag,Sarah Chiang,Andrés M. Acosta,Misha Movahed-Ezazi,Kyung Park,André L. Moreira,Farbod Darvishian,Kristyn Galbraith,Matija Snuderl
摘要
Abstract Cancer of unknown primary (CUP) constitutes between 2% and 5% of human malignancies and is among the most common causes of cancer death in the United States. Brain metastases are often the first clinical presentation of CUP; despite extensive pathological and imaging studies, 20%-45% of CUP are never assigned a primary site. DNA methylation array profiling is a reliable method for tumor classification but tumor-type-specific classifier development requires many reference samples. This is difficult to accomplish for CUP as many cases are never assigned a specific diagnosis. Recent studies identified subsets of methylation quantitative trait loci (mQTLs) unique to specific organs, which could help increase classifier accuracy while requiring fewer samples. We performed a retrospective genome-wide methylation analysis of 759 carcinoma samples from formalin-fixed paraffin-embedded tissue samples using Illumina EPIC array. Utilizing mQTL specific for breast, lung, ovarian/gynecologic, colon, kidney, or testis (BLOCKT) (185k total probes), we developed a deep learning-based methylation classifier that achieved 93.12% average accuracy and 93.04% average F1-score across a 10-fold validation for BLOCKT organs. Our findings indicate that our organ-based DNA methylation classifier can assist pathologists in identifying the site of origin, providing oncologists insight on a diagnosis to administer appropriate therapy, improving patient outcomes.
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