DNA甲基化
表观遗传学
甲基化
分类器(UML)
计算生物学
生物
癌症
遗传学
生物信息学
基因
计算机科学
人工智能
基因表达
作者
Su Yeon Kim,Seongmun Jeong,Wookjae Lee,Yujin Jeon,Yong-Jin Kim,Seowoo Park,Dongin Lee,D. M. D. S. Go,Sang‐Hyun Song,Sanghoo Lee,Hyun Goo Woo,Jung-Ki Yoon,Young Sik Park,Young Tae Kim,Se‐Hoon Lee,Kwang Hyun Kim,Yoojoo Lim,Jin‐Soo Kim,Hwang‐Phill Kim,Duhee Bang,Tae-You Kim
标识
DOI:10.1038/s12276-023-01119-5
摘要
Cell-free DNA (cfDNA) sequencing has demonstrated great potential for early cancer detection. However, most large-scale studies have focused only on either targeted methylation sites or whole-genome sequencing, limiting comprehensive analysis that integrates both epigenetic and genetic signatures. In this study, we present a platform that enables simultaneous analysis of whole-genome methylation, copy number, and fragmentomic patterns of cfDNA in a single assay. Using a total of 950 plasma (361 healthy and 589 cancer) and 240 tissue samples, we demonstrate that a multifeature cancer signature ensemble (CSE) classifier integrating all features outperforms single-feature classifiers. At 95.2% specificity, the cancer detection sensitivity with methylation, copy number, and fragmentomic models was 77.2%, 61.4%, and 60.5%, respectively, but sensitivity was significantly increased to 88.9% with the CSE classifier (p value < 0.0001). For tissue of origin, the CSE classifier enhanced the accuracy beyond the methylation classifier, from 74.3% to 76.4%. Overall, this work proves the utility of a signature ensemble integrating epigenetic and genetic information for accurate cancer detection.
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