Cost-effective methylome sequencing of cell-free DNA for accurately detecting and locating cancer

Author:

Stackpole Mary L.ORCID,Zeng Weihua,Li ShuoORCID,Liu Chun-Chi,Zhou Yonggang,He Shanshan,Yeh Angela,Wang Ziye,Sun FengzhuORCID,Li QingjiaoORCID,Yuan Zuyang,Yildirim Asli,Chen Pin-Jung,Winograd Paul,Tran Benjamin,Lee Yi-TeORCID,Li Paul Shize,Noor Zorawar,Yokomizo Megumi,Ahuja Preeti,Zhu YazhenORCID,Tseng Hsian-RongORCID,Tomlinson James S.,Garon EdwardORCID,French SamuelORCID,Magyar Clara E.,Dry Sarah,Lajonchere Clara,Geschwind DanielORCID,Choi Gina,Saab Sammy,Alber Frank,Wong Wing HungORCID,Dubinett Steven M.,Aberle Denise R.,Agopian VatcheORCID,Han Steven-Huy B.ORCID,Ni XiaohuiORCID,Li WenyuanORCID,Zhou Xianghong JasmineORCID

Abstract

AbstractEarly cancer detection by cell-free DNA faces multiple challenges: low fraction of tumor cell-free DNA, molecular heterogeneity of cancer, and sample sizes that are not sufficient to reflect diverse patient populations. Here, we develop a cancer detection approach to address these challenges. It consists of an assay, cfMethyl-Seq, for cost-effective sequencing of the cell-free DNA methylome (with > 12-fold enrichment over whole genome bisulfite sequencing in CpG islands), and a computational method to extract methylation information and diagnose patients. Applying our approach to 408 colon, liver, lung, and stomach cancer patients and controls, at 97.9% specificity we achieve 80.7% and 74.5% sensitivity in detecting all-stage and early-stage cancer, and 89.1% and 85.0% accuracy for locating tissue-of-origin of all-stage and early-stage cancer, respectively. Our approach cost-effectively retains methylome profiles of cancer abnormalities, allowing us to learn new features and expand to other cancer types as training cohorts grow.

Funder

U.S. Department of Health & Human Services | NIH | National Cancer Institute

Publisher

Springer Science and Business Media LLC

Subject

General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry,Multidisciplinary

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