Multi-modal cell-free DNA genomic and fragmentomic patterns enhance cancer survival and recurrence analysis

多模态无细胞DNA基因组和片段组学模式增强了癌症生存和复发分析。

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作者:Norbert Moldovan,Ymke van der Pol,Tom van den Ende,Dries Boers,Sandra Verkuijlen,Aafke Creemers,Jip Ramaker,Trang Vu,Sanne Bootsma,Kristiaan J Lenos,Louis Vermeulen,Marieke F Fransen,Michiel Pegtel,Idris Bahce,Hanneke van Laarhoven,Florent Mouliere

Abstract

The structure of cell-free DNA (cfDNA) is altered in the blood of patients with cancer. From whole-genome sequencing, we retrieve the cfDNA fragment-end composition using a new software (FrEIA [fragment end integrated analysis]), as well as the cfDNA size and tumor fraction in three independent cohorts (n = 925 cancer from >10 types and 321 control samples). At 95% specificity, we detect 72% cancer samples using at least one cfDNA measure, including 64% early-stage cancer (n = 220). cfDNA detection correlates with a shorter overall (p = 0.0086) and recurrence-free (p = 0.017) survival in patients with resectable esophageal adenocarcinoma. Integrating cfDNA measures with machine learning in an independent test set (n = 396 cancer, 90 controls) achieve a detection accuracy of 82% and area under the receiver operating characteristic curve of 0.96. In conclusion, harnessing the biological features of cfDNA can improve, at no extra cost, the diagnostic performance of liquid biopsies.

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