循环肿瘤DNA
肿瘤科
肺癌
内科学
生物
危险分层
佐剂
阶段(地层学)
辅助治疗
计算生物学
疾病
模式(遗传算法)
生物信息学
比例危险模型
DNA
癌症
精密医学
肺
突变
作者
James R. Black,Takahiro Karasaki,Charles W. Abbott,Bailiang Li,Selvaraju Veeriah,Maise Al Bakir,Wing Kin Liu,Ariana Huebner,Carlos Martínez‐Ruiz,Piotr Pawlik,David A. Moore,Daniele Marinelli,Oliver Shutkever,Cian Murphy,Lydia Liu,Charlotte Grieco,Karen Grimes,Fábio C. P. Navarro,Rachel Marty Pyke,Gábor Bartha
出处
期刊:Cell
[Cell Press]
日期:2025-11-07
卷期号:188 (25): 7083-7098.e18
被引量:8
标识
DOI:10.1016/j.cell.2025.10.020
摘要
Biomarkers accurately informing prognostic assessment and therapeutic strategy are critical for improving patient outcome in oncology. Here, we apply a whole-genome, tumor-informed circulating tumor DNA (ctDNA) detection approach to address this challenge, leveraging 1,800 variants across 2,994 plasma samples from 431 patients with non-small cell lung cancer (NSCLC) from the TRACERx study. We show that ultrasensitive ctDNA detection below 80 parts per million both pre- and postoperatively is highly prognostic, and combinatorial analysis of the pre- and postoperative ctDNA status identifies an intermediate risk group, improving disease stratification. ctDNA kinetics demonstrate clinical utility during adjuvant therapy, where patients that "clear" ctDNA during adjuvant therapy experience improved outcomes. Moreover, characterization of patterns in postoperative ctDNA kinetics reveals insights into the timing, risk, and anatomical pattern of relapses. By incorporating longitudinal ultrasensitive ctDNA detection, we propose a refined schema for guiding the stratification and treatment recommendations in early stage NSCLC.
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