The Sidney Kimmel Comprehensive Cancer Center, Johns Hopkins University School of Medicine, Baltimore, MD, USA.
Division of Computational Biomedicine, Department of Medicine, Boston University, Boston, MA, USA.
Nat Genet. 2023 Aug;55(8):1301-1310. doi: 10.1038/s41588-023-01446-3. Epub 2023 Jul 27.
Somatic mutations are a hallmark of tumorigenesis and may be useful for non-invasive diagnosis of cancer. We analyzed whole-genome sequencing data from 2,511 individuals in the Pan-Cancer Analysis of Whole Genomes (PCAWG) study as well as 489 individuals from four prospective cohorts and found distinct regional mutation type-specific frequencies in tissue and cell-free DNA from patients with cancer that were associated with replication timing and other chromatin features. A machine-learning model using genome-wide mutational profiles combined with other features and followed by CT imaging detected >90% of patients with lung cancer, including those with stage I and II disease. The fixed model was validated in an independent cohort, detected patients with cancer earlier than standard approaches and could be used to monitor response to therapy. This approach lays the groundwork for non-invasive cancer detection using genome-wide mutation features that may facilitate cancer screening and monitoring.
体细胞突变是肿瘤发生的一个标志,可用于癌症的非侵入性诊断。我们分析了泛癌症全基因组分析(PCAWG)研究中的 2511 个人以及来自四个前瞻性队列的 489 个人的全基因组测序数据,发现癌症患者的组织和无细胞游离 DNA 中存在独特的区域突变类型特异性频率,这些频率与复制时间和其他染色质特征有关。使用全基因组突变谱结合其他特征和 CT 成像的机器学习模型检测到超过 90%的肺癌患者,包括 I 期和 II 期疾病患者。固定模型在一个独立的队列中得到了验证,比标准方法更早地检测到癌症患者,并且可以用于监测治疗反应。这种方法为使用全基因组突变特征进行非侵入性癌症检测奠定了基础,可能有助于癌症的筛查和监测。