摘要567:cMonitor:通过分析血浆cfDNA外显子组突变,全面、灵敏地监测多种癌症治疗结果

Shuo Li, W. Zeng, X. Ni, M. Stackpole, Yonggang Zhou, Z. Noor, Zuyang Yuan, E. Garon, S. Dubinett, Wenyuan Li, X. Zhou
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These methods usually require the labor-intensive design of customized gene panel, yet fail to identify the evolving tumor, which is essential for detecting second primary diseases or emerging subclones. To address these limitations, here we present OncoMonitor, a cancer monitoring method that comprehensively analyzes tumor mutations in cfDNA whole-exome sequencing data. 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引用次数: 0

摘要

监测癌症患者的早期发现微小残留疾病(MRD)、癌症复发和癌症进展对于评估治疗反应和预测治疗期间/之后的早期复发至关重要。无浆细胞DNA (cfDNA)为癌症监测提供了独特的机会,因为它对异质性肿瘤克隆进行了非侵入性和全面的采样。然而,cfDNA的低肿瘤含量给检测肿瘤信号带来了重大挑战。以前的方法大多依赖于小面板的深度测序来捕获肿瘤信号。这些方法通常需要耗费大量人力设计定制的基因面板,但无法识别正在进化的肿瘤,而这对于检测第二原发疾病或新出现的亚克隆至关重要。为了解决这些限制,我们提出了OncoMonitor,一种全面分析cfDNA全外显子组测序数据中肿瘤突变的癌症监测方法。利用整个外显子组突变信息的可用性,我们的方法(1)整合了从预处理cfDNA样本(或肿瘤样本)中鉴定出的所有克隆肿瘤突变,以弥补cfDNA中较低的肿瘤比例;(2)使用精确的随机森林分类器在读取水平上抑制测序错误,以模拟cfDNA片段中观察到的特征,进一步增强肿瘤信号。(3)建立样本特异性背景噪声分布来预测复发和MRD,以避免个体间差异和实验间偏差的干扰;(4)通过识别新出现的肿瘤突变来检测肿瘤的变化,特别是第二原发疾病。结合这些技术,我们首次证明OncoMonitor可以从低肿瘤比例的血浆样本中敏感和特异性地检测癌症复发/MRD和继发性原发性癌症。使用模拟的cfDNA序列数据和人工突变尖峰,我们的方法可以在0.025%的肿瘤部分检测复发,灵敏度> 95%,特异性95%;在0.1%的肿瘤部分检测第二原发疾病,灵敏度约75%,特异性100%。在9例非小细胞肺癌患者的队列研究中,我们发现OncoMonitor可以提供全面的肿瘤变化,用于预测治疗反应并捕获新出现的肿瘤克隆;这不能通过以前的方法来实现,这些方法仅基于治疗前手术样本中的突变。总之,通过广泛的基因组测序覆盖和全面的突变分析,我们的方法可以识别患有MRD或癌症复发/进展的患者,提供对其肿瘤状态的全面了解,并使早期干预和个性化治疗成为可能。引用格式:李硕,曾卫华,倪晓辉,Mary L. Stackpole,周永刚,Zorawar Noor,袁祖阳,Edward B. Garon, Steven M. Dubinett,李文渊,周祥红。cMonitor:通过血浆cfDNA外显子组全突变分析,全面、灵敏地监测多种癌症治疗结果[摘要]。见:美国癌症研究协会2021年年会论文集;2021年4月10日至15日和5月17日至21日。费城(PA): AACR;癌症杂志,2021;81(13 -增刊):567。
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Abstract 567: cMonitor: Comprehensive and sensitive monitoring of diverse cancer treatment outcomes by exome-wide mutation analysis in plasma cfDNA
Monitoring cancer patients for the early detection of minimal residual disease (MRD), cancer recurrence, and cancer progression is essential for assessing treatment response and predicting early relapse during/after treatment. Plasma cell-free DNA (cfDNA) provides unique opportunities for cancer monitoring given its non-invasive and comprehensive sampling of heterogeneous tumor clones. However, the low tumor content in cfDNA poses a major challenge for detecting tumor signals. Previous methods mostly rely on deep sequencing of small panels to capture the tumor signal. These methods usually require the labor-intensive design of customized gene panel, yet fail to identify the evolving tumor, which is essential for detecting second primary diseases or emerging subclones. To address these limitations, here we present OncoMonitor, a cancer monitoring method that comprehensively analyzes tumor mutations in cfDNA whole-exome sequencing data. Taking advantage of the availability of mutation information across the whole exome, our method (1) integrates all clonal tumor mutations identified from pre-treatment cfDNA samples (or tumor samples) to compensate for low tumor fraction in cfDNA, (2) suppresses sequencing errors at read level with an accurate random forest classifier to model the observed features from cfDNA fragments and further enhance the tumor signal, (3) builds sample-specific background noise distributions to predict recurrence and MRD to avoid interference from inter-individual variations and inter-experimental biases, and (4) detects tumor changes, especially second primary diseases, by identifying newly emerging tumor mutations de novo. Combining these techniques, for the first time, we show that OncoMonitor can sensitively and specifically detect both cancer recurrence/MRD and secondary primary cancers from plasma samples with low tumor fraction. Using simulated cfDNA sequence data with artificial mutation spike-ins, our method can detect recurrence at 0.025% tumor fraction with > 95% sensitivity and 95% specificity, and the second primary disease at 0.1% tumor fraction with around 75% sensitivity and 100% specificity. In a cohort of 9 non-small-cell lung cancer patients, we show that OncoMonitor can provide comprehensive tumor changes for treatment response prediction and capture emerging tumor clones; this cannot be achieved by previous methods that are based only on mutations in the pre-treatment surgery samples. In summary, with broad genomic sequencing coverage and comprehensive mutation analysis, our method can identify patients suffering from MRD or cancer recurrence/progression, provide a thorough view of their tumor status, and enable early intervention and personalized treatment. Citation Format: Shuo Li, Weihua Zeng, Xiaohui Ni, Mary L. Stackpole, Yonggang Zhou, Zorawar Noor, Zuyang Yuan, Edward B. Garon, Steven M. Dubinett, Wenyuan Li, Xianghong Zhou. cMonitor: Comprehensive and sensitive monitoring of diverse cancer treatment outcomes by exome-wide mutation analysis in plasma cfDNA [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2021; 2021 Apr 10-15 and May 17-21. Philadelphia (PA): AACR; Cancer Res 2021;81(13_Suppl):Abstract nr 567.
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