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Distribution-based measures of tumor heterogeneity are sensitive to mutation calling and lack strong clinical predictive power

机译:基于分布的肿瘤异质性指标对突变调用很敏感并且缺乏强大的临床预测能力

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摘要

Mutant allele frequency distributions in cancer samples have been used to estimate intratumoral heterogeneity and its implications for patient survival. However, mutation calls are sensitive to the calling algorithm. It remains unknown whether the relationship of heterogeneity and clinical outcome is robust to these variations. To resolve this question, we studied the robustness of allele frequency distributions to the mutation callers MuTect, SomaticSniper, and VarScan in 4722 cancer samples from The Cancer Genome Atlas. We observed discrepancies among the results, particularly a pronounced difference between allele frequency distributions called by VarScan and SomaticSniper. Survival analysis showed little robust predictive power for heterogeneity as measured by Mutant-Allele Tumor Heterogeneity (MATH) score, with the exception of uterine corpus endometrial carcinoma. However, we found that variations in mutant allele frequencies were mediated by variations in copy number. Our results indicate that the clinical predictions associated with MATH score are primarily caused by copy number aberrations that alter mutant allele frequencies. Finally, we present a mathematical model of linear tumor evolution demonstrating why MATH score is insufficient for distinguishing different scenarios of tumor growth. Our findings elucidate the importance of allele frequency distributions as a measure for tumor heterogeneity and their prognostic role.
机译:癌症样本中的突变等位基因频率分布已用于评估肿瘤内异质性及其对患者生存的影响。但是,变异调用对调用算法很敏感。异质性与临床结果之间的关系是否对这些变异具有鲁棒性仍是未知的。为了解决这个问题,我们研究了来自癌症基因组图谱的4722个癌症样本中等位基因频率分布对突变调用者MuTect,SomaticSniper和VarScan的鲁棒性。我们观察到结果之间的差异,特别是VarScan和SomaticSniper调用的等位基因频率分布之间存在明显差异。生存分析显示,通过异位等位基因肿瘤异质性(MATH)评分测得的异质性几乎没有强有力的预测能力,子宫内膜癌除外。但是,我们发现突变体等位基因频率的变异是由拷贝数的变异介导的。我们的结果表明,与MATH评分相关的临床预测主要是由改变突变等位基因频率的拷贝数畸变引起的。最后,我们提出了线性肿瘤演化的数学模型,说明了为什么MATH分数不足以区分肿瘤生长的不同情况。我们的发现阐明了等位基因频率分布作为衡量肿瘤异质性及其预后作用的重要性。

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