Tumour mutational burden is overestimated by target cancer gene panels

Hu Fang , Johanna Bertl , Xiaoqiang Zhu , Tai Chung Lam , Song Wu , David J.H. Shih , Jason W.H. Wong
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引用次数: 2

Abstract

Background

Tumour mutational burden (TMB) has emerged as a predictive marker for responsiveness to immune checkpoint inhibitors (ICI) in multiple tumour types. It can be calculated from somatic mutations detected from whole exome or targeted panel sequencing data. As mutations are unevenly distributed across the cancer genome, the clinical implications from TMB calculated using different genomic regions are not clear.

Methods

Pan-cancer data of 10,179 samples were collected from The Cancer Genome Atlas cohort and 6,831 cancer patients with either ICI or non-ICI treatment outcomes were derived from published papers. TMB was calculated as the count of non-synonymous mutations and normalised by the size of genomic regions. Dirichlet method, linear regression and Poisson calibration models are used to unify TMB from different gene panels.

Results

We found that panels based on cancer genes usually overestimate TMB compared to whole exome, potentially leading to misclassification of patients to receive ICI. The overestimation is caused by positive selection for mutations in cancer genes and cannot be completely addressed by the removal of mutational hotspots. We compared different approaches to address this discrepancy and developed a generalised statistical model capable of interconverting TMB derived from whole exome and different panel sequencing data, enabling TMB correction for patient stratification for ICI treatment. We show that in a cohort of lung cancer patients treated with ICI, when using a TMB cutoff of 10 mut/Mb, our corrected TMB outperforms the original panel-based TMB.

Conclusion

Cancer gene-based panels usually overestimate TMB, and these findings will be valuable for unifying TMB calculations across cancer gene panels in clinical practice.

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靶癌症基因组过高估计肿瘤突变负担
肿瘤突变负担(TMB)已成为多种肿瘤类型对免疫检查点抑制剂(ICI)反应性的预测标志物。它可以通过从整个外显子组或目标面板测序数据中检测到的体细胞突变来计算。由于突变在癌症基因组中的分布不均匀,使用不同基因组区域计算TMB的临床意义尚不清楚。方法从癌症基因组图谱队列中收集10,179个样本的癌症数据,并从已发表的论文中获得6,831例ICI或非ICI治疗结果的癌症患者。TMB计算为非同义突变的计数,并按基因组区域的大小进行归一化。采用Dirichlet方法、线性回归和泊松校正模型对不同基因组的TMB进行统一。结果我们发现,与全外显子组相比,基于癌症基因的小组通常高估了TMB,这可能导致患者接受ICI的错误分类。过高的估计是由癌症基因突变的正选择引起的,不能通过去除突变热点来完全解决。我们比较了不同的方法来解决这一差异,并开发了一种通用的统计模型,能够转换来自全外显子组和不同小组测序数据的TMB,使TMB校正能够用于ICI治疗的患者分层。我们表明,在一组接受ICI治疗的肺癌患者中,当使用10 mut/Mb的TMB截止值时,我们校正的TMB优于原始的基于小组的TMB。结论基于肿瘤基因的TMB通常高估,这些发现将为临床实践中统一不同肿瘤基因的TMB计算提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
14.20
自引率
0.00%
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0
审稿时长
70 days
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