Evolutionary Genomics and Modelling Lab, Centre for Evolution and Cancer, The Institute of Cancer Research, London, United Kingdom.
Evolution and Cancer Lab, Barts Cancer Institute, Queen Mary University of London, London, United Kingdom.
PLoS Comput Biol. 2019 Jul 29;15(7):e1007243. doi: 10.1371/journal.pcbi.1007243. eCollection 2019 Jul.
Quantification of the effect of spatial tumour sampling on the patterns of mutations detected in next-generation sequencing data is largely lacking. Here we use a spatial stochastic cellular automaton model of tumour growth that accounts for somatic mutations, selection, drift and spatial constraints, to simulate multi-region sequencing data derived from spatial sampling of a neoplasm. We show that the spatial structure of a solid cancer has a major impact on the detection of clonal selection and genetic drift from both bulk and single-cell sequencing data. Our results indicate that spatial constrains can introduce significant sampling biases when performing multi-region bulk sampling and that such bias becomes a major confounding factor for the measurement of the evolutionary dynamics of human tumours. We also propose a statistical inference framework that incorporates spatial effects within a growing tumour and so represents a further step forwards in the inference of evolutionary dynamics from genomic data. Our analysis shows that measuring cancer evolution using next-generation sequencing while accounting for the numerous confounding factors remains challenging. However, mechanistic model-based approaches have the potential to capture the sources of noise and better interpret the data.
空间肿瘤采样对下一代测序数据中检测到的突变模式的影响的量化在很大程度上是缺乏的。在这里,我们使用一种空间随机细胞自动机模型来模拟肿瘤的生长,该模型考虑了体细胞突变、选择、漂移和空间限制,以模拟从实体瘤的空间采样中获得的多区域测序数据。我们表明,固体癌症的空间结构对从批量和单细胞测序数据中检测克隆选择和遗传漂移有重大影响。我们的结果表明,当进行多区域批量采样时,空间约束会引入显著的采样偏差,并且这种偏差成为测量人类肿瘤进化动力学的主要混杂因素。我们还提出了一个统计推断框架,该框架在肿瘤生长过程中纳入了空间效应,因此在从基因组数据推断进化动力学方面又向前迈进了一步。我们的分析表明,在考虑到众多混杂因素的情况下,使用下一代测序测量癌症进化仍然具有挑战性。然而,基于机制模型的方法有可能捕捉到噪声源,并更好地解释数据。