Ashcroft Peter, Michor Franziska, Galla Tobias
Theoretical Physics, School of Physics and Astronomy, The University of Manchester, Manchester M13 9PL, United Kingdom.
Department of Biostatistics and Computational Biology, Dana-Farber Cancer Institute, and Department of Biostatistics, Harvard School of Public Health, Boston, Massachusetts 02215.
Genetics. 2015 Apr;199(4):1213-28. doi: 10.1534/genetics.114.171553. Epub 2015 Jan 26.
Tumors initiate when a population of proliferating cells accumulates a certain number and type of genetic and/or epigenetic alterations. The population dynamics of such sequential acquisition of (epi)genetic alterations has been the topic of much investigation. The phenomenon of stochastic tunneling, where an intermediate mutant in a sequence does not reach fixation in a population before generating a double mutant, has been studied using a variety of computational and mathematical methods. However, the field still lacks a comprehensive analytical description since theoretical predictions of fixation times are available only for cases in which the second mutant is advantageous. Here, we study stochastic tunneling in a Moran model. Analyzing the deterministic dynamics of large populations we systematically identify the parameter regimes captured by existing approaches. Our analysis also reveals fitness landscapes and mutation rates for which finite populations are found in long-lived metastable states. These are landscapes in which the final mutant is not the most advantageous in the sequence, and resulting metastable states are a consequence of a mutation-selection balance. The escape from these states is driven by intrinsic noise, and their location affects the probability of tunneling. Existing methods no longer apply. In these regimes it is the escape from the metastable states that is the key bottleneck; fixation is no longer limited by the emergence of a successful mutant lineage. We used the so-called Wentzel-Kramers-Brillouin method to compute fixation times in these parameter regimes, successfully validated by stochastic simulations. Our work fills a gap left by previous approaches and provides a more comprehensive description of the acquisition of multiple mutations in populations of somatic cells.
当一群增殖细胞积累了一定数量和类型的基因和/或表观遗传改变时,肿瘤就会发生。这种(表观)遗传改变的顺序性获得的群体动态一直是大量研究的主题。随机隧穿现象,即序列中的中间突变体在产生双突变体之前在群体中未达到固定状态,已经使用各种计算和数学方法进行了研究。然而,该领域仍然缺乏全面的分析描述,因为固定时间的理论预测仅适用于第二个突变体有利的情况。在这里,我们在莫兰模型中研究随机隧穿。通过分析大群体的确定性动态,我们系统地确定了现有方法所涵盖的参数范围。我们的分析还揭示了适合度景观和突变率,对于这些景观和突变率,有限群体处于长期的亚稳态。在这些景观中,最终的突变体在序列中并非最有利,并且产生的亚稳态是突变 - 选择平衡的结果。从这些状态的逃逸是由内在噪声驱动的,并且它们的位置会影响隧穿的概率。现有方法不再适用。在这些范围内,从亚稳态的逃逸才是关键瓶颈;固定不再受成功突变谱系出现的限制。我们使用所谓的温策尔 - 克拉默斯 - 布里渊方法来计算这些参数范围内的固定时间,并通过随机模拟成功验证。我们的工作填补了先前方法留下的空白,并提供了对体细胞群体中多个突变获得的更全面描述。