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PNAS Plus: Algorithmic methods to infer the evolutionary trajectories in cancer progression

机译:PNAS Plus:推断癌症进展中的进化轨迹的算法方法

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摘要

The genomic evolution inherent to cancer relates directly to a renewed focus on the voluminous next-generation sequencing data and machine learning for the inference of explanatory models of how the (epi)genomic events are choreographed in cancer initiation and development. However, despite the increasing availability of multiple additional -omics data, this quest has been frustrated by various theoretical and technical hurdles, mostly stemming from the dramatic heterogeneity of the disease. In this paper, we build on our recent work on the “selective advantage” relation among driver mutations in cancer progression and investigate its applicability to the modeling problem at the population level. Here, we introduce PiCnIc (Pipeline for Cancer Inference), a versatile, modular, and customizable pipeline to extract ensemble-level progression models from cross-sectional sequenced cancer genomes. The pipeline has many translational implications because it combines state-of-the-art techniques for sample stratification, driver selection, identification of fitness-equivalent exclusive alterations, and progression model inference. We demonstrate PiCnIc’s ability to reproduce much of the current knowledge on colorectal cancer progression as well as to suggest novel experimentally verifiable hypotheses.
机译:癌症固有的基因组进化直接与对大量下一代测序数据和机器学习的重新关注直接相关,以推断在癌症发生和发展过程中如何编排(epi)基因组事件的解释性模型。然而,尽管越来越多的其他组学数据的可用性越来越高,但由于各种理论和技术障碍(主要是由于该疾病的巨大异质性),该研究仍受挫。在本文中,我们基于我们最近在癌症发展过程中驱动突变之间的“选择性优势”关系的研究,并研究了其在人群水平上对建模问题的适用性。在这里,我们介绍PiCnIc(癌症推断管线),它是一种多功能,模块化和可定制的管道,可从横截面测序的癌症基因组中提取整体水平的进展模型。该管道具有许多转换意义,因为它结合了用于样本分层,驱动程序选择,适合性等效排他变更的标识以及级联模型推断的最新技术。我们证明了PiCnIc能够复制有关结直肠癌进展的最新知识,并提出新颖的实验可验证的假设。

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