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Identifying driver mutations in sequenced cancer genomes: computational approaches to enable precision medicine

机译:识别测序癌症基因组中的驱动程序突变:实现精密医学的计算方法

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摘要

High-throughput DNA sequencing is revolutionizing the study of cancer and enabling the measurement of the somatic mutations that drive cancer development. However, the resulting sequencing datasets are large and complex, obscuring the clinically important mutations in a background of errors, noise, and random mutations. Here, we review computational approaches to identify somatic mutations in cancer genome sequences and to distinguish the driver mutations that are responsible for cancer from random, passenger mutations. First, we describe approaches to detect somatic mutations from high-throughput DNA sequencing data, particularly for tumor samples that comprise heterogeneous populations of cells. Next, we review computational approaches that aim to predict driver mutations according to their frequency of occurrence in a cohort of samples, or according to their predicted functional impact on protein sequence or structure. Finally, we review techniques to identify recurrent combinations of somatic mutations, including approaches that examine mutations in known pathways or protein-interaction networks, as well as de novo approaches that identify combinations of mutations according to statistical patterns of mutual exclusivity. These techniques, coupled with advances in high-throughput DNA sequencing, are enabling precision medicine approaches to the diagnosis and treatment of cancer.
机译:高通量DNA测序正在彻底革新癌症研究,并能够测量驱动癌症发展的体细胞突变。但是,所得的测序数据集又大又复杂,在错误,噪音和随机突变的背景下掩盖了临床上重要的突变。在这里,我们回顾了计算方法,以识别癌症基因组序列中的体细胞突变,并从随机的客运突变中区分出负责癌症的驱动基因突变。首先,我们描述了从高通量DNA测序数据中检测体细胞突变的方法,特别是对于包含异质细胞群体的肿瘤样品而言。接下来,我们回顾旨在根据驱动程序突变在一组样本中的发生频率或根据其对蛋白质序列或结构的预测功能影响来预测驱动程序突变的计算方法。最后,我们回顾了鉴定体细胞突变复发性组合的技术,包括检查已知途径或蛋白质相互作用网络中突变的方法,以及根据相互排斥的统计模式识别突变组合的从头方法。这些技术,加上高通量DNA测序技术的进步,使精确的医学方法能够诊断和治疗癌症。

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