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Assessment of computational methods for predicting the effects of missense mutations in human cancers

机译:评估预测人类癌症中的错义突变影响的计算方法

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BackgroundRecent advances in sequencing technologies have greatly increased the identification of mutations in cancer genomes. However, it remains a significant challenge to identify cancer-driving mutations, since most observed missense changes are neutral passenger mutations. Various computational methods have been developed to predict the effects of amino acid substitutions on protein function and classify mutations as deleterious or benign. These include approaches that rely on evolutionary conservation, structural constraints, or physicochemical attributes of amino acid substitutions. Here we review existing methods and further examine eight tools: SIFT, PolyPhen2, Condel, CHASM, mCluster, logRE, SNAP, and MutationAssessor, with respect to their coverage, accuracy, availability and dependence on other tools.ResultsSingle nucleotide polymorphisms with high minor allele frequencies were used as a negative (neutral) set for testing, and recurrent mutations from the COSMIC database as well as novel recurrent somatic mutations identified in very recent cancer studies were used as positive (non-neutral) sets. Conservation-based methods generally had moderately high accuracy in distinguishing neutral from deleterious mutations, whereas the performance of machine learning based predictors with comprehensive feature spaces varied between assessments using different positive sets. MutationAssessor consistently provided the highest accuracies. For certain combinations metapredictors slightly improved the performance of included individual methods, but did not outperform MutationAssessor as stand-alone tool.ConclusionsOur independent assessment of existing tools reveals various performance disparities. Cancer-trained methods did not improve upon more general predictors. No method or combination of methods exceeds 81% accuracy, indicating there is still significant room for improvement for driver mutation prediction, and perhaps more sophisticated feature integration is needed to develop a more robust tool.
机译:背景技术测序技术的最新进展大大提高了癌症基因组中突变的鉴定。然而,由于大多数观察到的错义变化是中性的客运突变,因此鉴定出驱动癌症的突变仍然是一项重大挑战。已经开发出各种计算方法来预测氨基酸取代对蛋白质功能的影响并将突变分类为有害或良性。这些方法包括依赖于进化保守性,结构限制或氨基酸取代的物理化学属性的方法。在这里,我们回顾了现有方法并进一步检查了八个工具:SIFT,PolyPhen2,Condel,CHASM,mCluster,logRE,SNAP和MutationAssessor,它们的覆盖范围,准确性,可用性和对其他工具的依赖性。结果具有较高次要等位基因的单核苷酸多态性频率用作测试的阴性(中性)组,并且将COSMIC数据库中的复发性突变以及在最近的癌症研究中鉴定出的新型复发性体细胞突变用作阳性(非中性)组。基于保护的方法通常在区分中性突变和有害突变方面具有较高的准确性,而基于机器学习的具有全面特征空间的预测变量的性能在使用不同肯定集的评估之间有所不同。 MutationAssessor始终提供最高的准确性。对于某些组合,元预测器稍微改善了所包含的各个方法的性能,但在独立工具方面的性能却不如MutationAssessor。结论我们对现有工具的独立评估揭示了各种性能差异。接受癌症训练的方法无法改善更多的一般预测指标。没有一种方法或方法的组合的准确度超过81%,这表明驾驶员突变预测仍然有很大的改进空间,也许需要更复杂的功能集成来开发更强大的工具。

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