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Predicting Functional Effects of Synonymous Variants: A Systematic Review and Perspectives

机译:预测同义变体的功能效果:系统评价和观点

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摘要

Recent advances in high-throughput experimentation have put the exploration of genome sequences at the forefront of precision medicine. In an effort to interpret the sequencing data, numerous computational methods have been developed for evaluating the effects of genome variants. Interestingly, despite the fact that every person has as many synonymous (sSNV) as non-synonymous single nucleotide variants, our ability to predict their effects is limited. The paucity of experimentally tested sSNV effects appears to be the limiting factor in development of such methods. Here, we summarize the details and evaluate the performance of nine existing computational methods capable of predicting sSNV effects. We used a set of observed and artificially generated variants to approximate large scale performance expectations of these tools. We note that the distribution of these variants across amino acid and codon types suggests purifying evolutionary selection retaining generated variants out of the observed set; i.e., we expect the generated set to be enriched for deleterious variants. Closer inspection of the relationship between the observed variant frequencies and the associated prediction scores identifies predictor-specific scoring thresholds of reliable effect predictions. Notably, across all predictors, the variants scoring above these thresholds were significantly more often generated than observed. which confirms our assumption that the generated set is enriched for deleterious variants. Finally, we find that while the methods differ in their ability to identify severe sSNV effects, no predictor appears capable of definitively recognizing subtle effects of such variants on a large scale.
机译:高通量实验的最新进展使对基因组序列的探索成为精密医学的前沿。为了解释测序数据,已经开发了许多计算方法来评估基因组变体的作用。有趣的是,尽管每个人都有与非同义单核苷酸变体一样多的同义(sSNV),但我们预测其作用的能力有限。缺乏实验验证的sSNV效应似乎是开发此类方法的限制因素。在这里,我们总结了细节并评估了能够预测sSNV效应的九种现有计算方法的性能。我们使用一组观察到的和人工生成的变体来近似这些工具的大规模性能期望。我们注意到,这些变异体在氨基酸和密码子类型之间的分布表明,纯化进化选择可以保留观察到的变异体。即,我们希望生成的集合能够丰富有害的变量。对观察到的变异频率与相关的预测得分之间的关​​系进行仔细检查,可以确定可靠效果预测的预测变量特定得分阈值。值得注意的是,在所有预测变量中,得分高于这些阈值的变异产生的频率明显高于观察到的变异。这证实了我们的假设,即所生成的集合富含有害变体。最后,我们发现,尽管这些方法在识别严重sSNV效应的能力上有所不同,但没有任何预测因子能够确定性地大规模识别此类变异的微妙影响。

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