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Machine learning classifier for identification of damaging missense mutations exclusive to human mitochondrial DNA-encoded polypeptides

机译:机器学习分类器用于识别人类线粒体DNA编码多肽专有的破坏性错义突变

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摘要

BackgroundSeveral methods have been developed to predict the pathogenicity of missense mutations but none has been specifically designed for classification of variants in mtDNA-encoded polypeptides. Moreover, there is not available curated dataset of neutral and damaging mtDNA missense variants to test the accuracy of predictors. Because mtDNA sequencing of patients suffering mitochondrial diseases is revealing many missense mutations, it is needed to prioritize candidate substitutions for further confirmation. Predictors can be useful as screening tools but their performance must be improved.
机译:背景技术已经开发了几种方法来预测错义突变的致病性,但是没有一种方法专门设计用于对mtDNA编码的多肽中的变体进行分类。此外,没有可用的中性和破坏性mtDNA错义变异的精选数据集来测试预测变量的准确性。由于线粒体疾病患者的mtDNA测序显示出许多错义突变,因此需要确定候选替代的优先级以进行进一步确认。预测器可以用作筛选工具,但必须提高其性能。

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