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Missense variant pathogenicity predictors generalize well across a range of function-specific prediction challenges

机译:错义变异致病性预测因子可以很好地概括各种功能特定的预测挑战

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摘要

The steady advances in machine learning and accumulation of biomedical data have contributed to the development of numerous computational models that assess the impact of missense variants. Different methods, however, operationalize impact differently. Two common tasks in this context are the prediction of the pathogenicity of variants and the prediction of their effects on a protein’s function. These are related but distinct problems and it is unclear whether methods developed for one are optimized for the other. The Critical Assessment of Genome Interpretation (CAGI) experiment provides a means to address this question empirically. To this end, we participated in various protein-specific challenges in CAGI with two objectives in mind. First, to compare the performance of methods in the MutPred family with the state-of-the-art. Second and more importantly, to investigate the applicability of general-purpose pathogenicity predictors to the classification of specific function-altering variants without additional training or calibration. We find that our pathogenicity predictors performed competitively with other methods, outputting score distributions in agreement with experimental outcomes. Overall, we conclude that binary classifiers learned from disease-causing mutations are capable of modeling important aspects of the underlying biology and the alteration of protein function resulting from mutations.
机译:机器学习的不断发展和生物医学数据的积累,促进了许多评估错义变异影响的计算模型的发展。但是,不同的方法对影响的操作方式不同。在这种情况下,两个常见任务是预测变体的致病性以及预测变体对蛋白质功能的影响。这些是相关但截然不同的问题,目前尚不清楚为一种方法开发的方法是否针对另一种方法进行了优化。基因组解释的关键评估(CAGI)实验提供了一种凭经验解决此问题的方法。为此,我们考虑了两个目标,参与了CAGI中各种蛋白质特异性挑战。首先,将MutPred系列方法与最新技术的性能进行比较。其次,更重要的是,无需其他培训或校准即可研究通用病原性预测因子在特定功能更改变体分类中的适用性。我们发现,我们的致病性预测因子可与其他方法竞争,其输出的分数分布与实验结果一致。总体而言,我们得出的结论是,从致病突变中学习到的二元分类器能够对基础生物学的重要方面以及突变导致的蛋白质功能改变进行建模。

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