McConnell Hannah, Andrews T Daniel, Field Matt A
John Curtin School of Medical Research, Australian National University, Canberra, ACT, Australia.
Australian Institute of Tropical Health and Medicine, Centre for Tropical Bioinformatics and Molecular Biology, James Cook University, Smithfield, Australia.
PeerJ. 2021 Jul 15;9:e11774. doi: 10.7717/peerj.11774. eCollection 2021.
Pharmacogenetic variation is important to drug responses through diverse and complex mechanisms. Predictions of the functional impact of missense pharmacogenetic variants primarily rely on the degree of sequence conservation between species as a primary discriminator. However, idiosyncratic or off-target drug-variant interactions sometimes involve effects that are peripheral or accessory to the central systems in which a gene functions. Given the importance of sequence conservation to functional prediction tools-these idiosyncratic pharmacogenetic variants may violate the assumptions of predictive software commonly used to infer their effect.
Here we exhaustively assess the effectiveness of eleven missense mutation functional inference tools on all known pharmacogenetic missense variants contained in the Pharmacogenomics Knowledgebase (PharmGKB) repository. We categorize PharmGKB entries into sub-classes to catalog likely off-target interactions, such that we may compare predictions across different variant annotations.
As previously demonstrated, functional inference tools perform variably across the complete set of PharmGKB variants, with large numbers of variants incorrectly classified as 'benign'. However, we find substantial differences amongst PharmGKB variant sub-classes, particularly in variants known to cause off-target, type B adverse drug reactions, that are largely unrelated to the main pharmacological action of the drug. Specifically, variants associated with off-target effects (hence referred to as off-target variants) were most often incorrectly classified as 'benign'. These results highlight the importance of understanding the underlying mechanism of pharmacogenetic variants and how variants associated with off-target effects will ultimately require new predictive algorithms.
In this work we demonstrate that functional inference tools perform poorly on pharmacogenetic variants, particularly on subsets enriched for variants causing off-target, type B adverse drug reactions. We describe how to identify variants associated with off-target effects within PharmGKB in order to generate a training set of variants that is needed to develop new algorithms specifically for this class of variant. Development of such tools will lead to more accurate functional predictions and pave the way for the increased wide-spread adoption of pharmacogenetics in clinical practice.
药物遗传学变异通过多样且复杂的机制对药物反应具有重要意义。错义药物遗传学变异功能影响的预测主要依赖物种间序列保守程度作为主要判别依据。然而,特异质或脱靶药物 - 变异相互作用有时涉及的效应是基因发挥功能的核心系统的外围或辅助效应。鉴于序列保守性对功能预测工具的重要性,这些特异质药物遗传学变异可能会违反常用于推断其效应的预测软件的假设。
在此,我们详尽评估了十一种错义突变功能推断工具对药物基因组学知识库(PharmGKB)储存库中所有已知药物遗传学错义变异的有效性。我们将 PharmGKB 条目分类为子类,以编目可能的脱靶相互作用,以便我们能够比较不同变异注释的预测结果。
如先前所示,功能推断工具在整个 PharmGKB 变异集上表现各异,大量变异被错误分类为“良性”。然而,我们发现 PharmGKB 变异子类之间存在显著差异,特别是在已知会导致脱靶的 B 型药物不良反应的变异中,这些变异在很大程度上与药物的主要药理作用无关。具体而言,表示脱靶效应的变异(因此称为脱靶变异)最常被错误分类为“良性”。这些结果凸显了理解药物遗传学变异潜在机制的重要性,以及与脱靶效应相关的变异最终如何需要新的预测算法。
在这项工作中,我们证明功能推断工具在药物遗传学变异上表现不佳,特别是在富含导致脱靶的 B 型药物不良反应变异的子集中。我们描述了如何在 PharmGKB 中识别与脱靶效应相关的变异,以便生成开发针对此类变异的新算法所需的变异训练集。此类工具的开发将导致更准确的功能预测,并为药物遗传学在临床实践中更广泛的应用铺平道路。