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Machine-Learning Prediction of Drug-Induced Cardiac Arrhythmia: Analysis of Gene Expression and Clustering

机译:药物诱导心律失常的机器学习预测:基因表达分析和聚类

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A marked delay in the electrical repolarization of heart ventricles is characterized by prolongation of the Q–T wave (QT) interval on a surface electrocardiogram. Such a delay can lead to potentially life-threatening cardiac arrhythmia (torsades de pointes). Such prolongation is also a widely accepted cardiac safety biomarker in drug development. Current preclinical drug-safety assays include patch clamp analysis to evaluate drug-related blockade of cardiac repolarizing ion currents. Recently reported patch clamp assay results have shown predictive sensitivities and specificities in the ranges of 64%–82% and 75%–88%, respectively. In this project, we use a support vector machine classifier to find mean sensitivities and specificities of 85% and 90%, respectively, across 77 drug subclassifications. Clustering by gene expression profile similarities shows that drugs known to prolong the QT interval do not always form distinct groups, but the number of groups is limited. The most common biological network links associated with these groups involve genes linked with fatty acid metabolism, G proteins, intracellular glutathione, immune responses, apoptosis, mitochondrial function, electron transport, and mitogen-activated protein kinases. These results suggest that machine-learning analysis of gene expression and clustering may augment cardiac safety predictions for improving drug-safety assessments.
机译:心室的电解倒波中的显着延迟特征在于Q-T波(QT)间隔在表面心电图上的延长。这种延迟可以导致潜在的危及生命的心脏心律失常(扭曲DE POINTES)。这种延长也是药物发育中广泛接受的心脏安全生物标志物。目前的临床前药物安全测定包括膜片钳分析,以评估与心脏复极离子电流的药物相关阻滞。最近报道的蛋白钳位测定结果表明,分别显示了64%-82%和75%-88%的预测性敏感性和特异性。在该项目中,我们使用一个支持向量机分类器,分别在77个药物子分类中找到85%和90%的平均敏感性和特异性。通过基因表达分布的聚类表明,已知延长QT间隔的药物并不总是形成不同的群体,但是群体的数量是有限的。与这些组相关的最常见的生物网络链接涉及与脂肪酸代谢,G蛋白,细胞内谷胱甘肽,免疫应答,细胞凋亡,线粒体功能,电子传输和丝裂原活化蛋白激酶相关的基因。这些结果表明,基因表达和聚类的机器学习分析可能增加了用于改善药物安全评估的心脏安全预测。

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