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Prediction of Severity of Drug-Drug Interactions Caused by Enzyme Inhibition and Activation

机译:酶抑制和激活引起的药物相互作用的严重程度的预测

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摘要

Drug-drug interactions (DDIs) severity assessment is a crucial problem because polypharmacy is increasingly common in modern medical practice. Many DDIs are caused by alterations of the plasma concentrations of one drug due to another drug inhibiting and/or inducing the metabolism or transporter-mediated disposition of the victim drug. Accurate assessment of clinically relevant DDIs for novel drug candidates represents one of the significant tasks of contemporary drug research and development and is important for practicing physicians. This work is a development of our previous investigations and aimed to create a model for the severity of DDIs prediction. PASS program and PoSMNA descriptors were implemented for prediction of all five classes of DDIs severity according to OpeRational ClassificAtion (ORCA) system: contraindicated (class 1), provisionally contraindicated (class 2), conditional (class 3), minimal risk (class 4), no interaction (class 5). Prediction can be carried out both for known drugs and for new, not yet synthesized substances using only their structural formulas. Created model provides an assessment of DDIs severity by prediction of different ORCA classes from the first most dangerous class to the fifth class when DDIs do not take place in the human organism. The average accuracy of DDIs class prediction is about 0.75.
机译:药物相互作用(DDI)的严重性评估是一个关键问题,因为在现代医学实践中,多药店越来越普遍。许多DDI是由于另一种药物抑制和/或诱导新陈代谢或转运蛋白介导的受害药物的处置而引起的一种药物血浆浓度的变化而引起的。对新型药物候选者的临床相关DDI的准确评估是当代药物研究和开发的重要任务之一,对执业医师也很重要。这项工作是我们先前研究的发展,旨在为DDI预测的严重性创建模型。已根据操作分类(ORCA)系统实施了PASS程序和PoSMNA描述符,用于预测所有五类DDI严重性:禁忌(1类),暂时禁忌(2类),有条件(3类),最小风险(4类) ,没有互动(第5类)。可以仅使用其结构式对已知药物和尚未合成的新药物进行预测。当人体内未发生DDI时,创建的模型通过预测从最危险的第一类到第五类的不同ORCA类来提供对DDI严重性的评估。 DDI类预测的平均准确度约为0.75。

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