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基于药物功能相似性的药物相互作用的计算预测

Computational prediction of drug-drug interactions based on drugs functional similarities.

作者信息

Ferdousi Reza, Safdari Reza, Omidi Yadollah

机构信息

Department of Health Information Management, School of Allied-Health Sciences, Tehran University of Medical Sciences, Tehran, Iran; Research Centre for Pharmaceutical Nanotechnology, Faculty of Pharmacy, Tabriz University of Medical Sciences, Tabriz, Iran.

Department of Health Information Management, School of Allied-Health Sciences, Tehran University of Medical Sciences, Tehran, Iran.

出版信息

J Biomed Inform. 2017 Jun;70:54-64. doi: 10.1016/j.jbi.2017.04.021. Epub 2017 Apr 30.

DOI:10.1016/j.jbi.2017.04.021
PMID:28465082
Abstract

Therapeutic activities of drugs are often influenced by co-administration of drugs that may cause inevitable drug-drug interactions (DDIs) and inadvertent side effects. Prediction and identification of DDIs are extremely vital for the patient safety and success of treatment modalities. A number of computational methods have been employed for the prediction of DDIs based on drugs structures and/or functions. Here, we report on a computational method for DDIs prediction based on functional similarity of drugs. The model was set based on key biological elements including carriers, transporters, enzymes and targets (CTET). The model was applied for 2189 approved drugs. For each drug, all the associated CTETs were collected, and the corresponding binary vectors were constructed to determine the DDIs. Various similarity measures were conducted to detect DDIs. Of the examined similarity methods, the inner product-based similarity measures (IPSMs) were found to provide improved prediction values. Altogether, 2,394,766 potential drug pairs interactions were studied. The model was able to predict over 250,000 unknown potential DDIs. Upon our findings, we propose the current method as a robust, yet simple and fast, universal in silico approach for identification of DDIs. We envision that this proposed method can be used as a practical technique for the detection of possible DDIs based on the functional similarities of drugs.

摘要

药物的治疗活性常常受到同时给药的影响,这些药物可能会导致不可避免的药物相互作用(DDIs)和意外的副作用。预测和识别药物相互作用对于患者安全和治疗方式的成功极为重要。已经采用了多种计算方法来基于药物结构和/或功能预测药物相互作用。在此,我们报告一种基于药物功能相似性的药物相互作用预测计算方法。该模型基于包括载体、转运体、酶和靶点(CTET)在内的关键生物学要素建立。该模型应用于2189种已批准的药物。对于每种药物,收集所有相关的CTET,并构建相应的二元向量以确定药物相互作用。进行了各种相似性度量以检测药物相互作用。在所研究的相似性方法中,发现基于内积的相似性度量(IPSMs)能提供更好的预测值。总共研究了2394766对潜在的药物相互作用。该模型能够预测超过250000种未知的潜在药物相互作用。基于我们的研究结果,我们提出当前方法是一种强大、简单快速且通用的计算机模拟方法,用于识别药物相互作用。我们设想这种提出的方法可作为一种实用技术,用于基于药物功能相似性检测可能的药物相互作用。

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