Seo Jiwon, Jung Hyein, Ko Younhee
Division of Biomedical Engineering, Hankuk University of Foreign Studies, Yongin 17035, Gyeonggi-do, Republic of Korea.
Pharmaceutics. 2023 Oct 15;15(10):2469. doi: 10.3390/pharmaceutics15102469.
Drug-drug interactions (DDI) occur because of the unexpected pharmacological effects of drug pairs. Although drug efficacy can be improved by taking two or more drugs in the short term, this may cause inevitable side effects. Currently, multiple drugs are prescribed based on the experience or knowledge of the clinician, and there is no standard database that can be referred to as safe co-prescriptions. Thus, accurately identifying DDI is critical for patient safety and treatment modalities. Many computational methods have been developed to predict DDIs based on chemical structures or biological features, such as target genes or functional mechanisms. However, some features are only available for certain drugs, and their pathological mechanisms cannot be fully employed to predict DDIs by considering the direct overlap of target genes. In this study, we propose a novel deep learning model to predict DDIs by utilizing chemical structure similarity and protein-protein interaction (PPI) information among drug-binding proteins, such as carriers, transporters, enzymes, and targets (CTET) proteins. We applied the random walk with restart (RWR) algorithm to propagate drug CTET proteins across a PPI network derived from the STRING database, which will lead to the successful incorporation of the hidden biological mechanisms between CTET proteins and disease-associated genes. We confirmed that the RWR propagation of CTET proteins helps predict DDIs by utilizing indirectly co-regulated biological mechanisms. Our method identified the known DDIs between clinically proven epilepsy drugs. Our results demonstrated the effectiveness of PRID in predicting DDIs in known drug combinations as well as unknown drug pairs. PRID could be helpful in identifying novel DDIs and associated pharmacological mechanisms to cause the DDIs.
药物相互作用(DDI)是由于药物对之间意外的药理作用而发生的。虽然短期内服用两种或更多种药物可以提高药物疗效,但这可能会导致不可避免的副作用。目前,多种药物的处方是基于临床医生的经验或知识,并且没有可作为安全联合处方参考的标准数据库。因此,准确识别药物相互作用对于患者安全和治疗方式至关重要。已经开发了许多计算方法来基于化学结构或生物学特征(如靶基因或功能机制)预测药物相互作用。然而,一些特征仅适用于某些药物,并且通过考虑靶基因的直接重叠,它们的病理机制不能完全用于预测药物相互作用。在本研究中,我们提出了一种新颖的深度学习模型,通过利用药物结合蛋白(如载体、转运蛋白、酶和靶标(CTET)蛋白)之间的化学结构相似性和蛋白质 - 蛋白质相互作用(PPI)信息来预测药物相互作用。我们应用带重启的随机游走(RWR)算法在从STRING数据库衍生的PPI网络中传播药物CTET蛋白,这将成功纳入CTET蛋白与疾病相关基因之间隐藏的生物学机制。我们证实CTET蛋白的RWR传播通过利用间接共同调节的生物学机制有助于预测药物相互作用。我们的方法识别了临床验证的癫痫药物之间已知的药物相互作用。我们的结果证明了PRID在预测已知药物组合以及未知药物对中的药物相互作用方面的有效性。PRID有助于识别新的药物相互作用以及导致药物相互作用的相关药理机制。