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A unified solution for different scenarios of predicting drug-target interactions via triple matrix factorization

机译:通过三重矩阵分解预测不同方案预测药物-靶标相互作用的统一解决方案

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During the identification of potential candidates, computational prediction of drug-target interactions?(DTIs) is important to subsequent expensive validation in wet-lab. DTI screening considers four scenarios, depending on whether the drug is an existing or a new drug and whether the target is an existing or a new target. However, existing approaches have the following limitations. First, only a few of them can address the most difficult scenario (i.e., predicting interactions between new drugs and new targets). More importantly, none of the existing approaches could provide the explicit information for understanding the mechanism of forming interactions, such as the drug-target feature pairs contributing to the interactions. In this paper, we propose a Triple Matrix Factorization-based model (TMF) to tackle these problems. Compared with former state-of-the-art predictive methods, TMF demonstrates its significant superiority by assessing the predictions on four benchmark datasets over four kinds of screening scenarios. Also, it exhibits its outperformance by validating predicted novel interactions. More importantly, by using PubChem fingerprints of chemical structures as drug features and occurring frequencies of amino acid trimer as protein features, TMF shows its ability to find out the features determining interactions, including dominant feature pairs, frequently occurring substructures, and conserved triplet of amino acids. Our TMF provides a unified framework of DTI prediction for all the screening scenarios. It also presents a new insight for the underlying mechanism of DTIs by indicating dominant features, which play important roles in the forming of DTI.
机译:在确定潜在候选者的过程中,药物-靶标相互作用的计算预测对后续在湿实验室进行昂贵的验证很重要。 DTI筛选考虑了四种情况,具体取决于药物是现有药物还是新药物以及目标是现有目标还是新目标。但是,现有方法具有以下局限性。首先,只有少数几个可以解决最困难的情况(即预测新药和新靶标之间的相互作用)。更重要的是,现有方法均无法提供明确的信息来理解形成相互作用的机制,例如促成相互作用的药物-靶特征对。在本文中,我们提出了一种基于三重矩阵分解的模型(TMF)来解决这些问题。与以前最先进的预测方法相比,TMF通过评估四种筛选方案下的四个基准数据集的预测来证明其显着优势。此外,它通过验证预测的新颖交互作用来展示其出色的性能。更重要的是,通过使用化学结构的PubChem指纹作为药物特征并将氨基酸三聚体的出现频率作为蛋白质特征,TMF能够发现决定相互作用的特征,包括显性特征对,频繁出现的亚结构和保守的氨基三联体酸。我们的TMF为所有筛查方案提供统一的DTI预测框架。它还通过指示在DTI的形成中起重要作用的主要特征,为DTI的潜在机制提供了新的见解。

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