A Drug-Target Interaction Prediction Based on Supervised Probabilistic Classification

Manmohan Singh, Susheel Kumar Tiwari, G. Swapna, Kirti Verma, Vikas Prasad, Vinod Patidar, Dharmendra Sharma, Hemant Mewada
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Abstract

Bayesian ranking-based drug-target relationship prediction has achieved good results, but it ignores the relationship between drugs of the same target. A new method is proposed for drug-target relationship prediction based on groups by Appling Bayesian. According to the reality that drugs interacting with a specific target have similarities, a grouping strategy was introduced to make these similar drugs interact. A theoretical model based on the grouping strategy is derived in this study. The method is compared with five typical methods on five publicly available datasets and produces superior results to the compared methods. The impact of grouping interaction on the Bayesian ranking approach is examined in this study to create a grouped medication set; comparable pharmaceuticals that interact with the same target are first grouped based on this reality. Then, based on the grouped drug set, new hypotheses were put forth and the conceptual approach of grouped Bayesian ranking was constructed. Finally, to predict novel medications and targets, the article also includes neighbor information. The associated studies demonstrate that the strategy presented in this study outperforms the conventional performance techniques. Plans for further performance improvement through the creation of new comparable grouping objectives are included in future work.
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基于监督概率分类的药物-靶标相互作用预测
基于贝叶斯排序的药物-靶点关系预测取得了较好的效果,但忽略了同一靶点药物之间的关系。应用贝叶斯理论,提出了一种基于分组的药物-靶标关系预测方法。根据药物与特定靶点相互作用具有相似性的现实,引入分组策略使这些相似药物相互作用。本文建立了一个基于分组策略的理论模型。该方法在5个公开数据集上与5种典型方法进行了比较,结果优于比较方法。本研究检验了分组交互作用对贝叶斯排序方法的影响,以创建分组药物集;与相同靶标相互作用的可比药物首先根据这一现实进行分组。然后,在分组药物集的基础上,提出新的假设,构建分组贝叶斯排序的概念方法。最后,为了预测新的药物和靶点,文章还包括邻居信息。相关研究表明,本研究提出的策略优于传统的绩效技术。在今后的工作中还包括通过制定新的可比较的分组目标来进一步改善业绩的计划。
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来源期刊
Journal of Computer Science
Journal of Computer Science Computer Science-Computer Networks and Communications
CiteScore
1.70
自引率
0.00%
发文量
92
期刊介绍: Journal of Computer Science is aimed to publish research articles on theoretical foundations of information and computation, and of practical techniques for their implementation and application in computer systems. JCS updated twelve times a year and is a peer reviewed journal covers the latest and most compelling research of the time.
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