Jianxiang Mei, C. Kwoh, Peng Yang, X. Li, Jie Zheng
{"title":"Globalized bipartite local model for drug-target interaction prediction","authors":"Jianxiang Mei, C. Kwoh, Peng Yang, X. Li, Jie Zheng","doi":"10.1145/2350176.2350178","DOIUrl":null,"url":null,"abstract":"In pharmacology, it is essential to identify the interactions between drug and targets to understand its effects. Supervised learning with Bipartite Local Model (BLM) recently has been shown to be effective for prediction of drug-target interactions by first predicting target proteins of a given known drug, then predicting drugs targeting a known protein. However, this pure \"local\" model is inapplicable to new drug or target candidates that currently have no known interactions. In this paper, we extend the existing BLM method by integrating a strategy for handling new drug and target candidates. Based on the assumption that similar drugs and targets have similar interaction profiles, we present a simple neighbor-based training data inferring procedure and integrate it into the frame work of BLM. This globalized BLM called bipartite local model with neighbor-based inferring (BLMN) then has an extended functionality for prediction interactions between new drug candidates and new target candidates. Good performance of BLMN has been observed in the experiment of predicting interactions between drugs and four important categories of targets. For the Nuclear Receptors dataset, where there are more chances for the presented strategy to be applied, 20% improvement in terms of AUPR was achieved. This demonstrates the effectiveness of BLMN and its potential in prediction of drug-target interactions.","PeriodicalId":90497,"journal":{"name":"Evolutionary computation, machine learning and data mining in bioinformatics. EvoBIO (Conference)","volume":"47 1","pages":"8-14"},"PeriodicalIF":0.0000,"publicationDate":"2012-08-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"5","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Evolutionary computation, machine learning and data mining in bioinformatics. EvoBIO (Conference)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1145/2350176.2350178","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 5
Abstract
In pharmacology, it is essential to identify the interactions between drug and targets to understand its effects. Supervised learning with Bipartite Local Model (BLM) recently has been shown to be effective for prediction of drug-target interactions by first predicting target proteins of a given known drug, then predicting drugs targeting a known protein. However, this pure "local" model is inapplicable to new drug or target candidates that currently have no known interactions. In this paper, we extend the existing BLM method by integrating a strategy for handling new drug and target candidates. Based on the assumption that similar drugs and targets have similar interaction profiles, we present a simple neighbor-based training data inferring procedure and integrate it into the frame work of BLM. This globalized BLM called bipartite local model with neighbor-based inferring (BLMN) then has an extended functionality for prediction interactions between new drug candidates and new target candidates. Good performance of BLMN has been observed in the experiment of predicting interactions between drugs and four important categories of targets. For the Nuclear Receptors dataset, where there are more chances for the presented strategy to be applied, 20% improvement in terms of AUPR was achieved. This demonstrates the effectiveness of BLMN and its potential in prediction of drug-target interactions.
在药理学中,确定药物与靶点之间的相互作用是了解其作用的必要条件。基于Bipartite Local Model (BLM)的监督学习最近被证明是预测药物-靶标相互作用的有效方法,它首先预测给定已知药物的靶蛋白,然后预测靶向已知蛋白质的药物。然而,这种纯粹的“局部”模型不适用于目前没有已知相互作用的新药或候选靶点。在本文中,我们通过整合处理新药和候选靶点的策略来扩展现有的BLM方法。基于相似药物和靶点具有相似的相互作用特征的假设,我们提出了一种简单的基于邻域的训练数据推断方法,并将其整合到BLM框架中。这种全球化的BLM被称为基于邻居推理的二部局部模型(bipartite local model with neighbor-based inference, BLMN),具有预测新药候选物和新靶标候选物之间相互作用的扩展功能。在预测药物与四种重要靶点相互作用的实验中,已经观察到BLMN具有良好的性能。对于核受体数据集,所提出的策略有更多的机会被应用,AUPR方面提高了20%。这证明了BLMN的有效性及其在预测药物-靶标相互作用方面的潜力。