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A Novel Biclustering Approach to Association Rule Mining for Predicting HIV-1–Human Protein Interactions

机译:一种新的基于聚类的关联规则挖掘方法,用于预测HIV-1与人蛋白的相互作用

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摘要

Identification of potential viral-host protein interactions is a vital and useful approach towards development of new drugs targeting those interactions. In recent days, computational tools are being utilized for predicting viral-host interactions. Recently a database containing records of experimentally validated interactions between a set of HIV-1 proteins and a set of human proteins has been published. The problem of predicting new interactions based on this database is usually posed as a classification problem. However, posing the problem as a classification one suffers from the lack of biologically validated negative interactions. Therefore it will be beneficial to use the existing database for predicting new viral-host interactions without the need of negative samples. Motivated by this, in this article, the HIV-1–human protein interaction database has been analyzed using association rule mining. The main objective is to identify a set of association rules both among the HIV-1 proteins and among the human proteins, and use these rules for predicting new interactions. In this regard, a novel association rule mining technique based on biclustering has been proposed for discovering frequent closed itemsets followed by the association rules from the adjacency matrix of the HIV-1–human interaction network. Novel HIV-1–human interactions have been predicted based on the discovered association rules and tested for biological significance. For validation of the predicted new interactions, gene ontology-based and pathway-based studies have been performed. These studies show that the human proteins which are predicted to interact with a particular viral protein share many common biological activities. Moreover, literature survey has been used for validation purpose to identify some predicted interactions that are already validated experimentally but not present in the database. Comparison with other prediction methods is also discussed.
机译:潜在的病毒-宿主蛋白相互作用的鉴定是开发针对这些相互作用的新药的重要和有用的方法。近年来,计算工具被用于预测病毒-宿主相互作用。最近,已经发布了一个数据库,其中包含一组HIV-1蛋白与一组人类蛋白之间经过实验验证的相互作用的记录。基于此数据库预测新交互的问题通常被视为分类问题。然而,将这个问题归类为一个分类是缺乏生物学上有效的负性相互作用。因此,使用现有数据库来预测新的病毒-宿主相互作用而无需阴性样品将是有益的。因此,本文使用关联规则挖掘技术分析了HIV-1与人类蛋白质的相互作用。主要目标是确定HIV-1蛋白之间和人类蛋白之间的一组关联规则,并使用这些规则预测新的相互作用。在这方面,已经提出了一种基于双聚类的新颖的关联规则挖掘技术,用于发现频繁的封闭项目集,然后从HIV-1与人类交互网络的邻接矩阵中发现关联规则。已根据发现的关联规则预测了新型HIV-1与人的相互作用,并对其生物学意义进行了测试。为了验证所预测的新相互作用,已经进行了基于基因本体论和基于途径的研究。这些研究表明,预计与特定病毒蛋白质相互作用的人类蛋白质具有许多常见的生物学活性。此外,文献调查已用于验证目的,以识别一些已经通过实验验证但在数据库中不存在的预测相互作用。还讨论了与其他预测方法的比较。

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