Bioinformatics Graduate Program, Graduate School of Natural and Applied Sciences, Muğla Sıtkı Koçman University, Muğla, Turkey.
Department of Computer Engineering, Faculty of Engineering, Muğla Sıtkı Koçman University, Muğla, Turkey.
Methods Mol Biol. 2023;2690:401-417. doi: 10.1007/978-1-0716-3327-4_31.
The attachment of a virion to a respective cellular receptor on the host organism occurring through the virus-host protein-protein interactions (PPIs) is a decisive step for viral pathogenicity and infectivity. Therefore, a vast number of wet-lab experimental techniques are used to study virus-host PPIs. Taking the great number and enormous variety of virus-host PPIs and the cost as well as labor of laboratory work, however, computational approaches toward analyzing the available interaction data and predicting previously unidentified interactions have been on the rise. Among them, machine-learning-based models are getting increasingly more attention with a great body of resources and tools proposed recently.In this chapter, we first provide the methodology with major steps toward the development of a virus-host PPI prediction tool. Next, we discuss the challenges involved and evaluate several existing machine-learning-based virus-host PPI prediction tools. Finally, we describe our experience with several ensemble techniques as utilized on available prediction results retrieved from individual PPI prediction tools. Overall, based on our experience, we recognize there is still room for the development of new individual and/or ensemble virus-host PPI prediction tools that leverage existing tools.
病毒粒子附着在宿主生物体上相应的细胞受体上,通过病毒-宿主蛋白-蛋白相互作用(PPIs)发生,这是病毒致病性和感染力的决定性步骤。因此,大量的湿实验室实验技术被用于研究病毒-宿主 PPIs。然而,考虑到病毒-宿主 PPIs 的数量众多、种类繁多,以及实验室工作的成本和劳动力,分析可用的相互作用数据并预测以前未识别的相互作用的计算方法已经越来越受到关注。其中,基于机器学习的模型越来越受到关注,最近提出了大量的资源和工具。在本章中,我们首先提供了开发病毒-宿主 PPI 预测工具的主要步骤的方法。接下来,我们讨论所涉及的挑战,并评估几种现有的基于机器学习的病毒-宿主 PPI 预测工具。最后,我们描述了我们在利用来自各个 PPI 预测工具的可用预测结果的几种集成技术方面的经验。总的来说,根据我们的经验,我们认识到仍然有空间开发新的个体和/或集成病毒-宿主 PPI 预测工具,利用现有的工具。