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首页> 外文期刊>Journal of ambient intelligence and humanized computing >A framework towards data analytics on host-pathogen protein-protein interactions
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A framework towards data analytics on host-pathogen protein-protein interactions

机译:对宿主病原蛋白蛋白质相互作用进行数据分析的框架

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摘要

With the rapid development of high-throughput technologies, systems biology is now embracing a great opportunity made possible by the increased accumulation of data available online. Biological data analytics is considered as a critical means to contribute to a better understanding on such data through extraction of the latent features, relationships and the associated mechanisms. Therefore, it is important to evaluate how to involve data analytics from both computational and biological perspectives in practice. This paper has investigated interaction relationships in the proteomics area, which provide insights of the critical molecular processes within infection mechanisms. Specifically, we focused on host-pathogen protein-protein interactions, which represented the primary challenges associated with infectious diseases and drug design. Accordingly, a novel framework based on data analytics and machine learning techniques is detailed for analyzing these areas and we will describe the analytical results from host-pathogen protein-protein interactions (HP-PPI). Based on this framework, which serves as a pipeline solution for extracting and learning from the raw proteomics data, we have firstly evaluated several models from literature using different analytic technologies and performance measurements. An unsupervised deep learning model based on stacked denoising autoencoders, is subsequently proposed to capture higher level feature regarding the sequence information in the framework. The achieved performance indicates a superior capability of the unsupervised deep learning model in dealing with the host-pathogen protein interactions scenario among all of these models. The results will further help to enrich a theoretical and technical foundation for analyzing HP-PPI networks.
机译:随着高通量技术的快速发展,系统生物学现在正在拥抱在线数据的增加的积累增加了可能的机会。生物数据分析被认为是有助于通过提取潜在特征,关系和相关机制来更好地理解这些数据的关键方法。因此,重要的是在实践中评估如何涉及从计算和生物学视角涉及数据分析。本文研究了蛋白质组学地区的相互作用关系,其提供了感染机制内临界分子过程的见解。具体地,我们专注于宿主病原体蛋白质 - 蛋白质相互作用,其代表了与传染病和药物设计相关的主要挑战。因此,基于数据分析和机器学习技术的新型框架详述了分析这些区域,我们将描述来自宿主病原蛋白 - 蛋白质相互作用(HP-PPI)的分析结果。基于该框架,它作为从原始蛋白质组学数据中提取和学习的管道解决方案,我们首先使用不同的分析技术和性能测量评估了来自文献的多种模型。随后提出了一种基于堆积的脱色自动化器的无监督的深度学习模型,以捕获关于框架中的序列信息的更高级别特征。实现的性能表明了无监督的深度学习模型在处理所有这些模型中的宿主病原体蛋白质相互作用情景方面的优异能力。结果将进一步帮助丰富分析HP-PPI网络的理论和技术基础。

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    Univ Wollongong Sch Comp & Informat Technol Fac Engn & Informat Sci Wollongong NSW 2522 Australia;

    Univ Wollongong Sch Comp & Informat Technol Fac Engn & Informat Sci Wollongong NSW 2522 Australia;

    Univ Wollongong Sch Comp & Informat Technol Fac Engn & Informat Sci Wollongong NSW 2522 Australia;

    Monash Univ Biomed Discovery Inst Melbourne Vic 3800 Australia|Monash Univ Dept Biochem & Mol Biol Melbourne Vic 3800 Australia|Monash Univ Monash Ctr Data Sci Fac Informat Technol Melbourne Vic 3800 Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Protein interactions networks; Deep learning; Data analytics;

    机译:蛋白质互动网络;深入学习;数据分析;

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