利用Skyline查询分析帕金森病的蛋白-蛋白相互作用

M. R. Diansyah, W. Kusuma, Annisa
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引用次数: 5

摘要

重要蛋白质是机体生长所需的重要蛋白质。蛋白质紊乱可引起器官疾病或功能障碍。在执行其功能时,蛋白质相互作用形成蛋白质-蛋白质相互作用(PPI)网络。为了找到网络中最重要的蛋白质,可以根据指定的参数与各种标准一起使用中心性度量。本研究使用查找非支配数据的算法skyline query,对具有不同标准的问题获得最优结果。使用一些中心性度量作为属性来表示PPI网络的特征。这项研究的目的是寻找帕金森病的重要蛋白质,帕金森病是世界上发展最快的疾病之一。结果发现14种蛋白质,根据文献,其中12种与帕金森病有关。这些蛋白是PARK2、SNCA、ATP13A2、TP53、MAPT、FYN、HSF1、DRD2、VEGFA、AKT1、MPO和SLC18A2。
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Analysis of Protein-Protein Interaction Using Skyline Query on Parkinson Disease
Significant protein is an important protein needed by the body for growth. Protein disorders can cause organ diseases or dysfunction. In carrying out their functions, proteins interact with each others to form protein-protein interaction (PPI) networks. To find the most important protein in a network, centrality measures can be used with various criteria according to the parameter specified. This study uses skyline query, an algorithm for finding non-dominated data, to get optimal results for problems with various criteria. Some centrality measures are used as attributes to represent the PPI network features. The aim of this study is to find significant proteins of Parkinson, one of the fastest growing diseases in the world. The results find 14 proteins, according to the literature, 12 of them are related Parkinson Disease. These proteins are PARK2, SNCA, ATP13A2, TP53, MAPT, FYN, HSF1, DRD2, VEGFA, AKT1, MPO, and SLC18A2.
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