Utilizing Graph Database for Inferring Domain-Disease Associations

A. Elmoselhy, E. Ramadan
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Abstract

Graph Databases have been used widely in different areas. Owing to the type of representation they offer, they have gained popularity in disciplines where the interconnection of the data is a substantial matter. With the amount of interconnected data that the era of omics has resulted in, analyzing this data is an important task in medicine, drug design, and many other related fields. This can be done with the help of graph databases. In this paper, a novel multi-bipartite heterogeneous biological graph model is provided. It has been implemented and stored in the graph database Neo4j. Moreover, a new modified version of degree centrality (hereafter ”Disease Degree Centrality”) is adapted to aid in extracting and mining for meaningful insights from the graph model in hand. We calculated the Disease Degree Centrality for the intended node and we reported the most important protein domains. Finally, we analysed our results on a case study of Menkes and Wilson diseases using DAVID and InterPro databases.
利用图数据库推断领域-疾病关联
图数据库在不同领域得到了广泛的应用。由于它们提供的表示类型,它们在数据互连是一个实质性问题的学科中得到了普及。随着组学时代产生了大量相互关联的数据,分析这些数据是医学、药物设计和许多其他相关领域的一项重要任务。这可以在图形数据库的帮助下完成。本文提出了一种新的多二部异质生物图模型。它已经被实现并存储在图形数据库Neo4j中。此外,采用了一种新的修改版本的度中心性(以下简称“疾病度中心性”)来帮助从手头的图模型中提取和挖掘有意义的见解。我们计算了预期节点的疾病度中心性,并报告了最重要的蛋白质结构域。最后,我们使用DAVID和InterPro数据库分析了Menkes病和Wilson病的病例研究结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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