集成分布式数据库知识扩展疾病

Eshref Januzaj
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引用次数: 2

摘要

分析大量生物医学数据是后基因组时代的新挑战。基因研究的目标之一是根据与疾病相关的基因计算疾病之间的相似性。确定疾病之间的生物医学关系可以导致发现新的药物和药物。人类疾病网络(疾病组)说明了基于这些疾病共享的基因的疾病之间的关联。该网络的一个缺点是数据本身,因为疾病只基于单一数据库(OMIM)。然而,存在大量其他生物医学数据库,整合它们,以便能够从所有数据中获利,是一项不可能完成的任务。因此,我们提出了一种不同的方法,即只关注所有这些数据库的知识的集成。在我们的方法中,我们通过集成来自其他分布式数据库的知识来扩展Diseasome,而不需要集成数据本身。为了计算疾病之间的相似度,我们应用数据挖掘技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extending Diseasome by Integrating the Knowledge from Distributed Databases
Analysing large amounts of biomedical data is the new challenge in the post-genomic era. One of the goals in gene research is the computation of the similarity between diseases based on the genes they are related to. Identifying biomedical relationships between diseases can lead to finding of new drugs and medicaments. The human disease network (Diseasome) illustrates the association between diseases based on genes these diseases share. A disadvantage of this network is the data itself, as Diseasome is based only on a single database (OMIM). There exist, however, a large number of other biomedical databases, and integrating them, in order to be able to profit from all their data, is an impossible task. Thus, we propose a different approach, namely, to focus only on the integration of the knowledge of all these databases. In our approach, we extend Diseasome by integrating the knowledge from other distributed databases, without needing to integrate the data itself. To compute the similarity between diseases we apply data mining techniques.
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