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Gene–disease relationship discovery based on model-driven data integration and database view definition

机译:基于模型驱动的数据集成和数据库视图定义的基因-疾病关系发现

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摘要

>Motivation: Computational methods are widely used to discover gene–disease relationships hidden in vast masses of available genomic and post-genomic data. In most current methods, a similarity measure is calculated between gene annotations and known disease genes or disease descriptions. However, more explicit gene–disease relationships are required for better insights into the molecular bases of diseases, especially for complex multi-gene diseases.>Results: Explicit relationships between genes and diseases are formulated as candidate gene definitions that may include intermediary genes, e.g. orthologous or interacting genes. These definitions guide data modelling in our database approach for gene–disease relationship discovery and are expressed as views which ultimately lead to the retrieval of documented sets of candidate genes. A system called ACGR (Approach for Candidate Gene Retrieval) has been implemented and tested with three case studies including a rare orphan gene disease.>Availability: The ACGR sources are freely available at . See especially the file ‘disease_description’ and the folders ‘Xcollect_scenarios’ and ‘ACGR_views’.>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:计算方法被广泛用于发现隐藏在大量可用基因组和后基因组数据中的基因-疾病关系。在大多数当前方法中,在基因注释和已知疾病基因或疾病描述之间计算相似性度量。但是,需要更明确的基因-疾病关系才能更好地了解疾病的分子基础,尤其是对于复杂的多基因疾病。>结果:基因与疾病之间的显式关系被公式化为候选基因定义,可能包括中间基因,例如直系同源或相互作用的基因。这些定义指导了我们发现基因-疾病关系的数据库方法中的数据建模,并表示为视图,最终导致了已记录的候选基因集的检索。已实施并测试了一个名为ACGR(候选基因检索方法)的系统,并通过三个案例研究进行了测试,其中包括一种罕见的孤儿基因疾病。>可用性: ACGR的资源可从上免费获得。尤其请参见文件“ disease_description”以及文件夹“ Xcollect_scenarios”和“ ACGR_views”。>联系方式: >补充信息:可在在线生物信息学中获得。

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