生物医学基因组数据库中时间模式发现的计算方法。

Mohammed I Rafiq, Martin J O'Connor, Amar K Das
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引用次数: 11

摘要

随着生物医学研究数据库的快速增长,科学探究的机会迅速扩大,导致对能够从大量数据中提取生物学相关模式的计算方法的需求。一个重要的挑战是确定基因型和临床(表型)数据之间的时间关系。很少有软件工具可用于这种模式匹配,并且它们不能与现有数据库互操作。我们正在开发和验证一种新的软件方法,用于生物医学基因组学中的时间模式发现。在本文中,我们提出了一种高效灵活的查询算法(称为TEMF)来从面向时间的关系数据库中提取统计模式。我们展示了TEMF——作为我们的模块化时间查询应用程序(Chronus II)的扩展——可以表达大范围的复杂时间聚合,而不需要在统计软件包中进行数据处理。我们使用来自斯坦福大学HIV数据库的示例查询来展示TEMF的表达性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computational method for temporal pattern discovery in biomedical genomic databases.

With the rapid growth of biomedical research databases, opportunities for scientific inquiry have expanded quickly and led to a demand for computational methods that can extract biologically relevant patterns among vast amounts of data. A significant challenge is identifying temporal relationships among genotypic and clinical (phenotypic) data. Few software tools are available for such pattern matching, and they are not interoperable with existing databases. We are developing and validating a novel software method for temporal pattern discovery in biomedical genomics. In this paper, we present an efficient and flexible query algorithm (called TEMF) to extract statistical patterns from time-oriented relational databases. We show that TEMF - as an extension to our modular temporal querying application (Chronus II) - can express a wide range of complex temporal aggregations without the need for data processing in a statistical software package. We show the expressivity of TEMF using example queries from the Stanford HIV Database.

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