An Extension of XQuery for Graph Analysis of Biological Pathways

L. Strömbäck, S. Schmidt
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引用次数: 7

Abstract

The vast quantity of scientific data produced in life sciences demands the use of sophisticated storage and analysis techniques. In particular, for biological pathways graph analysis plays an important role and data is commonly available in XML-based formats. Thus, there is a growing need to make analysis capabilities available through query languages for XML. This paper presents an approach to extend XQuery for graph analysis with focus on data for biological pathways. A graph model is introduced within the XQuery environment. New built-in functions define the available operations on the graph model. XQuery expressions can be utilized to populate graphs with data and execute graph algorithms. Graph data and results of algorithms can be accessed in an XML representation for further processing. In addition, a reference mechanism can be used to preserve associations from graph data to the original XML data. The approach has been implemented as an extension to exist. First evaluations of the implementation show that the introduced approach is practical and efficient for reaction networks with several thousand vertices and edges.
生物通路图分析中XQuery的扩展
生命科学中产生的大量科学数据需要使用复杂的存储和分析技术。特别是,对于生物通路,图分析起着重要的作用,数据通常以基于xml的格式提供。因此,越来越需要通过XML查询语言提供分析功能。本文提出了一种扩展XQuery用于图形分析的方法,重点关注生物途径的数据。在XQuery环境中引入了一个图模型。新的内置函数定义了图模型上可用的操作。XQuery表达式可以用来用数据填充图形并执行图形算法。可以用XML表示访问图数据和算法的结果,以便进行进一步处理。此外,还可以使用引用机制来保存图数据与原始XML数据之间的关联。该方法已被实现为现有方法的扩展。对实现的初步评估表明,所引入的方法对于具有数千个顶点和边的反应网络是实用和有效的。
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