微阵列时间过程数据探索性分析的协调并行视图

Paul Craig, Jessie Kennedy, Andrew Cumming
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引用次数: 8

摘要

微阵列时间过程数据涉及在生物过程中多个离散时间点上并行记录的数千个基因的活动。现有的技术试图支持对这些数据的探索性分析,这些技术依赖于静态聚类视图、交互式聚类视图或协调聚类和图形视图,并且它们无法解释数据中较少的主导模式,例如那些涉及基因子集或有限时间间隔的数据。在本文中,我们描述了一种替代方法,该方法通过使用组合并行视图来呈现数据的不同互补方面(即时间,活动和活动中的变化)来避免这种限制。本文描述了一个如何组合视图以揭示数据中的重要模式(包括使用基于聚类的技术无法找到的模式)的示例,并使用该示例说明了组合并行视图支持对此类数据进行探索性分析的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coordinated parallel views for the exploratory analysis of microarray time-course data
Microarray time-course data relate to the recorded activity of thousands of genes, in parallel, over multiple discrete points in time during a biological process. Existing techniques that attempt to support the exploratory analysis of this data rely on static clustering views, interactive clustering views or coordinated clustering and graph views and are limited in that they fail to account for less dominant patterns in the data such as those that involve a subset of genes or a limited interval of the time-course. In this paper, we describe an alternative approach which avoids this limitation by using combined parallel views to present different complementary aspects of the data (i.e. timing, activity and change-in-activity). An example of how the views are combined to reveal significant patterns in the data (including those which cannot be found using clustering based techniques) is described and used to illustrate the benefits of combined parallel views to support exploratory-analysis of this type of data.
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