基因表达时间序列分析的符号方法

Ivan G. Costa, F. D. Carvalho, M. D. Souto
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引用次数: 10

摘要

在基因表达时间序列的分析中,重点是捕获形状相似性(或不相似性)。为了完成这项任务,已经提出了许多接近函数。然而,除非进行特殊的数据处理,否则它们都不能很好地测量包含多个基因表达时间序列的数据的形状相似性(或不相似性)。本文提出了一种多基因表达时间序列的符号描述,其中每个变量取一个时间序列的值,并结合一种接近度量。在这种符号方法中,每个时间序列的形状相似度是独立计算的,最后进行聚合。采用符号动态聚类方法和自组织映射算法对5个不同时间序列的基因表达数据进行分析。使用基因注释评估获得的结果的质量,从而验证该建议的充分性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A symbolic approach to gene expression time series analysis
In the analysis of gene expression time series, emphasis has been given on the capture of shape similarity (or dissimilarity). A number of proximity functions have been proposed for this task. However, none of them will suitably measure shape similarity (or dissimilarity) with data containing multiple gene expression time series, unless special data handling is made. In this paper, a symbolic description of multiple gene expression time series, where each variable takes as a value a time series, in conjunction with a version of a proximity measure, is proposed. In this symbolic approach, the shape similarity of each time series is calculated independently, and aggregated at the end. Gene expression data from five distinct time series are presented to a symbolic dynamical clustering method and self-organising map algorithm. The quality of the results obtained is evaluated using gene annotation allowing a verification of this proposal's adequacy.
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