An Iterative Time Windowed Signature Algorithm for Time Dependent Transcription Module Discovery.

Jia Meng, Shou-Jiang Gao, Yufei Huang
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Abstract

An algorithm for the discovery of time varying modules using genome-wide expression data is present here. When applied to large-scale time serious data, our method is designed to discover not only the transcription modules but also their timing information, which is rarely annotated by the existing approaches. Rather than assuming commonly defined time constant transcription modules, a module is depicted as a set of genes that are co-regulated during a specific period of time, i.e., a time dependent transcription module (TDTM). A rigorous mathematical definition of TDTM is provided, which is serve as an objective function for retrieving modules. Based on the definition, an effective signature algorithm is proposed that iteratively searches the transcription modules from the time series data. The proposed method was tested on the simulated systems and applied to the human time series microarray data during Kaposi's sarcoma-associated herpesvirus (KSHV) infection. The result has been verified by Expression Analysis Systematic Explorer.

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时变转录模块发现的一种迭代时窗签名算法。
本文提出了一种利用全基因组表达数据发现时变模块的算法。当应用于大规模时间严肃数据时,我们的方法不仅可以发现转录模块,还可以发现它们的时间信息,这是现有方法很少注释的。与通常定义的时间常数转录模块不同,一个模块被描述为一组在特定时间内被共同调控的基因,即时间依赖性转录模块(TDTM)。给出了TDTM的严格数学定义,并将其作为检索模块的目标函数。在此基础上,提出了一种从时间序列数据中迭代搜索转录模块的有效签名算法。该方法在模拟系统上进行了测试,并应用于卡波西肉瘤相关疱疹病毒(KSHV)感染期间的人类时间序列微阵列数据。该结果已通过表达式分析系统探索者验证。
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