Transition dependency: a gene-gene interaction measure for times series microarray data.

Xin Gao, Daniel Q Pu, Peter X-K Song
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引用次数: 6

Abstract

Gene-Gene dependency plays a very important role in system biology as it pertains to the crucial understanding of different biological mechanisms. Time-course microarray data provides a new platform useful to reveal the dynamic mechanism of gene-gene dependencies. Existing interaction measures are mostly based on association measures, such as Pearson or Spearman correlations. However, it is well known that such interaction measures can only capture linear or monotonic dependency relationships but not for nonlinear combinatorial dependency relationships. With the invocation of hidden Markov models, we propose a new measure of pairwise dependency based on transition probabilities. The new dynamic interaction measure checks whether or not the joint transition kernel of the bivariate state variables is the product of two marginal transition kernels. This new measure enables us not only to evaluate the strength, but also to infer the details of gene dependencies. It reveals nonlinear combinatorial dependency structure in two aspects: between two genes and across adjacent time points. We conduct a bootstrap-based chi(2) test for presence/absence of the dependency between every pair of genes. Simulation studies and real biological data analysis demonstrate the application of the proposed method. The software package is available under request.

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过渡依赖:时间序列微阵列数据的基因-基因相互作用测量。
基因-基因依赖性在系统生物学中起着非常重要的作用,因为它关系到对不同生物机制的重要理解。时间过程微阵列数据为揭示基因-基因依赖的动态机制提供了一个新的平台。现有的交互度量大多基于关联度量,如Pearson或Spearman相关性。然而,众所周知,这种相互作用度量只能捕获线性或单调依赖关系,而不能捕获非线性组合依赖关系。利用隐马尔可夫模型,提出了一种基于转移概率的两两依赖度量方法。新的动态相互作用测度检查二元状态变量的联合转移核是否为两个边缘转移核的乘积。这种新方法不仅使我们能够评估强度,而且还可以推断基因依赖性的细节。它揭示了两个基因之间和相邻时间点之间的非线性组合依赖结构。我们对每对基因之间是否存在依赖关系进行了基于自举的chi(2)检验。仿真研究和实际生物数据分析验证了该方法的应用。该软件包可根据要求提供。
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