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Inferring gene regulatory networks from time series data using the minimum description length principle

机译:使用最小描述长度原理从时间序列数据推断基因调控网络

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Motivation: A central question in reverse engineering of genetic networks consists in determining the dependencies and regulating relationships among genes. This paper addresses the problem of inferring genetic regulatory networks from time-series gene-expression profiles. By adopting a probabilistic modeling framework compatible with the family of models represented by dynamic Bayesian networks and probabilistic Boolean networks, this paper proposes a network inference algorithm to recover not only the direct gene connectivity but also the regulating orientations.
机译:动机:遗传网络逆向工程中的一个核心问题是确定基因之间的依赖性和调节关系。本文解决了从时序基因表达谱推断遗传调控网络的问题。通过采用与动态贝叶斯网络和概率布尔网络代表的模型族兼容的概率建模框架,本文提出了一种网络推理算法,该算法不仅可以恢复直接的基因连通性,而且可以恢复调控方向。

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