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Gene Regulatory Network Inference Using Predictive Minimum Description Length Principle and Conditional Mutual Information

机译:基因监管网络推断使用预测最小描述长度原理和条件相互信息

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Inferring gene regulatory networks using information theory models have received much attention due to their simplicity and low computational costs. One of the major problems with information theory models is to determine the threshold which defines the regulatory relationships between genes. The minimum description length (MDL) has been used to overcome this problem. We propose an inference algorithm which incorporates mutual information (MI), conditional mutual information (CMI) and predictive minimum description length (PMDL) principles to infer gene regulatory networks from microarray data. The information theoretic quantities MI and CMI determine the regulatory relationships between genes and the PMDL principle determines the MI threshold. The performance of the proposed algorithm is demonstrated on random synthetic networks, and the results show that the PMDL principle is a good choice to determine the MI threshold.
机译:使用信息理论模型推断基因监管网络由于其简单性和计算成本低而受到了很多关注。信息理论模型的主要问题之一是确定定义基因之间的调节关系的阈值。最小描述长度(MDL)已被用于克服此问题。我们提出了一种推导算法,该推理算法包括来自微阵列数据的改进基因调节网络的互信息(MI),条件互信息(CMI)和预测最小描述长度(PMDL)原理。信息理论量MI和CMI确定基因之间的调节关系和PMDL原理决定了MI阈值。在随机合成网络上证明了所提出的算法的性能,结果表明PMDL原理是确定MI阈值的良好选择。

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