Reconstruction of gene network through Backward Elimination based Information-Theoretic Inference with Maximal Information Coefficient

A. Paul, P. C. Shill
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引用次数: 5

Abstract

For understanding the complex processes of regulation within the system of cellular and every process of life in different developmental and environmental contexts, reconstructing Gene Regulatory Networks(GRNs) is an essential part of Systems Biology. A recently developed maximal information coefficient (MIC) is better to detect all kinds of association than others and it maintains both generality and equitability properties. In this study, we combined MIC as an entropy estimator with gene regulatory network method Backward Elimination based Information-Theoretic Inference and then compare this proposed method with the MI-based algorithm MRNETB by examining SynTReN's datasets. The performance of our proposed MIC based MRNETB (MRNETB-MIC) is given by using both the receiver operator characteristic (ROC) curve and the precision-recall (PR) curve and from these, the proposed method shows significantly better performance in reconstructing gene regulatory network.
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基于最大信息系数的逆向消去信息推理的基因网络重构
为了理解细胞系统内的复杂调控过程以及不同发育和环境背景下的生命过程,基因调控网络(GRNs)的重构是系统生物学的重要组成部分。最近提出的最大信息系数(MIC)能较好地检测各种关联,并保持了通用性和公平性。在这项研究中,我们将MIC作为熵估计器与基因调控网络方法相结合,然后通过检查SynTReN的数据集,将该方法与基于mi的MRNETB算法进行比较。我们提出的基于MIC的MRNETB (MRNETB-MIC)的性能通过使用接收算子特征(ROC)曲线和精确召回率(PR)曲线给出,从这些方面来看,我们提出的方法在重建基因调控网络方面表现出明显更好的性能。
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