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Causality Inference Techniques for In-Silico Gene Regulatory Network

机译:In-Silico基因调控网络的因果推理技术

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Causality detection in gene regulatory networks (GRN) is a challenging problem due to the limit of available data and lack of efficiency in the existing techniques. A number of techniques proposed so far to reconstruct GRN. However, majority of them ignore drawing causality among genes which indicates regulatory relationship. In this paper, we study few techniques available for inferring causality. We select four state-of-the-art causality detection techniques namely, Bayesian network, Granger causality, Mutual information(MI) and Transfer entropy based approach for our study. Performance of the techniques are evaluated using DREAM challenge data based on associated in-silico regulatory networks. Experimental results reveal the superiority of MI based approach in terms of prediction accuracy in comparison to other techniques.
机译:由于可用数据的限制以及现有技术的效率不足,基因调节网络(GRN)中的因果关系检测是一个具有挑战性的问题。到目前为止,提出了许多重建GRN的技术。但是,大多数人忽略了基因之间的绘图因果关系,这表明调控关系。在本文中,我们研究了几种可用于推断因果关系的技术。我们选择四种最先进的因果关系检测技术,即贝叶斯网络,格兰杰因果关系,互信息(MI)和基于转移熵的方法进行研究。基于相关的计算机内监管网络,使用DREAM质询数据评估技术的性能。实验结果表明,与其他技术相比,基于MI的方法在预测准确性方面具有优势。

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