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KFGRNI: A robust method to inference gene regulatory network from time-course gene data based on ensemble Kalman filter

机译:KFGRNI:从基于集合Kalman滤波器的时间课程基因数据推理基因监管网络的强大方法

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摘要

A central problem of systems biology is the reconstruction of Gene Regulatory Networks (GRNs) by the use of time series data. Although many attempts have been made to design an efficient method for GRN inference, providing a best solution is still a challenging task. Existing noise, low number of samples, and high number of nodes are the main reasons causing poor performance of existing methods. The present study applies the ensemble Kalman filter algorithm to model a GRN from gene time series data. The inference of a GRN is decomposed with p genes into p subproblems. In each subproblem, the ensemble Kalman filter algorithm identifies the weight of interactions for each target gene. With the use of the ensemble Kalman filter, the expression pattern of the target gene is predicted from the expression patterns of all the remaining genes. The proposed method is compared with several well-known approaches. The results of the evaluation indicate that the proposed method improves inference accuracy and demonstrates better regulatory relations with noisy data.
机译:系统生物学的一个核心问题是利用时间序列数据重建基因调控网络(GRN)。尽管人们已经做了很多尝试来设计一种有效的GRN推理方法,但提供一个最佳的解决方案仍然是一项具有挑战性的任务。现有方法性能差的主要原因是噪声、样本数少和节点数多。本研究应用集成卡尔曼滤波算法从基因时间序列数据中建模GRN。GRN的推理与p基因一起分解为p子问题。在每个子问题中,集成卡尔曼滤波算法确定每个目标基因的相互作用权重。通过使用集成卡尔曼滤波器,从所有剩余基因的表达模式预测目标基因的表达模式。将该方法与几种著名的方法进行了比较。评估结果表明,该方法提高了推理精度,并与噪声数据表现出更好的调节关系。

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