Department of Computer Engineering, Engineering Faculty, University of Zanjan, Zanjan, Iran.
PLoS One. 2018 Jul 12;13(7):e0200094. doi: 10.1371/journal.pone.0200094. eCollection 2018.
The reconstruction of the topology of gene regulatory networks (GRNs) using high throughput genomic data such as microarray gene expression data is an important problem in systems biology. The main challenge in gene expression data is the high number of genes and low number of samples; also the data are often impregnated with noise. In this paper, in dealing with the noisy data, Kalman filter based method that has the ability to use prior knowledge on learning the network was used. In the proposed method namely (KFLR), in the first phase by using mutual information, the noisy regulations with low correlations were removed. The proposed method utilized a new closed form solution to compute the posterior probabilities of the edges from regulators to the target gene within a hybrid framework of Bayesian model averaging and linear regression methods. In order to show the efficiency, the proposed method was compared with several well know methods. The results of the evaluation indicate that the inference accuracy was improved by the proposed method which also demonstrated better regulatory relations with the noisy data.
使用高通量基因组数据(如微阵列基因表达数据)重建基因调控网络(GRN)的拓扑结构是系统生物学中的一个重要问题。基因表达数据的主要挑战是基因数量多而样本数量少;此外,数据通常带有噪声。在本文中,在处理噪声数据时,使用了基于卡尔曼滤波器的方法,该方法具有利用网络学习先验知识的能力。在所提出的方法(KFLR)中,在第一阶段通过使用互信息,去除了具有低相关性的噪声调节。该方法利用一种新的封闭形式解,在贝叶斯模型平均和线性回归方法的混合框架内,计算从调节剂到目标基因的边缘的后验概率。为了展示效率,将所提出的方法与几种知名方法进行了比较。评估结果表明,所提出的方法提高了推断准确性,并且还展示了对噪声数据更好的调控关系。