Gene regulatory network inference by point-based Gaussian approximation filters incorporating the prior information.

Bin Jia, Xiaodong Wang
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引用次数: 4

Abstract

: The extended Kalman filter (EKF) has been applied to inferring gene regulatory networks. However, it is well known that the EKF becomes less accurate when the system exhibits high nonlinearity. In addition, certain prior information about the gene regulatory network exists in practice, and no systematic approach has been developed to incorporate such prior information into the Kalman-type filter for inferring the structure of the gene regulatory network. In this paper, an inference framework based on point-based Gaussian approximation filters that can exploit the prior information is developed to solve the gene regulatory network inference problem. Different point-based Gaussian approximation filters, including the unscented Kalman filter (UKF), the third-degree cubature Kalman filter (CKF3), and the fifth-degree cubature Kalman filter (CKF5) are employed. Several types of network prior information, including the existing network structure information, sparsity assumption, and the range constraint of parameters, are considered, and the corresponding filters incorporating the prior information are developed. Experiments on a synthetic network of eight genes and the yeast protein synthesis network of five genes are carried out to demonstrate the performance of the proposed framework. The results show that the proposed methods provide more accurate inference results than existing methods, such as the EKF and the traditional UKF.

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结合先验信息的基于点高斯近似滤波器的基因调控网络推断。
扩展卡尔曼滤波(EKF)已被应用于基因调控网络的推断。然而,众所周知,当系统表现出高度非线性时,EKF的精度会降低。此外,基因调控网络在实践中存在一定的先验信息,目前还没有系统的方法将这些先验信息纳入卡尔曼型滤波器中来推断基因调控网络的结构。本文提出了一种利用先验信息的基于点高斯近似滤波器的基因调控网络推理框架。采用了不同的基于点的高斯逼近滤波器,包括unscented卡尔曼滤波器(UKF)、三度cubature Kalman滤波器(CKF3)和五度cubature Kalman滤波器(CKF5)。考虑了现有网络结构信息、稀疏性假设和参数范围约束等几种网络先验信息,并开发了包含先验信息的相应滤波器。在8个基因的合成网络和5个基因的酵母蛋白合成网络上进行了实验,验证了该框架的性能。结果表明,该方法比现有的EKF和传统UKF方法提供了更准确的推理结果。
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