Learning gene regulatory networks using gaussian process emulator and graphical LASSO

被引:2
|
作者
Chatrabgoun, H. [1 ]
Soltanian, A. R. [1 ]
Mahjub, H. [1 ]
Bahreini, F. [2 ]
机构
[1] Hamadan Univ Med Sci, Sch Publ Hlth, Dept Biostat, Hamadan, Hamadan, Iran
[2] Hamadan Univ Med Sci, Fac Med, Dept Mol Med & Genet, Hamadan, Hamadan, Iran
关键词
Gene expression data; Gaussian process; GLASSO; hyperparameter estimation; precision matrix; PRECISION MATRIX ESTIMATION; EXPRESSION; MODEL; SELECTION;
D O I
10.1142/S0219720021500074
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Large amounts of research efforts have been focused on learning gene regulatory networks (GRNs) based on gene expression data to understand the functional basis of a living organism. Under the assumption that the joint distribution of the gene expressions of interest is a multivariate normal distribution, such networks can be constructed by assessing the nonzero elements of the inverse covariance matrix, the so-called precision matrix or concentration matrix. This may not reflect the true connectivity between genes by considering just pairwise linear correlations. To relax this limitative constraint, we employ Gaussian process (GP) model which is well known as computationally efficient non-parametric Bayesian machine learning technique. GPs are among a class of methods known as kernel machines which can be used to approximate complex problems by tuning their hyperparameters. In fact, GP creates the ability to use the capacity and potential of different kernels in constructing precision matrix and GRNs. In this paper, in the first step, we choose the GP with appropriate kernel to learn the considered GRNs from the observed genetic data, and then we estimate kernel hyperparameters using rule-of-thumb technique. Using these hyperparameters, we can also control the degree of sparseness in the precision matrix. Then we obtain kernel-based precision matrix similar to GLASSO to construct kernel-based GRN. The findings of our research are used to construct GRNs with high performance, for different species of Drosophila fly rather than simply using the assumption of multivariate normal distribution, and the GPs, despite the use of the kernels capacity, have a much better performance than the multivariate Gaussian distribution assumption.
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页数:17
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