The inference of predictor set in gene regulatory networks using gravitational search algorithm

M. Jafari, V. S. Naeini, B. Ghavami
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引用次数: 2

Abstract

The inference of Gene Regulatory Network (GRN) using the gene expression data is a growing field in bioinformatics and biological systems. As a matter of fact, the inference of GRN is crucial in order to predict the biological processes. In addition, it would be beneficial to determine the behavior of the processes in order to avoid the occurrence of some unplanned processes (disease). Inferring truly GRN requires the accurate inference of the predictor set. The process of predictor set inference consists of realizing the dependency of target genes and their potential predictors. Generally, the main limitations of an accurate inference of predictor set are the large number of genes, the low number of samples and the presence of noise in the gene expression data. This paper presents an accurate framework using Gravitational Search Algorithm (GSA) to infer predictor subset of each target gene in a GRN. In this work, one heuristic algorithm is utilized for each target gene independently. In each population, a mass presents the predictor subset related to the target gene. To generate the initial population per each target gene, instead of choosing predictors randomly, they are chosen using the Pearson correlation coefficient. The Mean Conditional Entropy (MCE) is used to guide GSA (as fitness function). Experimental results on biological data and comparative analysis including a recently method based on Genetic Algorithm (GA) for the same purpose, reveal that the proposed framework achieves superior accuracy.
基于引力搜索算法的基因调控网络预测集推断
利用基因表达数据推断基因调控网络(GRN)是生物信息学和生物系统研究的一个新兴领域。事实上,GRN的推断对于预测生物过程至关重要。此外,确定过程的行为是有益的,以避免一些计划外过程(疾病)的发生。推断真正的GRN需要预测器集的准确推断。预测集推断的过程包括实现目标基因及其潜在预测因子的依赖性。一般来说,准确推断预测集的主要限制是基因数量多、样本数量少以及基因表达数据中存在噪声。本文提出了一种利用引力搜索算法(GSA)来推断GRN中每个目标基因的预测子集的精确框架。在这项工作中,每个目标基因单独使用一个启发式算法。在每个群体中,一个质量表示与目标基因相关的预测子子集。为了生成每个目标基因的初始种群,不是随机选择预测因子,而是使用Pearson相关系数选择预测因子。使用平均条件熵(MCE)来指导GSA(作为适应度函数)。基于生物数据的实验结果和基于遗传算法(GA)的对比分析表明,该框架具有较高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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