基于人工蜂群优化算法的基因调控网络知识提取递归模糊神经模型

P. Das, P. Rakshit, A. Konar, R. Janarthanan
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引用次数: 2

摘要

从基因调控网络中产生推断对于理解涉及基因功能及其关系的基本细胞过程是重要的。时间序列基因表达数据的可用性使得研究整个基因组的基因活性成为可能。在这个框架下,基因相互作用是通过连接权矩阵来解释的。基于测量时间点有限的事实和遗传网络通常是稀疏连接的假设,我们提出了一种基于abc的搜索算法,以揭示潜在的适合时间序列数据的遗传网络结构,并探索可能的基因相互作用。设计一个成本函数,使其最小化就能得到问题的解。计算机仿真表明,该算法能够准确地预测所有现有权重的符号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A recurrent fuzzy neural model of a gene regulatory network for knowledge extraction using Artificial Bee Colony optimization algorithm
Generating inferences from a gene regulatory network is important to understand the fundamental cellular processes, involving gene functions, and their relations. The availability of time-series gene expression data makes it possible to investigate the gene activities of the whole genomes. Under this framework, gene interaction is explained through a connection weight matrix. Based on the fact that the measured time points are limited and the assumption that the genetic networks are usually sparsely connected, we present an ABC-based search algorithm to unveil potential genetic network constructions that fit well with the time-series data and explore possible gene interactions. A cost function is designed, the minimization of which yields the solution to the problem. Computer simulation of the proposed algorithm reveals that it is able to predict the signs of all the existing weights accurately.
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