基于前馈神经网络的线性动态基因调控网络构建

Longlong Liu, Maojuan Liu, M. Ma
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引用次数: 2

摘要

分析基因网络结构的目的是在分子水平上识别和了解生物体内一些未知的相关功能和调控机制。传统的基因调控网络模型由于具有较高的时间和空间复杂性,往往缺乏有效的求解基因表达谱数据的方法。本文提出了一种基于线性前馈神经网络的基因调控网络模型。该模型结合了线性神经网络的收敛速度快、不存在局部极小值、精度高、易于操作等优点。它将线性神经网络映射为复杂网络。通过网络参数的统计和比较,可以识别出与样本背景相关的差异表达基因。后半部分的数值实验验证了模型的有效性。
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Construction of linear dynamic gene regulatory network based on feedforward neural network
The purpose of analyzing gene network structure is to identify and understand some unknown related functions and the regulatory mechanisms at molecular level in organisms. Traditional model of the gene regulatory networks often lack an effective method of solving with gene expression profiling data because of high time and space complexity. In this study, a new model of gene regulatory network based on linear feedforward neural network is proposed. The new model combines the advantages of linear neural network including fast convergence, no existence of local minimum value, high precision and easy operation. It maps the linear neural network into complex network. Through statistics and comparison of network parameters, the differentially expressed genes related to the sample background can be identified. The numerical experiment in the latter part of the study verified the validity of the model.
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