用于EGFR信号通路识别的循环高阶神经网络

M. Christodoulou, D. Zarkogianni
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引用次数: 1

摘要

目前的工作涉及一个特定的信号通路称为EGFR通路(表皮生长因子受体),它是由23个蛋白质和它们的相互作用。它是细胞的重要组成部分,因为它影响细胞的新陈代谢、生长和二聚体的形成。该路径可以通过自治ODE建模。目的是建立一个计算模型来预测EGFR通路中每种蛋白质的动态行为。所使用的数学工具是所谓的循环高阶神经网络(RHONN)。RHONN是一种递归神经网络,其动态成分以动态神经元的形式分布在整个神经网络中。它适用于动力系统的辨识。RHONN模型由23个神经元组成,并通过包含各种初始条件和每种蛋白质的动态输出的集合进行训练。我们使用了三种不同的学习算法,得出了三种不同的RHONN模型。当训练停止时,计算并冻结适当的权重,从而产生可靠的模型来识别EGFR通路
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrent High Order Neural Networks for Identification of the EGFR Signaling Pathway
The present work deals with a specific signaling pathway called EGFR pathway (epidermal growth factor receptor) which is composed of twenty three proteins and their interactions. It is an essential part of the cell since it affects metabolism, growth and dimerization. The pathway can be modelled by an autonomous ODE. The aim is the construction of a computational model which predicts the dynamic behavior of each protein in the EGFR pathway. The mathematical tool used, is the so called recurrent high order neural network (RHONN). RHONN is a recurrent neural network with dynamical components distributed throughout its body in the form of dynamical neurons. It is applicable for the identification of dynamical systems. The RHONN model consists of twenty three neurons and it is trained by a set containing various initial conditions and the dynamical output of each protein. We use three different learning algorithms concluding to three different RHONN models. When the training stops the appropriate weights are calculated and frozen so as to produce reliable models to identify the EGFR pathway
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