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Using a Hopfield Iterative Neural Network to Explain Diffusion in the Brain's Extracellular Space Structure

机译:使用Hopfield迭代神经网络解释大脑细胞外空间结构中的扩散

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Many therapies for drug delivery to the brain are based on diffusion, and diffusion in this extracellular space is based on micro-techniques that can be modelled with classical differential equations such as the point source diffusion equation. In this paper an energy function is constructed using a finite-difference approximation to the governing diffusion equation and then minimized by a Hopfield neural network. The synergy of Hopfield neural networks with finite difference approximation is promising. The neural network approach is capable of giving insight to the complex brain activity better than any other classical numerical method and the parallelism nature of the Hopfield neural networks approach is easier to implement on fast parallel computers and this will make them faster than the traditional methods for modelling this complex problem. Moreover, the effect of the involved parameters on the diffusion distribution and drug delivery in the ECS is investigated.
机译:对大脑的药物递送的许多疗法基于扩散,并且该细胞外空间的扩散基于可以用诸如点源扩散方程的经典微分方程进行建模的微技术。在本文中,使用与控制扩散方程的有限差异近似构造能量功能,然后通过Hopfield神经网络最小化。具有有限差分近似的Hopfield神经网络的协同作用是有前途的。神经网络方法能够更好地深入了解复杂的大脑活动,比任何其他经典数值方法更好,并且Hopfield神经网络方法的并行性质更容易在快速并行计算机上实现,这将使它们比传统方法更快建模这个复杂的问题。此外,研究了所涉及的参数对ECS中扩散分布和药物递送的影响。

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