Neural network modeling of memory gradient in Alzheimer's disease

J. Hamilton, E. Micheli-Tzanakou
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引用次数: 1

Abstract

Several studies have documented a temporal gradient in the memory of persons with Alzheimer's disease: patients are better able to recall more distant memories. The significance of this gradient is unclear: does the disease selectively interfere with the recall of recent memories, or does it prevent the memories from being adequately recorded? To address this question, neural networks were used to simulate learning over time. Once trained with a group of patterns, the networks were damaged to simulate the lesions associated with Alzheimer's disease. By altering the number of times a network was trained with a given pattern before additional patterns were added, and by varying the number of patterns in the training set, the direction of the temporal gradient was changed. The factors that determine the direction of the gradient are in place before the network is damaged. This suggests that the gradient associated with Alzheimer's disease is not a direct result of brain lesions that are hallmarks of the disease, but instead develops from an alteration of the learning process that begins long before dementia develops.
阿尔茨海默病记忆梯度的神经网络建模
几项研究已经证明了阿尔茨海默病患者的记忆存在时间梯度:患者能够更好地回忆更遥远的记忆。这种梯度的意义尚不清楚:这种疾病是有选择地干扰对最近记忆的回忆,还是它阻止了对记忆的充分记录?为了解决这个问题,神经网络被用来模拟随时间的学习。一旦用一组模式进行训练,这些网络就会被破坏,以模拟与阿尔茨海默病相关的病变。通过改变网络在添加额外模式之前使用给定模式训练的次数,以及通过改变训练集中模式的数量,可以改变时间梯度的方向。在电网被破坏之前,决定梯度方向的因素已经到位。这表明,与阿尔茨海默病相关的梯度并不是该疾病的标志——大脑损伤的直接结果,而是从早在痴呆症发生之前就开始的学习过程的改变中发展起来的。
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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