Chiu Alan W L, Daniel Sarit, Khosravani Houman, Carlen Peter L, Bardakjian Berj L
Institute of Biomaterials and Biomedical Engineering, Edward S. Rogers Sr. Department of Electrical and Computer Engineering, University of Calgary, Calgary, Canada.
Ann Biomed Eng. 2005 Jun;33(6):798-810. doi: 10.1007/s10439-005-2346-1.
We propose that artificial neural networks (ANNs) can be used to predict seizure onsets in an in-vitro hippocampal slice model capable of generating spontaneous seizure-like events (SLEs) in their extracellular field recordings. This paper assesses the effectiveness of two ANN prediction schemes: Gaussian-based artificial neural network (GANN) and wavelet-based artificial neural network (WANN). The GANN prediction system consists of a recurrent network having Gaussian radial basis function (RBF) nonlinearities capable of extracting the estimated manifold of the system. It is able to classify the underlying dynamics of spontaneous in-vitro activities into interictal, preictal and ictal modes. It is also able to successfully predict the onsets of SLEs as early as 60 s before. Improvements can be made to the overall seizure predictor design by incorporating time-varying frequency information. Consequently, the idea of WANN is considered. The WANN design entails the assumption that frequency variations in the extracellular field recordings can be used to compute the times at which onsets of SLEs are most likely to occur in the future. Progressions of different frequency components can be captured by the ANN using appropriate frequency band adjustments via pruning, after the initial wavelet transforms. In the off-line processing comprised of 102 spontaneous SLEs generated from 14 in-vitro rat hippocampal slices, with half of them used for training and the other half for testing, the WANN is able to predict the forecoming ictal onsets as early as 2 min prior to SLEs with over 75% accuracy within a 30 s precision window.
我们提出,人工神经网络(ANNs)可用于预测体外海马切片模型中的癫痫发作起始,该模型能够在其细胞外场记录中产生自发性癫痫样事件(SLEs)。本文评估了两种人工神经网络预测方案的有效性:基于高斯的人工神经网络(GANN)和基于小波的人工神经网络(WANN)。GANN预测系统由一个具有高斯径向基函数(RBF)非线性的递归网络组成,该网络能够提取系统的估计流形。它能够将自发性体外活动的潜在动力学分类为发作间期、发作前期和发作期模式。它还能够早在60秒之前成功预测SLEs的起始。通过纳入时变频率信息,可以对整体癫痫发作预测器设计进行改进。因此,考虑了WANN的想法。WANN设计需要假设细胞外场记录中的频率变化可用于计算未来最有可能发生SLEs起始的时间。在初始小波变换之后,通过修剪进行适当的频带调整,人工神经网络可以捕获不同频率成分的变化。在由14个体外大鼠海马切片产生的102个自发性SLEs组成的离线处理中,其中一半用于训练,另一半用于测试,WANN能够在30秒的精确窗口内,早在SLEs前2分钟预测即将到来的发作起始,准确率超过75%。