Chiu Alan W L, Kang Eunji E, Derchansky Miron, Carlen Peter L, Bardakjian Berj L
Institute of Biomaterials and Biomedical Engineering, University of Toronto, Ontario, Canada.
Ann Biomed Eng. 2006 Feb;34(2):282-94. doi: 10.1007/s10439-005-9029-9. Epub 2006 Feb 1.
It has been previously shown that wavelet artificial neural networks (WANNs) are able to classify the different states of epileptiform activity and predict the onsets of seizure-like events (SLEs) by offline processing (Ann. Biomed. Eng. 33(6):798-810, 2005) of the electrical data from the in-vitro hippocampal slice model of recurrent spontaneous SLEs. The WANN design entailed the assumption that time-varying frequency information from the biological recordings can be used to estimate the times at which onsets of SLEs would most likely occur in the future. Progressions of different frequency components were captured by the artificial neural network (ANN) using selective frequency inputs from the initial wavelet transform of the biological data. The training of the WANN had been established using 184 SLE episodes in 34 slices from 21 rats offline. Nine of these rats also exhibited periods of interictal bursts (IBs). These IBs were included as part of the training to help distinguish the difference in dynamics of bursting activities between the preictal- and interictal type. In this paper, we present the results of an online processing using WANN on 23 in-vitro rat hippocampal slices from 9 rats having 93 spontaneous SLE episodes generated under low magnesium conditions. Over the test cases, three of the nine rats exhibited over 30 min of IB activities. We demonstrated that the WANN was able to classify the different states, namely, interictal, preictal, ictal, and IB activities with an accuracy of 86.6, 72.6, 84.5, and 69.1%, respectively. Prediction of state transitions into ictal events was achieved using regression of initial "normalized time-to-onset" estimates. The SLE onsets can be estimated up to 36.4 s ahead of their actual occurrences, with a mean error of 14.3 +/- 27.0 s. The prediction errors decreased progressively as the actual time-to-onset decreased and more initial "normalized time-to-onset" estimates were used for the regression procedure.
先前的研究表明,小波人工神经网络(WANNs)能够通过对来自复发性自发性癫痫样事件(SLEs)的体外海马切片模型的电数据进行离线处理(《生物医学工程年鉴》33(6):798 - 810, 2005),对癫痫样活动的不同状态进行分类,并预测癫痫样事件的发作。WANN的设计基于这样一种假设,即生物记录中的时变频率信息可用于估计未来最有可能发生SLE发作的时间。人工神经网络(ANN)通过使用生物数据初始小波变换的选择性频率输入来捕捉不同频率成分的变化。WANN的训练是在离线状态下,使用来自21只大鼠的34个切片中的184个SLE发作片段完成的。其中9只大鼠还表现出发作间期爆发(IBs)。这些IBs被纳入训练,以帮助区分发作前期和发作间期爆发活动动态的差异。在本文中,我们展示了使用WANN对来自9只大鼠的23个体外大鼠海马切片进行在线处理的结果,这些切片在低镁条件下产生了93次自发性SLE发作。在测试案例中,9只大鼠中有3只表现出超过30分钟的IB活动。我们证明,WANN能够分别以86.6%、72.6%、84.5%和69.1%的准确率对不同状态进行分类,即发作间期、发作前期、发作期和IB活动。通过对初始“归一化发作时间”估计值进行回归,实现了向发作期事件的状态转换预测。SLE发作可在实际发作前36.4秒进行估计,平均误差为14.3 +/- 27.0秒。随着实际发作时间的减少以及回归过程中使用更多的初始“归一化发作时间”估计值,预测误差逐渐减小。