Gupta L, Molfese D L, Tammana R
Department of Electrical Engineering, Southern Illinois University at Carbondale, USA.
Brain Cogn. 1995 Apr;27(3):311-30. doi: 10.1006/brcg.1995.1025.
Artificial neural network-based approaches were developed to classify event-related potential (ERP) waveforms. The networks utilized scalp-recorded ERP returns from six electrode sites. These ERPs were evoked as one individual responded to a series of auditorily presented object names while viewing various objects on a computer screen. The ERPs at the electrode sites were classified as a match decision or a no-match decision. A three-layer backpropagation neural network model was selected to formulate a global and a local classification approach. The backpropagation network in the global approach was designed to operate on a single ERP response which was the average of the ERP responses generated at the six electrode sites. The local ERP classification system consisted of six three-layer backpropagation networks. Each network was designed to operate on the ERPs generated at a single electrode site. A small data base consisting of eight match and eight no-match ERP responses was used to train and test the networks in a variety of ways. The results obtained clearly show that the neural network-based classifiers are able to discriminate with a high degree of accuracy between match and no-match conditions in ERP waveforms.
基于人工神经网络的方法被开发用于对事件相关电位(ERP)波形进行分类。这些网络利用从六个电极位点记录的头皮ERP信号。当一个人在电脑屏幕上观看各种物体时,对一系列听觉呈现的物体名称做出反应,从而诱发这些ERP信号。电极位点处的ERP信号被分类为匹配决策或不匹配决策。选择了一个三层反向传播神经网络模型来制定全局和局部分类方法。全局方法中的反向传播网络被设计为对单个ERP响应进行操作,该响应是六个电极位点产生的ERP响应的平均值。局部ERP分类系统由六个三层反向传播网络组成。每个网络被设计为对单个电极位点产生的ERP信号进行操作。一个由八个匹配和八个不匹配ERP响应组成的小数据库被用于以各种方式训练和测试这些网络。获得的结果清楚地表明,基于神经网络的分类器能够在ERP波形的匹配和不匹配条件之间以高度的准确性进行区分。