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Evolving Spike Neural Network Sensors to Characterize the Alcoholic Brain Using Visually Evoked Response Potential

机译:不断发展的穗神经网络传感器使用视觉诱发的反应电位来表征酒精性大脑

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The electrical activity of the brain in response to a visual stimulus can be recorded using EEG. These signals are complex spatially-distributed time series. Here we investigate if it is possible to find hidden temporal patterns in these evoked electrical signals that could characterize the alcoholic brain. We have developed a technology for evolving spike neural network (SNN) sensors for detecting such hidden patterns in time-varying signals. The evolutionary computation involves a novel chromosome structure and a hybrid crossover operator for it. We have also developed a design rule for SNN-based temporal pattern detectors (TPD) that can detect a predefined inter-spike interval pattern in an incoming spike train. The design rule eliminates the need to tune the network parameters leaving only the design specifications to be learned. The primary goal of the evolutionary process is to select a set of EEG leads along with weights and to evolve the design specifications for the TPDs. After converting the composite EEG signal to a spike train, the TPDs are evaluated based on their ability to distinguish the alcoholic and the control cases. The early results suggest that this approach may be reliably used for characterizing the alcoholic brain.
机译:可以使用EEG记录大脑对视觉刺激的电活动。这些信号是复杂的空间分布时间序列。在这里,我们调查是否有可能在这些诱发的电信号中找到可能表征酒精性大脑的隐藏时间模式。我们已经开发出一种用于演化的尖峰神经网络(SNN)传感器的技术,该技术可以检测时变信号中的这种隐藏模式。进化计算涉及一种新颖的染色体结构及其混合杂交算子。我们还为基于SNN的时间模式检测器(TPD)开发了一种设计规则,该规则可以检测传入的尖峰序列中的预定义尖峰间隔模式。设计规则消除了对网络参数进行调整的需要,仅需学习设计规范。进化过程的主要目标是选择一组脑电图线索和权重,并发展TPD的设计规范。将复合EEG信号转换为尖峰信号后,根据TPD区分酒精和控制案例的能力进行评估。早期结果表明,该方法可以可靠地用于表征酒精性大脑。

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