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Real-time seizure detection system using multiple single-neuron recordings

机译:使用多个单神经元记录的实时癫痫发作检测系统

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Approximately 20% of people diagnosed with epilepsy cannot be treated effectively. Consequently, there exists a significant need for alternative types of treatment. To aid in the effort of solving this problem, we developed a prototype system to detect changes in neural activity prior to the onset of a seizure. This system can be used as warning device or as part of a large system to terminate seizures in their initial stages via drug administration or nerve stimulation. The detection algorithm used data collected from intracranial electrodes. The waveforms were filtered and amplified to identify single neuron action potentials. The time of occurrence of each action potential for each neuron was then passed to a preprocessor algorithm that summed the data into 50 ms time bins. Sliding windows consisting of 128 bins for each neuron were cross-correlated. The results were summed and the variance of the cross-correlation was used as a measure of global neuron correlation. The algorithm was implemented in a PC board and tested in rats treated with pentylenetetrazol (PTZ) a known seizure inducing drug. The system was 100% effective at detecting seizures approximately 4.6 seconds before seizure onset and had a false positive rate of 0.3%.
机译:被诊断患有癫痫病的人中约有20%无法得到有效治疗。因此,非常需要替代类型的治疗。为了帮助解决这个问题,我们开发了一个原型系统来检测癫痫发作之前神经活动的变化。该系统可以用作警告设备,也可以用作大型系统的一部分,以通过药物管理或神经刺激来终止癫痫发作的初始阶段。该检测算法使用了从颅内电极收集的数据。波形被过滤和放大以识别单个神经元动作电位。然后,将每个神经元的每个动作电位的发生时间传递给预处理器算法,该算法将数据求和成50毫秒的时间段。每个神经元由128个bin组成的滑动窗口是互相关的。将结果相加,并将互相关的方差用作整体神经元相关性的量度。该算法在PC板上实现,并在用戊四氮(PTZ)(一种已知的诱发癫痫发作的药物)治疗的大鼠中进行了测试。该系统在癫痫发作开始前约4.6秒时能有效检测出癫痫发作,且假阳性率为0.3%。

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