Rutishauser Ueli, Schuman Erin M, Mamelak Adam N
Computation and Neural Systems, California Institute of Technology, Pasadena, 91125, USA.
J Neurosci Methods. 2006 Jun 30;154(1-2):204-24. doi: 10.1016/j.jneumeth.2005.12.033. Epub 2006 Feb 20.
Understanding the function of complex cortical circuits requires the simultaneous recording of action potentials from many neurons in awake and behaving animals. Practically, this can be achieved by extracellularly recording from multiple brain sites using single wire electrodes. However, in densely packed neural structures such as the human hippocampus, a single electrode can record the activity of multiple neurons. Thus, analytic techniques that differentiate action potentials of different neurons are required. Offline spike sorting approaches are currently used to detect and sort action potentials after finishing the experiment. Because the opportunities to record from the human brain are relatively rare, it is desirable to analyze large numbers of simultaneous recordings quickly using online sorting and detection algorithms. In this way, the experiment can be optimized for the particular response properties of the recorded neurons. Here we present and evaluate a method that is capable of detecting and sorting extracellular single-wire recordings in realtime. We demonstrate the utility of the method by applying it to an extensive data set we acquired from chronically implanted depth electrodes in the hippocampus of human epilepsy patients. This dataset is particularly challenging because it was recorded in a noisy clinical environment. This method will allow the development of "closed-loop" experiments, which immediately adapt the experimental stimuli and/or tasks to the neural response observed.
要理解复杂皮质回路的功能,需要在清醒且行为活动的动物身上同时记录多个神经元的动作电位。实际上,这可以通过使用单丝电极从多个脑区进行细胞外记录来实现。然而,在诸如人类海马体这样神经结构密集的区域,单个电极可能会记录到多个神经元的活动。因此,需要能够区分不同神经元动作电位的分析技术。目前,离线尖峰分类方法用于在实验结束后检测和分类动作电位。由于从人类大脑进行记录的机会相对较少,所以希望使用在线分类和检测算法快速分析大量同步记录的数据。通过这种方式,实验可以针对所记录神经元的特定反应特性进行优化。在此,我们展示并评估一种能够实时检测和分类细胞外单丝记录的方法。我们将该方法应用于从人类癫痫患者海马体中长期植入的深度电极获取的大量数据集,以此证明该方法的实用性。这个数据集特别具有挑战性,因为它是在嘈杂的临床环境中记录的。这种方法将有助于开展“闭环”实验,即根据观察到的神经反应立即调整实验刺激和/或任务。