Petrantonakis Panagiotis C, Poirazi Panayiota
IEEE Trans Neural Syst Rehabil Eng. 2017 Apr;25(4):323-333. doi: 10.1109/TNSRE.2016.2640858. Epub 2016 Dec 15.
Monitoring the activity of multiple, individual neurons that fire spikes in the vicinity of an electrode, namely perform a Spike Sorting (SS) procedure, comprises one of the most important tools for contemporary neuroscience in order to reverse-engineer the brain. As recording electrodes' technology rabidly evolves by integrating thousands of electrodes in a confined spatial setting, the algorithms that are used to monitor individual neurons from recorded signals have to become even more reliable and computationally efficient. In this work, we propose a novel framework of the SS approach in which a single-step processing of the raw (unfiltered) extracellular signal is sufficient for both the detection and sorting of the activity of individual neurons. Despite its simplicity, the proposed approach exhibits comparable performance with state-of-the-art approaches, especially for spike detection in noisy signals, and paves the way for a new family of SS algorithms with the potential for multi-recording, fast, on-chip implementations.
监测在电极附近产生尖峰的多个单个神经元的活动,即执行尖峰分类(SS)程序,是当代神经科学用于逆向工程大脑的最重要工具之一。随着记录电极技术通过在有限的空间环境中集成数千个电极而迅速发展,用于从记录信号中监测单个神经元的算法必须变得更加可靠且计算效率更高。在这项工作中,我们提出了一种新颖的SS方法框架,其中对原始(未滤波)细胞外信号进行单步处理就足以检测和分类单个神经元的活动。尽管该方法很简单,但与现有技术方法相比,它具有相当的性能,特别是在噪声信号中的尖峰检测方面,为具有多记录、快速、片上实现潜力的新型SS算法家族铺平了道路。