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多神经元记录的无监督波形分类:一种基于软件的实时系统。I. 算法与实现

Unsupervised waveform classification for multi-neuron recordings: a real-time, software-based system. I. Algorithms and implementation.

作者信息

Salganicoff M, Sarna M, Sax L, Gerstein G L

机构信息

Department of Physiology, University of Pennsylvania, Philadelphia 19104.

出版信息

J Neurosci Methods. 1988 Oct;25(3):181-7. doi: 10.1016/0165-0270(88)90132-x.

Abstract

We describe a new, mostly software-based device for the sorting of waveforms in an extracellular multi-neuron recording situation. The sorting algorithm is largely unattended, and, after an initial 'learning' process, works in real time. Shape comparisons are based on up to 8 time points in the waveform; these points (the reduced feature set) are chosen automatically by analyzing the current incoming data stream. A feasibility version has been implemented on a LSI-11/2 system, using FORTRAN for set-up calculations and assembler for the real-time operations. Detailed comparisons with performance of other sorting devices are presented in the companion paper.

摘要

我们描述了一种新型的、主要基于软件的设备,用于在细胞外多神经元记录情况下对波形进行分类。分类算法在很大程度上无需人工干预,并且在经过初始的“学习”过程后可实时运行。形状比较基于波形中的多达8个时间点;这些点(精简特征集)通过分析当前传入数据流自动选择。一个可行性版本已在LSI-11/2系统上实现,设置计算使用FORTRAN,实时操作使用汇编语言。配套论文中给出了与其他分类设备性能的详细比较。

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