Shoham Shy, Fellows Matthew R, Normann Richard A
Department of Bioengineering, University of Utah, Salt Lake City, UT 84112, USA.
J Neurosci Methods. 2003 Aug 15;127(2):111-22. doi: 10.1016/s0165-0270(03)00120-1.
A number of recent methods developed for automatic classification of multiunit neural activity rely on a Gaussian model of the variability of individual waveforms and the statistical methods of Gaussian mixture decomposition. Recent evidence has shown that the Gaussian model does not accurately capture the multivariate statistics of the waveform samples' distribution. We present further data demonstrating non-Gaussian statistics, and show that the multivariate t-distribution, a wide-tailed family of distributions, provides a significantly better fit to the true statistics. We introduce an adaptation of a new expectation-maximization based competitive mixture decomposition algorithm and show that it efficiently and reliably performs mixture decomposition of t-distributions. Our algorithm determines the number of units in multiunit neural recordings, even in the presence of significant noise contamination resulting from random threshold crossings and overlapping spikes.
最近开发的一些用于多单元神经活动自动分类的方法依赖于单个波形变异性的高斯模型和高斯混合分解的统计方法。最近的证据表明,高斯模型不能准确捕捉波形样本分布的多元统计特征。我们提供了进一步的数据来证明非高斯统计,并表明多元t分布(一种具有宽尾的分布族)能更好地拟合真实统计特征。我们引入了一种基于期望最大化的新型竞争混合分解算法的改进版本,并表明它能高效且可靠地执行t分布的混合分解。我们的算法能确定多单元神经记录中的单元数量,即使存在由随机阈值穿越和重叠尖峰导致的显著噪声污染。