Hulata Eyal, Segev Ronen, Ben-Jacob Eshel
Raymond & Beverly Sackler Faculty of Exact Sciences, School of Physics and Astronomy, Tel-Aviv University, Tel-Aviv 69978, Israel.
J Neurosci Methods. 2002 May 30;117(1):1-12. doi: 10.1016/s0165-0270(02)00032-8.
Studying the dynamics of neural activity via electrical recording, relies on the ability to detect and sort neural spikes recorded from a number of neurons by the same electrode. We suggest the wavelet packets decomposition (WPD) as a tool to analyze neural spikes and extract their main features. The unique quality of the wavelet packets-adaptive coverage of both time and frequency domains using a set of localized packets, facilitate the task. The best basis algorithm utilizing the Shannon's information cost function and local discriminant basis (LDB) using mutual information are employed to select a few packets that are sufficient for both detection and sorting of spikes. The efficiency of the method is demonstrated on data recorded from in vitro 2D neural networks, placed on electrodes that read data from as many as five neurons. Comparison between our method and the widely used principal components method and a sorting technique based on the ordinary wavelet transform (WT) shows that our method is more efficient both in separating spikes from noise and in resolving overlapping spikes.
通过电记录研究神经活动的动态变化,依赖于检测和分类由同一电极从多个神经元记录到的神经尖峰的能力。我们建议将小波包分解(WPD)作为一种分析神经尖峰并提取其主要特征的工具。小波包的独特特性——使用一组局部化包对时域和频域进行自适应覆盖,有助于完成这项任务。利用香农信息成本函数的最佳基算法和使用互信息的局部判别基(LDB)被用于选择一些足以用于尖峰检测和分类的包。该方法的有效性在从体外二维神经网络记录的数据上得到了证明,这些网络放置在能读取多达五个神经元数据的电极上。我们的方法与广泛使用的主成分方法以及基于普通小波变换(WT)的分类技术之间的比较表明,我们的方法在将尖峰与噪声分离以及解决重叠尖峰方面都更有效。