De Preter Caitlynn C, Leimer Elizabeth M, Sonneborn Alex, Heinricher Mary M
Department of Behavioral Neuroscience, Oregon Health & Science University, Portland, OR, 97239, USA.
Department of Neurological Surgery, Oregon Health & Science University, Portland, OR, 97239, USA.
bioRxiv. 2024 Nov 14:2024.11.11.623089. doi: 10.1101/2024.11.11.623089.
Recent technological advancements in high-density multi-channel electrodes have made it possible to record large numbers of neurons from previously inaccessible regions. While the performance of automated spike-sorters has been assessed in recordings from cortex, dentate gyrus, and thalamus, the most effective and efficient approach for spike-sorting can depend on the target region due to differing morphological and physiological characteristics. We therefore assessed the performance of five commonly used sorting packages, Kilosort3, MountainSort5, Tridesclous, SpyKING CIRCUS, and IronClust, in recordings from the rostral ventromedial medulla, a region that has been characterized using single-electrode recordings but that is essentially unexplored at the high-density network level. As demonstrated in other brain regions, each sorter produced unique results. Manual curation preferentially eliminated units detected by only one sorter. Kilosort3 and IronClust required the least curation while maintaining the largest number of units, whereas SpyKING CIRCUS and MountainSort5 required substantial curation. Tridesclous consistently identified the smallest number of units. Nonetheless, all sorters successfully identified classically defined RVM physiological cell types. These findings suggest that while the level of manual curation needed may vary across sorters, each can extract meaningful data from this deep brainstem site.
高密度多通道电极的最新技术进展使得从以前难以到达的区域记录大量神经元成为可能。虽然自动尖峰分类器的性能已在来自皮质、齿状回和丘脑的记录中得到评估,但由于形态和生理特征不同,最有效和高效的尖峰分类方法可能取决于目标区域。因此,我们评估了五种常用的分类软件包,即Kilosort3、MountainSort5、Tridesclous、SpyKING CIRCUS和IronClust,在延髓头端腹内侧的记录中的性能,该区域已通过单电极记录进行了表征,但在高密度网络水平上基本上未被探索。正如在其他脑区所证明的那样,每个分类器都产生了独特的结果。人工筛选优先消除仅由一个分类器检测到的单元。Kilosort3和IronClust在保持最多单元数量的同时,所需的筛选最少,而SpyKING CIRCUS和MountainSort5则需要大量筛选。Tridesclous始终识别出最少数量的单元。尽管如此,所有分类器都成功识别出了经典定义的延髓头端腹内侧生理细胞类型。这些发现表明,虽然不同分类器所需的人工筛选水平可能不同,但每个分类器都可以从这个深部脑干部位提取有意义的数据。