Department of Molecular and Cell Biology and Helen Wills Neuroscience Institute, University of California Berkeley, Berkeley, CA, 94720, USA.
Department of Organismic and Evolutionary Biology and Center for Brain Science, Harvard University, Cambridge, Massachusetts, USA.
Sci Rep. 2019 Aug 19;9(1):12087. doi: 10.1038/s41598-019-48456-y.
Spike sorting is the process of detecting and clustering action potential waveforms of putative single neurons from extracellular voltage recordings. Typically, spike detection uses a fixed voltage threshold and shadow period, but this approach often misses spikes during high firing rate epochs or noisy conditions. We developed a simple, data-driven spike detection method using a scaled form of template matching, based on the sliding cosine similarity between the extracellular voltage signal and mean spike waveforms of candidate single units. Performance was tested in whisker somatosensory cortex (S1) of anesthetized mice in vivo. The method consistently detected whisker-evoked spikes that were missed by the standard fixed threshold. Detection was improved most for spikes evoked by strong stimuli (40-70% increase), improved less for weaker stimuli, and unchanged for spontaneous spiking. This represents improved detection during spatiotemporally dense spiking, and yielded sharper sensory tuning estimates. We also benchmarked performance using computationally generated voltage data. Template matching detected ~85-90% of spikes compared to ~70% for the standard fixed threshold method, and was more tolerant to high firing rates and simulated recording noise. Thus, a simple template matching approach substantially improves detection of single-unit spiking for cortical physiology.
尖峰分类是指从细胞外电压记录中检测和聚类假定单个神经元的动作电位波形的过程。通常,尖峰检测使用固定的电压阈值和阴影期,但这种方法在高发射率时期或噪声条件下常常会错过尖峰。我们开发了一种简单的数据驱动的尖峰检测方法,该方法使用模板匹配的缩放形式,基于细胞外电压信号与候选单单位的平均尖峰波形之间的滑动余弦相似度。该方法在麻醉小鼠的触须体感皮层(S1)中进行了性能测试。该方法一致地检测到标准固定阈值错过的触须诱发尖峰。对于强刺激诱发的尖峰,检测效果改善最大(增加 40-70%),对于较弱的刺激则改善较小,自发尖峰则不变。这代表了在时空密集尖峰期间的检测改善,并产生了更尖锐的感觉调谐估计。我们还使用计算生成的电压数据来基准测试性能。与标准固定阈值方法相比,模板匹配检测到的尖峰约为 85-90%,而检测到的尖峰约为 70%,并且对高发射率和模拟记录噪声的容忍度更高。因此,简单的模板匹配方法大大提高了皮质生理学中单单位尖峰的检测。