绕过尖峰排序:基于密度的解码使用密集多电极探针的尖峰定位。

Yizi Zhang, Tianxiao He, Julien Boussard, Charlie Windolf, Olivier Winter, Eric Trautmann, Noam Roth, Hailey Barrell, Mark Churchland, Nicholas A Steinmetz, Erdem Varol, Cole Hurwitz, Liam Paninski
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引用次数: 0

摘要

神经解码及其在脑机接口(BCI)中的应用对于理解神经活动与行为之间的关系至关重要。许多解码方法的先决条件是尖峰排序,即将动作电位(尖峰)分配给单个神经元。然而,当前的尖峰排序算法可能是不准确的,并且不能正确地模拟尖峰分配的不确定性,因此丢弃了可能提高解码性能的信息。高密度探针(例如Neuropixels)和计算方法的最新进展现在允许从未排序的数据中提取丰富的尖峰特征集;这些特征反过来可以用来直接解码行为关联。为此,我们提出了一种无尖峰排序的解码方法,该方法使用混合高斯(MoG)编码尖峰分配的不确定性,直接建模提取的尖峰特征的分布,而不旨在明确解决尖峰聚类问题。我们允许MoG的混合比例随时间变化以响应行为,并开发变分推理方法来拟合所得模型并执行解码。我们用来自不同动物和探针几何形状的大量记录对我们的方法进行了基准测试,证明我们提出的解码器可以始终优于基于阈值(即多单元活动)和尖峰排序的当前方法。开源代码可从https://github.com/yzhang511/density_decoding获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bypassing spike sorting: Density-based decoding using spike localization from dense multielectrode probes.

Neural decoding and its applications to brain computer interfaces (BCI) are essential for understanding the association between neural activity and behavior. A prerequisite for many decoding approaches is spike sorting, the assignment of action potentials (spikes) to individual neurons. Current spike sorting algorithms, however, can be inaccurate and do not properly model uncertainty of spike assignments, therefore discarding information that could potentially improve decoding performance. Recent advances in high-density probes (e.g., Neuropixels) and computational methods now allow for extracting a rich set of spike features from unsorted data; these features can in turn be used to directly decode behavioral correlates. To this end, we propose a spike sorting-free decoding method that directly models the distribution of extracted spike features using a mixture of Gaussians (MoG) encoding the uncertainty of spike assignments, without aiming to solve the spike clustering problem explicitly. We allow the mixing proportion of the MoG to change over time in response to the behavior and develop variational inference methods to fit the resulting model and to perform decoding. We benchmark our method with an extensive suite of recordings from different animals and probe geometries, demonstrating that our proposed decoder can consistently outperform current methods based on thresholding (i.e. multi-unit activity) and spike sorting. Open source code is available at https://github.com/yzhang511/density_decoding.

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