Multi-day Neuron Tracking in High Density Electrophysiology Recordings using EMD.

IF 2.8 2区 经济学 Q2 ENVIRONMENTAL STUDIES
Augustine Xiaoran Yuan, Jennifer Colonell, Anna Lebedeva, Michael Okun, Adam S Charles, Timothy D Harris
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引用次数: 0

Abstract

Accurate tracking of the same neurons across multiple days is crucial for studying changes in neuronal activity during learning and adaptation. Advances in high density extracellular electrophysiology recording probes, such as Neuropixels, provide a promising avenue to accomplish this goal. Identifying the same neurons in multiple recordings is, however, complicated by non-rigid movement of the tissue relative to the recording sites (drift) and loss of signal from some neurons. Here we propose a neuron tracking method that can identify the same cells independent of firing statistics, that are used by most existing methods. Our method is based on between-day non-rigid alignment of spike sorted clusters. We verified the same cell identity in mice using measured visual receptive fields. This method succeeds on datasets separated from one to 47 days, with an 84% average recovery rate.

利用 EMD 对高密度电生理学记录中的神经元进行多日追踪。
在学习和适应过程中,对同一神经元进行多天精确跟踪对于研究神经元活动的变化至关重要。高密度细胞外电生理学记录探针(如 Neuropixels)的新进展为实现这一目标提供了很好的途径。然而,由于组织相对于记录点的非刚性运动(漂移)以及某些神经元信号的丢失,在多次记录中识别相同神经元变得复杂。在这里,我们提出了一种神经元追踪方法,它可以识别相同的细胞,而不受大多数现有方法所使用的发射统计量的影响。我们的方法基于尖峰分类群的日间非刚性排列。我们使用测量的视觉感受野验证了同一细胞的识别。这种方法在间隔 1 到 47 天的数据集上取得了成功,平均恢复率为 84%。
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来源期刊
CiteScore
6.10
自引率
3.20%
发文量
27
期刊介绍: European Urban and Regional Studies is a highly ranked, peer reviewed international journal. It provides an original contribution to academic and policy debate related to processes of urban and regional development in Europe. It offers a truly European coverage from the Atlantic to the Urals,and from the Arctic Circle to the Mediterranean. Its aims are to explore the ways in which space makes a difference to the social, economic, political and cultural map of Europe; highlight the connections between theoretical analysis and policy development; and place changes in global context.
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