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Multichannel Electrophysiological Spike Sorting via Joint Dictionary Learning & Mixture Modeling

Multichannel Electrophysiological Spike Sorting via Joint Dictionary Learning & Mixture Modeling

来源:Arxiv_logoArxiv
英文摘要

We propose a construction for joint feature learning and clustering of multichannel extracellular electrophysiological data across multiple recording periods for action potential detection and discrimination ("spike sorting"). Our construction improves over the previous state-of-the art principally in four ways. First, via sharing information across channels, we can better distinguish between single-unit spikes and artifacts. Second, our proposed "focused mixture model" (FMM) elegantly deals with units appearing, disappearing, or reappearing over multiple recording days, an important consideration for any chronic experiment. Third, by jointly learning features and clusters, we improve performance over previous attempts that proceeded via a two-stage ("frequentist") learning process. Fourth, by directly modeling spike rate, we improve detection of sparsely spiking neurons. Moreover, our Bayesian construction seamlessly handles missing data. We present state-of-the-art performance without requiring manually tuning of many hyper-parameters on both a public dataset with partial ground truth and a new experimental dataset.

David B. Dunson、Wenzhao Lian、Colin R. Stoetzner、Mingyuan Zhou、Joshua T. Vogelstein、Qisong Wu、Daryl Kipke、Lawrence Carin、Douglas Weber、David E. Carlson

生物科学现状、生物科学发展电子技术应用

David B. Dunson,Wenzhao Lian,Colin R. Stoetzner,Mingyuan Zhou,Joshua T. Vogelstein,Qisong Wu,Daryl Kipke,Lawrence Carin,Douglas Weber,David E. Carlson.Multichannel Electrophysiological Spike Sorting via Joint Dictionary Learning & Mixture Modeling[EB/OL].(2013-04-02)[2025-05-28].https://arxiv.org/abs/1304.0542.点此复制

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