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arxiv: 1412.6383 · v1 · pith:77SGLAX7new · submitted 2014-12-19 · 💻 cs.CE · q-bio.NC

SPySort: Neuronal Spike Sorting with Python

classification 💻 cs.CE q-bio.NC
keywords sortingactivitiesneuronspythonrecordingsspikeenoughextracellular
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Extracellular recordings with multi-electrode arrays is one of the basic tools of contemporary neuroscience. These recordings are mostly used to monitor the activities, understood as sequences of emitted action potentials, of many individual neurons. But the raw data produced by extracellular recordings are most commonly a mixture of activities from several neurons. In order to get the activities of the individual contributing neurons, a pre-processing step called spike sorting is required. We present here a pure Python implementation of a well tested spike sorting procedure. The latter was designed in a modular way in order to favour a smooth transition from an interactive sorting, for instance with IPython, to an automatic one. Surprisingly enough - or sadly enough, depending on one's view point -, recoding our now 15 years old procedure into Python was the occasion of major methodological improvements.

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  1. Large scale Lasso with windowed active set for convolutional spike sorting

    stat.ML 2019-06 unverdicted novelty 6.0

    A windowed active set algorithm solves large-scale Lasso for convolutional spike sorting with linear complexity in temporal dimension and parallel efficiency.