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SpikeDeep-classifier: a deep-learning based fully automatic offline spike sorting algorithm.

Muhammad Saif-Ur-Rehman1,2,3, Omair Ali1, Susanne Dyck1

  • 1Department of Neurosurgery, University Hospital, Knapschaftskrankenhaus Bochum GmbH, Ruhr-University Bochum, Bochum, Germany.

Journal of Neural Engineering
|November 9, 2020
PubMed
Summary
This summary is machine-generated.

This study introduces SpikeDeep-Classifier, a fully automatic spike sorting algorithm that accurately isolates neural spike activity (SA) from background activity (BA) in electrophysiological recordings, offering a generalized solution for single-cell recordings.

Keywords:
automatic spike sortingdeep-learningsupervised learningtunable hyperparametersunsupervised learning

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Area of Science:

  • Neuroscience
  • Computational Neuroscience
  • Signal Processing

Background:

  • Advancements in micro-electrode arrays enable high-channel count recordings, capturing both neural spike activity (SA) and background activity (BA).
  • Current spike sorting algorithms often require extensive human intervention and lack generalization across different recording sessions or subjects.
  • Automating spike sorting is crucial for efficient analysis of large electrophysiological datasets.

Purpose of the Study:

  • To develop a fully automatic spike sorting algorithm, named SpikeDeep-Classifier, for accurate isolation of neural spike activity.
  • To address the limitations of existing methods by providing a generalized solution with fixed hyperparameters.
  • To improve the efficiency and reduce the time-consuming nature of spike classification.

Main Methods:

  • The SpikeDeep-Classifier integrates a supervised learning-based SpikeDeeptector and a novel background activity rejector (BAR).
  • An unsupervised K-means clustering algorithm is applied after BAR removes background activity.
  • A cluster accept or merge (CAOM) step refines clusters using similarity criteria, with only two fixed hyperparameters.

Main Results:

  • The BAR achieved an average accuracy of 92.3% on human patient data and 95.40% on non-human primate (NHP) datasets.
  • The complete SpikeDeep-Classifier pipeline (K-means + CAOM) yielded average accuracies of 88.03% (human) and 86.95% (NHP).
  • SpikeDeep-Classifier performance was comparable to that of human experts in spike sorting tasks.

Conclusions:

  • SpikeDeep-Classifier demonstrates robust generalization across diverse datasets, including different species, brain areas, and electrode types, without retraining.
  • The algorithm provides a generalized and fully automated solution for offline spike sorting.
  • This automated approach significantly enhances the efficiency of analyzing electrophysiological recordings.