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A novel machine learning-based approach for the detection and analysis of spontaneous synaptic currents

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  • Thomas Pircher
  • Bianca Pircher
  • Andreas Feigenspan

Abstract

Spontaneous synaptic activity is a hallmark of biological neural networks. A thorough description of these synaptic signals is essential for understanding neurotransmitter release and the generation of a postsynaptic response. However, the complexity of synaptic current trajectories has either precluded an in-depth analysis or it has forced human observers to resort to manual or semi-automated approaches based on subjective amplitude and area threshold settings. Both procedures are time-consuming, error-prone and likely affected by human bias. Here, we present three complimentary methods for a fully automated analysis of spontaneous excitatory postsynaptic currents measured in major cell types of the mouse retina and in a primary culture of mouse auditory cortex. Two approaches rely on classical threshold methods, while the third represents a novel machine learning-based algorithm. Comparison with frequently used existing methods demonstrates the suitability of our algorithms for an unbiased and efficient analysis of synaptic signals in the central nervous system.

Suggested Citation

  • Thomas Pircher & Bianca Pircher & Andreas Feigenspan, 2022. "A novel machine learning-based approach for the detection and analysis of spontaneous synaptic currents," PLOS ONE, Public Library of Science, vol. 17(9), pages 1-16, September.
  • Handle: RePEc:plo:pone00:0273501
    DOI: 10.1371/journal.pone.0273501
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