Data Science in Science (Dec 2024)

Time-Varying ℓ0 Optimization for Spike Inference from Multi-Trial Calcium Recordings

  • Tong Shen,
  • Mingyu Du,
  • Kevin Johnston,
  • Steven F. Grieco,
  • Rachel Crary,
  • John F. Guzowski,
  • Gyorgy Lur,
  • Xiangmin Xu,
  • Hernando Ombao,
  • Michele Guindani,
  • Zhaoxia Yu

DOI
https://doi.org/10.1080/26941899.2024.2407770
Journal volume & issue
Vol. 3, no. 1

Abstract

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Optical imaging of genetically encoded calcium indicators is a powerful tool to record the activity of a large number of neurons simultaneously over a long period of time from freely behaving animals. However, determining the exact time at which a neuron spikes and estimating the underlying firing rate from calcium fluorescence data remains challenging, especially for calcium imaging data obtained from a longitudinal study. We propose a multi-trial time-varying ℓ0 penalized method to jointly detect spikes and estimate firing rates by robustly integrating evolving neural dynamics across trials. Our simulation study shows that the proposed method performs well in both spike detection and firing rate estimation. We demonstrate the usefulness of our method on calcium fluorescence trace data from two studies, with the first study showing differential firing rate functions between two behaviors and the second study showing evolving firing rate functions across trials due to learning.

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