Skip to main content
Home

Search form

  • Home
  • Calendar
  • People
    • Key Personnel
    • Members
    • Collaborators
  • Grants
  • Papers
  • Blogs
  • Wiki
  • Log In
Home / Spike inference from calcium imaging using sequential Monte Carlo methods.

Spike inference from calcium imaging using sequential Monte Carlo methods.

TitleSpike inference from calcium imaging using sequential Monte Carlo methods.
Publication TypeJournal Article
Year of Publication2009
AuthorsVogelstein JT, Watson BO, Packer AM, Yuste R, Jedynak B, Paninski L
JournalBiophys J
Volume97
Pagination636–655
KeywordsAnimals, Biological, Calcium, cytology/metabolism, Fluorescence, Inbred C57BL, Intracellular Space, metabolism, Mice, models, Monte Carlo Method, Neurons, Probability, Time Factors
Abstract

As recent advances in calcium sensing technologies facilitate simultaneously imaging action potentials in neuronal populations, complementary analytical tools must also be developed to maximize the utility of this experimental paradigm. Although the observations here are fluorescence movies, the signals of interest–spike trains and/or time varying intracellular calcium concentrations–are hidden. Inferring these hidden signals is often problematic due to noise, nonlinearities, slow imaging rate, and unknown biophysical parameters. We overcome these difficulties by developing sequential Monte Carlo methods (particle filters) based on biophysical models of spiking, calcium dynamics, and fluorescence. We show that even in simple cases, the particle filters outperform the optimal linear (i.e., Wiener) filter, both by obtaining better estimates and by providing error bars. We then relax a number of our model assumptions to incorporate nonlinear saturation of the fluorescence signal, as well external stimulus and spike history dependence (e.g., refractoriness) of the spike trains. Using both simulations and in vitro fluorescence observations, we demonstrate temporal superresolution by inferring when within a frame each spike occurs. Furthermore, the model parameters may be estimated using expectation maximization with only a very limited amount of data (e.g., approximately 5-10 s or 5-40 spikes), without the requirement of any simultaneous electrophysiology or imaging experiments.

URLhttp://dx.doi.org/10.1016/j.bpj.2008.08.005
DOI10.1016/j.bpj.2008.08.005
  • Google Scholar
  • BibTeX

Navigation

  • Statistical methods
    • General
    • Causal Inference
    • Population ICA
    • PVD
    • Testing
    • Prediction / Machine Learning
    • Computation
    • Visualization
    • Structural PCA
  • Scientific areas of interest
    • Brain imaging - Variability
    • Brain Imaging - Prediction
    • Brain Imaging - Clinical
    • Wearable Computing
    • Biosignals
  • Software & Tutorials
  • Social media
  • Logos
© 2012 smart-stats.org