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TitleData-driven inference for stationary jump-diffusion processes with application to membrane voltage fluctuations in pyramidal neurons.
Publication TypeJournal Article
Year of Publication2019
AuthorsMelanson, Alexandre, and Andre Longtin
JournalJ Math Neurosci
Date Published2019 Jul 26

The emergent activity of biological systems can often be represented as low-dimensional, Langevin-type stochastic differential equations. In certain systems, however, large and abrupt events occur and violate the assumptions of this approach. We address this situation here by providing a novel method that reconstructs a jump-diffusion stochastic process based solely on the statistics of the original data. Our method assumes that these data are stationary, that diffusive noise is additive, and that jumps are Poisson. We use threshold-crossing of the increments to detect jumps in the time series. This is followed by an iterative scheme that compensates for the presence of diffusive fluctuations that are falsely detected as jumps. Our approach is based on probabilistic calculations associated with these fluctuations and on the use of the Fokker-Planck and the differential Chapman-Kolmogorov equations. After some validation cases, we apply this method to recordings of membrane noise in pyramidal neurons of the electrosensory lateral line lobe of weakly electric fish. These recordings display large, jump-like depolarization events that occur at random times, the biophysics of which is unknown. We find that some pyramidal cells increase their jump rate and noise intensity as the membrane potential approaches spike threshold, while their drift function and jump amplitude distribution remain unchanged. As our method is fully data-driven, it provides a valuable means to further investigate the functional role of these jump-like events without relying on unconstrained biophysical models.

Alternate JournalJ Math Neurosci
PubMed ID31350644
PubMed Central IDPMC6660545
Grant ListPGS-D3 / / Natural Sciences and Engineering Research Council of Canada /
Discovery / / Natural Sciences and Engineering Research Council of Canada /
OGS / / Ontario Government /