Bayesian inference for biophysical neuron models enables stimulus optimization for retinal neuroprosthetics.
Jonathan OesterleChristian BehrensCornelius SchröderThoralf HermannThomas EulerKatrin FrankeRobert G SmithGuenther ZeckPhilipp BerensPublished in: eLife (2020)
While multicompartment models have long been used to study the biophysics of neurons, it is still challenging to infer the parameters of such models from data including uncertainty estimates. Here, we performed Bayesian inference for the parameters of detailed neuron models of a photoreceptor and an OFF- and an ON-cone bipolar cell from the mouse retina based on two-photon imaging data. We obtained multivariate posterior distributions specifying plausible parameter ranges consistent with the data and allowing to identify parameters poorly constrained by the data. To demonstrate the potential of such mechanistic data-driven neuron models, we created a simulation environment for external electrical stimulation of the retina and optimized stimulus waveforms to target OFF- and ON-cone bipolar cells, a current major problem of retinal neuroprosthetics.