Hierarchical Bayesian Modeling and Markov Chain Monte Carlo Sampling for Tuning-Curve Analysis
Open Access
- 1 January 2010
- journal article
- research article
- Published by American Physiological Society in Journal of Neurophysiology
- Vol. 103 (1) , 591-602
- https://doi.org/10.1152/jn.00379.2009
Abstract
A central theme of systems neuroscience is to characterize the tuning of neural responses to sensory stimuli or the production of movement. Statistically, we often want to estimate the parameters of the tuning curve, such as preferred direction, as well as the associated degree of uncertainty, characterized by error bars. Here we present a new sampling-based, Bayesian method that allows the estimation of tuning-curve parameters, the estimation of error bars, and hypothesis testing. This method also provides a useful way of visualizing which tuning curves are compatible with the recorded data. We demonstrate the utility of this approach using recordings of orientation and direction tuning in primary visual cortex, direction of motion tuning in primary motor cortex, and simulated data.Keywords
This publication has 48 references indexed in Scilit:
- Dynamics of orientation tuning in cat V1 neurons depend on location within layers and orientation mapsFrontiers in Neuroscience, 2007
- Motor Learning with Unstable Neural RepresentationsNeuron, 2007
- Efficient auditory codingNature, 2006
- Statistical Issues in the Analysis of Neuronal DataJournal of Neurophysiology, 2005
- Multiple neural spike train data analysis: state-of-the-art and future challengesNature Neuroscience, 2004
- When a good fit can be badPublished by Elsevier ,2002
- Orientation Selectivity in Pinwheel Centers in Cat Striate CortexScience, 1997
- Bayes FactorsJournal of the American Statistical Association, 1995
- Orientation Selectivity of Cortical Neurons During Intracellular Blockade of InhibitionScience, 1994
- Bootstrap Methods for Standard Errors, Confidence Intervals, and Other Measures of Statistical AccuracyStatistical Science, 1986