| Literature DB >> 33412101 |
Nicholas A Roy1, Ji Hyun Bak2, Athena Akrami3, Carlos D Brody4, Jonathan W Pillow5.
Abstract
Decision-making strategies evolve during training and can continue to vary even in well-trained animals. However, studies of sensory decision-making tend to characterize behavior in terms of a fixed psychometric function that is fit only after training is complete. Here, we present PsyTrack, a flexible method for inferring the trajectory of sensory decision-making strategies from choice data. We apply PsyTrack to training data from mice, rats, and human subjects learning to perform auditory and visual decision-making tasks. We show that it successfully captures trial-to-trial fluctuations in the weighting of sensory stimuli, bias, and task-irrelevant covariates such as choice and stimulus history. This analysis reveals dramatic differences in learning across mice and rapid adaptation to changes in task statistics. PsyTrack scales easily to large datasets and offers a powerful tool for quantifying time-varying behavior in a wide variety of animals and tasks.Entities:
Keywords: behavioral dynamics; learning; psychophysics; sensory decision making
Mesh:
Year: 2021 PMID: 33412101 PMCID: PMC7897255 DOI: 10.1016/j.neuron.2020.12.004
Source DB: PubMed Journal: Neuron ISSN: 0896-6273 Impact factor: 17.173