| Literature DB >> 31409713 |
Andrew G Richardson1,2, Yohannes Ghenbot3,2, Xilin Liu4, Han Hao4, Cole Rinehart3,2, Sam DeLuccia3,2, Solymar Torres Maldonado3,2, Gregory Boyek3,2, Milin Zhang4, Firooz Aflatouni4, Jan Van der Spiegel4, Timothy H Lucas3,2.
Abstract
Diverse organisms, from insects to humans, actively seek out sensory information that best informs goal-directed actions. Efficient active sensing requires congruity between sensor properties and motor strategies, as typically honed through evolution. However, it has been difficult to study whether active sensing strategies are also modified with experience. Here, we used a sensory brain-machine interface paradigm, permitting both free behavior and experimental manipulation of sensory feedback, to study learning of active sensing strategies. Rats performed a searching task in a water maze in which the only task-relevant sensory feedback was provided by intracortical microstimulation (ICMS) encoding egocentric bearing to the hidden goal location. The rats learned to use the artificial goal direction sense to find the platform with the same proficiency as natural vision. Manipulation of the acuity of the ICMS feedback revealed distinct search strategy adaptations. Using an optimization model, the different strategies were found to minimize the effort required to extract the most salient task-relevant information. The results demonstrate that animals can adjust motor strategies to match novel sensor properties for efficient goal-directed behavior.Entities:
Keywords: intracortical microstimulation; rodent; water maze
Mesh:
Year: 2019 PMID: 31409713 PMCID: PMC6717311 DOI: 10.1073/pnas.1909953116
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205