| Literature DB >> 35723252 |
Tiziano D'Albis1,2, Richard Kempter1,2,3, Pantelis Vafidis4,1,2, David Owald5,6,3.
Abstract
Ring attractor models for angular path integration have received strong experimental support. To function as integrators, head direction circuits require precisely tuned connectivity, but it is currently unknown how such tuning could be achieved. Here, we propose a network model in which a local, biologically plausible learning rule adjusts synaptic efficacies during development, guided by supervisory allothetic cues. Applied to the Drosophila head direction system, the model learns to path-integrate accurately and develops a connectivity strikingly similar to the one reported in experiments. The mature network is a quasi-continuous attractor and reproduces key experiments in which optogenetic stimulation controls the internal representation of heading in flies, and where the network remaps to integrate with different gains in rodents. Our model predicts that path integration requires self-supervised learning during a developmental phase, and proposes a general framework to learn to path-integrate with gain-1 even in architectures that lack the physical topography of a ring.Entities:
Keywords: compartmentalized neuron; neuroscience; none; path integration; predictive coding; recurrent neural networks; self-supervised learning; synaptic plasticity
Mesh:
Year: 2022 PMID: 35723252 PMCID: PMC9286743 DOI: 10.7554/eLife.69841
Source DB: PubMed Journal: Elife ISSN: 2050-084X Impact factor: 8.713