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journal article

Evolving the olfactory system with machine learning

Neuron
Publication Date: 12/1/2021
Abstract: The convergent evolution of the fly and mouse olfactory system led us to ask whether the anatomic connectivity and functional logic of olfactory circuits would evolve in artificial neural networks trained to perform olfactory tasks. Artificial networks trained to classify odor identity recapitulate the connectivity inherent in the olfactory system. Input units are driven by a single receptor type, and units driven by the same receptor converge to form a glomerulus. Glomeruli exhibit sparse, unstructured connectivity onto a larger expansion layer of Kenyon cells. When trained to both classify odor identity and to impart innate valence onto odors, the network develops independent pathways for identity and valence classification. Thus, the defining features of fly and mouse olfactory systems also evolved in artificial neural networks trained to perform olfactory tasks. This implies that convergent evolution reflects an underlying logic rather than shared developmental principles.
 
Authors: Peter Y. Wang, Yi Sun, Richard Axel, L.F. Abbott, and Guangyu Robert Yang
Peter Y. Wang
Yi Sun
Richard Axel
L.F. Abbott
Guangyu Robert Yang