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Circuit analysis reveals a neural pathway for light avoidance in Drosophila larvae

Altar Sorkaç, Yiannis A. Savva, Doruk Savaş, Mustafa Talay and Gilad Barnea ()
Additional contact information
Altar Sorkaç: Brown University
Yiannis A. Savva: Brown University
Doruk Savaş: Brown University
Mustafa Talay: Brown University
Gilad Barnea: Brown University

Nature Communications, 2022, vol. 13, issue 1, 1-8

Abstract: Abstract Understanding how neural circuits underlie behaviour is challenging even in the connectome era because it requires a combination of anatomical and functional analyses. This is exemplified in the circuit underlying the light avoidance behaviour displayed by Drosophila melanogaster larvae. While this behaviour is robust and the nervous system relatively simple, the circuit is only partially delineated with some contradictions among studies. Here, we devise trans-Tango MkII, an offshoot of the transsynaptic circuit tracing tool trans-Tango, and implement it in anatomical tracing together with functional analysis. We use neuronal inhibition to test necessity of particular neuronal types in light avoidance and selective neuronal activation to examine sufficiency in rescuing light avoidance deficiencies exhibited by photoreceptor mutants. Our studies reveal a four-order circuit for light avoidance connecting the light-detecting photoreceptors with a pair of neuroendocrine cells via two types of clock neurons. This approach can be readily expanded to studying other circuits.

Date: 2022
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DOI: 10.1038/s41467-022-33059-5

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