Mobilization of endocannabinoids by midbrain dopamine neurons is required for the encoding of reward prediction
Author
Luján, Miguel A.Covey, Dan P.
Young-Morrison, Reana
Zhang, Lan-Yuan
Kim, Andrew
Morgado, Fiorella
Patel, Sachin
Bass, Caroline
Paladini, Carlos
Cheer, Joseph
Date
2023-11-01Journal
Nature CommunicationsType
Article
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Brain levels of the endocannabinoid 2-arachidonoylglycerol (2-AG) shape motivated behavior and nucleus accumbens (NAc) dopamine release. However, it is not clear whether mobilization of 2-AG specifically from midbrain dopamine neurons is necessary for dopaminergic responses to external stimuli predicting forthcoming reward. Here, we use a viral-genetic strategy to prevent the expression of the 2-AG-synthesizing enzyme diacylglycerol lipase α (DGLα) from ventral tegmental area (VTA) dopamine cells in adult mice. We find that DGLα deletion fromVTA dopamine neurons prevents depolarizationinduced suppression of excitation (DSE), a form of 2-AG-mediated synaptic plasticity, in dopamine neurons. DGLα deletion also decreases effortful, cuedriven reward-seeking but has no effect on non-cued or low-effort operant tasks and other behaviors. Moreover, dopamine recording in the NAc reveals that deletion of DGLα impairs the transfer of accumbal dopamine signaling from a reward to its earliest predictors. These results demonstrate that 2-AG mobilization from VTA dopamine neurons is a necessary step for the generation of dopamine-based predictive associations that are required to direct and energize reward-oriented behavior.Description
The article processing charges (APC) for this open access article were partially funded by the Health Sciences and Human Services Library's Open Access Publishing Fund for Early-Career Researchers.Citation
Luján, M., Covey, D. P., Young-Morrison, R., Zhang, L., Kim, A., Morgado, F., Patel, S., Bass, C. E., Paladini, C., & Cheer, J. F. (2023). Mobilization of endocannabinoids by midbrain dopamine neurons is required for the encoding of reward prediction. Nature Communications, 14(1). https://doi.org/10.1038/s41467-023-43131-3Rights/Terms
Attribution-NonCommercial-NoDerivatives 4.0 InternationalIdentifier to cite or link to this item
http://hdl.handle.net/10713/22731ae974a485f413a2113503eed53cd6c53
10.1038/s41467-023-43131-3
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