Cracking the Valence Code: Patterned Facial Kinematics and Neural Signatures of Emotional Expressions in Mice
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AbstractDespite advances in linking mouse facial expressions to emotional states, the specific facial features and neural signatures remain elusive. An artificial intelligence (AI)‐based framework that decodes mouse facial expressions is presented, revealing stable valence and arousal dimensions analogous to those described in human emotion models. Facial expressions emerge as robust indicators of positive and negative emotional responses, validated through pharmacological manipulations, while responses to hallucinogens highlight the potential of valence‐specific prototype modeling for interpreting previously uncharacterized emotional states. Using automated multikeypoint tracking, patterned facial kinematics that are consistent within the same emotional valence are identified. Ear dynamics, in particular, emerge as critical features, offering distinct and sensitive markers of subtle emotional distinctions. Neurocorrelational analyses and optogenetic inhibition targeting the ventral tegmental area further demonstrate the intricate link between facial expressions and valence‐specific neural activity in dopaminergic and GABAergic neurons. These findings establish a precise, high‐temporal‐resolution platform for objectively decoding murine emotional states, advancing the understanding of emotional processing mechanisms and informing the development of mood‐regulating therapies.
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Publication status: Published
Funder: Shanghai Young Oriental Talent Program
Funder: Pudong Elite Talent Program
Funder: The Innovative Research Team of High‐level Local Universities in Shanghai
Funder: Shanghai Center for Brain Science and Brain‐Inspired Technology; doi: https://doi.org/10.13039/100020441
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2198-3844
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National Natural Science Foundation of China (32471083)
111 Project (B18015)