4.8 Article

Transforming absolute value to categorical choice in primate superior colliculus during value-based decision making

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NATURE COMMUNICATIONS
卷 12, 期 1, 页码 -

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NATURE PORTFOLIO
DOI: 10.1038/s41467-021-23747-z

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  1. CAS Hundreds of Talents Program

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The study identifies a neural mechanism within the superior colliculus that directly transforms absolute values into categorical choices, which supports highly efficient value-based decision making critical for real-world economic behaviors.
Value-based decision making involves choosing from multiple options with different values. Despite extensive studies on value representation in various brain regions, the neural mechanism for how multiple value options are converted to motor actions remains unclear. To study this, we developed a multi-value foraging task with varying menu of items in non-human primates using eye movements that dissociates value and choice, and conducted electrophysiological recording in the midbrain superior colliculus (SC). SC neurons encoded absolute value, independent of available options, during late fixation. In addition, SC neurons also represent value threshold, modulated by available options, different from conventional motor threshold. Electrical stimulation of SC neurons biased choices in a manner predicted by the difference between the value representation and the value threshold. These results reveal a neural mechanism directly transforming absolute values to categorical choices within SC, supporting highly efficient value-based decision making critical for real-world economic behaviors. Value-based decision making involves choosing from multiple options with different values. The authors identify a neural mechanism that directly transforms absolute values to categorical choices within the superior colliculus and which supports value-based decision making critical for real-world economic behaviours.

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