神经科学
面部肌肉
心理学
辅助电机区
体感系统
运动前皮质
电动机控制
猕猴
运动皮层
初级运动皮层
习惯化
刺激
电生理学
功能磁共振成像
面部表情
运动区
局部场电位
大脑定位
功能成像
电动机系统
皮质(解剖学)
扣带回前部
解剖
磁刺激
体感诱发电位
神经心理学
肌电图
作者
Yuriria Vázquez,Geena R. Ianni,Elie Rassi,Adam G. Rouse,Marc H. Schieber,Faraz Yazdani,Yifat Prut,Winrich A. Freiwald
标识
DOI:10.1073/pnas.2512604122
摘要
Primate societies rely on the production and interpretation of social signals, in particular those displayed by the face. Facial movements are controlled, according to the dominant neuropsychological schema, by two separate circuits, one originating in medial frontal cortex controlling emotional expressions, and a second one originating in lateral motor and premotor areas controlling voluntary facial movements. Despite this functional dichotomy, cortical anatomy suggests that medial and lateral areas are directly connected and may thus operate as a single network. Here, we test these contrasting hypotheses through structural and functional MRI (fMRI) guided electrical stimulation and simultaneous multichannel recordings from key facial motor areas in the macaque monkey brain. These areas include medial facial motor area M3 (located in the anterior cingulate cortex); two lateral face-related motor areas: M1 (primary motor) and PMv (ventrolateral premotor); and S1 (primary somatosensory cortex). Cortical responses evoked by intracortical stimulation revealed that medial and lateral areas can exert significant functional impact on each other. Simultaneous recordings of local field potentials in all facial motor areas further confirm that during facial expressions, medial and lateral facial motor areas significantly interact, primarily in the alpha and beta frequency ranges, whereas during voluntary chewing, coupling occurs at lower frequencies. These functional interactions varied across facial movement types. Thus, at the cortical level, the control of facial movements is not mediated through independent (medial/lateral) functional streams, but results from an interacting sensorimotor network.
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