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纹状体中的感觉表示为学习和执行运动习惯提供了时间参考。

Sensory representations in the striatum provide a temporal reference for learning and executing motor habits.

机构信息

Departamento de Neurobiología del Desarrollo y Neurofisiología, Instituto de Neurobiología, UNAM, Campus Juriquilla, Boulevard Juriquilla No. 3001, Querétaro, 76230, Mexico.

出版信息

Nat Commun. 2019 Sep 9;10(1):4074. doi: 10.1038/s41467-019-12075-y.

Abstract

Previous studies indicate that the dorsolateral striatum (DLS) integrates sensorimotor information from cortical and thalamic regions to learn and execute motor habits. However, the exact contribution of sensory representations to this process is still unknown. Here we explore the role of the forelimb somatosensory flow in the DLS during the learning and execution of motor habits. First, we compare rhythmic somesthetic representations in the DLS and primary somatosensory cortex in anesthetized rats, and find that sequential and temporal stimuli contents are more strongly represented in the DLS. Then, using a behavioral protocol in which rats developed a stereotyped motor sequence, functional disconnection experiments, and pharmacologic and optogenetic manipulations in apprentice and expert animals, we reveal that somatosensory thalamic- and cortical-striatal pathways are indispensable for the temporal component of execution. Our results indicate that the somatosensory flow in the DLS provides the temporal reference for the development and execution of motor habits.

摘要

先前的研究表明,背外侧纹状体(DLS)整合来自皮质和丘脑区域的感觉运动信息,以学习和执行运动习惯。然而,感觉代表对于这一过程的确切贡献仍不清楚。在这里,我们探讨了在前肢感觉传入流在 DLS 在学习和执行运动习惯中的作用。首先,我们比较了麻醉大鼠 DLS 和初级体感皮层中的节律体感表征,发现顺序和时间刺激内容在 DLS 中得到了更强的表示。然后,使用一种行为协议,在该协议中,大鼠形成了一种刻板的运动序列,在学徒和专家动物中进行功能分离实验以及药理学和光遗传学操作,我们揭示了感觉丘脑和皮质纹状体通路对于执行的时间成分是不可或缺的。我们的结果表明,DLS 中的感觉传入流为运动习惯的发展和执行提供了时间参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2d2c/6733846/076a40d06e3f/41467_2019_12075_Fig1_HTML.jpg

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