Department of Physiology, Keck Center for Integrative Neuroscience, University of California, San Francisco, CA, USA.
Prog Brain Res. 2011;191:195-209. doi: 10.1016/B978-0-444-53752-2.00004-7.
Although multisensory integration has been well modeled at the behavioral level, the link between these behavioral models and the underlying neural circuits is still not clear. This gap is even greater for the problem of sensory integration during movement planning and execution. The difficulty lies in applying simple models of sensory integration to the complex computations that are required for movement control and to the large networks of brain areas that perform these computations. Here I review psychophysical, computational, and physiological work on multisensory integration during movement planning, with an emphasis on goal-directed reaching. I argue that sensory transformations must play a central role in any modeling effort. In particular, the statistical properties of these transformations factor heavily into the way in which downstream signals are combined. As a result, our models of optimal integration are only expected to apply "locally," that is, independently for each brain area. I suggest that local optimality can be reconciled with globally optimal behavior if one views the collection of parietal sensorimotor areas not as a set of task-specific domains, but rather as a palette of complex, sensorimotor representations that are flexibly combined to drive downstream activity and behavior.
尽管在行为层面上已经对多感觉整合进行了很好的建模,但这些行为模型与潜在的神经回路之间的联系仍然不清楚。对于运动规划和执行过程中的感觉整合问题,这种差距甚至更大。困难在于将感觉整合的简单模型应用于运动控制所需的复杂计算以及执行这些计算的大脑区域的大型网络。在这里,我回顾了运动规划过程中多感觉整合的心理物理学、计算和生理学工作,重点是目标导向的伸手。我认为,感觉变换必须在任何建模工作中发挥核心作用。特别是,这些变换的统计特性对下游信号的组合方式有很大影响。因此,我们的最优整合模型仅有望“局部”应用,也就是说,每个大脑区域独立应用。如果将顶叶感觉运动区域的集合不是视为一组特定于任务的域,而是视为一组灵活组合以驱动下游活动和行为的复杂感觉运动表示的调色板,那么我认为局部最优性可以与全局最优行为相协调。