Centre for Neuroscience Studies, Queen's University , Kingston, Ontario , Canada.
Canadian Action and Perception Network , Toronto, Ontario , Canada.
J Neurophysiol. 2018 Sep 1;120(3):893-909. doi: 10.1152/jn.00643.2017. Epub 2018 May 9.
Reference frame transformations (RFTs) are crucial components of sensorimotor transformations in the brain. Stochasticity in RFTs has been suggested to add noise to the transformed signal due to variability in transformation parameter estimates (e.g., angle) as well as the stochastic nature of computations in spiking networks of neurons. Here, we varied the RFT angle together with the associated variability and evaluated the behavioral impact in a reaching task that required variability-dependent visual-proprioceptive multisensory integration. Crucially, reaches were performed with the head either straight or rolled 30° to either shoulder, and we also applied neck loads of 0 or 1.8 kg (left or right) in a 3 × 3 design, resulting in different combinations of estimated head roll angle magnitude and variance required in RFTs. A novel three-dimensional stochastic model of multisensory integration across reference frames was fitted to the data and captured our main behavioral findings: 1) neck load biased head angle estimation across all head roll orientations, resulting in systematic shifts in reach errors; 2) increased neck muscle tone led to increased reach variability due to signal-dependent noise; and 3) both head roll and neck load created larger angular errors in reaches to visual targets away from the body compared with reaches toward the body. These results show that noise in muscle spindles and stochasticity in general have a tangible effect on RFTs underlying reach planning. Since RFTs are omnipresent in the brain, our results could have implications for processes as diverse as motor control, decision making, posture/balance control, and perception. NEW & NOTEWORTHY We show that increasing neck muscle tone systematically biases reach movements. A novel three-dimensional multisensory integration across reference frames model captures the data well and provides evidence that the brain must have online knowledge of full-body geometry together with the associated variability to plan reach movements accurately.
参考帧变换(RFT)是大脑中感觉运动变换的关键组成部分。由于变换参数估计(例如角度)的可变性以及神经元尖峰网络计算的随机性,RFT 中的随机性会向变换后的信号添加噪声。在这里,我们改变了 RFT 角度以及相关的可变性,并在需要依赖视觉本体感受多感觉整合的伸手任务中评估了行为影响。至关重要的是,头部要么笔直,要么向任一侧肩膀倾斜 30°,我们还在 3×3 的设计中施加了 0 或 1.8 千克(左或右)的颈部负载,从而产生了 RFT 中所需的估计头部滚动角度大小和方差的不同组合。我们拟合了一种新的三维随机参考框架多感觉整合模型来拟合数据,并捕获了我们的主要行为发现:1)颈部负载会影响所有头部滚动方向的头部角度估计,从而导致到达误差的系统偏移;2)增加颈部肌肉张力会由于信号相关噪声而导致到达的变异性增加;3)与朝向身体的到达相比,头部滚动和颈部负载都会导致远离身体的视觉目标的到达产生更大的角度误差。这些结果表明,肌肉梭内的噪声和整体随机性对到达规划中的 RFT 具有实际影响。由于 RFT 在大脑中无处不在,因此我们的结果可能对运动控制、决策、姿势/平衡控制和感知等各种过程都有影响。新的和值得注意的是,我们表明增加颈部肌肉张力会系统地偏向到达运动。一个新颖的三维多感觉整合跨参考框架模型很好地捕捉了数据,并提供了证据表明大脑必须具有关于整个身体几何形状及其相关变异性的在线知识,以便准确地规划到达运动。