首页> 美国卫生研究院文献>Frontiers in Neuroscience >Low-Dimensional Motor Cortex Dynamics Preserve Kinematics Information During Unconstrained Locomotion in Nonhuman Primates
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Low-Dimensional Motor Cortex Dynamics Preserve Kinematics Information During Unconstrained Locomotion in Nonhuman Primates

机译:在非人类灵长类动物的无限制运动过程中,低维运动皮质动力学可保留运动学信息。

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摘要

The dynamical systems view of movement generation in motor cortical areas has emerged as an effective way to explain the firing properties of populations of neurons recorded from these regions. Recently, many studies have focused on finding low-dimensional representations of these dynamical systems during voluntary reaching and grasping behaviors carried out by the forelimbs. One such model, the Poisson linear-dynamical-system (PLDS) model, has been shown to extract dynamics which can be used to decode reaching kinematics. However, few have investigated these dynamics, especially in non-human primates, during behaviors such as locomotion, which may involve motor cortex to a lesser degree. Here, we focused on unconstrained quadrupedal locomotion, and investigated whether unsupervised latent state-space models can extract low-dimensional dynamics while preserving information about hind-limb kinematics. Spiking activity from the leg area of primary motor cortex of rhesus macaques was recorded simultaneously with hind-limb joint positions during ambulation across a corridor, ladder, and on a treadmill at various speeds. We found that PLDS models can extract stereotyped low-dimensional neural trajectories from these neurons phase-locked to the gait cycle, and that distinct trajectories emerge depending on the speed and class of behavior. Additionally, it was possible to decode both the hind-limb kinematics and the gait phase from these inferred trajectories just as well or better than from the full neural population (18-80 neurons) with only 12 dimensions. Our results demonstrate that kinematics and gait phase during various locomotion tasks are well represented in low-dimensional latent dynamics inferred from motor cortex population activity.
机译:运动皮层区域运动产生的动力学系统观点已经成为解释这些区域记录的神经元放电特性的有效方法。近来,许多研究集中于在前肢的主动伸入和掌握行为过程中寻找这些动力系统的低维表示。一种这样的模型,泊松线性动力系统(PLDS)模型,已经显示出可以提取动力学的信息,可以用来解码到达运动学。然而,很少有人研究过这些动力学,尤其是在非人类的灵长类动物中,诸如运动等行为,这些行为可能涉及运动皮质的程度较小。在这里,我们专注于无约束的四足运动,并研究了无监督的潜在状态空间模型是否可以提取低维动力学,同时保留有关后肢运动学的信息。在跨走廊,梯子和跑步机上以各种速度行走时,记录了恒河猴猕猴初级运动皮层腿部区域的刺刺活动,同时记录了后肢关节位置。我们发现,PLDS模型可以从锁相到步态周期的这些神经元中提取定型的低维神经轨迹,并且根据行为的速度和类别出现不同的轨迹。此外,从这些推断的轨迹中解码后肢运动学和步态相位与从仅12个维度的完整神经群体(18-80个神经元)中解码一样好或更好。我们的结果表明,在各种运动任务中的运动学和步态阶段可以很好地体现在由运动皮层种群活动推断出的低维潜伏动力学中。

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