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Inference and Decoding of Motor Cortex Low-Dimensional Dynamics via Latent State-Space Models

机译:基于潜在状态空间模型的运动皮层低维动力学的推断和解码

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Motor cortex neuronal ensemble spiking activity exhibits strong low-dimensional collective dynamics (i.e., coordinated modes of activity) during behavior. Here, we demonstrate that these low-dimensional dynamics, revealed by unsupervised latent state-space models, can provide as accurate or better reconstruction of movement kinematics as direct decoding from the entire recorded ensemble. Ensembles of single neurons were recorded with triple microelectrode arrays (MEAs) implanted in ventral and dorsal premotor (PMv, PMd) and primary motor (M1) cortices while nonhuman primates performed 3-D reach-to-grasp actions. Low-dimensional dynamics were estimated via various types of latent state-space models including, for example, Poisson linear dynamic system (PLDS) models. Decoding from low-dimensional dynamics was implemented via point process and Kalman filters coupled in series. We also examined decoding based on a predictive subsampling of the recorded population. In this case, a supervised greedy procedure selected neuronal subsets that optimized decoding performance. When comparing decoding based on predictive subsampling and latent state-space models, the size of the neuronal subset was set to the same number of latent state dimensions. Overall, our findings suggest that information about naturalistic reach kinematics present in the recorded population is preserved in the inferred low-dimensional motor cortex dynamics. Furthermore, decoding based on unsupervised PLDS models may also outperform previous approaches based on direct decoding from the recorded population or on predictive subsampling.
机译:运动皮层神经元合奏活动在行为过程中表现出很强的低维集体动力(即活动的协调模式)。在这里,我们证明了无监督的潜在状态空间模型所揭示的这些低维动力学,可以像从整个记录的合奏中直接解码一样,提供运动运动学的准确或更好的重建。记录了单个神经元的集合,在腹侧和背侧前运动(PMv,PMd)和原发性运动(M1)皮质中植入了三重微电极阵列(MEA),而非人类灵长类动物则执行了3-D抓握动作。低维动力学是通过各种潜在状态空间模型估算的,包括例如泊松线性动力学系统(PLDS)模型。低维动力学的解码是通过点过程和串联的卡尔曼滤波器实现的。我们还根据记录的人口的预测性二次抽样检查了解码。在这种情况下,有监督的贪婪过程选择了优化解码性能的神经元子集。当比较基于预测子采样和潜在状态空间模型的解码时,神经元子集的大小设置为相同数量的潜在状态维度。总体而言,我们的发现表明,在推断的种群中存在的有关自然到达运动学的信息保留在推断的低维运动皮层动力学中。此外,基于无监督PLDS模型的解码也可能优于基于已记录总体的直接解码或预测子采样的先前方法。

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