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Sparse Bayesian inference methods for decoding 3D reach and grasp kinematics and joint angles with primary motor cortical ensembles

机译:稀疏贝叶斯推理方法,用于解码3D到达并与主运动皮质集合体一起掌握运动学和关节角度

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Sparse Bayesian inference methods are applied to decode three-dimensional (3D) reach to grasp movement based on recordings of primary motor cortical (M1) ensembles from rhesus macaque. For three linear or nonlinear models tested, variational Bayes (VB) inference in combination with automatic relevance determination (ARD) is used for variable selection to avoid overfitting. The sparse Bayesian linear regression model achieved the overall best performance across objects and target locations. We assessed the sensitivity of M1 units in decoding and evaluated the proximal and distal representations of joint angles in population decoding. Our results suggest that the M1 ensembles recorded from the precentral gyrus area carry more proximal than distal information.
机译:基于来自恒河猴的初级运动皮层(M1)集合的记录,稀疏贝叶斯推理方法用于解码三维(3D)范围以掌握运动。对于测试的三个线性或非线性模型,将变量贝叶斯(VB)推理与自动相关性确定(ARD)结合使用来进行变量选择,以避免过拟合。稀疏的贝叶斯线性回归模型在对象和目标位置上均获得了总体最佳性能。我们评估了M1单位在解码中的敏感性,并评估了人口解码中关节角的近端和远端表示。我们的结果表明,从中央前回区域记录的M1乐团所携带的近端信息要比远端信息多。

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