Vaccari Francesco Edoardo, Diomedi Stefano, De Vitis Marina, Filippini Matteo, Fattori Patrizia
Department of Biomedical and Neuromotor Sciences, University of Bologna, Italy.
Alma Mater Research Institute for Human-Centered Artificial Intelligence, University of Bologna, Italy.
Netw Neurosci. 2024 Jul 1;8(2):486-516. doi: 10.1162/netn_a_00364. eCollection 2024.
Discrete neural states are associated with reaching movements across the fronto-parietal network. Here, the Hidden Markov Model (HMM) applied to spiking activity of the somato-motor parietal area PE revealed a sequence of states similar to those of the contiguous visuomotor areas PEc and V6A. Using a coupled clustering and decoding approach, we proved that these neural states carried spatiotemporal information regarding behaviour in all three posterior parietal areas. However, comparing decoding accuracy, PE was less informative than V6A and PEc. In addition, V6A outperformed PEc in target inference, indicating functional differences among the parietal areas. To check the consistency of these differences, we used both a supervised and an unsupervised variant of the HMM, and compared its performance with two more common classifiers, Support Vector Machine and Long-Short Term Memory. The differences in decoding between areas were invariant to the algorithm used, still showing the dissimilarities found with HMM, thus indicating that these dissimilarities are intrinsic in the information encoded by parietal neurons. These results highlight that, when decoding from the parietal cortex, for example, in brain machine interface implementations, attention should be paid in selecting the most suitable source of neural signals, given the great heterogeneity of this cortical sector.
离散神经状态与额顶叶网络中的伸手动作相关。在此,应用于躯体运动顶叶区域PE的尖峰活动的隐马尔可夫模型(HMM)揭示了一系列与相邻视觉运动区域PEc和V6A相似的状态。使用耦合聚类和解码方法,我们证明这些神经状态携带了关于所有三个后顶叶区域行为的时空信息。然而,比较解码准确性时,PE的信息量比V6A和PEc少。此外,在目标推断方面V6A优于PEc,表明顶叶区域之间存在功能差异。为了检验这些差异的一致性,我们使用了HMM的监督和无监督变体,并将其性能与另外两种更常用的分类器——支持向量机和长短期记忆进行比较。区域之间解码的差异对于所使用的算法是不变的,仍然显示出与HMM发现的差异,从而表明这些差异在顶叶神经元编码的信息中是固有的。这些结果突出表明,例如在脑机接口实现中,从顶叶皮层进行解码时,鉴于该皮质区域的巨大异质性,在选择最合适的神经信号源时应予以注意。