Wang Yiwen, Principe Jose C, Sanchez Justin C
Department of Electrical & Computer Engineering, University of Florida, Gainesville, FL, USA.
Neural Netw. 2009 Jul-Aug;22(5-6):781-90. doi: 10.1016/j.neunet.2009.06.007. Epub 2009 Jun 30.
Point process modeling of neural spike recordings has the potential to capture with high specificity the information contained in spike time occurrence. In Brain-Machine Interfaces (BMIs) the neural tuning characteristic assessed from neural spike recordings can distinguish neuron importance in terms of its modulation with the movement task. Consequently, it improves generalization and reduces significantly computation in previous decoding algorithms, where models reconstruct the kinematics from recorded activities of hundreds of neurons. We propose to apply information theoretical analysis based on an instantaneous tuning model to extract the important neuron subsets for point process decoding on BMI. The cortical distribution of extracted neuron subsets is analyzed and the statistical decoding performance using subset selection is studied with respect to different number of neurons and compared to the one by the full neuron ensemble. With much less computation, the extracted importance neurons provide comparable kinematic reconstructions compared to the full neuron ensemble. The performance of the extracted subset is compared to the random selected subset with same number of neurons to further validate the effectiveness of the subset-extraction approach.
神经尖峰记录的点过程建模有潜力以高特异性捕捉尖峰时间出现中包含的信息。在脑机接口(BMI)中,从神经尖峰记录评估的神经调谐特性可以根据其与运动任务的调制来区分神经元的重要性。因此,它提高了泛化能力,并显著减少了先前解码算法中的计算量,在先前的算法中,模型从数百个神经元的记录活动中重建运动学。我们建议应用基于瞬时调谐模型的信息理论分析来提取用于BMI点过程解码的重要神经元子集。分析提取的神经元子集的皮质分布,并针对不同数量的神经元研究使用子集选择的统计解码性能,并与完整神经元集合的性能进行比较。与完整神经元集合相比,提取的重要神经元以少得多的计算提供了可比的运动学重建。将提取子集的性能与具有相同数量神经元的随机选择子集进行比较,以进一步验证子集提取方法的有效性。