Sanchez Justin C, Carmena Jose M, Lebedev Mikhail A, Nicolelis Miguel A L, Harris John G, Principe Jose C
Department of Biomedical Engineering, University of Florida, Room EB 454, Gainesville, FL 32611, USA.
IEEE Trans Biomed Eng. 2004 Jun;51(6):943-53. doi: 10.1109/TBME.2004.827061.
In the design of brain-machine interface (BMI) algorithms, the activity of hundreds of chronically recorded neurons is used to reconstruct a variety of kinematic variables. A significant problem introduced with the use of neural ensemble inputs for model building is the explosion in the number of free parameters. Large models not only affect model generalization but also put a computational burden on computing an optimal solution especially when the goal is to implement the BMI in low-power, portable hardware. In this paper, three methods are presented to quantitatively rate the importance of neurons in neural to motor mapping, using single neuron correlation analysis, sensitivity analysis through a vector linear model, and a model-independent cellular directional tuning analysis for comparisons purpose. Although, the rankings are not identical, up to sixty percent of the top 10 ranking cells were in common. This set can then be used to determine a reduced-order model whose performance is similar to that of the ensemble. It is further shown that by pruning the initial ensemble neural input with the ranked importance of cells, a reduced sets of cells (between 40 and 80, depending upon the methods) can be found that exceed the BMI performance levels of the full ensemble.
在脑机接口(BMI)算法设计中,利用数百个长期记录的神经元活动来重建各种运动学变量。使用神经群体输入进行模型构建所带来的一个重大问题是自由参数数量的激增。大型模型不仅会影响模型的泛化能力,还会给计算最优解带来计算负担,尤其是当目标是在低功耗便携式硬件中实现BMI时。本文提出了三种方法,通过单神经元相关性分析、基于向量线性模型的敏感性分析以及用于比较目的的与模型无关的细胞方向调谐分析,来定量评估神经元在神经到运动映射中的重要性。尽管排名并不完全相同,但前10名中的细胞有高达60%是相同的。然后可以使用这一组细胞来确定一个降阶模型,其性能与整体模型相似。进一步表明,通过根据细胞的重要性排名对初始神经群体输入进行修剪,可以找到一组数量减少的细胞(根据方法不同,数量在40到80个之间),其BMI性能水平超过了整个神经群体。