Kim S-P, Sanchez J C, Rao Y N, Erdogmus D, Carmena J M, Lebedev M A, Nicolelis M A L, Principe J C
Department of Electrical and Computer Engineering, University of Florida, Gainesville, 32611, USA.
J Neural Eng. 2006 Jun;3(2):145-61. doi: 10.1088/1741-2560/3/2/009. Epub 2006 May 16.
The field of brain-machine interfaces requires the estimation of a mapping from spike trains collected in motor cortex areas to the hand kinematics of the behaving animal. This paper presents a systematic investigation of several linear (Wiener filter, LMS adaptive filters, gamma filter, subspace Wiener filters) and nonlinear models (time-delay neural network and local linear switching models) applied to datasets from two experiments in monkeys performing motor tasks (reaching for food and target hitting). Ensembles of 100-200 cortical neurons were simultaneously recorded in these experiments, and even larger neuronal samples are anticipated in the future. Due to the large size of the models (thousands of parameters), the major issue studied was the generalization performance. Every parameter of the models (not only the weights) was selected optimally using signal processing and machine learning techniques. The models were also compared statistically with respect to the Wiener filter as the baseline. Each of the optimization procedures produced improvements over that baseline for either one of the two datasets or both.
脑机接口领域需要估计从运动皮层区域收集的尖峰序列到行为动物手部运动学的映射。本文对几种线性模型(维纳滤波器、最小均方自适应滤波器、伽马滤波器、子空间维纳滤波器)和非线性模型(时延神经网络和局部线性切换模型)进行了系统研究,这些模型应用于猴子执行运动任务(抓取食物和击打目标)的两个实验数据集。在这些实验中,同时记录了100 - 200个皮层神经元的集合,预计未来会有更大的神经元样本。由于模型规模较大(数千个参数),研究的主要问题是泛化性能。使用信号处理和机器学习技术对模型的每个参数(不仅是权重)进行了最优选择。还将这些模型与作为基线的维纳滤波器进行了统计比较。每个优化过程相对于该基线在两个数据集中的一个或两个上都产生了改进。