作者
JB Wagenaar, V Ventura, DJ Weber
发表日期
2011/1/19
期刊
Journal of neural engineering
卷号
8
期号
1
页码范围
016002
出版商
IOP Publishing
简介
Kinematic state feedback is important for neuroprostheses to generate stable and adaptive movements of an extremity. State information, represented in the firing rates of populations of primary afferent (PA) neurons, can be recorded at the level of the dorsal root ganglia (DRG). Previous work in cats showed the feasibility of using DRG recordings to predict the kinematic state of the hind limb using reverse regression. Although accurate decoding results were attained, reverse regression does not make efficient use of the information embedded in the firing rates of the neural population. In this paper, we present decoding results based on state-space modeling, and show that it is a more principled and more efficient method for decoding the firing rates in an ensemble of PA neurons. In particular, we show that we can extract confounded information from neurons that respond to multiple kinematic parameters, and that …
引用总数
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学术搜索中的文章
JB Wagenaar, V Ventura, DJ Weber - Journal of neural engineering, 2011