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用于皮层内脑机接口的自校准分类器。

Self-recalibrating classifiers for intracortical brain-computer interfaces.

作者信息

Bishop William, Chestek Cynthia C, Gilja Vikash, Nuyujukian Paul, Foster Justin D, Ryu Stephen I, Shenoy Krishna V, Yu Byron M

机构信息

Department of Machine Learning, Carnegie Mellon University, Pittsburgh, PA 15213, USA. Center for the Neural Basis of Cognition, Carnegie Mellon University, Pittsburgh, PA 15213, USA.

出版信息

J Neural Eng. 2014 Apr;11(2):026001. doi: 10.1088/1741-2560/11/2/026001. Epub 2014 Feb 6.

Abstract

OBJECTIVE

Intracortical brain-computer interface (BCI) decoders are typically retrained daily to maintain stable performance. Self-recalibrating decoders aim to remove the burden this may present in the clinic by training themselves autonomously during normal use but have only been developed for continuous control. Here we address the problem for discrete decoding (classifiers).

APPROACH

We recorded threshold crossings from 96-electrode arrays implanted in the motor cortex of two rhesus macaques performing center-out reaches in 7 directions over 41 and 36 separate days spanning 48 and 58 days in total for offline analysis.

MAIN RESULTS

We show that for the purposes of developing a self-recalibrating classifier, tuning parameters can be considered as fixed within days and that parameters on the same electrode move up and down together between days. Further, drift is constrained across time, which is reflected in the performance of a standard classifier which does not progressively worsen if it is not retrained daily, though overall performance is reduced by more than 10% compared to a daily retrained classifier. Two novel self-recalibrating classifiers produce a ~15% increase in classification accuracy over that achieved by the non-retrained classifier to nearly recover the performance of the daily retrained classifier.

SIGNIFICANCE

We believe that the development of classifiers that require no daily retraining will accelerate the clinical translation of BCI systems. Future work should test these results in a closed-loop setting.

摘要

目的

皮层内脑机接口(BCI)解码器通常需要每天重新训练以保持稳定性能。自校准解码器旨在通过在正常使用过程中自主训练来消除这种情况可能给临床带来的负担,但目前仅针对连续控制进行了开发。在此,我们解决离散解码(分类器)的问题。

方法

我们记录了植入两只恒河猴运动皮层的96电极阵列的阈值交叉情况,这两只猴子在41天和36天内分别朝着7个方向进行中心外伸展,总共跨越48天和58天,用于离线分析。

主要结果

我们表明,为了开发自校准分类器,调谐参数在数天内可视为固定,且同一电极上的参数在不同天之间会一起上下变动。此外,漂移在时间上受到限制,这反映在标准分类器的性能上,如果不每天重新训练,其性能不会逐渐恶化,不过与每天重新训练的分类器相比,总体性能降低了10%以上。两种新型自校准分类器的分类准确率比未重新训练的分类器提高了约15%,几乎恢复了每天重新训练的分类器的性能。

意义

我们认为,无需每天重新训练的分类器的开发将加速BCI系统的临床转化。未来的工作应在闭环环境中测试这些结果。

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