Gage Gregory J, Ludwig Kip A, Otto Kevin J, Ionides Edward L, Kipke Daryl R
Department of Biomedical Engineering, University of Michigan, Ann Arbor, MI, USA.
J Neural Eng. 2005 Jun;2(2):52-63. doi: 10.1088/1741-2560/2/2/006. Epub 2005 May 31.
The ability to control a prosthetic device directly from the neocortex has been demonstrated in rats, monkeys and humans. Here we investigate whether neural control can be accomplished in situations where (1) subjects have not received prior motor training to control the device (naive user) and (2) the neural encoding of movement parameters in the cortex is unknown to the prosthetic device (naive controller). By adopting a decoding strategy that identifies and focuses on units whose firing rate properties are best suited for control, we show that naive subjects mutually adapt to learn control of a neural prosthetic system. Six untrained Long-Evans rats, implanted with silicon micro-electrodes in the motor cortex, learned cortical control of an auditory device without prior motor characterization of the recorded neural ensemble. Single- and multi-unit activities were decoded using a Kalman filter to represent an audio "cursor" (90 ms tone pips ranging from 250 Hz to 16 kHz) which subjects controlled to match a given target frequency. After each trial, a novel adaptive algorithm trained the decoding filter based on correlations of the firing patterns with expected cursor movement. Each behavioral session consisted of 100 trials and began with randomized decoding weights. Within 7 +/- 1.4 (mean +/- SD) sessions, all subjects were able to significantly score above chance (P < 0.05, randomization method) in a fixed target paradigm. Training lasted 24 sessions in which both the behavioral performance and signal to noise ratio of the peri-event histograms increased significantly (P < 0.01, ANOVA). Two rats continued training on a more complex task using a bilateral, two-target control paradigm. Both subjects were able to significantly discriminate the target tones (P < 0.05, Z-test), while one subject demonstrated control above chance (P < 0.05, Z-test) after 12 sessions and continued improvement with many sessions achieving over 90% correct targets. Dynamic analysis of binary trial responses indicated that early learning for this subject occurred during session 6. This study demonstrates that subjects can learn to generate neural control signals that are well suited for use with external devices without prior experience or training.
在大鼠、猴子和人类身上已证实能够直接从新皮层控制假肢装置。在此,我们研究在以下情况下是否能实现神经控制:(1)受试者未接受过控制该装置的先前运动训练(未受过训练的使用者);(2)假肢装置不了解皮层中运动参数的神经编码(未受过训练的控制器)。通过采用一种解码策略,该策略识别并聚焦于其放电率特性最适合控制的神经元,我们表明未受过训练的受试者相互适应以学习控制神经假肢系统。六只未受过训练的Long-Evans大鼠,在运动皮层植入了硅微电极,在没有对记录的神经集群进行先前运动特征描述的情况下,学会了对听觉装置的皮层控制。使用卡尔曼滤波器对单单元和多单元活动进行解码,以表示一个音频“光标”(250赫兹至16千赫兹范围内的90毫秒音调脉冲),受试者控制该光标以匹配给定的目标频率。每次试验后,一种新颖的自适应算法根据放电模式与预期光标运动的相关性训练解码滤波器。每个行为环节由100次试验组成,并以随机解码权重开始。在7±1.4(平均值±标准差)个环节内,所有受试者在固定目标范式中都能够显著地高于随机水平得分(P<0.05,随机化方法)。训练持续24个环节,在此期间行为表现和事件周围直方图的信噪比均显著提高(P<0.01,方差分析)。两只大鼠继续使用双侧双目标控制范式进行更复杂任务的训练。两只受试者都能够显著区分目标音调(P<0.05,Z检验),而其中一只受试者在12个环节后表现出高于随机水平的控制(P<0.05,Z检验),并且在许多环节中持续改进,实现了超过90%的正确目标。对二元试验反应的动态分析表明,该受试者的早期学习发生在第6个环节。这项研究表明,受试者无需先前经验或训练就能学会生成非常适合与外部设备配合使用的神经控制信号。