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首页> 外文期刊>Neural Systems and Rehabilitation Engineering, IEEE Transactions on >Closed-Loop Decoder Adaptation on Intermediate Time-Scales Facilitates Rapid BMI Performance Improvements Independent of Decoder Initialization Conditions
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Closed-Loop Decoder Adaptation on Intermediate Time-Scales Facilitates Rapid BMI Performance Improvements Independent of Decoder Initialization Conditions

机译:中间时间尺度上的闭环解码器自适应,有助于快速提高BMI性能,而与解码器初始化条件无关

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摘要

Closed-loop decoder adaptation (CLDA) shows great promise to improve closed-loop brain-machine interface (BMI) performance. Developing adaptation algorithms capable of rapidly improving performance, independent of initial performance, may be crucial for clinical applications where patients have limited movement and sensory abilities due to motor deficits. Given the subject-decoder interactions inherent in closed-loop BMIs, the decoder adaptation time-scale may be of particular importance when initial performance is limited. Here, we present SmoothBatch, a CLDA algorithm which updates decoder parameters on a 1-2 min time-scale using an exponentially weighted sliding average. The algorithm was experimentally tested with one nonhuman primate performing a center-out reaching BMI task. SmoothBatch was seeded four ways with varying offline decoding power: 1) visual observation of a cursor (n = 20), 2) ipsilateral arm movements (n = 8), 3) baseline neural activity ( n = 17), and 4) arbitrary weights (n = 11). SmoothBatch rapidly improved performance regardless of seeding, with performance improvements from 0.018 0.133 successes/min to >;8 successes/min within 13.1 5.5 min (n = 56). After decoder adaptation ceased, the subject maintained high performance. Moreover, performance improvements were paralleled by SmoothBatch convergence, suggesting that CLDA involves a co-adaptation process between the subject and the decoder.
机译:闭环解码器适配(CLDA)有望改善闭环脑机接口(BMI)性能。开发能够快速改善性能而不受初始性能影响的自适应算法,对于由于运动缺陷而患者运动和感觉能力受限的临床应用可能至关重要。给定闭环BMI中固有的主题-解码器交互,当初始性能受到限制时,解码器适应时间标度可能尤为重要。在这里,我们介绍了SmoothBatch,这是一种CLDA算法,它使用指数加权的滑动平均值在1-2分钟的时标上更新解码器参数。该算法是用一种非人类灵长类动物执行一项由中心向外到达BMI任务的实验测试的。 SmoothBatch可以通过四种方式来获得,其离线解码能力各不相同:1)视觉观察光标(n = 20),2)同侧手臂运动(n = 8),3)基线神经活动(n = 17)和4)任意权重(n = 11)。无论播种如何,SmoothBatch均可快速提高性能,在13.1 5.5分钟内将性能从0.018 0.133成功/分钟提高至>; 8成功/分钟(n = 56)。解码器自适应停止后,受试者保持了高性能。此外,SmoothBatch收敛还可以提高性能,这表明CLDA涉及对象与解码器之间的共同适应过程。

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