Multi-gesture drag-and-drop decoding in a 2D iBCI control task.

Jacob T Gusman, Tommy Hosman, Rekha Crawford, Tyler Singer-Clark, Anastasia Kapitonava, Jessica N Kelemen, Nick Hahn, Jaimie M Henderson, Leigh R Hochberg, John D Simeral, Carlos E Vargas-Irwin
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Abstract

Objective. Intracortical brain-computer interfaces (iBCIs) have demonstrated the ability to enable point and click as well as reach and grasp control for people with tetraplegia. However, few studies have investigated iBCIs during long-duration discrete movements that would enable common computer interactions such as 'click-and-hold' or 'drag-and-drop'.Approach. Here, we examined the performance of multi-class and binary (attempt/no-attempt) classification of neural activity in the left precentral gyrus of two BrainGate2 clinical trial participants performing hand gestures for 1, 2, and 4 s in duration. We then designed a novel 'latch decoder' that utilizes parallel multi-class and binary decoding processes and evaluated its performance on data from isolated sustained gesture attempts and a multi-gesture drag-and-drop task.Main results. Neural activity during sustained gestures revealed a marked decrease in the discriminability of hand gestures sustained beyond 1 s. Compared to standard direct decoding methods, the Latch decoder demonstrated substantial improvement in decoding accuracy for gestures performed independently or in conjunction with simultaneous 2D cursor control.Significance. This work highlights the unique neurophysiologic response patterns of sustained gesture attempts in human motor cortex and demonstrates a promising decoding approach that could enable individuals with tetraplegia to intuitively control a wider range of consumer electronics using an iBCI.

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二维iBCI控制任务中的多手势拖放解码。
目的:脑机皮质内接口(ibci)已被证明能够为四肢瘫痪患者提供点、点击以及伸手和抓握控制。然而,很少有研究在长时间的离散运动中调查ibci,这些运动可以实现常见的计算机交互,如“点击-按住”或“拖放”。方法:在这里,我们检查了两名bringate2临床试验参与者在持续1、2和4秒的时间内进行手势的左中央前回神经活动的多类别和二元(尝试/不尝试)分类的表现。然后,我们设计了一种新的“锁存解码器”,该解码器利用并行的多类和二进制解码过程,并评估了其在来自孤立的持续手势尝试和多手势拖放任务的数据上的性能。主要结果:持续手势时的神经活动显示,持续超过1秒的手势的可辨别性显著降低。与标准的直接解码方法相比,锁存解码器在独立执行或与同时进行的2D光标控制相结合的手势解码精度方面有了实质性的提高。意义:这项工作强调了人类运动皮层中持续手势尝试的独特神经生理反应模式,并展示了一种有前途的解码方法,可以使四肢瘫痪患者直观地使用iBCI控制更大范围的消费电子产品。
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