Kao Jonathan C, Nuyujukian Paul, Ryu Stephen I, Shenoy Krishna V
Department of Electrical EngineeringStanford University.
Department of Electrical Engineering, Department of Bioengineering, and School of Medicine and NeurosurgeryStanford University.
IEEE Trans Biomed Eng. 2017 Apr;64(4):935-945. doi: 10.1109/TBME.2016.2582691. Epub 2016 Jun 21.
Communication neural prostheses aim to restore efficient communication to people with motor neurological injury or disease by decoding neural activity into control signals. These control signals are both analog (e.g., the velocity of a computer mouse) and discrete (e.g., clicking an icon with a computer mouse) in nature. Effective, high-performing, and intuitive-to-use communication prostheses should be capable of decoding both analog and discrete state variables seamlessly. However, to date, the highest-performing autonomous communication prostheses rely on precise analog decoding and typically do not incorporate high-performance discrete decoding. In this report, we incorporated a hidden Markov model (HMM) into an intracortical communication prosthesis to enable accurate and fast discrete state decoding in parallel with analog decoding. In closed-loop experiments with nonhuman primates implanted with multielectrode arrays, we demonstrate that incorporating an HMM into a neural prosthesis can increase state-of-the-art achieved bitrate by 13.9% and 4.2% in two monkeys ( ). We found that the transition model of the HMM is critical to achieving this performance increase. Further, we found that using an HMM resulted in the highest achieved peak performance we have ever observed for these monkeys, achieving peak bitrates of 6.5, 5.7, and 4.7 bps in Monkeys J, R, and L, respectively. Finally, we found that this neural prosthesis was robustly controllable for the duration of entire experimental sessions. These results demonstrate that high-performance discrete decoding can be beneficially combined with analog decoding to achieve new state-of-the-art levels of performance.
通信神经假体旨在通过将神经活动解码为控制信号,来恢复患有运动神经损伤或疾病的人的有效通信。这些控制信号本质上既有模拟信号(例如,计算机鼠标的速度),也有离散信号(例如,用计算机鼠标点击一个图标)。有效、高性能且易于使用的通信假体应该能够无缝解码模拟和离散状态变量。然而,迄今为止,性能最高的自主通信假体依赖于精确的模拟解码,通常不包含高性能的离散解码。在本报告中,我们将隐马尔可夫模型(HMM)纳入皮层内通信假体,以实现与模拟解码并行的准确快速离散状态解码。在对植入多电极阵列的非人类灵长类动物进行的闭环实验中,我们证明,在两只猴子中,将HMM纳入神经假体可使当前最先进的比特率分别提高13.9%和4.2%( )。我们发现,HMM的转移模型对于实现这种性能提升至关重要。此外,我们发现使用HMM产生了我们在这些猴子身上观察到的最高峰值性能,猴子J、R和L的峰值比特率分别达到6.5、5.7和4.7 bps。最后,我们发现这种神经假体在整个实验过程中都能稳健地进行控制。这些结果表明,高性能离散解码可以与模拟解码有益地结合,以达到新的最先进性能水平。