Yoo Jerald, Shoaran Mahsa
Department of Electrical and Computer Engineering, National University of Singapore, Singapore, 117585, Singapore; The N.1 Institute for Health, Singapore, Singapore, 117456, Singapore.
Institute of Electrical Engineering, Center for Neuroprosthetics, École polytechnique federal de Lausanne (EPFL), 1202, Geneva, Switzerland.
Curr Opin Biotechnol. 2021 Dec;72:95-101. doi: 10.1016/j.copbio.2021.10.012. Epub 2021 Nov 1.
Development of neural interface and brain-machine interface (BMI) systems enables the treatment of neurological disorders including cognitive, sensory, and motor dysfunctions. While neural interfaces have steadily decreased in form factor, recent developments target pervasive implantables. Along with advances in electrodes, neural recording, and neurostimulation circuits, integration of disease biomarkers and machine learning algorithms enables real-time and on-site processing of neural activity with no need for power-demanding telemetry. This recent trend on combining artificial intelligence and machine learning with modern neural interfaces will lead to a new generation of low-power, smart, and miniaturized therapeutic devices for a wide range of neurological and psychiatric disorders. This paper reviews the recent development of the 'on-chip' machine learning and neuromorphic architectures, which is one of the key puzzles in devising next-generation clinically viable neural interface systems.
神经接口和脑机接口(BMI)系统的发展使得包括认知、感觉和运动功能障碍在内的神经系统疾病的治疗成为可能。虽然神经接口的外形尺寸在不断减小,但最近的发展目标是普及型可植入设备。随着电极、神经记录和神经刺激电路的进步,疾病生物标志物和机器学习算法的集成使得无需高功耗遥测就能对神经活动进行实时和现场处理。最近将人工智能和机器学习与现代神经接口相结合的趋势将催生新一代低功耗、智能且小型化的治疗设备,用于治疗各种神经和精神疾病。本文综述了“片上”机器学习和神经形态架构的最新进展,这是设计下一代临床可行的神经接口系统的关键难题之一。