Neuromorphic neuromodulation: Towards the next generation of closed-loop neurostimulation.

IF 2.2 Q2 MULTIDISCIPLINARY SCIENCES
PNAS nexus Pub Date : 2024-10-30 eCollection Date: 2024-11-01 DOI:10.1093/pnasnexus/pgae488
Luis Fernando Herbozo Contreras, Nhan Duy Truong, Jason K Eshraghian, Zhangyu Xu, Zhaojing Huang, Thomas Vincenzo Bersani-Veroni, Isabelle Aguilar, Wing Hang Leung, Armin Nikpour, Omid Kavehei
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引用次数: 0

Abstract

Neuromodulation techniques have emerged as promising approaches for treating a wide range of neurological disorders, precisely delivering electrical stimulation to modulate abnormal neuronal activity. While leveraging the unique capabilities of AI holds immense potential for responsive neurostimulation, it appears as an extremely challenging proposition where real-time (low-latency) processing, low-power consumption, and heat constraints are limiting factors. The use of sophisticated AI-driven models for personalized neurostimulation depends on the back-telemetry of data to external systems (e.g. cloud-based medical mesosystems and ecosystems). While this can be a solution, integrating continuous learning within implantable neuromodulation devices for several applications, such as seizure prediction in epilepsy, is an open question. We believe neuromorphic architectures hold an outstanding potential to open new avenues for sophisticated on-chip analysis of neural signals and AI-driven personalized treatments. With more than three orders of magnitude reduction in the total data required for data processing and feature extraction, the high power- and memory-efficiency of neuromorphic computing to hardware-firmware co-design can be considered as the solution-in-the-making to resource-constraint implantable neuromodulation systems. This perspective introduces the concept of Neuromorphic Neuromodulation, a new breed of closed-loop responsive feedback system. It highlights its potential to revolutionize implantable brain-machine microsystems for patient-specific treatment.

神经形态神经调制:实现下一代闭环神经刺激。
神经调控技术已成为治疗各种神经系统疾病的有效方法,它能精确地提供电刺激以调节异常的神经元活动。虽然利用人工智能的独特能力为响应式神经刺激带来了巨大的潜力,但这似乎是一个极具挑战性的命题,因为实时(低延迟)处理、低功耗和热量限制都是限制因素。将复杂的人工智能驱动模型用于个性化神经刺激取决于将数据回传至外部系统(如基于云的医疗中间系统和生态系统)。虽然这可以作为一种解决方案,但在植入式神经调控设备中集成持续学习功能以实现多种应用(如癫痫发作预测)仍是一个有待解决的问题。我们相信,神经形态架构具有卓越的潜力,能为复杂的片上神经信号分析和人工智能驱动的个性化治疗开辟新的途径。由于数据处理和特征提取所需的总数据量减少了三个数量级以上,神经形态计算的高能效和内存效率以及硬件-固件协同设计可被视为资源受限的植入式神经调控系统的解决方案。本视角介绍了神经形态神经调制的概念,这是一种新型闭环响应反馈系统。它强调了神经形态神经调制系统在革新用于特定患者治疗的植入式脑机微型系统方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
1.80
自引率
0.00%
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