神经系统接口的神经形态生物电子医学:从神经计算原语到医学应用

IF 5 Q1 ENGINEERING, BIOMEDICAL
Elisa Donati, G. Indiveri
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引用次数: 5

摘要

生物电子医学通过感应、处理和调节人体神经系统中产生的电子信号来治疗慢性疾病,这些信号被称为“神经信号”。虽然电子电路在这一领域已经使用了几年,但微电子技术的进步现在允许越来越准确和有针对性的治疗方案。例如,现在可以调节特定神经纤维中的信号,从而靶向特定疾病。然而,要充分利用这种方法,至关重要的是要了解神经信号的哪些方面是重要的,刺激的效果是什么,以及什么电路设计可以最好地实现期望的结果。神经形态电子电路代表了实现这一目标的一种很有前途的设计风格:其超低功率特性和生物学上合理的时间常数使其成为构建与真实神经处理系统的最佳接口的理想候选者,从而实现与生物组织的实时闭环交互。在本文中,我们强调了神经形态电路的主要特征,这些电路非常适合与神经系统接口,并展示了如何使用它们来构建闭环混合人工和生物神经处理系统。我们给出了可以实现的神经计算原语的例子,用于对这些闭环系统中感测到的信号进行计算,并讨论了将其输出用于神经刺激的方法。我们描述了遵循这种方法的应用程序示例,强调了需要解决的开放挑战,并提出了克服当前限制所需的行动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neuromorphic bioelectronic medicine for nervous system interfaces: from neural computational primitives to medical applications
Bioelectronic medicine treats chronic diseases by sensing, processing, and modulating the electronic signals produced in the nervous system of the human body, labeled ‘neural signals’. While electronic circuits have been used for several years in this domain, the progress in microelectronic technology is now allowing increasingly accurate and targeted solutions for therapeutic benefits. For example, it is now becoming possible to modulate signals in specific nerve fibers, hence targeting specific diseases. However, to fully exploit this approach it is crucial to understand what aspects of the nerve signals are important, what is the effect of the stimulation, and what circuit designs can best achieve the desired result. Neuromorphic electronic circuits represent a promising design style for achieving this goal: their ultra-low power characteristics and biologically plausible time constants make them the ideal candidate for building optimal interfaces to real neural processing systems, enabling real-time closed-loop interactions with the biological tissue. In this paper, we highlight the main features of neuromorphic circuits that are ideally suited for interfacing with the nervous system and show how they can be used to build closed-loop hybrid artificial and biological neural processing systems. We present examples of neural computational primitives that can be implemented for carrying out computation on the signals sensed in these closed-loop systems and discuss the way to use their outputs for neural stimulation. We describe examples of applications that follow this approach, highlight open challenges that need to be addressed, and propose actions required to overcome current limitations.
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CiteScore
9.40
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