Institute for Neural Computation, UC San Diego, United States of America. Department of Bioengineering, UC San Diego, United States of America.
J Neural Eng. 2017 Aug;14(4):041002. doi: 10.1088/1741-2552/aa67a9.
Computation in nervous systems operates with different computational primitives, and on different hardware, than traditional digital computation and is thus subjected to different constraints from its digital counterpart regarding the use of physical resources such as time, space and energy. In an effort to better understand neural computation on a physical medium with similar spatiotemporal and energetic constraints, the field of neuromorphic engineering aims to design and implement electronic systems that emulate in very large-scale integration (VLSI) hardware the organization and functions of neural systems at multiple levels of biological organization, from individual neurons up to large circuits and networks. Mixed analog/digital neuromorphic VLSI systems are compact, consume little power and operate in real time independently of the size and complexity of the model.
This article highlights the current efforts to interface neuromorphic systems with neural systems at multiple levels of biological organization, from the synaptic to the system level, and discusses the prospects for future biohybrid systems with neuromorphic circuits of greater complexity.
Single silicon neurons have been interfaced successfully with invertebrate and vertebrate neural networks. This approach allowed the investigation of neural properties that are inaccessible with traditional techniques while providing a realistic biological context not achievable with traditional numerical modeling methods. At the network level, populations of neurons are envisioned to communicate bidirectionally with neuromorphic processors of hundreds or thousands of silicon neurons. Recent work on brain-machine interfaces suggests that this is feasible with current neuromorphic technology.
Biohybrid interfaces between biological neurons and VLSI neuromorphic systems of varying complexity have started to emerge in the literature. Primarily intended as a computational tool for investigating fundamental questions related to neural dynamics, the sophistication of current neuromorphic systems now allows direct interfaces with large neuronal networks and circuits, resulting in potentially interesting clinical applications for neuroengineering systems, neuroprosthetics and neurorehabilitation.
神经系统中的计算使用与传统数字计算不同的计算原语,并在不同的硬件上运行,因此与数字计算相比,在时间、空间和能量等物理资源的使用方面受到不同的限制。为了更好地理解物理介质上的神经计算,具有相似时空和能量限制的神经形态工程领域旨在设计和实现电子系统,这些系统在非常大规模集成(VLSI)硬件中模拟神经系统的组织和功能,从单个神经元到大型电路和网络,涉及多个生物组织层次。混合模拟/数字神经形态 VLSI 系统紧凑、功耗低,并且可以实时独立于模型的大小和复杂性运行。
本文重点介绍了目前在多个生物组织层次上将神经形态系统与神经系统接口的努力,从突触到系统水平,并讨论了具有更高复杂性神经形态电路的未来生物混合系统的前景。
单个硅神经元已成功与无脊椎动物和脊椎动物神经网络接口。这种方法允许研究传统技术无法访问的神经特性,同时提供传统数值建模方法无法实现的现实生物学背景。在网络水平上,神经元群体被设想与数百或数千个硅神经元的神经形态处理器双向通信。最近关于脑机接口的工作表明,这是可行的,因为目前的神经形态技术已经足够先进。
生物神经元和具有不同复杂性的 VLSI 神经形态系统之间的生物混合接口已经在文献中开始出现。这些接口主要作为一种计算工具,用于研究与神经动力学相关的基本问题,当前神经形态系统的复杂性现在允许与大型神经元网络和电路直接接口,这为神经工程系统、神经假肢和神经康复等领域带来了潜在的有趣的临床应用。