Buch Vivek P, Richardson Andrew G, Brandon Cameron, Stiso Jennifer, Khattak Monica N, Bassett Danielle S, Lucas Timothy H
Department of Neurosurgery, Hospital of the University of Pennsylvania, Philadelphia, PA, United States.
Department of Neuroscience, University of Pennsylvania, Philadelphia, PA, United States.
Front Neurosci. 2018 Nov 1;12:790. doi: 10.3389/fnins.2018.00790. eCollection 2018.
Brain computer interfaces (BCIs) have been applied to sensorimotor systems for many years. However, BCI technology has broad potential beyond sensorimotor systems. The emerging field of cognitive prosthetics, for example, promises to improve learning and memory for patients with cognitive impairment. Unfortunately, our understanding of the neural mechanisms underlying these cognitive processes remains limited in part due to the extensive individual variability in neural coding and circuit function. As a consequence, the development of methods to ascertain optimal control signals for cognitive decoding and restoration remains an active area of inquiry. To advance the field, robust tools are required to quantify time-varying and task-dependent brain states predictive of cognitive performance. Here, we suggest that network science is a natural language in which to formulate and apply such tools. In support of our argument, we offer a simple demonstration of the feasibility of a network approach to BCI control signals, which we refer to as network BCI (nBCI). Finally, in a single subject example, we show that nBCI can reliably predict online cognitive performance and is superior to certain common spectral approaches currently used in BCIs. Our review of the literature and preliminary findings support the notion that nBCI could provide a powerful approach for future applications in cognitive prosthetics.
脑机接口(BCIs)应用于感觉运动系统已有多年。然而,BCI技术在感觉运动系统之外还有广泛的潜力。例如,认知假体这一新兴领域有望改善认知障碍患者的学习和记忆能力。不幸的是,我们对这些认知过程背后的神经机制的理解仍然有限,部分原因是神经编码和回路功能存在广泛的个体差异。因此,确定用于认知解码和恢复的最佳控制信号的方法的开发仍然是一个活跃的研究领域。为了推动该领域的发展,需要强大的工具来量化预测认知表现的随时间变化且依赖于任务的脑状态。在此,我们认为网络科学是一种用于制定和应用此类工具的自然语言。为支持我们的论点,我们提供了一个简单的示例,证明了网络方法用于BCI控制信号的可行性,我们将其称为网络BCI(nBCI)。最后,在一个单受试者示例中,我们表明nBCI能够可靠地预测在线认知表现,并且优于目前BCIs中使用的某些常见频谱方法。我们对文献的综述和初步研究结果支持了这样一种观点,即nBCI可以为未来在认知假体中的应用提供一种强大的方法。