Girdler Benton, Caldbeck William, Bae Jihye
Department of Electrical and Computer Engineering, University of Kentucky, Lexington, KY, United States.
Front Syst Neurosci. 2022 Aug 26;16:836778. doi: 10.3389/fnsys.2022.836778. eCollection 2022.
Creating flexible and robust brain machine interfaces (BMIs) is currently a popular topic of research that has been explored for decades in medicine, engineering, commercial, and machine-learning communities. In particular, the use of techniques using reinforcement learning (RL) has demonstrated impressive results but is under-represented in the BMI community. To shine more light on this promising relationship, this article aims to provide an exhaustive review of RL's applications to BMIs. Our primary focus in this review is to provide a technical summary of various algorithms used in RL-based BMIs to decode neural intention, without emphasizing preprocessing techniques on the neural signals and reward modeling for RL. We first organize the literature based on the type of RL methods used for neural decoding, and then each algorithm's learning strategy is explained along with its application in BMIs. A comparative analysis highlighting the similarities and uniqueness among neural decoders is provided. Finally, we end this review with a discussion about the current stage of RLBMIs including their limitations and promising directions for future research.
创建灵活且强大的脑机接口(BMI)是当前一个热门的研究课题,在医学、工程、商业和机器学习领域已经探索了数十年。特别是,使用强化学习(RL)技术已取得了令人瞩目的成果,但在BMI领域的应用还较少。为了更深入地探讨这种有前景的关系,本文旨在对RL在BMI中的应用进行详尽综述。本综述的主要重点是提供基于RL的BMI中用于解码神经意图的各种算法的技术总结,而不强调神经信号的预处理技术和RL的奖励建模。我们首先根据用于神经解码的RL方法类型对文献进行整理,然后解释每种算法的学习策略及其在BMI中的应用。提供了突出神经解码器之间异同的比较分析。最后,我们以对RL - BMI当前阶段的讨论结束本综述,包括其局限性和未来研究的有前景方向。