Watts Jeremy, Khojandi Anahita, Shylo Oleg, Ramdhani Ritesh A
Department of Industrial and Systems Engineering, University of Tennessee, Knoxville, TN 37996, USA.
Department of Neurology, Donald and Barbara Zucker School of Medicine at Hofstra/Northwell, Hempstead, NY 11549, USA.
Brain Sci. 2020 Nov 1;10(11):809. doi: 10.3390/brainsci10110809.
Deep brain stimulation (DBS) is a surgical treatment for advanced Parkinson's disease (PD) that has undergone technological evolution that parallels an expansion in clinical phenotyping, neurophysiology, and neuroimaging of the disease state. Machine learning (ML) has been successfully used in a wide range of healthcare problems, including DBS. As computational power increases and more data become available, the application of ML in DBS is expected to grow. We review the literature of ML in DBS and discuss future opportunities for such applications. Specifically, we perform a comprehensive review of the literature from PubMed, the Institute for Scientific Information's Web of Science, Cochrane Database of Systematic Reviews, and Institute of Electrical and Electronics Engineers' (IEEE) Xplore Digital Library for ML applications in DBS. These studies are broadly placed in the following categories: (1) DBS candidate selection; (2) programming optimization; (3) surgical targeting; and (4) insights into DBS mechanisms. For each category, we provide and contextualize the current body of research and discuss potential future directions for the application of ML in DBS.
深部脑刺激(DBS)是一种针对晚期帕金森病(PD)的外科治疗方法,其经历的技术演变与该疾病状态在临床表型、神经生理学和神经影像学方面的扩展并行。机器学习(ML)已成功应用于包括DBS在内的广泛医疗保健问题。随着计算能力的提高和更多数据的可得性,ML在DBS中的应用有望增加。我们回顾了ML在DBS中的文献,并讨论了此类应用的未来机会。具体而言,我们对来自PubMed、科学信息研究所的《科学引文索引》、Cochrane系统评价数据库以及电气和电子工程师协会(IEEE)的Xplore数字图书馆中关于ML在DBS中应用的文献进行了全面回顾。这些研究大致分为以下几类:(1)DBS候选者选择;(2)编程优化;(3)手术靶点定位;(4)对DBS机制的深入了解。对于每一类,我们提供并阐述了当前的研究主体,并讨论了ML在DBS中应用的潜在未来方向。