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迈向帕金森病深部脑刺激的闭环优化:计算模型的概念与经验教训

Toward closed-loop optimization of deep brain stimulation for Parkinson's disease: concepts and lessons from a computational model.

作者信息

Feng Xiao-Jiang, Greenwald Brian, Rabitz Herschel, Shea-Brown Eric, Kosut Robert

机构信息

Department of Chemistry, Princeton University, Princeton, NJ 08544, USA.

出版信息

J Neural Eng. 2007 Jun;4(2):L14-21. doi: 10.1088/1741-2560/4/2/L03. Epub 2007 Feb 22.

Abstract

Deep brain stimulation (DBS) of the subthalamic nucleus with periodic, high-frequency pulse trains is an increasingly standard therapy for advanced Parkinson's disease. Here, we propose that a closed-loop global optimization algorithm may identify novel DBS waveforms that could be more effective than their high-frequency counterparts. We use results from a computational model of the Parkinsonian basal ganglia to illustrate general issues relevant to eventual clinical or experimental tests of such an algorithm. Specifically, while the relationship between DBS characteristics and performance is highly complex, global search methods appear able to identify novel and effective waveforms with convergence rates that are acceptably fast to merit further investigation in laboratory or clinical settings.

摘要

采用周期性高频脉冲序列对丘脑底核进行深部脑刺激(DBS)是晚期帕金森病越来越常用的标准治疗方法。在此,我们提出一种闭环全局优化算法可能识别出比高频脉冲更有效的新型DBS波形。我们利用帕金森病基底神经节计算模型的结果来说明与该算法最终临床或实验测试相关的一般问题。具体而言,虽然DBS特征与性能之间的关系高度复杂,但全局搜索方法似乎能够识别出新型有效波形,其收敛速度足够快,值得在实验室或临床环境中进一步研究。

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