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闭环编程使用外部反应进行帕金森病的深部脑刺激。

Closed-loop programming using external responses for deep brain stimulation in Parkinson's disease.

机构信息

Department of Neurology, Juntendo University School of Medicine, Tokyo, Japan.

Department of Neurology, Juntendo University School of Medicine, Tokyo, Japan.

出版信息

Parkinsonism Relat Disord. 2021 Mar;84:47-51. doi: 10.1016/j.parkreldis.2021.01.023. Epub 2021 Jan 30.

Abstract

INTRODUCTION

Deep brain stimulation (DBS) is an established treatment for Parkinson's disease (PD). Clinicians face various challenges in adjusting stimulation parameters and configurations in clinical DBS settings owing to inexperience, time constraints, and recent advances in DBS technology that have expanded the number of possible contact configurations. We aimed to assess the efficacy of a closed-loop algorithm (CLA) for the DBS-programming method using external motion sensor-based motor assessments in patients with PD.

METHODS

In this randomized, double-blind, crossover study, we enrolled 12 patients who underwent eight-ring-contact DBS lead implantations bilaterally in the subthalamic nucleus. The DBS settings of the participants were programmed using a standard of care (SOC) and CLA method. The clinical effects of both programming methods were assessed in a randomized crossover fashion. The outcomes were evaluated using the Unified Parkinson's Disease Scale part III (UPDRS-III) and sensor-based scores for baseline (medication-off/stimulation-off) and both programming methods. The number of programming steps required for each programming method was also recorded.

RESULTS

The UPDRS-III scores and sensor-based scores were significantly improved by SOC and CLA settings compared to the baseline. No statistical difference was observed between SOC and CLA. The programming steps were significantly reduced in the CLA settings compared to those in the SOC. No serious adverse events were observed.

CONCLUSION

CLA can optimize DBS settings prospectively with similar therapeutic benefits as that of the SOC and reduce the number of programming steps. Automated optimization of DBS settings would reduce the burden of programming for both clinicians and patients.

摘要

简介

深部脑刺激(DBS)是一种已确立的治疗帕金森病(PD)的方法。由于经验不足、时间限制以及 DBS 技术的最新进展扩大了可能的接触配置数量,临床医生在临床 DBS 设置中调整刺激参数和配置时面临各种挑战。我们旨在评估使用基于外部运动传感器的运动评估的闭环算法(CLA)在 PD 患者中的 DBS 编程方法的疗效。

方法

在这项随机、双盲、交叉研究中,我们招募了 12 名双侧丘脑底核接受 8 环接触 DBS 导联植入的患者。参与者的 DBS 设置使用标准护理(SOC)和 CLA 方法进行编程。以随机交叉方式评估两种编程方法的临床效果。使用统一帕金森病评定量表第 3 部分(UPDRS-III)和基于传感器的评分评估基线(药物停用/刺激停用)和两种编程方法的结果。还记录了每种编程方法所需的编程步骤数。

结果

与基线相比,SOC 和 CLA 设置可显著改善 UPDRS-III 评分和基于传感器的评分。SOC 和 CLA 之间没有观察到统计学差异。与 SOC 相比,CLA 设置中的编程步骤明显减少。未观察到严重不良事件。

结论

CLA 可以前瞻性地优化 DBS 设置,具有与 SOC 相似的治疗益处,并减少编程步骤的数量。DBS 设置的自动优化将减轻临床医生和患者的编程负担。

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