脑深部刺激
丘脑底核
医学
局部场电位
帕金森病
多巴胺能
方差分析
运动症状
左旋多巴
物理疗法
物理医学与康复
麻醉
疾病
心理学
内科学
神经科学
多巴胺
作者
Mattia Arlotti,Sara Marceglia,Guglielmo Foffani,Jens Volkmann,Andrés M. Lozano,Elena Moro,Filippo Cogiamanian,Marco Prenassi,Tommaso Bocci,Francesca Cortese,Paolo Rampini,Sergio Barbieri,Alberto Priori
出处
期刊:Neurology
[Lippincott Williams & Wilkins]
日期:2018-02-14
卷期号:90 (11)
被引量:224
标识
DOI:10.1212/wnl.0000000000005121
摘要
Objectives
To assess the feasibility and clinical efficacy of local field potentials (LFPs)–based adaptive deep brain stimulation (aDBS) in patients with advanced Parkinson disease (PD) during daily activities in an open-label, nonblinded study. Methods
We monitored neurophysiologic and clinical fluctuations during 2 perioperative experimental sessions lasting for up to 8 hours. On the first day, the patient took his/her daily medication, while on the second, he/she additionally underwent subthalamic nucleus aDBS driven by LFPs beta band power. Results
The beta band power correlated in both experimental sessions with the patient9s clinical state (Pearson correlation coefficient r = 0.506, p < 0.001, and r = 0.477, p < 0.001). aDBS after LFP changes was effective (30% improvement without medication [3-way analysis of variance, interaction day × medication p = 0.036; 30.5 ± 3.4 vs 22.2 ± 3.3, p = 0.003]), safe, and well tolerated in patients performing regular daily activities and taking additional dopaminergic medication. aDBS was able to decrease DBS amplitude during motor "on" states compared to "off" states (paired t test p = 0.046), and this automatic adjustment of STN-DBS prevented dyskinesias. Conclusions
The main findings of our study are that aDBS is technically feasible in everyday life and provides a safe, well-tolerated, and effective treatment method for the management of clinical fluctuations. Classification of evidence
This study provides Class IV evidence that for patients with advanced PD, aDBS is safe, well tolerated, and effective in controlling PD motor symptoms.
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