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采用经验抽样数据对帕金森病患者症状进行的网络分析:一项 n = 1 的研究。

Network analysis of symptoms in a Parkinson patient using experience sampling data: An n = 1 study.

机构信息

School for Mental Health and Neuroscience (MHeNS), Maastricht University, Maastricht, the Netherlands.

Department of Neurology, Maastricht University Medical Center, Maastricht, the Netherlands.

出版信息

Mov Disord. 2018 Dec;33(12):1938-1944. doi: 10.1002/mds.93. Epub 2018 Oct 4.

Abstract

BACKGROUND

Around 50% of Parkinson's disease patients experience motor fluctuations after long-term treatment with levodopa. These fluctuations may be accompanied by mood fluctuations. Routine cross-sectional assessments cannot capture the extent of these motor and mood fluctuations and their possible associations. Experience sampling techniques that use frequently repeated measurements of symptoms over time are able to capture such fluctuations. Based on such data, longitudinal associations between symptoms can be studied using network analysis.

AIM

The purpose of this study is to identify longitudinal associations between motor symptoms and mood states in a patient with Parkinson's disease.

METHODS

A 53-year-old man with Parkinson's disease and motor fluctuations collected experience sampling data during 34 consecutive days. A set of dependent variables included tremor, rigidity, balance problems, and "on/off" state, and the mood variables anxiety, cheerful, and "down." Independent variables were the same variables assessed at the preceding measurement. Regression coefficients were calculated and presented in a network graph.

RESULTS

In this patient, anxiety and cheerfulness had a central position within the symptom network. Higher anxiety was prospectively associated with increased rigidity and tremor and with feeling "down." Cheerfulness was associated with less tremor. Balance problems were not influenced by cheerfulness nor anxiety, but increased balance problems were associated with reduced cheerfulness at the next assessment. Feeling "down" did not influence self-reported motor symptom severity at the next assessment.

CONCLUSION

This n = 1 study shows that network analysis of experience sampling data may reveal longitudinal associations of self-reported motor symptoms and mood states that may have relevance for treatment strategies. © 2018 International Parkinson and Movement Disorder Society.

摘要

背景

约 50%的帕金森病患者在长期使用左旋多巴治疗后会出现运动波动。这些波动可能伴有情绪波动。常规的横断面评估无法捕捉这些运动和情绪波动的程度及其可能的关联。使用症状随时间频繁重复测量的经验采样技术能够捕捉到这些波动。基于这些数据,可以使用网络分析研究症状之间的纵向关联。

目的

本研究的目的是确定帕金森病患者运动症状和情绪状态之间的纵向关联。

方法

一名 53 岁的帕金森病伴运动波动男性患者在 34 天内连续采集经验采样数据。一组因变量包括震颤、僵直、平衡问题和“开-关”状态,以及情绪变量焦虑、愉快和“低落”。自变量为前一次测量评估的相同变量。计算回归系数并以网络图形式呈现。

结果

在该患者中,焦虑和愉快在症状网络中处于中心位置。较高的焦虑与僵直和震颤增加以及“低落”感觉呈前瞻性相关。愉快与震颤减少相关。愉快和焦虑都不会影响平衡问题,但下一次评估时平衡问题增加与愉快度降低相关。“低落”感觉不会影响下一次评估时的自我报告运动症状严重程度。

结论

这项 n = 1 的研究表明,经验采样数据的网络分析可能揭示自我报告的运动症状和情绪状态之间的纵向关联,这可能与治疗策略相关。 © 2018 国际帕金森病和运动障碍学会。

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