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基于移动健康的经验抽样法用于识别血液透析患者日常生活中的疲劳情况。

mHealth-based experience sampling method to identify fatigue in the context of daily life in haemodialysis patients.

作者信息

Brys Astrid D H, Stifft Frank, Van Heugten Caroline M, Bossola Maurizio, Gambaro Giovanni, Lenaert Bert

机构信息

Department of Neuropsychology and Psychopharmacology, Faculty of Psychology and Neuroscience, Maastricht University, Maastricht, The Netherlands.

Department of Internal Medicine, Division of Nephrology, Zuyderland Medical Centre, Sittard-Geleen, The Netherlands.

出版信息

Clin Kidney J. 2021 Jan;14(1):245-254. doi: 10.1093/ckj/sfaa124.

Abstract

BACKGROUND

Fatigue in haemodialysis (HD) patients is a prevalent but complex symptom impacted by biological, behavioural, psychological and social variables. Conventional retrospective fatigue questionnaires cannot provide detailed insights into symptom variability in daily life and related factors. The experience sampling methodology (ESM) overcomes these limitations through repeated momentary assessments in patients' natural environments using digital questionnaires. This study aimed to gain in-depth understanding of HD patients' diurnal fatigue patterns and related variables using a mobile Health (mHealth) ESM application and sought to better understand the nature of their interrelationships.

METHODS

Forty HD patients used the mHealth ESM application for 7days to assess momentary fatigue and potentially related variables, including daily activities, self-reported physical activity, social company, location and mood.

RESULTS

Multilevel regression analyses of momentary observations (=1777) revealed that fatigue varied between and within individuals. Fatigue was significantly related to HD treatment days, type of daily activity, mood and sleep quality. Time-lagged analyses showed that HD predicted higher fatigue scores at a later time point (β = 0.22, P=0.013). Interestingly, higher momentary fatigue also significantly predicted more depressed feelings at a later time point (β = 0.05, P=0.019) but not the other way around.

CONCLUSIONS

ESM offers novel insights into fatigue in chronic HD patients by capturing informative symptom variability in the flow of daily life. Electronic ESM as a clinical application may help us better understand fatigue in HD patients by providing personalized information about its course and relationship with other variables in daily life, paving the way towards personalized interventions.

摘要

背景

血液透析(HD)患者的疲劳是一种普遍但复杂的症状,受到生物学、行为、心理和社会变量的影响。传统的回顾性疲劳问卷无法详细洞察日常生活中的症状变异性及相关因素。经验取样法(ESM)通过在患者自然环境中使用数字问卷进行反复的即时评估,克服了这些局限性。本研究旨在使用移动健康(mHealth)经验取样法应用程序深入了解HD患者的日间疲劳模式及相关变量,并试图更好地理解它们之间相互关系的本质。

方法

40名HD患者使用mHealth经验取样法应用程序7天,以评估即时疲劳及潜在相关变量,包括日常活动、自我报告的身体活动、社交陪伴、位置和情绪。

结果

对即时观察结果(=1777)的多水平回归分析显示,疲劳在个体之间和个体内部存在差异。疲劳与HD治疗天数、日常活动类型、情绪和睡眠质量显著相关。时间滞后分析表明,HD在稍后时间点预测更高的疲劳得分(β = 0.22,P = 0.013)。有趣的是,更高的即时疲劳在稍后时间点也显著预测更抑郁的情绪(β = 0.05,P = 0.019),但反之则不然。

结论

经验取样法通过捕捉日常生活流程中有价值的症状变异性,为慢性HD患者疲劳提供了新的见解。作为一种临床应用的电子经验取样法可能有助于我们通过提供关于疲劳过程及其与日常生活中其他变量关系的个性化信息,更好地理解HD患者的疲劳,为个性化干预铺平道路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3756/7857808/87982eeb72c0/sfaa124f1.jpg

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