Sajobi Tolulope T, Lix Lisa M, Singh Gurbakhshash, Lowerison Mark, Engbers Jordan, Mayo Nancy E
Department of Community Health Sciences, University of Calgary, 3280 Hospital Drive NW, Calgary, T2N 4Z6, Canada,
Qual Life Res. 2015 Mar;24(3):529-40. doi: 10.1007/s11136-014-0824-3. Epub 2014 Oct 26.
Response shift (RS) is an important phenomenon that influences the assessment of longitudinal changes in health-related quality of life (HRQOL) studies. Given that RS effects are often small, missing data due to attrition or item non-response can contribute to failure to detect RS effects. Since missing data are often encountered in longitudinal HRQOL data, effective strategies to deal with missing data are important to consider. This study aims to compare different imputation methods on the detection of reprioritization RS in the HRQOL of caregivers of stroke survivors.
Data were from a Canadian multi-center longitudinal study of caregivers of stroke survivors over a one-year period. The Stroke Impact Scale physical function score at baseline, with a cutoff of 75, was used to measure patient stroke severity for the reprioritization RS analysis. Mean imputation, likelihood-based expectation-maximization imputation, and multiple imputation methods were compared in test procedures based on changes in relative importance weights to detect RS in SF-36 domains over a 6-month period. Monte Carlo simulation methods were used to compare the statistical powers of relative importance test procedures for detecting RS in incomplete longitudinal data under different missing data mechanisms and imputation methods.
Of the 409 caregivers, 15.9 and 31.3 % of them had missing data at baseline and 6 months, respectively. There were no statistically significant changes in relative importance weights on any of the domains when complete-case analysis was adopted. But statistical significant changes were detected on physical functioning and/or vitality domains when mean imputation or EM imputation was adopted. There were also statistically significant changes in relative importance weights for physical functioning, mental health, and vitality domains when multiple imputation method was adopted. Our simulations revealed that relative importance test procedures were least powerful under complete-case analysis method and most powerful when a mean imputation or multiple imputation method was adopted for missing data, regardless of the missing data mechanism and proportion of missing data.
Test procedures based on relative importance measures are sensitive to the type and amount of missing data and imputation method. Relative importance test procedures based on mean imputation and multiple imputation are recommended for detecting RS in incomplete data.
反应转移(RS)是一种影响健康相关生活质量(HRQOL)纵向变化评估的重要现象。鉴于RS效应通常较小,因失访或项目无应答导致的缺失数据可能会导致无法检测到RS效应。由于纵向HRQOL数据中经常会遇到缺失数据,因此考虑有效的缺失数据处理策略很重要。本研究旨在比较不同的插补方法在检测中风幸存者照料者HRQOL中的重新排序RS方面的效果。
数据来自一项针对中风幸存者照料者的加拿大多中心纵向研究,为期一年。在重新排序RS分析中,使用基线时中风影响量表的身体功能评分(临界值为75)来衡量患者中风的严重程度。在基于相对重要性权重变化的测试程序中,比较了均值插补、基于似然的期望最大化插补和多重插补方法,以检测6个月内SF-36领域的RS。采用蒙特卡罗模拟方法比较不同缺失数据机制和插补方法下,检测不完全纵向数据中RS的相对重要性测试程序的统计功效。
在409名照料者中,分别有15.9%和31.3%的人在基线和6个月时存在缺失数据。采用完全病例分析时,任何领域的相对重要性权重均无统计学显著变化。但采用均值插补或期望最大化插补时,在身体功能和/或活力领域检测到了统计学显著变化。采用多重插补方法时,身体功能、心理健康和活力领域的相对重要性权重也有统计学显著变化。我们的模拟结果表明,无论缺失数据机制和缺失数据比例如何,相对重要性测试程序在完全病例分析方法下功效最低,在采用均值插补或多重插补方法处理缺失数据时功效最高。
基于相对重要性度量的测试程序对缺失数据的类型和数量以及插补方法敏感。建议采用基于均值插补和多重插补的相对重要性测试程序来检测不完全数据中的RS。