Department of Biostatistics and Informatics, Anschutz Medical Campus, University of Colorado, Aurora, CO, United States.
Department of Biostatistics, Johns Hopkins University Bloomberg School of Public Health, Baltimore, MD, United States.
Pain. 2024 Sep 1;165(9):1955-1965. doi: 10.1097/j.pain.0000000000003214. Epub 2024 May 7.
Ecological momentary assessment (EMA) allows for the collection of participant-reported outcomes (PROs), including pain, in the normal environment at high resolution and with reduced recall bias. Ecological momentary assessment is an important component in studies of pain, providing detailed information about the frequency, intensity, and degree of interference of individuals' pain. However, there is no universally agreed on standard for summarizing pain measures from repeated PRO assessment using EMA into a single, clinically meaningful measure of pain. Here, we quantify the accuracy of summaries (eg, mean and median) of pain outcomes obtained from EMA and the effect of thresholding these summaries to obtain binary clinical end points of chronic pain status (yes/no). Data applications and simulations indicate that binarizing empirical estimators (eg, sample mean, random intercept linear mixed model) can perform well. However, linear mixed-effect modeling estimators that account for the nonlinear relationship between average and variability of pain scores perform better for quantifying the true average pain and reduce estimation error by up to 50%, with larger improvements for individuals with more variable pain scores. We also show that binarizing pain scores (eg, <3 and ≥3) can lead to a substantial loss of statistical power (40%-50%). Thus, when examining pain outcomes using EMA, the use of linear mixed models using the entire scale (0-10) is superior to splitting the outcomes into 2 groups (<3 and ≥3) providing greater statistical power and sensitivity.
生态瞬时评估(EMA)允许以高分辨率和减少回忆偏差的方式在正常环境中收集参与者报告的结果(PRO),包括疼痛。生态瞬时评估是疼痛研究的重要组成部分,提供了有关个体疼痛频率、强度和干扰程度的详细信息。然而,目前还没有一种普遍认可的标准,可以将 EMA 中重复 PRO 评估的疼痛测量值汇总为单一的、具有临床意义的疼痛测量值。在这里,我们量化了从 EMA 获得的疼痛结果的摘要(例如平均值和中位数)的准确性,以及将这些摘要阈值化以获得慢性疼痛状态的二元临床终点(是/否)的效果。数据应用和模拟表明,对经验估计量(例如样本均值、随机截距线性混合模型)进行二值化可以表现良好。然而,考虑到疼痛评分的平均值和变异性之间的非线性关系的线性混合效应模型估计量,在量化真实平均疼痛和减少估计误差方面表现更好,最多可减少 50%,对于疼痛评分变化较大的个体,改善效果更大。我们还表明,对疼痛评分进行二值化(例如,<3 和≥3)可能会导致统计功效显著降低(40%-50%)。因此,当使用 EMA 检查疼痛结果时,使用整个量表(0-10)的线性混合模型优于将结果分为两组(<3 和≥3),可以提供更高的统计功效和灵敏度。