行为研究中随机前测后测随访试验纵向数据分析方法:潜在变化模型的实用指南。

IF 2.9 3区 医学 Q2 PSYCHOLOGY, CLINICAL
Constance A Mara
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引用次数: 0

摘要

随机前测、后测、随访(RPPF)设计被广泛应用于纵向行为干预研究,以评估治疗的长期疗效。这些设计通常包括将参与者随机分配到治疗和控制条件,并在基线、干预后立即和随访期间进行评估。研究人员主要关注的是在治疗后确定干预是否比对照条件更有效,以及这些影响是否持续或随着时间的推移而改变。本文提出了潜在变化模型(lcm)作为分析随机前测后测随访(RPPF)试验的实用方法,直接估计时间点之间的离散变化和干预对照组的差异。lcm的效用通过STAR(支持治疗依从性方案)试验的应用得到了证明,STAR是一项儿科随机行为临床试验,旨在提高新发癫痫儿童抗癫痫药物(asm)的依从性。通过LCM分析的试验结果与ANCOVA、纵向线性混合效应模型和潜在生长曲线模型分析的结果进行了对比。STAR试验的教程和应用表明,lcm具有显著的优势,包括能够估计随时间的离散变化,控制结果的基线可变性,并将所有纵向数据合并到一个简单的模型中。这些模型对RPPF设计中的干预效果提供了准确而细致的理解,对临床干预研究具有指导意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods for analyzing longitudinal data from randomized pretest-posttest-follow-up trials in behavioral research: a practical guide to latent change models.

Randomized pretest, posttest, follow-up (RPPF) designs are widely used in longitudinal behavioral intervention research to evaluate the efficacy of treatments over time. These designs typically involve random assignment of participants to treatment and control conditions, with assessments conducted at baseline, immediately post-intervention, and during the follow-up period. Researchers primarily focus on determining whether the intervention is more effective than the control condition at post-treatment and whether these effects are sustained or change over time. This paper presents Latent Change Models (LCMs) as a practical approach for analyzing randomized pretest-posttest-follow-up (RPPF) trials, directly estimating discrete changes between timepoints and intervention-control group differences. The utility of LCMs is demonstrated through an application to the STAR (Supporting Treatment Adherence Regimens) trial, a pediatric randomized behavioral clinical trial aimed at improving adherence to anti-seizure medications (ASMs) among children with new-onset epilepsy. The results of the trial analyzed via an LCM are contrasted with the results as analyzed by an ANCOVA, a longitudinal linear mixed-effects model, and a latent growth curve model. The tutorial and application to the STAR trial demonstrate that LCMs offer notable strengths, including the ability to estimate discrete changes over time, control for baseline variability in the outcome, and incorporate all longitudinal data within a single, parsimonious model. These models provide an accurate and nuanced understanding of intervention effects in RPPF designs, with implications for clinical intervention research.

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来源期刊
Journal of Behavioral Medicine
Journal of Behavioral Medicine PSYCHOLOGY, CLINICAL-
CiteScore
5.70
自引率
3.20%
发文量
112
期刊介绍: The Journal of Behavioral Medicine is a broadly conceived interdisciplinary publication devoted to furthering understanding of physical health and illness through the knowledge, methods, and techniques of behavioral science. A significant function of the journal is the application of this knowledge to prevention, treatment, and rehabilitation and to the promotion of health at the individual, community, and population levels.The content of the journal spans all areas of basic and applied behavioral medicine research, conducted in and informed by all related disciplines including but not limited to: psychology, medicine, the public health sciences, sociology, anthropology, health economics, nursing, and biostatistics. Topics welcomed include but are not limited to: prevention of disease and health promotion; the effects of psychological stress on physical and psychological functioning; sociocultural influences on health and illness; adherence to medical regimens; the study of health related behaviors including tobacco use, substance use, sexual behavior, physical activity, and obesity; health services research; and behavioral factors in the prevention and treatment of somatic disorders.  Reports of interdisciplinary approaches to research are particularly welcomed.
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