Department of Pharmaceutical Sciences, Center for Education and Drug Abuse Research, University of Pittsburgh, 3520 Forbes Avenue, 2nd Floor, Room 226, Pittsburgh, PA 15213, USA.
Prev Sci. 2013 Jun;14(3):267-78. doi: 10.1007/s11121-012-0311-4.
Psychosocial prevention research lacks evidence from intensive within-person lines of research to understand idiographic processes related to development and response to intervention. Such data could be used to fill gaps in the literature and expand the study design options for prevention researchers, including lower-cost yet rigorous studies (e.g., for program evaluations), pilot studies, designs to test programs for low prevalence outcomes, selective/indicated/adaptive intervention research, and understanding of differential response to programs. This study compared three competing analytic strategies designed for this type of research: autoregressive moving average, mixed model trajectory analysis, and P-technique. Illustrative time series data were from a pilot study of an intervention for nursing home residents with diabetes (N = 4) designed to improve control of blood glucose. A within-person, intermittent baseline design was used. Intervention effects were detected using each strategy for the aggregated sample and for individual patients. The P-technique model most closely replicated observed glucose levels. ARIMA and P-technique models were most similar in terms of estimated intervention effects and modeled glucose levels. However, ARIMA and P-technique also were more sensitive to missing data, outliers and number of observations. Statistical testing suggested that results generalize both to other persons as well as to idiographic, longitudinal processes. This study demonstrated the potential contributions of idiographic research in prevention science as well as the need for simulation studies to delineate the research circumstances when each analytic approach is optimal for deriving the correct parameter estimates.
心理社会预防研究缺乏密集的个体内研究线的证据,无法了解与发展和干预反应相关的特质过程。这些数据可用于填补文献中的空白,并为预防研究人员扩展研究设计选项,包括成本更低但严谨的研究(例如,用于方案评估)、试点研究、针对低流行率结果的方案测试设计、选择性/指示性/适应性干预研究,以及对方案的不同反应的理解。本研究比较了三种专为这种类型的研究设计的竞争分析策略:自回归移动平均、混合模型轨迹分析和 P 技术。说明性时间序列数据来自一项针对患有糖尿病的疗养院居民的干预措施的试点研究(N=4),旨在改善血糖控制。使用个体内间歇性基线设计。使用每种策略对汇总样本和个体患者进行干预效果检测。P 技术模型最接近地复制了观察到的葡萄糖水平。ARIMA 和 P 技术模型在估计的干预效果和建模的葡萄糖水平方面最为相似。然而,ARIMA 和 P 技术模型也更容易受到缺失数据、异常值和观察次数的影响。统计检验表明,结果既适用于其他人,也适用于特质、纵向过程。本研究展示了个体研究在预防科学中的潜在贡献,以及需要进行模拟研究来描绘每种分析方法在得出正确参数估计方面最优化的研究情况。