Karin Eyal, Crane Monique Frances, Dear Blake Farran, Nielssen Olav, Heller Gillian Ziona, Kayrouz Rony, Titov Nickolai
Department of Psychology, Macquarie University, MindSpot Clinic, Macquarie Park, Australia.
Department of Psychology, Macquarie University, eCentreClinic, Sydney, Australia.
JMIR Ment Health. 2021 Feb 5;8(2):e22700. doi: 10.2196/22700.
Missing cases present a challenge to our ability to evaluate the effects of web-based psychotherapy trials. As missing cases are often lost to follow-up, less is known about their characteristics, their likely clinical outcomes, or the likely effect of the treatment being trialed.
The aim of this study is to explore the characteristics of missing cases, their likely treatment outcomes, and the ability of different statistical models to approximate missing posttreatment data.
A sample of internet-delivered cognitive behavioral therapy participants in routine care (n=6701, with 36.26% missing cases at posttreatment) was used to identify predictors of dropping out of treatment and predictors that moderated clinical outcomes, such as symptoms of psychological distress, anxiety, and depression. These variables were then incorporated into a range of statistical models that approximated replacement outcomes for missing cases, and the results were compared using sensitivity and cross-validation analyses.
Treatment adherence, as measured by the rate of progress of an individual through the treatment modules, and higher pretreatment symptom scores were identified as the dominant predictors of missing cases probability (Nagelkerke R=60.8%) and the rate of symptom change. Low treatment adherence, in particular, was associated with increased odds of presenting as missing cases during posttreatment assessment (eg, odds ratio 161.1:1) and, at the same time, attenuated the rate of symptom change across anxiety (up to 28% of the total symptom with 48% reduction effect), depression (up to 41% of the total with 48% symptom reduction effect), and psychological distress symptom outcomes (up to 52% of the total with 37% symptom reduction effect) at the end of the 8-week window. Reflecting this pattern of results, statistical replacement methods that overlooked the features of treatment adherence and baseline severity underestimated missing case symptom outcomes by as much as 39% at posttreatment.
The treatment outcomes of the cases that were missing at posttreatment were distinct from those of the remaining observed sample. Thus, overlooking the features of missing cases is likely to result in an inaccurate estimate of the effect of treatment.
失访病例给我们评估基于网络的心理治疗试验效果的能力带来了挑战。由于失访病例往往失访,我们对其特征、可能的临床结局或所试验治疗的可能效果了解较少。
本研究的目的是探索失访病例的特征、其可能的治疗结局以及不同统计模型近似处理后缺失数据的能力。
使用常规护理中接受互联网认知行为疗法的参与者样本(n = 6701,治疗后失访病例占36.26%)来确定退出治疗的预测因素以及调节临床结局(如心理困扰、焦虑和抑郁症状)的预测因素。然后将这些变量纳入一系列统计模型,这些模型近似失访病例的替代结局,并使用敏感性分析和交叉验证分析比较结果。
以个体通过治疗模块的进展速度衡量的治疗依从性以及较高的治疗前症状评分被确定为失访病例概率(Nagelkerke R = 60.8%)和症状变化率的主要预测因素。特别是低治疗依从性与治疗后评估时成为失访病例的几率增加相关(例如,优势比为161.1:1),同时,在8周窗口结束时,焦虑(症状减轻48%,占总症状的28%)、抑郁(症状减轻48%,占总症状的41%)和心理困扰症状结局(症状减轻37%,占总症状的52%)的症状变化率减弱。反映这种结果模式的是,忽视治疗依从性和基线严重程度特征的数据替代统计方法在治疗后低估失访病例症状结局达39%。
治疗后失访病例的治疗结局与其余观察样本的结局不同。因此,忽视失访病例的特征可能导致对治疗效果的估计不准确。