Institute of Medical Biometry and Statistics, Faculty of Medicine and Medical Centre, University of Freiburg, Freiburg, Germany.
Biomedical Engineering Research Centre (CREB), Automatic Control Department (ESAII), Universitat Politècnica de Catalunya-Barcelona Tech (UPC), Barcelona, Spain.
BMC Med Res Methodol. 2023 Sep 2;23(1):197. doi: 10.1186/s12874-023-02001-8.
Real-world observational data are an important source of evidence on the treatment effectiveness for patients hospitalized with coronavirus disease 2019 (COVID-19). However, observational studies evaluating treatment effectiveness based on longitudinal data are often prone to methodological biases such as immortal time bias, confounding bias, and competing risks.
For exemplary target trial emulation, we used a cohort of patients hospitalized with COVID-19 (n = 501) in a single centre. We described the methodology for evaluating the effectiveness of a single-dose treatment, emulated a trial using real-world data, and drafted a hypothetical study protocol describing the main components. To avoid immortal time and time-fixed confounding biases, we applied the clone-censor-weight technique. We set a 5-day grace period as a period of time when treatment could be initiated. We used the inverse probability of censoring weights to account for the selection bias introduced by artificial censoring. To estimate the treatment effects, we took the multi-state model approach. We considered a multi-state model with five states. The primary endpoint was defined as clinical severity status, assessed by a 5-point ordinal scale on day 30. Differences between the treatment group and standard of care treatment group were calculated using a proportional odds model and shown as odds ratios. Additionally, the weighted cause-specific hazards and transition probabilities for each treatment arm were presented.
Our study demonstrates that trial emulation with a multi-state model analysis is a suitable approach to address observational data limitations, evaluate treatment effects on clinically heterogeneous in-hospital death and discharge alive endpoints, and consider the intermediate state of admission to ICU. The multi-state model analysis allows us to summarize results using stacked probability plots that make it easier to interpret results.
Extending the emulated target trial approach to multi-state model analysis complements treatment effectiveness analysis by gaining information on competing events. Combining two methodologies offers an option to address immortal time bias, confounding bias, and competing risk events. This methodological approach can provide additional insight for decision-making, particularly when data from randomized controlled trials (RCTs) are unavailable.
真实世界观察性数据是评估 COVID-19 住院患者治疗效果的重要证据来源。然而,基于纵向数据评估治疗效果的观察性研究通常容易受到方法学偏倚的影响,如不朽时间偏倚、混杂偏倚和竞争风险。
对于示范性目标试验模拟,我们使用了单个中心住院 COVID-19 患者的队列(n=501)。我们描述了评估单次治疗效果的方法,使用真实世界数据模拟了一项试验,并起草了一份描述主要内容的假设研究方案。为了避免不朽时间和时间固定混杂偏倚,我们应用了克隆 censore 权重技术。我们将 5 天宽限期设置为可以开始治疗的时间段。我们使用倒数 censore 权重来解释人工 censore 引入的选择偏差。为了估计治疗效果,我们采用了多状态模型方法。我们考虑了一个具有五个状态的多状态模型。主要终点定义为第 30 天通过 5 分序量表评估的临床严重程度。使用比例优势模型计算治疗组和标准治疗组之间的差异,并以优势比表示。此外,还呈现了每个治疗臂的加权原因特异性危害和转移概率。
我们的研究表明,使用多状态模型分析进行试验模拟是解决观察性数据局限性的合适方法,可以评估治疗效果对临床异质性的住院死亡和存活出院结局,并考虑 ICU 入院的中间状态。多状态模型分析允许我们使用堆叠概率图总结结果,使结果更容易解释。
将模拟目标试验方法扩展到多状态模型分析可以通过获得关于竞争事件的信息来补充治疗效果分析。结合两种方法为解决不朽时间偏倚、混杂偏倚和竞争风险事件提供了一种选择。这种方法可以为决策提供额外的见解,特别是在缺乏随机对照试验(RCT)数据时。