Dunn Graham, Emsley Richard, Liu Hanhua, Landau Sabine, Green Jonathan, White Ian, Pickles Andrew
Centre for Biostatistics, Institute of Population Health, University of Manchester and Manchester Academic Health Science Centre, Manchester, UK.
Medical Research Council North West Hub for Trials Methodology Research, UK.
Health Technol Assess. 2015 Nov;19(93):1-115, v-vi. doi: 10.3310/hta19930.
The development of the capability and capacity to evaluate the outcomes of trials of complex interventions is a key priority of the National Institute for Health Research (NIHR) and the Medical Research Council (MRC). The evaluation of complex treatment programmes for mental illness (e.g. cognitive-behavioural therapy for depression or psychosis) not only is a vital component of this research in its own right but also provides a well-established model for the evaluation of complex interventions in other clinical areas. In the context of efficacy and mechanism evaluation (EME) there is a particular need for robust methods for making valid causal inference in explanatory analyses of the mechanisms of treatment-induced change in clinical outcomes in randomised clinical trials.
The key objective was to produce statistical methods to enable trial investigators to make valid causal inferences about the mechanisms of treatment-induced change in these clinical outcomes. The primary objective of this report is to disseminate this methodology, aiming specifically at trial practitioners.
The three components of the research were (1) the extension of instrumental variable (IV) methods to latent growth curve models and growth mixture models for repeated-measures data; (2) the development of designs and regression methods for parallel trials; and (3) the evaluation of the sensitivity/robustness of findings to the assumptions necessary for model identifiability. We illustrate our methods with applications from psychological and psychosocial intervention trials, keeping the technical details to a minimum, leaving the reporting of the more theoretical and mathematically demanding results for publication in appropriate specialist journals.
We show how to estimate treatment effects and introduce methods for EME. We explain the use of IV methods and principal stratification to evaluate the role of putative treatment effect mediators and therapeutic process measures. These results are extended to the analysis of longitudinal data structures. We consider the design of EME trials. We focus on designs to create convincing IVs, bearing in mind assumptions needed to attain model identifiability. A key area of application that has become apparent during this work is the potential role of treatment moderators (predictive markers) in the evaluation of treatment effect mechanisms for personalised therapies (stratified medicine). We consider the role of targeted therapies and multiarm trials and the use of parallel trials to help elucidate the evaluation of mediators working in parallel.
In order to demonstrate both efficacy and mechanism, it is necessary to (1) demonstrate a treatment effect on the primary (clinical) outcome, (2) demonstrate a treatment effect on the putative mediator (mechanism) and (3) demonstrate a causal effect from the mediator to the outcome. Appropriate regression models should be applied for (3) or alternative IV procedures, which account for unmeasured confounding, provided that a valid instrument can be identified. Stratified medicine may provide a setting where such instruments can be designed into the trial. This work could be extended by considering improved trial designs, sample size considerations and measurement properties.
The project presents independent research funded under the MRC-NIHR Methodology Research Programme (grant reference G0900678).
发展评估复杂干预试验结果的能力是英国国家卫生研究院(NIHR)和医学研究理事会(MRC)的一项关键优先事项。对精神疾病复杂治疗方案(如抑郁症或精神病的认知行为疗法)的评估不仅本身就是这项研究的重要组成部分,还为评估其他临床领域的复杂干预提供了一个成熟的模型。在疗效和机制评估(EME)背景下,特别需要强有力的方法,以便在随机临床试验中对治疗引起的临床结果变化机制的解释性分析中做出有效的因果推断。
关键目标是产生统计方法,使试验研究者能够对这些临床结果中治疗引起的变化机制做出有效的因果推断。本报告的主要目标是传播这种方法,特别针对试验从业者。
该研究的三个组成部分是:(1)将工具变量(IV)方法扩展到用于重复测量数据的潜在增长曲线模型和增长混合模型;(2)开发平行试验的设计和回归方法;(3)评估研究结果对模型可识别性所需假设的敏感性/稳健性。我们用心理和社会心理干预试验的应用来说明我们的方法,将技术细节保持在最低限度,把更具理论性和数学要求更高的结果的报告留待在适当的专业期刊上发表。
我们展示了如何估计治疗效果并介绍了EME方法。我们解释了使用IV方法和主分层来评估假定的治疗效果中介和治疗过程测量的作用。这些结果扩展到纵向数据结构的分析。我们考虑EME试验的设计。我们专注于设计令人信服的IV,同时牢记实现模型可识别性所需的假设。在这项工作中一个明显的关键应用领域是治疗调节因素(预测标志物)在个性化疗法(分层医学)治疗效果机制评估中的潜在作用。我们考虑靶向疗法和多臂试验的作用以及使用平行试验来帮助阐明对并行起作用的中介的评估。
为了证明疗效和机制,有必要:(1)证明对主要(临床)结果有治疗效果;(2)证明对假定的中介(机制)有治疗效果;(3)证明从中介到结果有因果效应。对于(3)应应用适当的回归模型或替代IV程序,前提是可以识别有效的工具,这些程序要考虑未测量的混杂因素。分层医学可能提供一个可以将此类工具设计到试验中的环境。这项工作可以通过考虑改进的试验设计、样本量考虑因素和测量特性来扩展。
该项目是由MRC-NIHR方法学研究计划资助的独立研究(资助编号G0900678)。