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使用序贯多分配随机试验比较聚类水平的动态治疗方案:回归估计与样本量考量

Comparing cluster-level dynamic treatment regimens using sequential, multiple assignment, randomized trials: Regression estimation and sample size considerations.

作者信息

NeCamp Timothy, Kilbourne Amy, Almirall Daniel

机构信息

1 Department of Statistics, University of Michigan, Ann Arbor, MI, USA.

2 Survey Research Center, Institute for Social Research, Ann Arbor, MI, USA.

出版信息

Stat Methods Med Res. 2017 Aug;26(4):1572-1589. doi: 10.1177/0962280217708654. Epub 2017 Jun 19.

Abstract

Cluster-level dynamic treatment regimens can be used to guide sequential treatment decision-making at the cluster level in order to improve outcomes at the individual or patient-level. In a cluster-level dynamic treatment regimen, the treatment is potentially adapted and re-adapted over time based on changes in the cluster that could be impacted by prior intervention, including aggregate measures of the individuals or patients that compose it. Cluster-randomized sequential multiple assignment randomized trials can be used to answer multiple open questions preventing scientists from developing high-quality cluster-level dynamic treatment regimens. In a cluster-randomized sequential multiple assignment randomized trial, sequential randomizations occur at the cluster level and outcomes are observed at the individual level. This manuscript makes two contributions to the design and analysis of cluster-randomized sequential multiple assignment randomized trials. First, a weighted least squares regression approach is proposed for comparing the mean of a patient-level outcome between the cluster-level dynamic treatment regimens embedded in a sequential multiple assignment randomized trial. The regression approach facilitates the use of baseline covariates which is often critical in the analysis of cluster-level trials. Second, sample size calculators are derived for two common cluster-randomized sequential multiple assignment randomized trial designs for use when the primary aim is a between-dynamic treatment regimen comparison of the mean of a continuous patient-level outcome. The methods are motivated by the Adaptive Implementation of Effective Programs Trial which is, to our knowledge, the first-ever cluster-randomized sequential multiple assignment randomized trial in psychiatry.

摘要

聚类水平动态治疗方案可用于指导聚类水平的序贯治疗决策,以改善个体或患者水平的治疗结果。在聚类水平动态治疗方案中,治疗可能会随着时间的推移根据聚类中的变化进行调整和重新调整,这些变化可能受到先前干预的影响,包括构成聚类的个体或患者的总体测量指标。聚类随机序贯多重分配随机试验可用于回答多个开放性问题,这些问题阻碍了科学家们开发高质量的聚类水平动态治疗方案。在聚类随机序贯多重分配随机试验中,序贯随机化在聚类水平进行,而结果在个体水平观察。本文稿对聚类随机序贯多重分配随机试验的设计和分析做出了两项贡献。第一,提出了一种加权最小二乘回归方法,用于比较序贯多重分配随机试验中嵌入的聚类水平动态治疗方案之间患者水平结局的均值。该回归方法便于使用基线协变量,这在聚类水平试验的分析中通常至关重要。第二,针对两种常见的聚类随机序贯多重分配随机试验设计推导了样本量计算器,用于当主要目的是对连续患者水平结局的均值进行动态治疗方案间比较时。这些方法的灵感来自有效项目试验的适应性实施,据我们所知,这是精神病学领域首个聚类随机序贯多重分配随机试验。

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本文引用的文献

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Residual Weighted Learning for Estimating Individualized Treatment Rules.用于估计个体化治疗规则的残差加权学习
J Am Stat Assoc. 2017;112(517):169-187. doi: 10.1080/01621459.2015.1093947. Epub 2017 May 3.
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Interactive Q-learning for Quantiles.用于分位数的交互式Q学习
J Am Stat Assoc. 2017;112(518):638-649. doi: 10.1080/01621459.2016.1155993. Epub 2017 Mar 31.
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Tree-based methods for individualized treatment regimes.用于个性化治疗方案的基于树的方法。
Biometrika. 2015;102(3):501-514. doi: 10.1093/biomet/asv028. Epub 2015 Jul 15.

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