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应用具有自相关误差的贝叶斯分布式滞后模型分析 N-of-1 试验。

Analysis of N-of-1 trials using Bayesian distributed lag model with autocorrelated errors.

机构信息

Department of Biostatistics, Columbia University, New York, USA.

Center for Behavioral Cardiovascular Health, Columbia University, New York, USA.

出版信息

Stat Med. 2023 Jun 15;42(13):2044-2060. doi: 10.1002/sim.9676. Epub 2023 Feb 10.

Abstract

An N-of-1 trial is a multi-period crossover trial performed in a single individual, with a primary goal to estimate treatment effect on the individual instead of population-level mean responses. As in a conventional crossover trial, it is critical to understand carryover effects of the treatment in an N-of-1 trial, especially when no washout periods between treatment periods are instituted to reduce trial duration. To deal with this issue in situations where a high volume of measurements are made during the study, we introduce a novel Bayesian distributed lag model that facilitates the estimation of carryover effects, while accounting for temporal correlations using an autoregressive model. Specifically, we propose a prior variance-covariance structure on the lag coefficients to address collinearity caused by the fact that treatment exposures are typically identical on successive days. A connection between the proposed Bayesian model and penalized regression is noted. Simulation results demonstrate that the proposed model substantially reduces the root mean squared error in the estimation of carryover effects and immediate effects when compared to other existing methods, while being comparable in the estimation of the total effects. We also apply the proposed method to assess the extent of carryover effects of light therapies in relieving depressive symptoms in cancer survivors.

摘要

一项 N-of-1 试验是在单个个体中进行的多周期交叉试验,其主要目的是估计治疗对个体的效果,而不是群体水平的平均反应。与传统的交叉试验一样,在 N-of-1 试验中,了解治疗的交叉效应至关重要,特别是在没有设置洗脱期来缩短试验持续时间的情况下。为了解决在研究期间进行大量测量的情况下出现的这个问题,我们引入了一种新的贝叶斯分布滞后模型,该模型有助于估计交叉效应,同时使用自回归模型来考虑时间相关性。具体来说,我们在滞后系数上提出了一个先验方差-协方差结构,以解决由于治疗暴露在连续几天通常是相同的而导致的共线性问题。还注意到了所提出的贝叶斯模型与惩罚回归之间的联系。模拟结果表明,与其他现有方法相比,该模型在估计交叉效应和即时效应时,大大降低了估计的均方根误差,而在估计总效应时,其效果相当。我们还应用所提出的方法来评估光疗缓解癌症幸存者抑郁症状的交叉效应的程度。

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