Department of Biostatistics, Yale School of Public Health, New Haven, Connecticut, USA.
Stat Med. 2024 Apr 15;43(8):1615-1626. doi: 10.1002/sim.10032. Epub 2024 Feb 12.
Incorporating historical data into a current data analysis can improve estimation of parameters shared across both datasets and increase the power to detect associations of interest while reducing the time and cost of new data collection. Several methods for prior distribution elicitation have been introduced to allow for the data-driven borrowing of historical information within a Bayesian analysis of the current data. We propose scaled Gaussian kernel density estimation (SGKDE) prior distributions as potentially more flexible alternatives. SGKDE priors directly use posterior samples collected from a historical data analysis to approximate probability density functions, whose variances depend on the degree of similarity between the historical and current datasets, which are used as prior distributions in the current data analysis. We compare the performances of the SGKDE priors with some existing approaches using a simulation study. Data from a recently completed phase III clinical trial of a maternal vaccine for respiratory syncytial virus are used to further explore the properties of SGKDE priors when designing a new clinical trial while incorporating historical data. Overall, both studies suggest that the new approach results in improved parameter estimation and power in the current data analysis compared to the considered existing methods.
将历史数据纳入当前数据分析可以改进跨两个数据集共享的参数估计,并提高检测感兴趣关联的功效,同时减少新数据收集的时间和成本。已经引入了几种先验分布推断方法,以便在对当前数据进行贝叶斯分析时,可以从历史数据中进行数据驱动的信息借用。我们提出了缩放高斯核密度估计(SGKDE)先验分布,作为更灵活的潜在替代方案。SGKDE 先验直接使用从历史数据分析中收集的后验样本来近似概率密度函数,其方差取决于历史数据集和当前数据集之间的相似程度,这些数据集被用作当前数据分析中的先验分布。我们使用模拟研究比较了 SGKDE 先验与一些现有方法的性能。使用最近完成的呼吸道合胞病毒产妇疫苗 III 期临床试验的数据进一步探索了在设计新临床试验时纳入历史数据时 SGKDE 先验的特性。总体而言,这两项研究表明,与考虑的现有方法相比,新方法可在当前数据分析中实现更好的参数估计和功效。