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Computationally efficient methods for fitting mixed models to electronic health records data

机译:将混合模型拟合到电子病历数据的计算有效方法

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摘要

Motivated by two case studies using primary care records from the Clinical Practice Research Datalink, we describe statistical methods that facilitate the analysis of tall data, with very large numbers of observations. Our focus is on investigating the association between patient characteristics and an outcome of interest, while allowing for variation among general practices. We explore ways to fit mixed effects models to tall data, including predictors of interest and confounding factors as covariates, and including random intercepts to allow for heterogeneity in outcome among practices. We introduce: (1) weighted regression and (2) meta-analysis of estimated regression coefficients from each practice. Both methods reduce the size of the dataset, thus decreasing the time required for statistical analysis. We compare the methods to an existing subsampling approach. All methods give similar point estimates, and weighted regression and meta-analysis give similar standard errors for point estimates to analysis of the entire dataset, but the subsampling method gives larger standard errors. Where all data are discrete, weighted regression is equivalent to fitting the mixed model to the entire dataset. In the presence of a continuous covariate, meta-analysis is useful. Both methods are easy to implement in standard statistical software.
机译:受来自使用临床实践研究数据链中的初级护理记录的两个案例研究的启发,我们描述了统计方法,这些方法有助于对大量数据进行分析,并具有大量观察结果。我们的重点是调查患者特征与感兴趣的结果之间的关联,同时允许常规做法之间的差异。我们探索了将混合效应模型拟合到高数据的方法,包括感兴趣的预测变量和混杂因素(作为协变量),并包括随机截距以允许实践结果之间的异质性。我们介绍:(1)加权回归和(2)每种实践的估计回归系数的荟萃分析。两种方法都减小了数据集的大小,从而减少了统计分析所需的时间。我们将这些方法与现有的子采样方法进行比较。所有方法都给出相似的点估计,而加权回归和荟萃分析给出的点估计与整个数据集的分析具有相似的标准误差,但是子采样方法给出的标准误差更大。在所有数据都是离散数据的情况下,加权回归等效于将混合模型拟合到整个数据集。在存在连续协变量的情况下,荟萃分析非常有用。两种方法都易于在标准统计软件中实现。

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