>A clinical prediction model is a tool for predicting healthcare outcomes, usually within a specifi'/> A review of statistical updating methods for clinical prediction models
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A review of statistical updating methods for clinical prediction models

机译:临床预测模型统计更新方法述评

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>A clinical prediction model is a tool for predicting healthcare outcomes, usually within a specific population and context. A common approach is to develop a new clinical prediction model for each population and context; however, this wastes potentially useful historical information. A better approach is to update or incorporate the existing clinical prediction models already developed for use in similar contexts or populations. In addition, clinical prediction models commonly become miscalibrated over time, and need replacing or updating. In this article, we review a range of approaches for re-using and updating clinical prediction models; these fall in into three main categories: simple coefficient updating, combining multiple previous clinical prediction models in a meta-model and dynamic updating of models. We evaluated the performance (discrimination and calibration) of the different strategies using data on mortality following cardiac surgery in the United Kingdom: We found that no single strategy performed sufficiently well to be used to the exclusion of the others. In conclusion, useful tools exist for updating existing clinical prediction models to a new population or context, and these should be implemented rather than developing a new clinical prediction model from scratch, using a breadth of complementary statistical methods.
机译: >临床预测模型是一种预测医疗保健结果的工具,通常在特定的人口和背景下。一种共同的方法是为每个人口和背景制定新的临床预测模型;但是,这种浪费可能是有用的历史信息。更好的方法是更新或纳入已经开发的现有临床预测模型以用于类似的环境或群体。此外,临床预测模型通常随着时间的推移变得错误,并且需要更换或更新。在本文中,我们审查了一系列重新使用和更新临床预测模型的方法;这些落入三个主要类别:简单的系数更新,在元模型中结合多个先前的临床预测模型和模型的动态更新。我们评估了在英国心脏手术后死亡率数据的不同策略的性能(歧视和校准):我们发现没有足够好的单一策略来排除其他策略。总之,存在有用的工具,用于将现有的临床预测模型更新到新的人口或背景,并且应该使用互补统计方法的宽度来实现这些临床预测模型,而不是从划痕开发新的临床预测模型。

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