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Validation of prediction models: examining temporal and geographic stability of baseline risk and estimated covariate effects

机译:预测模型的验证:检查基线风险和估计的协变量影响的时间和地理稳定性

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BackgroundStability in baseline risk and estimated predictor effects both geographically and temporally is a desirable property of clinical prediction models. However, this issue has received little attention in the methodological literature. Our objective was to examine methods for assessing temporal and geographic heterogeneity in baseline risk and predictor effects in prediction models. MethodsWe studied 14,857 patients hospitalized with heart failure at 90 hospitals in Ontario, Canada, in two time periods. We focussed on geographic and temporal variation in baseline risk (intercept) and predictor effects (regression coefficients) of the EFFECT-HF mortality model for predicting 1-year mortality in patients hospitalized for heart failure. We used random effects logistic regression models for the 14,857 patients. ResultsThe baseline risk of mortality displayed moderate geographic variation, with the hospital-specific probability of 1-year mortality for a reference patient lying between 0.168 and 0.290 for 95% of hospitals. Furthermore, the odds of death were 11% lower in the second period than in the first period. However, we found minimal geographic or temporal variation in predictor effects. Among 11 tests of differences in time for predictor variables, only one had a modestly significant P value (0.03). ConclusionsThis study illustrates how temporal and geographic heterogeneity of prediction models can be assessed in settings with a large sample of patients from a large number of centers at different time periods.
机译:背景技术基线风险和估计的预测因子作用在地理上和时间上的稳定性是临床预测模型的理想特性。但是,这个问题在方法论文献中很少受到关注。我们的目标是研究评估基线风险的时间和地理异质性以及预测模型中的预测因子影响的方法。方法我们在两个时期内,对加拿大安大略省90所医院的14857例因心力衰竭住院的患者进行了研究。我们集中于EFFECT-HF死亡率模型的基线风险(截距)和预测因子效应(回归系数)的地理和时间变化,以预测因心力衰竭住院的1年死亡率。我们对14857例患者使用了随机效应逻辑回归模型。结果死亡率的基线风险显示出中等的地域差异,对于95%的医院,参考患者的医院特定的1年死亡率概率在0.168至0.290之间。此外,第二阶段的死亡几率比第一阶段低11%。但是,我们发现预测因素的影响在地理或时间上变化很小。在11个预测变量时间差异测试中,只有一个具有适度的P值(0.03)。结论本研究说明了如何在不同时间段从大量中心的大量患者样本中评估预测模型的时间和地理异质性。

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