Use of prediction models is widely recommended by clinical guidelines, but usually requires complete information on all predictors that is not always available in daily practice. We describe two methods for real-time handling of missing predictor values when using prediction models in practice. We compare the widely used method of mean imputation (M-imp) to a method that personalizes the imputations by taking advantage of the observed patient characteristics. These characteristics may include both prediction model variables and other characteristics (auxiliary variables). The method was implemented using imputation from a joint multivariate normal model of the patient characteristics (joint modeling imputation; JMI). Data from two different cardiovascular cohorts with cardiovascular predictors and outcome were used to evaluate the real-time imputation methods. We quantified the prediction model's overall performance (mean squared error (MSE) of linear predictor), discrimination (c-index), calibration (intercept and slope) and net benefit (decision curve analysis). When compared with mean imputation, JMI substantially improved the MSE (0.10 vs. 0.13), c-index (0.70 vs 0.68) and calibration (calibration-in-the-large: 0.04 vs. 0.06; calibration slope: 1.01 vs. 0.92), especially when incorporating auxiliary variables. When the imputation method was based on an external cohort, calibration deteriorated, but discrimination remained similar. We recommend JMI with auxiliary variables for real-time imputation of missing values, and to update imputation models when implementing them in new settings or (sub)populations.
翻译:临床准则广泛建议使用预测模型,但通常需要所有预测器的完整信息,而这种信息并非始终在日常实践中都具备。我们描述了在实际使用预测模型时实时处理缺失预测值的两种方法。我们将广泛使用的平均估算法(M-imp)与利用观察到的病人特征将估算率个人化的方法进行比较。这些特征可能包括预测模型变量和其他特征(辅助变量)。采用这种方法时使用了病人特征的混合多变正常模型(联合模拟计算;JMI)的计算法。我们用心血管预测器和结果两种不同心血管组群的数据实时处理缺失预测值,以评价实时估算方法。我们量化了预测模型的总体性能(线性预测器的平均平方差(MSE))、歧视(c-index)、校准(干涉和斜度)和净效益(决定曲线分析)。与平均估算值相比,JMI的计算法大大改进了病人特性的混合正常值(0.10 vs.),c-indeximation 0.70 vs.J.68和结果用于评价实时估算方法。我们量化,特别是正标化的校准值(校准-ral-ration-ration-ration-ration-ration-rationxxxxxx),在进行时,我们的校准的校准-06-xxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxxx。