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The effects of misclassification in routine healthcare databases on the accuracy of prognostic prediction models: a case study of the CHA2DS2-VASc score in atrial fibrillation

机译:常规医疗数据库中错误分类对预后预测模型准确性的影响:心房颤动中CHA2DS2-VASc评分的案例研究

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摘要

BackgroundResearch on prognostic prediction models frequently uses data from routine healthcare. However, potential misclassification of predictors when using such data may strongly affect the studied associations. There is no doubt that such misclassification could lead to the derivation of suboptimal prediction models. The extent to which misclassification affects the validation of existing prediction models is currently unclear.We aimed to quantify the amount of misclassification in routine care data and its effect on the validation of the existing risk prediction model. As an illustrative example, we validated the CHA2DS2-VASc prediction rule for predicting mortality in patients with atrial fibrillation (AF).
机译:背景对预后预测模型的研究经常使用来自常规医疗保健的数据。但是,使用此类数据时预测变量的潜在错误分类可能会严重影响所研究的关联。毫无疑问,这种错误分类可能导致衍生出次优的预测模型。目前尚不清楚分类错误会影响现有预测模型验证的程度,我们旨在量化常规护理数据中分类错误的数量及其对现有风险预测模型验证的影响。作为说明性示例,我们验证了CHA2DS2-VASc预测规则,用于预测心房颤动(AF)患者的死亡率。

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