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Survival Regression Modeling Strategies in CVD Prediction

机译:CVD预测中的生存回归建模策略

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摘要

BackgroundA fundamental part of prevention is prediction. Potential predictors are the sine qua non of prediction models. However, whether incorporating novel predictors to prediction models could be directly translated to added predictive value remains an area of dispute. The difference between the predictive power of a predictive model with (enhanced model) and without (baseline model) a certain predictor is generally regarded as an indicator of the predictive value added by that predictor. Indices such as discrimination and calibration have long been used in this regard. Recently, the use of added predictive value has been suggested while comparing the predictive performances of the predictive models with and without novel biomarkers.
机译:背景预防的基本部分是预测。潜在的预测因素是预测模型的必要条件。但是,是否可以将新颖的预测变量与预测模型直接转换为附加的预测价值仍然是一个有争议的领域。具有(增强模型)和不具有(基线模型)某个预测变量的预测模型的预测能力之间的差异通常被视为该预测变量所增加的预测值的指标。在这方面早已使用诸如判别和校准之类的指标。最近,在比较带有或不带有新生物标记的预测模型的预测性能时,已建议使用增加的预测值。

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