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Predictive performance of geoadditive survival models to study geographical patterns in coronary heart disease

机译:Geoadditive Suvive模型的预测性能研究冠心病中的地理模式

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Acute coronary syndrome (ACS) represents the most common cause of death in the western world. Numerous prediction models exist for the different types of ACS. Most of these models have been developed from large populations by means of the classical (parametric) Cox proportional hazard model, in which the geographic area has not been taken into account as a health determinant. However, this statistical Cox model may not be enough to capture some flexible effects of covariates on survival, and does not allow to include spatial effects. In this study, we used flexible extensions of the Cox model, such as Structured Geoadditive Survival Models, to evaluate geographical inequalities in survival of patients admitted to a tertiary hospital, with a diagnosis of ACS. The predictive performance of the survival models were assessed through time-dependent Receiver Operating Characteristic (ROC) curves computed by the incident sensitivity and dynamic specificity for each time point.
机译:急性冠状动脉综合征(ACS)代表了西方世界最常见的死亡原因。不同类型的ACS存在许多预测模型。这些模型中的大部分是从大型群体开发的,通过古典(参数)Cox比例危险模型,其中地理区域未被考虑为健康决定因素。然而,这种统计COX模型可能不足以捕获协变量对生存时的一些灵活效果,并且不允许包括空间效应。在这项研究中,我们使用了Cox模型的灵活扩展,例如结构化的Geoadditive Sulvive模型,以评估患者存活的地理不平等,诊断ACS。通过时间依赖的接收器操作特性(ROC)曲线来评估生存模型的预测性能,每个时间点计算的入射敏感性和动态特异性。

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