预测建模
人口
医学
疾病
梅德林
风险评估
缺少数据
系统回顾
重症监护医学
计算机科学
内科学
机器学习
环境卫生
政治学
计算机安全
法学
作者
Johanna AAG Damen,Lotty Hooft,Ewoud Schuit,Thomas P. A. Debray,Gary S. Collins,Ioanna Tzoulaki,Camille Lassale,George C.M. Siontis,Virginia Chiocchia,Corran Roberts,Michael Maia Schlüssel,Stephen Gerry,James A Black,Pauline Heus,Yvonne T. van der Schouw,Linda M. Peelen,Karel G.M. Moons
出处
期刊:
日期:2016-05-16
卷期号:353: i2416-i2416
被引量:921
摘要
There is an excess of models predicting incident CVD in the general population. The usefulness of most of the models remains unclear owing to methodological shortcomings, incomplete presentation, and lack of external validation and model impact studies. Rather than developing yet another similar CVD risk prediction model, in this era of large datasets, future research should focus on externally validating and comparing head-to-head promising CVD risk models that already exist, on tailoring or even combining these models to local settings, and investigating whether these models can be extended by addition of new predictors.
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