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Individual risk prediction model for incident cardiovascular disease: A Bayesian clinical reasoning approach

机译:心血管事件的个人风险预测模型:贝叶斯临床推理方法

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Background: A Bayesian clinical reasoning model was developed to predict an individual risk for cardiovascular disease (CVD) for desk-top reference. Methods: Three Bayesian models were constructed to estimate the CVD risk by sequentially incorporating demographic features (basic), six metabolic syndrome components (metabolic score) and conventional risk factors (enhanced model). By considering clinical weights (regression coefficients) of each model as normal distribution, individual risk can be predicted making allowance for uncertainty of clinical weights. A community-based cohort that enrolled 64,489 participants free of CVD at baseline and followed up over five years to ascertain newly diagnosed CVD cases during the period through 2000 to 2004 was used for the illustration of the three proposed models (full empirical data are available from website http://homepage.ntu.edu.tw/~chenlin/CVD-prediction-data.rar). Results: The proposed models can be applied to predicting the CVD risk with any combination of risk factors. For a 47-year-old man, the five-year risk for CVD with the basic model was 11.2% (95% CI: 7.8%-15.6%). His metabolic syndrome score, leading to 1.488 of likelihood ratio, enhanced the risk for CVD up to 15.8% (95% CI: 11.0%-21.5%) and put him in highest deciles. As with the habit of smoking over 2 packs per-day and family history of CVD, yielding the likelihood ratios of 1.62 and 1.47, respectively, the risk was further raised to 30.9% (95% CI: 20.7%-39.8%). Conclusions: We demonstrate how to make individual risk prediction for CVD by incorporating routine information with a sequential Bayesian clinical reasoning approach.
机译:背景:建立了贝叶斯临床推理模型以预测个人患心血管疾病(CVD)的风险,以作为台式参考。方法:构建了三个贝叶斯模型,通过依次纳入人口统计学特征(基本),六个代谢综合征成分(代谢评分)和常规危险因素(增强模型)来估计CVD风险。通过将每个模型的临床权重(回归系数)视为正态分布,可以预测个体风险,从而考虑到临床权重的不确定性。一项基于社区的队列研究从基线入选了64,489名无CVD的参与者,并在5年内进行了随访,以确定从2000年到2004年期间新诊断的CVD病例,用于说明三个建议的模型(可从以下网站获得全部经验数据)网站http://homepage.ntu.edu.tw/~chenlin/CVD-prediction-data.rar)。结果:所提出的模型可用于结合各种风险因素来预测CVD风险。对于一个47岁的男人,使用基本模型进行CVD的五年风险为11.2%(95%CI:7.8%-15.6%)。他的代谢综合征得分(可能性比为1.488)使CVD的危险性最高提高到15.8%(95%CI:11.0%-21.5%),并使其处于最高决策水平。由于每天吸烟超过2包的习惯以及CVD的家族史,分别产生了1.62和1.47的可能性比,因此风险进一步提高到30.9%(95%CI:20.7%-39.8%)。结论:我们证明了如何通过将常规信息与顺序贝叶斯临床推理方法相结合来进行CVD的个体风险预测。

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