医学
银屑病性关节炎
置信区间
内科学
弗雷明翰风险评分
接收机工作特性
疾病
前瞻性队列研究
队列
风险评估
Lasso(编程语言)
预测建模
银屑病
物理疗法
统计
免疫学
计算机科学
计算机安全
数学
万维网
作者
Keith Colaco,Ker‐Ai Lee,Shadi Akhtari,Raz Winer,Vinod Chandran,Paula Harvey,Richard J. Cook,Vincent Piguet,Dafna D. Gladman,Lihi Eder
摘要
Objective To address suboptimal cardiovascular risk prediction in patients with psoriatic disease (PsD), we developed and internally validated a five‐year disease‐specific cardiovascular risk prediction model. Methods We analyzed data from a prospective cohort of participants with PsD without a history of cardiovascular events. Traditional cardiovascular risk factors and PsD‐related measures of disease activity were considered as potential predictors. The study outcome included nonfatal and fatal cardiovascular events. A base prediction model included 10 traditional cardiovascular risk factors. Eight PsD‐related factors were assessed by adding them to the base model to create expanded models, which were controlled for PsD therapies. Variable selection was performed using Least Absolute Shrinkage and Selection Operator (LASSO) penalized regression with 10‐fold cross‐validation. Model performance was assessed using measures of discrimination and calibration and measures of sensitivity and specificity. Results Between 1992 and 2020, 85 of 1,336 participants developed cardiovascular events. Discrimination of the base model (with traditional cardiovascular risk factors alone) was excellent, with an area under the receiver operator characteristic curve (AUC) of 85.5 (95% confidence interval [CI] 81.9–89.1). Optimal models did not select any of the tested disease‐specific factors. In a sensitivity analysis, which excluded lipid lowering and antihypertensive treatments, the number of damaged joints was selected in the expanded model. However, this model did not improve risk discrimination compared to the base model (AUC 85.5, 95% CI 82.0–89.1). Conclusion Traditional cardiovascular risk factors alone are effective in predicting cardiovascular risk in patients with PsD. A risk score based on these factors performed well, indicating excellent discrimination and calibration. image
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