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预防医学  2024, Vol. 36 Issue (3): 211-214    DOI: 10.19485/j.cnki.issn2096-5087.2024.03.007
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心血管病高危人群预测模型研究
周梓萌1, 洪忻1,2
1.徐州医科大学公共卫生学院,江苏 徐州 221004;
2.南京市疾病预防控制中心,江苏 南京 210003
A prediction model of high-risk population for cardiovascular diseases
ZHOU Zimeng1, HONG Xin1,2
1. School of Public Health, Xuzhou Medical University, Xuzhou, Jiangsu 221004, China;
2. Nanjing Center for Disease Control and Prevention, Nanjing, Jiangsu 210003, China
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摘要 目的 通过南京市35~79岁居民心血管病(CVD)高危人群调查,建立CVD高危人群预测模型。方法 于2020—2021年采用多阶段分层整群随机抽样方法,抽取南京市35~79岁居民为调查对象,通过问卷调查、体格检查和实验室检测收集人口学信息、生活方式和血生化指标等资料。参照《中国心血管病风险评估和管理指南》《中国成人血脂异常防治指南(2016年修订版)》判定CVD高危人群,采用多因素logistic回归模型分析CVD高危人群的影响因素;建立列线图,并采用受试者操作特征(ROC)曲线评价预测效果;采用Hosmer-Lemeshow拟合优度检验评价拟合效果;采用Bootstrap法进行内部校验。结果 调查38 428人,其中男性17 970人,占46.76%;女性20 458人,占53.24%。35~<60岁为主,25 714人占66.91%。检出CVD高危人群8 905人,检出率为23.17%。多因素logistic回归模型筛选出9个CVD高危人群的影响因素,建立预测模型为ln[P/(1-P)]=-7.305+2.107×年龄-0.366×性别+0.299×婚姻状况-0.297×文化程度+0.631×体质指数+0.013×睡眠时间+0.096×食用盐摄入+0.444×吸烟-0.069×饮酒。ROC曲线下面积为0.799(95%CI:0.794~0.805),灵敏度和特异度分别为0.731和0.753,区分度较好。构建的列线图模型校准度和稳定性均较好。结论 通过年龄、性别、婚姻状况、文化程度、体质指数、睡眠时间、食用盐摄入、吸烟和饮酒9个因素构建的列线图可用于预测居民CVD高危风险。
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关键词 心血管病高危人群影响因素列线图    
AbstractObjective To investigate the proportion of high-risk population for cardiovascular diseases (CVD) among residents at ages of 35 to 79 in Nanjing City, and establish a prediction model of high-risk population for CVD. Methods Residents at ages of 35 to 79 years were selected from Nanjing City using a multi-stage stratified cluster random sampling method from 2020 to 2021. Participants' demographic information, characteristics of lifestyle and blood biochemical index were collected using questionnaire surveys, physical examination and laboratory testing. The high-risk population for CVD were determined according to the Chinese Guidelines for Cardiovascular Disease Risk Assessment and Management, and the Chinese Guidelines for the Prevention and Treatment of Adult Dyslipidemia (2016 Revision). Predictive factors for high-risk population for CVD were screened using a multivariable logistic regression model. A nomogram was established and verified with receiver operation characteristic (ROC) curve. Hosmer-Lemeshow goodness of fit test was used to evaluate the fitting effect and Bootstrap method was used for internal verification. Results A total of 38 428 individuals were surveyed, including 17 970 males (46.76%) and 20 458 females (53.24%), and 25 714 individuals aged 35 to 59 years. There were 8 905 high-risk population for CVD, with a detection rate of 23.17%. Multivariable logistic regression analysis identified 9 factors affecting high-risk population for CVD. A prediction model was established for ln[P/(1-P)]=-7.305+2.107×age-0.366×gender+0.299×marital status-0.297×educational level+0.631×body mass index+0.013×sleep duration+0.096×edible salt intake+0.444×smoke-0.069×alcohol consumption. The area under ROC curve was 0.799 (95%CI: 0.794-0.805), the sensitivity and specificity were 0.731 and 0.753, indicating good differentiation. The nomogram based on the above factors indicated good calibration and stability. Conclusion The nomogram constructed by age, gender, marital status, educational level, body mass index, sleep duration, edible salt intake, smoking and alcohol consumption can be used to predict high-risk population for CVD.
Key wordscardiovascular diseases high-risk population    influencing factor    nomogram
收稿日期: 2023-10-16      修回日期: 2024-01-23      出版日期: 2024-03-10
中图分类号:  R54  
基金资助:南京市卫生科技发展专项资金项目(ZKX21054)
作者简介: 周梓萌,硕士研究生在读,公共卫生专业
通信作者: 洪忻,E-mail:nj_hongxin@126.com   
引用本文:   
周梓萌, 洪忻. 心血管病高危人群预测模型研究[J]. 预防医学, 2024, 36(3): 211-214.
ZHOU Zimeng, HONG Xin. A prediction model of high-risk population for cardiovascular diseases. Preventive Medicine, 2024, 36(3): 211-214.
链接本文:  
http://www.zjyfyxzz.com/CN/10.19485/j.cnki.issn2096-5087.2024.03.007      或      http://www.zjyfyxzz.com/CN/Y2024/V36/I3/211
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