弗雷明翰风险评分
医学
危险系数
置信区间
内科学
无症状的
比例危险模型
心脏病学
人口
冠状动脉钙
绝对风险降低
冠状动脉疾病
疾病
环境卫生
作者
Susan G. Lakoski,Philip Greenland,Nathan D. Wong,Pamela J. Schreiner,David M. Herrington,Richard A. Kronmal,Kiang Liu,Roger S. Blumenthal
出处
期刊:Archives of internal medicine
[American Medical Association]
日期:2007-12-10
卷期号:167 (22): 2437-2437
被引量:339
标识
DOI:10.1001/archinte.167.22.2437
摘要
Objective
To assess coronary artery calcium (CAC) score and subsequent risk for coronary heart disease (CHD) and cardiovascular (CVD) events among asymptomatic women judged to be at low risk by the Framingham risk score (FRS), a common approach for determining 10-year absolute risk for CHD. Based on population survey data, 95% of American women are considered at low risk based on FRS. Methods
The Multi-Ethnic Study of Atherosclerosis (MESA) included 3601 women aged 45 to 84 years at baseline. The CAC score was measured by coronary computed tomography. Cox proportional hazard models were used to examine the CHD and CVD risk associated with CAC score among women classified as "low risk" based on FRS. Results
Excluding women with diabetes and those older than 79 years, 90% of women in MESA (mean ± SD age, 60 ± 9 years) were classified as "low risk" based on FRS. The prevalence of CAC (CAC score > 0) in this low-risk subset was 32% (n = 870). Compared with women with no detectable CAC, low-risk women with a CAC score greater than 0 were at increased risk for CHD (hazard ratio, 6.5; 95% confidence interval, 2.6-16.4) and CVD events (hazard ratio, 5.2; 95% confidence interval, 2.5-10.8). In addition, advanced CAC (CAC score ≥ 300) was highly predictive of future CHD and CVD events compared with women with nondetectable CAC and identified a group of low-risk women with a 6.7% and 8.6% absolute CHD and CVD risk, respectively, over a 3.75-year period. Conclusions
The presence of CAC in women considered to be at low risk based on FRS was predictive of future CHD and CVD events. Advanced CAC identified a subset of low-risk women at higher risk based on current risk stratification strategies.
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