英国生物银行研究中使用女性特异性危险因素评估45 - 69岁女性心血管疾病预测的准确性

IF 6.2 2区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Jenny Doust, Mohammad Reza Baneshi, Hsin-Fang Chung, Louise Forsyth Wilson, Gita Devi Mishra
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引用次数: 0

摘要

背景:心血管疾病(CVD)是女性死亡的主要原因。我们的目的是评估在传统因素的基础上加入女性特异性危险因素是否可以改善心血管疾病的风险预测。方法:我们使用了来自英国生物银行研究的45至69岁的女性队列,她们在基线时(2006-2010年)没有心血管疾病,随访至2019年底。我们建立了Cox比例风险模型,使用3种当代心血管疾病风险计算器中的风险因素:合并队列方程-动脉粥样硬化性心血管疾病、Qrisk2和PREDICT。我们将以下女性特定的危险因素单独或一起添加,以确定这些改进的区分和校准措施是否用于预测CVD:月经初潮(结果:在135142名女性(平均年龄57.5岁;SD, 6.8)使用合并队列方程-动脉粥样硬化性心血管疾病的危险因素,CVD发病率为每1000人年5.3例。合并队列方程-动脉粥样硬化性心血管疾病、Qrisk2和PREDICT模型的c指数分别为0.710、0.713和0.718。添加每个女性特有的危险因素并没有改善c指数、净重分类指数、综合区分指数、预测事件与观测事件的回归线斜率以及Brier评分或校准图。同时加入所有女性特有的危险因素将合并队列方程-动脉粥样硬化性心血管疾病、Qrisk2和PREDICT模型的c指数分别提高到0.712、0.715和0.720。结论:尽管一些女性特异性因素已被证明是心血管疾病风险的早期指标,但在考虑是否开始使用降压药或降脂药时,这些因素不应被用于对45至69岁女性的风险进行重新分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the Accuracy of Cardiovascular Disease Prediction Using Female-Specific Risk Factors in Women Aged 45 to 69 Years in the UK Biobank Study.

Background: Cardiovascular disease (CVD) is the leading cause of mortality in women. We aimed to assess whether adding female-specific risk factors to traditional factors could improve CVD risk prediction.

Methods: We used a cohort of women from the UK Biobank Study aged 45 to 69 years, free of CVD at baseline (2006-2010) followed until the end of 2019. We developed Cox proportional hazards models using the risk factors included in 3 contemporary CVD risk calculators: Pooled Cohort Equation - Atherosclerotic Cardiovascular Disease, Qrisk2, and PREDICT. We added each of the following female-specific risk factors, individually and all together, to determine if these improved measures of discrimination and calibration for predicting CVD: early menarche (<11 years), endometriosis, excessive, frequent or irregular menstruation, miscarriage, number of miscarriages, number of stillbirths, infertility, preeclampsia or eclampsia, gestational diabetes (without subsequent type 2 diabetes), premature menopause (<40 years), early menopause (<45 years), and natural or surgical early menopause (menopause <45 years or timing of menopause reported as unknown and oophorectomy reported at age <45).

Results: In the model of 135 142 women (mean age, 57.5 years; SD, 6.8) using risk factors from Pooled Cohort Equation - Atherosclerotic Cardiovascular Disease, CVD incidence was 5.3 per 1000 person-years. The c-indices for the Pooled Cohort Equation - Atherosclerotic Cardiovascular Disease, Qrisk2, and PREDICT models were 0.710, 0.713, and 0.718, respectively. Adding each of the female-specific risk factors did not improve the c-index, the net reclassification index, the integrated discrimination index, the slope of the regression line for predicted versus observed events, and the Brier score or plots of calibration. Adding all female-specific risk factors simultaneously increased the c-index for the Pooled Cohort Equation - Atherosclerotic Cardiovascular Disease, Qrisk2, and PREDICT models to 0.712, 0.715, and 0.720, respectively.

Conclusions: Although several female-specific factors have been shown to be early indicators of CVD risk, these factors should not be used to reclassify risk in women aged 45 to 69 years when considering whether to commence a blood pressure or lipid-lowering medication.

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来源期刊
Circulation-Cardiovascular Quality and Outcomes
Circulation-Cardiovascular Quality and Outcomes CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
8.50
自引率
2.90%
发文量
357
审稿时长
4-8 weeks
期刊介绍: Circulation: Cardiovascular Quality and Outcomes, an American Heart Association journal, publishes articles related to improving cardiovascular health and health care. Content includes original research, reviews, and case studies relevant to clinical decision-making and healthcare policy. The online-only journal is dedicated to furthering the mission of promoting safe, effective, efficient, equitable, timely, and patient-centered care. Through its articles and contributions, the journal equips you with the knowledge you need to improve clinical care and population health, and allows you to engage in scholarly activities of consequence to the health of the public. Circulation: Cardiovascular Quality and Outcomes considers the following types of articles: Original Research Articles, Data Reports, Methods Papers, Cardiovascular Perspectives, Care Innovations, Novel Statistical Methods, Policy Briefs, Data Visualizations, and Caregiver or Patient Viewpoints.
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