包含生殖和妊娠相关候选预测因子的产后心血管疾病(CVD)风险预测模型的开发和验证方案

Steven Wambua, Francesca Crowe, Shakila Thangaratinam, Dermot O'Reilly, Colin McCowan, Sinead Brophy, Christopher Yau, Krishnarajah Nirantharakumar, Richard Riley
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摘要

背景:心血管疾病(CVD)是女性死亡的主要原因。心血管疾病与生活质量下降、显著的治疗和管理费用以及生产力损失有关。评估心血管疾病的风险将有助于心血管疾病风险较高的患者采取预防措施以降低疾病风险。Framingham风险评分和QRISK®评分是英国用于评估未来心血管疾病风险的两种风险预测模型。尽管这些算法在普通人群中表现良好,但它们没有考虑妊娠并发症,妊娠并发症是女性心血管疾病的众所周知的危险因素,最近的一项综述强调了这一点。我们计划建立一个强大的CVD风险预测模型,以评估妊娠危险因素在产后妇女CVD风险预测中的附加价值。方法:使用QRISK®-3的候选预测因子,从文献和与临床专家和患者研究伙伴的讨论中确定的综合评价,我们将使用时间-事件Cox比例风险模型来开发和验证产后心血管疾病的10年风险预测模型,使用临床实践研究数据链(CPRD)初级保健数据库进行算法的开发和内部验证,使用安全匿名信息链接(SAIL)数据库进行外部验证。然后,我们将在内部和外部验证中评估QRISK®-3的其他候选预测因子的价值。讨论:已开发的风险预测模型将纳入妊娠相关因素,这些因素已被证明与未来CVD风险相关,但在目前的风险预测模型中未被考虑在内。因此,我们的研究将强调将妊娠相关风险因素纳入产后心血管疾病风险预测模型的重要性。
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Protocol for development and validation of postpartum cardiovascular disease (CVD) risk prediction model incorporating reproductive and pregnancy-related candidate predictors.

Background: Cardiovascular disease (CVD) is a leading cause of death among women. CVD is associated with reduced quality of life, significant treatment and management costs, and lost productivity. Estimating the risk of CVD would help patients at a higher risk of CVD to initiate preventive measures to reduce risk of disease. The Framingham risk score and the QRISK® score are two risk prediction models used to evaluate future CVD risk in the UK. Although the algorithms perform well in the general population, they do not take into account pregnancy complications, which are well known risk factors for CVD in women and have been highlighted in a recent umbrella review. We plan to develop a robust CVD risk prediction model to assess the additional value of pregnancy risk factors in risk prediction of CVD in women postpartum.

Methods: Using candidate predictors from QRISK®-3, the umbrella review identified from literature and from discussions with clinical experts and patient research partners, we will use time-to-event Cox proportional hazards models to develop and validate a 10-year risk prediction model for CVD postpartum using Clinical Practice Research Datalink (CPRD) primary care database for development and internal validation of the algorithm and the Secure Anonymised Information Linkage (SAIL) databank for external validation. We will then assess the value of additional candidate predictors to the QRISK®-3 in our internal and external validations.

Discussion: The developed risk prediction model will incorporate pregnancy-related factors which have been shown to be associated with future risk of CVD but have not been taken into account in current risk prediction models. Our study will therefore highlight the importance of incorporating pregnancy-related risk factors into risk prediction modeling for CVD postpartum.

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