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Quantifying and ameliorating socioeconomic inequity in first cardiovascular events through improved risk prediction and treatment.

机译:通过改善风险预测和治疗,量化和改善首次心血管事件中的社会经济不平等。

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摘要

Cardiovascular disease (CVD) risk is negatively associated with socioeconomic status (SES) independent of traditional CVD risk factors but clinicians lack the tools to incorporate this SES gradient into their calculation of CVD risk; and policymakers infrequently evaluate the impact of CVD interventions on summary measures of health inequity. Current CVD risk calculators in the United States under-estimate CVD risk among low SES populations and may exacerbate SES inequity in CVD outcomes. The goals of this dissertation were to develop and evaluate a clinically practical equation that improves CVD risk prediction among middle age low SES groups, and to estimate the potential impact of using the equation on the income-related inequity in CVD in a community-based middle-age cohort.;Primary analyses were conducted 12,218 participants in the Atherosclerosis Risk in Communities (ARIC) who were free vascular disease and diabetes at baseline and followed for up to 22 years. Geocoded observations were linked to a neighborhood deprivation index calculated from six census tract-level variables of the U.S. Census. Cox proportional hazards and competing risk regression models were used to predict 10 and 20 year risk of coronary heart disease or ischemic stroke (CVD), respectively. Applying methods recommended by the American Heart Association for the evaluation of novel CVD risk factors, the dissertation demonstrates that the addition of an SES-5 variable comprised of education and neighborhood SES is associated with CVD, predicts development of future outcomes, adds incremental value to established risk factors and has demonstrated clinical utility by changing predicted risk sufficiently to modify treatment decisions, in a middle-age cohort free of CVD at baseline in the late 1980s.;The analyses also demonstrate how the Framingham risk function systematically under-estimates the socioeconomic gradient in CVD at 10 and 20 years, for multiple CVD outcomes; and that inclusion of an SES-5 variable attenuates this bias. We report results specific to low SES participants with low income or educational attainment, and demonstrate that the SES-5 variable improves reclassification to a greater extent in this low SES group than in the cohort as a whole. We further demonstrated that additional improvement in net reclassification is possible when single risk equations are replaced by a hybrid approach that uses the higher of two predicted risks to classify individuals into treatment categories. The individuals reclassified into higher risk categories experience elevated risk of CVD, and the expected numbers needed to treat with a statin for ten years (NNT) compares favorably with the NNT of traditional approaches. The SES-5 and hybrid approaches would begin to ameliorate CVD inequity by minimizing under-treatment among low SES groups and increasing the proportion of CVD events potentially averted by approximately 7.6% percentage points, representing a relative increase in events averted of 15% to 50%.;We further explore the population-wide impact of adding the SES-5 variable to traditional CVD risk equations by calculating observed and predicted values for the concentration index of incident CVD, a summary measure of relative CVD inequity that accounts for differences across the entire spectrum of household income. We demonstrate that the traditional FRS risk function underestimates the observed CI in incident CVD at 10 and 20 years by nearly 50%. In contrast, a risk function that includes the SES-5 variable attenuates this under-estimation, which is no longer significantly different than zero.;We also model the impact on health equity and achievement of competing treatment approaches based on risk equations that include or exclude the SES-5 variable. Although all CVD risk-based treatment approaches would improve CVD inequity and inequity-weighted CVD achievement, as measured by the concentration (CI) and achievement (AI) indices, respectively, the SES-5 treatment approach would do so to a greater extent than and approach based exclusively on traditional FRS risk factors.;In order to illustrate how social attitudes towards inequity can be incorporated in the evaluation of CVD interventions, we add a parameter reflecting society's aversion to inequity to the equation used to calculate the CI and AI. We calculate the inequity-weighted absolute risk reduction (iARR) for each treatment approach and find that if inequity does not matter then society will be indifferent to the SES-5 and FRS treatment strategies that prevent a similar number of CVD events overall. However, if inequality does matter and if the treatment threshold falls in the range of 5-20% then a risk equation that includes SES-5 should allocate treatment in a manner that is preferable to a strategy based on traditional risk factors alone. A hybrid strategy will avert more CVD events than either the SES-5 and or treatment strategies alone, irrespective of society's aversion to inequity or choice of treatment threshold. Implications for clinical practice and policy are discussed.
机译:心血管疾病(CVD)风险与社会经济地位(SES)呈负相关,而独立于传统CVD风险因素,但临床医生缺乏将SES梯度纳入其CVD风险计算的工具;和政策制定者很少评估CVD干预措施对健康不平等的简易措施的影响。美国当前的CVD风险计算器低估了低SES人群中的CVD风险,并可能加剧CVD结果中SES的不平等。本文的目的是开发和评估可改善中年低SES组中CVD风险预测的临床实用方程式,并估计使用该方程式对以社区为基础的中等收入人群CVD相关的收入不平等的潜在影响年龄组;对在社区进行动脉粥样硬化风险(ARIC)的12,218名参与者进行了初步分析,他们在基线时为自由血管疾病和糖尿病,并且随访了22年。经过地理编码的观测值与根据美国人口普查的六个普查区域级别变量计算出的邻里剥夺指数相关联。使用Cox比例风险和竞争风险回归模型分别预测冠心病或缺血性中风(CVD)的10年和20年风险。应用美国心脏协会推荐的方法评估新的CVD危险因素,论文证明,由教育和社区SES组成的SES-5变量的增加与CVD相关,可预测未来结局的发展,为CVD增加价值在1980年代后期基线时没有CVD的中年队列中,已经确定了危险因素并已通过充分改变预测风险以改变治疗决策来证明其临床实用性。该分析还证明了Framingham风险功能如何系统地低估了社会经济对于多个CVD结果,在10年和20年时CVD的梯度; SES-5变量的包含会减轻这种偏见。我们报告了针对低收入或受过教育的低SES参与者的特定结果,并表明,与整个队列相比,SES-5变量在此低SES组中改善了更大的重分类。我们进一步证明,当单一风险方程式被混合方法替代时,可以在净重分类方面进一步改善,该方法使用两种预测风险中的较高者将个体分类为治疗类别。被归类为较高风险类别的个体发生CVD的风险较高,并且用他汀类药物治疗十年(NNT)所需的预期人数与传统方法的NNT相比是有利的。 SES-5和混合方法将通过最大程度地减少低SES组中的治疗不足并增加可能避免的CVD事件比例约7.6%的百分点来改善CVD不平等,这意味着事件避免的相对增加为15%至50我们通过计算入射CVD浓度指数的观测值和预测值进一步探索将SES-5变量添加到传统CVD风险方程式对整个人群的影响,这是对相对CVD不平等的一种汇总度量,它解释了整个CVD的差异。家庭收入的全部范围。我们证明,传统的FRS风险函数低估了10年和20年事件CVD中观察到的CI近50%。相比之下,包含SES-5变量的风险函数会减弱这种被低估的情况,该估计值不再与零显着不同;我们还基于包含或包含以下内容的风险方程式对健康公平和竞争性治疗方法的实现进行建模排除SES-5变量。尽管所有基于CVD风险的治疗方法均可以改善CVD不平等和加权不平等加权CVD的成就(分别以浓度(CI)和成就(AI)指数衡量),但SES-5的治疗方法在更大程度上可以做到这一点和方法仅基于传统的FRS风险因素。为了说明如何将社会对不平等的态度纳入CVD干预措施的评估中,我们在计算CI和AI的方程式中添加了反映社会对不平等的厌恶的参数。我们计算每种治疗方法的不平等加权绝对风险降低(iARR),发现如果不平等无关紧要,那么社会将对SES-5和FRS治疗策略无动于衷,这些策略总体上防止了类似数量的CVD事件。但是,如果不平等确实很重要,并且如果治疗阈值落在5-20%的范围内,则包含SES-5的风险方程式应以比仅基于传统风险因素的策略更可取的方式分配治疗。混合策略将避免比单独的SES-5和/或治疗策略更多的CVD事件,无论社会对不平等的偏爱或待遇阈值的选择如何。讨论了对临床实践和政策的影响。

著录项

  • 作者

    Richards, Adam Kimball.;

  • 作者单位

    University of California, Los Angeles.;

  • 授予单位 University of California, Los Angeles.;
  • 学科 Health Sciences Public Health.;Health Sciences Epidemiology.;Health Sciences Medicine and Surgery.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 273 p.
  • 总页数 273
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:42:22

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