Suppr超能文献

高血压:制定预测模型以调整社区层面自我报告的高血压患病率。

Hypertension: development of a prediction model to adjust self-reported hypertension prevalence at the community level.

机构信息

Department of Health Behavior and Health Education, School of Public Health, University of Michigan, Ann Arbor, MI, USA.

出版信息

BMC Health Serv Res. 2012 Sep 11;12:312. doi: 10.1186/1472-6963-12-312.

Abstract

BACKGROUND

Accurate estimates of hypertension prevalence are critical for assessment of population health and for planning and implementing prevention and health care programs. While self-reported data is often more economically feasible and readily available compared to clinically measured HBP, these reports may underestimate clinical prevalence to varying degrees. Understanding the accuracy of self-reported data and developing prediction models that correct for underreporting of hypertension in self-reported data can be critical tools in the development of more accurate population level estimates, and in planning population-based interventions to reduce the risk of, or more effectively treat, hypertension. This study examines the accuracy of self-reported survey data in describing prevalence of clinically measured hypertension in two racially and ethnically diverse urban samples, and evaluates a mechanism to correct self-reported data in order to more accurately reflect clinical hypertension prevalence.

METHODS

We analyze data from the Detroit Healthy Environments Partnership (HEP) Survey conducted in 2002 and the National Health and Nutrition Examination (NHANES) 2001-2002 restricted to urban areas and participants 25 years and older. We re-calibrate measures of agreement within the HEP sample drawing upon parameter estimates derived from the NHANES urban sample, and assess the quality of the adjustment proposed within the HEP sample.

RESULTS

Both self-reported and clinically assessed prevalence of hypertension were higher in the HEP sample (29.7 and 40.1, respectively) compared to the NHANES urban sample (25.7 and 33.8, respectively). In both urban samples, self-reported and clinically assessed prevalence is higher than that reported in the full NHANES sample in the same year (22.9 and 30.4, respectively). Sensitivity, specificity and accuracy between clinical and self-reported hypertension prevalence were 'moderate to good' within the HEP sample and 'good to excellent' within the NHANES sample. Agreement between clinical and self-reported hypertension prevalence was 'moderate to good' within the HEP sample (kappa =0.65; 95% CI = 0.63-0.67), and 'good to excellent' within the NHANES sample (kappa = 0.75; 95%CI = 0.73-0.80). Application of a 'correction' rule based on prediction models for clinical hypertension using the national sample (NHANES) allowed us to re-calibrate sensitivity and specificity estimates for the HEP sample. The adjusted estimates of hypertension in the HEP sample based on two different correction models, 38.1% and 40.5%, were much closer to the observed hypertension prevalence of 40.1%.

CONCLUSIONS

Application of a simple prediction model derived from national NHANES data to self-reported data from the HEP (Detroit based) sample resulted in estimates that more closely approximated clinically measured hypertension prevalence in this urban community. Similar correction models may be useful in obtaining more accurate estimates of hypertension prevalence in other studies that rely on self-reported hypertension.

摘要

背景

准确估计高血压的患病率对于评估人群健康状况以及规划和实施预防和保健计划至关重要。虽然与临床测量的高血压相比,自我报告的数据通常更经济可行且易于获得,但这些报告可能在不同程度上低估了临床患病率。了解自我报告数据的准确性,并开发可纠正自我报告数据中高血压漏报的预测模型,这对于开发更准确的人群水平估计以及规划基于人群的干预措施以降低高血压的风险或更有效地治疗高血压至关重要。本研究检查了两种在种族和民族上多样化的城市样本中自我报告的调查数据在描述临床测量的高血压患病率方面的准确性,并评估了一种纠正自我报告数据的机制,以便更准确地反映临床高血压的患病率。

方法

我们分析了 2002 年底特律健康环境伙伴关系(HEP)调查和 2001-2002 年全国健康和营养检查(NHANES)中城市地区和 25 岁及以上参与者的数据。我们使用从 NHANES 城市样本中得出的参数估计值重新校准 HEP 样本中的一致性度量,并评估在 HEP 样本中提出的调整的质量。

结果

HEP 样本中自我报告和临床评估的高血压患病率均高于 NHANES 城市样本(分别为 29.7%和 40.1%)。在这两个城市样本中,自我报告和临床评估的患病率均高于同年 NHANES 全样本报告的患病率(分别为 22.9%和 30.4%)。HEP 样本中临床和自我报告的高血压患病率之间的敏感性、特异性和准确性为“中度至良好”,NHANES 样本中为“良好至优秀”。HEP 样本中临床和自我报告的高血压患病率之间的一致性为“中度至良好”(kappa=0.65;95%CI=0.63-0.67),NHANES 样本中为“良好至优秀”(kappa=0.75;95%CI=0.73-0.80)。应用基于全国样本(NHANES)的临床高血压预测模型的“校正”规则,使我们能够重新校准 HEP 样本的敏感性和特异性估计值。HEP 样本中基于两种不同校正模型(38.1%和 40.5%)的高血压调整估计值更接近观察到的高血压患病率 40.1%。

结论

将源自全国 NHANES 数据的简单预测模型应用于 HEP(底特律)样本的自我报告数据,得出的估计值更接近该城市社区临床测量的高血压患病率。在其他依赖自我报告的高血压的研究中,类似的校正模型可能有助于获得更准确的高血压患病率估计值。

相似文献

引用本文的文献

本文引用的文献

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验