Large Cohort Data Based Cost-Effective Disease Prevention Design Strategy: Strong Heart Study.

心血管病(英文) Pub Date : 2018-12-01 Epub Date: 2018-12-29 DOI:10.4236/wjcd.2018.812058
Wenyu Wang, Elisa T Lee, Barbara V Howard, Richard Devereux, Ying Zhang, Julie A Stoner
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引用次数: 1

Abstract

Background and objective: A multitude of large cohort studies have collected data on incidence and covariates/risk factors of various chronic diseases. However, approaches for utilization of these large data and translation of the valuable results to inform and guide clinical disease prevention practice are not well developed. In this paper, we proposed, based on large cohort study data, a novel conceptual cost-effective disease prevention design strategy for a target group when it is not affordable to include everyone in the target group for intervention.

Methods and results: Data from American Indian participants (n = 3516; 2056 women) aged 45 - 74 years in the Strong Heart Study, the diabetes risk prediction model from the study, a utility function, and regression models were used. A conceptual cost-effective disease prevention design strategy based on large cohort data was initiated. The application of the proposed strategy for diabetes prevention was illustrated.

Discussion: The strategy may provide reasonable solutions to address cost-effective prevention design issues. These issues include complex associations of a disease with its significant risk factors, cost-effectively selecting individuals at high risk of developing disease to undergo intervention, individual differences in health conditions, choosing intervention risk factors and setting their appropriate, attainable, gradual and adaptive goal levels for different subgroups, and assessing effectiveness of the prevention program.

Conclusions: The strategy and methods shown in the illustrative example can also be analogously adopted and applied to other diseases preventions. The proposed strategy provides a way to translate and apply epidemiological study results to clinical disease prevention practice.

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基于大队列数据的具有成本效益的疾病预防设计策略:强心脏研究。
背景和目的:大量的大型队列研究收集了各种慢性疾病的发病率和协变量/危险因素的数据。然而,利用这些大数据和翻译有价值的结果来告知和指导临床疾病预防实践的方法尚未得到很好的发展。在本文中,我们基于大量队列研究数据,提出了一种新的概念性的具有成本效益的疾病预防设计策略,当无法负担得起将所有人纳入目标群体进行干预时。方法和结果:来自美洲印第安人参与者的数据(n = 3516;2056名女性),年龄在45 - 74岁之间,使用了来自该研究的糖尿病风险预测模型、效用函数和回归模型。提出了一种基于大量队列数据的概念性的具有成本效益的疾病预防设计策略。并举例说明了该策略在糖尿病预防中的应用。讨论:该策略可能为解决具有成本效益的预防设计问题提供合理的解决方案。这些问题包括疾病与其重要风险因素的复杂关联,经济有效地选择高风险个体进行干预,健康状况的个体差异,选择干预风险因素并为不同亚群设定适当的,可实现的,渐进的和适应性的目标水平,以及评估预防计划的有效性。结论:本例所示的策略和方法也可类比地应用于其他疾病的预防。提出的策略提供了一种将流行病学研究结果转化和应用于临床疾病预防实践的方法。
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Evaluation of a new molecular test for the detection of SARS-CoV-2 nucleic acid in salivary samples. Large Cohort Data Based Cost-Effective Disease Prevention Design Strategy: Strong Heart Study. Large Cohort Data Based Group or Community Disease Prevention Design Strategy: Strong Heart Study. Risk Factors and Prediction of Stroke in a Population with High Prevalence of Diabetes: The Strong Heart Study. ELECTROCARDIOGRAPHIC ABNORMALITIES AMONG MEXICAN AMERICANS: CORRELATIONS WITH DIABETES, OBESITY, AND THE METABOLIC SYNDROME.
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