确定适合糖尿病预防护理的亮点县:地理空间,积极偏差方法。

IF 2.2 4区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Michael Topmiller, Autumn M Kieber-Emmons, Kyle Shaak, Jessica L McCann
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引用次数: 1

摘要

积极偏差方法已被用于识别和研究绩效高的人(亮点),并将他们的成功转化为绩效较差的人,这为慢性病管理提供了巨大的潜力。然而,在不同的地理环境中应用积极偏差方法的例子很少。在先前研究的基础上,我们引入了一种地理空间方法,用于识别亮点县,并将其与需要改善的重点县进行匹配。该研究开发了一种新的糖尿病预防护理措施(DMPrevCare),并确定了该战略的重点县。我们使用Local Moran's I工具来识别DMPrevCare的空间异常值,这些异常值是接受适当糖尿病预防护理(DMPrevCare)的医疗保险受益人百分比较高的县,周围是接受DMPrevCare的医疗保险受益人百分比较低的县。我们将这些空间异常值定义为亮点。罗伯特·伍德·约翰逊基金会的县健康排名工具用于将亮点县与先前确定的重点县联系起来。我们确定了25个亮点县遍布美国南部和西部山区。亮点县与45个重点县相连,形成23个同级(亮点/重点)县组。地理空间方法被证明是有效的,可以识别美国各地与DMPrevCare相关的指标或差或强,但在人口统计学和社会经济特征方面其他方面相似的对等县。我们描述了积极偏差过程中下一步的框架,该框架确定了亮点县对糖尿病护理产生积极影响的潜在因素,以及如何将其应用于其同级优先县。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Bright Spot Counties for Appropriate Diabetes Preventive Care: A Geospatial, Positive Deviance Approach.

Positive deviance approaches, which have been used to identify and study high performers (bright spots) and translate their successes to poorer performers, offer great potential for chronic disease management. However, there are few examples of applying positive deviance approaches across different geographic contexts. Building on prior research that developed a new measure for appropriate diabetes preventive care (DMPrevCare) and identified priority counties for this strategy, we introduce a geospatial approach for identifying bright spot counties and case matching them to priority counties that need improvement. We used the Local Moran's I tool to identify DMPrevCare spatial outliers, which are counties with larger percentages of Medicare beneficiaries receiving appropriate diabetes preventive care (DMPrevCare) surrounded by counties with smaller percentages of Medicare beneficiaries receiving DMPrevCare. We define these spatial outliers as bright spots. The Robert Wood Johnson Foundation County Health Rankings Peer Counties tool was used to link bright spot counties to previously identified priority counties. We identified 25 bright spot counties throughout the southern and mountain western United States. Bright spot counties were linked to 45 priority counties, resulting in 23 peer (bright/priority) county groups. A geospatial approach was shown to be effective in identifying peer counties across the United States that had either poor or strong metrics related to DMPrevCare, but were otherwise similar in terms of demographics and socioeconomic characteristics. We describe a framework for the next steps in the positive deviance process, which identifies potential factors in bright spot counties that positively impact diabetes care and how they may be applied to their peer priority counties.

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来源期刊
Journal of Primary Prevention
Journal of Primary Prevention PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
2.80
自引率
0.00%
发文量
1
期刊介绍: The Journal of Prevention is a multidisciplinary journal that publishes manuscripts aimed at reducing negative social and health outcomes and promoting human health and well-being. It publishes high-quality research that discusses evidence-based interventions, policies, and practices. The editions cover a wide range of prevention science themes and value diverse populations, age groups, and methodologies. Our target audiences are prevention scientists, practitioners, and policymakers from diverse geographic locations. Specific types of papers published in the journal include Original Research, Research Methods, Practitioner Narrative, Debate, Brief Reports, Letter to the Editor, Policy, and Reviews. The selection of articles for publication is based on their innovation, contribution to the field of prevention, and quality. The Journal of Prevention differs from other similar journals in the field by offering a more culturally and geographically diverse team of editors, a broader range of subjects and methodologies, and the intention to attract the readership of prevention practitioners and other stakeholders (alongside scientists).
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