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How the evaluate population health? A study of nine population management initiatives

机译:如何评估人口健康?九项人口管理举措的研究

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Introduction : Population health Management (PM) initiatives are introduced to transform healthcare by integrating multiple care domains and addressing the continuum of health and well-being of a population. Insight is required into a population’s health and population health differences to evaluate and tailor these initiatives. This creates a demand for usable and accurate instruments for measuring population health and variations in population health between PM initiatives. This study aims to determine the usability of commonly used instruments for measuring population health and assesses population health differences between nine Dutch PM initiatives and the impact of demographic, personal and lifestyle factors. Method : In nine Dutch PM initiatives a population health survey was administered covering the Short Form 12 version 2 (SF12, physical and mental health status), Kessler 10 (K10) and Patient Activation Measure 13 (PAM13), as well as demographic, personal and lifestyle factors. The performance within a general population was assessed for the SF12, PAM13 and K10 instruments using descriptive and (confirmatory and exploratory) factor analyses as well as discriminant and reliability (Cronbach’s alpha) analyses. Subsequently, the impact of differences in demographic, personal and lifestyle factors on differences in population health were studied using multiple regression analyses. Results : The SF12 and PAM13 sum scores showed acceptable averages and distributions, while the results of the K10 indicated a floor effect. Construct validity was supported for the SF12 and K10, but was disproven for the PAM13. Reliability was good for all instruments. Consequently, age, education, origin, employment, Body Mass Index and smoking were identified as confounders for the studied nine PM initiatives. These confounders explained the differences found in PAM13 scores. However, not all health differences between PM initiatives were explained, as the SF12 outcomes still differed between PM initiatives once controlled. Conclusions : The SF12 and the PAM13 combined with demographic, personal and lifestyle characteristics can be used to measure the physical, mental, lifestyle and self-management constructs of population health. The K10 proved to be less useful for measuring a population’s health, due to a lack of dispersion in scores. Differences in population health found by these instruments, corrected for demographic and lifestyle factors, can be used to tailor initiatives by focusing interventions on variables that are shown to affect the health of their population. Additionally,results indicate that health is affected by variables not measured by this study, as not all variation in population health between PM initiatives was explained. Efforts should be made to seek out these influencers. Suggestions for future research : Future research should develop and study instruments that cover constructs of health introduced by recent definitions of health, such as participation and ‘positive health’. Other factors beyond healthcare, e.g. air quality, should be considered to further refine PM initiatives’ tailoring and evaluation.
机译:简介:引入了人口健康管理(PM)计划,以通过整合多个护理领域并解决人口的健康和福祉的连续性来转变医疗保健。需要了解人群的健康状况和人群健康差异,以评估和调整这些计划。这就产生了对可用于测量人口健康以及PM计划之间的人口健康变化的准确工具的需求。这项研究旨在确定用于测量人口健康的常用工具的可用性,并评估九项荷兰PM计划之间的人口健康差异以及人口,个人和生活方式因素的影响。方法:在9个荷兰PM计划中,对人口健康进行了调查,内容涵盖简表12版本2(SF12,身心健康状况),凯斯勒10(K10)和患者激活措施13(PAM13),以及个人的人口统计信息和生活方式因素。 SF12,PAM13和K10仪器使用描述性和(确认性和探索性)因子分析以及判别度和可靠性(克朗巴赫(Cronbach's alpha))分析,评估了普通人群中的性能。随后,使用多元回归分析研究了人口,个人和生活方式因素差异对人口健康差异的影响。结果:SF12和PAM13的总和显示出可接受的平均值和分布,而K10的结果显示了下调效果。 SF12和K10支持构建有效性,但PAM13则不支持。可靠性对所有仪器都很好。因此,年龄,教育程度,出身,就业,体重指数和吸烟被确定为研究的九项预防性行动的混杂因素。这些混杂因素解释了PAM13分数中发现的差异。但是,并未解释PM措施之间的所有健康差异,因为一旦得到控制,SF12成果之间的SF12结果仍存在差异。结论:SF12和PAM13结合人口,个人和生活方式特征可用于测量人口健康的身体,心理,生活方式和自我管理结构。由于缺乏分数分散,K10被证明对测量人群的健康状况没有多大用处。这些工具发现的人口健康差异经人口统计学和生活方式因素校正后,可通过将干预措施集中于已表明会影响其人口健康的变量来调整举措。此外,结果表明健康受到该研究未测量的变量的影响,因为并未解释PM措施之间人群健康的所有变化。应该努力寻找这些影响者。对未来研究的建议:未来研究应开发和研究涵盖由近期健康定义(例如参与和“积极健康”)引入的健康结构的工具。医疗保健以外的其他因素,例如空气质量,应考虑进一步完善PM计划的调整和评估。

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