Andreotti Alessandra, Minicuci Nadia, Kowal Paul, Chatterji Somnath
CNR- Institute of Neuroscience, Padova Section, Padova, Italy.
PLoS One. 2009;4(2):e4426. doi: 10.1371/journal.pone.0004426. Epub 2009 Feb 10.
The World Health Organization (WHO) conducted the World Health Survey (WHS) between 2002 and 2004 in 70 countries to provide cross-population comparable data on health, health-related outcomes and risk factors. The aim of this study was to apply Grade of Membership (GoM) modelling as a means to condense extensive health information from the WHS into a set of easily understandable health profiles and to assign the degree to which an individual belongs to each profile.
This paper described the application of the GoM models to summarize population health status using World Health Survey data. Grade of Membership analysis is a flexible, non-parametric, multivariate method, used to calculate health profiles from WHS self-reported health state and health conditions. The WHS dataset was divided into four country economic categories based on the World Bank economic groupings (high, upper-middle, lower-middle and low income economies) for separate GoM analysis. Three main health profiles were produced for each of the four areas: I. Robust; II. Intermediate; III. Frail; moreover population health, wealth and inequalities are defined for countries in each economic area as a means to put the health results into perspective.
These analyses have provided a robust method to better understand health profiles and the components which can help to identify healthy and non-healthy individuals. The obtained profiles have described concrete levels of health and have clearly delineated characteristics of healthy and non-healthy respondents. The GoM results provided both a useable way of summarising complex individual health information and a selection of intermediate determinants which can be targeted for interventions to improve health. As populations' age, and with limited budgets for additional costs for health care and social services, applying the GoM methods may assist with identifying higher risk profiles for decision-making and resource allocations.
世界卫生组织(WHO)在2002年至2004年期间在70个国家开展了世界卫生调查(WHS),以提供关于健康、健康相关结果和风险因素的跨人群可比数据。本研究的目的是应用隶属度(GoM)建模,将来自WHS的大量健康信息浓缩为一组易于理解的健康概况,并确定个体属于每个概况的程度。
本文描述了GoM模型在利用世界卫生调查数据总结人群健康状况方面的应用。隶属度分析是一种灵活的、非参数的多变量方法,用于根据WHS自我报告的健康状态和健康状况计算健康概况。根据世界银行的经济分组(高收入、中高收入、中低收入和低收入经济体),WHS数据集被分为四个国家经济类别,以进行单独的GoM分析。为这四个领域中的每一个都生成了三个主要的健康概况:I. 强健型;II. 中间型;III. 虚弱型;此外,还为每个经济领域的国家定义了人群健康、财富和不平等状况,以便从整体上看待健康结果。
这些分析提供了一种有力的方法,以更好地理解健康概况及其组成部分,这有助于识别健康和不健康个体。所获得的概况描述了具体的健康水平,并清晰地勾勒出健康和不健康受访者的特征。GoM结果既提供了一种总结复杂个体健康信息的实用方法,又提供了一系列可作为干预目标以改善健康的中间决定因素。随着人口老龄化,以及医疗保健和社会服务额外费用的预算有限,应用GoM方法可能有助于识别高风险概况,以用于决策和资源分配。