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使用横断面数据评估残疾负担的多项相加风险模型。

Multinomial additive hazard model to assess the disability burden using cross-sectional data.

作者信息

Yokota Renata T C, Van Oyen Herman, Looman Caspar W N, Nusselder Wilma J, Otava Martin, Kifle Yimer Wasihun, Molenberghs Geert

机构信息

Department of Public Health and Surveillance, Scientific Institute of Public Health, 1050, Brussels, Belgium.

Department of Sociology, Interface Demography, Vrije Universit eit Brussel, Brussels, Belgium.

出版信息

Biom J. 2017 Sep;59(5):901-917. doi: 10.1002/bimj.201600157. Epub 2017 Mar 23.

Abstract

Population aging is accompanied by the burden of chronic diseases and disability. Chronic diseases are among the main causes of disability, which is associated with poor quality of life and high health care costs in the elderly. The identification of which chronic diseases contribute most to the disability prevalence is important to reduce the burden. Although longitudinal studies can be considered the gold standard to assess the causes of disability, they are costly and often with restricted sample size. Thus, the use of cross-sectional data under certain assumptions has become a popular alternative. Among the existing methods based on cross-sectional data, the attribution method, which was originally developed for binary disability outcomes, is an attractive option, as it enables the partition of disability into the additive contribution of chronic diseases, taking into account multimorbidity and that disability can be present even in the absence of disease. In this paper, we propose an extension of the attribution method to multinomial responses, since disability is often measured as a multicategory variable in most surveys, representing different severity levels. The R function constrOptim is used to maximize the multinomial log-likelihood function subject to a linear inequality constraint. Our simulation study indicates overall good performance of the model, without convergence problems. However, the model must be used with care for populations with low marginal disability probabilities and with high sum of conditional probabilities, especially with small sample size. For illustration, we apply the model to the data of the Belgian Health Interview Surveys.

摘要

人口老龄化伴随着慢性病负担和残疾问题。慢性病是导致残疾的主要原因之一,这与老年人生活质量差和医疗费用高有关。确定哪些慢性病对残疾患病率的影响最大对于减轻负担至关重要。尽管纵向研究可被视为评估残疾原因的金标准,但它们成本高昂且样本量往往有限。因此,在某些假设下使用横断面数据已成为一种流行的替代方法。在基于横断面数据的现有方法中,归因法最初是为二元残疾结果开发的,是一个有吸引力的选择,因为它能够将残疾划分为慢性病的累加贡献,同时考虑到多病共存情况以及即使没有疾病也可能存在残疾的情况。在本文中,我们提出将归因法扩展到多项响应,因为在大多数调查中,残疾通常被测量为多分类变量,代表不同的严重程度水平。使用R函数constrOptim在一个线性不等式约束下最大化多项对数似然函数。我们的模拟研究表明该模型总体表现良好,不存在收敛问题。然而,对于边际残疾概率较低且条件概率总和较高的人群,尤其是样本量较小时,必须谨慎使用该模型。为了说明,我们将该模型应用于比利时健康访谈调查的数据。

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