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基于地理加法概率单位模型和潜在变量模型的儿童发病率分析:以埃及为例的案例研究

Analysis of childhood morbidity with geoadditive probit and latent variable model: a case study for Egypt.

作者信息

Khatab Khaled, Fahrmeir Ludwig

机构信息

Institute of Occupational and Social Medicine, Medical Faculty, RWTH Aachen University, Aachen, Germany.

出版信息

Am J Trop Med Hyg. 2009 Jul;81(1):116-28.

Abstract

This work applies geoadditive latent variable models to analyze the impact of risk factors and the spatial effects on the latent, unobservable variable "health status" or "frailty" of a child less than 5 years of age using the 2003 Demographic and Health survey (DHS) data from Egypt. Childhood diseases are a major cause of death of children in the developing world. In developing countries a quarter of infant and childhood mortality is related to childhood disease, particularly to diarrhea. Our case study is based on the 2003 Demographic and Health Survey for Egypt (EDHS). It provided data on the prevalence and treatment of common childhood disease such as diarrhea, cough, and fever, which are seen as symptoms or indicators of children's health status, causing increased morbidity and mortality. These causes are often associated with a number of risk factors, including inadequate antenatal care, lack of or inadequate vaccination, and environmental factors that affected the health of the child in early years, various bio-demographic and socioeconomic variables. In this work, we investigate the impact of such factors on childhood disease with flexible geoadditive models. These models allow us to analyze usual linear effects of covariates, nonlinear effects of continuous covariates, and small-area regional effects within a unified, semi-parametric Bayesian framework for modeling and inference. As a first step, we use separate geoadditive probit models the binary target variables for diarrhea, cough, and fever using covariate information from the EDHS. Based on these results, we then apply recently developed geoadditive latent variable models where the three observable disease variables are taken as indicators for the latent individual variable "health status" or "frailty" of a child. This modeling approach allows us to study the common influence of risk factors on individual frailties of children, thereby automatically accounting for association between diseases as indicators for health status.

摘要

本研究运用地理加性潜在变量模型,利用2003年埃及人口与健康调查(DHS)数据,分析风险因素及空间效应对于5岁以下儿童潜在的、不可观测变量“健康状况”或“虚弱程度”的影响。儿童疾病是发展中国家儿童死亡的主要原因。在发展中国家,四分之一的婴儿及儿童死亡与儿童疾病相关,尤其是腹泻。我们的案例研究基于2003年埃及人口与健康调查(EDHS)。该调查提供了常见儿童疾病如腹泻、咳嗽和发烧的患病率及治疗情况的数据,这些疾病被视为儿童健康状况的症状或指标,会导致发病率和死亡率上升。这些病因通常与多种风险因素相关,包括产前护理不足、疫苗接种缺乏或不足,以及早年影响儿童健康的环境因素、各种生物人口统计学和社会经济变量。在本研究中,我们使用灵活的地理加性模型来研究这些因素对儿童疾病的影响。这些模型使我们能够在一个统一的半参数贝叶斯建模和推理框架内,分析协变量的常规线性效应、连续协变量的非线性效应以及小区域的区域效应。第一步,我们使用单独的地理加性概率单位模型,利用EDHS的协变量信息对腹泻、咳嗽和发烧的二元目标变量进行建模。基于这些结果,我们随后应用最近开发的地理加性潜在变量模型,将三个可观测的疾病变量作为儿童潜在个体变量“健康状况”或“虚弱程度”的指标。这种建模方法使我们能够研究风险因素对儿童个体虚弱程度的共同影响,从而自动考虑作为健康状况指标的疾病之间的关联。

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