Medical Geography: a Promising Field of Application for Geostatistics.

P Goovaerts
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引用次数: 60

Abstract

The analysis of health data and putative covariates, such as environmental, socio-economic, behavioral or demographic factors, is a promising application for geostatistics. It presents, however, several methodological challenges that arise from the fact that data are typically aggregated over irregular spatial supports and consist of a numerator and a denominator (i.e. population size). This paper presents an overview of recent developments in the field of health geostatistics, with an emphasis on three main steps in the analysis of areal health data: estimation of the underlying disease risk, detection of areas with significantly higher risk, and analysis of relationships with putative risk factors. The analysis is illustrated using age-adjusted cervix cancer mortality rates recorded over the 1970-1994 period for 118 counties of four states in the Western USA. Poisson kriging allows the filtering of noisy mortality rates computed from small population sizes, enhancing the correlation with two putative explanatory variables: percentage of habitants living below the federally defined poverty line, and percentage of Hispanic females. Area-to-point kriging formulation creates continuous maps of mortality risk, reducing the visual bias associated with the interpretation of choropleth maps. Stochastic simulation is used to generate realizations of cancer mortality maps, which allows one to quantify numerically how the uncertainty about the spatial distribution of health outcomes translates into uncertainty about the location of clusters of high values or the correlation with covariates. Last, geographically-weighted regression highlights the non-stationarity in the explanatory power of covariates: the higher mortality values along the coast are better explained by the two covariates than the lower risk recorded in Utah.

医学地理学:地统计学的一个有前途的应用领域。
对健康数据和假定的协变量(如环境、社会经济、行为或人口因素)的分析是地质统计学的一个很有前途的应用。但是,由于数据通常是在不规则的空间支持上汇总的,并且由分子和分母(即人口规模)组成,因此在方法上提出了若干挑战。本文概述了卫生地理统计领域的最新发展,重点介绍了分析地区卫生数据的三个主要步骤:估计潜在疾病风险,发现风险明显较高的地区,以及分析与假定风险因素的关系。该分析使用了美国西部四个州118个县1970-1994年期间记录的年龄调整后的宫颈癌死亡率。泊松克里格允许过滤从小人口规模计算的嘈杂死亡率,增强与两个假定的解释变量的相关性:生活在联邦规定的贫困线以下的居民百分比和西班牙裔女性百分比。区域到点克里格公式创建了连续的死亡风险图,减少了与解释人口密度图相关的视觉偏差。随机模拟用于生成癌症死亡率图的实现,这使人们能够以数字方式量化健康结果空间分布的不确定性如何转化为高值集群位置的不确定性或与协变量的相关性。最后,地理加权回归突出了协变量解释能力的非平稳性:沿海地区较高的死亡率值比犹他州记录的较低风险更好地解释了这两个协变量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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