在使用平滑法确定的高发病率区域内调查疾病发病率的局部变化。

IF 1 4区 医学 Q4 HEALTH CARE SCIENCES & SERVICES Geospatial Health Pub Date : 2023-05-25 DOI:10.4081/gh.2023.1144
Matthew Tuson, Matthew Yap, David Whyatt
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引用次数: 0

摘要

设计探索性疾病图是为了确定疾病的危险因素,并指导对疾病的适当反应和寻求帮助的行为。然而,当按照标准做法使用总体管理单位制作疾病地图时,由于可修改的面积单位问题(MAUP),疾病地图可能会误导用户。精细分辨率数据的平滑地图减轻了MAUP,但可能仍然会模糊空间模式和特征。为了研究这些问题,我们使用澳大利亚统计局(ABS)统计区域2级(SA2)边界和最近的空间平滑技术:覆盖聚合法(OAM),绘制了2018/19年西澳大利亚珀斯与精神卫生相关的急诊科(MHED)演讲的比率。然后,我们研究了使用这两种方法划定的高速率区域内的局部速率变化。基于SA2和oam的地图分别确定了2个和5个高速率区域,后者不符合SA2边界。与此同时,两组高速率区域被发现包含了一些特定的局部区域,其速率非常高。这些结果表明,由于MAUP,使用汇总级行政单位制作的疾病地图作为描绘有针对性干预的地理区域的基础是不可靠的。相反,依赖此类地图来指导应对可能会损害有效和公平地提供医疗保健。需要对使用行政单位和平滑确定的高发病率区域内的局部发病率变化进行详细调查,以改进假设生成和医疗保健响应的设计。
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Investigating local variation in disease rates within high-rate regions identified using smoothing.

Exploratory disease maps are designed to identify risk factors of disease and guide appropriate responses to disease and helpseeking behaviour. However, when produced using aggregatelevel administrative units, as is standard practice, disease maps may mislead users due to the Modifiable Areal Unit Problem (MAUP). Smoothed maps of fine-resolution data mitigate the MAUP but may still obscure spatial patterns and features. To investigate these issues, we mapped rates of Mental Health- Related Emergency Department (MHED) presentations in Perth, Western Australia, in 2018/19 using Australian Bureau of Statistics (ABS) Statistical Areas Level 2 (SA2) boundaries and a recent spatial smoothing technique: the Overlay Aggregation Method (OAM). Then, we investigated local variation in rates within high-rate regions delineated using both approaches. The SA2- and OAM-based maps identified two and five high-rate regions, respectively, with the latter not conforming to SA2 boundaries. Meanwhile, both sets of high-rate regions were found to comprise a select number of localised areas with exceptionally high rates. These results demonstrate how, due to the MAUP, disease maps that are produced using aggregate-level administrative units are unreliable as a basis for delineating geographic regions of interest for targeted interventions. Instead, reliance on such maps to guide responses may compromise the efficient and equitable delivery of healthcare. Detailed investigation of local variation in rates within high-rate regions identified using both administrative units and smoothing is required to improve hypothesis generation and the design of healthcare responses.

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来源期刊
Geospatial Health
Geospatial Health 医学-公共卫生、环境卫生与职业卫生
CiteScore
2.40
自引率
11.80%
发文量
48
审稿时长
12 months
期刊介绍: The focus of the journal is on all aspects of the application of geographical information systems, remote sensing, global positioning systems, spatial statistics and other geospatial tools in human and veterinary health. The journal publishes two issues per year.
期刊最新文献
Childhood stunting in Indonesia: assessing the performance of Bayesian spatial conditional autoregressive models. A two-stage location model covering COVID-19 sampling, transport and DNA diagnosis: design of a national scheme for infection control. The distribution of cardiovascular diseases in Tanzania: a spatio-temporal investigation. Performance of a negative binomial-GLM in spatial scan statistic: a case study of low-birth weights in Pakistan. Tuberculosis in Aceh Province, Indonesia: a spatial epidemiological study covering the period 2019-2021.
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