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基于区域剥夺效应对 COVID-19 发病率的影响建模:印度钦奈特大城市研究。

Modeling the effect of area deprivation on COVID-19 incidences: a study of Chennai megacity, India.

机构信息

Department of Geography, University of Gour Banga, Malda, India.

Department of Geography, Kazi Nazrul University, Asansol, India.

出版信息

Public Health. 2020 Aug;185:266-269. doi: 10.1016/j.puhe.2020.06.011. Epub 2020 Jun 12.

DOI:10.1016/j.puhe.2020.06.011
PMID:32707468
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7290224/
Abstract

OBJECTIVES

Socio-economic inequalities may affect coronavirus disease 2019 (COVID-19) incidence. The goal of the research was to explore the association between deprivation of socio-economic status (SES) and spatial patterns of COVID-19 incidence in Chennai megacity for unfolding the disease epidemiology.

STUDY DESIGN

This is an ecological (or contextual) study for electoral wards (subcities) of Chennai megacity.

METHODS

Using data of confirmed COVID-19 cases from May 15, 2020, to May 21, 2020, for 155 electoral wards obtained from the official website of the Chennai Municipal Corporation, we examined the incidence of COVID-19 using two count regression models, namely, Poisson regression (PR) and negative binomial regression (NBR). As explanatory factors, we considered area deprivation that represented the deprivation of SES. An index of multiple deprivations (IMD) was developed to measure the area deprivation using an advanced local statistic, geographically weighted principal component analysis. Based on the availability of appropriately scaled data, five domains (i.e., poor housing condition, low asset possession, poor availability of WaSH services, lack of household amenities and services, and gender disparity) were selected as components of the IMD in this study.

RESULTS

The hot spot analysis revealed that area deprivation was significantly associated with higher incidences of COVID-19 in Chennai megacity. The high variations (adjusted R: 72.2%) with the lower Bayesian Information Criteria (BIC) (124.34) and Akaike's Information Criteria (AIC) (112.12) for NBR compared with PR suggests that the NBR model better explains the relationship between area deprivation and COVID-19 incidences in Chennai megacity. NBR with two-sided tests and P <0.05 were considered statistically significant. The outcome of the PR and NBR models suggests that when all other variables were constant, according to NBR, the relative risk (RR) of COVID-19 incidences was 2.19 for the wards with high housing deprivation or, in other words, the wards with high housing deprivation having 119% higher probability (RR = e = 2.19, 95% confidence interval [CI] = 1.98 to 2.40), compared with areas with low deprivation. Similarly, in the wards with poor availability of WaSH services, chances of having COVID-19 incidence was 90% higher than in the wards with good WaSH services (RR = e = 1.90, 95% CI = 1.79 to 2.00). Spatial risks of COVID-19 were predominantly concentrated in the wards with higher levels of area deprivation, which were mostly located in the northeastern parts of Chennai megacity.

CONCLUSIONS

We formulated an area-based IMD, which was substantially related to COVID-19 incidences in Chennai megacity. This study highlights that the risks of COVID-19 tend to be higher in areas with low SES and that the northeastern part of Chennai megacity is predominantly high-risk areas. Our results can guide measures of COVID-19 control and prevention by considering spatial risks and area deprivation.

摘要

目的

社会经济不平等可能会影响 2019 年冠状病毒病(COVID-19)的发病率。本研究的目的是探讨剥夺社会经济地位(SES)与钦奈大都市区 COVID-19 发病率之间的空间模式之间的关系,以揭示疾病的流行病学。

研究设计

这是对钦奈大都市区的选举区(subcities)进行的生态(或上下文)研究。

方法

使用从钦奈市政公司官方网站上获取的 2020 年 5 月 15 日至 5 月 21 日期间 155 个选举区确诊 COVID-19 病例的数据,我们使用两种计数回归模型(即泊松回归(PR)和负二项式回归(NBR))检查 COVID-19 的发病率。作为解释因素,我们考虑了代表 SES 剥夺的区域剥夺。使用高级局部统计地理加权主成分分析,开发了一个多剥夺指数(IMD)来衡量区域剥夺程度。根据适当规模数据的可用性,选择了五个领域(即住房条件差、资产拥有量低、WaSH 服务供应不足、缺乏家庭设施和服务以及性别差距)作为 IMD 的组成部分。

结果

热点分析表明,区域剥夺与钦奈大都市区 COVID-19 发病率的升高显著相关。与 PR 相比,NBR 具有更高的变异度(调整后的 R:72.2%)和更低的贝叶斯信息准则(BIC)(124.34)和赤池信息量准则(AIC)(112.12),这表明 NBR 模型更好地解释了区域剥夺与钦奈大都市区 COVID-19 发病率之间的关系。双侧检验和 P<0.05 的 NBR 被认为具有统计学意义。PR 和 NBR 模型的结果表明,当所有其他变量保持不变时,根据 NBR,住房剥夺程度高的选区 COVID-19 发病率的相对风险(RR)为 2.19,换句话说,与剥夺程度低的选区相比,住房剥夺程度高的选区 COVID-19 发病率高 119%(RR=e=2.19,95%置信区间[CI]=1.98 至 2.40)。同样,在 WaSH 服务供应不足的选区,COVID-19 发病率的可能性比 WaSH 服务良好的选区高 90%(RR=e=1.90,95%CI=1.79 至 2.00)。COVID-19 的空间风险主要集中在区域剥夺程度较高的选区,这些选区主要位于钦奈大都市区的东北部。

结论

我们制定了一个基于区域的 IMD,它与钦奈大都市区的 COVID-19 发病率密切相关。本研究强调,COVID-19 的风险在 SES 较低的地区更高,而钦奈大都市区的东北部则是高风险地区。我们的结果可以通过考虑空间风险和区域剥夺来指导 COVID-19 控制和预防措施。

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本文引用的文献

1
Poverty, inequality and COVID-19: the forgotten vulnerable.贫困、不平等与新冠疫情:被遗忘的弱势群体。
Public Health. 2020 Jun;183:110-111. doi: 10.1016/j.puhe.2020.05.006. Epub 2020 May 14.
2
Prediction for the spread of COVID-19 in India and effectiveness of preventive measures.预测 COVID-19 在印度的传播情况和预防措施的效果。
Sci Total Environ. 2020 Aug 1;728:138762. doi: 10.1016/j.scitotenv.2020.138762. Epub 2020 Apr 20.
3
Why inequality could spread COVID-19.为何不平等会传播新冠病毒。
使用空间建模对COVID-19发病率及其决定因素进行空间分析:印度的一项研究。
Environ Chall (Amst). 2021 Aug;4:100096. doi: 10.1016/j.envc.2021.100096. Epub 2021 Apr 10.
4
Scottish Index of Multiple Deprivation (SIMD) indicators as predictors of mortality among patients hospitalised with COVID-19 disease in the Lothian Region, Scotland during the first wave: a cohort study.苏格兰多重剥夺指数 (SIMD) 指标对苏格兰洛锡安区 COVID-19 患者住院死亡率的预测作用:一项队列研究。
Int J Equity Health. 2023 Oct 5;22(1):205. doi: 10.1186/s12939-023-02017-y.
5
Exploration of the COVID-19 pandemic at the neighborhood level in an intra-urban setting.城市内邻里层面的 COVID-19 大流行探索。
Front Public Health. 2023 Apr 13;11:1128452. doi: 10.3389/fpubh.2023.1128452. eCollection 2023.
6
The Impact of the COVID-19 Pandemic and Socioeconomic Deprivation on Admissions to the Emergency Department for Psychiatric Illness: An Observational Study in a Province of Southern Italy.新冠疫情和社会经济贫困对精神疾病患者急诊科就诊率的影响:意大利南部某省的一项观察性研究
Life (Basel). 2023 Apr 3;13(4):943. doi: 10.3390/life13040943.
7
Impact of Socioeconomic Deprivation on the Local Spread of COVID-19 Cases Mediated by the Effect of Seasons and Restrictive Public Health Measures: A Retrospective Observational Study in Apulia Region, Italy.社会经济剥夺对 COVID-19 局部传播的影响:意大利普利亚地区的一项回顾性观察研究。季节和限制性公共卫生措施的影响中介
Int J Environ Res Public Health. 2022 Sep 10;19(18):11410. doi: 10.3390/ijerph191811410.
8
Area Deprivation and COVID-19 Incidence and Mortality in Bavaria, Germany: A Bayesian Geographical Analysis.德国巴伐利亚地区的贫困与 COVID-19 发病率和死亡率:一项贝叶斯地理分析。
Front Public Health. 2022 Jul 15;10:927658. doi: 10.3389/fpubh.2022.927658. eCollection 2022.
9
Methods Used in the Spatial and Spatiotemporal Analysis of COVID-19 Epidemiology: A Systematic Review.用于 COVID-19 流行病学的空间和时空分析的方法:系统评价。
Int J Environ Res Public Health. 2022 Jul 6;19(14):8267. doi: 10.3390/ijerph19148267.
10
Area-level socioeconomic deprivation, non-national residency, and Covid-19 incidence: A longitudinal spatiotemporal analysis in Germany.地区层面的社会经济剥夺、非本国居民身份与新冠疫情发病率:德国的一项纵向时空分析
EClinicalMedicine. 2022 Jul;49:101485. doi: 10.1016/j.eclinm.2022.101485. Epub 2022 Jun 13.
Lancet Public Health. 2020 May;5(5):e240. doi: 10.1016/S2468-2667(20)30085-2. Epub 2020 Apr 2.
4
Higher mortality in areas of lower socioeconomic position measured by a single index of deprivation in Japan.在日本,用单一贫困指数衡量的社会经济地位较低地区死亡率更高。
Public Health. 2007 Mar;121(3):163-73. doi: 10.1016/j.puhe.2006.10.015. Epub 2007 Jan 12.
5
Crowding: risk factor or protective factor for lower respiratory disease in young children?拥挤:幼儿下呼吸道疾病的风险因素还是保护因素?
BMC Public Health. 2004 Jun 3;4:19. doi: 10.1186/1471-2458-4-19.