Variability of COVID-19 mortality in Honduras: influence of sociodemographic factors.

IF 4.5 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Vilma Cristina Escoto Rodríguez, Manuela Expósito Ruiz
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引用次数: 0

Abstract

Background: In Central America, Honduras experienced a significant increase in SARS-CoV-2 infections between March 11, 2020, and January 26, 2022. Although limited research has been conducted on the impact of the COVID-19 pandemic on populations in Central American countries, this study seeks to contribute to the existing body of knowledge in the region. The objective of this study was to investigate the variability of COVID-19 mortality in Honduras and the impact of sociodemographic factors.

Methods: A cross-sectional and ecological study, using data from cases collected by the National Risk Management System (SINAGER) and recorded by the Demographic Observatory of the National Autonomous University of Honduras (ODU) between March 11, 2020, and January 26, 2022. Sociodemographic variables were obtained from the 2013 XVII Population and VI Housing Census by the National Institute of Statistics (INE). Age-adjusted case and COVID-19 mortality rates by sex were calculated. To explain the potential causes of variability, multilevel logistic regression models were constructed, considering individual and contextual variables.

Results: A total of 513,416 COVID-19 cases were included, of which 98 % (503,176) survived and 2 % (10,240) died. The results showed differences in COVID-19 mortality rates between municipalities and departments. The multilevel model revealed that age (OR: 1.0737; 95 % CI: [1.0726; 1.0749]) and sex (OR: 0.7434; 95 % CI: [0.7027; 0.7841]) were significantly associated with COVID-19 mortality, with men being more likely to die. Among departments, the significant contextual factors were the illiteracy rate and the percentage of the rural population, both of which were associated with higher COVID-19 mortality (OR: 1.0850; 95 % CI: [1.0511; 1.1189] and OR: 1.0234; 95 % CI: [1.0146; 1.0323]), while the percentage of the active population (working age people) was associated with a decrease in COVID-19 mortality (OR: 0.9768; 95 % CI: [0.9591; 0.9944]). The intraclass correlation coefficient (ICC) showed a reduction in variability attributable to the variation between departments, with a final ICC of 0.68 % .

Conclusions: Differences in COVID-19 mortality were found between the different departments, partly explained by sociodemographic factors. The results of this study show that, in addition to individual characteristics, population-level socioeconomic and educational factors influence COVID-19 mortality. Multilevel analysis is highly useful for providing evidence to improve approaches in future pandemics.

洪都拉斯COVID-19死亡率的变异性:社会人口因素的影响
背景:在中美洲,洪都拉斯在2020年3月11日至2022年1月26日期间SARS-CoV-2感染显著增加。虽然关于COVID-19大流行对中美洲国家人口的影响的研究有限,但本研究旨在为该地区现有的知识体系做出贡献。本研究的目的是调查洪都拉斯COVID-19死亡率的变异性以及社会人口因素的影响。方法:利用国家风险管理系统(SINAGER)收集的病例数据和洪都拉斯国立自治大学(ODU)人口观察站在2020年3月11日至2022年1月26日期间记录的数据进行横断面和生态学研究。社会人口学变量来自国家统计局2013年第十七次人口和第六次住房普查。计算按性别调整的年龄病例和COVID-19死亡率。为了解释变异的潜在原因,考虑到个体和上下文变量,构建了多水平逻辑回归模型。结果:共纳入513416例新冠肺炎病例,其中98%(503176例)存活,2%(10240例)死亡。结果显示,城市和部门之间的COVID-19死亡率存在差异。多层模型显示,年龄(OR: 1.0737;95% ci: [1.0726;1.0749])和性别(OR: 0.7434;95% ci: [0.7027;[0.7841])与COVID-19死亡率显著相关,男性更容易死亡。在科室中,文盲率和农村人口比例是显著的背景因素,两者都与较高的COVID-19死亡率相关(OR: 1.0850;95% ci: [1.0511;1.1189] OR: 1.0234;95% ci: [1.0146;1.0323]),而活动人口(工作年龄人口)的百分比与COVID-19死亡率的降低相关(OR: 0.9768;95% ci: [0.9591;0.9944])。类内相关系数(ICC)显示科室之间差异的可变性降低,最终ICC为0.68%。结论:不同科室之间的COVID-19死亡率存在差异,部分原因是社会人口因素。本研究结果表明,除个体特征外,人口层面的社会经济和教育因素也影响COVID-19死亡率。多层次分析对于提供证据以改进未来大流行的方法非常有用。
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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来源期刊
CiteScore
7.80
自引率
4.20%
发文量
162
审稿时长
28 weeks
期刊介绍: International Journal for Equity in Health is an Open Access, peer-reviewed, online journal presenting evidence relevant to the search for, and attainment of, equity in health across and within countries. International Journal for Equity in Health aims to improve the understanding of issues that influence the health of populations. This includes the discussion of political, policy-related, economic, social and health services-related influences, particularly with regard to systematic differences in distributions of one or more aspects of health in population groups defined demographically, geographically, or socially.
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