[Social, demographic and morbimortality characteristics of the cases treated for COVID-19 at the Ignacio Chávez National Institute of Cardiology. A descriptive cross-sectional study].

IF 0.7 Q4 CARDIAC & CARDIOVASCULAR SYSTEMS
Maite Vallejo, Guadalupe Gutiérrez-Esparza, Lucía Ríos-Núñez, Rosalinda Altamira-Mendoza, Lucero E Groves-Miralrio, Enrique Hernández-Lemus, Mireya Martínez-García
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引用次数: 0

Abstract

Introduction: The COVID-19 pandemic brought with it a large number of adverse consequences for public health with serious socioeconomic repercussions. In this study we characterize the social, demographic, morbidity and mortality conditions of individuals treated for COVID-19 in one of the SARS-CoV-2 reference hospitals in Mexico City.

Method: A descriptive cross-sectional study was carried out in 259 patients discharged from the Instituto Nacional de Cardiología Ignacio Chávez, between April 11, 2020 and March 14, 2021. A multivariate logistic regression model was used to identify the association between sociodemographic and clinical variables. An optimization was performed using maximum likelihood calculations to choose the best model compatible with the data. The maximum likelihood model was evaluated using ROC curves, goodnessof-fit estimators, and multicollinearity analysis. Statistically significant patterns of comorbidities were inferred by evaluating a hypergeometric test over the frequencies of co-occurrence of pairs of conditions. A network analysis was implemented to determine connectivity patterns based on degree centrality, between comorbidities and outcome variables.

Results: The main social disadvantages of the studied population are related to the lack of social security (96.5%) and the lag in housing conditions (81%). Variables associated with the probability of survival were being younger (p < 0.0001), having more durable material goods (p = 0.0034) and avoiding: pneumonia (p = 0.0072), septic shock (p < 0.0001) and acute respiratory failure (p < 0.0001); (AUROC: 91.5%). The comorbidity network for survival cases has a high degree of connectivity between conditions such as cardiac arrhythmias and essential arterial hypertension (Degree Centrality = 90 and 78, respectively).

Conclusions: Given that among the factors associated with survival to COVID-19 there are clinical, sociodemographic and social determinants of health variables, in addition to age; It is imperative to consider the various factors that may affect or modify the health status of a population, especially when addressing emerging epidemic phenomena such as the current COVID-19 pandemic.

[伊格纳西奥-查韦斯国家心脏病研究所 COVID-19 治疗病例的社会、人口和死亡率特征。描述性横断面研究]。
导言:COVID-19 大流行给公共卫生带来了大量不良后果,造成了严重的社会经济影响。在这项研究中,我们描述了墨西哥城一家 SARS-CoV-2 参考医院中接受 COVID-19 治疗的患者的社会、人口、发病率和死亡率情况:我们对 2020 年 4 月 11 日至 2021 年 3 月 14 日期间从伊格纳西奥-查韦斯国立心脏病研究所出院的 259 名患者进行了描述性横断面研究。采用多变量逻辑回归模型来确定社会人口学变量与临床变量之间的关联。通过最大似然计算进行了优化,以选择与数据相匹配的最佳模型。使用 ROC 曲线、拟合优度估计值和多重共线性分析对最大似然模型进行了评估。通过对病症对的共现频率进行超几何检验,推断出具有统计学意义的合并症模式。通过网络分析,根据度中心性确定了合并症与结果变量之间的连接模式:研究对象的主要社会不利条件与缺乏社会保障(96.5%)和住房条件落后(81%)有关。与存活概率相关的变量有:年轻(p < 0.0001)、拥有更多耐用物质(p = 0.0034)以及避免:肺炎(p = 0.0072)、脓毒性休克(p < 0.0001)和急性呼吸衰竭(p < 0.0001);(AUROC:91.5%)。存活病例的合并症网络在心律失常和本质性动脉高血压等疾病之间具有高度的关联性(度中心性分别为 90 和 78):鉴于与 COVID-19 存活率相关的因素中,除年龄外,还有临床、社会人口学和健康的社会决定因素等变量;因此必须考虑可能影响或改变人群健康状况的各种因素,尤其是在应对 COVID-19 大流行等新出现的流行病现象时。
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来源期刊
Archivos de cardiologia de Mexico
Archivos de cardiologia de Mexico Medicine-Cardiology and Cardiovascular Medicine
CiteScore
0.80
自引率
20.00%
发文量
176
审稿时长
18 weeks
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