揭示多重发病对Covid-19严重程度的潜在影响:一种潜在分类分析方法。

IF 3.5 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Sedigheh Akhavnnezhad, Seyedeh Solmaz Talebi, Ehsan Mosa Farkhani, Marzieh Rohani-Rasaf
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引用次数: 0

摘要

背景:流行病学研究表明,伴有基础疾病的新冠肺炎患者重症新冠肺炎发生率较高。以往的研究集中于单一慢性疾病的存在,但本研究调查了Covid-19患者中多种疾病的患病率和模式及其与Covid-19严重程度的关系。方法:回顾性研究伊朗东北部马什哈德地区24家医院2020年3-20-21 -2022年聚合酶链反应(PCR)阳性的30岁及以上患者。确诊患者为318502人。根据《国际疾病分类》和Covid-19的严重程度确定基础疾病,包括死亡、需要通气和需要在重症监护病房(ICU)治疗。采用潜类分析(latent class analysis, LCA)对确诊病例的多重发病模式进行调查,并通过多变量logistic回归确定这种模式与Covid-19严重程度之间的关系。结果:高血压30,100例(9.5%),代谢性疾病23,798例(7.5%),高脂血症22,454例(7%)。LCA模型将不同的合并症分为三类。第一类是没有多重疾病的患者,占83%。第2类包括9%的高血压、糖尿病、呼吸系统疾病和精神行为障碍患者(HRMD类)。第3类,包括代谢性疾病患者,其中发生高血压、高脂血症、糖尿病和代谢性疾病的概率较高,包括7%的患者。多因素logistic回归结果显示,与没有多重发病因素调整后的危险因素相比,患有HRMD和代谢性疾病的患者发生严重Covid-19的几率分别增加了81%和55%。结论:本研究确定的分类清楚地显示了具有某些多重疾病的不同组型Covid-19患者,并强调了在Covid-19患者的风险评估和管理中考虑这些模式而不是单个合并症的重要性。这种方法将指导临床决策和资源分配,以持续管理COVID-19大流行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling the hidden effect of multi-morbidities on the severity of Covid-19: a latent class analysis approach.

Background: Epidemiological studies showed that Covid-19 patients with underlying diseases had higher rates of severe Covid-19. Previous studies focused on the presence of a single chronic disease but this study investigated the prevalence and patterns of multi-morbidities in patients with Covid-19 and its relationship with the severity of Covid-19.

Methods: This retrospective study focused on patients age 30 years and older with positive polymerase chain reaction (PCR) results in 24 hospitals of Mashhad in northeastern Iran from 20-3-2020 to 21-1-2022. The number of studied confirmed patients was 318,502. The underlying diseases were identified according to the International Classification of Diseases, and the severity of Covid-19, including death, need for ventilation, and need for treatment in the intensive care unit (ICU). The pattern of multi-morbidities in these confirmed cases was investigated using latent class analysis (LCA), and the relationship between this pattern and the severity of Covid-19 was determined by multivariate logistic regression.

Results: The most common coexisting diseases were hypertension in 30,100 patients (9.5%), metabolic disorders in 23,798 (7.5%) and hyperlipidemia in 22,454 (7%). Different comorbidities were grouped into three classes by the LCA model. Class 1 was patients without multi-morbidities, or 83% people., Class 2, which included 9% patients, was patients with hypertension, diabetes, respiratory diseases, and mental behavioral disorders (HRMD class). Class 3, which included patients with metabolic diseases, for whom the probability of developing hypertension, hyperlipidemia, diabetes, and metabolic disorders was high, included 7% patients. The results of multivariate logistic regression showed that having HRMD and metabolic diseases compared to no multi-morbidity adjusted for some risk factors increased the odds of developing severe Covid-19 by 81% and 55%, respectively.

Conclusions: The classes identified in this study provided a clear view of different groups of Covid-19 patients with certain multi-morbidities and underscore the importance of considering these patterns, rather than individual comorbidities, in risk assessment and management of COVID-19 patients. This approach will guide clinical decision-making and resource allocation in the ongoing management of the COVID-19 pandemic.

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来源期刊
BMC Public Health
BMC Public Health 医学-公共卫生、环境卫生与职业卫生
CiteScore
6.50
自引率
4.40%
发文量
2108
审稿时长
1 months
期刊介绍: BMC Public Health is an open access, peer-reviewed journal that considers articles on the epidemiology of disease and the understanding of all aspects of public health. The journal has a special focus on the social determinants of health, the environmental, behavioral, and occupational correlates of health and disease, and the impact of health policies, practices and interventions on the community.
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