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基于文本聚类方法的 COVID-19 症状聚类模式和人群特征。

Symptom Clustering Patterns and Population Characteristics of COVID-19 Based on Text Clustering Method.

机构信息

Sichuan Center for Disease Control and Prevention, Chengdu, China.

Department of Epidemiology and Health Statistics, West China School of Public Health and West China Fourth Hospital, Sichuan University, Chengdu, China.

出版信息

Front Public Health. 2022 Feb 4;10:795734. doi: 10.3389/fpubh.2022.795734. eCollection 2022.

Abstract

BACKGROUND

Descriptions of single clinical symptoms of coronavirus disease 2019 (COVID-19) have been widely reported. However, evidence of symptoms associations was still limited. We sought to explore the potential symptom clustering patterns and high-frequency symptom combinations of COVID-19 to enhance the understanding of people of this disease.

METHODS

In this retrospective cohort study, a total of 1,067 COVID-19 cases were enrolled. Symptom clustering patterns were first explored by a text clustering method. Then, a multinomial logistic regression was applied to reveal the population characteristics of different symptom groups. In addition, time intervals between symptoms onset and the first visit were analyzed to consider the effect of time interval extension on the progression of symptoms.

RESULTS

Based on text clustering, the symptoms were summarized into four groups. ; ; ; . Apart from Group 1 with no obvious symptoms, the most frequent symptom combinations were fever only (64 cases, 47.8%), followed by dry cough only (42 cases, 31.3%) in Group 2; expectoration only (21 cases, 19.8%), followed by expectoration complicated with fever (10 cases, 9.4%) in Group 3; fatigue complicated with fever (12 cases, 4.2%), followed by headache complicated with fever was also high (11 cases, 3.8%) in Group 4. People aged 45-64 years were more likely to have symptoms of Group 4 than those aged 65 years or older (odds ratio [] = 2.66, 95% : 1.21-5.85) and at the same time had longer time intervals.

CONCLUSIONS

Symptoms of COVID-19 could be divided into four clustering groups with different symptom combinations. The Group 4 symptoms (i.e., mainly cardiopulmonary, systemic, and/or gastrointestinal symptoms) happened more frequently in COVID-19 than in influenza. This distinction could help deepen the understanding of this disease. The middle-aged people have a longer time interval for medical visit and was a group that deserve more attention, from the perspective of medical delays.

摘要

背景

关于 2019 年冠状病毒病(COVID-19)的单一临床症状描述已有广泛报道。然而,有关症状关联的证据仍然有限。我们试图探讨 COVID-19 的潜在症状聚类模式和高频症状组合,以增强对该疾病的认识。

方法

在这项回顾性队列研究中,共纳入了 1067 例 COVID-19 病例。首先通过文本聚类方法探索症状聚类模式。然后,应用多项逻辑回归揭示不同症状组的人群特征。此外,还分析了症状发作与首次就诊之间的时间间隔,以考虑时间间隔延长对症状进展的影响。

结果

基于文本聚类,症状被总结为四组。;;;。除了第 1 组无症状外,最常见的症状组合是仅发热(64 例,47.8%),其次是仅干咳(42 例,31.3%);仅咳痰(21 例,19.8%),其次是咳痰伴发热(10 例,9.4%);仅乏力伴发热(12 例,4.2%),其次是头痛伴发热(11 例,3.8%)。45-64 岁人群比 65 岁及以上人群更易出现第 4 组症状(比值比[OR] []=2.66,95%CI:1.21-5.85),同时就诊时间间隔也更长。

结论

COVID-19 的症状可分为具有不同症状组合的四个聚类组。第 4 组症状(主要为心肺、全身和/或胃肠道症状)比流感更常见于 COVID-19。这种区别有助于加深对该疾病的认识。从中度延迟的角度来看,中年人群就诊时间间隔更长,是一个需要关注的群体。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1b13/8854172/e40c43605b2b/fpubh-10-795734-g0001.jpg

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