The Evaluation of Diagnostic Values of Clinical Symptoms for COVID-19 Hospitalized Patients in Northern Iran: The Syndromic Surveillance System Data

IF 0.5 Q4 INFECTIOUS DISEASES
H. Hatami, M. Saeidi, M. Rezapour
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引用次数: 0

Abstract

Background: A novel coronavirus led to a rapidly spreading outbreak of COVID-19, which caused morbidity and mortality worldwide. Appropriate case definitions can help diagnose COVID-19. Objectives: This study aimed to evaluate the COVID-19 clinical symptoms and their potential patterns using latent class analysis (LCA) for identifying confirmed COVID-19 cases among hospitalized patients in northern Iran according to the syndromic surveillance system data. Methods: This cross-sectional study was conducted on patients with COVID-19 admitted to hospitals in Mazandaran Province, Iran. Respiratory specimens were collected by nasopharyngeal swabs from the patients and tested for COVID-¬19 using reverse transcription polymerase chain reaction (RT-PCR). Latent class analysis was used to identify patterns of the symptoms. The sensitivity, specificity, and area under the receiver operating characteristic (ROC) curve (AUC) of each symptom pattern were compared and plotted. Also, multiple logistic regression was used to determine the odds ratio for each symptom pattern for predicting COVID-19 infection by adjusting for gender and age groups. Results: Among 13,724 hospitalized patients tested for COVID-19 and included in the analyses, 4,836 (35, 2%) had RT-PCR confirmed COVID-19. The symptoms of fever, chills, cough, shortness of breath, fatigue, myalgia, sore throat, diarrhea, nausea or vomiting, headache, and arthralgia were significantly more common in patients positive for COVID-19 than in other patients and were used in LCA. Latent class analysis suggested six classes (patterns) of clinical symptoms. The AUC of symptom patterns was poor, being 0.43 for class 5, comprising patients without any symptoms, and 0.53 for class 3, comprising patients with fever, chills, and cough. Also, multiple logistic regression showed that class 1, comprising patients with fever, chills, cough, shortness of breath, sore throat, and arthralgia, had an odds ratio of 2.87 (1.39, 3.43) relative to class 5 (patients without any symptoms) for positive COVID-19. Conclusions: This study showed that the clinical symptoms might help diagnose COVID-19. However, the defined clinical symptoms suggested in the surveillance system of COVID-19 in Iran during this time were not appropriate for identifying COVID-19 cases.
伊朗北部新冠肺炎住院患者临床症状诊断价值的评估:综合征监测系统数据
背景:新型冠状病毒导致新冠肺炎疫情迅速蔓延,并在全球范围内造成发病率和死亡率。适当的病例定义可以帮助诊断新冠肺炎。目的:本研究旨在根据症状监测系统数据,使用潜在分类分析(LCA)来识别伊朗北部住院患者中确诊的新冠肺炎病例,以评估COVID-19]临床症状及其潜在模式。方法:对伊朗马赞德兰省医院收治的新冠肺炎患者进行横断面研究。通过患者的鼻咽拭子采集呼吸道标本,并使用逆转录聚合酶链式反应(RT-PCR)检测COVID-19。使用潜在类别分析来识别症状的模式。比较并绘制了每种症状模式的敏感性、特异性和受试者工作特征曲线下面积(ROC)。此外,通过调整性别和年龄组,使用多元逻辑回归来确定每种症状模式预测新冠肺炎感染的比值比。结果:在13724名接受新冠肺炎检测并纳入分析的住院患者中,4836人(35,2%)经RT-PCR确诊为新冠肺炎。新冠肺炎阳性患者的发烧、发冷、咳嗽、气短、疲劳、肌痛、喉咙痛、腹泻、恶心或呕吐、头痛和关节痛症状比其他患者更常见,并用于LCA。潜在类别分析表明有六类(模式)的临床症状。症状模式的AUC较差,包括没有任何症状的患者的5类为0.43,包括发烧、发冷和咳嗽的患者的3类为0.53。此外,多元逻辑回归显示,1类(包括发烧、发冷、咳嗽、气短、喉咙痛和关节痛的患者)与5类(无任何症状的患者)新冠肺炎阳性的比值比为2.87(1.39,3.43)。结论:临床症状有助于诊断新冠肺炎。然而,在此期间,伊朗新冠肺炎监测系统中建议的明确临床症状不适用于识别新冠肺炎病例。
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来源期刊
CiteScore
3.40
自引率
0.00%
发文量
46
期刊介绍: Archives of Clinical Infectious Diseases is a peer-reviewed multi-disciplinary medical publication, scheduled to appear quarterly serving as a means for scientific information exchange in the international medical forum. The journal particularly welcomes contributions relevant to the Middle-East region and publishes biomedical experiences and clinical investigations on prevalent infectious diseases in the region as well as analysis of factors that may modulate the incidence, course, and management of infectious diseases and pertinent medical problems in the Middle East.
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