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孟加拉国沿海地区一家新冠病毒检测实验室对SARS-CoV-2的分子鉴定及相关危险因素的临床数据分析

SARS-CoV-2 molecular identification and clinical data analysis of associated risk factors from a COVID-19 testing laboratory of a coastal region in Bangladesh.

作者信息

Ali Md Roushan, Chowdhury Md Rayhan, Mas-Ud Md Atik, Islam Shirmin, Shimu Ajmeri Sultana, Mina Fahmida Begum, Sharmin Nur E, Hasan Md Faruk

机构信息

Department of Genetic Engineering and Biotechnology, University of Rajshahi, Rajshahi 6205, Bangladesh.

Volunteer as a Molecular Biologist, RT-PCR Laboratory, Department of Microbiology, Abdul Malek Ukil Medical College, Noakhali 3800, Bangladesh.

出版信息

Heliyon. 2021 Apr;7(4):e06650. doi: 10.1016/j.heliyon.2021.e06650. Epub 2021 Mar 29.

Abstract

BACKGROUND AND AIM

Outbreak of COVID-19 seems to have exacerbated across the globe, including Bangladesh. Scientific literature on the clinical data record of COVID-19 patients in Bangladesh is inadequate. Our study analyzes the clinical data of COVID-19 positive patients based on molecular identification and risk factor correlated with three variables (age, sex, residence) and COVID-19 prevalence in the four districts of Chattogram Division (Noakhali, Feni, Lakshmipur and Chandpur) with an aim to understand the trajectory of this pandemic in Chattogram, Southern Bangladesh.

METHODS

A cross-sectional study is conducted in the context of RT-PCR-based COVID-19 positive 5,589 individuals diagnosed with SARS-CoV-2 infection from the COVID-19 testing laboratory, Abdul Malek Ukil Medical College, Noakhali-3800, Bangladesh. For molecular confirmation of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), standard diagnostic protocols through real-time reverse transcriptase-polymerase chain reaction (RT-qPCR) were conducted. Different patient demographics were analyzed using SPSS version 22 for exploring the relationship of three factors - age, sex, and residence with a cumulative number of COVID-19 positive cases and prevalence of COVID-19 in four districts in Chattogram division. The data was recorded between May to July, 2020.

RESULTS

Among the three parameters, the present study revealed that 20-40 cohort had the highest incidence of infection rate (51.80%, n = 2895) among the different age groups. Among the infected individuals, 56.8% (n = 3177) were male and 43.2% (n = 2412) were female, denoting males being the most susceptible to this disease. Urban residents (52.7%, n = 2948) were more vulnerable to SARS-CoV-2 infection than those residing in rural areas (47.3%, n = 2641). The prevalence of COVID-19 positive cases among the four districts was recorded highest in the Noakhali district with 36.8% (n = 2057), followed by the Feni, Lakshmipur and Chandpur districts with 25.9% (n = 1448), 20.8% (n = 1163) and 16.5% (n = 921), respectively.

CONCLUSIONS

This study presents a statistical correlation of certain factors linked to Bangladesh with confirmed COVID-19 patients, which will enable health practitioners and policy makers to take proactive steps to control and mitigate disease transmission.

摘要

背景与目的

新型冠状病毒肺炎(COVID-19)疫情似乎在全球范围内加剧,包括孟加拉国。关于孟加拉国COVID-19患者临床数据记录的科学文献并不充分。我们的研究基于分子鉴定以及与三个变量(年龄、性别、居住地)相关的风险因素,分析了COVID-19阳性患者的临床数据,以及吉大港区(诺阿卡利、费尼、拉克希米布尔和钱德布尔)四个地区的COVID-19患病率,旨在了解孟加拉国南部吉大港地区这一疫情的发展轨迹。

方法

在孟加拉国诺阿卡利3800的阿卜杜勒·马利克·乌基尔医学院COVID-19检测实验室,对5589名经逆转录聚合酶链反应(RT-PCR)确诊感染严重急性呼吸综合征冠状病毒2(SARS-CoV-2)的个体进行了横断面研究。通过实时逆转录聚合酶链反应(RT-qPCR)采用标准诊断方案对SARS-CoV-2进行分子确认。使用SPSS 22版对不同患者人口统计学数据进行分析,以探究年龄、性别和居住地这三个因素与吉大港区四个地区COVID-19阳性病例累计数及COVID-19患病率之间的关系。数据记录时间为2020年5月至7月。

结果

在这三个参数中,本研究显示,在不同年龄组中,20 - 40岁年龄段的感染率最高(51.80%,n = 2895)。在感染个体中,男性占56.8%(n = 3177),女性占43.2%(n = 2412),表明男性最易感染此病。城市居民(52.7%,n = 2948)比农村居民(47.3%,n = 2641)更容易感染SARS-CoV-2。四个地区中COVID-19阳性病例患病率最高的是诺阿卡利地区,为36.8%(n = 2057),其次是费尼、拉克希米布尔和钱德布尔地区,分别为25.9%(n = 1448)、20.8%(n = 1163)和16.5%(n = 921)。

结论

本研究呈现了孟加拉国确诊的COVID-19患者与某些因素之间的统计相关性,这将使医疗从业者和政策制定者能够采取积极措施来控制和减轻疾病传播。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/54fb/8042436/1b47a2b10484/gr1.jpg

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