Department of Medical Informatics, School of Medicine, Mashhad University of Medical Sciences, Mashhad, Iran.
Student Research Committee, Mashhad University of Medical Sciences, Mashhad, Iran.
BMC Public Health. 2021 Jul 12;21(1):1373. doi: 10.1186/s12889-021-11326-2.
The Severe Acute Respiratory Syndrome Coronavirus-2 (SARS-CoV-2) emerged initially in China in December 2019 causing the COVID-19 disease, which quickly spread worldwide. Iran was one of the first countries outside China to be affected in a major way and is now under the spell of a fourth wave. This study aims to investigate the epidemiological characteristics of COVID-19 cases in north-eastern Iran through mapping the spatiotemporal trend of the disease.
The study comprises data of 4000 patients diagnosed by laboratory assays or clinical investigation from the beginning of the disease on Feb 14, 2020, until May 11, 2020. Epidemiological features and spatiotemporal trends of the disease in the study area were explored by classical statistical approaches and Geographic Information Systems.
Most common symptoms were dyspnoea (69.4%), cough (59.4%), fever (54.4%) and weakness (19.5%). Approximately 82% of those who did not survive suffered from dyspnoea. The highest Case Fatality Rate (CFR) was related to those with cardiovascular disease (27.9%) and/or diabetes (18.1%). Old age (≥60 years) was associated with an almost five-fold increased CFR. Odds Ratio (OR) showed malignancy (3.8), nervous diseases (2.2), and respiratory diseases (2.2) to be significantly associated with increased CFR with developments, such as hospitalization at the ICU (2.9) and LOS (1.1) also having high correlations. Furthermore, spatial analyses revealed a geographical pattern in terms of both incidence and mortality rates, with COVID-19 first being observed in suburban areas from where the disease swiftly spread into downtown reaching a peak between 25 February to 06 March (4 incidences per km). Mortality peaked 3 weeks later after which the infection gradually decreased. Out of patients investigated by the spatiotemporal approach (n = 727), 205 (28.2%) did not survive and 66.8% of them were men.
Older adults and people with severe co-morbidities were at higher risk for developing serious complications due to COVID-19. Applying spatiotemporal methods to identify the transmission trends and high-risk areas can rapidly be documented, thereby assisting policymakers in designing and implementing tailored interventions to control and prevent not only COVID-19 but also other rapidly spreading epidemics/pandemics.
严重急性呼吸综合征冠状病毒 2 型(SARS-CoV-2)最初于 2019 年 12 月在中国出现,引发了 COVID-19 疾病,该疾病迅速在全球范围内传播。伊朗是受影响最大的中国境外国家之一,目前正处于第四波疫情之中。本研究旨在通过绘制疾病的时空趋势,调查伊朗东北部 COVID-19 病例的流行病学特征。
本研究包含了自 2020 年 2 月 14 日疾病开始至 2020 年 5 月 11 日期间,通过实验室检测或临床调查确诊的 4000 例患者的数据。通过经典统计方法和地理信息系统探索了该研究区域疾病的流行病学特征和时空趋势。
最常见的症状是呼吸困难(69.4%)、咳嗽(59.4%)、发热(54.4%)和乏力(19.5%)。大约 82%的未存活患者患有呼吸困难。最高的病死率(CFR)与心血管疾病(27.9%)和/或糖尿病(18.1%)患者有关。年龄在 60 岁及以上与 CFR 几乎增加了五倍有关。优势比(OR)表明恶性肿瘤(3.8)、神经疾病(2.2)和呼吸系统疾病(2.2)与死亡率增加显著相关,发展为 ICU 住院(2.9)和 LOS(1.1)也有高度相关性。此外,空间分析显示发病率和死亡率均存在地理模式,COVID-19 首先在郊区观察到,随后迅速蔓延到市中心,在 2 月 25 日至 3 月 6 日之间达到高峰(每公里 4 例)。死亡率在 3 周后达到高峰,随后感染逐渐减少。通过时空方法调查的患者(n=727)中,有 205 人(28.2%)未存活,其中 66.8%为男性。
老年人和患有严重合并症的人因 COVID-19 而出现严重并发症的风险更高。应用时空方法来识别传播趋势和高风险地区可以迅速记录下来,从而帮助决策者制定和实施有针对性的干预措施,不仅可以控制和预防 COVID-19,还可以预防其他迅速传播的流行病/大流行。