King Abdullah International Medical Research Centre (KAIMRC)/College of Public Health & Health Informatics,King Saud bin Abdulaziz University of Health Sciences,National Guard Health Affairs,Riyadh,Saudi Arabia.
Epidemiol Infect. 2018 Aug;146(11):1343-1349. doi: 10.1017/S0950268818001541. Epub 2018 Jun 11.
This study set out to identify and analyse trends and seasonal variations of monthly global reported cases of the Middle East respiratory syndrome coronavirus (MERS-CoV). It also made a prediction based on the reported and extrapolated into the future by forecasting the trend. Finally, the study assessed contributions of various risk factors in the reported cases. The motivation for this study is that MERS-CoV remains among the list of blueprint priority and potential pandemic diseases globally. Yet, there is a paucity of empirical literature examining trends and seasonality as the available evidence is generally descriptive and anecdotal. The study is a time series analysis using monthly global reported cases of MERS-CoV by the World Health Organisation between January 2015 and January 2018. We decomposed the series into seasonal, irregular and trend components and identified patterns, smoothened series, generated predictions and employed forecasting techniques based on linear regression. We assessed contributions of various risk factors in MERS-CoV cases over time. Successive months of the MERS-CoV cases suggest a significant decreasing trend (P = 0.026 for monthly series and P = 0.047 for Quarterly series). The MERS-CoV cases are forecast to wane by end 2018. Seasonality component of the cases oscillated below or above the baseline (the centred moving average), but no association with the series over time was noted. The results revealed contributions of risk factors such as camel contact, male, old age and being from Saudi Arabia and Middle East regions to the overall reported cases of MERS-CoV. The trend component and several risk factors for global MERS-CoV cases, including camel contact, male, age and geography/region significantly affected the series. Our statistical models appear to suggest significant predictive capacity and the findings may well inform healthcare practitioners and policymakers about the underlying dynamics that produced the globally reported MERS-CoV cases.
本研究旨在识别和分析中东呼吸综合征冠状病毒(MERS-CoV)全球报告病例的月度趋势和季节性变化。它还根据报告病例进行了预测,并通过预测趋势进行了外推,从而进行了预测。最后,该研究评估了报告病例中各种危险因素的贡献。这项研究的动机是,MERS-CoV 仍然是全球蓝图优先和潜在大流行疾病之一。然而,由于现有证据通常是描述性和轶事性的,因此缺乏关于趋势和季节性的经验文献。该研究是使用世界卫生组织(WHO)在 2015 年 1 月至 2018 年 1 月期间每月报告的 MERS-CoV 全球病例进行的时间序列分析。我们将序列分解为季节性、不规则和趋势分量,并确定了模式、平滑了序列、根据线性回归生成了预测并采用了预测技术。我们评估了随时间推移各种危险因素在 MERS-CoV 病例中的贡献。连续几个月的 MERS-CoV 病例表明,呈显著下降趋势(每月序列为 P = 0.026,季度序列为 P = 0.047)。预计 MERS-CoV 病例将在 2018 年底减少。病例的季节性分量在基线(中心化移动平均值)以下或以上波动,但未随时间与序列相关。结果显示,骆驼接触、男性、年龄以及来自沙特阿拉伯和中东地区等危险因素对总体报告的 MERS-CoV 病例有贡献。全球 MERS-CoV 病例的趋势分量和几个危险因素,包括骆驼接触、男性、年龄和地理位置/地区,对该序列有显著影响。我们的统计模型似乎表明具有显著的预测能力,研究结果可能为医疗保健从业者和政策制定者提供有关产生全球报告的 MERS-CoV 病例的潜在动态的信息。