Wang Dawei, Guerra Andrea, Wittke Frederick, Lang John Cameron, Bakker Kevin, Lee Andrew W, Finelli Lyn, Chen Yao-Hsuan
Health Economic and Decision Sciences, Merck & Co., Inc., Kenilworth, NJ 07065, USA.
Clinical Development, MSD, Kings Cross, London EC2M 6UR, UK.
Trop Med Infect Dis. 2023 Jan 19;8(2):75. doi: 10.3390/tropicalmed8020075.
The COVID-19 pandemic has disrupted the seasonal patterns of several infectious diseases. Understanding when and where an outbreak may occur is vital for public health planning and response. We usually rely on well-functioning surveillance systems to monitor epidemic outbreaks. However, not all countries have a well-functioning surveillance system in place, or at least not for the pathogen in question. We utilized Google Trends search results for RSV-related keywords to identify outbreaks. We evaluated the strength of the Pearson correlation coefficient between clinical surveillance data and online search data and applied the Moving Epidemic Method (MEM) to identify country-specific epidemic thresholds. Additionally, we established pseudo-RSV surveillance systems, enabling internal stakeholders to obtain insights on the speed and risk of any emerging RSV outbreaks in countries with imprecise disease surveillance systems but with Google Trends data. Strong correlations between RSV clinical surveillance data and Google Trends search results from several countries were observed. In monitoring an upcoming RSV outbreak with MEM, data collected from both systems yielded similar estimates of country-specific epidemic thresholds, starting time, and duration. We demonstrate in this study the potential of monitoring disease outbreaks in real time and complement classical disease surveillance systems by leveraging online search data.
新冠疫情扰乱了几种传染病的季节性模式。了解疫情可能在何时何地发生对于公共卫生规划和应对至关重要。我们通常依靠运转良好的监测系统来监测疫情爆发。然而,并非所有国家都有运转良好的监测系统,或者至少对于所讨论的病原体没有这样的系统。我们利用谷歌趋势搜索结果中与呼吸道合胞病毒(RSV)相关的关键词来识别疫情爆发。我们评估了临床监测数据与在线搜索数据之间的皮尔逊相关系数强度,并应用移动疫情方法(MEM)来确定各国特定的疫情阈值。此外,我们建立了虚拟RSV监测系统,使内部利益相关者能够在疾病监测系统不准确但有谷歌趋势数据的国家,了解任何新出现的RSV疫情爆发的速度和风险。观察到几个国家的RSV临床监测数据与谷歌趋势搜索结果之间存在很强的相关性。在用MEM监测即将到来的RSV疫情时,从两个系统收集的数据对各国特定的疫情阈值、起始时间和持续时间得出了相似的估计。我们在本研究中展示了利用在线搜索数据实时监测疾病爆发并补充传统疾病监测系统的潜力。