Lu Tina, Reis Ben Y
Predictive Medicine Group, Computational Health Informatics Program, Boston Children's Hospital, Boston, MA, USA.
Harvard University, Cambridge, MA, USA.
NPJ Digit Med. 2021 Feb 11;4(1):22. doi: 10.1038/s41746-021-00396-6.
Effective public health response to novel pandemics relies on accurate and timely surveillance of pandemic spread, as well as characterization of the clinical course of the disease in affected individuals. We sought to determine whether Internet search patterns can be useful for tracking COVID-19 spread, and whether these data could also be useful in understanding the clinical progression of the disease in 32 countries across six continents. Temporal correlation analyses were conducted to characterize the relationships between a range of COVID-19 symptom-specific search terms and reported COVID-19 cases and deaths for each country from January 1 through April 20, 2020. Increases in COVID-19 symptom-related searches preceded increases in reported COVID-19 cases and deaths by an average of 18.53 days (95% CI 15.98-21.08) and 22.16 days (20.33-23.99), respectively. Cross-country ensemble averaging was used to derive average temporal profiles for each search term, which were combined to create a search-data-based view of the clinical course of disease progression. Internet search patterns revealed a clear temporal pattern of disease progression for COVID-19: Initial symptoms of fever, dry cough, sore throat and chills were followed by shortness of breath an average of 5.22 days (3.30-7.14) after initial symptom onset, matching the clinical course reported in the medical literature. This study shows that Internet search data can be useful for characterizing the detailed clinical course of a disease. These data are available in real-time at population scale, providing important benefits as a complementary resource for tracking pandemics, especially before widespread laboratory testing is available.
有效的公共卫生应对新发大流行病依赖于对大流行传播的准确及时监测,以及对受影响个体疾病临床过程的特征描述。我们试图确定互联网搜索模式是否有助于追踪新冠病毒的传播,以及这些数据是否也有助于了解六大洲32个国家该疾病的临床进展。我们进行了时间相关性分析,以描述一系列新冠病毒症状特异性搜索词与2020年1月1日至4月20日每个国家报告的新冠病毒病例和死亡之间的关系。与新冠病毒症状相关的搜索增加分别比报告的新冠病毒病例和死亡增加平均提前18.53天(95%置信区间15.98 - 21.08)和22.16天(20.33 - 23.99)。我们使用跨国总体平均法得出每个搜索词的平均时间概况,并将其合并以创建基于搜索数据的疾病进展临床过程视图。互联网搜索模式揭示了新冠病毒疾病进展的清晰时间模式:最初的发热、干咳、喉咙痛和寒战症状出现后,平均在最初症状出现5.22天(3.30 - 7.14)后出现呼吸急促,这与医学文献中报告的临床过程相符。这项研究表明,互联网搜索数据可用于描述疾病的详细临床过程。这些数据可在人群规模上实时获取,作为追踪大流行病的补充资源具有重要意义,尤其是在广泛的实验室检测可用之前。