Emory University School of Medicine, Health Services Research Center, Atlanta, Georgia.
Emory University School of Medicine, Department of Surgery, Division of Transplantation, Atlanta, Georgia.
West J Emerg Med. 2022 Jun 29;23(4):532-535. doi: 10.5811/westjem.2022.4.55001.
The coronavirus 2019 (COVID-19) pandemic has created significant burden on healthcare systems throughout the world. Syndromic surveillance, which collects real-time data based on a range of symptoms rather than laboratory diagnoses, can help provide timely information in emergency response. We examined the effectiveness of a web-based COVID-19 symptom checking tool (C19Check) in the state of Georgia (GA) in predicting COVID-19 cases and hospitalizations.
We analyzed C19Check use data, COVID-19 cases, and hospitalizations from April 22-November 28, 2020. Cases and hospitalizations in GA were extracted from the Georgia Department of Public Health data repository. We used the Granger causality test to assess whether including C19Check data can improve predictions compared to using previous COVID-19 cases and hospitalizations data alone. Vector autoregression (VAR) models were fitted to forecast cases and hospitalizations from November 29 - December 12, 2020. We calculated mean absolute percentage error to estimate the errors in forecast of cases and hospitalizations.
There were 25,861 C19Check uses in GA from April 22-November 28, 2020. Time-lags tested in Granger causality test for cases (6-8 days) and hospitalizations (10-12 days) were significant (P= <0.05); the mean absolute percentage error of fitted VAR models were 39.63% and 15.86%, respectively.
The C19Check tool was able to help predict COVID-19 cases and related hospitalizations in GA. In settings where laboratory tests are limited, a real-time, symptom-based assessment tool can provide timely and inexpensive data for syndromic surveillance to guide pandemic response. Findings from this study demonstrate that online symptom-checking tools can be a source of data for syndromic surveillance, and the data may help improve predictions of cases and hospitalizations.
2019 年冠状病毒病(COVID-19)大流行给全世界的医疗系统带来了巨大负担。基于一系列症状而不是实验室诊断收集实时数据的综合征监测,可以帮助在应急响应中提供及时信息。我们检查了基于网络的 COVID-19 症状检查工具(C19Check)在佐治亚州(GA)预测 COVID-19 病例和住院的效果。
我们分析了 2020 年 4 月 22 日至 11 月 28 日期间 C19Check 使用数据、COVID-19 病例和住院情况。GA 的病例和住院情况从佐治亚州公共卫生部的数据存储库中提取。我们使用格兰杰因果检验来评估与仅使用以前的 COVID-19 病例和住院数据相比,包含 C19Check 数据是否可以提高预测效果。向量自回归(VAR)模型用于预测 2020 年 11 月 29 日至 12 月 12 日的病例和住院情况。我们计算平均绝对百分比误差来估计病例和住院预测中的误差。
2020 年 4 月 22 日至 11 月 28 日期间,GA 有 25861 次 C19Check 使用。病例(6-8 天)和住院(10-12 天)的格兰杰因果检验中的时间滞后是显著的(P<0.05);拟合 VAR 模型的平均绝对百分比误差分别为 39.63%和 15.86%。
C19Check 工具能够帮助预测 GA 的 COVID-19 病例和相关住院情况。在实验室测试有限的情况下,实时、基于症状的评估工具可以为综合征监测提供及时且廉价的数据,以指导大流行应对。这项研究的结果表明,在线症状检查工具可以成为综合征监测的数据来源,并且这些数据可能有助于提高病例和住院预测的准确性。