Knowledge Management Division, Kingston, Frontenac and Lennox & Addington Public Health, 221 Portsmouth Avenue, Kingston, Ontario, K7M 1V5, Canada.
Office of the Medical Officer of Health, Kingston, Frontenac and Lennox & Addington Public Health, 221 Portsmouth Avenue, Kingston, Ontario, K7M 1V5, Canada.
BMC Public Health. 2021 Jun 26;21(1):1230. doi: 10.1186/s12889-021-11303-9.
The COVID-19 pandemic has continued to pose a major global public health risk. The importance of public health surveillance systems to monitor the spread and impact of COVID-19 has been well demonstrated. The purpose of this study was to describe the development and effectiveness of a real-time public health syndromic surveillance system (ACES Pandemic Tracker) as an early warning system and to provide situational awareness in response to the COVID-19 pandemic in Ontario, Canada.
We used hospital admissions data from the Acute Care Enhanced Surveillance (ACES) system to collect data on pre-defined groupings of symptoms (syndromes of interest; SOI) that may be related to COVID-19 from 131 hospitals across Ontario. To evaluate which SOI for suspected COVID-19 admissions were best correlated with laboratory confirmed admissions, laboratory confirmed COVID-19 hospital admissions data were collected from the Ontario Ministry of Health. Correlations and time-series lag analysis between suspected and confirmed COVID-19 hospital admissions were calculated. Data used for analyses covered the period between March 1, 2020 and September 21, 2020.
Between March 1, 2020 and September 21, 2020, ACES Pandemic Tracker identified 22,075 suspected COVID-19 hospital admissions (150 per 100,000 population) in Ontario. After correlation analysis, we found laboratory-confirmed hospital admissions for COVID-19 were strongly and significantly correlated with suspected COVID-19 hospital admissions when SOI were included (Spearman's rho = 0.617) and suspected COVID-19 admissions when SOI were excluded (Spearman's rho = 0.867). Weak to moderate significant correlations were found among individual SOI. Laboratory confirmed COVID-19 hospital admissions lagged in reporting by 3 days compared with suspected COVID-19 admissions when SOI were excluded.
Our results demonstrate the utility of a hospital admissions syndromic surveillance system to monitor and identify potential surges in severe COVID-19 infection within the community in a timely manner and provide situational awareness to inform preventive and preparatory health interventions.
COVID-19 大流行继续对全球公共卫生构成重大风险。公共卫生监测系统对于监测 COVID-19 的传播和影响的重要性已得到充分证明。本研究的目的是描述实时公共卫生综合征监测系统(ACES 大流行追踪器)作为预警系统的开发和有效性,并为加拿大安大略省应对 COVID-19 大流行提供态势感知。
我们使用急性护理增强监测 (ACES) 系统的住院数据,从安大略省的 131 家医院收集与 COVID-19 可能相关的预定义症状分组(感兴趣的综合征;SOI)的数据。为了评估哪些用于疑似 COVID-19 入院的 SOI 与实验室确诊的入院最相关,我们从安大略省卫生部收集了实验室确诊 COVID-19 住院入院数据。计算了疑似和确诊 COVID-19 住院入院之间的相关性和时间序列滞后分析。用于分析的数据涵盖了 2020 年 3 月 1 日至 2020 年 9 月 21 日期间。
在 2020 年 3 月 1 日至 2020 年 9 月 21 日期间,ACES 大流行追踪器在安大略省确定了 22,075 例疑似 COVID-19 住院入院(每 100,000 人口 150 例)。经过相关分析,我们发现,当包括 SOI 时,实验室确诊的 COVID-19 住院入院与疑似 COVID-19 住院入院高度且显著相关(Spearman's rho=0.617),而当排除 SOI 时,实验室确诊的 COVID-19 住院入院与疑似 COVID-19 住院入院也高度且显著相关(Spearman's rho=0.867)。单独的 SOI 之间存在弱至中度显著相关性。与疑似 COVID-19 入院相比,实验室确诊的 COVID-19 入院报告滞后 3 天。
我们的结果表明,医院入院综合征监测系统可用于及时监测和识别社区内严重 COVID-19 感染的潜在激增,并提供态势感知,以告知预防和准备健康干预措施。