Identifying real time surveillance indicators to estimate COVID-19 hospital admissions in Colorado during and after the public health emergency

确定实时监测指标,以估算科罗拉多州在公共卫生紧急状态期间及之后的新冠肺炎住院人数。

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Abstract

Questions remain about how best to focus surveillance efforts for COVID-19 and other emerging respiratory diseases. We used an archive of COVID-19 data in Colorado from October 2020 to March 2024 to reconstruct seven real-time surveillance indicators. We assessed how well the indicators predicted 7-day average COVID-19 hospital admissions, a key indicator of outbreak severity, using machine learning and regression models, and used cross-correlation analysis to identify leading indicators. We found that hospital-based surveillance metrics, including real-time hospital census data and emergency-department based syndromic surveillance, were among the best predictors of COVID-19 hospital admissions during and after the public health emergency (PHE). While wastewater was a weaker individual predictor, its removal from our multi-indicator models resulted in a decrease in model performance, suggesting that wastewater provides important, unique information. Likewise, we found that test positivity, while imprecise, can serve as a leading indicator of COVID-19 hospitalizations. These findings suggest hospital-based reporting should be a surveillance priority, and that wastewater surveillance and test positivity can improve situational awareness for COVID-19 in Colorado. In contrast, case reporting was not found to be essential to real-time monitoring of COVID-19 hospitalizations in Colorado. The generalizability to other regions and respiratory illnesses warrants further investigation.

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