A Multi-City COVID-19 Categorical Forecasting Model Utilizing Wastewater-Based Epidemiology

Naomi A Rankin, Samee Saiyed, Hongru Du, Lauren Marie Gardner
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Abstract

The COVID-19 pandemic highlighted shortcomings in forecasting models, such as unreliable inputs/outputs and poor performance at critical points. As COVID-19 remains a threat, it is imperative to improve current forecasting approaches by incorporating reliable data and alternative forecasting targets to better inform decision-makers. Wastewater-based epidemiology (WBE) has emerged as a viable method to track COVID-19 transmission, offering a more reliable metric than reported cases for forecasting critical outcomes like hospitalizations. Recognizing the natural alignment of wastewater systems with city structures, ideal for leveraging WBE data, this study introduces a multi-city, wastewater-based forecasting model to categorically predict COVID-19 hospitalizations.
利用废水流行病学的多城市 COVID-19 分类预测模型
COVID-19 大流行凸显了预测模型的缺陷,如输入/输出不可靠和关键点性能不佳。由于 COVID-19 仍是一种威胁,因此必须通过纳入可靠的数据和替代预测目标来改进当前的预测方法,从而为决策者提供更好的信息。基于废水的流行病学 (WBE) 已成为追踪 COVID-19 传播的一种可行方法,为预测住院等关键结果提供了比报告病例更可靠的指标。废水系统与城市结构自然吻合,非常适合利用 WBE 数据,因此本研究引入了一种基于废水的多城市预测模型,以分类预测 COVID-19 的住院率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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