A transferable machine learning model for real-time forecast of epidemic dynamics and pre-trigger event warning

Abstract Wastewater-based epidemiology (WBE) is emerging as an effective tool to provide early warnings of potential disease outbreaks within communities through detecting the presence of pathogens in wastewater before clinical cases are reported. Nevertheless, quantitative prediction of future clin...

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Main Authors: Enpei Chen, Xiong Yu
Format: Article
Language:English
Published: Springer Nature 2025-07-01
Series:AI in Civil Engineering
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Online Access:https://doi.org/10.1007/s43503-025-00059-5
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author Enpei Chen
Xiong Yu
author_facet Enpei Chen
Xiong Yu
author_sort Enpei Chen
collection DOAJ
description Abstract Wastewater-based epidemiology (WBE) is emerging as an effective tool to provide early warnings of potential disease outbreaks within communities through detecting the presence of pathogens in wastewater before clinical cases are reported. Nevertheless, quantitative prediction of future clinical case is challenging as uncertainties of dynamic shedding and disease transmission patterns can lead to complex correlation between wastewater viral concentration and clinical cases. Such complexities, augmented by factors such as viral variant, public behavioral change, etc., make it challenging to develop empirical models or data-driven models to provide accurate prediction of disease case for public health policy makings. To address this gap, this study developed an iterative data-driven framework utilizing Long-Short Time Memory (LSTM) neural networks for multi-timestep real-time predictions of future clinical cases based on WBE. The proposed LSTM model structure integrates both wastewater and historical clinical data as inputs. The prediction framework enables the update of LSTM model as more WBE dataset become available to enhance its adaptability to evolving pandemic stages. This framework was applied for real-time forecasting of COVID-19 clinical cases based on dataset of Ohio Wastewater Monitoring Project from July 2020 to October 2023. The developed iterative LSTM models were proven to achieve excellent performance in making clinical case predictions at different stages of COVID-19 pandemic. Early warning threshold of viral surge was defined by moving percentile method and results showed that the model achieved over 90% accuracy in future clinical case prediction and therefore demonstrated high reliability in pre-warning of potential disease outbreaks. This framework was also found to possess strong transferability across diverse geographic regions. The impacts of social policies and events on model predictions as well as the ramification of this model for future pandemics warning are discussed.
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spelling doaj-art-6a85d1151ec14863ba939a8a462091f42025-08-20T03:04:22ZengSpringer NatureAI in Civil Engineering2097-09432730-53922025-07-014111410.1007/s43503-025-00059-5A transferable machine learning model for real-time forecast of epidemic dynamics and pre-trigger event warningEnpei Chen0Xiong Yu1Department of Civil and Environmental Engineering, Case Western Reserve UniversityDepartment of Civil and Environmental Engineering, Case Western Reserve UniversityAbstract Wastewater-based epidemiology (WBE) is emerging as an effective tool to provide early warnings of potential disease outbreaks within communities through detecting the presence of pathogens in wastewater before clinical cases are reported. Nevertheless, quantitative prediction of future clinical case is challenging as uncertainties of dynamic shedding and disease transmission patterns can lead to complex correlation between wastewater viral concentration and clinical cases. Such complexities, augmented by factors such as viral variant, public behavioral change, etc., make it challenging to develop empirical models or data-driven models to provide accurate prediction of disease case for public health policy makings. To address this gap, this study developed an iterative data-driven framework utilizing Long-Short Time Memory (LSTM) neural networks for multi-timestep real-time predictions of future clinical cases based on WBE. The proposed LSTM model structure integrates both wastewater and historical clinical data as inputs. The prediction framework enables the update of LSTM model as more WBE dataset become available to enhance its adaptability to evolving pandemic stages. This framework was applied for real-time forecasting of COVID-19 clinical cases based on dataset of Ohio Wastewater Monitoring Project from July 2020 to October 2023. The developed iterative LSTM models were proven to achieve excellent performance in making clinical case predictions at different stages of COVID-19 pandemic. Early warning threshold of viral surge was defined by moving percentile method and results showed that the model achieved over 90% accuracy in future clinical case prediction and therefore demonstrated high reliability in pre-warning of potential disease outbreaks. This framework was also found to possess strong transferability across diverse geographic regions. The impacts of social policies and events on model predictions as well as the ramification of this model for future pandemics warning are discussed.https://doi.org/10.1007/s43503-025-00059-5Wastewater-based epidemiologyTransferable machine learning modelPandemics warningSocial policy
spellingShingle Enpei Chen
Xiong Yu
A transferable machine learning model for real-time forecast of epidemic dynamics and pre-trigger event warning
AI in Civil Engineering
Wastewater-based epidemiology
Transferable machine learning model
Pandemics warning
Social policy
title A transferable machine learning model for real-time forecast of epidemic dynamics and pre-trigger event warning
title_full A transferable machine learning model for real-time forecast of epidemic dynamics and pre-trigger event warning
title_fullStr A transferable machine learning model for real-time forecast of epidemic dynamics and pre-trigger event warning
title_full_unstemmed A transferable machine learning model for real-time forecast of epidemic dynamics and pre-trigger event warning
title_short A transferable machine learning model for real-time forecast of epidemic dynamics and pre-trigger event warning
title_sort transferable machine learning model for real time forecast of epidemic dynamics and pre trigger event warning
topic Wastewater-based epidemiology
Transferable machine learning model
Pandemics warning
Social policy
url https://doi.org/10.1007/s43503-025-00059-5
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AT xiongyu atransferablemachinelearningmodelforrealtimeforecastofepidemicdynamicsandpretriggereventwarning
AT enpeichen transferablemachinelearningmodelforrealtimeforecastofepidemicdynamicsandpretriggereventwarning
AT xiongyu transferablemachinelearningmodelforrealtimeforecastofepidemicdynamicsandpretriggereventwarning