Prediction of Respiratory Syncytial Virus-Associated Hospitalizations Using Machine Learning Models Based on Environmental Data
Eric Guo

TL;DR
This study developed machine learning models integrating environmental and wastewater data to predict RSV-related hospitalizations in the U.S., aiding timely public health responses and resource planning.
Contribution
The paper introduces a novel framework combining wastewater, meteorological, and air quality data with machine learning for RSV hospitalization prediction.
Findings
Wastewater RSV levels are the strongest predictor.
Higher hospitalization rates observed among Native Americans and Alaska Natives.
States at high altitudes show higher RSV hospitalization rates.
Abstract
Respiratory syncytial virus (RSV) is a leading cause of hospitalization among young children, with outbreaks strongly influenced by environmental conditions. This study developed a machine learning framework to predict RSV-associated hospitalizations in the United States (U.S.) by integrating wastewater surveillance, meteorological, and air quality data. The dataset combined weekly hospitalization rates, wastewater RSV levels, daily meteorological measurements, and air pollutant concentrations. Classification models, including CART, Random Forest, and Boosting, were trained to predict weekly RSV-associated hospitalization rates classified as \textit{Low risk}, \textit{Alert}, and \textit{Epidemic} levels. The wastewater RSV level was identified as the strongest predictor, followed by meteorological and air quality variables such as temperature, ozone levels, and specific humidity.…
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Taxonomy
TopicsRespiratory viral infections research · SARS-CoV-2 detection and testing · Child Nutrition and Water Access
