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Main Authors: Henríquez, Gloria, Báez, Jhoan, Riquelme, Víctor, Gajardo, Pedro, Royer, Michel, Ramírez, Héctor
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.09821
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author Henríquez, Gloria
Báez, Jhoan
Riquelme, Víctor
Gajardo, Pedro
Royer, Michel
Ramírez, Héctor
author_facet Henríquez, Gloria
Báez, Jhoan
Riquelme, Víctor
Gajardo, Pedro
Royer, Michel
Ramírez, Héctor
contents Acute respiratory infections (ARI) are a major cause of pediatric hospitalization in Chile, producing marked winter increases in demand that challenge hospital planning. This study presents an alert-based forecasting model to predict the timing and magnitude of ARI hospitalization peaks in Santiago. The approach integrates a seasonal SIR model with a historical mobile predictor, activated by a derivative-based alert system that detects early epidemic growth. Daily hospitalization data from DEIS were smoothed using a 15-day moving average and Savitzky-Golay filtering, and parameters were estimated using a penalized loss function to reduce sensitivity to noise. Retrospective evaluation and real-world implementation in major Santiago pediatric hospitals during 2023 and 2024 show that peak date can be anticipated about one month before the event and predicted with high accuracy two weeks in advance. Peak magnitude becomes informative roughly ten days before the peak and stabilizes one week prior. The model provides a practical and interpretable tool for hospital preparedness.
format Preprint
id arxiv_https___arxiv_org_abs_2601_09821
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Forecasting Seasonal Peaks of Pediatric Respiratory Infections Using an Alert-Based Model Combining SIR Dynamics and Historical Trends in Santiago, Chile
Henríquez, Gloria
Báez, Jhoan
Riquelme, Víctor
Gajardo, Pedro
Royer, Michel
Ramírez, Héctor
Applications
Optimization and Control
37N25 (Primary) 92D30, 37M05 (Secondary)
Acute respiratory infections (ARI) are a major cause of pediatric hospitalization in Chile, producing marked winter increases in demand that challenge hospital planning. This study presents an alert-based forecasting model to predict the timing and magnitude of ARI hospitalization peaks in Santiago. The approach integrates a seasonal SIR model with a historical mobile predictor, activated by a derivative-based alert system that detects early epidemic growth. Daily hospitalization data from DEIS were smoothed using a 15-day moving average and Savitzky-Golay filtering, and parameters were estimated using a penalized loss function to reduce sensitivity to noise. Retrospective evaluation and real-world implementation in major Santiago pediatric hospitals during 2023 and 2024 show that peak date can be anticipated about one month before the event and predicted with high accuracy two weeks in advance. Peak magnitude becomes informative roughly ten days before the peak and stabilizes one week prior. The model provides a practical and interpretable tool for hospital preparedness.
title Forecasting Seasonal Peaks of Pediatric Respiratory Infections Using an Alert-Based Model Combining SIR Dynamics and Historical Trends in Santiago, Chile
topic Applications
Optimization and Control
37N25 (Primary) 92D30, 37M05 (Secondary)
url https://arxiv.org/abs/2601.09821