Machine learning-based short-term forecasting of COVID-19 hospital admissions using routine hospital patient data

Publication date: May 20, 2025

During the COVID-19 pandemic, the field of infectious disease modeling advanced rapidly, with forecasting tools developed to track trends in transmission dynamics and anticipate potential shortages of critical resources such as hospital capacity. In this study, we compared short-term forecasting approaches for COVID-19 hospital admissions that generate forecasts one to five weeks ahead, using retrospective electronic health records. We extracted different features (e.g., daily emergency department visits) from an individual-level patient dataset covering six hospitals located in the region of Bern, Switzerland from February 2020 to June 2023. We then applied five methods — last-observation carried forward (baseline), linear regression, XGBoost and two types of neural networks — to time series using a leave-future-out training scheme with multiple cutting points and optimized hyperparameters. Performance was evaluated using the root mean square error between forecasts and observations. Generally, we found that XGBoost outperformed the other methods in predicting future hospital admissions. Our results also show that adding features such as the number of hospital admissions with fever and augmenting hospital data with measurements of viral concentration in wastewater improves forecast accuracy. This study offers a thorough and systematic comparison of methods applicable to routine hospital data for real-time epidemic forecasting. With the increasing availability and volume of electronic health records, improved forecasting methods will contribute to more precise and timely information during epidemic waves of COVID-19 and other respiratory viruses, thereby strengthening evidence-based public health decision-making.

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Concepts Keywords
Hospital_admission_forecasting Admissions
June Al
Outperformed Bern
Pneumonia Covid
Doi
Forecasts
Hospital
Https
Icd10
Medrxiv
Models
Org
Period
Preprint
Wastewater

Semantics

Type Source Name
disease MESH COVID-19
disease MESH infectious disease
pathway REACTOME Infectious disease
disease MESH emergency
disease MESH burnout
disease IDO pathogen
disease MESH viral load
disease MESH uncertainty
disease MESH infection
drug DRUGBANK Potassium
disease IDO blood
disease IDO process
disease IDO site
disease IDO nucleic acid
disease IDO algorithm
drug DRUGBANK Flunarizine
drug DRUGBANK Coenzyme M
disease MESH viral pneumonia
disease MESH viral diseases
disease IDO infection incidence
drug DRUGBANK Huperzine B
disease MESH Respiratory Diseases

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