SUPR
Predicting occupancy rate for hospital divisions
Dnr:

NAISS 2024/22-366

Type:

NAISS Small Compute

Principal Investigator:

Oskar Holmström

Affiliation:

Linköpings universitet

Start Date:

2024-03-07

End Date:

2024-07-01

Primary Classification:

20206: Computer Systems

Webpage:

Allocation

Abstract

This research project utilizes machine learning and deep learning techniques to predict hospital occupancy rates in Norway, aiming to optimize resource allocation and patient care. The primary purpose of this study is to facilitate more effective resource allocation, improve patient care, and optimize hospital operations by accurately forecasting occupancy levels. By analyzing historical hospital admission data, patient demographics, seasonal trends, and other relevant variables, the project seeks to identify patterns and correlations that can inform predictive models. To achieve this, the study employs a variety of ML and DL techniques, including regression analysis, time series forecasting, and neural networks, to evaluate their efficacy in predicting occupancy rates. Rigorous hyperparameter tuning and feature selection require significant computational resources to perform the study in a timely manner.