Machine Learning and Statistical Insights into Hospital Stay Durations: The Italian EHR Case
Machine Learning and Statistical Insights into Hospital Stay Durations: The Italian EHR Case
Length of hospital stay is a critical metric for assessing healthcare quality and optimizing hospital resource management. This study aims to identify factors influencing LoS within the Italian healthcare context, using a dataset of hospitalization records from over 60 healthcare facilities in the Piedmont region, spanning from 2020 to 2023. We explored a variety of features, including patient characteristics, comorbidities, admission details, and hospital-specific factors. Significant correlations were found between LoS and features such as age group, comorbidity score, admission type, and the month of admission. Machine learning models, specifically CatBoost and Random Forest, were used to predict LoS. The highest R2 score, 0.49, was achieved with CatBoost, demonstrating good predictive performance.
Marina Andric、Mauro Dragoni
医学研究方法医学现状、医学发展
Marina Andric,Mauro Dragoni.Machine Learning and Statistical Insights into Hospital Stay Durations: The Italian EHR Case[EB/OL].(2025-04-25)[2025-05-22].https://arxiv.org/abs/2504.18393.点此复制
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