Severity Classification of Chronic Obstructive Pulmonary Disease in Intensive Care Units: A Semi-Supervised Approach Using MIMIC-III Dataset
Journal:
arXiv
Published Date:
Apr 24, 2025
Abstract
Chronic obstructive pulmonary disease (COPD) represents a significant global
health burden, where precise severity assessment is particularly critical for
effective clinical management in intensive care unit (ICU) settings. This study
introduces an innovative machine learning framework for COPD severity
classification utilizing the MIMIC-III critical care database, thereby
expanding the applications of artificial intelligence in critical care
medicine. Our research developed a robust classification model incorporating
key ICU parameters such as blood gas measurements and vital signs, while
implementing semi-supervised learning techniques to effectively utilize
unlabeled data and enhance model performance. The random forest classifier
emerged as particularly effective, demonstrating exceptional discriminative
capability with 92.51% accuracy and 0.98 ROC AUC in differentiating between
mild-to-moderate and severe COPD cases. This machine learning approach provides
clinicians with a practical, accurate, and efficient tool for rapid COPD
severity evaluation in ICU environments, with significant potential to improve
both clinical decision-making processes and patient outcomes. Future research
directions should prioritize external validation across diverse patient
populations and integration with clinical decision support systems to optimize
COPD management in critical care settings.