Abstract
Accurate prediction of patient outcomes in intensive care units (ICUs) is crucial for enhancing clinical decision-making, patient care, and resource allocation. Traditional scoring systems like Acute Physiology and Chronic Health Evaluation (APACHE), Simplified Acute Physiology Score (SAPS), and Sequential Organ Failure Assessment (SOFA), while valuable, fall short of fully capturing the complexities of critically ill patients. Advances in machine learning (ML) enable the analysis of high-dimensional data, including electronic health records (EHRs), physiological parameters, and genomic information, providing a more comprehensive approach to outcome prediction. This review aims to assess the impact of ML techniques, including deep learning (DL), ensemble machine learning (EML), and reinforcement learning (RL), in improving ICU outcome predictions, particularly in identifying high-risk patients and enabling proactive interventions. Machine learning models have shown superiority over traditional systems, enabling more accurate identification of critical patients. However, implementing ML in ICU settings comes with challenges, including data quality, model interpretability, ethical concerns, and workflow integration. Collaborative efforts between clinicians, data scientists, and multidisciplinary teams, supported by shared databases like Medical Information Mart for Intensive Care (MIMIC), are essential for developing generalizable ML models that work across diverse healthcare environments. Future research should focus on improving real-time prediction using wearable technology and personalized risk assessments to further individualize ICU care. Ethical considerations, particularly data privacy and model transparency, must be addressed as ML becomes more integrated into critical care.