Predicting Intensive Care Unit Length of Stay and Mortality Using Patient Vital Signs: Machine Learning Model Development and Validation
Khalid Alghatani, Nariman Ammar, Abdelmounaam Rezgui, Arash, Shaban-Nejad

TL;DR
This study develops and validates machine learning models to predict ICU length of stay and mortality using vital signs, aiming to enhance remote patient monitoring and timely medical interventions.
Contribution
It introduces a novel quantiles-based feature engineering approach that improves prediction performance with minimal features.
Findings
Mortality prediction accuracy reached 89% with random forest.
Length of stay prediction accuracy was approximately 65%.
Quantiles approach effectively enhances model performance.
Abstract
Patient monitoring is vital in all stages of care. We here report the development and validation of ICU length of stay and mortality prediction models. The models will be used in an intelligent ICU patient monitoring module of an Intelligent Remote Patient Monitoring (IRPM) framework that monitors the health status of patients, and generates timely alerts, maneuver guidance, or reports when adverse medical conditions are predicted. We utilized the publicly available Medical Information Mart for Intensive Care (MIMIC) database to extract ICU stay data for adult patients to build two prediction models: one for mortality prediction and another for ICU length of stay. For the mortality model, we applied six commonly used machine learning (ML) binary classification algorithms for predicting the discharge status (survived or not). For the length of stay model, we applied the same six ML…
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