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Machine Learning Models for the Early Real-Time Prediction of Deterioration in Intensive Care Units—A Novel Approach to the Early Identification of High-Risk Patients

Title: Machine Learning Models for the Early Real-Time Prediction of Deterioration in Intensive Care Units—A Novel Approach to the Early Identification of High-Risk Patients
Authors: Dominik Thiele; Reitze Rodseth; Richard Friedland; Fabian Berger; Chris Mathew; Caroline Maslo; Vanessa Moll; Christoph Leithner; Christian Storm; Alexander Krannich; Jens Nee
Source: Journal of Clinical Medicine ; Volume 14 ; Issue 2 ; Pages: 350
Publisher Information: Multidisciplinary Digital Publishing Institute
Publication Year: 2025
Collection: MDPI Open Access Publishing
Subject Terms: deterioration; real-time prediction; machine learning; ICU; high-risk patients
Description: Background Predictive machine learning models have made use of a variety of scoring systems to identify clinical deterioration in ICU patients. However, most of these scores include variables that are dependent on medical staff examining the patient. We present the development of a real-time prediction model using clinical variables that are digital and automatically generated for the early detection of patients at risk of deterioration. Methods Routine monitoring data were used in this analysis. ICU patients with at least 24 h of vital sign recordings were included. Deterioration was defined as qSOFA ≥ 2. Model development and validation were performed internally by splitting the cohort into training and test datasets and validating the results on the test dataset. Five different models were trained, tested, and compared against each other. The models were an artificial neural network (ANN), a random forest (RF), a support vector machine (SVM), a linear discriminant analysis (LDA), and a logistic regression (LR). Results In total, 7156 ICU patients were screened for inclusion in the study, which resulted in models trained from a total of 28,348 longitudinal measurements. The artificial neural network showed a superior predictive performance for deterioration, with an area under the curve of 0.81 over 0.78 (RF), 0.78 (SVM), 0.77 (LDA), and 0.76 (LR), by using only four vital parameters. The sensitivity was higher than the specificity for the artificial neural network. Conclusions The artificial neural network, only using four automatically recorded vital signs, was best able to predict deterioration, 10 h before documentation in clinical records. This real-time prediction model has the potential to flag at-risk patients to the healthcare providers treating them, for closer monitoring and further investigation.
Document Type: text
File Description: application/pdf
Language: English
Relation: Intensive Care; https://dx.doi.org/10.3390/jcm14020350
DOI: 10.3390/jcm14020350
Availability: https://doi.org/10.3390/jcm14020350
Rights: https://creativecommons.org/licenses/by/4.0/
Accession Number: edsbas.D69244BC
Database: BASE