Atrial fibrillation (AF) stands as the predominant arrhythmia observed in ICU patients. Nevertheless, the absence of a swift and precise method for prediction and detection poses a challenge. This study aims to provide a comprehensive literature review on the application of machine learning (ML) algorithms for predicting and detecting new-onset atrial fibrillation (NOAF) in ICU-treated patients. Following the PRISMA recommendations, this systematic review outlines ML models employed in the prediction and detection of NOAF in ICU patients and compares the ML-based approach with clinical-based methods. Inclusion criteria comprised randomized controlled trials (RCTs), observational studies, cohort studies, and case-control studies. A total of five articles published between November 2020 and April 2023 were identified and reviewed to extract the algorithms and performance metrics. Reviewed studies sourced 108,724 ICU admission records form databases, e.g., MIMIC. Eight prediction and detection methods were examined. Notably, CatBoost exhibited superior performance in NOAF prediction, while the support vector machine excelled in NOAF detection. Machine learning algorithms emerge as promising tools for predicting and detecting NOAF in ICU patients. The incorporation of these algorithms in clinical practice has the potential to enhance decision-making and the overall management of NOAF in ICU settings

Glaser, K., Marino, L., Stubnya, J.d., Bilotta, F. (2024). Machine learning in the prediction and detection of new-onset atrial fibrillation in ICU. a systematic review. JOURNAL OF ANESTHESIA, 38(3), 301-308 [10.1007/s00540-024-03316-6].

Machine learning in the prediction and detection of new-onset atrial fibrillation in ICU. a systematic review

Bilotta F.
2024-01-01

Abstract

Atrial fibrillation (AF) stands as the predominant arrhythmia observed in ICU patients. Nevertheless, the absence of a swift and precise method for prediction and detection poses a challenge. This study aims to provide a comprehensive literature review on the application of machine learning (ML) algorithms for predicting and detecting new-onset atrial fibrillation (NOAF) in ICU-treated patients. Following the PRISMA recommendations, this systematic review outlines ML models employed in the prediction and detection of NOAF in ICU patients and compares the ML-based approach with clinical-based methods. Inclusion criteria comprised randomized controlled trials (RCTs), observational studies, cohort studies, and case-control studies. A total of five articles published between November 2020 and April 2023 were identified and reviewed to extract the algorithms and performance metrics. Reviewed studies sourced 108,724 ICU admission records form databases, e.g., MIMIC. Eight prediction and detection methods were examined. Notably, CatBoost exhibited superior performance in NOAF prediction, while the support vector machine excelled in NOAF detection. Machine learning algorithms emerge as promising tools for predicting and detecting NOAF in ICU patients. The incorporation of these algorithms in clinical practice has the potential to enhance decision-making and the overall management of NOAF in ICU settings
2024
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore MEDS-23/A - Anestesiologia
English
artificial intelligence; atrial fibrillation; intensive care unit; machine learning; new-onset atrial fibrillation; systematic review
Glaser, K., Marino, L., Stubnya, J.d., Bilotta, F. (2024). Machine learning in the prediction and detection of new-onset atrial fibrillation in ICU. a systematic review. JOURNAL OF ANESTHESIA, 38(3), 301-308 [10.1007/s00540-024-03316-6].
Glaser, K; Marino, L; Stubnya, Jd; Bilotta, F
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/462584
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