Articles producció científicaEnginyeria Informàtica i Matemàtiques

Predicting Duration of Mechanical Ventilation in Acute Respiratory Distress Syndrome Using Supervised Machine Learning

  • Dades identificatives

    Identificador:  imarina:9228402
    Autors:  Sayed, M; Riaño, D; Villar, J
    Resum:
    Background: Acute respiratory distress syndrome (ARDS) is an intense inflammatory process of the lungs. Most ARDS patients require mechanical ventilation (MV). Few studies have investigated the prediction of MV duration over time. We aimed at characterizing the best early scenario during the first two days in the intensive care unit (ICU) to predict MV duration after ARDS onset using supervised machine learning (ML) approaches. Methods: For model description, we extracted data from the first 3 ICU days after ARDS diagnosis from patients included in the publicly available MIMIC-III database. Disease progression was tracked along those 3 ICU days to assess lung severity according to Berlin criteria. Three robust supervised ML techniques were implemented using Python 3.7 (Light Gradient Boosting Machine (LightGBM); Random Forest (RF); and eXtreme Gradient Boosting (XGBoost)) for predicting MV duration. For external validation, we used the publicly available multicenter database eICU. Results: A total of 2466 and 5153 patients in MIMIC-III and eICU databases, respectively, received MV for >48 h. Median MV duration of extracted patients was 6.5 days (IQR 4.4-9.8 days) in MIMIC-III and 5.0 days (IQR 3.0-9.0 days) in eICU. LightGBM was the best model in predicting MV duration after ARDS onset in MIMIC-III with a root mean square error (RMSE) of 6.10-6.41 days, and it was externally validated in eICU with RMSE of 5.87-6.08 days. The best early prediction model was obtained with data captured in the 2nd day. Conclusions: Supervised ML can make early and accurate predictions of MV duration in ARDS after onset over time across ICUs. Supervised ML models might have important implications for optimizing ICU resource utilization and high acute cost reduction of MV.
  • Altres:

    Enllaç font original: https://www.mdpi.com/2077-0383/10/17/3824
    Referència de l'ítem segons les normes APA: Sayed, M; Riaño, D; Villar, J (2021). Predicting Duration of Mechanical Ventilation in Acute Respiratory Distress Syndrome Using Supervised Machine Learning. Journal of Clinical Medicine, 10(17), 3824-. DOI: 10.3390/jcm10173824
    Referència a l'article segons font original: Journal of Clinical Medicine. 10 (17): 3824-
    DOI de l'article: 10.3390/jcm10173824
    Any de publicació de la revista: 2021-09-01
    Entitat: Universitat Rovira i Virgili
    Versió de l'article dipositat: info:eu-repo/semantics/publishedVersion
    Data d'alta del registre: 2026-05-09
    Autor/s de la URV: Abdelall, Mohammed Gamal Sayed / Riaño Ramos, David
    Departament: Enginyeria Informàtica i Matemàtiques
    URL Document de llicència: https://repositori.urv.cat/ca/proteccio-de-dades/
    Tipus de publicació: Journal Publications
    Autor segons l'article: Sayed, M; Riaño, D; Villar, J
    Accès a la llicència d'ús: https://creativecommons.org/licenses/by/3.0/es/
    Àrees temàtiques: Medicine, general & internal, Medicine (miscellaneous), Medicine (all), Ciencias sociales, Ciencias humanas, Biotecnología
    Adreça de correu electrònic de l'autor: mohammedgamal.sayedabdelall@estudiants.urv.cat
  • Paraules clau:

    Supervised machine learning
    Random forest
    Predictive value
    Prediction models
    Outcomes
    Mechanical ventilation
    Major clinical study
    Machine learning
    Intensive care unit
    Human
    Health care utilization
    Health care cost
    External validity
    Disease severity
    Disease
    Cost
    Berlin definition met
    Artificial ventilation
    Article
    Adult respiratory distress syndrome
    Adult
    Acute respiratory distress syndrome
    Medicine (Miscellaneous)
    Medicine
    General & Internal
    Medicine (all)
    Ciencias sociales
    Ciencias humanas
    Biotecnología
  • Documents:

  • Cerca a google

    Search to google scholar