Cargando…

Computerized prediction of intensive care unit discharge after cardiac surgery: development and validation of a Gaussian processes model

BACKGROUND: The intensive care unit (ICU) length of stay (LOS) of patients undergoing cardiac surgery may vary considerably, and is often difficult to predict within the first hours after admission. The early clinical evolution of a cardiac surgery patient might be predictive for his LOS. The purpos...

Descripción completa

Detalles Bibliográficos
Autores principales: Meyfroidt, Geert, Güiza, Fabian, Cottem, Dominiek, De Becker, Wilfried, Van Loon, Kristien, Aerts, Jean-Marie, Berckmans, Daniël, Ramon, Jan, Bruynooghe, Maurice, Van den Berghe, Greet
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2011
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3228706/
https://www.ncbi.nlm.nih.gov/pubmed/22027016
http://dx.doi.org/10.1186/1472-6947-11-64
_version_ 1782217853093543936
author Meyfroidt, Geert
Güiza, Fabian
Cottem, Dominiek
De Becker, Wilfried
Van Loon, Kristien
Aerts, Jean-Marie
Berckmans, Daniël
Ramon, Jan
Bruynooghe, Maurice
Van den Berghe, Greet
author_facet Meyfroidt, Geert
Güiza, Fabian
Cottem, Dominiek
De Becker, Wilfried
Van Loon, Kristien
Aerts, Jean-Marie
Berckmans, Daniël
Ramon, Jan
Bruynooghe, Maurice
Van den Berghe, Greet
author_sort Meyfroidt, Geert
collection PubMed
description BACKGROUND: The intensive care unit (ICU) length of stay (LOS) of patients undergoing cardiac surgery may vary considerably, and is often difficult to predict within the first hours after admission. The early clinical evolution of a cardiac surgery patient might be predictive for his LOS. The purpose of the present study was to develop a predictive model for ICU discharge after non-emergency cardiac surgery, by analyzing the first 4 hours of data in the computerized medical record of these patients with Gaussian processes (GP), a machine learning technique. METHODS: Non-interventional study. Predictive modeling, separate development (n = 461) and validation (n = 499) cohort. GP models were developed to predict the probability of ICU discharge the day after surgery (classification task), and to predict the day of ICU discharge as a discrete variable (regression task). GP predictions were compared with predictions by EuroSCORE, nurses and physicians. The classification task was evaluated using aROC for discrimination, and Brier Score, Brier Score Scaled, and Hosmer-Lemeshow test for calibration. The regression task was evaluated by comparing median actual and predicted discharge, loss penalty function (LPF) ((actual-predicted)/actual) and calculating root mean squared relative errors (RMSRE). RESULTS: Median (P25-P75) ICU length of stay was 3 (2-5) days. For classification, the GP model showed an aROC of 0.758 which was significantly higher than the predictions by nurses, but not better than EuroSCORE and physicians. The GP had the best calibration, with a Brier Score of 0.179 and Hosmer-Lemeshow p-value of 0.382. For regression, GP had the highest proportion of patients with a correctly predicted day of discharge (40%), which was significantly better than the EuroSCORE (p < 0.001) and nurses (p = 0.044) but equivalent to physicians. GP had the lowest RMSRE (0.408) of all predictive models. CONCLUSIONS: A GP model that uses PDMS data of the first 4 hours after admission in the ICU of scheduled adult cardiac surgery patients was able to predict discharge from the ICU as a classification as well as a regression task. The GP model demonstrated a significantly better discriminative power than the EuroSCORE and the ICU nurses, and at least as good as predictions done by ICU physicians. The GP model was the only well calibrated model.
format Online
Article
Text
id pubmed-3228706
institution National Center for Biotechnology Information
language English
publishDate 2011
publisher BioMed Central
record_format MEDLINE/PubMed
spelling pubmed-32287062011-12-12 Computerized prediction of intensive care unit discharge after cardiac surgery: development and validation of a Gaussian processes model Meyfroidt, Geert Güiza, Fabian Cottem, Dominiek De Becker, Wilfried Van Loon, Kristien Aerts, Jean-Marie Berckmans, Daniël Ramon, Jan Bruynooghe, Maurice Van den Berghe, Greet BMC Med Inform Decis Mak Research Article BACKGROUND: The intensive care unit (ICU) length of stay (LOS) of patients undergoing cardiac surgery may vary considerably, and is often difficult to predict within the first hours after admission. The early clinical evolution of a cardiac surgery patient might be predictive for his LOS. The purpose of the present study was to develop a predictive model for ICU discharge after non-emergency cardiac surgery, by analyzing the first 4 hours of data in the computerized medical record of these patients with Gaussian processes (GP), a machine learning technique. METHODS: Non-interventional study. Predictive modeling, separate development (n = 461) and validation (n = 499) cohort. GP models were developed to predict the probability of ICU discharge the day after surgery (classification task), and to predict the day of ICU discharge as a discrete variable (regression task). GP predictions were compared with predictions by EuroSCORE, nurses and physicians. The classification task was evaluated using aROC for discrimination, and Brier Score, Brier Score Scaled, and Hosmer-Lemeshow test for calibration. The regression task was evaluated by comparing median actual and predicted discharge, loss penalty function (LPF) ((actual-predicted)/actual) and calculating root mean squared relative errors (RMSRE). RESULTS: Median (P25-P75) ICU length of stay was 3 (2-5) days. For classification, the GP model showed an aROC of 0.758 which was significantly higher than the predictions by nurses, but not better than EuroSCORE and physicians. The GP had the best calibration, with a Brier Score of 0.179 and Hosmer-Lemeshow p-value of 0.382. For regression, GP had the highest proportion of patients with a correctly predicted day of discharge (40%), which was significantly better than the EuroSCORE (p < 0.001) and nurses (p = 0.044) but equivalent to physicians. GP had the lowest RMSRE (0.408) of all predictive models. CONCLUSIONS: A GP model that uses PDMS data of the first 4 hours after admission in the ICU of scheduled adult cardiac surgery patients was able to predict discharge from the ICU as a classification as well as a regression task. The GP model demonstrated a significantly better discriminative power than the EuroSCORE and the ICU nurses, and at least as good as predictions done by ICU physicians. The GP model was the only well calibrated model. BioMed Central 2011-10-25 /pmc/articles/PMC3228706/ /pubmed/22027016 http://dx.doi.org/10.1186/1472-6947-11-64 Text en Copyright ©2011 Meyfroidt et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/2.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Meyfroidt, Geert
Güiza, Fabian
Cottem, Dominiek
De Becker, Wilfried
Van Loon, Kristien
Aerts, Jean-Marie
Berckmans, Daniël
Ramon, Jan
Bruynooghe, Maurice
Van den Berghe, Greet
Computerized prediction of intensive care unit discharge after cardiac surgery: development and validation of a Gaussian processes model
title Computerized prediction of intensive care unit discharge after cardiac surgery: development and validation of a Gaussian processes model
title_full Computerized prediction of intensive care unit discharge after cardiac surgery: development and validation of a Gaussian processes model
title_fullStr Computerized prediction of intensive care unit discharge after cardiac surgery: development and validation of a Gaussian processes model
title_full_unstemmed Computerized prediction of intensive care unit discharge after cardiac surgery: development and validation of a Gaussian processes model
title_short Computerized prediction of intensive care unit discharge after cardiac surgery: development and validation of a Gaussian processes model
title_sort computerized prediction of intensive care unit discharge after cardiac surgery: development and validation of a gaussian processes model
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3228706/
https://www.ncbi.nlm.nih.gov/pubmed/22027016
http://dx.doi.org/10.1186/1472-6947-11-64
work_keys_str_mv AT meyfroidtgeert computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel
AT guizafabian computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel
AT cottemdominiek computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel
AT debeckerwilfried computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel
AT vanloonkristien computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel
AT aertsjeanmarie computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel
AT berckmansdaniel computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel
AT ramonjan computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel
AT bruynooghemaurice computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel
AT vandenberghegreet computerizedpredictionofintensivecareunitdischargeaftercardiacsurgerydevelopmentandvalidationofagaussianprocessesmodel