Cargando…

Optimizing an existing prediction model for quality of life one‐year post‐intensive care unit: An exploratory analysis

BACKGROUND: This study aimed to improve the PREPARE model, an existing linear regression prediction model for long‐term quality of life (QoL) of intensive care unit (ICU) survivors by incorporating additional ICU data from patients' electronic health record (EHR) and bedside monitors. METHODS:...

Descripción completa

Detalles Bibliográficos
Autores principales: de Jonge, Manon, Wubben, Nina, van Kaam, Christiaan R., Frenzel, Tim, Hoedemaekers, Cornelia W. E., Ambrogioni, Luca, van der Hoeven, Johannes G., van den Boogaard, Mark, Zegers, Marieke
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9804831/
https://www.ncbi.nlm.nih.gov/pubmed/36054515
http://dx.doi.org/10.1111/aas.14138
_version_ 1784862202303348736
author de Jonge, Manon
Wubben, Nina
van Kaam, Christiaan R.
Frenzel, Tim
Hoedemaekers, Cornelia W. E.
Ambrogioni, Luca
van der Hoeven, Johannes G.
van den Boogaard, Mark
Zegers, Marieke
author_facet de Jonge, Manon
Wubben, Nina
van Kaam, Christiaan R.
Frenzel, Tim
Hoedemaekers, Cornelia W. E.
Ambrogioni, Luca
van der Hoeven, Johannes G.
van den Boogaard, Mark
Zegers, Marieke
author_sort de Jonge, Manon
collection PubMed
description BACKGROUND: This study aimed to improve the PREPARE model, an existing linear regression prediction model for long‐term quality of life (QoL) of intensive care unit (ICU) survivors by incorporating additional ICU data from patients' electronic health record (EHR) and bedside monitors. METHODS: The 1308 adult ICU patients, aged ≥16, admitted between July 2016 and January 2019 were included. Several regression‐based machine learning models were fitted on a combination of patient‐reported data and expert‐selected EHR variables and bedside monitor data to predict change in QoL 1 year after ICU admission. Predictive performance was compared to a five‐feature linear regression prediction model using only 24‐hour data (R(2) = 0.54, mean square error (MSE) = 0.031, mean absolute error (MAE) = 0.128). RESULTS: The 67.9% of the included ICU survivors was male and the median age was 65.0 [IQR: 57.0–71.0]. Median length of stay (LOS) was 1 day [IQR 1.0–2.0]. The incorporation of the additional data pertaining to the entire ICU stay did not improve the predictive performance of the original linear regression model. The best performing machine learning model used seven features (R(2) = 0.52, MSE = 0.032, MAE = 0.125). Pre‐ICU QoL, the presence of a cerebro vascular accident (CVA) upon admission and the highest temperature measured during the ICU stay were the most important contributors to predictive performance. Pre‐ICU QoL's contribution to predictive performance far exceeded that of the other predictors. CONCLUSION: Pre‐ICU QoL was by far the most important predictor for change in QoL 1 year after ICU admission. The incorporation of the numerous additional features pertaining to the entire ICU stay did not improve predictive performance although the patients' LOS was relatively short.
format Online
Article
Text
id pubmed-9804831
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-98048312023-01-06 Optimizing an existing prediction model for quality of life one‐year post‐intensive care unit: An exploratory analysis de Jonge, Manon Wubben, Nina van Kaam, Christiaan R. Frenzel, Tim Hoedemaekers, Cornelia W. E. Ambrogioni, Luca van der Hoeven, Johannes G. van den Boogaard, Mark Zegers, Marieke Acta Anaesthesiol Scand Intensive Care and Physiology BACKGROUND: This study aimed to improve the PREPARE model, an existing linear regression prediction model for long‐term quality of life (QoL) of intensive care unit (ICU) survivors by incorporating additional ICU data from patients' electronic health record (EHR) and bedside monitors. METHODS: The 1308 adult ICU patients, aged ≥16, admitted between July 2016 and January 2019 were included. Several regression‐based machine learning models were fitted on a combination of patient‐reported data and expert‐selected EHR variables and bedside monitor data to predict change in QoL 1 year after ICU admission. Predictive performance was compared to a five‐feature linear regression prediction model using only 24‐hour data (R(2) = 0.54, mean square error (MSE) = 0.031, mean absolute error (MAE) = 0.128). RESULTS: The 67.9% of the included ICU survivors was male and the median age was 65.0 [IQR: 57.0–71.0]. Median length of stay (LOS) was 1 day [IQR 1.0–2.0]. The incorporation of the additional data pertaining to the entire ICU stay did not improve the predictive performance of the original linear regression model. The best performing machine learning model used seven features (R(2) = 0.52, MSE = 0.032, MAE = 0.125). Pre‐ICU QoL, the presence of a cerebro vascular accident (CVA) upon admission and the highest temperature measured during the ICU stay were the most important contributors to predictive performance. Pre‐ICU QoL's contribution to predictive performance far exceeded that of the other predictors. CONCLUSION: Pre‐ICU QoL was by far the most important predictor for change in QoL 1 year after ICU admission. The incorporation of the numerous additional features pertaining to the entire ICU stay did not improve predictive performance although the patients' LOS was relatively short. John Wiley and Sons Inc. 2022-08-31 2022-11 /pmc/articles/PMC9804831/ /pubmed/36054515 http://dx.doi.org/10.1111/aas.14138 Text en © 2022 The Authors. Acta Anaesthesiologica Scandinavica published by John Wiley & Sons Ltd on behalf of Acta Anaesthesiologica Scandinavica Foundation. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Intensive Care and Physiology
de Jonge, Manon
Wubben, Nina
van Kaam, Christiaan R.
Frenzel, Tim
Hoedemaekers, Cornelia W. E.
Ambrogioni, Luca
van der Hoeven, Johannes G.
van den Boogaard, Mark
Zegers, Marieke
Optimizing an existing prediction model for quality of life one‐year post‐intensive care unit: An exploratory analysis
title Optimizing an existing prediction model for quality of life one‐year post‐intensive care unit: An exploratory analysis
title_full Optimizing an existing prediction model for quality of life one‐year post‐intensive care unit: An exploratory analysis
title_fullStr Optimizing an existing prediction model for quality of life one‐year post‐intensive care unit: An exploratory analysis
title_full_unstemmed Optimizing an existing prediction model for quality of life one‐year post‐intensive care unit: An exploratory analysis
title_short Optimizing an existing prediction model for quality of life one‐year post‐intensive care unit: An exploratory analysis
title_sort optimizing an existing prediction model for quality of life one‐year post‐intensive care unit: an exploratory analysis
topic Intensive Care and Physiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9804831/
https://www.ncbi.nlm.nih.gov/pubmed/36054515
http://dx.doi.org/10.1111/aas.14138
work_keys_str_mv AT dejongemanon optimizinganexistingpredictionmodelforqualityoflifeoneyearpostintensivecareunitanexploratoryanalysis
AT wubbennina optimizinganexistingpredictionmodelforqualityoflifeoneyearpostintensivecareunitanexploratoryanalysis
AT vankaamchristiaanr optimizinganexistingpredictionmodelforqualityoflifeoneyearpostintensivecareunitanexploratoryanalysis
AT frenzeltim optimizinganexistingpredictionmodelforqualityoflifeoneyearpostintensivecareunitanexploratoryanalysis
AT hoedemaekerscorneliawe optimizinganexistingpredictionmodelforqualityoflifeoneyearpostintensivecareunitanexploratoryanalysis
AT ambrogioniluca optimizinganexistingpredictionmodelforqualityoflifeoneyearpostintensivecareunitanexploratoryanalysis
AT vanderhoevenjohannesg optimizinganexistingpredictionmodelforqualityoflifeoneyearpostintensivecareunitanexploratoryanalysis
AT vandenboogaardmark optimizinganexistingpredictionmodelforqualityoflifeoneyearpostintensivecareunitanexploratoryanalysis
AT zegersmarieke optimizinganexistingpredictionmodelforqualityoflifeoneyearpostintensivecareunitanexploratoryanalysis