Cargando…

Predicting Mortality in Diabetic ICU Patients Using Machine Learning and Severity Indices

Diabetes constitutes a significant health problem that leads to many long term health issues including renal, cardiovascular, and neuropathic complications. Many of these problems can result in increased health care costs, as well risk of ICU stay and mortality. To date, no published study has used...

Descripción completa

Detalles Bibliográficos
Autores principales: Anand, Rajsavi S., Stey, Paul, Jain, Sukrit, Biron, Dustin R., Bhatt, Harikrishna, Monteiro, Kristina, Feller, Edward, Ranney, Megan L., Sarkar, Indra Neil, Chen, Elizabeth S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Informatics Association 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5961793/
https://www.ncbi.nlm.nih.gov/pubmed/29888089
_version_ 1783324781822607360
author Anand, Rajsavi S.
Stey, Paul
Jain, Sukrit
Biron, Dustin R.
Bhatt, Harikrishna
Monteiro, Kristina
Feller, Edward
Ranney, Megan L.
Sarkar, Indra Neil
Chen, Elizabeth S.
author_facet Anand, Rajsavi S.
Stey, Paul
Jain, Sukrit
Biron, Dustin R.
Bhatt, Harikrishna
Monteiro, Kristina
Feller, Edward
Ranney, Megan L.
Sarkar, Indra Neil
Chen, Elizabeth S.
author_sort Anand, Rajsavi S.
collection PubMed
description Diabetes constitutes a significant health problem that leads to many long term health issues including renal, cardiovascular, and neuropathic complications. Many of these problems can result in increased health care costs, as well risk of ICU stay and mortality. To date, no published study has used predictive modeling to examine the relative influence of diabetes, diabetic health maintenance, and comorbidities on outcomes in ICU patients. Using the MIMIC-III database, machine learning and binomial logistic regression modeling were applied to predict risk of mortality. The final models achieved good fit with AUC values of 0.787 and 0.785 respectively. Additionally, this study demonstrated that robust classification can be done as a combination of five variables (HbA1c, mean glucose during stay, diagnoses upon admission, age, and type of admission) to predict risk as compared with other machine learning models that require nearly 35 variables for similar risk assessment and prediction.
format Online
Article
Text
id pubmed-5961793
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher American Medical Informatics Association
record_format MEDLINE/PubMed
spelling pubmed-59617932018-06-08 Predicting Mortality in Diabetic ICU Patients Using Machine Learning and Severity Indices Anand, Rajsavi S. Stey, Paul Jain, Sukrit Biron, Dustin R. Bhatt, Harikrishna Monteiro, Kristina Feller, Edward Ranney, Megan L. Sarkar, Indra Neil Chen, Elizabeth S. AMIA Jt Summits Transl Sci Proc Articles Diabetes constitutes a significant health problem that leads to many long term health issues including renal, cardiovascular, and neuropathic complications. Many of these problems can result in increased health care costs, as well risk of ICU stay and mortality. To date, no published study has used predictive modeling to examine the relative influence of diabetes, diabetic health maintenance, and comorbidities on outcomes in ICU patients. Using the MIMIC-III database, machine learning and binomial logistic regression modeling were applied to predict risk of mortality. The final models achieved good fit with AUC values of 0.787 and 0.785 respectively. Additionally, this study demonstrated that robust classification can be done as a combination of five variables (HbA1c, mean glucose during stay, diagnoses upon admission, age, and type of admission) to predict risk as compared with other machine learning models that require nearly 35 variables for similar risk assessment and prediction. American Medical Informatics Association 2018-05-18 /pmc/articles/PMC5961793/ /pubmed/29888089 Text en ©2018 AMIA - All rights reserved. This is an Open Access article: verbatim copying and redistribution of this article are permitted in all media for any purpose
spellingShingle Articles
Anand, Rajsavi S.
Stey, Paul
Jain, Sukrit
Biron, Dustin R.
Bhatt, Harikrishna
Monteiro, Kristina
Feller, Edward
Ranney, Megan L.
Sarkar, Indra Neil
Chen, Elizabeth S.
Predicting Mortality in Diabetic ICU Patients Using Machine Learning and Severity Indices
title Predicting Mortality in Diabetic ICU Patients Using Machine Learning and Severity Indices
title_full Predicting Mortality in Diabetic ICU Patients Using Machine Learning and Severity Indices
title_fullStr Predicting Mortality in Diabetic ICU Patients Using Machine Learning and Severity Indices
title_full_unstemmed Predicting Mortality in Diabetic ICU Patients Using Machine Learning and Severity Indices
title_short Predicting Mortality in Diabetic ICU Patients Using Machine Learning and Severity Indices
title_sort predicting mortality in diabetic icu patients using machine learning and severity indices
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5961793/
https://www.ncbi.nlm.nih.gov/pubmed/29888089
work_keys_str_mv AT anandrajsavis predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices
AT steypaul predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices
AT jainsukrit predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices
AT birondustinr predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices
AT bhattharikrishna predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices
AT monteirokristina predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices
AT felleredward predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices
AT ranneymeganl predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices
AT sarkarindraneil predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices
AT chenelizabeths predictingmortalityindiabeticicupatientsusingmachinelearningandseverityindices