Cargando…

A Racially Unbiased, Machine Learning Approach to Prediction of Mortality: Algorithm Development Study

BACKGROUND: Racial disparities in health care are well documented in the United States. As machine learning methods become more common in health care settings, it is important to ensure that these methods do not contribute to racial disparities through biased predictions or differential accuracy acr...

Descripción completa

Detalles Bibliográficos
Autores principales: Allen, Angier, Mataraso, Samson, Siefkas, Anna, Burdick, Hoyt, Braden, Gregory, Dellinger, R Phillip, McCoy, Andrea, Pellegrini, Emily, Hoffman, Jana, Green-Saxena, Abigail, Barnes, Gina, Calvert, Jacob, Das, Ritankar
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7644374/
https://www.ncbi.nlm.nih.gov/pubmed/33090117
http://dx.doi.org/10.2196/22400
_version_ 1783606441912827904
author Allen, Angier
Mataraso, Samson
Siefkas, Anna
Burdick, Hoyt
Braden, Gregory
Dellinger, R Phillip
McCoy, Andrea
Pellegrini, Emily
Hoffman, Jana
Green-Saxena, Abigail
Barnes, Gina
Calvert, Jacob
Das, Ritankar
author_facet Allen, Angier
Mataraso, Samson
Siefkas, Anna
Burdick, Hoyt
Braden, Gregory
Dellinger, R Phillip
McCoy, Andrea
Pellegrini, Emily
Hoffman, Jana
Green-Saxena, Abigail
Barnes, Gina
Calvert, Jacob
Das, Ritankar
author_sort Allen, Angier
collection PubMed
description BACKGROUND: Racial disparities in health care are well documented in the United States. As machine learning methods become more common in health care settings, it is important to ensure that these methods do not contribute to racial disparities through biased predictions or differential accuracy across racial groups. OBJECTIVE: The goal of the research was to assess a machine learning algorithm intentionally developed to minimize bias in in-hospital mortality predictions between white and nonwhite patient groups. METHODS: Bias was minimized through preprocessing of algorithm training data. We performed a retrospective analysis of electronic health record data from patients admitted to the intensive care unit (ICU) at a large academic health center between 2001 and 2012, drawing data from the Medical Information Mart for Intensive Care–III database. Patients were included if they had at least 10 hours of available measurements after ICU admission, had at least one of every measurement used for model prediction, and had recorded race/ethnicity data. Bias was assessed through the equal opportunity difference. Model performance in terms of bias and accuracy was compared with the Modified Early Warning Score (MEWS), the Simplified Acute Physiology Score II (SAPS II), and the Acute Physiologic Assessment and Chronic Health Evaluation (APACHE). RESULTS: The machine learning algorithm was found to be more accurate than all comparators, with a higher sensitivity, specificity, and area under the receiver operating characteristic. The machine learning algorithm was found to be unbiased (equal opportunity difference 0.016, P=.20). APACHE was also found to be unbiased (equal opportunity difference 0.019, P=.11), while SAPS II and MEWS were found to have significant bias (equal opportunity difference 0.038, P=.006 and equal opportunity difference 0.074, P<.001, respectively). CONCLUSIONS: This study indicates there may be significant racial bias in commonly used severity scoring systems and that machine learning algorithms may reduce bias while improving on the accuracy of these methods.
format Online
Article
Text
id pubmed-7644374
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-76443742020-11-17 A Racially Unbiased, Machine Learning Approach to Prediction of Mortality: Algorithm Development Study Allen, Angier Mataraso, Samson Siefkas, Anna Burdick, Hoyt Braden, Gregory Dellinger, R Phillip McCoy, Andrea Pellegrini, Emily Hoffman, Jana Green-Saxena, Abigail Barnes, Gina Calvert, Jacob Das, Ritankar JMIR Public Health Surveill Original Paper BACKGROUND: Racial disparities in health care are well documented in the United States. As machine learning methods become more common in health care settings, it is important to ensure that these methods do not contribute to racial disparities through biased predictions or differential accuracy across racial groups. OBJECTIVE: The goal of the research was to assess a machine learning algorithm intentionally developed to minimize bias in in-hospital mortality predictions between white and nonwhite patient groups. METHODS: Bias was minimized through preprocessing of algorithm training data. We performed a retrospective analysis of electronic health record data from patients admitted to the intensive care unit (ICU) at a large academic health center between 2001 and 2012, drawing data from the Medical Information Mart for Intensive Care–III database. Patients were included if they had at least 10 hours of available measurements after ICU admission, had at least one of every measurement used for model prediction, and had recorded race/ethnicity data. Bias was assessed through the equal opportunity difference. Model performance in terms of bias and accuracy was compared with the Modified Early Warning Score (MEWS), the Simplified Acute Physiology Score II (SAPS II), and the Acute Physiologic Assessment and Chronic Health Evaluation (APACHE). RESULTS: The machine learning algorithm was found to be more accurate than all comparators, with a higher sensitivity, specificity, and area under the receiver operating characteristic. The machine learning algorithm was found to be unbiased (equal opportunity difference 0.016, P=.20). APACHE was also found to be unbiased (equal opportunity difference 0.019, P=.11), while SAPS II and MEWS were found to have significant bias (equal opportunity difference 0.038, P=.006 and equal opportunity difference 0.074, P<.001, respectively). CONCLUSIONS: This study indicates there may be significant racial bias in commonly used severity scoring systems and that machine learning algorithms may reduce bias while improving on the accuracy of these methods. JMIR Publications 2020-10-22 /pmc/articles/PMC7644374/ /pubmed/33090117 http://dx.doi.org/10.2196/22400 Text en ©Angier Allen, Samson Mataraso, Anna Siefkas, Hoyt Burdick, Gregory Braden, R Phillip Dellinger, Andrea McCoy, Emily Pellegrini, Jana Hoffman, Abigail Green-Saxena, Gina Barnes, Jacob Calvert, Ritankar Das. Originally published in JMIR Public Health and Surveillance (http://publichealth.jmir.org), 22.10.2020. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Public Health and Surveillance, is properly cited. The complete bibliographic information, a link to the original publication on http://publichealth.jmir.org, as well as this copyright and license information must be included.
spellingShingle Original Paper
Allen, Angier
Mataraso, Samson
Siefkas, Anna
Burdick, Hoyt
Braden, Gregory
Dellinger, R Phillip
McCoy, Andrea
Pellegrini, Emily
Hoffman, Jana
Green-Saxena, Abigail
Barnes, Gina
Calvert, Jacob
Das, Ritankar
A Racially Unbiased, Machine Learning Approach to Prediction of Mortality: Algorithm Development Study
title A Racially Unbiased, Machine Learning Approach to Prediction of Mortality: Algorithm Development Study
title_full A Racially Unbiased, Machine Learning Approach to Prediction of Mortality: Algorithm Development Study
title_fullStr A Racially Unbiased, Machine Learning Approach to Prediction of Mortality: Algorithm Development Study
title_full_unstemmed A Racially Unbiased, Machine Learning Approach to Prediction of Mortality: Algorithm Development Study
title_short A Racially Unbiased, Machine Learning Approach to Prediction of Mortality: Algorithm Development Study
title_sort racially unbiased, machine learning approach to prediction of mortality: algorithm development study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7644374/
https://www.ncbi.nlm.nih.gov/pubmed/33090117
http://dx.doi.org/10.2196/22400
work_keys_str_mv AT allenangier araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT matarasosamson araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT siefkasanna araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT burdickhoyt araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT bradengregory araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT dellingerrphillip araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT mccoyandrea araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT pellegriniemily araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT hoffmanjana araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT greensaxenaabigail araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT barnesgina araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT calvertjacob araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT dasritankar araciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT allenangier raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT matarasosamson raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT siefkasanna raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT burdickhoyt raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT bradengregory raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT dellingerrphillip raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT mccoyandrea raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT pellegriniemily raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT hoffmanjana raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT greensaxenaabigail raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT barnesgina raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT calvertjacob raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy
AT dasritankar raciallyunbiasedmachinelearningapproachtopredictionofmortalityalgorithmdevelopmentstudy