Prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection

Background The key aim of triage in chest pain patients is to identify those with high risk of adverse cardiac events as they require intensive monitoring and early intervention. In this study, we aim to discover the most relevant variables for risk prediction of major adverse cardiac events (MACE)...

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Main Authors: Liu, Nan, Koh, Zhi Xiong, Goh, Junyang, Lin, Zhiping, Haaland, Benjamin, Ting, Boon Ping, Ong, Marcus Eng Hock
Other Authors: School of Electrical and Electronic Engineering
Format: Article
Language:English
Published: 2014
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Online Access:https://hdl.handle.net/10356/102512
http://hdl.handle.net/10220/24264
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1025122022-02-16T16:28:00Z Prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection Liu, Nan Koh, Zhi Xiong Goh, Junyang Lin, Zhiping Haaland, Benjamin Ting, Boon Ping Ong, Marcus Eng Hock School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering::Control and instrumentation::Medical electronics Background The key aim of triage in chest pain patients is to identify those with high risk of adverse cardiac events as they require intensive monitoring and early intervention. In this study, we aim to discover the most relevant variables for risk prediction of major adverse cardiac events (MACE) using clinical signs and heart rate variability. Methods A total of 702 chest pain patients at the Emergency Department (ED) of a tertiary hospital in Singapore were included in this study. The recruited patients were at least 30 years of age and who presented to the ED with a primary complaint of non-traumatic chest pain. The primary outcome was a composite of MACE such as death and cardiac arrest within 72 h of arrival at the ED. For each patient, eight clinical signs such as blood pressure and temperature were measured, and a 5-min ECG was recorded to derive heart rate variability parameters. A random forest-based novel method was developed to select the most relevant variables. A geometric distance-based machine learning scoring system was then implemented to derive a risk score from 0 to 100. Results Out of 702 patients, 29 (4.1%) met the primary outcome. We selected the 3 most relevant variables for predicting MACE, which were systolic blood pressure, the mean RR interval and the mean instantaneous heart rate. The scoring system with these 3 variables produced an area under the curve (AUC) of 0.812, and a cutoff score of 43 gave a sensitivity of 82.8% and specificity of 63.4%, while the scoring system with all the 23 variables had an AUC of 0.736, and a cutoff score of 49 gave a sensitivity of 72.4% and specificity of 63.0%. Conventional thrombolysis in myocardial infarction score and the modified early warning score achieved AUC values of 0.637 and 0.622, respectively. Conclusions It is observed that a few predictors outperformed the whole set of variables in predicting MACE within 72 h. We conclude that more predictors do not necessarily guarantee better prediction results. Furthermore, machine learning-based variable selection seems promising in discovering a few relevant and significant measures as predictors. Published version 2014-12-01T03:14:37Z 2019-12-06T20:56:12Z 2014-12-01T03:14:37Z 2019-12-06T20:56:12Z 2014 2014 Journal Article Liu, N., Koh, Z. X., Goh, J., Lin, Z., Haaland, B., Ting, B. P., & Ong, M. E. H. (2014). Prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection. BMC medical informatics and decision making, 14(1), 75-. 1472-6947 https://hdl.handle.net/10356/102512 http://hdl.handle.net/10220/24264 10.1186/1472-6947-14-75 25150702 en BMC medical informatics and decision making © 2014 Liu et al.; licensee BioMed Central Ltd. This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly credited. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated. 9 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering::Control and instrumentation::Medical electronics
spellingShingle DRNTU::Engineering::Electrical and electronic engineering::Control and instrumentation::Medical electronics
Liu, Nan
Koh, Zhi Xiong
Goh, Junyang
Lin, Zhiping
Haaland, Benjamin
Ting, Boon Ping
Ong, Marcus Eng Hock
Prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection
description Background The key aim of triage in chest pain patients is to identify those with high risk of adverse cardiac events as they require intensive monitoring and early intervention. In this study, we aim to discover the most relevant variables for risk prediction of major adverse cardiac events (MACE) using clinical signs and heart rate variability. Methods A total of 702 chest pain patients at the Emergency Department (ED) of a tertiary hospital in Singapore were included in this study. The recruited patients were at least 30 years of age and who presented to the ED with a primary complaint of non-traumatic chest pain. The primary outcome was a composite of MACE such as death and cardiac arrest within 72 h of arrival at the ED. For each patient, eight clinical signs such as blood pressure and temperature were measured, and a 5-min ECG was recorded to derive heart rate variability parameters. A random forest-based novel method was developed to select the most relevant variables. A geometric distance-based machine learning scoring system was then implemented to derive a risk score from 0 to 100. Results Out of 702 patients, 29 (4.1%) met the primary outcome. We selected the 3 most relevant variables for predicting MACE, which were systolic blood pressure, the mean RR interval and the mean instantaneous heart rate. The scoring system with these 3 variables produced an area under the curve (AUC) of 0.812, and a cutoff score of 43 gave a sensitivity of 82.8% and specificity of 63.4%, while the scoring system with all the 23 variables had an AUC of 0.736, and a cutoff score of 49 gave a sensitivity of 72.4% and specificity of 63.0%. Conventional thrombolysis in myocardial infarction score and the modified early warning score achieved AUC values of 0.637 and 0.622, respectively. Conclusions It is observed that a few predictors outperformed the whole set of variables in predicting MACE within 72 h. We conclude that more predictors do not necessarily guarantee better prediction results. Furthermore, machine learning-based variable selection seems promising in discovering a few relevant and significant measures as predictors.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Liu, Nan
Koh, Zhi Xiong
Goh, Junyang
Lin, Zhiping
Haaland, Benjamin
Ting, Boon Ping
Ong, Marcus Eng Hock
format Article
author Liu, Nan
Koh, Zhi Xiong
Goh, Junyang
Lin, Zhiping
Haaland, Benjamin
Ting, Boon Ping
Ong, Marcus Eng Hock
author_sort Liu, Nan
title Prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection
title_short Prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection
title_full Prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection
title_fullStr Prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection
title_full_unstemmed Prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection
title_sort prediction of adverse cardiac events in emergency department patients with chest pain using machine learning for variable selection
publishDate 2014
url https://hdl.handle.net/10356/102512
http://hdl.handle.net/10220/24264
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