Artificial intelligence to predict needs for urgent revascularization from 12-leads electrocardiography in emergency patients.

<h4>Background</h4>Patient with acute coronary syndrome benefits from early revascularization. However, methods for the selection of patients who require urgent revascularization from a variety of patients visiting the emergency room with chest symptoms is not fully established. Electroc...

Full description

Bibliographic Details
Main Authors: Shinichi Goto, Mai Kimura, Yoshinori Katsumata, Shinya Goto, Takashi Kamatani, Genki Ichihara, Seien Ko, Junichi Sasaki, Keiichi Fukuda, Motoaki Sano
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0210103
_version_ 1818834555435483136
author Shinichi Goto
Mai Kimura
Yoshinori Katsumata
Shinya Goto
Takashi Kamatani
Genki Ichihara
Seien Ko
Junichi Sasaki
Keiichi Fukuda
Motoaki Sano
author_facet Shinichi Goto
Mai Kimura
Yoshinori Katsumata
Shinya Goto
Takashi Kamatani
Genki Ichihara
Seien Ko
Junichi Sasaki
Keiichi Fukuda
Motoaki Sano
author_sort Shinichi Goto
collection DOAJ
description <h4>Background</h4>Patient with acute coronary syndrome benefits from early revascularization. However, methods for the selection of patients who require urgent revascularization from a variety of patients visiting the emergency room with chest symptoms is not fully established. Electrocardiogram is an easy and rapid procedure, but may contain crucial information not recognized even by well-trained physicians.<h4>Objective</h4>To make a prediction model for the needs for urgent revascularization from 12-lead electrocardiogram recorded in the emergency room.<h4>Method</h4>We developed an artificial intelligence model enabling the detection of hidden information from a 12-lead electrocardiogram recorded in the emergency room. Electrocardiograms obtained from consecutive patients visiting the emergency room at Keio University Hospital from January 2012 to April 2018 with chest discomfort was collected. These data were splitted into validation and derivation dataset with no duplication in each dataset. The artificial intelligence model was constructed to select patients who require urgent revascularization within 48 hours. The model was trained with the derivation dataset and tested using the validation dataset.<h4>Results</h4>Of the consecutive 39,619 patients visiting the emergency room with chest discomfort, 362 underwent urgent revascularization. Of them, 249 were included in the derivation dataset and the remaining 113 were included in validation dataset. For the control, 300 were randomly selected as derivation dataset and another 130 patients were randomly selected for validation dataset from the 39,317 who did not undergo urgent revascularization. On validation, our artificial intelligence model had predictive value of the c-statistics 0.88 (95% CI 0.84-0.93) for detecting patients who required urgent revascularization.<h4>Conclusions</h4>Our artificial intelligence model provides information to select patients who need urgent revascularization from only 12-leads electrocardiogram in those visiting the emergency room with chest discomfort.
first_indexed 2024-12-19T02:36:41Z
format Article
id doaj.art-68ed462e3db54f87b0fe5843fc5bb203
institution Directory Open Access Journal
issn 1932-6203
language English
last_indexed 2024-12-19T02:36:41Z
publishDate 2019-01-01
publisher Public Library of Science (PLoS)
record_format Article
series PLoS ONE
spelling doaj.art-68ed462e3db54f87b0fe5843fc5bb2032022-12-21T20:39:21ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-01141e021010310.1371/journal.pone.0210103Artificial intelligence to predict needs for urgent revascularization from 12-leads electrocardiography in emergency patients.Shinichi GotoMai KimuraYoshinori KatsumataShinya GotoTakashi KamataniGenki IchiharaSeien KoJunichi SasakiKeiichi FukudaMotoaki Sano<h4>Background</h4>Patient with acute coronary syndrome benefits from early revascularization. However, methods for the selection of patients who require urgent revascularization from a variety of patients visiting the emergency room with chest symptoms is not fully established. Electrocardiogram is an easy and rapid procedure, but may contain crucial information not recognized even by well-trained physicians.<h4>Objective</h4>To make a prediction model for the needs for urgent revascularization from 12-lead electrocardiogram recorded in the emergency room.<h4>Method</h4>We developed an artificial intelligence model enabling the detection of hidden information from a 12-lead electrocardiogram recorded in the emergency room. Electrocardiograms obtained from consecutive patients visiting the emergency room at Keio University Hospital from January 2012 to April 2018 with chest discomfort was collected. These data were splitted into validation and derivation dataset with no duplication in each dataset. The artificial intelligence model was constructed to select patients who require urgent revascularization within 48 hours. The model was trained with the derivation dataset and tested using the validation dataset.<h4>Results</h4>Of the consecutive 39,619 patients visiting the emergency room with chest discomfort, 362 underwent urgent revascularization. Of them, 249 were included in the derivation dataset and the remaining 113 were included in validation dataset. For the control, 300 were randomly selected as derivation dataset and another 130 patients were randomly selected for validation dataset from the 39,317 who did not undergo urgent revascularization. On validation, our artificial intelligence model had predictive value of the c-statistics 0.88 (95% CI 0.84-0.93) for detecting patients who required urgent revascularization.<h4>Conclusions</h4>Our artificial intelligence model provides information to select patients who need urgent revascularization from only 12-leads electrocardiogram in those visiting the emergency room with chest discomfort.https://doi.org/10.1371/journal.pone.0210103
spellingShingle Shinichi Goto
Mai Kimura
Yoshinori Katsumata
Shinya Goto
Takashi Kamatani
Genki Ichihara
Seien Ko
Junichi Sasaki
Keiichi Fukuda
Motoaki Sano
Artificial intelligence to predict needs for urgent revascularization from 12-leads electrocardiography in emergency patients.
PLoS ONE
title Artificial intelligence to predict needs for urgent revascularization from 12-leads electrocardiography in emergency patients.
title_full Artificial intelligence to predict needs for urgent revascularization from 12-leads electrocardiography in emergency patients.
title_fullStr Artificial intelligence to predict needs for urgent revascularization from 12-leads electrocardiography in emergency patients.
title_full_unstemmed Artificial intelligence to predict needs for urgent revascularization from 12-leads electrocardiography in emergency patients.
title_short Artificial intelligence to predict needs for urgent revascularization from 12-leads electrocardiography in emergency patients.
title_sort artificial intelligence to predict needs for urgent revascularization from 12 leads electrocardiography in emergency patients
url https://doi.org/10.1371/journal.pone.0210103
work_keys_str_mv AT shinichigoto artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients
AT maikimura artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients
AT yoshinorikatsumata artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients
AT shinyagoto artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients
AT takashikamatani artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients
AT genkiichihara artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients
AT seienko artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients
AT junichisasaki artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients
AT keiichifukuda artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients
AT motoakisano artificialintelligencetopredictneedsforurgentrevascularizationfrom12leadselectrocardiographyinemergencypatients