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Visual assessment of interactions among resuscitation activity factors in out-of-hospital cardiopulmonary arrest using a machine learning model

AIM: The evaluation of the effects of resuscitation activity factors on the outcome of out-of-hospital cardiopulmonary arrest (OHCA) requires consideration of the interactions among these factors. To improve OHCA success rates, this study assessed the prognostic interactions resulting from simultane...

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Autores principales: Kawai, Yasuyuki, Okuda, Hirozumi, Kinoshita, Arisa, Yamamoto, Koji, Miyazaki, Keita, Takano, Keisuke, Asai, Hideki, Urisono, Yasuyuki, Fukushima, Hidetada
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9447882/
https://www.ncbi.nlm.nih.gov/pubmed/36067174
http://dx.doi.org/10.1371/journal.pone.0273787
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author Kawai, Yasuyuki
Okuda, Hirozumi
Kinoshita, Arisa
Yamamoto, Koji
Miyazaki, Keita
Takano, Keisuke
Asai, Hideki
Urisono, Yasuyuki
Fukushima, Hidetada
author_facet Kawai, Yasuyuki
Okuda, Hirozumi
Kinoshita, Arisa
Yamamoto, Koji
Miyazaki, Keita
Takano, Keisuke
Asai, Hideki
Urisono, Yasuyuki
Fukushima, Hidetada
author_sort Kawai, Yasuyuki
collection PubMed
description AIM: The evaluation of the effects of resuscitation activity factors on the outcome of out-of-hospital cardiopulmonary arrest (OHCA) requires consideration of the interactions among these factors. To improve OHCA success rates, this study assessed the prognostic interactions resulting from simultaneously modifying two prehospital factors using a trained machine learning model. METHODS: We enrolled 8274 OHCA patients resuscitated by emergency medical services (EMS) in Nara prefecture, Japan, with a unified activity protocol between January 2010 and December 2018; patients younger than 18 and those with noncardiogenic cardiopulmonary arrest were excluded. Next, a three-layer neural network model was constructed to predict the cerebral performance category score of 1 or 2 at one month based on 24 features of prehospital EMS activity. Using this model, we evaluated the prognostic impact of continuously and simultaneously varying the transport time and the defibrillation or drug-administration time in the test data based on heatmaps. RESULTS: The average class sensitivity of the prognostic model was more than 0.86, with a full area under the receiver operating characteristics curve of 0.94 (95% confidence interval of 0.92–0.96). By adjusting the two time factors simultaneously, a nonlinear interaction was obtained between the two adjustments, instead of a linear prediction of the outcome. CONCLUSION: Modifications to the parameters using a machine-learning-based prognostic model indicated an interaction among the prognostic factors. These findings could be used to evaluate which factors should be prioritized to reduce time in the trained region of machine learning in order to improve EMS activities.
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spelling pubmed-94478822022-09-07 Visual assessment of interactions among resuscitation activity factors in out-of-hospital cardiopulmonary arrest using a machine learning model Kawai, Yasuyuki Okuda, Hirozumi Kinoshita, Arisa Yamamoto, Koji Miyazaki, Keita Takano, Keisuke Asai, Hideki Urisono, Yasuyuki Fukushima, Hidetada PLoS One Research Article AIM: The evaluation of the effects of resuscitation activity factors on the outcome of out-of-hospital cardiopulmonary arrest (OHCA) requires consideration of the interactions among these factors. To improve OHCA success rates, this study assessed the prognostic interactions resulting from simultaneously modifying two prehospital factors using a trained machine learning model. METHODS: We enrolled 8274 OHCA patients resuscitated by emergency medical services (EMS) in Nara prefecture, Japan, with a unified activity protocol between January 2010 and December 2018; patients younger than 18 and those with noncardiogenic cardiopulmonary arrest were excluded. Next, a three-layer neural network model was constructed to predict the cerebral performance category score of 1 or 2 at one month based on 24 features of prehospital EMS activity. Using this model, we evaluated the prognostic impact of continuously and simultaneously varying the transport time and the defibrillation or drug-administration time in the test data based on heatmaps. RESULTS: The average class sensitivity of the prognostic model was more than 0.86, with a full area under the receiver operating characteristics curve of 0.94 (95% confidence interval of 0.92–0.96). By adjusting the two time factors simultaneously, a nonlinear interaction was obtained between the two adjustments, instead of a linear prediction of the outcome. CONCLUSION: Modifications to the parameters using a machine-learning-based prognostic model indicated an interaction among the prognostic factors. These findings could be used to evaluate which factors should be prioritized to reduce time in the trained region of machine learning in order to improve EMS activities. Public Library of Science 2022-09-06 /pmc/articles/PMC9447882/ /pubmed/36067174 http://dx.doi.org/10.1371/journal.pone.0273787 Text en © 2022 Kawai et al 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 author and source are credited.
spellingShingle Research Article
Kawai, Yasuyuki
Okuda, Hirozumi
Kinoshita, Arisa
Yamamoto, Koji
Miyazaki, Keita
Takano, Keisuke
Asai, Hideki
Urisono, Yasuyuki
Fukushima, Hidetada
Visual assessment of interactions among resuscitation activity factors in out-of-hospital cardiopulmonary arrest using a machine learning model
title Visual assessment of interactions among resuscitation activity factors in out-of-hospital cardiopulmonary arrest using a machine learning model
title_full Visual assessment of interactions among resuscitation activity factors in out-of-hospital cardiopulmonary arrest using a machine learning model
title_fullStr Visual assessment of interactions among resuscitation activity factors in out-of-hospital cardiopulmonary arrest using a machine learning model
title_full_unstemmed Visual assessment of interactions among resuscitation activity factors in out-of-hospital cardiopulmonary arrest using a machine learning model
title_short Visual assessment of interactions among resuscitation activity factors in out-of-hospital cardiopulmonary arrest using a machine learning model
title_sort visual assessment of interactions among resuscitation activity factors in out-of-hospital cardiopulmonary arrest using a machine learning model
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9447882/
https://www.ncbi.nlm.nih.gov/pubmed/36067174
http://dx.doi.org/10.1371/journal.pone.0273787
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