Cargando…

Machine learning model for predicting out-of-hospital cardiac arrests using meteorological and chronological data

OBJECTIVES: To evaluate a predictive model for robust estimation of daily out-of-hospital cardiac arrest (OHCA) incidence using a suite of machine learning (ML) approaches and high-resolution meteorological and chronological data. METHODS: In this population-based study, we combined an OHCA nationwi...

Descripción completa

Detalles Bibliográficos
Autores principales: Nakashima, Takahiro, Ogata, Soshiro, Noguchi, Teruo, Tahara, Yoshio, Onozuka, Daisuke, Kato, Satoshi, Yamagata, Yoshiki, Kojima, Sunao, Iwami, Taku, Sakamoto, Tetsuya, Nagao, Ken, Nonogi, Hiroshi, Yasuda, Satoshi, Iihara, Koji, Neumar, Robert, Nishimura, Kunihiro
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BMJ Publishing Group 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8223656/
https://www.ncbi.nlm.nih.gov/pubmed/34001636
http://dx.doi.org/10.1136/heartjnl-2020-318726
_version_ 1783711737171673088
author Nakashima, Takahiro
Ogata, Soshiro
Noguchi, Teruo
Tahara, Yoshio
Onozuka, Daisuke
Kato, Satoshi
Yamagata, Yoshiki
Kojima, Sunao
Iwami, Taku
Sakamoto, Tetsuya
Nagao, Ken
Nonogi, Hiroshi
Yasuda, Satoshi
Iihara, Koji
Neumar, Robert
Nishimura, Kunihiro
author_facet Nakashima, Takahiro
Ogata, Soshiro
Noguchi, Teruo
Tahara, Yoshio
Onozuka, Daisuke
Kato, Satoshi
Yamagata, Yoshiki
Kojima, Sunao
Iwami, Taku
Sakamoto, Tetsuya
Nagao, Ken
Nonogi, Hiroshi
Yasuda, Satoshi
Iihara, Koji
Neumar, Robert
Nishimura, Kunihiro
author_sort Nakashima, Takahiro
collection PubMed
description OBJECTIVES: To evaluate a predictive model for robust estimation of daily out-of-hospital cardiac arrest (OHCA) incidence using a suite of machine learning (ML) approaches and high-resolution meteorological and chronological data. METHODS: In this population-based study, we combined an OHCA nationwide registry and high-resolution meteorological and chronological datasets from Japan. We developed a model to predict daily OHCA incidence with a training dataset for 2005–2013 using the eXtreme Gradient Boosting algorithm. A dataset for 2014–2015 was used to test the predictive model. The main outcome was the accuracy of the predictive model for the number of daily OHCA events, based on mean absolute error (MAE) and mean absolute percentage error (MAPE). In general, a model with MAPE less than 10% is considered highly accurate. RESULTS: Among the 1 299 784 OHCA cases, 661 052 OHCA cases of cardiac origin (525 374 cases in the training dataset on which fourfold cross-validation was performed and 135 678 cases in the testing dataset) were included in the analysis. Compared with the ML models using meteorological or chronological variables alone, the ML model with combined meteorological and chronological variables had the highest predictive accuracy in the training (MAE 1.314 and MAPE 7.007%) and testing datasets (MAE 1.547 and MAPE 7.788%). Sunday, Monday, holiday, winter, low ambient temperature and large interday or intraday temperature difference were more strongly associated with OHCA incidence than other the meteorological and chronological variables. CONCLUSIONS: A ML predictive model using comprehensive daily meteorological and chronological data allows for highly precise estimates of OHCA incidence.
format Online
Article
Text
id pubmed-8223656
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher BMJ Publishing Group
record_format MEDLINE/PubMed
spelling pubmed-82236562021-07-09 Machine learning model for predicting out-of-hospital cardiac arrests using meteorological and chronological data Nakashima, Takahiro Ogata, Soshiro Noguchi, Teruo Tahara, Yoshio Onozuka, Daisuke Kato, Satoshi Yamagata, Yoshiki Kojima, Sunao Iwami, Taku Sakamoto, Tetsuya Nagao, Ken Nonogi, Hiroshi Yasuda, Satoshi Iihara, Koji Neumar, Robert Nishimura, Kunihiro Heart Healthcare Delivery, Economics and Global Health OBJECTIVES: To evaluate a predictive model for robust estimation of daily out-of-hospital cardiac arrest (OHCA) incidence using a suite of machine learning (ML) approaches and high-resolution meteorological and chronological data. METHODS: In this population-based study, we combined an OHCA nationwide registry and high-resolution meteorological and chronological datasets from Japan. We developed a model to predict daily OHCA incidence with a training dataset for 2005–2013 using the eXtreme Gradient Boosting algorithm. A dataset for 2014–2015 was used to test the predictive model. The main outcome was the accuracy of the predictive model for the number of daily OHCA events, based on mean absolute error (MAE) and mean absolute percentage error (MAPE). In general, a model with MAPE less than 10% is considered highly accurate. RESULTS: Among the 1 299 784 OHCA cases, 661 052 OHCA cases of cardiac origin (525 374 cases in the training dataset on which fourfold cross-validation was performed and 135 678 cases in the testing dataset) were included in the analysis. Compared with the ML models using meteorological or chronological variables alone, the ML model with combined meteorological and chronological variables had the highest predictive accuracy in the training (MAE 1.314 and MAPE 7.007%) and testing datasets (MAE 1.547 and MAPE 7.788%). Sunday, Monday, holiday, winter, low ambient temperature and large interday or intraday temperature difference were more strongly associated with OHCA incidence than other the meteorological and chronological variables. CONCLUSIONS: A ML predictive model using comprehensive daily meteorological and chronological data allows for highly precise estimates of OHCA incidence. BMJ Publishing Group 2021-07 2021-05-17 /pmc/articles/PMC8223656/ /pubmed/34001636 http://dx.doi.org/10.1136/heartjnl-2020-318726 Text en © Author(s) (or their employer(s)) 2021. Re-use permitted under CC BY. Published by BMJ. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed in accordance with the Creative Commons Attribution 4.0 Unported (CC BY 4.0) license, which permits others to copy, redistribute, remix, transform and build upon this work for any purpose, provided the original work is properly cited, a link to the licence is given, and indication of whether changes were made. See: https://creativecommons.org/licenses/by/4.0/.
spellingShingle Healthcare Delivery, Economics and Global Health
Nakashima, Takahiro
Ogata, Soshiro
Noguchi, Teruo
Tahara, Yoshio
Onozuka, Daisuke
Kato, Satoshi
Yamagata, Yoshiki
Kojima, Sunao
Iwami, Taku
Sakamoto, Tetsuya
Nagao, Ken
Nonogi, Hiroshi
Yasuda, Satoshi
Iihara, Koji
Neumar, Robert
Nishimura, Kunihiro
Machine learning model for predicting out-of-hospital cardiac arrests using meteorological and chronological data
title Machine learning model for predicting out-of-hospital cardiac arrests using meteorological and chronological data
title_full Machine learning model for predicting out-of-hospital cardiac arrests using meteorological and chronological data
title_fullStr Machine learning model for predicting out-of-hospital cardiac arrests using meteorological and chronological data
title_full_unstemmed Machine learning model for predicting out-of-hospital cardiac arrests using meteorological and chronological data
title_short Machine learning model for predicting out-of-hospital cardiac arrests using meteorological and chronological data
title_sort machine learning model for predicting out-of-hospital cardiac arrests using meteorological and chronological data
topic Healthcare Delivery, Economics and Global Health
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8223656/
https://www.ncbi.nlm.nih.gov/pubmed/34001636
http://dx.doi.org/10.1136/heartjnl-2020-318726
work_keys_str_mv AT nakashimatakahiro machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT ogatasoshiro machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT noguchiteruo machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT taharayoshio machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT onozukadaisuke machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT katosatoshi machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT yamagatayoshiki machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT kojimasunao machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT iwamitaku machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT sakamototetsuya machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT nagaoken machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT nonogihiroshi machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT yasudasatoshi machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT iiharakoji machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT neumarrobert machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata
AT nishimurakunihiro machinelearningmodelforpredictingoutofhospitalcardiacarrestsusingmeteorologicalandchronologicaldata