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Artificial intelligence for detecting electrolyte imbalance using electrocardiography

INTRODUCTION: The detection and monitoring of electrolyte imbalance is essential for appropriate management of many metabolic diseases; however, there is no tool that detects such imbalances reliably and noninvasively. In this study, we developed a deep learning model (DLM) using electrocardiography...

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Autores principales: Kwon, Joon‐myoung, Jung, Min‐Seung, Kim, Kyung‐Hee, Jo, Yong‐Yeon, Shin, Jae‐Hyun, Cho, Yong‐Hyeon, Lee, Yoon‐Ji, Ban, Jang‐Hyeon, Jeon, Ki‐Hyun, Lee, Soo Youn, Park, Jinsik, Oh, Byung‐Hee
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8164149/
https://www.ncbi.nlm.nih.gov/pubmed/33719135
http://dx.doi.org/10.1111/anec.12839
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author Kwon, Joon‐myoung
Jung, Min‐Seung
Kim, Kyung‐Hee
Jo, Yong‐Yeon
Shin, Jae‐Hyun
Cho, Yong‐Hyeon
Lee, Yoon‐Ji
Ban, Jang‐Hyeon
Jeon, Ki‐Hyun
Lee, Soo Youn
Park, Jinsik
Oh, Byung‐Hee
author_facet Kwon, Joon‐myoung
Jung, Min‐Seung
Kim, Kyung‐Hee
Jo, Yong‐Yeon
Shin, Jae‐Hyun
Cho, Yong‐Hyeon
Lee, Yoon‐Ji
Ban, Jang‐Hyeon
Jeon, Ki‐Hyun
Lee, Soo Youn
Park, Jinsik
Oh, Byung‐Hee
author_sort Kwon, Joon‐myoung
collection PubMed
description INTRODUCTION: The detection and monitoring of electrolyte imbalance is essential for appropriate management of many metabolic diseases; however, there is no tool that detects such imbalances reliably and noninvasively. In this study, we developed a deep learning model (DLM) using electrocardiography (ECG) for detecting electrolyte imbalance and validated its performance in a multicenter study. METHODS AND RESULTS: This retrospective cohort study included two hospitals: 92,140 patients who underwent a laboratory electrolyte examination and an ECG within 30 min were included in this study. A DLM was developed using 83,449 ECGs of 48,356 patients; the internal validation included 12,091 ECGs of 12,091 patients. We conducted an external validation with 31,693 ECGs of 31,693 patients from another hospital, and the result was electrolyte imbalance detection. During internal, the area under the receiving operating characteristic curve (AUC) of a DLM using a 12‐lead ECG for detecting hyperkalemia, hypokalemia, hypernatremia, hyponatremia, hypercalcemia, and hypocalcemia were 0.945, 0.866, 0.944, 0.885, 0.905, and 0.901, respectively. The values during external validation of the AUC of hyperkalemia, hypokalemia, hypernatremia, hyponatremia, hypercalcemia, and hypocalcemia were 0.873, 0.857, 0.839, 0.856, 0.831, and 0.813 respectively. The DLM helped to visualize the important ECG region for detecting each electrolyte imbalance, and it showed how the P wave, QRS complex, or T wave differs in importance in detecting each electrolyte imbalance. CONCLUSION: The proposed DLM demonstrated high performance in detecting electrolyte imbalance. These results suggest that a DLM can be used for detecting and monitoring electrolyte imbalance using ECG on a daily basis.
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spelling pubmed-81641492021-06-04 Artificial intelligence for detecting electrolyte imbalance using electrocardiography Kwon, Joon‐myoung Jung, Min‐Seung Kim, Kyung‐Hee Jo, Yong‐Yeon Shin, Jae‐Hyun Cho, Yong‐Hyeon Lee, Yoon‐Ji Ban, Jang‐Hyeon Jeon, Ki‐Hyun Lee, Soo Youn Park, Jinsik Oh, Byung‐Hee Ann Noninvasive Electrocardiol New Technologies INTRODUCTION: The detection and monitoring of electrolyte imbalance is essential for appropriate management of many metabolic diseases; however, there is no tool that detects such imbalances reliably and noninvasively. In this study, we developed a deep learning model (DLM) using electrocardiography (ECG) for detecting electrolyte imbalance and validated its performance in a multicenter study. METHODS AND RESULTS: This retrospective cohort study included two hospitals: 92,140 patients who underwent a laboratory electrolyte examination and an ECG within 30 min were included in this study. A DLM was developed using 83,449 ECGs of 48,356 patients; the internal validation included 12,091 ECGs of 12,091 patients. We conducted an external validation with 31,693 ECGs of 31,693 patients from another hospital, and the result was electrolyte imbalance detection. During internal, the area under the receiving operating characteristic curve (AUC) of a DLM using a 12‐lead ECG for detecting hyperkalemia, hypokalemia, hypernatremia, hyponatremia, hypercalcemia, and hypocalcemia were 0.945, 0.866, 0.944, 0.885, 0.905, and 0.901, respectively. The values during external validation of the AUC of hyperkalemia, hypokalemia, hypernatremia, hyponatremia, hypercalcemia, and hypocalcemia were 0.873, 0.857, 0.839, 0.856, 0.831, and 0.813 respectively. The DLM helped to visualize the important ECG region for detecting each electrolyte imbalance, and it showed how the P wave, QRS complex, or T wave differs in importance in detecting each electrolyte imbalance. CONCLUSION: The proposed DLM demonstrated high performance in detecting electrolyte imbalance. These results suggest that a DLM can be used for detecting and monitoring electrolyte imbalance using ECG on a daily basis. John Wiley and Sons Inc. 2021-03-15 /pmc/articles/PMC8164149/ /pubmed/33719135 http://dx.doi.org/10.1111/anec.12839 Text en © 2020 The Authors. Annals of Noninvasive Electrocardiology published by Wiley Periodicals LLC https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle New Technologies
Kwon, Joon‐myoung
Jung, Min‐Seung
Kim, Kyung‐Hee
Jo, Yong‐Yeon
Shin, Jae‐Hyun
Cho, Yong‐Hyeon
Lee, Yoon‐Ji
Ban, Jang‐Hyeon
Jeon, Ki‐Hyun
Lee, Soo Youn
Park, Jinsik
Oh, Byung‐Hee
Artificial intelligence for detecting electrolyte imbalance using electrocardiography
title Artificial intelligence for detecting electrolyte imbalance using electrocardiography
title_full Artificial intelligence for detecting electrolyte imbalance using electrocardiography
title_fullStr Artificial intelligence for detecting electrolyte imbalance using electrocardiography
title_full_unstemmed Artificial intelligence for detecting electrolyte imbalance using electrocardiography
title_short Artificial intelligence for detecting electrolyte imbalance using electrocardiography
title_sort artificial intelligence for detecting electrolyte imbalance using electrocardiography
topic New Technologies
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8164149/
https://www.ncbi.nlm.nih.gov/pubmed/33719135
http://dx.doi.org/10.1111/anec.12839
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