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Prediction of hyperkalemia in ESRD patients by identification of multiple leads and multiple features on ECG

BACKGROUND: Patients with end-stage renal disease (ESRD) especially those undergoing dialysis have a high prevalence of hyperkalemia, which must be detected and treated immediately. But the initial symptoms of hyperkalemia are insidious, and traditional laboratory serum potassium concentration testi...

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Autores principales: Xu, Daojun, Zhou, Bin, Zhang, Jiaqi, Li, Chenyu, Guan, Chen, Liu, Yuxuan, Li, Lin, Li, Haina, Cui, Li, Xu, Lingyu, Liu, Hang, Zhen, Li, Xu, Yan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Taylor & Francis 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10197982/
https://www.ncbi.nlm.nih.gov/pubmed/37199267
http://dx.doi.org/10.1080/0886022X.2023.2212800
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author Xu, Daojun
Zhou, Bin
Zhang, Jiaqi
Li, Chenyu
Guan, Chen
Liu, Yuxuan
Li, Lin
Li, Haina
Cui, Li
Xu, Lingyu
Liu, Hang
Zhen, Li
Xu, Yan
author_facet Xu, Daojun
Zhou, Bin
Zhang, Jiaqi
Li, Chenyu
Guan, Chen
Liu, Yuxuan
Li, Lin
Li, Haina
Cui, Li
Xu, Lingyu
Liu, Hang
Zhen, Li
Xu, Yan
author_sort Xu, Daojun
collection PubMed
description BACKGROUND: Patients with end-stage renal disease (ESRD) especially those undergoing dialysis have a high prevalence of hyperkalemia, which must be detected and treated immediately. But the initial symptoms of hyperkalemia are insidious, and traditional laboratory serum potassium concentration testing takes time. Therefore, rapid and real-time measurement of serum potassium is urgently needed. In this study, different machine learning methods were used to make rapid predictions of different degrees of hyperkalemia by analyzing the ECG. METHODS: A total of 1024 datasets of ECG and serum potassium concentrations were analyzed from December 2020 to December 2021. The data were scaled into training and test sets. Different machine learning models (LR, SVM, CNN, XGB, Adaboost) were built for dichotomous prediction of hyperkalemia by analyzing 48 features of chest leads V2-V5. The performance of the models was also evaluated and compared using sensitivity, specificity, accuracy, accuracy, F1 score and AUC. RESULTS: We constructed different machine models to predict hyperkalemia using LR and four other common machine-learning methods. The AUCs of the different models ranged from 0.740 (0.661, 0.810) to 0.931 (0.912,0.953) when different serum potassium concentrations were used as the diagnostic threshold for hyperkalemia, respectively. As the diagnostic threshold of hyperkalemia was raised, the sensitivity, specificity, accuracy and precision of the model decreased to various degrees. And AUC also performed less well than when predicting mild hyperkalemia. CONCLUSION: Noninvasive and rapid prediction of hyperkalemia can be achieved by analyzing specific waveforms on the ECG by machine learning methods. But overall, XGB had a higher AUC in mild hyperkalemia, but SVM performed better in predicting more severe hyperkalemia.
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spelling pubmed-101979822023-05-20 Prediction of hyperkalemia in ESRD patients by identification of multiple leads and multiple features on ECG Xu, Daojun Zhou, Bin Zhang, Jiaqi Li, Chenyu Guan, Chen Liu, Yuxuan Li, Lin Li, Haina Cui, Li Xu, Lingyu Liu, Hang Zhen, Li Xu, Yan Ren Fail Clinical Study BACKGROUND: Patients with end-stage renal disease (ESRD) especially those undergoing dialysis have a high prevalence of hyperkalemia, which must be detected and treated immediately. But the initial symptoms of hyperkalemia are insidious, and traditional laboratory serum potassium concentration testing takes time. Therefore, rapid and real-time measurement of serum potassium is urgently needed. In this study, different machine learning methods were used to make rapid predictions of different degrees of hyperkalemia by analyzing the ECG. METHODS: A total of 1024 datasets of ECG and serum potassium concentrations were analyzed from December 2020 to December 2021. The data were scaled into training and test sets. Different machine learning models (LR, SVM, CNN, XGB, Adaboost) were built for dichotomous prediction of hyperkalemia by analyzing 48 features of chest leads V2-V5. The performance of the models was also evaluated and compared using sensitivity, specificity, accuracy, accuracy, F1 score and AUC. RESULTS: We constructed different machine models to predict hyperkalemia using LR and four other common machine-learning methods. The AUCs of the different models ranged from 0.740 (0.661, 0.810) to 0.931 (0.912,0.953) when different serum potassium concentrations were used as the diagnostic threshold for hyperkalemia, respectively. As the diagnostic threshold of hyperkalemia was raised, the sensitivity, specificity, accuracy and precision of the model decreased to various degrees. And AUC also performed less well than when predicting mild hyperkalemia. CONCLUSION: Noninvasive and rapid prediction of hyperkalemia can be achieved by analyzing specific waveforms on the ECG by machine learning methods. But overall, XGB had a higher AUC in mild hyperkalemia, but SVM performed better in predicting more severe hyperkalemia. Taylor & Francis 2023-05-18 /pmc/articles/PMC10197982/ /pubmed/37199267 http://dx.doi.org/10.1080/0886022X.2023.2212800 Text en © 2023 The Author(s). Published by Informa UK Limited, trading as Taylor & Francis Group. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. The terms on which this article has been published allow the posting of the Accepted Manuscript in a repository by the author(s) or with their consent.
spellingShingle Clinical Study
Xu, Daojun
Zhou, Bin
Zhang, Jiaqi
Li, Chenyu
Guan, Chen
Liu, Yuxuan
Li, Lin
Li, Haina
Cui, Li
Xu, Lingyu
Liu, Hang
Zhen, Li
Xu, Yan
Prediction of hyperkalemia in ESRD patients by identification of multiple leads and multiple features on ECG
title Prediction of hyperkalemia in ESRD patients by identification of multiple leads and multiple features on ECG
title_full Prediction of hyperkalemia in ESRD patients by identification of multiple leads and multiple features on ECG
title_fullStr Prediction of hyperkalemia in ESRD patients by identification of multiple leads and multiple features on ECG
title_full_unstemmed Prediction of hyperkalemia in ESRD patients by identification of multiple leads and multiple features on ECG
title_short Prediction of hyperkalemia in ESRD patients by identification of multiple leads and multiple features on ECG
title_sort prediction of hyperkalemia in esrd patients by identification of multiple leads and multiple features on ecg
topic Clinical Study
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10197982/
https://www.ncbi.nlm.nih.gov/pubmed/37199267
http://dx.doi.org/10.1080/0886022X.2023.2212800
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