Cargando…
Prediction of white-coat hypertension and white-coat uncontrolled hypertension using machine learning algorithm
AIMS: The detection of white-coat hypertension/white-coat uncontrolled hypertension (WCH/WUCH) with out-of-office blood pressure (BP) monitoring is time- and resource-consuming. We aim to develop a machine learning (ML)-derived prediction model based on the characteristics of patients from a single...
Autores principales: | , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Oxford University Press
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9779877/ https://www.ncbi.nlm.nih.gov/pubmed/36710891 http://dx.doi.org/10.1093/ehjdh/ztac066 |
_version_ | 1784856717787398144 |
---|---|
author | Shih, Ling-Chieh Wang, Yu-Ching Hung, Ming-Hui Cheng, Han Shiao, Yu-Chieh Tseng, Yu-Hsuan Huang, Chin-Chou Lin, Shing-Jong Chen, Jaw-Wen |
author_facet | Shih, Ling-Chieh Wang, Yu-Ching Hung, Ming-Hui Cheng, Han Shiao, Yu-Chieh Tseng, Yu-Hsuan Huang, Chin-Chou Lin, Shing-Jong Chen, Jaw-Wen |
author_sort | Shih, Ling-Chieh |
collection | PubMed |
description | AIMS: The detection of white-coat hypertension/white-coat uncontrolled hypertension (WCH/WUCH) with out-of-office blood pressure (BP) monitoring is time- and resource-consuming. We aim to develop a machine learning (ML)-derived prediction model based on the characteristics of patients from a single outpatient visit. METHODS AND RESULTS: Data from two cohorts in Taiwan were used. Cohort one (970 patients) was used for development and internal validation, and cohort two (464 patients) was used for external validation. WCH/WUCH was defined as an office BP of ≥140/90 mmHg and daytime ambulatory BP of <135/85 mmHg in treatment-naïve or treated individuals. Logistic regression, random forest (RF), eXtreme Gradient Boosting, and artificial neural network models were trained using 26 patient parameters. We used SHapley Additive exPlanations values to provide explanations for the risk factors. All models achieved great area under the receiver operating characteristic curve (AUROC), specificity, and negative predictive value in both validations (AUROC = 0.754–0.891; specificity = 0.682–0.910; negative predictive value = 0.831–0.968). The RF model was the best performing (AUROC = 0.884; sensitivity = 0.619; specificity = 0.887; negative predictive value = 0.872; accuracy = 0.819). The five most influential features of the RF model were office diastolic BP, office systolic BP, current smoker, estimated glomerular filtration rate, and fasting glucose level. CONCLUSION: Our prediction models achieved good performance, underlining the feasibility of applying ML models to outpatient populations for the diagnosis of WCH and WUCH. Further validation with other prospective data sets should be considered in the future. |
format | Online Article Text |
id | pubmed-9779877 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | Oxford University Press |
record_format | MEDLINE/PubMed |
spelling | pubmed-97798772023-01-27 Prediction of white-coat hypertension and white-coat uncontrolled hypertension using machine learning algorithm Shih, Ling-Chieh Wang, Yu-Ching Hung, Ming-Hui Cheng, Han Shiao, Yu-Chieh Tseng, Yu-Hsuan Huang, Chin-Chou Lin, Shing-Jong Chen, Jaw-Wen Eur Heart J Digit Health Original Article AIMS: The detection of white-coat hypertension/white-coat uncontrolled hypertension (WCH/WUCH) with out-of-office blood pressure (BP) monitoring is time- and resource-consuming. We aim to develop a machine learning (ML)-derived prediction model based on the characteristics of patients from a single outpatient visit. METHODS AND RESULTS: Data from two cohorts in Taiwan were used. Cohort one (970 patients) was used for development and internal validation, and cohort two (464 patients) was used for external validation. WCH/WUCH was defined as an office BP of ≥140/90 mmHg and daytime ambulatory BP of <135/85 mmHg in treatment-naïve or treated individuals. Logistic regression, random forest (RF), eXtreme Gradient Boosting, and artificial neural network models were trained using 26 patient parameters. We used SHapley Additive exPlanations values to provide explanations for the risk factors. All models achieved great area under the receiver operating characteristic curve (AUROC), specificity, and negative predictive value in both validations (AUROC = 0.754–0.891; specificity = 0.682–0.910; negative predictive value = 0.831–0.968). The RF model was the best performing (AUROC = 0.884; sensitivity = 0.619; specificity = 0.887; negative predictive value = 0.872; accuracy = 0.819). The five most influential features of the RF model were office diastolic BP, office systolic BP, current smoker, estimated glomerular filtration rate, and fasting glucose level. CONCLUSION: Our prediction models achieved good performance, underlining the feasibility of applying ML models to outpatient populations for the diagnosis of WCH and WUCH. Further validation with other prospective data sets should be considered in the future. Oxford University Press 2022-11-08 /pmc/articles/PMC9779877/ /pubmed/36710891 http://dx.doi.org/10.1093/ehjdh/ztac066 Text en © The Author(s) 2022. Published by Oxford University Press on behalf of the European Society of Cardiology. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com |
spellingShingle | Original Article Shih, Ling-Chieh Wang, Yu-Ching Hung, Ming-Hui Cheng, Han Shiao, Yu-Chieh Tseng, Yu-Hsuan Huang, Chin-Chou Lin, Shing-Jong Chen, Jaw-Wen Prediction of white-coat hypertension and white-coat uncontrolled hypertension using machine learning algorithm |
title | Prediction of white-coat hypertension and white-coat uncontrolled hypertension using machine learning algorithm |
title_full | Prediction of white-coat hypertension and white-coat uncontrolled hypertension using machine learning algorithm |
title_fullStr | Prediction of white-coat hypertension and white-coat uncontrolled hypertension using machine learning algorithm |
title_full_unstemmed | Prediction of white-coat hypertension and white-coat uncontrolled hypertension using machine learning algorithm |
title_short | Prediction of white-coat hypertension and white-coat uncontrolled hypertension using machine learning algorithm |
title_sort | prediction of white-coat hypertension and white-coat uncontrolled hypertension using machine learning algorithm |
topic | Original Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9779877/ https://www.ncbi.nlm.nih.gov/pubmed/36710891 http://dx.doi.org/10.1093/ehjdh/ztac066 |
work_keys_str_mv | AT shihlingchieh predictionofwhitecoathypertensionandwhitecoatuncontrolledhypertensionusingmachinelearningalgorithm AT wangyuching predictionofwhitecoathypertensionandwhitecoatuncontrolledhypertensionusingmachinelearningalgorithm AT hungminghui predictionofwhitecoathypertensionandwhitecoatuncontrolledhypertensionusingmachinelearningalgorithm AT chenghan predictionofwhitecoathypertensionandwhitecoatuncontrolledhypertensionusingmachinelearningalgorithm AT shiaoyuchieh predictionofwhitecoathypertensionandwhitecoatuncontrolledhypertensionusingmachinelearningalgorithm AT tsengyuhsuan predictionofwhitecoathypertensionandwhitecoatuncontrolledhypertensionusingmachinelearningalgorithm AT huangchinchou predictionofwhitecoathypertensionandwhitecoatuncontrolledhypertensionusingmachinelearningalgorithm AT linshingjong predictionofwhitecoathypertensionandwhitecoatuncontrolledhypertensionusingmachinelearningalgorithm AT chenjawwen predictionofwhitecoathypertensionandwhitecoatuncontrolledhypertensionusingmachinelearningalgorithm |