Determining hypertensive patients’ beliefs towards medication and associations with medication adherence using machine learning methods
Background This study assesses the feasibility of using machine learning methods such as Random Forests (RF), Artificial Neural Networks (ANN), Support Vector Regression (SVR) and Self-Organizing Feature Maps (SOM) to identify and determine factors associated with hypertensive patients’ adherence le...
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doaj-21b6d7be7e8e4e258a17536d02efa98c2020-11-25T02:31:43ZengPeerJ Inc.PeerJ2167-83592020-03-018e828610.7717/peerj.8286Determining hypertensive patients’ beliefs towards medication and associations with medication adherence using machine learning methodsFirdaus Aziz0Sorayya Malek1Adliah Mhd Ali2Mee Sieng Wong3Mogeeb Mosleh4Pozi Milow5Bioinformatics Science Programme, Institute of Biological Sciences, University of Malaya, Kuala Lumpur, MalaysiaBioinformatics Science Programme, Institute of Biological Sciences, University of Malaya, Kuala Lumpur, MalaysiaQuality Use of Medicines Research Group, Faculty of Pharmacy, Universiti Kebangsaan Malaysia, Kuala Lumpur, MalaysiaQuality Use of Medicines Research Group, Faculty of Pharmacy, Universiti Kebangsaan Malaysia, Kuala Lumpur, MalaysiaSoftware Engineering Department, Faculty of Engineering & Information Technology, Taiz University, Taiz, YemenEnvironmental Management Programme, Institute of Biological Sciences, University of Malaya, Kuala Lumpur, MalaysiaBackground This study assesses the feasibility of using machine learning methods such as Random Forests (RF), Artificial Neural Networks (ANN), Support Vector Regression (SVR) and Self-Organizing Feature Maps (SOM) to identify and determine factors associated with hypertensive patients’ adherence levels. Hypertension is the medical term for systolic and diastolic blood pressure higher than 140/90 mmHg. A conventional medication adherence scale was used to identify patients’ adherence to their prescribed medication. Using machine learning applications to predict precise numeric adherence scores in hypertensive patients has not yet been reported in the literature. Methods Data from 160 hypertensive patients from a tertiary hospital in Kuala Lumpur, Malaysia, were used in this study. Variables were ranked based on their significance to adherence levels using the RF variable importance method. The backward elimination method was then performed using RF to obtain the variables significantly associated with the patients’ adherence levels. RF, SVR and ANN models were developed to predict adherence using the identified significant variables. Visualizations of the relationships between hypertensive patients’ adherence levels and variables were generated using SOM. Result Machine learning models constructed using the selected variables reported RMSE values of 1.42 for ANN, 1.53 for RF, and 1.55 for SVR. The accuracy of the dichotomised scores, calculated based on a percentage of correctly identified adherence values, was used as an additional model performance measure, resulting in accuracies of 65% (ANN), 78% (RF) and 79% (SVR), respectively. The Wilcoxon signed ranked test reported that there was no significant difference between the predictions of the machine learning models and the actual scores. The significant variables identified from the RF variable importance method were educational level, marital status, General Overuse, monthly income, and Specific Concern. Conclusion This study suggests an effective alternative to conventional methods in identifying the key variables to understand hypertensive patients’ adherence levels. This can be used as a tool to educate patients on the importance of medication in managing hypertension.https://peerj.com/articles/8286.pdfRandom forestArtificial neural networkSelf-organizing Map (SOM)HypertensionSupport Vector RegressionVariable importance |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Firdaus Aziz Sorayya Malek Adliah Mhd Ali Mee Sieng Wong Mogeeb Mosleh Pozi Milow |
spellingShingle |
Firdaus Aziz Sorayya Malek Adliah Mhd Ali Mee Sieng Wong Mogeeb Mosleh Pozi Milow Determining hypertensive patients’ beliefs towards medication and associations with medication adherence using machine learning methods PeerJ Random forest Artificial neural network Self-organizing Map (SOM) Hypertension Support Vector Regression Variable importance |
author_facet |
Firdaus Aziz Sorayya Malek Adliah Mhd Ali Mee Sieng Wong Mogeeb Mosleh Pozi Milow |
author_sort |
Firdaus Aziz |
title |
Determining hypertensive patients’ beliefs towards medication and associations with medication adherence using machine learning methods |
title_short |
Determining hypertensive patients’ beliefs towards medication and associations with medication adherence using machine learning methods |
title_full |
Determining hypertensive patients’ beliefs towards medication and associations with medication adherence using machine learning methods |
title_fullStr |
Determining hypertensive patients’ beliefs towards medication and associations with medication adherence using machine learning methods |
title_full_unstemmed |
Determining hypertensive patients’ beliefs towards medication and associations with medication adherence using machine learning methods |
title_sort |
determining hypertensive patients’ beliefs towards medication and associations with medication adherence using machine learning methods |
publisher |
PeerJ Inc. |
series |
PeerJ |
issn |
2167-8359 |
publishDate |
2020-03-01 |
description |
Background This study assesses the feasibility of using machine learning methods such as Random Forests (RF), Artificial Neural Networks (ANN), Support Vector Regression (SVR) and Self-Organizing Feature Maps (SOM) to identify and determine factors associated with hypertensive patients’ adherence levels. Hypertension is the medical term for systolic and diastolic blood pressure higher than 140/90 mmHg. A conventional medication adherence scale was used to identify patients’ adherence to their prescribed medication. Using machine learning applications to predict precise numeric adherence scores in hypertensive patients has not yet been reported in the literature. Methods Data from 160 hypertensive patients from a tertiary hospital in Kuala Lumpur, Malaysia, were used in this study. Variables were ranked based on their significance to adherence levels using the RF variable importance method. The backward elimination method was then performed using RF to obtain the variables significantly associated with the patients’ adherence levels. RF, SVR and ANN models were developed to predict adherence using the identified significant variables. Visualizations of the relationships between hypertensive patients’ adherence levels and variables were generated using SOM. Result Machine learning models constructed using the selected variables reported RMSE values of 1.42 for ANN, 1.53 for RF, and 1.55 for SVR. The accuracy of the dichotomised scores, calculated based on a percentage of correctly identified adherence values, was used as an additional model performance measure, resulting in accuracies of 65% (ANN), 78% (RF) and 79% (SVR), respectively. The Wilcoxon signed ranked test reported that there was no significant difference between the predictions of the machine learning models and the actual scores. The significant variables identified from the RF variable importance method were educational level, marital status, General Overuse, monthly income, and Specific Concern. Conclusion This study suggests an effective alternative to conventional methods in identifying the key variables to understand hypertensive patients’ adherence levels. This can be used as a tool to educate patients on the importance of medication in managing hypertension. |
topic |
Random forest Artificial neural network Self-organizing Map (SOM) Hypertension Support Vector Regression Variable importance |
url |
https://peerj.com/articles/8286.pdf |
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