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Development of Nonlaboratory-Based Risk Prediction Models for Cardiovascular Diseases Using Conventional and Machine Learning Approaches

Criticism of the implementation of existing risk prediction models (RPMs) for cardiovascular diseases (CVDs) in new populations motivates researchers to develop regional models. The predominant usage of laboratory features in these RPMs is also causing reproducibility issues in low–middle-income cou...

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Autores principales: Sajid, Mirza Rizwan, Almehmadi, Bader A., Sami, Waqas, Alzahrani, Mansour K., Muhammad, Noryanti, Chesneau, Christophe, Hanif, Asif, Khan, Arshad Ali, Shahbaz, Ahmad
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8657087/
https://www.ncbi.nlm.nih.gov/pubmed/34886312
http://dx.doi.org/10.3390/ijerph182312586
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author Sajid, Mirza Rizwan
Almehmadi, Bader A.
Sami, Waqas
Alzahrani, Mansour K.
Muhammad, Noryanti
Chesneau, Christophe
Hanif, Asif
Khan, Arshad Ali
Shahbaz, Ahmad
author_facet Sajid, Mirza Rizwan
Almehmadi, Bader A.
Sami, Waqas
Alzahrani, Mansour K.
Muhammad, Noryanti
Chesneau, Christophe
Hanif, Asif
Khan, Arshad Ali
Shahbaz, Ahmad
author_sort Sajid, Mirza Rizwan
collection PubMed
description Criticism of the implementation of existing risk prediction models (RPMs) for cardiovascular diseases (CVDs) in new populations motivates researchers to develop regional models. The predominant usage of laboratory features in these RPMs is also causing reproducibility issues in low–middle-income countries (LMICs). Further, conventional logistic regression analysis (LRA) does not consider non-linear associations and interaction terms in developing these RPMs, which might oversimplify the phenomenon. This study aims to develop alternative machine learning (ML)-based RPMs that may perform better at predicting CVD status using nonlaboratory features in comparison to conventional RPMs. The data was based on a case–control study conducted at the Punjab Institute of Cardiology, Pakistan. Data from 460 subjects, aged between 30 and 76 years, with (1:1) gender-based matching, was collected. We tested various ML models to identify the best model/models considering LRA as a baseline RPM. An artificial neural network and a linear support vector machine outperformed the conventional RPM in the majority of performance matrices. The predictive accuracies of the best performed ML-based RPMs were between 80.86 and 81.09% and were found to be higher than 79.56% for the baseline RPM. The discriminating capabilities of the ML-based RPMs were also comparable to baseline RPMs. Further, ML-based RPMs identified substantially different orders of features as compared to baseline RPM. This study concludes that nonlaboratory feature-based RPMs can be a good choice for early risk assessment of CVDs in LMICs. ML-based RPMs can identify better order of features as compared to the conventional approach, which subsequently provided models with improved prognostic capabilities.
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spelling pubmed-86570872021-12-10 Development of Nonlaboratory-Based Risk Prediction Models for Cardiovascular Diseases Using Conventional and Machine Learning Approaches Sajid, Mirza Rizwan Almehmadi, Bader A. Sami, Waqas Alzahrani, Mansour K. Muhammad, Noryanti Chesneau, Christophe Hanif, Asif Khan, Arshad Ali Shahbaz, Ahmad Int J Environ Res Public Health Article Criticism of the implementation of existing risk prediction models (RPMs) for cardiovascular diseases (CVDs) in new populations motivates researchers to develop regional models. The predominant usage of laboratory features in these RPMs is also causing reproducibility issues in low–middle-income countries (LMICs). Further, conventional logistic regression analysis (LRA) does not consider non-linear associations and interaction terms in developing these RPMs, which might oversimplify the phenomenon. This study aims to develop alternative machine learning (ML)-based RPMs that may perform better at predicting CVD status using nonlaboratory features in comparison to conventional RPMs. The data was based on a case–control study conducted at the Punjab Institute of Cardiology, Pakistan. Data from 460 subjects, aged between 30 and 76 years, with (1:1) gender-based matching, was collected. We tested various ML models to identify the best model/models considering LRA as a baseline RPM. An artificial neural network and a linear support vector machine outperformed the conventional RPM in the majority of performance matrices. The predictive accuracies of the best performed ML-based RPMs were between 80.86 and 81.09% and were found to be higher than 79.56% for the baseline RPM. The discriminating capabilities of the ML-based RPMs were also comparable to baseline RPMs. Further, ML-based RPMs identified substantially different orders of features as compared to baseline RPM. This study concludes that nonlaboratory feature-based RPMs can be a good choice for early risk assessment of CVDs in LMICs. ML-based RPMs can identify better order of features as compared to the conventional approach, which subsequently provided models with improved prognostic capabilities. MDPI 2021-11-29 /pmc/articles/PMC8657087/ /pubmed/34886312 http://dx.doi.org/10.3390/ijerph182312586 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Sajid, Mirza Rizwan
Almehmadi, Bader A.
Sami, Waqas
Alzahrani, Mansour K.
Muhammad, Noryanti
Chesneau, Christophe
Hanif, Asif
Khan, Arshad Ali
Shahbaz, Ahmad
Development of Nonlaboratory-Based Risk Prediction Models for Cardiovascular Diseases Using Conventional and Machine Learning Approaches
title Development of Nonlaboratory-Based Risk Prediction Models for Cardiovascular Diseases Using Conventional and Machine Learning Approaches
title_full Development of Nonlaboratory-Based Risk Prediction Models for Cardiovascular Diseases Using Conventional and Machine Learning Approaches
title_fullStr Development of Nonlaboratory-Based Risk Prediction Models for Cardiovascular Diseases Using Conventional and Machine Learning Approaches
title_full_unstemmed Development of Nonlaboratory-Based Risk Prediction Models for Cardiovascular Diseases Using Conventional and Machine Learning Approaches
title_short Development of Nonlaboratory-Based Risk Prediction Models for Cardiovascular Diseases Using Conventional and Machine Learning Approaches
title_sort development of nonlaboratory-based risk prediction models for cardiovascular diseases using conventional and machine learning approaches
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8657087/
https://www.ncbi.nlm.nih.gov/pubmed/34886312
http://dx.doi.org/10.3390/ijerph182312586
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