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Exploring Guidelines for Classification of Major Heart Failure Subtypes by Using Machine Learning

BACKGROUND: Heart failure (HF) manifests as at least two subtypes. The current paradigm distinguishes the two by using both the metric ejection fraction (EF) and a constraint for end-diastolic volume. About half of all HF patients exhibit preserved EF. In contrast, the classical type of HF shows a r...

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Autores principales: Alonso-Betanzos, Amparo, Bolón-Canedo, Verónica, Heyndrickx, Guy R, Kerkhof, Peter LM
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Libertas Academica 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4441365/
https://www.ncbi.nlm.nih.gov/pubmed/26052231
http://dx.doi.org/10.4137/CMC.S18746
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author Alonso-Betanzos, Amparo
Bolón-Canedo, Verónica
Heyndrickx, Guy R
Kerkhof, Peter LM
author_facet Alonso-Betanzos, Amparo
Bolón-Canedo, Verónica
Heyndrickx, Guy R
Kerkhof, Peter LM
author_sort Alonso-Betanzos, Amparo
collection PubMed
description BACKGROUND: Heart failure (HF) manifests as at least two subtypes. The current paradigm distinguishes the two by using both the metric ejection fraction (EF) and a constraint for end-diastolic volume. About half of all HF patients exhibit preserved EF. In contrast, the classical type of HF shows a reduced EF. Common practice sets the cut-off point often at or near EF = 50%, thus defining a linear divider. However, a rationale for this safe choice is lacking, while the assumption regarding applicability of strict linearity has not been justified. Additionally, some studies opt for eliminating patients from consideration for HF if 40 < EF < 50% (gray zone). Thus, there is a need for documented classification guidelines, solving gray zone ambiguity and formulating crisp delineation of transitions between phenotypes. METHODS: Machine learning (ML) models are applied to classify HF subtypes within the ventricular volume domain, rather than by the single use of EF. Various ML models, both unsupervised and supervised, are employed to establish a foundation for classification. Data regarding 48 HF patients are employed as training set for subsequent classification of Monte Carlo–generated surrogate HF patients (n = 403). Next, we map consequences when EF cut-off differs from 50% (as proposed for women) and analyze HF candidates not covered by current rules. RESULTS: The training set yields best results for the Support Vector Machine method (test error 4.06%), covers the gray zone, and other clinically relevant HF candidates. End-systolic volume (ESV) emerges as a logical discriminator rather than EF as in the prevailing paradigm. CONCLUSIONS: Selected ML models offer promise for classifying HF patients (including the gray zone), when driven by ventricular volume data. ML analysis indicates that ESV has a role in the development of guidelines to parse HF subtypes. The documented curvilinear relationship between EF and ESV suggests that the assumption concerning a linear EF divider may not be of general utility over the complete clinically relevant range.
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spelling pubmed-44413652015-06-05 Exploring Guidelines for Classification of Major Heart Failure Subtypes by Using Machine Learning Alonso-Betanzos, Amparo Bolón-Canedo, Verónica Heyndrickx, Guy R Kerkhof, Peter LM Clin Med Insights Cardiol Perspective BACKGROUND: Heart failure (HF) manifests as at least two subtypes. The current paradigm distinguishes the two by using both the metric ejection fraction (EF) and a constraint for end-diastolic volume. About half of all HF patients exhibit preserved EF. In contrast, the classical type of HF shows a reduced EF. Common practice sets the cut-off point often at or near EF = 50%, thus defining a linear divider. However, a rationale for this safe choice is lacking, while the assumption regarding applicability of strict linearity has not been justified. Additionally, some studies opt for eliminating patients from consideration for HF if 40 < EF < 50% (gray zone). Thus, there is a need for documented classification guidelines, solving gray zone ambiguity and formulating crisp delineation of transitions between phenotypes. METHODS: Machine learning (ML) models are applied to classify HF subtypes within the ventricular volume domain, rather than by the single use of EF. Various ML models, both unsupervised and supervised, are employed to establish a foundation for classification. Data regarding 48 HF patients are employed as training set for subsequent classification of Monte Carlo–generated surrogate HF patients (n = 403). Next, we map consequences when EF cut-off differs from 50% (as proposed for women) and analyze HF candidates not covered by current rules. RESULTS: The training set yields best results for the Support Vector Machine method (test error 4.06%), covers the gray zone, and other clinically relevant HF candidates. End-systolic volume (ESV) emerges as a logical discriminator rather than EF as in the prevailing paradigm. CONCLUSIONS: Selected ML models offer promise for classifying HF patients (including the gray zone), when driven by ventricular volume data. ML analysis indicates that ESV has a role in the development of guidelines to parse HF subtypes. The documented curvilinear relationship between EF and ESV suggests that the assumption concerning a linear EF divider may not be of general utility over the complete clinically relevant range. Libertas Academica 2015-05-21 /pmc/articles/PMC4441365/ /pubmed/26052231 http://dx.doi.org/10.4137/CMC.S18746 Text en © 2015 the author(s), publisher and licensee Libertas Academica Limited This is an open-access article distributed under the terms of the Creative Commons CC-BY-NC 3.0 License.
spellingShingle Perspective
Alonso-Betanzos, Amparo
Bolón-Canedo, Verónica
Heyndrickx, Guy R
Kerkhof, Peter LM
Exploring Guidelines for Classification of Major Heart Failure Subtypes by Using Machine Learning
title Exploring Guidelines for Classification of Major Heart Failure Subtypes by Using Machine Learning
title_full Exploring Guidelines for Classification of Major Heart Failure Subtypes by Using Machine Learning
title_fullStr Exploring Guidelines for Classification of Major Heart Failure Subtypes by Using Machine Learning
title_full_unstemmed Exploring Guidelines for Classification of Major Heart Failure Subtypes by Using Machine Learning
title_short Exploring Guidelines for Classification of Major Heart Failure Subtypes by Using Machine Learning
title_sort exploring guidelines for classification of major heart failure subtypes by using machine learning
topic Perspective
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4441365/
https://www.ncbi.nlm.nih.gov/pubmed/26052231
http://dx.doi.org/10.4137/CMC.S18746
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