Cargando…
Machine learning based on biomarker profiles identifies distinct subgroups of heart failure with preserved ejection fraction
AIMS: The lack of effective therapies for patients with heart failure with preserved ejection fraction (HFpEF) is often ascribed to the heterogeneity of patients with HFpEF. We aimed to identify distinct pathophysiologic clusters of HFpEF based on circulating biomarkers. METHODS AND RESULTS: We perf...
Autores principales: | , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
John Wiley & Sons, Ltd.
2021
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8360080/ https://www.ncbi.nlm.nih.gov/pubmed/33651430 http://dx.doi.org/10.1002/ejhf.2144 |
_version_ | 1783737671736098816 |
---|---|
author | Woolley, Rebecca J. Ceelen, Daan Ouwerkerk, Wouter Tromp, Jasper Figarska, Sylwia M. Anker, Stefan D. Dickstein, Kenneth Filippatos, Gerasimos Zannad, Faiez Marco, Metra Ng, Leong Samani, Nilesh van Veldhuisen, Dirk J Lang, Chim Lam, Carolyn S. Voors, Adriaan A. |
author_facet | Woolley, Rebecca J. Ceelen, Daan Ouwerkerk, Wouter Tromp, Jasper Figarska, Sylwia M. Anker, Stefan D. Dickstein, Kenneth Filippatos, Gerasimos Zannad, Faiez Marco, Metra Ng, Leong Samani, Nilesh van Veldhuisen, Dirk J Lang, Chim Lam, Carolyn S. Voors, Adriaan A. |
author_sort | Woolley, Rebecca J. |
collection | PubMed |
description | AIMS: The lack of effective therapies for patients with heart failure with preserved ejection fraction (HFpEF) is often ascribed to the heterogeneity of patients with HFpEF. We aimed to identify distinct pathophysiologic clusters of HFpEF based on circulating biomarkers. METHODS AND RESULTS: We performed an unsupervised cluster analysis using 363 biomarkers from 429 patients with HFpEF. Relative differences in expression profiles of the biomarkers between clusters were assessed and used for pathway over‐representation analyses. We identified four distinct patient subgroups based on their biomarker profiles: cluster 1 with the highest prevalence of diabetes mellitus and renal disease; cluster 2 with oldest age and frequent age‐related comorbidities; cluster 3 with youngest age, largest body size, least symptoms and lowest N‐terminal pro‐B‐type natriuretic peptide (NT‐proBNP) levels; and cluster 4 with highest prevalence of ischaemic aetiology, smoking and chronic lung disease, most symptoms, as well as highest NT‐proBNP and troponin levels. Over a median follow‐up of 21 months, the occurrence of death or heart failure hospitalization was highest in clusters 1 and 4 (62.1% and 62.8%, respectively) and lowest in cluster 3 (25.6%). Pathway over‐representation analyses revealed that the biomarker profile of patients in cluster 1 was associated with activation of inflammatory pathways while the biomarker profile of patients in cluster 4 was specifically associated with pathways implicated in cell proliferation regulation and cell survival. CONCLUSION: Unsupervised cluster analysis based on biomarker profiles identified mutually exclusive subgroups of patients with HFpEF with distinct biomarker profiles, clinical characteristics and outcomes, suggesting different underlying pathophysiological pathways. |
format | Online Article Text |
id | pubmed-8360080 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2021 |
publisher | John Wiley & Sons, Ltd. |
record_format | MEDLINE/PubMed |
spelling | pubmed-83600802021-08-17 Machine learning based on biomarker profiles identifies distinct subgroups of heart failure with preserved ejection fraction Woolley, Rebecca J. Ceelen, Daan Ouwerkerk, Wouter Tromp, Jasper Figarska, Sylwia M. Anker, Stefan D. Dickstein, Kenneth Filippatos, Gerasimos Zannad, Faiez Marco, Metra Ng, Leong Samani, Nilesh van Veldhuisen, Dirk J Lang, Chim Lam, Carolyn S. Voors, Adriaan A. Eur J Heart Fail HFpEF AND MACHINE LEARNING AIMS: The lack of effective therapies for patients with heart failure with preserved ejection fraction (HFpEF) is often ascribed to the heterogeneity of patients with HFpEF. We aimed to identify distinct pathophysiologic clusters of HFpEF based on circulating biomarkers. METHODS AND RESULTS: We performed an unsupervised cluster analysis using 363 biomarkers from 429 patients with HFpEF. Relative differences in expression profiles of the biomarkers between clusters were assessed and used for pathway over‐representation analyses. We identified four distinct patient subgroups based on their biomarker profiles: cluster 1 with the highest prevalence of diabetes mellitus and renal disease; cluster 2 with oldest age and frequent age‐related comorbidities; cluster 3 with youngest age, largest body size, least symptoms and lowest N‐terminal pro‐B‐type natriuretic peptide (NT‐proBNP) levels; and cluster 4 with highest prevalence of ischaemic aetiology, smoking and chronic lung disease, most symptoms, as well as highest NT‐proBNP and troponin levels. Over a median follow‐up of 21 months, the occurrence of death or heart failure hospitalization was highest in clusters 1 and 4 (62.1% and 62.8%, respectively) and lowest in cluster 3 (25.6%). Pathway over‐representation analyses revealed that the biomarker profile of patients in cluster 1 was associated with activation of inflammatory pathways while the biomarker profile of patients in cluster 4 was specifically associated with pathways implicated in cell proliferation regulation and cell survival. CONCLUSION: Unsupervised cluster analysis based on biomarker profiles identified mutually exclusive subgroups of patients with HFpEF with distinct biomarker profiles, clinical characteristics and outcomes, suggesting different underlying pathophysiological pathways. John Wiley & Sons, Ltd. 2021-03-17 2021-06 /pmc/articles/PMC8360080/ /pubmed/33651430 http://dx.doi.org/10.1002/ejhf.2144 Text en © 2021 The Authors. European Journal of Heart Failure published by John Wiley & Sons Ltd on behalf of European Society of Cardiology. https://creativecommons.org/licenses/by-nc/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc/4.0/ (https://creativecommons.org/licenses/by-nc/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited and is not used for commercial purposes. |
spellingShingle | HFpEF AND MACHINE LEARNING Woolley, Rebecca J. Ceelen, Daan Ouwerkerk, Wouter Tromp, Jasper Figarska, Sylwia M. Anker, Stefan D. Dickstein, Kenneth Filippatos, Gerasimos Zannad, Faiez Marco, Metra Ng, Leong Samani, Nilesh van Veldhuisen, Dirk J Lang, Chim Lam, Carolyn S. Voors, Adriaan A. Machine learning based on biomarker profiles identifies distinct subgroups of heart failure with preserved ejection fraction |
title | Machine learning based on biomarker profiles identifies distinct subgroups of heart failure with preserved ejection fraction |
title_full | Machine learning based on biomarker profiles identifies distinct subgroups of heart failure with preserved ejection fraction |
title_fullStr | Machine learning based on biomarker profiles identifies distinct subgroups of heart failure with preserved ejection fraction |
title_full_unstemmed | Machine learning based on biomarker profiles identifies distinct subgroups of heart failure with preserved ejection fraction |
title_short | Machine learning based on biomarker profiles identifies distinct subgroups of heart failure with preserved ejection fraction |
title_sort | machine learning based on biomarker profiles identifies distinct subgroups of heart failure with preserved ejection fraction |
topic | HFpEF AND MACHINE LEARNING |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8360080/ https://www.ncbi.nlm.nih.gov/pubmed/33651430 http://dx.doi.org/10.1002/ejhf.2144 |
work_keys_str_mv | AT woolleyrebeccaj machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT ceelendaan machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT ouwerkerkwouter machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT trompjasper machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT figarskasylwiam machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT ankerstefand machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT dicksteinkenneth machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT filippatosgerasimos machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT zannadfaiez machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT marcometra machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT ngleong machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT samaninilesh machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT vanveldhuisendirkj machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT langchim machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT lamcarolyns machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction AT voorsadriaana machinelearningbasedonbiomarkerprofilesidentifiesdistinctsubgroupsofheartfailurewithpreservedejectionfraction |