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Improved cardiovascular risk prediction in patients with end-stage renal disease on hemodialysis using machine learning modeling and circulating microribonucleic acids

Rationale: To test whether novel biomarkers, such as microribonucleic acids (miRNAs), and nonstandard predictive models, such as decision tree learning, provide useful information for medical decision-making in patients on hemodialysis (HD). Methods: Samples from patients with end-stage renal diseas...

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Autores principales: de Gonzalo-Calvo, David, Martínez-Camblor, Pablo, Bär, Christian, Duarte, Kevin, Girerd, Nicolas, Fellström, Bengt, Schmieder, Roland E., Jardine, Alan G., Massy, Ziad A., Holdaas, Hallvard, Rossignol, Patrick, Zannad, Faiez, Thum, Thomas
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Ivyspring International Publisher 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7392028/
https://www.ncbi.nlm.nih.gov/pubmed/32754270
http://dx.doi.org/10.7150/thno.46123
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author de Gonzalo-Calvo, David
Martínez-Camblor, Pablo
Bär, Christian
Duarte, Kevin
Girerd, Nicolas
Fellström, Bengt
Schmieder, Roland E.
Jardine, Alan G.
Massy, Ziad A.
Holdaas, Hallvard
Rossignol, Patrick
Zannad, Faiez
Thum, Thomas
author_facet de Gonzalo-Calvo, David
Martínez-Camblor, Pablo
Bär, Christian
Duarte, Kevin
Girerd, Nicolas
Fellström, Bengt
Schmieder, Roland E.
Jardine, Alan G.
Massy, Ziad A.
Holdaas, Hallvard
Rossignol, Patrick
Zannad, Faiez
Thum, Thomas
author_sort de Gonzalo-Calvo, David
collection PubMed
description Rationale: To test whether novel biomarkers, such as microribonucleic acids (miRNAs), and nonstandard predictive models, such as decision tree learning, provide useful information for medical decision-making in patients on hemodialysis (HD). Methods: Samples from patients with end-stage renal disease receiving HD included in the AURORA trial were investigated (n=810). The study included two independent phases: phase I (matched cases and controls, n=410) and phase II (unmatched cases and controls, n=400). The composite endpoint was cardiovascular death, nonfatal myocardial infarction or nonfatal stroke. miRNA quantification was performed using miRNA sequencing and RT-qPCR. The CART algorithm was used to construct regression tree models. A bagging-based procedure was used for validation. Results: In phase I, miRNA sequencing in a subset of samples (n=20) revealed miR-632 as a candidate (fold change=2.9). miR-632 was associated with the endpoint, even after adjusting for confounding factors (HR from 1.43 to 1.53). These findings were not reproduced in phase II. Regression tree models identified eight patient subgroups with specific risk patterns. miR-186-5p and miR-632 entered the tree by redefining two risk groups: patients older than 64 years and with hsCRP<0.827 mg/L and diabetic patients younger than 64 years. miRNAs improved the discrimination accuracy at the beginning of the follow-up (24 months) compared to the models without miRNAs (integrated AUC [iAUC]=0.71). Conclusions: The circulating miRNA profile complements conventional risk factors to identify specific cardiovascular risk patterns among patients receiving maintenance HD.
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spelling pubmed-73920282020-08-03 Improved cardiovascular risk prediction in patients with end-stage renal disease on hemodialysis using machine learning modeling and circulating microribonucleic acids de Gonzalo-Calvo, David Martínez-Camblor, Pablo Bär, Christian Duarte, Kevin Girerd, Nicolas Fellström, Bengt Schmieder, Roland E. Jardine, Alan G. Massy, Ziad A. Holdaas, Hallvard Rossignol, Patrick Zannad, Faiez Thum, Thomas Theranostics Research Paper Rationale: To test whether novel biomarkers, such as microribonucleic acids (miRNAs), and nonstandard predictive models, such as decision tree learning, provide useful information for medical decision-making in patients on hemodialysis (HD). Methods: Samples from patients with end-stage renal disease receiving HD included in the AURORA trial were investigated (n=810). The study included two independent phases: phase I (matched cases and controls, n=410) and phase II (unmatched cases and controls, n=400). The composite endpoint was cardiovascular death, nonfatal myocardial infarction or nonfatal stroke. miRNA quantification was performed using miRNA sequencing and RT-qPCR. The CART algorithm was used to construct regression tree models. A bagging-based procedure was used for validation. Results: In phase I, miRNA sequencing in a subset of samples (n=20) revealed miR-632 as a candidate (fold change=2.9). miR-632 was associated with the endpoint, even after adjusting for confounding factors (HR from 1.43 to 1.53). These findings were not reproduced in phase II. Regression tree models identified eight patient subgroups with specific risk patterns. miR-186-5p and miR-632 entered the tree by redefining two risk groups: patients older than 64 years and with hsCRP<0.827 mg/L and diabetic patients younger than 64 years. miRNAs improved the discrimination accuracy at the beginning of the follow-up (24 months) compared to the models without miRNAs (integrated AUC [iAUC]=0.71). Conclusions: The circulating miRNA profile complements conventional risk factors to identify specific cardiovascular risk patterns among patients receiving maintenance HD. Ivyspring International Publisher 2020-07-09 /pmc/articles/PMC7392028/ /pubmed/32754270 http://dx.doi.org/10.7150/thno.46123 Text en © The author(s) This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/). See http://ivyspring.com/terms for full terms and conditions.
spellingShingle Research Paper
de Gonzalo-Calvo, David
Martínez-Camblor, Pablo
Bär, Christian
Duarte, Kevin
Girerd, Nicolas
Fellström, Bengt
Schmieder, Roland E.
Jardine, Alan G.
Massy, Ziad A.
Holdaas, Hallvard
Rossignol, Patrick
Zannad, Faiez
Thum, Thomas
Improved cardiovascular risk prediction in patients with end-stage renal disease on hemodialysis using machine learning modeling and circulating microribonucleic acids
title Improved cardiovascular risk prediction in patients with end-stage renal disease on hemodialysis using machine learning modeling and circulating microribonucleic acids
title_full Improved cardiovascular risk prediction in patients with end-stage renal disease on hemodialysis using machine learning modeling and circulating microribonucleic acids
title_fullStr Improved cardiovascular risk prediction in patients with end-stage renal disease on hemodialysis using machine learning modeling and circulating microribonucleic acids
title_full_unstemmed Improved cardiovascular risk prediction in patients with end-stage renal disease on hemodialysis using machine learning modeling and circulating microribonucleic acids
title_short Improved cardiovascular risk prediction in patients with end-stage renal disease on hemodialysis using machine learning modeling and circulating microribonucleic acids
title_sort improved cardiovascular risk prediction in patients with end-stage renal disease on hemodialysis using machine learning modeling and circulating microribonucleic acids
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7392028/
https://www.ncbi.nlm.nih.gov/pubmed/32754270
http://dx.doi.org/10.7150/thno.46123
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