Cargando…

A diagnostic miRNA signature for pulmonary arterial hypertension using a consensus machine learning approach

BACKGROUND: Pulmonary arterial hypertension (PAH) is a rare but life shortening disease, the diagnosis of which is often delayed, and requires an invasive right heart catheterisation. Identifying diagnostic biomarkers may improve screening to identify patients at risk of PAH earlier and provide new...

Descripción completa

Detalles Bibliográficos
Autores principales: Errington, Niamh, Iremonger, James, Pickworth, Josephine A., Kariotis, Sokratis, Rhodes, Christopher J., Rothman, Alexander MK, Condliffe, Robin, Elliot, Charles A., Kiely, David G., Howard, Luke S., Wharton, John, Thompson, A. A. Roger, Morrell, Nicholas W, Wilkins, Martin R., Wang, Dennis, Lawrie, Allan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8243351/
https://www.ncbi.nlm.nih.gov/pubmed/34186489
http://dx.doi.org/10.1016/j.ebiom.2021.103444
_version_ 1783715743454461952
author Errington, Niamh
Iremonger, James
Pickworth, Josephine A.
Kariotis, Sokratis
Rhodes, Christopher J.
Rothman, Alexander MK
Condliffe, Robin
Elliot, Charles A.
Kiely, David G.
Howard, Luke S.
Wharton, John
Thompson, A. A. Roger
Morrell, Nicholas W
Wilkins, Martin R.
Wang, Dennis
Lawrie, Allan
author_facet Errington, Niamh
Iremonger, James
Pickworth, Josephine A.
Kariotis, Sokratis
Rhodes, Christopher J.
Rothman, Alexander MK
Condliffe, Robin
Elliot, Charles A.
Kiely, David G.
Howard, Luke S.
Wharton, John
Thompson, A. A. Roger
Morrell, Nicholas W
Wilkins, Martin R.
Wang, Dennis
Lawrie, Allan
author_sort Errington, Niamh
collection PubMed
description BACKGROUND: Pulmonary arterial hypertension (PAH) is a rare but life shortening disease, the diagnosis of which is often delayed, and requires an invasive right heart catheterisation. Identifying diagnostic biomarkers may improve screening to identify patients at risk of PAH earlier and provide new insights into disease pathogenesis. MicroRNAs are small, non-coding molecules of RNA, previously shown to be dysregulated in PAH, and contribute to the disease process in animal models. METHODS: Plasma from 64 treatment naïve patients with PAH and 43 disease and healthy controls were profiled for microRNA expression by Agilent Microarray. Following quality control and normalisation, the cohort was split into training and validation sets. Four separate machine learning feature selection methods were applied to the training set, along with a univariate analysis. FINDINGS: 20 microRNAs were identified as putative biomarkers by consensus feature selection from all four methods. Two microRNAs (miR-636 and miR-187-5p) were selected by all methods and used to predict PAH diagnosis with high accuracy. Integrating microRNA expression profiles with their associated target mRNA revealed 61 differentially expressed genes verified in two independent, publicly available PAH lung tissue data sets. Two of seven potentially novel gene targets were validated as differentially expressed in vitro in human pulmonary artery smooth muscle cells. INTERPRETATION: This consensus of multiple machine learning approaches identified two miRNAs that were able to distinguish PAH from both disease and healthy controls. These circulating miRNA, and their target genes may provide insight into PAH pathogenesis and reveal novel regulators of disease and putative drug targets.
format Online
Article
Text
id pubmed-8243351
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-82433512021-07-02 A diagnostic miRNA signature for pulmonary arterial hypertension using a consensus machine learning approach Errington, Niamh Iremonger, James Pickworth, Josephine A. Kariotis, Sokratis Rhodes, Christopher J. Rothman, Alexander MK Condliffe, Robin Elliot, Charles A. Kiely, David G. Howard, Luke S. Wharton, John Thompson, A. A. Roger Morrell, Nicholas W Wilkins, Martin R. Wang, Dennis Lawrie, Allan EBioMedicine Research Paper BACKGROUND: Pulmonary arterial hypertension (PAH) is a rare but life shortening disease, the diagnosis of which is often delayed, and requires an invasive right heart catheterisation. Identifying diagnostic biomarkers may improve screening to identify patients at risk of PAH earlier and provide new insights into disease pathogenesis. MicroRNAs are small, non-coding molecules of RNA, previously shown to be dysregulated in PAH, and contribute to the disease process in animal models. METHODS: Plasma from 64 treatment naïve patients with PAH and 43 disease and healthy controls were profiled for microRNA expression by Agilent Microarray. Following quality control and normalisation, the cohort was split into training and validation sets. Four separate machine learning feature selection methods were applied to the training set, along with a univariate analysis. FINDINGS: 20 microRNAs were identified as putative biomarkers by consensus feature selection from all four methods. Two microRNAs (miR-636 and miR-187-5p) were selected by all methods and used to predict PAH diagnosis with high accuracy. Integrating microRNA expression profiles with their associated target mRNA revealed 61 differentially expressed genes verified in two independent, publicly available PAH lung tissue data sets. Two of seven potentially novel gene targets were validated as differentially expressed in vitro in human pulmonary artery smooth muscle cells. INTERPRETATION: This consensus of multiple machine learning approaches identified two miRNAs that were able to distinguish PAH from both disease and healthy controls. These circulating miRNA, and their target genes may provide insight into PAH pathogenesis and reveal novel regulators of disease and putative drug targets. Elsevier 2021-06-26 /pmc/articles/PMC8243351/ /pubmed/34186489 http://dx.doi.org/10.1016/j.ebiom.2021.103444 Text en © 2021 The University of Sheffield https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Research Paper
Errington, Niamh
Iremonger, James
Pickworth, Josephine A.
Kariotis, Sokratis
Rhodes, Christopher J.
Rothman, Alexander MK
Condliffe, Robin
Elliot, Charles A.
Kiely, David G.
Howard, Luke S.
Wharton, John
Thompson, A. A. Roger
Morrell, Nicholas W
Wilkins, Martin R.
Wang, Dennis
Lawrie, Allan
A diagnostic miRNA signature for pulmonary arterial hypertension using a consensus machine learning approach
title A diagnostic miRNA signature for pulmonary arterial hypertension using a consensus machine learning approach
title_full A diagnostic miRNA signature for pulmonary arterial hypertension using a consensus machine learning approach
title_fullStr A diagnostic miRNA signature for pulmonary arterial hypertension using a consensus machine learning approach
title_full_unstemmed A diagnostic miRNA signature for pulmonary arterial hypertension using a consensus machine learning approach
title_short A diagnostic miRNA signature for pulmonary arterial hypertension using a consensus machine learning approach
title_sort diagnostic mirna signature for pulmonary arterial hypertension using a consensus machine learning approach
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8243351/
https://www.ncbi.nlm.nih.gov/pubmed/34186489
http://dx.doi.org/10.1016/j.ebiom.2021.103444
work_keys_str_mv AT erringtonniamh adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT iremongerjames adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT pickworthjosephinea adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT kariotissokratis adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT rhodeschristopherj adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT rothmanalexandermk adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT condlifferobin adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT elliotcharlesa adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT kielydavidg adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT howardlukes adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT whartonjohn adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT thompsonaaroger adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT morrellnicholasw adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT wilkinsmartinr adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT wangdennis adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT lawrieallan adiagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT erringtonniamh diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT iremongerjames diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT pickworthjosephinea diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT kariotissokratis diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT rhodeschristopherj diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT rothmanalexandermk diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT condlifferobin diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT elliotcharlesa diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT kielydavidg diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT howardlukes diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT whartonjohn diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT thompsonaaroger diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT morrellnicholasw diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT wilkinsmartinr diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT wangdennis diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach
AT lawrieallan diagnosticmirnasignatureforpulmonaryarterialhypertensionusingaconsensusmachinelearningapproach