Cargando…

Application of an Exploratory Knowledge-Discovery Pipeline Based on Machine Learning to Multi-Scale OMICS Data to Characterise Myocardial Injury in a Cohort of Patients with Septic Shock: An Observational Study

Currently, there is no therapy targeting septic cardiomyopathy (SC), a key contributor to organ dysfunction in sepsis. In this study, we used a machine learning (ML) pipeline to explore transcriptomic, proteomic, and metabolomic data from patients with septic shock, and prospectively collected measu...

Descripción completa

Detalles Bibliográficos
Autores principales: Bollen Pinto, Bernardo, Ribas Ripoll, Vicent, Subías-Beltrán, Paula, Herpain, Antoine, Barlassina, Cristina, Oliveira, Eliandre, Pastorelli, Roberta, Braga, Daniele, Barcella, Matteo, Subirats, Laia, Bauzá-Martinez, Julia, Odena, Antonia, Ferrario, Manuela, Baselli, Giuseppe, Aletti, Federico, Bendjelid, Karim
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8509561/
https://www.ncbi.nlm.nih.gov/pubmed/34640372
http://dx.doi.org/10.3390/jcm10194354
_version_ 1784582372114563072
author Bollen Pinto, Bernardo
Ribas Ripoll, Vicent
Subías-Beltrán, Paula
Herpain, Antoine
Barlassina, Cristina
Oliveira, Eliandre
Pastorelli, Roberta
Braga, Daniele
Barcella, Matteo
Subirats, Laia
Bauzá-Martinez, Julia
Odena, Antonia
Ferrario, Manuela
Baselli, Giuseppe
Aletti, Federico
Bendjelid, Karim
author_facet Bollen Pinto, Bernardo
Ribas Ripoll, Vicent
Subías-Beltrán, Paula
Herpain, Antoine
Barlassina, Cristina
Oliveira, Eliandre
Pastorelli, Roberta
Braga, Daniele
Barcella, Matteo
Subirats, Laia
Bauzá-Martinez, Julia
Odena, Antonia
Ferrario, Manuela
Baselli, Giuseppe
Aletti, Federico
Bendjelid, Karim
author_sort Bollen Pinto, Bernardo
collection PubMed
description Currently, there is no therapy targeting septic cardiomyopathy (SC), a key contributor to organ dysfunction in sepsis. In this study, we used a machine learning (ML) pipeline to explore transcriptomic, proteomic, and metabolomic data from patients with septic shock, and prospectively collected measurements of high-sensitive cardiac troponin and echocardiography. The purposes of the study were to suggest an exploratory methodology to identify and characterise the multiOMICs profile of (i) myocardial injury in patients with septic shock, and of (ii) cardiac dysfunction in patients with myocardial injury. The study included 27 adult patients admitted for septic shock. Peripheral blood samples for OMICS analysis and measurements of high-sensitive cardiac troponin T (hscTnT) were collected at two time points during the ICU stay. A ML-based study was designed and implemented to untangle the relations among the OMICS domains and the aforesaid biomarkers. The resulting ML pipeline consisted of two main experimental phases: recursive feature selection (FS) assessing the stability of biomarkers, and classification to characterise the multiOMICS profile of the target biomarkers. The application of a ML pipeline to circulate OMICS data in patients with septic shock has the potential to predict the risk of myocardial injury and the risk of cardiac dysfunction.
format Online
Article
Text
id pubmed-8509561
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-85095612021-10-13 Application of an Exploratory Knowledge-Discovery Pipeline Based on Machine Learning to Multi-Scale OMICS Data to Characterise Myocardial Injury in a Cohort of Patients with Septic Shock: An Observational Study Bollen Pinto, Bernardo Ribas Ripoll, Vicent Subías-Beltrán, Paula Herpain, Antoine Barlassina, Cristina Oliveira, Eliandre Pastorelli, Roberta Braga, Daniele Barcella, Matteo Subirats, Laia Bauzá-Martinez, Julia Odena, Antonia Ferrario, Manuela Baselli, Giuseppe Aletti, Federico Bendjelid, Karim J Clin Med Article Currently, there is no therapy targeting septic cardiomyopathy (SC), a key contributor to organ dysfunction in sepsis. In this study, we used a machine learning (ML) pipeline to explore transcriptomic, proteomic, and metabolomic data from patients with septic shock, and prospectively collected measurements of high-sensitive cardiac troponin and echocardiography. The purposes of the study were to suggest an exploratory methodology to identify and characterise the multiOMICs profile of (i) myocardial injury in patients with septic shock, and of (ii) cardiac dysfunction in patients with myocardial injury. The study included 27 adult patients admitted for septic shock. Peripheral blood samples for OMICS analysis and measurements of high-sensitive cardiac troponin T (hscTnT) were collected at two time points during the ICU stay. A ML-based study was designed and implemented to untangle the relations among the OMICS domains and the aforesaid biomarkers. The resulting ML pipeline consisted of two main experimental phases: recursive feature selection (FS) assessing the stability of biomarkers, and classification to characterise the multiOMICS profile of the target biomarkers. The application of a ML pipeline to circulate OMICS data in patients with septic shock has the potential to predict the risk of myocardial injury and the risk of cardiac dysfunction. MDPI 2021-09-24 /pmc/articles/PMC8509561/ /pubmed/34640372 http://dx.doi.org/10.3390/jcm10194354 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
Bollen Pinto, Bernardo
Ribas Ripoll, Vicent
Subías-Beltrán, Paula
Herpain, Antoine
Barlassina, Cristina
Oliveira, Eliandre
Pastorelli, Roberta
Braga, Daniele
Barcella, Matteo
Subirats, Laia
Bauzá-Martinez, Julia
Odena, Antonia
Ferrario, Manuela
Baselli, Giuseppe
Aletti, Federico
Bendjelid, Karim
Application of an Exploratory Knowledge-Discovery Pipeline Based on Machine Learning to Multi-Scale OMICS Data to Characterise Myocardial Injury in a Cohort of Patients with Septic Shock: An Observational Study
title Application of an Exploratory Knowledge-Discovery Pipeline Based on Machine Learning to Multi-Scale OMICS Data to Characterise Myocardial Injury in a Cohort of Patients with Septic Shock: An Observational Study
title_full Application of an Exploratory Knowledge-Discovery Pipeline Based on Machine Learning to Multi-Scale OMICS Data to Characterise Myocardial Injury in a Cohort of Patients with Septic Shock: An Observational Study
title_fullStr Application of an Exploratory Knowledge-Discovery Pipeline Based on Machine Learning to Multi-Scale OMICS Data to Characterise Myocardial Injury in a Cohort of Patients with Septic Shock: An Observational Study
title_full_unstemmed Application of an Exploratory Knowledge-Discovery Pipeline Based on Machine Learning to Multi-Scale OMICS Data to Characterise Myocardial Injury in a Cohort of Patients with Septic Shock: An Observational Study
title_short Application of an Exploratory Knowledge-Discovery Pipeline Based on Machine Learning to Multi-Scale OMICS Data to Characterise Myocardial Injury in a Cohort of Patients with Septic Shock: An Observational Study
title_sort application of an exploratory knowledge-discovery pipeline based on machine learning to multi-scale omics data to characterise myocardial injury in a cohort of patients with septic shock: an observational study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8509561/
https://www.ncbi.nlm.nih.gov/pubmed/34640372
http://dx.doi.org/10.3390/jcm10194354
work_keys_str_mv AT bollenpintobernardo applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT ribasripollvicent applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT subiasbeltranpaula applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT herpainantoine applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT barlassinacristina applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT oliveiraeliandre applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT pastorelliroberta applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT bragadaniele applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT barcellamatteo applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT subiratslaia applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT bauzamartinezjulia applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT odenaantonia applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT ferrariomanuela applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT baselligiuseppe applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT alettifederico applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT bendjelidkarim applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy
AT applicationofanexploratoryknowledgediscoverypipelinebasedonmachinelearningtomultiscaleomicsdatatocharacterisemyocardialinjuryinacohortofpatientswithsepticshockanobservationalstudy