Cargando…

Machine learning for spatial stratification of progressive cardiovascular dysfunction in a murine model of type 2 diabetes mellitus

Speckle tracking echocardiography (STE) has been utilized to evaluate independent spatial alterations in the diabetic heart, but the progressive manifestation of regional and segmental cardiac dysfunction in the type 2 diabetic (T2DM) heart remains understudied. Therefore, the objective of this stud...

Descripción completa

Detalles Bibliográficos
Autores principales: Durr, Andrya J., Korol, Anna S., Hathaway, Quincy A., Kunovac, Amina, Taylor, Andrew D., Rizwan, Saira, Pinti, Mark V., Hollander, John M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10166525/
https://www.ncbi.nlm.nih.gov/pubmed/37155623
http://dx.doi.org/10.1371/journal.pone.0285512
_version_ 1785038461591355392
author Durr, Andrya J.
Korol, Anna S.
Hathaway, Quincy A.
Kunovac, Amina
Taylor, Andrew D.
Rizwan, Saira
Pinti, Mark V.
Hollander, John M.
author_facet Durr, Andrya J.
Korol, Anna S.
Hathaway, Quincy A.
Kunovac, Amina
Taylor, Andrew D.
Rizwan, Saira
Pinti, Mark V.
Hollander, John M.
author_sort Durr, Andrya J.
collection PubMed
description Speckle tracking echocardiography (STE) has been utilized to evaluate independent spatial alterations in the diabetic heart, but the progressive manifestation of regional and segmental cardiac dysfunction in the type 2 diabetic (T2DM) heart remains understudied. Therefore, the objective of this study was to elucidate if machine learning could be utilized to reliably describe patterns of the progressive regional and segmental dysfunction that are associated with the development of cardiac contractile dysfunction in the T2DM heart. Non-invasive conventional echocardiography and STE datasets were utilized to segregate mice into two pre-determined groups, wild-type and Db/Db, at 5, 12, 20, and 25 weeks. A support vector machine model, which classifies data using a single line, or hyperplane, that best separates each class, and a ReliefF algorithm, which ranks features by how well each feature lends to the classification of data, were used to identify and rank cardiac regions, segments, and features by their ability to identify cardiac dysfunction. STE features more accurately segregated animals as diabetic or non-diabetic when compared with conventional echocardiography, and the ReliefF algorithm efficiently ranked STE features by their ability to identify cardiac dysfunction. The Septal region, and the AntSeptum segment, best identified cardiac dysfunction at 5, 20, and 25 weeks, with the AntSeptum also containing the greatest number of features which differed between diabetic and non-diabetic mice. Cardiac dysfunction manifests in a spatial and temporal fashion, and is defined by patterns of regional and segmental dysfunction in the T2DM heart which are identifiable using machine learning methodologies. Further, machine learning identified the Septal region and AntSeptum segment as locales of interest for therapeutic interventions aimed at ameliorating cardiac dysfunction in T2DM, suggesting that machine learning may provide a more thorough approach to managing contractile data with the intention of identifying experimental and therapeutic targets.
format Online
Article
Text
id pubmed-10166525
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-101665252023-05-09 Machine learning for spatial stratification of progressive cardiovascular dysfunction in a murine model of type 2 diabetes mellitus Durr, Andrya J. Korol, Anna S. Hathaway, Quincy A. Kunovac, Amina Taylor, Andrew D. Rizwan, Saira Pinti, Mark V. Hollander, John M. PLoS One Research Article Speckle tracking echocardiography (STE) has been utilized to evaluate independent spatial alterations in the diabetic heart, but the progressive manifestation of regional and segmental cardiac dysfunction in the type 2 diabetic (T2DM) heart remains understudied. Therefore, the objective of this study was to elucidate if machine learning could be utilized to reliably describe patterns of the progressive regional and segmental dysfunction that are associated with the development of cardiac contractile dysfunction in the T2DM heart. Non-invasive conventional echocardiography and STE datasets were utilized to segregate mice into two pre-determined groups, wild-type and Db/Db, at 5, 12, 20, and 25 weeks. A support vector machine model, which classifies data using a single line, or hyperplane, that best separates each class, and a ReliefF algorithm, which ranks features by how well each feature lends to the classification of data, were used to identify and rank cardiac regions, segments, and features by their ability to identify cardiac dysfunction. STE features more accurately segregated animals as diabetic or non-diabetic when compared with conventional echocardiography, and the ReliefF algorithm efficiently ranked STE features by their ability to identify cardiac dysfunction. The Septal region, and the AntSeptum segment, best identified cardiac dysfunction at 5, 20, and 25 weeks, with the AntSeptum also containing the greatest number of features which differed between diabetic and non-diabetic mice. Cardiac dysfunction manifests in a spatial and temporal fashion, and is defined by patterns of regional and segmental dysfunction in the T2DM heart which are identifiable using machine learning methodologies. Further, machine learning identified the Septal region and AntSeptum segment as locales of interest for therapeutic interventions aimed at ameliorating cardiac dysfunction in T2DM, suggesting that machine learning may provide a more thorough approach to managing contractile data with the intention of identifying experimental and therapeutic targets. Public Library of Science 2023-05-08 /pmc/articles/PMC10166525/ /pubmed/37155623 http://dx.doi.org/10.1371/journal.pone.0285512 Text en © 2023 Durr et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Durr, Andrya J.
Korol, Anna S.
Hathaway, Quincy A.
Kunovac, Amina
Taylor, Andrew D.
Rizwan, Saira
Pinti, Mark V.
Hollander, John M.
Machine learning for spatial stratification of progressive cardiovascular dysfunction in a murine model of type 2 diabetes mellitus
title Machine learning for spatial stratification of progressive cardiovascular dysfunction in a murine model of type 2 diabetes mellitus
title_full Machine learning for spatial stratification of progressive cardiovascular dysfunction in a murine model of type 2 diabetes mellitus
title_fullStr Machine learning for spatial stratification of progressive cardiovascular dysfunction in a murine model of type 2 diabetes mellitus
title_full_unstemmed Machine learning for spatial stratification of progressive cardiovascular dysfunction in a murine model of type 2 diabetes mellitus
title_short Machine learning for spatial stratification of progressive cardiovascular dysfunction in a murine model of type 2 diabetes mellitus
title_sort machine learning for spatial stratification of progressive cardiovascular dysfunction in a murine model of type 2 diabetes mellitus
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10166525/
https://www.ncbi.nlm.nih.gov/pubmed/37155623
http://dx.doi.org/10.1371/journal.pone.0285512
work_keys_str_mv AT durrandryaj machinelearningforspatialstratificationofprogressivecardiovasculardysfunctioninamurinemodeloftype2diabetesmellitus
AT korolannas machinelearningforspatialstratificationofprogressivecardiovasculardysfunctioninamurinemodeloftype2diabetesmellitus
AT hathawayquincya machinelearningforspatialstratificationofprogressivecardiovasculardysfunctioninamurinemodeloftype2diabetesmellitus
AT kunovacamina machinelearningforspatialstratificationofprogressivecardiovasculardysfunctioninamurinemodeloftype2diabetesmellitus
AT taylorandrewd machinelearningforspatialstratificationofprogressivecardiovasculardysfunctioninamurinemodeloftype2diabetesmellitus
AT rizwansaira machinelearningforspatialstratificationofprogressivecardiovasculardysfunctioninamurinemodeloftype2diabetesmellitus
AT pintimarkv machinelearningforspatialstratificationofprogressivecardiovasculardysfunctioninamurinemodeloftype2diabetesmellitus
AT hollanderjohnm machinelearningforspatialstratificationofprogressivecardiovasculardysfunctioninamurinemodeloftype2diabetesmellitus