Cargando…

Predicting post-contrast information from contrast agent free cardiac MRI using machine learning: Challenges and methods

OBJECTIVES: Currently, administering contrast agents is necessary for accurately visualizing and quantifying presence, location, and extent of myocardial infarction (MI) with cardiac magnetic resonance (CMR). In this study, our objective is to investigate and analyze pre- and post-contrast CMR image...

Descripción completa

Detalles Bibliográficos
Autores principales: Abdulkareem, Musa, Kenawy, Asmaa A., Rauseo, Elisa, Lee, Aaron M., Sojoudi, Alireza, Amir-Khalili, Alborz, Lekadir, Karim, Young, Alistair A., Barnes, Michael R., Barckow, Philipp, Khanji, Mohammed Y., Aung, Nay, Petersen, Steffen E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9426684/
https://www.ncbi.nlm.nih.gov/pubmed/36051279
http://dx.doi.org/10.3389/fcvm.2022.894503
_version_ 1784778735765946368
author Abdulkareem, Musa
Kenawy, Asmaa A.
Rauseo, Elisa
Lee, Aaron M.
Sojoudi, Alireza
Amir-Khalili, Alborz
Lekadir, Karim
Young, Alistair A.
Barnes, Michael R.
Barckow, Philipp
Khanji, Mohammed Y.
Aung, Nay
Petersen, Steffen E.
author_facet Abdulkareem, Musa
Kenawy, Asmaa A.
Rauseo, Elisa
Lee, Aaron M.
Sojoudi, Alireza
Amir-Khalili, Alborz
Lekadir, Karim
Young, Alistair A.
Barnes, Michael R.
Barckow, Philipp
Khanji, Mohammed Y.
Aung, Nay
Petersen, Steffen E.
author_sort Abdulkareem, Musa
collection PubMed
description OBJECTIVES: Currently, administering contrast agents is necessary for accurately visualizing and quantifying presence, location, and extent of myocardial infarction (MI) with cardiac magnetic resonance (CMR). In this study, our objective is to investigate and analyze pre- and post-contrast CMR images with the goal of predicting post-contrast information using pre-contrast information only. We propose methods and identify challenges. METHODS: The study population consists of 272 retrospectively selected CMR studies with diagnoses of MI (n = 108) and healthy controls (n = 164). We describe a pipeline for pre-processing this dataset for analysis. After data feature engineering, 722 cine short-axis (SAX) images and segmentation mask pairs were used for experimentation. This constitutes 506, 108, and 108 pairs for the training, validation, and testing sets, respectively. We use deep learning (DL) segmentation (UNet) and classification (ResNet50) models to discover the extent and location of the scar and classify between the ischemic cases and healthy cases (i.e., cases with no regional myocardial scar) from the pre-contrast cine SAX image frames, respectively. We then capture complex data patterns that represent subtle signal and functional changes in the cine SAX images due to MI using optical flow, rate of change of myocardial area, and radiomics data. We apply this dataset to explore two supervised learning methods, namely, the support vector machines (SVM) and the decision tree (DT) methods, to develop predictive models for classifying pre-contrast cine SAX images as being a case of MI or healthy. RESULTS: Overall, for the UNet segmentation model, the performance based on the mean Dice score for the test set (n = 108) is 0.75 (±0.20) for the endocardium, 0.51 (±0.21) for the epicardium and 0.20 (±0.17) for the scar. For the classification task, the accuracy, F1 and precision scores of 0.68, 0.69, and 0.64, respectively, were achieved with the SVM model, and of 0.62, 0.63, and 0.72, respectively, with the DT model. CONCLUSION: We have presented some promising approaches involving DL, SVM, and DT methods in an attempt to accurately predict contrast information from non-contrast images. While our initial results are modest for this challenging task, this area of research still poses several open problems.
format Online
Article
Text
id pubmed-9426684
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-94266842022-08-31 Predicting post-contrast information from contrast agent free cardiac MRI using machine learning: Challenges and methods Abdulkareem, Musa Kenawy, Asmaa A. Rauseo, Elisa Lee, Aaron M. Sojoudi, Alireza Amir-Khalili, Alborz Lekadir, Karim Young, Alistair A. Barnes, Michael R. Barckow, Philipp Khanji, Mohammed Y. Aung, Nay Petersen, Steffen E. Front Cardiovasc Med Cardiovascular Medicine OBJECTIVES: Currently, administering contrast agents is necessary for accurately visualizing and quantifying presence, location, and extent of myocardial infarction (MI) with cardiac magnetic resonance (CMR). In this study, our objective is to investigate and analyze pre- and post-contrast CMR images with the goal of predicting post-contrast information using pre-contrast information only. We propose methods and identify challenges. METHODS: The study population consists of 272 retrospectively selected CMR studies with diagnoses of MI (n = 108) and healthy controls (n = 164). We describe a pipeline for pre-processing this dataset for analysis. After data feature engineering, 722 cine short-axis (SAX) images and segmentation mask pairs were used for experimentation. This constitutes 506, 108, and 108 pairs for the training, validation, and testing sets, respectively. We use deep learning (DL) segmentation (UNet) and classification (ResNet50) models to discover the extent and location of the scar and classify between the ischemic cases and healthy cases (i.e., cases with no regional myocardial scar) from the pre-contrast cine SAX image frames, respectively. We then capture complex data patterns that represent subtle signal and functional changes in the cine SAX images due to MI using optical flow, rate of change of myocardial area, and radiomics data. We apply this dataset to explore two supervised learning methods, namely, the support vector machines (SVM) and the decision tree (DT) methods, to develop predictive models for classifying pre-contrast cine SAX images as being a case of MI or healthy. RESULTS: Overall, for the UNet segmentation model, the performance based on the mean Dice score for the test set (n = 108) is 0.75 (±0.20) for the endocardium, 0.51 (±0.21) for the epicardium and 0.20 (±0.17) for the scar. For the classification task, the accuracy, F1 and precision scores of 0.68, 0.69, and 0.64, respectively, were achieved with the SVM model, and of 0.62, 0.63, and 0.72, respectively, with the DT model. CONCLUSION: We have presented some promising approaches involving DL, SVM, and DT methods in an attempt to accurately predict contrast information from non-contrast images. While our initial results are modest for this challenging task, this area of research still poses several open problems. Frontiers Media S.A. 2022-07-27 /pmc/articles/PMC9426684/ /pubmed/36051279 http://dx.doi.org/10.3389/fcvm.2022.894503 Text en Copyright © 2022 Abdulkareem, Kenawy, Rauseo, Lee, Sojoudi, Amir-Khalili, Lekadir, Young, Barnes, Barckow, Khanji, Aung and Petersen. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Cardiovascular Medicine
Abdulkareem, Musa
Kenawy, Asmaa A.
Rauseo, Elisa
Lee, Aaron M.
Sojoudi, Alireza
Amir-Khalili, Alborz
Lekadir, Karim
Young, Alistair A.
Barnes, Michael R.
Barckow, Philipp
Khanji, Mohammed Y.
Aung, Nay
Petersen, Steffen E.
Predicting post-contrast information from contrast agent free cardiac MRI using machine learning: Challenges and methods
title Predicting post-contrast information from contrast agent free cardiac MRI using machine learning: Challenges and methods
title_full Predicting post-contrast information from contrast agent free cardiac MRI using machine learning: Challenges and methods
title_fullStr Predicting post-contrast information from contrast agent free cardiac MRI using machine learning: Challenges and methods
title_full_unstemmed Predicting post-contrast information from contrast agent free cardiac MRI using machine learning: Challenges and methods
title_short Predicting post-contrast information from contrast agent free cardiac MRI using machine learning: Challenges and methods
title_sort predicting post-contrast information from contrast agent free cardiac mri using machine learning: challenges and methods
topic Cardiovascular Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9426684/
https://www.ncbi.nlm.nih.gov/pubmed/36051279
http://dx.doi.org/10.3389/fcvm.2022.894503
work_keys_str_mv AT abdulkareemmusa predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT kenawyasmaaa predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT rauseoelisa predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT leeaaronm predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT sojoudialireza predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT amirkhalilialborz predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT lekadirkarim predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT youngalistaira predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT barnesmichaelr predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT barckowphilipp predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT khanjimohammedy predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT aungnay predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods
AT petersensteffene predictingpostcontrastinformationfromcontrastagentfreecardiacmriusingmachinelearningchallengesandmethods