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Automated Quality-Controlled Cardiovascular Magnetic Resonance Pericardial Fat Quantification Using a Convolutional Neural Network in the UK Biobank

Background: Pericardial adipose tissue (PAT) may represent a novel risk marker for cardiovascular disease. However, absence of rapid radiation-free PAT quantification methods has precluded its examination in large cohorts. Objectives: We developed a fully automated quality-controlled tool for cardio...

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Autores principales: Bard, Andrew, Raisi-Estabragh, Zahra, Ardissino, Maddalena, Lee, Aaron Mark, Pugliese, Francesca, Dey, Damini, Sarkar, Sandip, Munroe, Patricia B., Neubauer, Stefan, Harvey, Nicholas C., Petersen, Steffen E.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8294033/
https://www.ncbi.nlm.nih.gov/pubmed/34307493
http://dx.doi.org/10.3389/fcvm.2021.677574
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author Bard, Andrew
Raisi-Estabragh, Zahra
Ardissino, Maddalena
Lee, Aaron Mark
Pugliese, Francesca
Dey, Damini
Sarkar, Sandip
Munroe, Patricia B.
Neubauer, Stefan
Harvey, Nicholas C.
Petersen, Steffen E.
author_facet Bard, Andrew
Raisi-Estabragh, Zahra
Ardissino, Maddalena
Lee, Aaron Mark
Pugliese, Francesca
Dey, Damini
Sarkar, Sandip
Munroe, Patricia B.
Neubauer, Stefan
Harvey, Nicholas C.
Petersen, Steffen E.
author_sort Bard, Andrew
collection PubMed
description Background: Pericardial adipose tissue (PAT) may represent a novel risk marker for cardiovascular disease. However, absence of rapid radiation-free PAT quantification methods has precluded its examination in large cohorts. Objectives: We developed a fully automated quality-controlled tool for cardiovascular magnetic resonance (CMR) PAT quantification in the UK Biobank (UKB). Methods: Image analysis comprised contouring an en-bloc PAT area on four-chamber cine images. We created a ground truth manual analysis dataset randomly split into training and test sets. We built a neural network for automated segmentation using a Multi-residual U-net architecture with incorporation of permanently active dropout layers to facilitate quality control of the model's output using Monte Carlo sampling. We developed an in-built quality control feature, which presents predicted Dice scores. We evaluated model performance against the test set (n = 87), the whole UKB Imaging cohort (n = 45,519), and an external dataset (n = 103). In an independent dataset, we compared automated CMR and cardiac computed tomography (CCT) PAT quantification. Finally, we tested association of CMR PAT with diabetes in the UKB (n = 42,928). Results: Agreement between automated and manual segmentations in the test set was almost identical to inter-observer variability (mean Dice score = 0.8). The quality control method predicted individual Dice scores with Pearson r = 0.75. Model performance remained high in the whole UKB Imaging cohort and in the external dataset, with medium–good quality segmentation in 94.3% (mean Dice score = 0.77) and 94.4% (mean Dice score = 0.78), respectively. There was high correlation between CMR and CCT PAT measures (Pearson r = 0.72, p-value 5.3 ×10(−18)). Larger CMR PAT area was associated with significantly greater odds of diabetes independent of age, sex, and body mass index. Conclusions: We present a novel fully automated method for CMR PAT quantification with good model performance on independent and external datasets, high correlation with reference standard CCT PAT measurement, and expected clinical associations with diabetes.
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spelling pubmed-82940332021-07-22 Automated Quality-Controlled Cardiovascular Magnetic Resonance Pericardial Fat Quantification Using a Convolutional Neural Network in the UK Biobank Bard, Andrew Raisi-Estabragh, Zahra Ardissino, Maddalena Lee, Aaron Mark Pugliese, Francesca Dey, Damini Sarkar, Sandip Munroe, Patricia B. Neubauer, Stefan Harvey, Nicholas C. Petersen, Steffen E. Front Cardiovasc Med Cardiovascular Medicine Background: Pericardial adipose tissue (PAT) may represent a novel risk marker for cardiovascular disease. However, absence of rapid radiation-free PAT quantification methods has precluded its examination in large cohorts. Objectives: We developed a fully automated quality-controlled tool for cardiovascular magnetic resonance (CMR) PAT quantification in the UK Biobank (UKB). Methods: Image analysis comprised contouring an en-bloc PAT area on four-chamber cine images. We created a ground truth manual analysis dataset randomly split into training and test sets. We built a neural network for automated segmentation using a Multi-residual U-net architecture with incorporation of permanently active dropout layers to facilitate quality control of the model's output using Monte Carlo sampling. We developed an in-built quality control feature, which presents predicted Dice scores. We evaluated model performance against the test set (n = 87), the whole UKB Imaging cohort (n = 45,519), and an external dataset (n = 103). In an independent dataset, we compared automated CMR and cardiac computed tomography (CCT) PAT quantification. Finally, we tested association of CMR PAT with diabetes in the UKB (n = 42,928). Results: Agreement between automated and manual segmentations in the test set was almost identical to inter-observer variability (mean Dice score = 0.8). The quality control method predicted individual Dice scores with Pearson r = 0.75. Model performance remained high in the whole UKB Imaging cohort and in the external dataset, with medium–good quality segmentation in 94.3% (mean Dice score = 0.77) and 94.4% (mean Dice score = 0.78), respectively. There was high correlation between CMR and CCT PAT measures (Pearson r = 0.72, p-value 5.3 ×10(−18)). Larger CMR PAT area was associated with significantly greater odds of diabetes independent of age, sex, and body mass index. Conclusions: We present a novel fully automated method for CMR PAT quantification with good model performance on independent and external datasets, high correlation with reference standard CCT PAT measurement, and expected clinical associations with diabetes. Frontiers Media S.A. 2021-07-07 /pmc/articles/PMC8294033/ /pubmed/34307493 http://dx.doi.org/10.3389/fcvm.2021.677574 Text en Copyright © 2021 Bard, Raisi-Estabragh, Ardissino, Lee, Pugliese, Dey, Sarkar, Munroe, Neubauer, Harvey 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
Bard, Andrew
Raisi-Estabragh, Zahra
Ardissino, Maddalena
Lee, Aaron Mark
Pugliese, Francesca
Dey, Damini
Sarkar, Sandip
Munroe, Patricia B.
Neubauer, Stefan
Harvey, Nicholas C.
Petersen, Steffen E.
Automated Quality-Controlled Cardiovascular Magnetic Resonance Pericardial Fat Quantification Using a Convolutional Neural Network in the UK Biobank
title Automated Quality-Controlled Cardiovascular Magnetic Resonance Pericardial Fat Quantification Using a Convolutional Neural Network in the UK Biobank
title_full Automated Quality-Controlled Cardiovascular Magnetic Resonance Pericardial Fat Quantification Using a Convolutional Neural Network in the UK Biobank
title_fullStr Automated Quality-Controlled Cardiovascular Magnetic Resonance Pericardial Fat Quantification Using a Convolutional Neural Network in the UK Biobank
title_full_unstemmed Automated Quality-Controlled Cardiovascular Magnetic Resonance Pericardial Fat Quantification Using a Convolutional Neural Network in the UK Biobank
title_short Automated Quality-Controlled Cardiovascular Magnetic Resonance Pericardial Fat Quantification Using a Convolutional Neural Network in the UK Biobank
title_sort automated quality-controlled cardiovascular magnetic resonance pericardial fat quantification using a convolutional neural network in the uk biobank
topic Cardiovascular Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8294033/
https://www.ncbi.nlm.nih.gov/pubmed/34307493
http://dx.doi.org/10.3389/fcvm.2021.677574
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