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Deep Learning to Classify AL versus ATTR Cardiac Amyloidosis MR Images
by
Roy, Catherine
, Vardazaryan, Armine
, Labani, Aissam
, Padoy, Nicolas
, El Ghannudi, Soraya
, Germain, Philippe
in
algorithm vs. human comparison
/ Amyloidosis
/ Biopsy
/ Bisphosphonates
/ cardiac amyloidosis
/ Classification
/ Computer Science
/ convolutional neural network
/ Deep learning
/ Gadolinium
/ Heart
/ Heart failure
/ light chain
/ Medical Imaging
/ Medical prognosis
/ Neural networks
/ Orientation behavior
/ Patients
/ Software
/ Transplants & implants
/ transthyretine
/ Visual discrimination
2023
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Deep Learning to Classify AL versus ATTR Cardiac Amyloidosis MR Images
by
Roy, Catherine
, Vardazaryan, Armine
, Labani, Aissam
, Padoy, Nicolas
, El Ghannudi, Soraya
, Germain, Philippe
in
algorithm vs. human comparison
/ Amyloidosis
/ Biopsy
/ Bisphosphonates
/ cardiac amyloidosis
/ Classification
/ Computer Science
/ convolutional neural network
/ Deep learning
/ Gadolinium
/ Heart
/ Heart failure
/ light chain
/ Medical Imaging
/ Medical prognosis
/ Neural networks
/ Orientation behavior
/ Patients
/ Software
/ Transplants & implants
/ transthyretine
/ Visual discrimination
2023
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Deep Learning to Classify AL versus ATTR Cardiac Amyloidosis MR Images
by
Roy, Catherine
, Vardazaryan, Armine
, Labani, Aissam
, Padoy, Nicolas
, El Ghannudi, Soraya
, Germain, Philippe
in
algorithm vs. human comparison
/ Amyloidosis
/ Biopsy
/ Bisphosphonates
/ cardiac amyloidosis
/ Classification
/ Computer Science
/ convolutional neural network
/ Deep learning
/ Gadolinium
/ Heart
/ Heart failure
/ light chain
/ Medical Imaging
/ Medical prognosis
/ Neural networks
/ Orientation behavior
/ Patients
/ Software
/ Transplants & implants
/ transthyretine
/ Visual discrimination
2023
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Deep Learning to Classify AL versus ATTR Cardiac Amyloidosis MR Images
Journal Article
Deep Learning to Classify AL versus ATTR Cardiac Amyloidosis MR Images
2023
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Overview
The aim of this work was to compare the classification of cardiac MR-images of AL versus ATTR amyloidosis by neural networks and by experienced human readers. Cine-MR images and late gadolinium enhancement (LGE) images of 120 patients were studied (70 AL and 50 TTR). A VGG16 convolutional neural network (CNN) was trained with a 5-fold cross validation process, taking care to strictly distribute images of a given patient in either the training group or the test group. The analysis was performed at the patient level by averaging the predictions obtained for each image. The classification accuracy obtained between AL and ATTR amyloidosis was 0.750 for cine-CNN, 0.611 for Gado-CNN and between 0.617 and 0.675 for human readers. The corresponding AUC of the ROC curve was 0.839 for cine-CNN, 0.679 for gado-CNN (p < 0.004 vs. cine) and 0.714 for the best human reader (p < 0.007 vs. cine). Logistic regression with cine-CNN and gado-CNN, as well as analysis focused on the specific orientation plane, did not change the overall results. We conclude that cine-CNN leads to significantly better discrimination between AL and ATTR amyloidosis as compared to gado-CNN or human readers, but with lower performance than reported in studies where visual diagnosis is easy, and is currently suboptimal for clinical practice.
Publisher
MDPI AG,MDPI
Subject
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