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Deep Learning-Based Automated Diagnosis for Coronary Artery Disease Using SPECT-MPI Images

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Autore
Papandrianos N.I., Feleki A., Papageorgiou E.I., Martini C.
Data
2022
Language
en
DOI
10.3390/jcm11133918
Soggetto
Article
binary classification
clinical decision making
comparative study
computer aided design
controlled study
convolutional neural network
coronary artery disease
cross validation
deep learning
diagnostic accuracy
evaluation study
heart infarction
human
image analysis
image processing
multiclass classification
myocardial perfusion imaging
receiver operating characteristic
reliability
sensitivity and specificity
single photon emission computed tomography
MDPI
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Abstract
(1) Background: Single-photon emission computed tomography (SPECT) myocardial perfusion imaging (MPI) is a long-established estimation methodology for medical diagnosis using image classification illustrating conditions in coronary artery disease. For these procedures, convo-lutional neural networks have proven to be very beneficial in achieving near-optimal accuracy for the automatic classification of SPECT images. (2) Methods: This research addresses the supervised learning-based ideal observer image classification utilizing an RGB-CNN model in heart images to diagnose CAD. For comparison purposes, we employ VGG-16 and DenseNet-121 pre-trained networks that are indulged in an image dataset representing stress and rest mode heart states ac-quired by SPECT. In experimentally evaluating the method, we explore a wide repertoire of deep learning network setups in conjunction with various robust evaluation and exploitation metrics. Additionally, to overcome the image dataset cardinality restrictions, we take advantage of the data augmentation technique expanding the set into an adequate number. Further evaluation of the model was performed via 10-fold cross-validation to ensure our model’s reliability. (3) Results: The proposed RGB-CNN model achieved an accuracy of 91.86%, while VGG-16 and DenseNet-121 reached 88.54% and 86.11%, respectively. (4) Conclusions: The abovementioned experiments verify that the newly developed deep learning models may be of great assistance in nuclear medicine and clinical decision-making. © 2022 by the authors. Licensee MDPI, Basel, Switzerland.
URI
http://hdl.handle.net/11615/77779
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