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Published in: Annals of Nuclear Medicine 9/2022

30-06-2022 | Arterial Diseases | Original Article

Deep learning exploration for SPECT MPI polar map images classification in coronary artery disease

Authors: Nikolaos I. Papandrianos, Ioannis D. Apostolopoulos, Anna Feleki, Dimitris J. Apostolopoulos, Elpiniki I. Papageorgiou

Published in: Annals of Nuclear Medicine | Issue 9/2022

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Abstract

Objective

The exploration and the implementation of a deep learning method using a state-of-the-art convolutional neural network for the classification of polar maps represent myocardial perfusion for the detection of coronary artery disease.

Subjects and methods

In the proposed research, the dataset includes stress and rest polar maps in attenuation-corrected (AC) and non-corrected (NAC) format, counting specifically 144 normal and 170 pathological cases. Due to the small number of the dataset, the following methods were implemented: First, transfer learning was conducted using VGG16, which is applied broadly in medical industry. Furthermore, data augmentation was utilized, wherein the images are rotated and flipped for expanding the dataset. Secondly, we evaluated a custom convolutional neural network called RGB CNN, which utilizes fewer parameters and is more lightweight. In addition, we utilized the k-fold validation for evaluating variability and overall performance of the examined model.

Results

Our RGB CNN model achieved an agreement rating of 92.07% with a loss of 0.2519. The transfer learning technique (VGG16) attained 95.83% accuracy.

Conclusions

The proposed model could be an effective tool for medical classification problems, in the case of polar map data acquired from myocardial perfusion images.
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Metadata
Title
Deep learning exploration for SPECT MPI polar map images classification in coronary artery disease
Authors
Nikolaos I. Papandrianos
Ioannis D. Apostolopoulos
Anna Feleki
Dimitris J. Apostolopoulos
Elpiniki I. Papageorgiou
Publication date
30-06-2022
Publisher
Springer Nature Singapore
Published in
Annals of Nuclear Medicine / Issue 9/2022
Print ISSN: 0914-7187
Electronic ISSN: 1864-6433
DOI
https://doi.org/10.1007/s12149-022-01762-4

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