Generation of synthetic intermediate slices in 3D OCT cubes for improving pathology detection and monitoring
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Generation of synthetic intermediate slices in 3D OCT cubes for improving pathology detection and monitoringAutor(es)
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2023-09Cita bibliográfica
E. López-Varela, N. Barreira, N. O. Pascual, M. R. A. Castillo, y M. G. Penedo, «Generation of synthetic intermediate slices in 3D OCT cubes for improving pathology detection and monitoring», Computers in Biology and Medicine, vol. 163, p. 107214, sep. 2023, doi: 10.1016/j.compbiomed.2023.107214.
Resumo
[Absctract]: OCT is a non-invasive imaging technique commonly used to obtain 3D volumes of the ocular structure. These volumes allow the monitoring of ocular and systemic diseases through the observation of subtle changes in the different structures present in the eye. In order to observe these changes it is essential that the OCT volumes have a high resolution in all axes, but unfortunately there is an inverse relationship between the quality of the OCT images and the number of slices of the cube. This results in routine clinical examinations using cubes that generally contain high-resolution images with few slices. This lack of slices complicates the monitoring of changes in the retina hindering the diagnostic process and reducing the effectiveness of 3D visualizations. Therefore, increasing the cross-sectional resolution of OCT cubes would improve the visualization of these changes aiding the clinician in the diagnostic process. In this work we present a novel fully automatic methodology to perform the synthesis of intermediate slices of OCT image volumes in an unsupervised manner. To perform this synthesis, we propose a fully convolutional neural network architecture that uses information from two adjacent slices to generate the intermediate synthetic slice. We also propose a training methodology, where we use three adjacent slices to train the network by contrastive learning and image reconstruction. We test our methodology with three different types of OCT volumes commonly used in the clinical setting and validate the quality of the synthetic slices created with several medical experts and using an expert system.
Palabras chave
Optical coherence tomography
Medical synthesis
Slice synthesis
Convolutional neural networks
GAN
3D volume
OCT
Resolution increase
Medical synthesis
Slice synthesis
Convolutional neural networks
GAN
3D volume
OCT
Resolution increase
Descrición
Funding for open access charge: Universidade da Coruña/CISUG
Versión do editor
Dereitos
Atribución 3.0 España
ISSN
0010-4825
1879-0534
1879-0534