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DISCOVER: 2-D multiview summarization of Optical Coherence Tomography Angiography for automatic diabetic retinopathy diagnosis.

Authors :
El Habib Daho, Mostafa
Li, Yihao
Zeghlache, Rachid
Boité, Hugo Le
Deman, Pierre
Borderie, Laurent
Ren, Hugang
Mannivanan, Niranchana
Lepicard, Capucine
Cochener, Béatrice
Couturier, Aude
Tadayoni, Ramin
Conze, Pierre-Henri
Lamard, Mathieu
Quellec, Gwenolé
Source :
Artificial Intelligence in Medicine. Mar2024, Vol. 149, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

Diabetic Retinopathy (DR), an ocular complication of diabetes, is a leading cause of blindness worldwide. Traditionally, DR is monitored using Color Fundus Photography (CFP), a widespread 2-D imaging modality. However, DR classifications based on CFP have poor predictive power, resulting in suboptimal DR management. Optical Coherence Tomography Angiography (OCTA) is a recent 3-D imaging modality offering enhanced structural and functional information (blood flow) with a wider field of view. This paper investigates automatic DR severity assessment using 3-D OCTA. A straightforward solution to this task is a 3-D neural network classifier. However, 3-D architectures have numerous parameters and typically require many training samples. A lighter solution consists in using 2-D neural network classifiers processing 2-D en-face (or frontal) projections and/or 2-D cross-sectional slices. Such an approach mimics the way ophthalmologists analyze OCTA acquisitions: (1) en-face flow maps are often used to detect avascular zones and neovascularization, and (2) cross-sectional slices are commonly analyzed to detect macular edemas, for instance. However, arbitrary data reduction or selection might result in information loss. Two complementary strategies are thus proposed to optimally summarize OCTA volumes with 2-D images: (1) a parametric en-face projection optimized through deep learning and (2) a cross-sectional slice selection process controlled through gradient-based attribution. The full summarization and DR classification pipeline is trained from end to end. The automatic 2-D summary can be displayed in a viewer or printed in a report to support the decision. We show that the proposed 2-D summarization and classification pipeline outperforms direct 3-D classification with the advantage of improved interpretability. • An algorithm to quickly and efficiently classify 3-D images is presented. • 3-D images are summarized by one or a few 2-D images as an intermediate step. • The pipeline is trained from end to end: the 2-D summary is thus problem-specific. • This multiview 2-D summarization allows interpretability and knowledge discovery. • It is applied to diabetic retinopathy severity assessment using OCT angiography. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09333657
Volume :
149
Database :
Academic Search Index
Journal :
Artificial Intelligence in Medicine
Publication Type :
Academic Journal
Accession number :
175936265
Full Text :
https://doi.org/10.1016/j.artmed.2024.102803