Multi-modal, multi-task, multi-attention (M3) deep learning detection of reticular pseudodrusen: towards automated and accessible classification of age-related macular degeneration
Qingyu Chen, Tiarnan D. L. Keenan, Alexis Allot, Yifan Peng, Elvira, Agr\'on, Amitha Domalpally, Caroline C. W. Klaver, Daniel T. Luttikhuizen,, Marcus H. Colyer, Catherine A. Cukras, Henry E. Wiley, M. Teresa Magone,, Chantal Cousineau-Krieger, Wai T. Wong, Yingying Zhu

TL;DR
This paper presents M3, a novel deep learning framework that accurately detects reticular pseudodrusen and other AMD features from standard fundus images, outperforming experts and enabling accessible diagnosis.
Contribution
The study introduces M3, a multi-modal, multi-task, multi-attention deep learning model that improves detection accuracy of AMD features from fundus images, validated externally.
Findings
M3 achieved high AUROC scores (up to 0.933) for RPD detection.
M3 outperformed ophthalmologists in RPD detection accuracy.
External validation confirmed high performance on independent data.
Abstract
Objective Reticular pseudodrusen (RPD), a key feature of age-related macular degeneration (AMD), are poorly detected by human experts on standard color fundus photography (CFP) and typically require advanced imaging modalities such as fundus autofluorescence (FAF). The objective was to develop and evaluate the performance of a novel 'M3' deep learning framework on RPD detection. Materials and Methods A deep learning framework M3 was developed to detect RPD presence accurately using CFP alone, FAF alone, or both, employing >8000 CFP-FAF image pairs obtained prospectively (Age-Related Eye Disease Study 2). The M3 framework includes multi-modal (detection from single or multiple image modalities), multi-task (training different tasks simultaneously to improve generalizability), and multi-attention (improving ensembled feature representation) operation. Performance on RPD detection was…
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Taxonomy
TopicsRetinal Imaging and Analysis · Digital Imaging for Blood Diseases · Imbalanced Data Classification Techniques
