Integrating Non-Linear Radon Transformation for Diabetic Retinopathy Grading
Journal:
arXiv
Published Date:
Apr 22, 2025
Abstract
Diabetic retinopathy is a serious ocular complication that poses a
significant threat to patients' vision and overall health. Early detection and
accurate grading are essential to prevent vision loss. Current automatic
grading methods rely heavily on deep learning applied to retinal fundus images,
but the complex, irregular patterns of lesions in these images, which vary in
shape and distribution, make it difficult to capture subtle changes. This study
introduces RadFuse, a multi-representation deep learning framework that
integrates non-linear RadEx-transformed sinogram images with traditional fundus
images to enhance diabetic retinopathy detection and grading. Our RadEx
transformation, an optimized non-linear extension of the Radon transform,
generates sinogram representations to capture complex retinal lesion patterns.
By leveraging both spatial and transformed domain information, RadFuse enriches
the feature set available to deep learning models, improving the
differentiation of severity levels. We conducted extensive experiments on two
benchmark datasets, APTOS-2019 and DDR, using three convolutional neural
networks (CNNs): ResNeXt-50, MobileNetV2, and VGG19. RadFuse showed significant
improvements over fundus-image-only models across all three CNN architectures
and outperformed state-of-the-art methods on both datasets. For severity
grading across five stages, RadFuse achieved a quadratic weighted kappa of
93.24%, an accuracy of 87.07%, and an F1-score of 87.17%. In binary
classification between healthy and diabetic retinopathy cases, the method
reached an accuracy of 99.09%, precision of 98.58%, and recall of 99.6%,
surpassing previously established models. These results demonstrate RadFuse's
capacity to capture complex non-linear features, advancing diabetic retinopathy
classification and promoting the integration of advanced mathematical
transforms in medical image analysis.