Improving Diagnostic Performance on Small and Imbalanced Datasets Using Class-Based Input Image Composition
Hlali Azzeddine, Majid Ben Yakhlef, and Soulaiman El Hazzat

TL;DR
This paper presents Class-Based Image Composition, a novel data augmentation technique that fuses multiple images of the same class into composite images, significantly improving deep learning diagnostic accuracy on small, imbalanced datasets.
Contribution
The introduction of Composite Input Images (CoImg) for data augmentation enhances intra-class variance and information density, leading to improved model performance on imbalanced medical datasets.
Findings
Achieved 99.6% accuracy with the composite dataset
Significantly reduced false prediction rates
Demonstrated effectiveness on OCT retinal disease classification
Abstract
Small, imbalanced datasets and poor input image quality can lead to high false predictions rates with deep learning models. This paper introduces Class-Based Image Composition, an approach that allows us to reformulate training inputs through a fusion of multiple images of the same class into combined visual composites, named Composite Input Images (CoImg). That enhances the intra-class variance and improves the valuable information density per training sample and increases the ability of the model to distinguish between subtle disease patterns. Our method was evaluated on the Optical Coherence Tomography Dataset for Image-Based Deep Learning Methods (OCTDL) (Kulyabin et al., 2024), which contains 2,064 high-resolution optical coherence tomography (OCT) scans of the human retina, representing seven distinct diseases with a significant class imbalance. We constructed a perfectly…
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Taxonomy
TopicsRetinal Imaging and Analysis · Optical Coherence Tomography Applications · Retinal Diseases and Treatments
