Explainable AI: Comparative Analysis of Normal and Dilated ResNet Models for Fundus Disease Classification
P.N.Karthikayan, Yoga Sri Varshan V, Hitesh Gupta Kattamuri, Umarani, Jayaraman

TL;DR
This paper compares normal and dilated ResNet models for retinal disease classification, demonstrating that dilated ResNet improves accuracy and transparency in AI-based diagnosis using the ODIR dataset.
Contribution
It introduces dilated ResNet models for fundus disease classification and evaluates their performance against normal ResNet models, emphasizing explainability and efficiency.
Findings
Dilated ResNet achieves higher F1 scores than normal ResNet.
Dilated ResNet enhances receptive field and classification accuracy.
Models show promising results on the ODIR dataset.
Abstract
This paper presents dilated Residual Network (ResNet) models for disease classification from retinal fundus images. Dilated convolution filters are used to replace normal convolution filters in the higher layers of the ResNet model (dilated ResNet) in order to improve the receptive field compared to the normal ResNet model for disease classification. This study introduces computer-assisted diagnostic tools that employ deep learning, enhanced with explainable AI techniques. These techniques aim to make the tool's decision-making process transparent, thereby enabling medical professionals to understand and trust the AI's diagnostic decision. They are particularly relevant in today's healthcare landscape, where there is a growing demand for transparency in AI applications to ensure their reliability and ethical use. The dilated ResNet is used as a replacement for the normal ResNet to…
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Taxonomy
TopicsRetinal Imaging and Analysis
MethodsAverage Pooling · Max Pooling · Dilated Convolution · Global Average Pooling · Kaiming Initialization · Convolution
