DCAF-Net: An Interpretable Dual-Pathway Deep Learning Framework for Accurate Gastrointestinal Endoscopic Image Classification

Published: 4 February 2026| Version 1 | DOI: 10.17632/r3kfd7297m.1
Contributor:
Omar Alomair

Description

Gastrointestinal (GI) diseases such as colorectal cancer and inflammatory bowel disease, contribute substantially to global morbidity with colorectal cancer accounting for nearly 10% of all cancer diagnoses worldwide. This study aimed to develop and validate an interpretable, multi-model deep learning framework for accurate and generalizable classification of endoscopic images across eight clinically relevant GI categories. Deep features were fused using a Dual Context Attentive Feature Network (DCAF-Net) and optimized via the Aquila Optimizer without retraining. Multiple machine learning classifiers were evaluated. Performance was assessed using accuracy, precision, recall, F1-score, ROC analysis and statistical testing. Interpretability was examined using Grad-CAM++ and SHAP. The proposed framework offers a reliable, interpretable, and clinically applicable solution for AI-assisted GI disease classification, supporting real-world endoscopic deployment.

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Artificial Intelligence, Gastrointestinal Disorder, Machine Learning, Colorectal Cancer, Endoscopy, Convolutional Neural Network

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