What is it about?

The research paper develops a deep learning model for classifying the various stages of EC and the premalignant stage, Barrett's Esophagus, from endoscopic images. The proposed model uses a multi-CNN model with Xception, Mobilenetv2, GoogLeNet, and Darknet53 for feature extraction. The extracted features are blended and are then applied to the wrapper-based Artificial Bee Colony (ABC) optimization technique to grade the most accurate and relevant attributes. A multi-class support vector machine classifies the selected feature set into various stages.

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Why is it important?

Esophageal cancer (EC) is an aggressive cancer with a high fatality rate, ranked sixth worldwide. There is a rapid rise in the incidence of EC globally, and early diagnosis is challenging for clinicians. The Convolution Neural Network (CNN) has a significant role in diagnosing EC. Almost all the pre-trained networks can be efficiently used in Computer-Aided Diagnosis (CAD) and classification of esophageal cancer.

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This page is a summary of: Ensembled CNN with artificial bee colony optimization method for esophageal cancer stage classification using SVM classifier, Journal of X-Ray Science and Technology Clinical Applications of Diagnosis and Therapeutics, February 2024, IOS Press,
DOI: 10.3233/xst-230111.
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