An Integrated Framework with Deep Learning for Segmentation and Classification of Cancer Disease

Dr. Hemanta Kumar, Bhuyan (2023) An Integrated Framework with Deep Learning for Segmentation and Classification of Cancer Disease. International Journal on Artificial Intelligence Tools, 32 (2). ISSN 0218-2130

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Abstract

This paper addresses radiologists' specific diagnosis of cancer disease effectively using integrated framework of deep learning model. Although several existing diagnosis systems have
been adopted by a physician, in few cases, it is not so practical to see the infected area from images in the normal eye. Thus, a fully integrated diagnosis framework for disease detection is proposed to find out the infected area from image using deep learning approaches in this paper. In this proposed
framework, various components are designed through deep learning approaches such as detection, segmentation, classification etc. based on mass region. The classification technique is used to classify the disease as either benign or malignant. The vital part of this framework is developed by
using a full resolution convolutional network (FrCN) that supports different stages of image processing, especially breast cancer disease. Different experimental evaluation is taken to perform on the accuracy, cross-validation tests, and the comparative testing. Since we have taken 4-fold evaluation, the FrCN performs with an average 98.7% Dice index, 97.8% TS/CSI coefficient, 99.1% overall accuracy, and 98.15% MCC. Our experiments demonstrated that the proposed diagnosis
system performs on the deep learning approaches at each segmentation stage and classification with good results

Item Type: Article
Subjects: AC Rearch Cluster
Depositing User: Unnamed user with email techsupport@mosys.org
Date Deposited: 21 Dec 2023 07:23
Last Modified: 21 Dec 2023 07:23
URI: https://ir.vignan.ac.in/id/eprint/617

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