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  5. DDCNN-F: double decker convolutional neural network 'F' feature fusion as a medical image classification framework

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Article
English
2024

DDCNN-F: double decker convolutional neural network 'F' feature fusion as a medical image classification framework

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English
2024
Scientific Reports
Vol 14 (1)
DOI: 10.1038/s41598-023-49721-x

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Amir Gandomi
Amir Gandomi

University of Techology Sdyney

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Nirmala Veeramani
Premaladha Jayaraman
R. Krishankumar
+2 more

Abstract

Melanoma is a severe skin cancer that involves abnormal cell development. This study aims to provide a new feature fusion framework for melanoma classification that includes a novel ‘F’ Flag feature for early detection. This novel ‘F’ indicator efficiently distinguishes benign skin lesions from malignant ones known as melanoma. The article proposes an architecture that is built in a Double Decker Convolutional Neural Network called DDCNN future fusion. The network's deck one, known as a Convolutional Neural Network (CNN), finds difficult-to-classify hairy images using a confidence factor termed the intra-class variance score. These hirsute image samples are combined to form a Baseline Separated Channel (BSC). By eliminating hair and using data augmentation techniques, the BSC is ready for analysis. The network's second deck trains the pre-processed BSC and generates bottleneck features. The bottleneck features are merged with features generated from the ABCDE clinical bio indicators to promote classification accuracy. Different types of classifiers are fed to the resulting hybrid fused features with the novel 'F' Flag feature. The proposed system was trained using the ISIC 2019 and ISIC 2020 datasets to assess its performance. The empirical findings expose that the DDCNN feature fusion strategy for exposing malignant melanoma achieved a specificity of 98.4%, accuracy of 93.75%, precision of 98.56%, and Area Under Curve (AUC) value of 0.98. This study proposes a novel approach that can accurately identify and diagnose fatal skin cancer and outperform other state-of-the-art techniques, which is attributed to the DDCNN ‘F’ Feature fusion framework. Also, this research ascertained improvements in several classifiers when utilising the ‘F’ indicator, resulting in the highest specificity of + 7.34%.

How to cite this publication

Nirmala Veeramani, Premaladha Jayaraman, R. Krishankumar, K. S. Ravichandran, Amir Gandomi (2024). DDCNN-F: double decker convolutional neural network 'F' feature fusion as a medical image classification framework. Scientific Reports, 14(1), DOI: 10.1038/s41598-023-49721-x.

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Publication Details

Type

Article

Year

2024

Authors

5

Datasets

0

Total Files

0

Language

English

Journal

Scientific Reports

DOI

10.1038/s41598-023-49721-x

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