RvXmBlendNet: A Multi-architecture Hybrid Model for Improved Skin Cancer Detection

Abstract Skin cancer, one of the most dangerous cancers, poses a significant global threat. While early detection can substantially improve survival rates, traditional dermatologists often face challenges in accurate diagnosis, leading to delays in treatment and avoidable fatalities. Deep learning m...

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Main Authors: Farida Siddiqi Prity, Ahmed Jabid Hasan, Md Mehedi Hassan Anik, Rakib Hossain, Md. Maruf Hossain, Sazzad Hossain Bhuiyan, Md. Ariful Islam, Md Tousif Hasan Lavlu
Format: Article
Language:English
Published: Springer Nature 2024-09-01
Series:Human-Centric Intelligent Systems
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Online Access:https://doi.org/10.1007/s44230-024-00083-1
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author Farida Siddiqi Prity
Ahmed Jabid Hasan
Md Mehedi Hassan Anik
Rakib Hossain
Md. Maruf Hossain
Sazzad Hossain Bhuiyan
Md. Ariful Islam
Md Tousif Hasan Lavlu
author_facet Farida Siddiqi Prity
Ahmed Jabid Hasan
Md Mehedi Hassan Anik
Rakib Hossain
Md. Maruf Hossain
Sazzad Hossain Bhuiyan
Md. Ariful Islam
Md Tousif Hasan Lavlu
author_sort Farida Siddiqi Prity
collection DOAJ
description Abstract Skin cancer, one of the most dangerous cancers, poses a significant global threat. While early detection can substantially improve survival rates, traditional dermatologists often face challenges in accurate diagnosis, leading to delays in treatment and avoidable fatalities. Deep learning models like CNN and transfer learning have enhanced diagnosis from dermoscopic images, providing precise and timely detection. However, despite the progress made with hybrid models, many existing approaches still face challenges, such as limited generalization across diverse datasets, vulnerability to overfitting, and difficulty in capturing complex patterns. As a result, there is a growing need for more robust and effective hybrid models that integrate multiple architectures and advanced mechanisms to address these challenges. Therefore, this study aims to introduce a novel multi-architecture hybrid deep learning model called "RvXmBlendNet," which combines the strengths of four individual models: ResNet50 (R), VGG19 (v), Xception (X), and MobileNet (m), followed by "BlendNet" to signify their fusion into a unified architecture. The integration of these models is achieved through a synergistic combination of architectures, incorporating self-attention mechanisms using attention layers and adaptive content blocks. This study used the HAM10000 dataset to refine dermoscopic image preprocessing and enhance deep learning model accuracy. Techniques like OpenCV-based hair removal, min–max scaling, and adaptive histogram equalization were employed to improve image quality and feature extraction. A comparative study between the proposed hybrid "RvXmBlendNet" and individual models (CNN, ResNet50, VGG19, Xception, and MobileNet) demonstrated that "RvXmBlendNet" achieved the highest accuracy of 98.26%, surpassing other models. These results suggest that the system can facilitate earlier interventions, improve patient outcomes, and potentially lower healthcare costs by reducing the need for invasive diagnostic procedures.
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institution Kabale University
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spelling doaj-art-5e057f1c06ec407dbcf480111f6480652025-01-12T12:26:39ZengSpringer NatureHuman-Centric Intelligent Systems2667-13362024-09-014454557010.1007/s44230-024-00083-1RvXmBlendNet: A Multi-architecture Hybrid Model for Improved Skin Cancer DetectionFarida Siddiqi Prity0Ahmed Jabid Hasan1Md Mehedi Hassan Anik2Rakib Hossain3Md. Maruf Hossain4Sazzad Hossain Bhuiyan5Md. Ariful Islam6Md Tousif Hasan Lavlu7Department of Computer Science and Engineering, Shanto-Mariam University of Creative TechnologyDepartment of Computer Science and Engineering, Shanto-Mariam University of Creative TechnologyDepartment of Computer Science and Engineering, Shanto-Mariam University of Creative TechnologyDepartment of Computer Science and Engineering, Shanto-Mariam University of Creative TechnologyDepartment of Computer Science and Engineering, Shanto-Mariam University of Creative TechnologyDepartment of Computer Science and Engineering, Shanto-Mariam University of Creative TechnologyDepartment of Computer Science and Engineering, Shanto-Mariam University of Creative TechnologyDepartment of Computer Science and Engineering, Shanto-Mariam University of Creative TechnologyAbstract Skin cancer, one of the most dangerous cancers, poses a significant global threat. While early detection can substantially improve survival rates, traditional dermatologists often face challenges in accurate diagnosis, leading to delays in treatment and avoidable fatalities. Deep learning models like CNN and transfer learning have enhanced diagnosis from dermoscopic images, providing precise and timely detection. However, despite the progress made with hybrid models, many existing approaches still face challenges, such as limited generalization across diverse datasets, vulnerability to overfitting, and difficulty in capturing complex patterns. As a result, there is a growing need for more robust and effective hybrid models that integrate multiple architectures and advanced mechanisms to address these challenges. Therefore, this study aims to introduce a novel multi-architecture hybrid deep learning model called "RvXmBlendNet," which combines the strengths of four individual models: ResNet50 (R), VGG19 (v), Xception (X), and MobileNet (m), followed by "BlendNet" to signify their fusion into a unified architecture. The integration of these models is achieved through a synergistic combination of architectures, incorporating self-attention mechanisms using attention layers and adaptive content blocks. This study used the HAM10000 dataset to refine dermoscopic image preprocessing and enhance deep learning model accuracy. Techniques like OpenCV-based hair removal, min–max scaling, and adaptive histogram equalization were employed to improve image quality and feature extraction. A comparative study between the proposed hybrid "RvXmBlendNet" and individual models (CNN, ResNet50, VGG19, Xception, and MobileNet) demonstrated that "RvXmBlendNet" achieved the highest accuracy of 98.26%, surpassing other models. These results suggest that the system can facilitate earlier interventions, improve patient outcomes, and potentially lower healthcare costs by reducing the need for invasive diagnostic procedures.https://doi.org/10.1007/s44230-024-00083-1Skin cancerDermatologyDeep learningConvolutional neural networksHybrid models
spellingShingle Farida Siddiqi Prity
Ahmed Jabid Hasan
Md Mehedi Hassan Anik
Rakib Hossain
Md. Maruf Hossain
Sazzad Hossain Bhuiyan
Md. Ariful Islam
Md Tousif Hasan Lavlu
RvXmBlendNet: A Multi-architecture Hybrid Model for Improved Skin Cancer Detection
Human-Centric Intelligent Systems
Skin cancer
Dermatology
Deep learning
Convolutional neural networks
Hybrid models
title RvXmBlendNet: A Multi-architecture Hybrid Model for Improved Skin Cancer Detection
title_full RvXmBlendNet: A Multi-architecture Hybrid Model for Improved Skin Cancer Detection
title_fullStr RvXmBlendNet: A Multi-architecture Hybrid Model for Improved Skin Cancer Detection
title_full_unstemmed RvXmBlendNet: A Multi-architecture Hybrid Model for Improved Skin Cancer Detection
title_short RvXmBlendNet: A Multi-architecture Hybrid Model for Improved Skin Cancer Detection
title_sort rvxmblendnet a multi architecture hybrid model for improved skin cancer detection
topic Skin cancer
Dermatology
Deep learning
Convolutional neural networks
Hybrid models
url https://doi.org/10.1007/s44230-024-00083-1
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