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Ensemble Deep Learning Methods for Detecting Skin Cancer

Author

Listed:
  • Mahnoor Sardar

    (Department of Computer Science, Superior University, Lahore 54770, Pakistan)

  • Muhammad Majid Niazi

    (Department of Computer Science, Superior University, Lahore 54770, Pakistan)

  • Fawad Nasim

    (The Superior University Lahore)

Abstract

Skin cancer is a common and possibly fatal condition. Effective treatment results are greatly influenced by early identification. Deep learning (DP) algorithms have demonstrated encouraging outcomes in skin cancer detection computer-aided diagnostic systems. This article investigates the many forms of skin cancer, such as melanoma, basal cell carcinoma (BCC), and squamous cell carcinoma (SCC), and offers a system for detecting skin cancer utilizing convolutional neural network (CNN) approaches, particularly the multi-model ResNet (M-ResNet) architecture. We present a ResNet architecture that is capable of handling deep networks and has increased skin cancer detection performance. The proposed approach uses a thorough pipeline to find skin cancer. The dataset first goes through pre-processing (PP) procedures, such as picture resizing, normalization, and augmentation approaches, to improve the model's capacity for generalization. The multi-model assembles, leading to improved accuracy, sensitivity, and specificity in skin cancer LEARNING Classification SYSTEM (SC-LCS) tasks. In this study FINAL highlights, the effectiveness of deep learning (DL)techniques, specifically the multi-model ResNet architecture, AND skin cancer LEARNING classification SYSTEM (SC-LCS) for skin cancer detection. The suggested framework seems to have promising results in accurately identifying different types of skin cancer, assisting in diagnosis and therapy at an early stage. Further research and development in this field can potentially contribute to improving healthcare systems and reducing the global burden of skin cancer-related EFFECTED and DEATH RATE.

Suggested Citation

  • Mahnoor Sardar & Muhammad Majid Niazi & Fawad Nasim, 2024. "Ensemble Deep Learning Methods for Detecting Skin Cancer," Bulletin of Business and Economics (BBE), Research Foundation for Humanity (RFH), vol. 13(1), pages 673-682.
  • Handle: RePEc:rfh:bbejor:v:13:y:2024:i:1:p:673-682
    DOI: https://doi.org/10.61506/01.00254
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    References listed on IDEAS

    as
    1. Mehwish Dildar & Shumaila Akram & Muhammad Irfan & Hikmat Ullah Khan & Muhammad Ramzan & Abdur Rehman Mahmood & Soliman Ayed Alsaiari & Abdul Hakeem M Saeed & Mohammed Olaythah Alraddadi & Mater Husse, 2021. "Skin Cancer Detection: A Review Using Deep Learning Techniques," IJERPH, MDPI, vol. 18(10), pages 1-22, May.
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