Melanoma Detection Using a Deep Learning Approach

Author:

Manzoor Sohail1,Qayyum Huma1,Hassan Farman1,Ullah Asad1,Nawaz Ali1,Rahman Auliya Ur1

Affiliation:

1. University of Engineering and technology Taxila

Abstract

Melanoma is a skin lesion disease; it is a skin cancer that is caused by uncontrolled growth in melanocytic tissues. Damaged cells can cause damage to nearby cells and consequently spreads cancer in other parts of the body. The aim of this research is the early detection of Melanoma disease, many researchers have already struggled and achieved success in detecting melanoma with different values for their evaluation parameters, they used different machine learning as well as deep learning approaches, and we applied deep learning approach for Melanoma detection, we used publicly available dataset for experimentation purpose. We applied deep learning algorithms ResNet50 and VGG16 for Melanoma detection; the accuracy, precision, recall, Jaccard index, and dice co-efficient of our proposed model are 92.3%, 93.3%, 90%, 9.98%, and 97.7%, respectively. Our proposed algorithm can be used to increase chances of survival for patients and can save the money which is used for diagnosis and treatment of Melanoma every year.

Publisher

50Sea

Subject

Computer Networks and Communications,Hardware and Architecture,Software

Reference21 articles.

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5. Setiawan, Agung W. "Image Segmentation Metrics in Skin Lesion: Accuracy, Sensitivity, Specificity, Dice Coefficient, Jaccard Index, and Matthews Correlation Coefficient." In 2020 International Conference on Computer Engineering, Network, and Intelligent Multimedia (CENIM), pp. 97-102. IEEE, 2020.

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