An efficient approach to detect melanoma skin cancer using a custom CNN model
Abstract
Despite only making up 1% of all occurrences of skin cancer, melanoma is one of the
most prevalent forms to cause fatalities in recent years. Melanoma has a survival
rate of more than 50% from the early stages to the end. To survive this type of
cancer, it is essential to identify lesions on the skin early and to keep an eye out for
any complications. If skin cancer is not detected and treated early, it is among the
most fatal cancers. Of the skin cancers, which are among the deadliest, melanoma
is the most unexpected. Like most other diseases, melanoma may be treatable if
caught early enough. Due to the high cost of having a dermatologist screen every
patient and the difficulty of human judgment, an automated system for melanoma
diagnosis is required. Due to its promising pattern recognition skills, Convolutional
Neural Network (CNN) models have recently gained a lot of interest in medical
imaging. Melanoma diagnosis from dermoscopic skin samples automatically is a
difficult task. In contrast to other types, melanoma ranks as the most serious type
of skin cancer. However, those who are diagnosed early on have a better prognosis; several methods of spontaneous melanoma recognition and diagnosis have been
researched by different researchers for the objective of providing a supplementary
opinion to professionals. Building models using existing data has proven problem-
atic due to the imbalance between classes. However, these issues may be solved by
implementing a deep learning approach as a machine vision tool. The purpose of the
current study was to determine how well dermoscopy and deep learning classified
melanoma. In this paper, we introduce a brand-new deep learning model that was
created to categorize melanoma skin cancer. And we have compared the result of
our suggested model with pre-trained VGG16, VGG19, and AlexNet. According to
experimental data, we discovered that our model worked well and could accurately
categorize melanoma skin cancer. Also, the proposed system is competitive in the
area of melanoma detection and superior in terms of accuracy and can be employed
in the clinical decision-making procedure for melanoma skin cancer early detection.