A Study and Analysis on Diagnosis of Melanoma Cancer With Deep Learning

Author:

Reddy P. Yashashwini1ORCID,Kumar Reddy C. Kishor1,Sithole Natassia Thandiwe2ORCID

Affiliation:

1. Stanley College of Engineering and Technology for Women, India

2. University of Johannesburg, South Africa

Abstract

The riskiest type of skin cancer is known as melanoma cancer, with more than millions of human populations identifying with this type in the last two decades around the world. Swift spreading nature to other areas of the body makes this type of cancer the most hazardous cancer among all other skin cancers. It can be reversed if identified at its primary stage, else chances of survival would be less if it is identified in its severe stage. There are several conventional methods to identify melanoma at primary stage performed by skin doctors, but there are a few limitations. To overcome the setbacks of conventional methods, artificial intelligence has been introduced to detect melanoma cancer. The application of concepts of artificial intelligence (AI) made a good enhancement in the field of medicine. A deep learning algorithm termed CNN is highly opted in melanoma detection as it shows appropriate outcomes.

Publisher

IGI Global

Reference37 articles.

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