Affiliation:
1. Bharath Institute of Higher Education and Research, India
Abstract
This chapter approaches the crucial problem of accurate melanoma diagnosis by employing cutting-edge deep learning techniques. Globally, melanoma stands as the primary cause of newly diagnosed cancer cases, underscoring the importance of early detection. Given the constraints of current diagnostic techniques, this study presents an innovative, enhanced, and accurate methodology for evaluating the risk of melanoma. Diagnosing melanoma in its late stages would have catastrophic repercussions, which would require a paradigm shift in diagnostic approaches. The proposed methodology effectively differentiates benign from malignant tumors through the implementation of convolutional neural networks. The study's implications transcend the boundaries of academia, as it has the potential to significantly transform clinical practices and alleviate the workload of healthcare providers. When evaluated using a dataset comprising various dermatoscopic images, the model attains an exceptional accuracy rate exceeding 99%. This study represents a notable advancement in the application of deep learning techniques to enhance the diagnosis of melanoma, thereby demonstrating the potential ramifications of the model on healthcare systems worldwide.