Skin Lesion Analyser: An Efficient Seven-Way Multi-Class Skin Cancer Classification Using MobileNet
Saket S. Chaturvedi, Kajol Gupta, and Prakash. S. Prasad

TL;DR
This paper presents a fast, efficient seven-class skin cancer classification system using MobileNet, achieving high accuracy and deploying as a web app to assist clinical diagnosis and decision-making.
Contribution
It introduces a novel multi-class skin cancer classifier based on transfer learning with MobileNet, demonstrating performance comparable to dermatologists.
Findings
Achieved 83.1% categorical accuracy on HAM10000 dataset.
Top-3 accuracy reached 95.34%.
Model deployed as a publicly accessible web application.
Abstract
Skin cancer, a major form of cancer, is a critical public health problem with 123,000 newly diagnosed melanoma cases and between 2 and 3 million non-melanoma cases worldwide each year. The leading cause of skin cancer is high exposure of skin cells to UV radiation, which can damage the DNA inside skin cells leading to uncontrolled growth of skin cells. Skin cancer is primarily diagnosed visually employing clinical screening, a biopsy, dermoscopic analysis, and histopathological examination. It has been demonstrated that the dermoscopic analysis in the hands of inexperienced dermatologists may cause a reduction in diagnostic accuracy. Early detection and screening of skin cancer have the potential to reduce mortality and morbidity. Previous studies have shown Deep Learning ability to perform better than human experts in several visual recognition tasks. In this paper, we propose an…
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