Skin Disease Prediction System

No Thumbnail Available

Date

2025-11-30

Journal Title

Journal ISSN

Volume Title

Publisher

Daffodil International University

Abstract

Skin cancer is becoming a serious health issue all over the world. If it is detected early, the chances of curing it are very high. However, in many places, it is difficult to find a skin specialist (dermatologist) quickly, and booking an appointment can take weeks or even months. This delay can sometimes be dangerous for the patient. To address this problem, I developed a Skin Disease Prediction System for my final year project. This system is a web-based application that uses Artificial Intelligence to identify skin diseases from images. For the core of the project, I used a Deep Learning model called EfficientNetB3. I chose this specific model because it offers high accuracy while being efficient enough to run on standard computers. I trained the model using the HAM10000 dataset, which contains thousands of examples of common skin lesions. For the application side, I built the backend using FastAPI because it is fast and easy to integrate with Python machine learning libraries. The system allows users to simply upload a photo of a skin lesion, and within seconds, it predicts the type of disease (such as Melanoma or Basal Cell Carcinoma) along with a confidence score. This project aims to serve as a helpful assistant for doctors to speed up their work and as a screening tool for general people to check their skin conditions at home.

Description

Project Report

Keywords

Skin disease classification, Medical image processing, Deep learning diagnosis system

Citation

SWT

Collections

Endorsement

Review

Supplemented By

Referenced By