An Image Dataset of Common Skin Diseases of Bangladesh and Benchmarking Performance with Machine Learning Models

arXiv cs.LG / 3/27/2026

💬 OpinionSignals & Early TrendsIdeas & Deep AnalysisModels & Research

Key Points

  • The study presents a publicly available image dataset for five common skin diseases in Bangladesh—Contact Dermatitis, Vitiligo, Eczema, Scabies, and Tinea Ringworm—addressing a shortage of dermatological expertise and diagnostic support.
  • The dataset includes 1,612 images collected from patients at the outpatient department of Faridpur Medical College in Bangladesh, with a breakdown across the five disease categories and a portion of images treated as distinct while others are augmented.
  • The research applies multiple machine learning and deep learning models to benchmark classification performance on the dataset.
  • The authors position the dataset as regionally collected but broadly relevant to global (especially South Asia) automated dermatology research and applications.
  • The work is intended to encourage further machine learning and deep learning development for automated skin disease detection from images.

Abstract

Skin diseases are a major public health concern worldwide, and their detection is often challenging without access to dermatological expertise. In countries like Bangladesh, which is highly populated, the number of qualified skin specialists and diagnostic instruments is insufficient to meet the demand. Due to the lack of proper detection and treatment of skin diseases, that may lead to severe health consequences including death. Common properties of skin diseases are, changing the color, texture, and pattern of skin and in this era of artificial intelligence and machine learning, we are able to detect skin diseases by using image processing and computer vision techniques. In response to this challenge, we develop a publicly available dataset focused on common skin disease detection using machine learning techniques. We focus on five prevalent skin diseases in Bangladesh: Contact Dermatitis, Vitiligo, Eczema, Scabies, and Tinea Ringworm. The dataset consists of 1612 images (of which, 250 are distinct while others are augmented), collected directly from patients at the outpatient department of Faridpur Medical College, Faridpur, Bangladesh. The data comprises of 302, 381, 301, 316, and 312 images of Dermatitis, Eczema, Scabies, Tinea Ringworm, and Vitiligo, respectively. Although the data are collected regionally, the selected diseases are common across many countries especially in South Asia, making the dataset potentially valuable for global applications in machine learning-based dermatology. We also apply several machine learning and deep learning models on the dataset and report classification performance. We expect that this research would garner attention from machine learning and deep learning researchers and practitioners working in the field of automated disease diagnosis.
広告