Litcius/Paper detail

BCN20000: Dermoscopic Lesions in the Wild

Carlos Hernández-Pérez, Marc Combalia, Sebastián Podlipnik, Noel Codella, Veronica Rotemberg, Allan C. Halpern, Ofer Reiter, C. Carrera, Alicia Barreiro, Brian Helba, Susana Puig, Verónica Vilaplana, Josep Malvehy

2024Scientific Data175 citationsDOIOpen Access PDF

Abstract

Advancements in dermatological artificial intelligence research require high-quality and comprehensive datasets that mirror real-world clinical scenarios. We introduce a collection of 18,946 dermoscopic images spanning from 2010 to 2016, collated at the Hospital Clínic in Barcelona, Spain. The BCN20000 dataset aims to address the problem of unconstrained classification of dermoscopic images of skin cancer, including lesions in hard-to-diagnose locations such as those found in nails and mucosa, large lesions which do not fit in the aperture of the dermoscopy device, and hypo-pigmented lesions. Our dataset covers eight key diagnostic categories in dermoscopy, providing a diverse range of lesions for artificial intelligence model training. Furthermore, a ninth out-of-distribution (OOD) class is also present on the test set, comprised of lesions which could not be distinctively classified as any of the others. By providing a comprehensive collection of varied images, BCN20000 helps bridge the gap between the training data for machine learning models and the day-to-day practice of medical practitioners. Additionally, we present a set of baseline classifiers based on state-of-the-art neural networks, which can be extended by other researchers for further experimentation.

Topics & Concepts

Artificial intelligenceComputer scienceSkin lesionClass (philosophy)Data setTraining setArtificial neural networkMachine learningTest setSet (abstract data type)Pattern recognition (psychology)Medical physicsMedicinePathologyProgramming languageCutaneous Melanoma Detection and ManagementNonmelanoma Skin Cancer StudiesCutaneous lymphoproliferative disorders research