DERM12345: A Large, Multisource Dermatoscopic Skin Lesion Dataset with 38 Subclasses
- URL: http://arxiv.org/abs/2406.07426v1
- Date: Tue, 11 Jun 2024 16:27:32 GMT
- Title: DERM12345: A Large, Multisource Dermatoscopic Skin Lesion Dataset with 38 Subclasses
- Authors: Abdurrahim Yilmaz, Sirin Pekcan Yasar, Gulsum Gencoglan, Burak Temelkuran,
- Abstract summary: This study presents a diverse dataset comprising 12,345 dermatoscopic images with 38 subclasses of skin lesions collected in Turkiye.
This dataset distinguishes itself through a diverse structure with 5 super classes, 15 main classes, 38 subclasses and its 12,345 high-resolution dermatoscopic images.
- Score: 0.48212500317840945
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Skin lesion datasets provide essential information for understanding various skin conditions and developing effective diagnostic tools. They aid the artificial intelligence-based early detection of skin cancer, facilitate treatment planning, and contribute to medical education and research. Published large datasets have partially coverage the subclassifications of the skin lesions. This limitation highlights the need for more expansive and varied datasets to reduce false predictions and help improve the failure analysis for skin lesions. This study presents a diverse dataset comprising 12,345 dermatoscopic images with 38 subclasses of skin lesions collected in Turkiye which comprises different skin types in the transition zone between Europe and Asia. Each subgroup contains high-resolution photos and expert annotations, providing a strong and reliable basis for future research. The detailed analysis of each subgroup provided in this study facilitates targeted research endeavors and enhances the depth of understanding regarding the skin lesions. This dataset distinguishes itself through a diverse structure with 5 super classes, 15 main classes, 38 subclasses and its 12,345 high-resolution dermatoscopic images.
Related papers
- The iToBoS dataset: skin region images extracted from 3D total body photographs for lesion detection [0.35348820263620895]
iToBoS dataset includes 16,954 images of skin regions from 100 participants captured using 3D total body photography.
Each image roughly corresponds to a $7 times 9$ cm section of skin with all suspicious lesions annotated using bounding boxes.
This dataset aims to facilitate training and benchmarking of algorithms, with the goal of enabling early detection of skin cancer and deployment of this technology in non-clinical environments.
arXiv Detail & Related papers (2025-01-30T11:10:44Z) - An Attention-Guided Deep Learning Approach for Classifying 39 Skin Lesion Types [0.9467360130705921]
This study advances the field by curating a comprehensive and diverse dataset comprising 39 categories of skin lesions.
Five state-of-the-art deep learning models -- MobileNetV2, Xception, InceptionV3, EfficientNetB1, and Vision Transformer - are rigorously evaluated.
The Vision Transformer model integrated with CBAM outperforms others, achieving an accuracy of 93.46%, precision of 94%, recall of 93%, F1-score of 93%, and specificity of 93.67%.
arXiv Detail & Related papers (2025-01-10T14:25:01Z) - FairSkin: Fair Diffusion for Skin Disease Image Generation [54.29840149709033]
Diffusion Model (DM) has become a leading method in generating synthetic medical images, but it suffers from a critical twofold bias.
We propose FairSkin, a novel DM framework that mitigates these biases through a three-level resampling mechanism.
Our approach significantly improves the diversity and quality of generated images, contributing to more equitable skin disease detection in clinical settings.
arXiv Detail & Related papers (2024-10-29T21:37:03Z) - Equitable Skin Disease Prediction Using Transfer Learning and Domain Adaptation [1.9505972437091028]
Existing artificial intelligence (AI) models in dermatology face challenges in accurately diagnosing diseases across diverse skin tones.
We employ a transfer-learning approach that capitalizes on the rich, transferable knowledge from various image domains.
Among all methods, Med-ViT emerged as the top performer due to its comprehensive feature representation learned from diverse image sources.
arXiv Detail & Related papers (2024-09-01T23:48:26Z) - Optimizing Skin Lesion Classification via Multimodal Data and Auxiliary
Task Integration [54.76511683427566]
This research introduces a novel multimodal method for classifying skin lesions, integrating smartphone-captured images with essential clinical and demographic information.
A distinctive aspect of this method is the integration of an auxiliary task focused on super-resolution image prediction.
The experimental evaluations have been conducted using the PAD-UFES20 dataset, applying various deep-learning architectures.
arXiv Detail & Related papers (2024-02-16T05:16:20Z) - DDI-CoCo: A Dataset For Understanding The Effect Of Color Contrast In
Machine-Assisted Skin Disease Detection [51.92255321684027]
We study the interaction between skin tone and color difference effects and suggest that color difference can be an additional reason behind model performance bias between skin tones.
Our work provides a complementary angle to dermatology AI for improving skin disease detection.
arXiv Detail & Related papers (2024-01-24T07:45:24Z) - Multi-task Explainable Skin Lesion Classification [54.76511683427566]
We propose a few-shot-based approach for skin lesions that generalizes well with few labelled data.
The proposed approach comprises a fusion of a segmentation network that acts as an attention module and classification network.
arXiv Detail & Related papers (2023-10-11T05:49:47Z) - A Survey on Deep Learning for Skin Lesion Segmentation [32.523358996420846]
Skin cancer is a major public health problem that could benefit from computer-aided diagnosis to reduce the burden of this common disease.
Skin lesion segmentation from images is an important step toward achieving this goal.
The presence of natural and artificial artifacts (e.g., hair and air bubbles), intrinsic factors (e.g., lesion shape and contrast), and variations in image acquisition conditions make skin lesion segmentation a challenging task.
arXiv Detail & Related papers (2022-06-01T09:43:10Z) - Relational Subsets Knowledge Distillation for Long-tailed Retinal
Diseases Recognition [65.77962788209103]
We propose class subset learning by dividing the long-tailed data into multiple class subsets according to prior knowledge.
It enforces the model to focus on learning the subset-specific knowledge.
The proposed framework proved to be effective for the long-tailed retinal diseases recognition task.
arXiv Detail & Related papers (2021-04-22T13:39:33Z) - Deep Mining External Imperfect Data for Chest X-ray Disease Screening [57.40329813850719]
We argue that incorporating an external CXR dataset leads to imperfect training data, which raises the challenges.
We formulate the multi-label disease classification problem as weighted independent binary tasks according to the categories.
Our framework simultaneously models and tackles the domain and label discrepancies, enabling superior knowledge mining ability.
arXiv Detail & Related papers (2020-06-06T06:48:40Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.