IMA++: ISIC Archive Multi-Annotator Dermoscopic Skin Lesion Segmentation Dataset
Abstract
A large-scale public multi-annotator skin lesion segmentation dataset is introduced with extensive metadata for annotator analysis and consensus modeling.
Multi-annotator medical image segmentation is an important research problem, but requires annotated datasets that are expensive to collect. Dermoscopic skin lesion imaging allows human experts and AI systems to observe morphological structures otherwise not discernable from regular clinical photographs. However, currently there are no large-scale publicly available multi-annotator skin lesion segmentation (SLS) datasets with annotator-labels for dermoscopic skin lesion imaging. We introduce ISIC MultiAnnot++, a large public multi-annotator skin lesion segmentation dataset for images from the ISIC Archive. The final dataset contains 17,684 segmentation masks spanning 14,967 dermoscopic images, where 2,394 dermoscopic images have 2-5 segmentations per image, making it the largest publicly available SLS dataset. Further, metadata about the segmentation, including the annotators' skill level and segmentation tool, is included, enabling research on topics such as annotator-specific preference modeling for segmentation and annotator metadata analysis. We provide an analysis on the characteristics of this dataset, curated data partitions, and consensus segmentation masks.
Community
✨ The largest publicly available dermoscopic skin lesion segmentation dataset with 17,684 segmentation masks spanning 14,967 dermoscopic images, where 2,394 dermoscopic images have 2-5 segmentations per image.
✨ 16 unique annotators, 3 different tools used, and 2 skill levels of the manual reviewer.
✨ Contains consensus masks for the 2,394 images that have multi-annotator segmentations (2-5 segmentations per image).
✨ Collected and curated from the ISIC Archive.
arXiv lens breakdown of this paper 👉 https://arxivlens.com/PaperView/Details/ima-isic-archive-multi-annotator-dermoscopic-skin-lesion-segmentation-dataset-5836-fbf71f0b
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