Litcius/Paper detail

A Spitzoid Tumor dataset with clinical metadata and Whole Slide Images for Deep Learning models

Andrés Mosquera‐Zamudio, Laëtitia Launet, Rocío del Amor, Anaïs Moscardó, Adrián Colomer, Valery Naranjo, Carlos Monteagudo

2023Scientific Data12 citationsDOIOpen Access PDF

Abstract

Spitzoid tumors (ST) are a group of melanocytic tumors of high diagnostic complexity. Since 1948, when Sophie Spitz first described them, the diagnostic uncertainty remains until now, especially in the intermediate category known as Spitz tumor of unknown malignant potential (STUMP) or atypical Spitz tumor. Studies developing deep learning (DL) models to diagnose melanocytic tumors using whole slide imaging (WSI) are scarce, and few used ST for analysis, excluding STUMP. To address this gap, we introduce SOPHIE: the first ST dataset with WSIs, including labels as benign, malignant, and atypical tumors, along with the clinical information of each patient. Additionally, we explain two DL models implemented as validation examples using this database.

Topics & Concepts

Deep learningMetadataComputer scienceSpitz nevusArtificial intelligenceMedicineInformation retrievalMelanomaWorld Wide WebNevusCancer researchCutaneous Melanoma Detection and ManagementAI in cancer detectionmelanin and skin pigmentation