Artificial Intelligence-Based Classification of Spitz Tumors
Ruben T. Lucassen, Marjanna Romers, Chiel F. Ebbelaar, Aia N. Najem, Donal P. Hayes, Antien L. Mooyaart, Sara Roshani, Liliane C. D. Wynaendts, Nikolas Stathonikos, Gerben E. Breimer, Anne M. L. Jansen, Mitko Veta, Willeke A. M. Blokx

TL;DR
This study developed AI models that effectively differentiate Spitz tumors from melanomas, predict genetic aberrations, and classify diagnostic categories, outperforming experienced pathologists and potentially improving pathology workflows.
Contribution
The paper introduces novel AI models that accurately classify Spitz tumors, predict genetic features, and outperform pathologists in diagnostic tasks.
Findings
AI model achieved AUROC of 0.95 in distinguishing tumor types
Genetic aberration prediction accuracy was 0.55
Diagnostic category prediction accuracy was 0.51
Abstract
Spitz tumors are diagnostically challenging due to overlap in atypical histological features with conventional melanomas. We investigated to what extent AI models, using histological and/or clinical features, can: (1) distinguish Spitz tumors from conventional melanomas; (2) predict the underlying genetic aberration of Spitz tumors; and (3) predict the diagnostic category of Spitz tumors. The AI models were developed and validated using a dataset of 393 Spitz tumors and 379 conventional melanomas. Predictive performance was measured using the AUROC and the accuracy. The performance of the AI models was compared with that of four experienced pathologists in a reader study. Moreover, a simulation experiment was conducted to investigate the impact of implementing AI-based recommendations for ancillary diagnostic testing on the workflow of the pathology department. The best AI model based…
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