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Histologic Screening of Malignant Melanoma, Spitz, Dermal and Junctional Melanocytic Nevi Using a Deep Learning Model

Authors :
Alan N. Snyder
Dan Zhang
Steffen L. Dreesen
Christopher A. Baltimore
Dan R. Lopez-Garcia
Jake Y. Akers
Christopher L. Metts
James E. Madory
Peter D. Chang
Linda T. Doan
Dirk M. Elston
Manuel A. Valdebran
Feng Luo
Jessica A. Forcucci
Source :
The American Journal of dermatopathology. 44(9)
Publication Year :
2022

Abstract

The integration of an artificial intelligence tool into pathologists' workflow may lead to a more accurate and timely diagnosis of melanocytic lesions, directly patient care. The objective of this study was to create and evaluate the performance of such a model in achieving clinical-grade diagnoses of Spitz nevi, dermal and junctional melanocytic nevi, and melanomas.We created a beginner-level training environment by teaching our algorithm to perform cytologic inferences on 136,216 manually annotated tiles of hematoxylin and eosin-stained slides consisting of unequivocal melanocytic nevi, Spitz nevi, and invasive melanoma cases. We sequentially trained and tested our network to provide a final diagnosis-classification on 39 cases in total. Positive predictive value (precision) and sensitivity (recall) were used to measure our performance.The tile-classification algorithm predicted the 136,216 irrelevant, melanoma, melanocytic nevi, and Spitz nevi tiles at sensitivities of 96%, 93%, 94% and 73%, respectively. The final trained model was able to correctly classify and predict the correct diagnosis in 85.7% of unseen cases (n = 28), reporting at or near screening-level performances for precision and recall of melanoma (76.2%, 100.0%), melanocytic nevi (100.0%, 75.0%), and Spitz nevi (100.0%, 75.0%).Our pilot study proves that convolutional networks trained on cellular morphology to classify melanocytic proliferations can be used as a powerful tool to assist pathologists in screening for melanoma versus other benign lesions.

Details

ISSN :
15330311
Volume :
44
Issue :
9
Database :
OpenAIRE
Journal :
The American Journal of dermatopathology
Accession number :
edsair.doi.dedup.....4559cd1365316d755694293f58415ed5