Abstract
Melanoma is among the most devastating human malignancies. Accurate diagnosis and prognosis are essential to offer optimal treatment. Histopathology is the gold standard for establishing melanoma diagnosis and prognostic features. However, discrepancies often exist between pathologists, and analysis is costly and time-consuming. Deep-learning algorithms are deployed to improve melanoma diagnosis and prognostication from histological images of melanoma. In recent years, the development of these machine-learning tools has accelerated, and machine learning is poised to become a clinical tool to aid melanoma histology. Nevertheless, a review of the advances in machine learning in melanoma histology was lacking. We performed a comprehensive literature search to provide a complete overview of the recent advances in machine learning in the assessment of melanoma based on hematoxylin eosin digital pathology images. In our work, we review 37 recent publications, compare the methods and performance of the reviewed studies, and highlight the variety of promising machine-learning applications in melanoma histology.
Reference69 articles.
1. National Cancer Institute: Surveillance, Epidemiology, and End Results Program (2022, May 19). Cancer Stat Facts: Melanoma of the Skin, Available online: https://seer.cancer.gov/statfacts/html/melan.html.
2. Global Burden of Cutaneous Melanoma in 2020 and Projections to 2040;Arnold;JAMA Dermatol.,2022
3. Melanoma: Epidemiology, risk factors, pathogenesis, diagnosis and classification;Rastrelli;In Vivo,2014
4. Ultraviolet radiation-mediated development of cutaneous melanoma: An update;Emri;J. Photochem. Photobiol. B,2018
5. Cutaneous Melanoma-A Review in Detection, Staging, and Management;Hartman;Hematol. Oncol. Clin. N. Am.,2019
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