Artificial intelligence in the non-invasive detection of melanoma Review


Authors: İsmail Mendi, B.; Kose, K.; Fleshner, L.; Adam, R.; Safai, B.; Farabi, B.; Atak, M. F.
Review Title: Artificial intelligence in the non-invasive detection of melanoma
Abstract: Skin cancer is one of the most prevalent cancers worldwide, with increasing incidence. Skin cancer is typically classified as melanoma or non-melanoma skin cancer. Although melanoma is less common than basal or squamous cell carcinomas, it is the deadliest form of cancer, with nearly 8300 Americans expected to die from it each year. Biopsies are currently the gold standard in diagnosing melanoma; however, they can be invasive, expensive, and inaccessible to lower-income individuals. Currently, suspicious lesions are triaged with image-based technologies, such as dermoscopy and confocal microscopy. While these techniques are useful, there is wide inter-user variability and minimal training for dermatology residents on how to properly use these devices. The use of artificial intelligence (AI)-based technologies in dermatology has emerged in recent years to assist in the diagnosis of melanoma that may be more accessible to all patients and more accurate than current methods of screening. This review explores the current status of the application of AI-based algorithms in the detection of melanoma, underscoring its potential to aid dermatologists in clinical practice. We specifically focus on AI application in clinical imaging, dermoscopic evaluation, algorithms that can distinguish melanoma from non-melanoma skin cancers, and in vivo skin imaging devices. © 2024 by the authors.
Keywords: diagnostic accuracy; melanoma; dermoscopy; reflectance confocal microscopy; skin cancer; algorithms; artificial intelligence; optical coherence tomography; non-invasive skin imaging; skin cancer detection
Journal Title: Life
Volume: 14
Issue: 12
ISSN: 2075-1729
Publisher: MDPI AG  
Date Published: 2024-12-01
Start Page: 1602
Language: English
DOI: 10.3390/life14121602
PROVIDER: scopus
PMCID: PMC11678477
PUBMED: 39768310
DOI/URL:
Notes: The MSK Cancer Center Support Grant (P30 CA008748) is acknowledged in the PubMed record and PDF.
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  1. Kivanc Kose
    81 Kose