» Articles » PMID: 36900219

Computer-Aided Diagnosis of Melanoma Subtypes Using Reflectance Confocal Images

Overview
Journal Cancers (Basel)
Publisher MDPI
Specialty Oncology
Date 2023 Mar 11
PMID 36900219
Authors
Affiliations
Soon will be listed here.
Abstract

Lentigo maligna (LM) is an early form of pre-invasive melanoma that predominantly affects sun-exposed areas such as the face. LM is highly treatable when identified early but has an ill-defined clinical border and a high rate of recurrence. Atypical intraepidermal melanocytic proliferation (AIMP), also known as atypical melanocytic hyperplasia (AMH), is a histological description that indicates melanocytic proliferation with uncertain malignant potential. Clinically and histologically, AIMP can be difficult to distinguish from LM, and indeed AIMP may, in some cases, progress to LM. The early diagnosis and distinction of LM from AIMP are important since LM requires a definitive treatment. Reflectance confocal microscopy (RCM) is an imaging technique often used to investigate these lesions non-invasively, without biopsy. However, RCM equipment is often not readily available, nor is the associated expertise for RCM image interpretation easy to find. Here, we implemented a machine learning classifier using popular convolutional neural network (CNN) architectures and demonstrated that it could correctly classify lesions between LM and AIMP on biopsy-confirmed RCM image stacks. We identified local z-projection (LZP) as a recent fast approach for projecting a 3D image into 2D while preserving information and achieved high-accuracy machine classification with minimal computational requirements.

Citing Articles

Artificial Intelligence in the Non-Invasive Detection of Melanoma.

Mendi B, Kose K, Fleshner L, Adam R, Safai B, Farabi B Life (Basel). 2025; 14(12).

PMID: 39768310 PMC: 11678477. DOI: 10.3390/life14121602.

References
1.
Kassem M, Hosny K, Damasevicius R, Eltoukhy M . Machine Learning and Deep Learning Methods for Skin Lesion Classification and Diagnosis: A Systematic Review. Diagnostics (Basel). 2021; 11(8). PMC: 8391467. DOI: 10.3390/diagnostics11081390. View

2.
Kose K, Bozkurt A, Alessi-Fox C, Gill M, Longo C, Pellacani G . Segmentation of cellular patterns in confocal images of melanocytic lesions in vivo via a multiscale encoder-decoder network (MED-Net). Med Image Anal. 2020; 67:101841. PMC: 7885250. DOI: 10.1016/j.media.2020.101841. View

3.
Guitera P, Pellacani G, Crotty K, Scolyer R, Li L, Bassoli S . The impact of in vivo reflectance confocal microscopy on the diagnostic accuracy of lentigo maligna and equivocal pigmented and nonpigmented macules of the face. J Invest Dermatol. 2010; 130(8):2080-91. DOI: 10.1038/jid.2010.84. View

4.
Bozkurt A, Kose K, Coll-Font J, Alessi-Fox C, Brooks D, Dy J . Skin strata delineation in reflectance confocal microscopy images using recurrent convolutional networks with attention. Sci Rep. 2021; 11(1):12576. PMC: 8206415. DOI: 10.1038/s41598-021-90328-x. View

5.
Hoo Z, Candlish J, Teare D . What is an ROC curve?. Emerg Med J. 2017; 34(6):357-359. DOI: 10.1136/emermed-2017-206735. View