| Literature DB >> 34695413 |
Mercedes Sendín-Martín1, Manuel Lara-Caro1, Ucalene Harris2, Matthew Moronta2, Anthony Rossi2, Erica Lee2, Chih-Shan Jason Chen2, Kishwer Nehal2, Julián Conejo-Mir Sánchez3, José-Juan Pereyra-Rodríguez4, Manu Jain5.
Abstract
Ex vivo confocal microscopy (EVCM) generates digitally colored purple-pink images similar to H&E without time-consuming tissue processing. It can be used during Mohs surgery for rapid detection of basal cell carcinoma (BCC); however, reading EVCM images requires specialized training. An automated approach using a deep learning algorithm for BCC detection in EVCM images can aid in diagnosis. A total of 40 BCCs and 28 negative (not-BCC) samples were collected at Memorial Sloan Kettering Cancer Center to create three training datasets: (i) EVCM image dataset (663 images), (ii) H&E image dataset (516 images), and (iii) a combination of the two datasets. A total of seven BCCs and four negative samples were collected to create an EVCM test dataset (107 images). The model trained with the EVCM dataset achieved 92% diagnostic accuracy, similar to the H&E model (93%). The area under the receiver operator characteristic curve was 0.94, 0.95, and 0.94 for EVCM-, H&E-, and combination-trained models, respectively. We developed an algorithm for automatic BCC detection in EVCM images (comparable accuracy to dermatologists). This approach could be used to assist with BCC detection during Mohs surgery. Furthermore, we found that a model trained with only H&E images (which are more available than EVCM images) can accurately detect BCC in EVCM images.Entities:
Mesh:
Year: 2021 PMID: 34695413 PMCID: PMC9447468 DOI: 10.1016/j.jid.2021.09.029
Source DB: PubMed Journal: J Invest Dermatol ISSN: 0022-202X Impact factor: 7.590