TY - JOUR
T1 - Clinical Utility of a Digital Dermoscopy Image-Based Artificial Intelligence Device in the Diagnosis and Management of Skin Cancer by Dermatologists
AU - Witkowski, Alexander M.
AU - Burshtein, Joshua
AU - Christopher, Michael
AU - Cockerell, Clay
AU - Correa, Lilia
AU - Cotter, David
AU - Ellis, Darrell L.
AU - Farberg, Aaron S.
AU - Grant-Kels, Jane M.
AU - Greiling, Teri M.
AU - Grichnik, James M.
AU - Leachman, Sancy A.
AU - Linfante, Anthony
AU - Marghoob, Ashfaq
AU - Marks, Etan
AU - Nguyen, Khoa
AU - Ortega-Loayza, Alex G.
AU - Paragh, Gyorgy
AU - Pellacani, Giovanni
AU - Rabinovitz, Harold
AU - Rigel, Darrell
AU - Siegel, Daniel M.
AU - Song, Eingun James
AU - Swanson, David
AU - Trask, David
AU - Ludzik, Joanna
N1 - Publisher Copyright:
© 2024 by the authors.
PY - 2024/11
Y1 - 2024/11
N2 - Background: Patients with skin lesions suspicious for skin cancer or atypical melanocytic nevi of uncertain malignant potential often present to dermatologists, who may have variable dermoscopy triage clinical experience. Objective: To evaluate the clinical utility of a digital dermoscopy image-based artificial intelligence algorithm (DDI-AI device) on the diagnosis and management of skin cancers by dermatologists. Methods: Thirty-six United States board-certified dermatologists evaluated 50 clinical images and 50 digital dermoscopy images of the same skin lesions (25 malignant and 25 benign), first without and then with knowledge of the DDI-AI device output. Participants indicated whether they thought the lesion was likely benign (unremarkable) or malignant (suspicious). Results: The management sensitivity of dermatologists using the DDI-AI device was 91.1%, compared to 84.3% with DDI, and 70.0% with clinical images. The management specificity was 71.0%, compared to 68.4% and 64.9%, respectively. The diagnostic sensitivity of dermatologists using the DDI-AI device was 86.1%, compared to 78.8% with DDI, and 63.4% with clinical images. Diagnostic specificity using the DDI-AI device increased to 80.7%, compared to 75.9% and 73.6%, respectively. Conclusion: The use of the DDI-AI device may quickly, safely, and effectively improve dermoscopy performance, skin cancer diagnosis, and management when used by dermatologists, independent of training and experience.
AB - Background: Patients with skin lesions suspicious for skin cancer or atypical melanocytic nevi of uncertain malignant potential often present to dermatologists, who may have variable dermoscopy triage clinical experience. Objective: To evaluate the clinical utility of a digital dermoscopy image-based artificial intelligence algorithm (DDI-AI device) on the diagnosis and management of skin cancers by dermatologists. Methods: Thirty-six United States board-certified dermatologists evaluated 50 clinical images and 50 digital dermoscopy images of the same skin lesions (25 malignant and 25 benign), first without and then with knowledge of the DDI-AI device output. Participants indicated whether they thought the lesion was likely benign (unremarkable) or malignant (suspicious). Results: The management sensitivity of dermatologists using the DDI-AI device was 91.1%, compared to 84.3% with DDI, and 70.0% with clinical images. The management specificity was 71.0%, compared to 68.4% and 64.9%, respectively. The diagnostic sensitivity of dermatologists using the DDI-AI device was 86.1%, compared to 78.8% with DDI, and 63.4% with clinical images. Diagnostic specificity using the DDI-AI device increased to 80.7%, compared to 75.9% and 73.6%, respectively. Conclusion: The use of the DDI-AI device may quickly, safely, and effectively improve dermoscopy performance, skin cancer diagnosis, and management when used by dermatologists, independent of training and experience.
KW - artificial intelligence
KW - atypical nevi
KW - basal cell carcinoma
KW - convolutional neural network
KW - dermatoscopy
KW - dermoscopy
KW - machine learning
KW - melanoma
KW - skin cancer
KW - squamous cell carcinoma
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U2 - 10.3390/cancers16213592
DO - 10.3390/cancers16213592
M3 - Article
C2 - 39518033
AN - SCOPUS:85208361125
SN - 2072-6694
VL - 16
JO - Cancers
JF - Cancers
IS - 21
M1 - 3592
ER -