Clinical Utility of a Digital Dermoscopy Image-Based Artificial Intelligence Device in the Diagnosis and Management of Skin Cancer by Dermatologists

Alexander M. Witkowski, Joshua Burshtein, Michael Christopher, Clay Cockerell, Lilia Correa, David Cotter, Darrell L. Ellis, Aaron S. Farberg, Jane M. Grant-Kels, Teri M. Greiling, James M. Grichnik, Sancy A. Leachman, Anthony Linfante, Ashfaq Marghoob, Etan Marks, Khoa Nguyen, Alex G. Ortega-Loayza, Gyorgy Paragh, Giovanni Pellacani, Harold RabinovitzDarrell Rigel, Daniel M. Siegel, Eingun James Song, David Swanson, David Trask, Joanna Ludzik

Research output: Contribution to journalArticlepeer-review

Abstract

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.

Original languageEnglish (US)
Article number3592
JournalCancers
Volume16
Issue number21
DOIs
StatePublished - Nov 2024

Keywords

  • artificial intelligence
  • atypical nevi
  • basal cell carcinoma
  • convolutional neural network
  • dermatoscopy
  • dermoscopy
  • machine learning
  • melanoma
  • skin cancer
  • squamous cell carcinoma

ASJC Scopus subject areas

  • Oncology
  • Cancer Research

Fingerprint

Dive into the research topics of 'Clinical Utility of a Digital Dermoscopy Image-Based Artificial Intelligence Device in the Diagnosis and Management of Skin Cancer by Dermatologists'. Together they form a unique fingerprint.

Cite this