Evaluation of Artificial Intelligence-Assisted Diagnosis of Skin Neoplasms: A Single-Center, Paralleled, Unmasked, Randomized Controlled Trial

Han, Seung Seog; Kim, Young Jae; Moon, Ik Jun; Jung, Joon Min; Lee, Mi Young; Lee, Woo Jin; Won, Chong Hyun; Lee, Mi Woo; Kim, Seong Hwan; Navarrete-Dechent, Cristian; Chang, Sung Eun

Abstract

Trial design: This was a single-center, unmasked, paralleled, randomized controlled trial. Methods: A randomized trial was conducted in a tertiary care institute in South Korea to validate whether artificial intelligence (AI) could augment the accuracy of nonexpert physicians in the real-world settings, which included diverse outof-distribution conditions. Consecutive patients aged >19 years, having one or more skin lesions suspicious for skin cancer detected by either the patient or physician, were randomly allocated to four nondermatology trainees and four dermatology residents. The attending dermatologists examined the randomly allocated patients with (AI-assisted group) or without (unaided group) the real-time assistance of AI algorithm (https:// b2020.modelderm.com#world; convolutional neural networks; unmasked design) after simple randomization of the patients. Results: Using 576 consecutive cases (Fitzpatrick skin phototypes III or IV) with suspicious lesions out of the initial 603 recruitments, the accuracy of the AI-assisted group (n = 295, 53.9%) was found to be significantly higher than those of the unaided group (n = 281, 43.8%; P = 0.019). Whereas the augmentation was more significant from 54.7% (n = 150) to 30.7% (n = 138; P < 0.0001) in the nondermatology trainees who had the least experience in dermatology, it was not significant in the dermatology residents. The algorithm could help trainees in the AI-assisted group include more differential diagnoses than the unaided group (2.09 vs. 1.95 diagnoses; P = 0.0005). However, a 12.2% drop in Top-1 accuracy of the trainees was observed in cases in which all Top-3 predictions given by the algorithm were incorrect. Conclusions: The multiclass AI algorithm augmented the diagnostic accuracy of nonexpert physicians in dermatology.

Más información

Título según WOS: ID WOS:000843101100007 Not found in local WOS DB
Título de la Revista: JOURNAL OF INVESTIGATIVE DERMATOLOGY
Volumen: 142
Número: 9
Editorial: Elsevier Science Inc.
Fecha de publicación: 2022
Página de inicio: 2353
Página final: +
DOI:

10.1016/j.jid.2022.02.003

Notas: ISI