| Literature DB >> 35038383 |
Katherine M Stiff1, Matthew J Franklin1, Yufei Zhou2, Anant Madabhushi2, Thomas J Knackstedt1,3.
Abstract
Melanoma detection, prognosis, and treatment represent challenging and complex areas of cutaneous oncology with considerable impact on patient outcomes and healthcare economics. Artificial intelligence (AI) applications in these tasks are rapidly developing. Neural networks with increasing levels of sophistication are being implemented in clinical image, dermoscopic image, and histopathologic specimen classification of pigmented lesions. These efforts hold promise of earlier and highly accurate melanoma detection, as well as reliable prognostication and prediction of therapeutic response. Herein, we provide a brief introduction to AI, discuss contemporary investigational applications of AI in melanoma, and summarize challenges encountered with AI.Entities:
Keywords: artificial intelligence; melanoma; pigmented lesions
Mesh:
Year: 2022 PMID: 35038383 DOI: 10.1111/pcmr.13027
Source DB: PubMed Journal: Pigment Cell Melanoma Res ISSN: 1755-1471 Impact factor: 4.693