Author:
Silver Frederick H.,Mesica Arielle,Gonzalez-Mercedes Michael,Deshmukh Tanmay
Abstract
In this pilot study, we used vibrational optical tomography (VOCT), along with machine learning, to evaluate the specificity and sensitivity of using light and audible sound to differentiate between normal skin and skin cancers. The results reported indicate that the use of machine learning, and the height and location of the VOCT mechanovibrational peaks, have potential for being used to noninvasively differentiate between normal skin and different cancerous lesions. VOCT data, along with machine learning, is shown to predict the differences between normal skin and different skin cancers with a sensitivity and specificity at rates between 78 and 90%. The sensitivity and specificity will be improved using a larger database and by using other AI techniques. Ultimately, VOCT data, visual inspection, and dermoscopy, in conjunction with machine learning, will be useful in telemedicine to noninvasively identify potentially malignant skin cancers in remote areas of the country where dermatologists are not readily available.
Reference25 articles.
1. American Academy of Dermatology Association Website (2021, September 07). Types of Skin Cancer. Available online: https://www.aad.org/public/diseases/skin-cancer/types/common.
2. Epidemiology of Skin Cancer: Update 2019;Leiter;Adv Exp Med Biol.,2020
3. Teledermatology for diagnosis and management of skin conditions. A systemic review;Warshaw;J. Am. Acad. Dermatol.,2011
4. Telemedicine in dermatology: Findings and experiences worldwide—A systematic literature review;Trettel;JEADV,2018
5. Applications of Telemedicine in Dermatology;Sud;Cureus,2022
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献