人工智能在皮肤病学中的应用:人工智能在皮肤病学:黑色素瘤和角质细胞癌诊断中的应用系统综述》。

IF 2.5 3区 医学 Q2 DERMATOLOGY Dermatologic Surgery Pub Date : 2024-09-01 Epub Date: 2024-05-09 DOI:10.1097/DSS.0000000000004223
Neil Jairath, Vartan Pahalyants, Rohan Shah, Jason Weed, John A Carucci, Maressa C Criscito
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引用次数: 0

摘要

背景:获得皮肤病治疗的机会有限,这可能会阻碍皮肤恶性肿瘤的早期发现和干预。人工智能(AI)在皮肤癌诊断中的作用可能会缓解潜在的护理差距:本系统综述旨在深入探讨已发表的人工智能算法,这些算法根据皮肤镜和宏观临床图像进行训练,用于诊断黑色素瘤、基底细胞癌和皮肤鳞状细胞癌(cSCC):根据《系统综述和元分析首选报告项目》指南,对2000年1月1日至2023年1月26日期间发表的同行评议文章进行了系统综述:在本次综述的 232 项研究中,人工智能检测肿瘤的总体准确率、灵敏度和特异性平均分别为 90%、87% 和 91%。随着时间的推移,模型的性能也在提高。尽管模型的表现似乎令人印象深刻,但外部验证的缺乏以及数据集中 cSCC 和有色人种皮肤的代表性有限,限制了当前模型的通用性。此外,在纳入综述的所有研究中,只有 12.9% 是皮肤科医生共同完成的。展望未来,当务之急是优先考虑数据报告的稳健性、数据收集的包容性以及跨学科合作,以确保开发出公平有效的人工智能工具。
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Artificial Intelligence in Dermatology: A Systematic Review of Its Applications in Melanoma and Keratinocyte Carcinoma Diagnosis.

Background: Limited access to dermatologic care may pose an obstacle to the early detection and intervention of cutaneous malignancies. The role of artificial intelligence (AI) in skin cancer diagnosis may alleviate potential care gaps.

Objective: The aim of this systematic review was to offer an in-depth exploration of published AI algorithms trained on dermoscopic and macroscopic clinical images for the diagnosis of melanoma, basal cell carcinoma, and cutaneous squamous cell carcinoma (cSCC).

Methods: Adhering to the Preferred Reporting Items for Systematic Reviews and Meta-Analysis guidelines, a systematic review was conducted on peer-reviewed articles published between January 1, 2000, and January 26, 2023.

Results and discussion: Among the 232 studies in this review, the overall accuracy, sensitivity, and specificity of AI for tumor detection averaged 90%, 87%, and 91%, respectively. Model performance improved with time. Despite seemingly impressive performance, the paucity of external validation and limited representation of cSCC and skin of color in the data sets limits the generalizability of the current models. In addition, dermatologists coauthored only 12.9% of all studies included in the review. Moving forward, it is imperative to prioritize robustness in data reporting, inclusivity in data collection, and interdisciplinary collaboration to ensure the development of equitable and effective AI tools.

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来源期刊
Dermatologic Surgery
Dermatologic Surgery 医学-皮肤病学
CiteScore
3.10
自引率
16.70%
发文量
547
期刊介绍: Exclusively devoted to dermatologic surgery, the Dermatologic Surgery journal publishes the most clinically comprehensive and up-to-date information in its field. This unique monthly journal provides today’s most expansive and in-depth coverage of cosmetic and reconstructive skin surgery and skin cancer through peer-reviewed original articles, extensive illustrations, case reports, ongoing features, literature reviews and correspondence. The journal provides information on the latest scientific information for all types of dermatologic surgery including: -Ambulatory phlebectomy- Blepharoplasty- Body contouring- Chemical peels- Cryosurgery- Curettage and desiccation- Dermabrasion- Excision and closure- Flap Surgery- Grafting- Hair restoration surgery- Injectable neuromodulators- Laser surgery- Liposuction- Microdermabrasion- Microlipoinjection- Micropigmentation- Mohs micrographic surgery- Nail surgery- Phlebology- Sclerotherapy- Skin cancer surgery- Skin resurfacing- Soft-tissue fillers. Dermatologists, dermatologic surgeons, plastic surgeons, oculoplastic surgeons and facial plastic surgeons consider this a must-read publication for anyone in the field.
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