Yu Kimberley, Syed Maha N, Bernardis Elena, Gelfand Joel M
Perelman School of Medicine at the University of Pennsylvania, Philadelphia, PA, USA.
Department of Dermatology, Perelman School of Medicine at the University of Pennsylvania, Philadelphia, PA, USA.
J Psoriasis Psoriatic Arthritis. 2020 Oct;5(4):147-159. doi: 10.1177/2475530320950267. Epub 2020 Aug 31.
Machine learning (ML), a subset of artificial intelligence (AI) that aims to teach machines to automatically learn tasks by inferring patterns from data, holds significant promise to aid psoriasis care. Applications include evaluation of skin images for screening and diagnosis as well as clinical management including treatment and complication prediction.
To summarize literature on ML applications to psoriasis evaluation and management and to discuss challenges and opportunities for future advances.
We searched MEDLINE, Google Scholar, ACM Digital Library, and IEEE Xplore for peer-reviewed publications published in English through December 1, 2019. Our search queries identified publications with any of the 10 computing-related keywords and "psoriasis" in the title and/or abstract.
Thirty-three studies were identified. Articles were organized by topic and synthesized as evaluation- or management-focused articles covering 5 content categories: (A) Evaluation using skin images: (1) identification and differential diagnosis of psoriasis lesions, (2) lesion segmentation, and (3) lesion severity and area scoring; (B) clinical management: (1) prediction of complications and (2) treatment.
Machine learning has significant potential to aid psoriasis evaluation and management. Current topics popular in ML research on psoriasis are the evaluation of medical images, prediction of complications, and treatment discovery. For patients to derive the greatest benefit from ML advancements, it is helpful for dermatologists to have an understanding of ML and how it can effectively aid their assessments and decision-making.
机器学习(ML)是人工智能(AI)的一个子集,旨在通过从数据中推断模式来教导机器自动学习任务,在辅助银屑病治疗方面具有巨大潜力。其应用包括用于筛查和诊断的皮肤图像评估以及包括治疗和并发症预测在内的临床管理。
总结关于机器学习在银屑病评估和管理中的应用的文献,并讨论未来进展的挑战和机遇。
我们在MEDLINE、谷歌学术、ACM数字图书馆和IEEE Xplore中搜索截至2019年12月1日以英文发表的同行评审出版物。我们的搜索查询确定了标题和/或摘要中包含10个与计算相关的关键词中的任何一个以及“银屑病”的出版物。
共识别出33项研究。文章按主题组织,并综合为以评估或管理为重点的文章,涵盖5个内容类别:(A)使用皮肤图像的评估:(1)银屑病皮损的识别和鉴别诊断,(2)皮损分割,以及(3)皮损严重程度和面积评分;(B)临床管理:(1)并发症预测和(2)治疗。
机器学习在辅助银屑病评估和管理方面具有巨大潜力。目前机器学习在银屑病研究中流行的主题是医学图像评估、并发症预测和治疗发现。为了让患者从机器学习的进展中获得最大益处,皮肤科医生了解机器学习及其如何有效地辅助他们的评估和决策是有帮助的。