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人工智能在美容皮肤科的现状与未来

AI in Aesthetic/Cosmetic Dermatology: Current and Future.

作者信息

Thunga Sukruthi, Khan Marius, Cho Soo Ick, Na Jung Im, Yoo Jane

机构信息

New York University, New York, New York, USA.

Avisé Labs GmbH, Dortmund, Germany.

出版信息

J Cosmet Dermatol. 2025 Jan;24(1):e16640. doi: 10.1111/jocd.16640. Epub 2024 Nov 7.

DOI:10.1111/jocd.16640
PMID:39509562
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11743249/
Abstract

BACKGROUND

Recent advancements in artificial intelligence (AI) have significantly impacted dermatology, particularly in diagnosing skin diseases. However, aesthetic dermatology faces unique challenges due to subjective evaluations and the lack of standardized assessment methods.

AIMS

This review aims to explore the current state of AI in dermatology, evaluate its application in diagnosing skin conditions, and discuss the limitations of traditional evaluation methods in aesthetic dermatology. Additionally, the review proposes strategies for future integration of AI to address existing challenges.

METHODS

A comprehensive review of AI applications in dermatology was conducted, in both diagnostic and aesthetic fields. Traditional methods such as subjective surveys and hardware devices were analyzed and compared with emerging AI technologies. The limitations of current AI models were evaluated, and the need for standardized evaluation methods and diverse datasets was identified.

RESULTS

AI has shown great potential in diagnosing skin diseases, particularly skin cancer. However, in aesthetic dermatology, traditional methods remain subjective and lack standardization, therefore limiting their effectiveness. Emerging AI applications in this field show promise, but they have significant limitations due to biased datasets and inconsistent evaluation methods.

CONCLUSIONS

To develop the potential of AI in aesthetic dermatology, it is crucial to create standardized evaluation methods, collect diverse datasets reflecting various ethnicities and ages, and educate practitioners on AI's utility and limitations. Addressing these challenges will improve diagnostic accuracy, better patient outcomes, and help integrate AI effectively into clinical practice.

摘要

背景

人工智能(AI)的最新进展对皮肤病学产生了重大影响,尤其是在皮肤疾病的诊断方面。然而,由于主观评估以及缺乏标准化评估方法,美容皮肤病学面临着独特的挑战。

目的

本综述旨在探讨人工智能在皮肤病学中的现状,评估其在皮肤疾病诊断中的应用,并讨论传统评估方法在美容皮肤病学中的局限性。此外,本综述还提出了未来整合人工智能以应对现有挑战的策略。

方法

对人工智能在皮肤病学诊断和美容领域的应用进行了全面综述。分析并比较了主观调查和硬件设备等传统方法与新兴人工智能技术。评估了当前人工智能模型的局限性,并确定了对标准化评估方法和多样化数据集的需求。

结果

人工智能在诊断皮肤疾病,特别是皮肤癌方面显示出巨大潜力。然而,在美容皮肤病学中,传统方法仍然主观且缺乏标准化,因此限制了其有效性。该领域新兴的人工智能应用显示出前景,但由于数据集存在偏差和评估方法不一致,它们存在重大局限性。

结论

为了开发人工智能在美容皮肤病学中的潜力,创建标准化评估方法、收集反映不同种族和年龄的多样化数据集以及对从业者进行人工智能的效用和局限性方面的教育至关重要。应对这些挑战将提高诊断准确性、改善患者治疗效果,并有助于将人工智能有效地整合到临床实践中。