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利用人工智能转变皮肤质量评估:从主观评分到数据驱动的精准评估

Transforming Skin Quality Evaluation With AI: From Subjective Grading to Data-Driven Precision.

作者信息

Pooth Rainer, Sattler Sonja, Westerberg Frederic, Pavicic Tatjana, Kerscher Martina

机构信息

Clinical Research and Development, ICA Aesthetic Navigation GmbH, Frankfurt, Germany.

Rosenparkklinik GmbH, Darmstadt, Germany.

出版信息

J Cosmet Dermatol. 2025 Sep;24 Suppl 4(Suppl 4):e70371. doi: 10.1111/jocd.70371.

Abstract

BACKGROUND

Skin quality has a significant influence on aesthetic perception, yet its clinical evaluation remains subjective and inconsistent. Traditional assessments, such as visual grading and manual scoring, lack reproducibility and fail to capture subtle changes over time.

AIMS

To explore how artificial intelligence (AI) can transform skin quality evaluation by introducing objective, data-driven metrics that enhance precision, reproducibility, and personalization in aesthetic medicine.

METHODS

We conducted a narrative review of the literature on AI-based skin analysis tools and their role in quantifying key skin quality dimensions, including pigmentation, texture, elasticity, radiance, and erythema. Emphasis was placed on the use of standardized imaging, emergent perceptual categories (EPCs), and composite scoring systems designed to capture multidimensional aspects of skin quality.

RESULTS

AI tools enable the objective quantification of skin quality through high-dimensional image analysis, thereby reducing interobserver variability and supporting consistent evaluation across time points and populations. These systems facilitate longitudinal monitoring, tailored interventions, and patient-clinician communication. By integrating individual demographics and environmental variables, AI fosters equitable and personalized care. Regulatory and ethical considerations, such as data privacy and algorithmic bias, must be addressed to ensure the responsible implementation of these tools.

CONCLUSIONS

AI represents a paradigm shift in aesthetic dermatology, offering standardized and reproducible metrics for assessing and monitoring skin quality. When aligned with validated frameworks, such as the EPCs, AI supports improved treatment outcomes, patient satisfaction, and industry-wide standardization. Future progress depends on interdisciplinary collaboration, robust regulation, and inclusive data practices.

摘要

背景

皮肤质量对审美观念有重大影响,但其临床评估仍然主观且不一致。传统评估方法,如视觉分级和人工评分,缺乏可重复性,无法捕捉随时间的细微变化。

目的

探讨人工智能(AI)如何通过引入客观的、数据驱动的指标来改变皮肤质量评估,从而提高美容医学的精准度、可重复性和个性化程度。

方法

我们对基于人工智能的皮肤分析工具及其在量化关键皮肤质量维度(包括色素沉着、质地、弹性、光泽和红斑)方面的作用进行了叙述性文献综述。重点关注标准化成像、新兴感知类别(EPCs)以及旨在捕捉皮肤质量多维度方面的综合评分系统的应用。

结果

人工智能工具通过高维图像分析实现对皮肤质量的客观量化,从而减少观察者间的变异性,并支持在不同时间点和人群中进行一致的评估。这些系统有助于纵向监测、个性化干预以及医患沟通。通过整合个体人口统计学和环境变量,人工智能促进公平和个性化护理。必须解决数据隐私和算法偏差等监管和伦理问题,以确保这些工具的负责任实施。

结论

人工智能代表了美容皮肤科的范式转变,为评估和监测皮肤质量提供了标准化和可重复的指标。当与经过验证的框架(如EPCs)相结合时,人工智能有助于改善治疗效果、提高患者满意度并实现行业范围内的标准化。未来的进展取决于跨学科合作、强有力的监管以及包容性的数据实践。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9b43/12374569/1d978c9150a8/JOCD-24-e70371-g001.jpg

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