Brooke Stephanian, Sabin Karki, Kirin Debnath, Mikhail Saltychev, Monica Rossi-Meyer, Cherian Kurian Kandathil, Sam P Most
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引用次数: 0
摘要
目的:分析为面部美容手术开发的人工智能(AI)和机器学习(ML)工具的质量:分析为面部美容手术开发的人工智能(AI)和机器学习(ML)工具的质量。数据来源:于 2024 年 2 月检索 Medline、Embase、CINAHL、Central、Scopus 和 Web of Science 数据库。研究选择:所有关于成人面部美容手术的原创研究均被纳入。不包括试验报告、病例报告、系列病例(n < 5)、会议论文集、信件(研究信件和简要报告除外)和社论。主要结果和衡量标准:采用人工智能和 ML 工具的面部美容手术,以衡量诊断准确性、预测结果、精准患者咨询方面的改进,以及采用这些工具的面部美容手术的范围。结果:在 494 项初步研究中,有 66 项纳入了定性分析。其中,42 项(63.6%)质量 "良好",20 项(30.3%)质量 "一般",4 项(6.1%)质量 "较差"。结论人工智能提高了诊断准确性、预测能力、患者咨询和面部美容手术治疗计划。
Role of Artificial Intelligence and Machine Learning in Facial Aesthetic Surgery: A Systematic Review.
Objective: To analyze the quality of artificial intelligence (AI) and machine learning (ML) tools developed for facial aesthetic surgery. Data Sources: Medline, Embase, CINAHL, Central, Scopus, and Web of Science databases were searched in February 2024. Study Selection: All original research in adults undergoing facial aesthetic surgery was included. Pilot reports, case reports, case series (n < 5), conference proceedings, letters (except research letters and brief reports), and editorials were excluded. Main Outcomes and Measures: Facial aesthetic surgery procedures employing AI and ML tools to measure improvements in diagnostic accuracy, predictive outcomes, precision patient counseling, and the scope of facial aesthetic surgery procedures where these tools have been implemented. Results: Out of 494 initial studies, 66 were included in the qualitative analysis. Of these, 42 (63.6%) were of "good" quality, 20 (30.3%) were of "fair" quality, and 4 (6.1%) were of "poor" quality. Conclusion: AI improves diagnostic accuracy, predictive capabilities, patient counseling, and facial aesthetic surgery treatment planning.