人工智能在整容手术中的应用:虚拟腹部整形术和丰臀术的新视角。

Eplasty Pub Date : 2025-01-23 eCollection Date: 2025-01-01
Arsany Yassa, Arya A Akhavan, Solina Ayad, Olivia Ayad
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引用次数: 0

摘要

背景:在线前后对比照片通常指导患者对身体轮廓手术的期望。然而,最近的人工智能(AI)进步允许假想个体的逼真“照片”,患者可以在他们的决策中使用这些照片。在不同的图像集上训练的人工智能模型在显示真实人物、美容缺陷和手术结果方面的准确性值得怀疑。本研究旨在评估这些图像的质量。方法:利用人工智能平台GetIMG、Leonardo和Perchance为腹部成形术和丰臀术创建术前和术后视觉效果。专家委员会认证的整形外科医生和整形外科住院医师评估了11项标准,重点是真实感和临床价值。数据分析采用方差分析(ANOVA)和显著性差异(Tukey)事后检验。结果:人工智能模型的真实感和临床价值评分(平均值±标准差)差异无统计学意义,具有可比性(GetIMG 3.83±0.81,Leonardo 3.30±0.69,Perchance 2.68±0.77;P < 0.05)。可能在大小和体积准确性(P = 0.02)和病理特征识别(P = 0.01和0.03)方面明显落后。评估时没有确定一致的表现不佳的指标。还发现了“恐怖谷”现象。结论:尽管有一些现实和准确的手术预测,但大多数人工智能生成的图像在解剖学上是不真实的,显示了不准确的术后结果,并引发了“恐怖谷”效应。由于表现不佳,患者应避免使用这些图像进行手术决策,因为可能存在不切实际的期望。建议外科医生在会诊时使用病人的真实照片。未来的研究旨在将人工智能图像与实际前后的照片进行比较,并让更多的专家进行评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI in Cosmetic Surgery: A New Look at Virtual Abdominoplasty and Buttock Augmentation.

Background: Online before-and-after photos commonly guide patient expectations in body contouring surgeries. However, recent artificial intelligence (AI) advancements allow for lifelike "photos" of hypothetical individuals, which patients can use in their decision-making. The accuracy of AI models, trained on divergent image sets, in showing realistic figures, cosmetic defects, and surgical outcomes is questionable. This study sought to evaluate the quality of these images.

Methods: We utilized AI platforms GetIMG, Leonardo, and Perchance to create pre- and post-surgery visuals for abdominoplasty and buttock augmentation. Expert board-certified plastic surgeons and plastic surgery residents assessed the images across 11 criteria, focusing on realism and clinical value. ANOVA and Tukey honestly significant difference post-hoc tests were executed for data analysis.

Results: Realism and clinical value scores among AI models (mean ± standard deviation) were not significantly different, indicating comparable performance (GetIMG 3.83 ± 0.81, Leonardo 3.30 ± 0.69, Perchance 2.68 ± 0.77; P > .05). Perchance significantly underperformed in size and volume accuracy (P = .02) and pathological feature recognition (P = .01 and .03). No consistent underperforming metric was identified when evaluated. The phenomenon of the "uncanny valley" was also identified.

Conclusions: Despite some realistic and accurate surgical predictions, most AI-generated images were anatomically unrealistic, demonstrated inaccurate postoperative results, and invoked the "uncanny valley" effect. Given the uniformly poor performance, patients should avoid using these images for surgical decisions due to the potential of unrealistic expectations. Surgeons are advised to use real patient photos for consultations. Future research aims to compare AI images with actual before-and-after photos and include a bigger pool of experts for evaluation.

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