Department of Plastic Surgery, Peking University Third Hospital, 49 North Garden Road, Haidian District, Beijing, 100191, China.
Department of Physics, Beihang University, 37 Xueyuan Road, Haidian District, Beijing, 100191, China.
Aesthetic Plast Surg. 2024 Apr;48(8):1557-1564. doi: 10.1007/s00266-023-03534-5. Epub 2023 Aug 14.
Rhinoplasty is one of the most challenging plastic surgeries because it lacks a uniform standard for preoperative design or implementation. For a long time, rhinoplasties were done without an accurate consensus of aesthetic design between surgeons and patients before surgery and consequently brought unsatisfactory appearance for patients. In recent years, three-dimensional (3D) simulation has been used to visualize the preoperative design of rhinoplasty, and good results have been achieved. However, it still relied on individual aesthetics and experience. The preoperative design remained a huge challenge for inexperienced surgeons and could be time-consuming to perform manually. Therefore, we adopted artificial intelligence (AI) in this work to provide a new idea for automated and efficient preoperative nasal contour design.
We collected a dataset of 3D facial images from 209 patients. For each patient, both the original face and the manually designed face using 3D simulation software were included. The 3D images were transformed into point clouds, based on which we used the modified FoldingNet model for deep neural network training (by pytorch 1.12).
The trained AI model gained the ability to perform aesthetic design automatically and achieved similar results to manual design. We analysed the 1027 facial features captured by the AI model and concluded two of its possible cognitive modes. One is to resemble the human aesthetic considerations while the other is to fulfil the given task in a special way of the machine.
We presented the first AI model for automated preoperative 3D simulation of rhinoplasty in this study. It provided a new idea for the automated, individual and efficient preoperative design, which was expected to bring a new paradigm for rhinoplasty and even the whole field of plastic surgery.
This journal requires that authors assign a level of evidence to each article. For a full description of these Evidence-Based Medicine ratings, please refer to the Table of Contents or the online Instructions to Authors www.springer.com/00266 .
隆鼻术是最具挑战性的整形手术之一,因为它缺乏术前设计或实施的统一标准。长期以来,隆鼻术在手术前没有在外科医生和患者之间达成准确的审美设计共识,因此给患者带来了不满意的外观。近年来,三维(3D)模拟已用于可视化隆鼻术的术前设计,并取得了良好的效果。然而,它仍然依赖于个人美学和经验。对于经验不足的外科医生来说,术前设计仍然是一个巨大的挑战,并且手动执行可能很耗时。因此,我们在这项工作中采用人工智能(AI)为自动和高效的术前鼻轮廓设计提供了新的思路。
我们从 209 名患者中收集了一组 3D 面部图像数据集。对于每个患者,都包括原始面部和使用 3D 模拟软件手动设计的面部。将 3D 图像转换为点云,在此基础上,我们使用修改后的 FoldingNet 模型进行深度神经网络训练(由 pytorch 1.12 实现)。
训练有素的 AI 模型获得了自动执行美学设计的能力,并取得了与手动设计相似的结果。我们分析了 AI 模型捕捉到的 1027 个面部特征,并得出了其两种可能的认知模式。一种是模仿人类的审美考虑,另一种是以机器特有的方式完成给定的任务。
我们在这项研究中提出了第一个用于自动术前 3D 模拟隆鼻术的 AI 模型。它为自动、个性化和高效的术前设计提供了新的思路,有望为隆鼻术甚至整个整形外科学领域带来新的范例。
证据等级 IV:本杂志要求作者为每篇文章分配一个证据等级。有关这些循证医学评级的完整描述,请参阅目录或在线作者指南 www.springer.com/00266 。