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改编基于风格的生成对抗网络以创建描绘唇裂畸形的图像。

Adapting a style based generative adversarial network to create images depicting cleft lip deformity.

作者信息

Hayajneh Abdullah, Serpedin Erchin, Shaqfeh Mohammad, Glass Graeme, Stotland Mitchell A

机构信息

Electrical and Computer Engineering Department, Texas A&M University, College Station, TX, USA.

Electrical and Computer Engineering Program, Texas A&M University, Doha, Qatar.

出版信息

Sci Rep. 2025 Jan 29;15(1):3614. doi: 10.1038/s41598-025-86588-6.

Abstract

Training a machine learning system to evaluate any type of facial deformity is impeded by the scarcity of large datasets of high-quality, ethics board-approved patient images. We have built a deep learning-based cleft lip generator called CleftGAN designed to produce an almost unlimited number of high-fidelity facsimiles of cleft lip facial images with wide variation. A transfer learning protocol testing different versions of StyleGAN as the base model was undertaken. Data augmentation maneuvers permitted input of merely 514 frontal photographs of cleft-affected faces adapted to a base model of 70,000 normal faces. The Frechet Inception Distance was used to measure the similarity of the newly generated facial images to the cleft training dataset. Perceptual Path Length and the novel Divergence Index of Normality measures also assessed the performance of the novel image generator. CleftGAN generates vast numbers of unique faces depicting a wide range of cleft lip deformity with variation of ethnic background. Performance metrics demonstrated a high similarity of the generated images to our training dataset and a smooth, semantically valid interpolation of images through the transfer learning process. The distribution of normality for the training and generated images were highly comparable. CleftGAN is a novel instrument that generates an almost boundless number of realistic facial images depicting cleft lip. This tool promises to become a valuable resource for the development of machine learning models to objectively evaluate facial form and the outcomes of surgical reconstruction.

摘要

训练机器学习系统来评估任何类型的面部畸形,因缺乏高质量、经伦理委员会批准的患者图像的大型数据集而受到阻碍。我们构建了一种基于深度学习的唇裂生成器,称为CleftGAN,旨在生成几乎无限数量的具有广泛变化的唇裂面部图像的高保真摹本。我们采用了一种迁移学习协议,测试不同版本的StyleGAN作为基础模型。数据增强策略允许仅输入514张受唇裂影响面部的正面照片,并将其适配到一个包含70000张正常面部的基础模型中。使用弗雷歇因距离来测量新生成的面部图像与唇裂训练数据集的相似度。感知路径长度和新的正态性差异指数也评估了新型图像生成器的性能。CleftGAN生成了大量独特的面部图像,描绘了具有不同种族背景的广泛唇裂畸形。性能指标表明,生成的图像与我们的训练数据集高度相似,并且在迁移学习过程中图像进行了平滑、语义有效的插值。训练图像和生成图像的正态分布高度可比。CleftGAN是一种新型工具,可生成几乎无限数量的描绘唇裂的逼真面部图像。该工具有望成为开发机器学习模型以客观评估面部形态和手术重建结果的宝贵资源。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/93b2/11775284/d350512b2c10/41598_2025_86588_Fig1_HTML.jpg

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