Deep Learning-Based Assessment of Lip Symmetry for Patients With Repaired Cleft Lip.

IF 1.1 4区 医学 Q2 Dentistry Cleft Palate-Craniofacial Journal Pub Date : 2025-01-22 DOI:10.1177/10556656241312730
Karen Rosero, Ali N Salman, Lucas M Harrison, Alex A Kane, Carlos Busso, Rami R Hallac
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Abstract

Objective: Post-surgical lip symmetry assessment is a key indicator of cleft repair success. Traditional methods rely on distances between anatomical landmarks, which are impractical for video analysis and overlook texture and appearance. We propose an artificial intelligence (AI) approach to automate this process, analyzing lateral lip morphology for a quantitative symmetry evaluation.

Design: We utilize contrastive learning to quantify lip symmetry by measuring the similarity between the representations of the sides, which is subsequently used to classify the severity of asymmetry. Our model does not require patient images for training. Instead, we introduce dissimilarities in face images from open datasets using two methods: temporal misalignment for video frames and face transformations to simulate lip asymmetry observed in the target population. The model differentiates the left and right image representations to assess asymmetry. We evaluated our model on 146 images of patients with repaired cleft lip.

Results: The deep learning model trained with face transformations categorized patient images into five asymmetry levels, achieving a weighted accuracy of 75% and a Pearson correlation of 0.31 with medical expert human evaluations. The model utilizing temporal misalignment achieved a weighted accuracy of 69% and a Pearson correlation of 0.27 for the same classification task.

Conclusions: We propose an automated approach for assessing lip asymmetry in patients with repaired cleft lip by transforming facial images of control subjects to train a deep learning model, eliminating manual anatomical landmarks. Our promising results provide a more efficient and objective tool for evaluating surgical outcomes.

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基于深度学习的唇裂修复患者唇部对称性评估。
目的:术后唇对称评价是腭裂修复成功与否的关键指标。传统的方法依赖于解剖标志之间的距离,这对于视频分析是不切实际的,并且忽略了纹理和外观。我们提出了一种人工智能(AI)方法来自动化这一过程,分析侧唇形态以进行定量对称评估。设计:我们利用对比学习,通过测量两侧表示之间的相似性来量化嘴唇对称,随后用于对不对称的严重程度进行分类。我们的模型不需要患者图像进行训练。相反,我们使用两种方法引入来自开放数据集的人脸图像的差异:视频帧的时间错位和人脸转换来模拟目标人群中观察到的嘴唇不对称。该模型区分左右图像表示以评估不对称性。我们对146例唇裂修复患者的图像进行了评估。结果:经过人脸变换训练的深度学习模型将患者图像分为5个不对称级别,加权准确率为75%,与医学专家评估的Pearson相关性为0.31。利用时间偏差的模型在相同的分类任务中获得了69%的加权精度和0.27的Pearson相关性。结论:我们提出了一种自动评估唇裂修复患者嘴唇不对称的方法,通过转换对照组的面部图像来训练一个深度学习模型,消除人工解剖标记。我们有希望的结果为评估手术结果提供了更有效和客观的工具。
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来源期刊
Cleft Palate-Craniofacial Journal
Cleft Palate-Craniofacial Journal DENTISTRY, ORAL SURGERY & MEDICINE-SURGERY
CiteScore
2.20
自引率
36.40%
发文量
0
审稿时长
4-8 weeks
期刊介绍: The Cleft Palate-Craniofacial Journal (CPCJ) is the premiere peer-reviewed, interdisciplinary, international journal dedicated to current research on etiology, prevention, diagnosis, and treatment in all areas pertaining to craniofacial anomalies. CPCJ reports on basic science and clinical research aimed at better elucidating the pathogenesis, pathology, and optimal methods of treatment of cleft and craniofacial anomalies. The journal strives to foster communication and cooperation among professionals from all specialties.
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