Aktar Ugurlu Gulay, Ugurlu Burak Numan, Yalcinkaya Meryem
Aesthet Surg J. 2024 Dec 12;45(1):NP1-NP7. doi: 10.1093/asj/sjae204.
Botulinum toxin type A (BoNT-A) injections are widely administered for facial rejuvenation, but their effects on facial expressions remain unclear.
In this study, we aimed to objectively measure the impact of BoNT-A injections on facial expressions with deep learning techniques.
One hundred eighty patients age 25 to 60 years who underwent BoNT-A application to the upper face were included. Patients were photographed with neutral, happy, surprised, and angry expressions before and 14 days after the procedure. A convolutional neural network (CNN)-based facial emotion recognition (FER) system analyzed 1440 photographs with a hybrid data set of clinical images and the Karolinska Directed Emotional Faces (KDEF) data set.
The CNN model accurately predicted 90.15% of the test images. Significant decreases in the recognition of angry and surprised expressions were observed postinjection (P < .05), with no significant changes in happy or neutral expressions (P > .05). Angry expressions were often misclassified as neutral or happy (P < .05), and surprised expressions were more likely to be perceived as neutral (P < .05).
Deep learning can effectively assess the impact of BoNT-A injections on facial expressions, providing more standardized data than traditional surveys. BoNT-A may reduce the expression of anger and surprise, potentially leading to a more positive facial appearance and emotional state. Further studies are needed to understand the broader implications of these changes.
A型肉毒杆菌毒素(BoNT-A)注射广泛应用于面部年轻化,但对面部表情的影响尚不清楚。
在本研究中,我们旨在运用深度学习技术客观测量BoNT-A注射对面部表情的影响。
纳入180例年龄在25至60岁之间、接受过BoNT-A上脸注射的患者。在注射前及注射后14天,分别拍摄患者中性、高兴、惊讶和愤怒表情的照片。基于卷积神经网络(CNN)的面部情绪识别(FER)系统,利用临床图像混合数据集和卡罗林斯卡定向情感面孔(KDEF)数据集,对1440张照片进行分析。
CNN模型准确预测了90.15%的测试图像。注射后,愤怒和惊讶表情的识别率显著下降(P <.05),高兴或中性表情无显著变化(P >.05)。愤怒表情常被误分类为中性或高兴(P <.05),惊讶表情更易被视为中性(P <.05)。
深度学习能够有效评估BoNT-A注射对面部表情的影响,比传统调查提供更标准化的数据。BoNT-A可能会减少愤怒和惊讶的表情,潜在地带来更积极的面部外观和情绪状态。需要进一步研究以了解这些变化的更广泛影响。