Department of Oral and Maxillofacial Surgery, Peking University School and Hospital of Stomatology, Beijing, China.
Peking University School of Electronics Engineering and Computer Science, Beijing, China.
Int J Oral Maxillofac Surg. 2021 Nov;50(11):1443-1449. doi: 10.1016/j.ijom.2021.01.002. Epub 2021 Mar 5.
Facial nerve dysfunction is common in patients with Bell's palsy, trauma, tumour, or iatrogenic injuries. Imaging assessment is the most convenient method for patients and their treating physician. With developments in artificial intelligence (AI), manual work will be replaced. In this study, a database of facial images of patients with oral and maxillofacial diseases was set up to develop a facial nerve functional assessment system based on AI. This database was then used to evaluate the accuracy of a state-of-the-art algorithm for facial landmark detection named 'HRNet'. Utilizing this database and with appropriate human intervention, HRNet was used in facial annotation. The accuracy of annotations was evaluated through the normalized mean error. A total of 912 images were collected from 300 people; 546 of these images had abnormal features including defects, swelling, scars, or facial paralysis. The accuracy for the abnormal group was lower than that for the normal group before and after training, but improvements in accuracy were identified in both groups post-training. In conclusion, this new database demonstrates the ability of HRNet to localize facial landmarks in patients with oral and maxillofacial diseases. More images for training should be added to this database to diversify it in the future.
面神经功能障碍在贝尔麻痹、创伤、肿瘤或医源性损伤患者中很常见。影像学评估是患者及其治疗医生最方便的方法。随着人工智能(AI)的发展,手工工作将被取代。在这项研究中,建立了一个口腔颌面疾病患者面部图像数据库,以开发基于 AI 的面神经功能评估系统。然后,使用这个数据库来评估面部地标检测的最先进算法“HRNet”的准确性。利用这个数据库和适当的人工干预,在面部注释中使用 HRNet。通过归一化平均误差评估注释的准确性。共从 300 人中收集了 912 张图像;其中 546 张图像具有异常特征,包括缺陷、肿胀、疤痕或面瘫。在训练前后,异常组的准确性均低于正常组,但两组在训练后准确性都有所提高。总之,这个新数据库证明了 HRNet 能够定位口腔颌面疾病患者的面部地标。未来应该在这个数据库中添加更多的图像来进行多样化训练。