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利用统计形状建模和计算机模拟试验建立新型基线面部肌肉数据库以支持面部康复决策

Novel Baseline Facial Muscle Database Using Statistical Shape Modeling and In Silico Trials toward Decision Support for Facial Rehabilitation.

作者信息

Tran Vi-Do, Nguyen Tan-Nhu, Ballit Abbass, Dao Tien-Tuan

机构信息

Faculty of Electrical and Electronics Engineering, Ho Chi Minh City University of Technology and Education, Thu Duc City 71300, Ho Chi Minh City, Vietnam.

School of Engineering, Eastern International University, Thu Dau Mot City 75100, Binh Duong Province, Vietnam.

出版信息

Bioengineering (Basel). 2023 Jun 19;10(6):737. doi: 10.3390/bioengineering10060737.

Abstract

: Facial palsy is a complex pathophysiological condition affecting the personal and professional lives of the involved patients. Sudden muscle weakness or paralysis needs to be rehabilitated to recover a symmetric and expressive face. Computer-aided decision support systems for facial rehabilitation have been developed. However, there is a lack of facial muscle baseline data to evaluate the patient states and guide as well as optimize the rehabilitation strategy. In this present study, we aimed to develop a novel baseline facial muscle database (static and dynamic behaviors) using the coupling between statistical shape modeling and in-silico trial approaches. : 10,000 virtual subjects (5000 males and 5000 females) were generated from a statistical shape modeling (SSM) head model. Skull and muscle networks were defined so that they statistically fit with the head shapes. Two standard mimics: smiling and kissing were generated. The muscle strains of the lengths in neutral and mimic positions were computed and recorded thanks to the muscle insertion and attachment points on the animated head and skull meshes. For validation, five head and skull meshes were reconstructed from the five computed tomography (CT) image sets. Skull and muscle networks were then predicted from the reconstructed head meshes. The predicted skull meshes were compared with the reconstructed skull meshes based on the mesh-to-mesh distance metrics. The predicted muscle lengths were also compared with those manually defined on the reconstructed head and skull meshes. Moreover, the computed muscle lengths and strains were compared with those in our previous studies and the literature. : The skull prediction's median deviations from the CT-based models were 2.2236 mm, 2.1371 mm, and 2.1277 mm for the skull shape, skull mesh, and muscle attachment point regions, respectively. The median deviation of the muscle lengths was 4.8940 mm. The computed muscle strains were compatible with the reported values in our previous Kinect-based method and the literature. : The development of our novel facial muscle database opens new avenues to accurately evaluate the facial muscle states of facial palsy patients. Based on the evaluated results, specific types of facial mimic rehabilitation exercises can also be selected optimally to train the target muscles. In perspective, the database of the computed muscle lengths and strains will be integrated into our available clinical decision support system for automatically detecting malfunctioning muscles and proposing patient-specific rehabilitation serious games.

摘要

面瘫是一种复杂的病理生理状况,会影响相关患者的个人生活和职业生活。突然出现的肌肉无力或麻痹需要进行康复治疗,以恢复对称且富有表情的面容。已经开发出用于面部康复的计算机辅助决策支持系统。然而,缺乏面部肌肉基线数据来评估患者状态并指导以及优化康复策略。在本研究中,我们旨在利用统计形状建模和计算机模拟试验方法之间的耦合,开发一个新颖的面部肌肉基线数据库(静态和动态行为)。:从统计形状建模(SSM)头部模型生成了10000个虚拟对象(5000名男性和5000名女性)。定义了颅骨和肌肉网络,使其在统计上与头部形状相匹配。生成了两种标准表情:微笑和亲吻。借助动画头部和颅骨网格上的肌肉插入点和附着点,计算并记录了中性位置和表情位置时肌肉长度的应变。为了进行验证,从五组计算机断层扫描(CT)图像集中重建了五个头部和颅骨网格。然后从重建的头部网格预测颅骨和肌肉网络。基于网格到网格的距离度量,将预测的颅骨网格与重建的颅骨网格进行比较。还将预测的肌肉长度与在重建的头部和颅骨网格上手动定义的长度进行比较。此外,将计算出的肌肉长度和应变与我们之前的研究以及文献中的数据进行比较。:对于颅骨形状、颅骨网格和肌肉附着点区域,颅骨预测与基于CT的模型的中位数偏差分别为2.2236毫米、2.1371毫米和2.1277毫米。肌肉长度的中位数偏差为4.8940毫米。计算出的肌肉应变与我们之前基于Kinect的方法以及文献中报道的值相符。:我们新颖的面部肌肉数据库的开发为准确评估面瘫患者的面部肌肉状态开辟了新途径。基于评估结果,还可以最佳地选择特定类型的面部表情康复练习来训练目标肌肉。从长远来看,计算出的肌肉长度和应变数据库将被整合到我们现有的临床决策支持系统中,用于自动检测功能失常的肌肉并提出针对患者的康复严肃游戏。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f483/10294925/b6233e01aff9/bioengineering-10-00737-g001.jpg

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