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Automatic Assessment of Facial Paralysis Based on Facial Landmarks

机译:基于面部地标的面部瘫痪自动评估

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Unilateral peripheral facial paralysis is the most common case of facial paralysis. It affects only one side of the face, which will cause facial asymmetry. Clinically, unilateral peripheral facial paralysis is often classified by clinicians according to evaluation scales, based on patients’ condition of facial symmetry. A prevalent scale is House-Brackmann grading system (HBGS). However, assessment results from scales are often with great subjectivity, and will bring high interobserver and intraobserver variability. Therefore, this manuscript proposed an objective method to provide assessment results by using facial videos and applying machine learning models. This grading method is based on HBGS, but it is automatically implemented with high objectivity. Images with facial expressions will be extracted from the videos to be analyzed by a machine learning model. Facial landmarks will be acquired from the images by using a 68-points model provided by dlib. Then index and coordinate information of the landmarks will be used to calculate the values of features pre-designed to train the model and predict the result of new patients. Due to the difficulty of collecting facial paralysis samples, the data size is limited. Random Forest (RF) and support vector machine (SVM) were compared as the classifiers. This method was applied on a data set of 33 subjects. The highest overall accuracy rate reached 88.9%, confirming the effectiveness of this method.
机译:单侧外周面部瘫是面部瘫痪的最常见情况。它仅影响面部的一侧,这将导致面部不对称。临床上,根据评估尺度的基于患者的面部对称性,单侧外周性面部瘫痪通常由临床医生分类。普遍规模是House-Brackmann分级系统(HBG)。然而,尺度的评估结果通常具有很大的主观性,并将带来高interobserver和intraobserver变异性。因此,该稿件提出了一种客观方法,通过使用面部视频和应用机器学习模型来提供评估结果。该分级方法基于HBGS,但它自动以高客管实现。将从通过机器学习模型分析的视频中提取具有面部表达的图像。将通过使用DLIB提供的68分模型从图像中获取面部地标。然后,地标的索引和坐标信息将用于计算预先培训模型并预测新患者的结果的功能的值。由于收集面部瘫痪样本的难度,数据尺寸有限。将随机森林(RF)和支持向量机(SVM)与分类器进行比较。该方法应用于33个受试者的数据集。最高的总体精度率达到88.9%,确认了这种方法的有效性。

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