Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Beijing, China.
Hohai University, Jiangsu, China.
J Healthc Eng. 2020 Feb 8;2020:2398542. doi: 10.1155/2020/2398542. eCollection 2020.
Facial paralysis (FP) is a loss of facial movement due to nerve damage. Most existing diagnosis systems of FP are subjective, e.g., the House-Brackmann (HB) grading system, which highly depends on the skilled clinicians and lacks an automatic quantitative assessment. In this paper, we propose an efficient yet objective facial paralysis assessment approach via automatic computational image analysis. First, the facial blood flow of FP patients is measured by the technique of laser speckle contrast imaging to generate both RGB color images and blood flow images. Second, with an improved segmentation approach, the patient's face is divided into concerned regions to extract facial blood flow distribution characteristics. Finally, three HB score classifiers are employed to quantify the severity of FP patients. The proposed method has been validated on 80 FP patients, and quantitative results demonstrate that our method, achieving an accuracy of 97.14%, outperforms the state-of-the-art systems. Experimental evaluations also show that the proposed approach could yield objective and quantitative FP diagnosis results, which agree with those obtained by an experienced clinician.
面瘫(FP)是由于神经损伤导致的面部运动丧失。大多数现有的 FP 诊断系统都是主观的,例如 House-Brackmann(HB)分级系统,它高度依赖熟练的临床医生,并且缺乏自动定量评估。在本文中,我们提出了一种通过自动计算图像分析来进行高效且客观的面瘫评估方法。首先,使用激光散斑对比成像技术测量 FP 患者的面部血流,以生成 RGB 彩色图像和血流图像。其次,通过改进的分割方法,将患者的面部划分为相关区域,以提取面部血流分布特征。最后,采用三个 HB 评分分类器来量化 FP 患者的严重程度。该方法已经在 80 名 FP 患者中进行了验证,定量结果表明,我们的方法达到了 97.14%的准确率,优于最先进的系统。实验评估还表明,该方法可以提供客观和定量的 FP 诊断结果,与经验丰富的临床医生的诊断结果一致。