Facial nerve paresis is a severe complication that arises post-head and neck surgery; This results in articulation problems, facial asymmetry, and severe problems in non-verbal communication. To overcome the side effects of post-surgery facial paralysis, rehabilitation requires which last for several weeks. This paper discusses an unsupervised approach to rehabilitating patients who have temporary facial paralysis due to damage in mimetic muscles. The work aims to make the rehabilitation process objective compared to the current subjective approach, such as House-Brackmann (HB) scale. Also, the approach will assist clinicians by reducing their workload in assessing the improvement during rehabilitation. This paper focuses on the clustering approach to monitor the rehabilitation process. We compare the results obtained from different clustering algorithms on various forms of the same data set, namely dynamic form, data expressed as functional data using B-spline basis expansion, and by finding the functional principal components of the functional data. The study contains data set of 85 distinct patients with 120 measurements obtained using a Kinect stereo-vision camera. The method distinguish effectively between patients with the least and greatest degree of facial paralysis, however patients with adjacent degrees of paralysis provide some challenges. In addition, we compared the cluster results to the HB scale outputs.
翻译:头部和颈部外科手术是一个严重的复杂问题,引起头部和颈部外科手术; 这导致诊断问题、面部不对称和非语言交流中的严重问题; 为了克服外科后面部麻痹的副作用,康复需要持续数周。 本文讨论对因肌肉肌部损伤而暂时面部麻痹的病人采取一种不受监督的康复方法; 这项工作旨在使康复过程与目前主观方法,如House- Brackmann(HB)级相比,成为目标。 此外, 这种方法将帮助临床医生减少评估康复期间的改进工作量。 本文侧重于监测康复过程的分组方法。 我们比较了不同数据集形式上的不同组群算的结果,即动态形式、用B-spline基础扩展表示的数据功能性数据,以及找到功能性数据的主要功能部分。 研究包含85个不同病人的数据集,用Kinect- 立式摄像机测量了120次的测量结果。 这种方法有效地区分了面部麻痹程度最低和最大程度的病人,但有接近H- 级瘫痪程度的病人则提供了一些挑战。