Manzoor Ibrahim, Popescu Aryana, Stark Alexia, Gorbachuk Mykola, Spolaore Aldo, Tatagiba Marcos, Naros Georgios, Machetanz Kathrin
Department of Neurosurgery and Neurotechnology, Eberhard Karls University, Hoppe-Seyler-Straße 3, 72076 Tuebingen, Germany.
Sensors (Basel). 2025 May 7;25(9):2949. doi: 10.3390/s25092949.
Facial palsy (FP) significantly impacts patients' quality of life. The accurate classification of FP severity is crucial for personalized treatment planning. Additionally, electromyographic (EMG)-based biofeedback shows promising results in improving recovery outcomes. This prospective study aims to identify EMG time series features that can both classify FP and facilitate biofeedback. Therefore, it investigated surface EMG in FP patients and healthy controls during three different facial movements. Repeated-measures ANOVAs (rmANOVA) were conducted to examine the effects of MOTION (move/rest), SIDE (healthy/lesioned) and the House-Brackmann score (HB), across 20 distinct EMG parameters. Correlation analysis was performed between HB and the asymmetry index of EMG parameters, complemented by Fisher score calculations to assess feature relevance in distinguishing between HB levels. Overall, 55 subjects (51.2 ± 14.73 years, 35 female) were included in the study. RmANOVAs revealed a highly significant effect of MOTION across almost all movement types ( < 0.001). Integrating the findings from rmANOVA, the correlation analysis and Fisher score analysis, at least 5/20 EMG parameters were determined to be robust indicators for assessing the degree of paresis and guiding biofeedback. This study demonstrates that EMG can reliably determine severity and guide effective biofeedback in FP, and in severe cases. Our findings support the integration of EMG into personalized rehabilitation strategies. However, further studies are mandatory to improve recovery outcomes.
面瘫(FP)对患者的生活质量有显著影响。准确分类FP严重程度对于个性化治疗方案的制定至关重要。此外,基于肌电图(EMG)的生物反馈在改善恢复结果方面显示出有前景的效果。这项前瞻性研究旨在识别能够对FP进行分类并促进生物反馈的EMG时间序列特征。因此,该研究调查了FP患者和健康对照在三种不同面部运动期间的表面肌电图。进行重复测量方差分析(rmANOVA)以检验运动(动/静)、侧别(健康/患病)和House-Brackmann评分(HB)对20个不同EMG参数的影响。对HB与EMG参数不对称指数进行相关性分析,并辅以Fisher评分计算以评估区分HB水平时特征的相关性。总体而言,55名受试者(年龄51.2±14.73岁,女性35名)被纳入研究。rmANOVA显示几乎所有运动类型中运动的影响都非常显著(<0.001)。综合rmANOVA、相关性分析和Fisher评分分析的结果,确定至少5/20个EMG参数是评估麻痹程度和指导生物反馈的可靠指标。本研究表明,EMG能够可靠地确定FP的严重程度,并在FP及严重病例中指导有效的生物反馈。我们的研究结果支持将EMG纳入个性化康复策略。然而,必须进行进一步研究以改善恢复结果。