首页> 外文会议>2018 13th IEEE International Conference on Automatic Face amp; Gesture Recognition >Automatic Detection of Amyotrophic Lateral Sclerosis (ALS) from Video-Based Analysis of Facial Movements: Speech and Non-Speech Tasks
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Automatic Detection of Amyotrophic Lateral Sclerosis (ALS) from Video-Based Analysis of Facial Movements: Speech and Non-Speech Tasks

机译:通过基于视频的面部运动分析自动检测肌萎缩性侧索硬化症(ALS):语音和非语音任务

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The analysis of facial movements in patients with amyotrophic lateral sclerosis (ALS) can provide important information about early diagnosis and tracking disease progression. However, the use of expensive motion tracking systems has limited the clinical utility of the assessment. In this study, we propose a marker-less video-based approach to discriminate patients with ALS from neurotypical subjects. Facial movements were recorded using a depth sensor (Intel® RealSense" SR300) during speech and nonspeech tasks. A small set of kinematic features of lips was extracted in order to mirror the perceptual evaluation performed by clinicians, considering the following aspects: (1) range of motion, (2) speed of motion, (3) symmetry, and (4) shape. Our results demonstrate that it is possible to distinguish patients with ALS from neurotypical subjects with high overall accuracy (up to 88.9%) during repetitions of sentences, syllables, and labial non-speech movements (e.g., lip spreading). This paper provides strong rationale for the development of automated systems to detect neurological diseases from facial movements. This work has a high social impact, as it opens new possibilities to develop intelligent systems to support clinicians in their diagnosis, introducing novel standards for assessing the oro-facial impairment in ALS, and tracking disease progression remotely from home.
机译:对肌萎缩性侧索硬化症(ALS)患者的面部运动进行分析可以提供有关早期诊断和跟踪疾病进展的重要信息。但是,昂贵的运动跟踪系统的使用限制了评估的临床效用。在这项研究中,我们提出了一种基于无标记视频的方法,以将ALS患者与典型神经疾病患者区分开。在语音和非语音任务期间,使用深度传感器(Intel®RealSense \“ SR300)记录面部运动。提取嘴唇的一小部分运动学特征以反映临床医生对感知的评估,并考虑以下方面:(1 )的运动范围,(2)的运动速度,(3)对称性和(4)形状我们的结果表明,可以将ALS患者与典型神经疾病患者区分开来(总体准确率高达88.9%)在重复句子,音节和唇部非言语运动(例如嘴唇张开)过程中,本文为开发从面部运动中检测神经系统疾病的自动化系统提供了有力的依据,这项工作具有很高的社会影响力。开发智能系统以支持临床医生诊断的新可能性,引入了用于评估ALS口腔损伤的新标准,并可以在家中远程跟踪疾病进展。

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