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一项关于Earable设备在健康志愿者中测量面部肌肉和眼动任务的试点研究。

A pilot study of the Earable device to measure facial muscle and eye movement tasks among healthy volunteers.

作者信息

Wipperman Matthew F, Pogoncheff Galen, Mateo Katrina F, Wu Xuefang, Chen Yiziying, Levy Oren, Avbersek Andreja, Deterding Robin R, Hamon Sara C, Vu Tam, Alaj Rinol, Harari Olivier

机构信息

Precision Medicine, Regeneron Pharmaceuticals Inc, Tarrytown, New York, United States of America.

Early Clinical Development & Experimental Sciences, Regeneron Pharmaceuticals Inc, Tarrytown, New York, United States of America.

出版信息

PLOS Digit Health. 2022 Jun 30;1(6):e0000061. doi: 10.1371/journal.pdig.0000061. eCollection 2022 Jun.

Abstract

The Earable device is a behind-the-ear wearable originally developed to measure cognitive function. Since Earable measures electroencephalography (EEG), electromyography (EMG), and electrooculography (EOG), it may also have the potential to objectively quantify facial muscle and eye movement activities relevant in the assessment of neuromuscular disorders. As an initial step to developing a digital assessment in neuromuscular disorders, a pilot study was conducted to determine whether the Earable device could be utilized to objectively measure facial muscle and eye movements intended to be representative of Performance Outcome Assessments, (PerfOs) with tasks designed to model clinical PerfOs, referred to as mock-PerfO activities. The specific aims of this study were: To determine whether the Earable raw EMG, EOG, and EEG signals could be processed to extract features describing these waveforms; To determine Earable feature data quality, test re-test reliability, and statistical properties; To determine whether features derived from Earable could be used to determine the difference between various facial muscle and eye movement activities; and, To determine what features and feature types are important for mock-PerfO activity level classification. A total of N = 10 healthy volunteers participated in the study. Each study participant performed 16 mock-PerfOs activities, including talking, chewing, swallowing, eye closure, gazing in different directions, puffing cheeks, chewing an apple, and making various facial expressions. Each activity was repeated four times in the morning and four times at night. A total of 161 summary features were extracted from the EEG, EMG, and EOG bio-sensor data. Feature vectors were used as input to machine learning models to classify the mock-PerfO activities, and model performance was evaluated on a held-out test set. Additionally, a convolutional neural network (CNN) was used to classify low-level representations of the raw bio-sensor data for each task, and model performance was correspondingly evaluated and compared directly to feature classification performance. The model's prediction accuracy on the Earable device's classification ability was quantitatively assessed. Study results indicate that Earable can potentially quantify different aspects of facial and eye movements and may be used to differentiate mock-PerfO activities. Specially, Earable was found to differentiate talking, chewing, and swallowing tasks from other tasks with observed F1 scores >0.9. While EMG features contribute to classification accuracy for all tasks, EOG features are important for classifying gaze tasks. Finally, we found that analysis with summary features outperformed a CNN for activity classification. We believe Earable may be used to measure cranial muscle activity relevant for neuromuscular disorder assessment. Classification performance of mock-PerfO activities with summary features enables a strategy for detecting disease-specific signals relative to controls, as well as the monitoring of intra-subject treatment responses. Further testing is needed to evaluate the Earable device in clinical populations and clinical development settings.

摘要

Earable设备是一种耳后可穿戴设备,最初是为测量认知功能而开发的。由于Earable可测量脑电图(EEG)、肌电图(EMG)和眼电图(EOG),它也可能有潜力客观地量化与神经肌肉疾病评估相关的面部肌肉和眼球运动活动。作为开发神经肌肉疾病数字评估的第一步,进行了一项试点研究,以确定Earable设备是否可用于客观测量旨在代表性能结果评估(PerfOs)的面部肌肉和眼球运动,这些运动通过设计用于模拟临床PerfOs的任务来实现,即模拟PerfO活动。本研究的具体目标是:确定Earable原始的EMG、EOG和EEG信号是否可以进行处理以提取描述这些波形的特征;确定Earable特征数据的质量、重测信度和统计特性;确定从Earable获得的特征是否可用于确定各种面部肌肉和眼球运动活动之间的差异;以及确定哪些特征和特征类型对模拟PerfO活动水平分类很重要。共有N = 10名健康志愿者参与了该研究。每位研究参与者进行了16项模拟PerfO活动,包括说话、咀嚼、吞咽、闭眼、向不同方向凝视、鼓起脸颊、咀嚼苹果以及做出各种面部表情。每项活动在早上重复进行4次,晚上重复进行4次。从EEG、EMG和EOG生物传感器数据中总共提取了161个汇总特征。特征向量被用作机器学习模型的输入,以对面部表情模仿活动进行分类,并在一个留出的测试集上评估模型性能。此外,使用卷积神经网络(CNN)对每个任务的原始生物传感器数据的低级表示进行分类,并相应地评估模型性能,并直接与特征分类性能进行比较。对该模型在Earable设备分类能力方面的预测准确性进行了定量评估。研究结果表明,Earable有潜力量化面部和眼球运动的不同方面,并可用于区分模拟PerfO活动。特别地,发现Earable能够以观察到的F1分数>0.9将说话、咀嚼和吞咽任务与其他任务区分开来。虽然EMG特征有助于所有任务的分类准确性,但EOG特征对于凝视任务的分类很重要。最后,我们发现使用汇总特征进行分析在活动分类方面优于CNN。我们相信Earable可用于测量与神经肌肉疾病评估相关的颅肌活动。使用汇总特征对面部表情模仿活动进行分类的性能,为检测相对于对照的疾病特异性信号以及监测受试者内部的治疗反应提供了一种策略。需要进一步测试以在临床人群和临床开发环境中评估Earable设备。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c8cc/9931353/2d6c10422678/pdig.0000061.g001.jpg

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