Reliability of Automatic Computer Vision-Based Assessment of Orofacial Kinematics for Telehealth Applications.

Q1 Computer Science Digital Biomarkers Pub Date : 2022-07-21 eCollection Date: 2022-01-01 DOI:10.1159/000525698
Leif Simmatis, Carolina Barnett, Reeman Marzouqah, Babak Taati, Mark Boulos, Yana Yunusova
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引用次数: 2

Abstract

Introduction: Telehealth/remote assessment using readily available 2D mobile cameras and deep learning-based analyses is rapidly becoming a viable option for detecting orofacial and speech impairments associated with neurological and neurodegenerative disease during telehealth practice. However, the psychometric properties (e.g., internal consistency and reliability) of kinematics obtained from these systems have not been established, which is a crucial next step before their clinical usability is established.

Methods: Participants were assessed in lab using a 3 dimensional (3D)-capable camera and at home using a readily-available 2D camera in a tablet. Orofacial kinematics was estimated from videos using a deep facial landmark tracking model. Kinematic features quantified the clinically relevant constructs of velocity, range of motion, and lateralization. In lab, all participants performed the same oromotor task. At home, participants were split into two groups that each performed a variant of the in-lab task. We quantified within-assessment consistency (Cronbach's α), reliability (intraclass correlation coefficient [ICC]), and fitted linear mixed-effects models to at-home data to capture individual-/task-dependent longitudinal trajectories.

Results: Both in lab and at home, Cronbach's α was typically high (>0.80) and ICCs were often good (>0.70). The linear mixed-effect models that best fit the longitudinal data were those that accounted for individual- or task-dependent effects.

Discussion: Remotely gathered orofacial kinematics were as internally consistent and reliable as those gathered in a controlled laboratory setting using a high-performance 3D-capable camera and could additionally capture individual- or task-dependent changes over time. These results highlight the potential of remote assessment tools as digital biomarkers of disease status and progression and demonstrate their suitability for novel telehealth applications.

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远程医疗应用中基于计算机视觉的口面部运动学自动评估的可靠性。
简介:远程医疗/远程评估使用现成的二维移动相机和基于深度学习的分析正在迅速成为一种可行的选择,用于检测远程医疗实践中与神经和神经退行性疾病相关的口面部和语言障碍。然而,从这些系统中获得的运动学的心理测量特性(例如,内部一致性和可靠性)尚未建立,这是建立其临床可用性之前的关键下一步。方法:参与者在实验室使用三维(3D)相机进行评估,在家中使用平板电脑中现成的2D相机进行评估。使用深度面部标记跟踪模型从视频中估计口面部运动学。运动学特征量化了临床相关的速度、活动范围和侧化结构。在实验室里,所有的参与者都完成了相同的运动任务。在家里,参与者被分成两组,每组执行实验室任务的一个变体。我们量化了评估内一致性(Cronbach’s α)、可靠性(类内相关系数[ICC]),并将线性混合效应模型拟合到家庭数据中,以捕捉个体/任务相关的纵向轨迹。结果:在实验室和家中,Cronbach's α通常高(>0.80),ICCs通常好(>0.70)。最适合纵向数据的线性混合效应模型是那些考虑到个体或任务依赖效应的模型。讨论:远程收集的面部运动学数据与使用高性能3d相机在受控实验室环境中收集的数据一样内部一致和可靠,并且可以随着时间的推移额外捕获个体或任务相关的变化。这些结果突出了远程评估工具作为疾病状态和进展的数字生物标志物的潜力,并证明了它们对新型远程医疗应用的适用性。
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来源期刊
Digital Biomarkers
Digital Biomarkers Medicine-Medicine (miscellaneous)
CiteScore
10.60
自引率
0.00%
发文量
12
审稿时长
23 weeks
期刊最新文献
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