Cernera Stephanie, Pramanik Leena, Boogaart Zachary, Cagle Jackson N, Gomez Julieth, Moore Katie, Au Ka Loong Kelvin, Okun Michael S, Gunduz Aysegul, Deeb Wissam
J. Crayton Pruitt Family Department of Biomedical Engineering, University of Florida, Gainesville, FL, United States; Norman Fixel Institute for Neurological Diseases and the Program for Movement Disorders and Neurorestoration, University of Florida, Gainesville, FL, United States.
J. Crayton Pruitt Family Department of Biomedical Engineering, University of Florida, Gainesville, FL, United States.
Clin Neurophysiol. 2022 Feb;134:102-110. doi: 10.1016/j.clinph.2021.10.017. Epub 2021 Dec 3.
Current rating scales for Tourette syndrome (TS) are limited by recollection bias or brief assessment periods. This proof-of-concept study aimed to develop a sensor-based paradigm to detect and classify tics.
We recorded both electromyogram and acceleration data from seventeen TS patients, either when voluntarily moving or experiencing tics and during the modified Rush Video Tic Rating Scale (mRVTRS). Spectral properties of voluntary and tic movements from the sensor that captured the dominant tic were calculated and used as features in a support vector machine (SVM) to detect and classify movements retrospectively.
Across patients, the SVM had an accuracy, sensitivity, and specificity of 96.69 ± 4.84%, 98.24 ± 4.79%, and 96.03 ± 6.04%, respectively, when classifying movements in the test dataset. Furthermore, each patient's SVM was validated using data collected during the mRVTRS. Compared to the expert consensus, the tic detection accuracy was 85.63 ± 15.28% during the mRVTRS, while overall movement classification accuracy was 94.23 ± 5.97%.
These results demonstrate that wearable sensors can capture physiological differences between tic and voluntary movements and are comparable to expert consensus.
Ultimately, wearables could individualize and improve care for people with TS, provide a robust and objective measure of tics, and allow data collection in real-world settings.
目前用于抽动秽语综合征(TS)的评定量表受到回忆偏倚或评估期过短的限制。本概念验证研究旨在开发一种基于传感器的范式来检测和分类抽动。
我们记录了17名TS患者在自主运动、抽动发作时以及改良的拉什视频抽动评定量表(mRVTRS)期间的肌电图和加速度数据。计算捕捉主要抽动的传感器所记录的自主运动和抽动运动的频谱特性,并将其用作支持向量机(SVM)中的特征,以回顾性地检测和分类运动。
在测试数据集中对运动进行分类时, across patients, the SVM had an accuracy, sensitivity, and specificity of 96.69 ± 4.84%, 98.24 ± 4.79%, and 96.03 ± 6.04%, respectively。此外,使用mRVTRS期间收集的数据对每位患者的支持向量机进行了验证。与专家共识相比,mRVTRS期间抽动检测准确率为85.63±15.28%,而总体运动分类准确率为94.23±5.97%。
这些结果表明,可穿戴传感器能够捕捉抽动与自主运动之间的生理差异,且与专家共识相当。
最终,可穿戴设备可为TS患者提供个性化且更好的护理,提供可靠且客观的抽动测量方法,并允许在现实环境中收集数据。