학술논문

The Human Tic Detector: An automatic approach to tic characterization using wearable sensors.
Document Type
Article
Source
Clinical Neurophysiology. Feb2022, Vol. 134, p102-110. 9p.
Subject
*WEARABLE technology
*TOURETTE syndrome
*TIC disorders
*SUPPORT vector machines
*MEMORY bias
Language
ISSN
1388-2457
Abstract
• Tourette syndrome scales are limited by recall bias or brief observation; thus, we aimed at developing a sensor-based algorithm. • The algorithm was 96.69% successful at detecting and classifying tics versus voluntary movements on a test dataset. • Using validation data, movement classification accuracy was 94.23% and tic detection accuracy compared to experts was 85.63%. 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. [ABSTRACT FROM AUTHOR]