Automated Quantification of Eye Tics Using Computer Vision and Deep Learning Techniques

Author:

Conelea Christine1ORCID,Liang Hengyue2,DuBois Megan1,Raab Brittany1,Kellman Mia1,Wellen Brianna1,Jacob Suma1,Wang Sonya3,Sun Ju4,Lim Kelvin1

Affiliation:

1. Department of Psychiatry & Behavioral Sciences University of Minnesota Minneapolis Minnesota USA

2. Department of Electrical & Computer Engineering University of Minnesota Minneapolis Minnesota USA

3. Department of Neurology University of Minnesota Minneapolis Minnesota USA

4. Department of Computer Science & Engineering University of Minnesota Minneapolis Minnesota USA

Abstract

AbstractBackgroundTourette syndrome (TS) tics are typically quantified using “paper and pencil” rating scales that are susceptible to factors that adversely impact validity. Video‐based methods to more objectively quantify tics have been developed but are challenged by reliance on human raters and procedures that are resource intensive. Computer vision approaches that automate detection of atypical movements may be useful to apply to tic quantification.ObjectiveThe current proof‐of‐concept study applied a computer vision approach to train a supervised deep learning algorithm to detect eye tics in video, the most common tic type in patients with TS.MethodsVideos (N = 54) of 11 adolescent patients with TS were rigorously coded by trained human raters to identify 1.5‐second clips depicting “eye tic events” (N = 1775) and “non‐tic events” (N = 3680). Clips were encoded into three‐dimensional facial landmarks. Supervised deep learning was applied to processed data using random split and disjoint split regimens to simulate model validity under different conditions.ResultsArea under receiver operating characteristic curve was 0.89 for the random split regimen, indicating high accuracy in the algorithm's ability to properly classify eye tic vs. non–eye tic movements. Area under receiver operating characteristic curve was 0.74 for the disjoint split regimen, suggesting that algorithm generalizability is more limited when trained on a small patient sample.ConclusionsThe algorithm was successful in detecting eye tics in unseen validation sets. Automated tic detection from video is a promising approach for tic quantification that may have future utility in TS screening, diagnostics, and treatment outcome measurement. © 2023 The Authors. Movement Disorders published by Wiley Periodicals LLC on behalf of International Parkinson and Movement Disorder Society.

Funder

National Institute of Mental Health

National Institute on Drug Abuse

National Science Foundation

Publisher

Wiley

Subject

Neurology (clinical),Neurology

Reference64 articles.

1. Diagnostic and Statistical Manual of Mental Disorders

2. Prevalence of diagnosed Tourette syndrome in persons aged 6–17 years—United States, 2007;Centers for Disease Control and Prevention (CDC);MMWR Morb Mortal Wkly Rep,2009

3. Course of Tic Disorders Over the Lifespan

4. Long-Term Follow-up of an Epidemiologically Defined Cohort of Patients With Tourette Syndrome

5. The Impact of Tourette Syndrome in Adults: Results from the Tourette Syndrome Impact Survey

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