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Automatic Measurement of Postural Abnormalities With a Pose Estimation Algorithm in Parkinson’s Disease

Jung Hwan Shin, Kyung Ah Woo, Chan Young Lee, Seung Ho Jeon, Han‐Joon Kim, Beomseok Jeon

2022Journal of Movement Disorders13 citationsDOIOpen Access PDF

Abstract

OBJECTIVE: This study aims to develop an automated and objective tool to evaluate postural abnormalities in Parkinson's disease (PD) patients. METHODS: We applied a deep learning-based pose-estimation algorithm to lateral photos of prospectively enrolled PD patients (n = 28). We automatically measured the anterior flexion angle (AFA) and dropped head angle (DHA), which were validated with conventional manual labeling methods. RESULTS: The automatically measured DHA and AFA were in excellent agreement with manual labeling methods (intraclass correlation coefficient > 0.95) with mean bias equal to or less than 3 degrees. CONCLUSION: The deep learning-based pose-estimation algorithm objectively measured postural abnormalities in PD patients.

Topics & Concepts

Intraclass correlationMedicineParkinson's diseaseArtificial intelligencePosePhysical medicine and rehabilitationCorrelation coefficientDiseaseAlgorithmMachine learningPathologyComputer sciencePsychometricsClinical psychologyParkinson's Disease and Spinal DisordersBalance, Gait, and Falls PreventionParkinson's Disease Mechanisms and Treatments
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