期刊
IEEE SENSORS JOURNAL
卷 21, 期 10, 页码 11916-11925出版社
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSEN.2020.3035240
关键词
Task analysis; Sensors; Diseases; Machine learning; Wearable sensors; Kinematics; Feature extraction; Essential tremor; feature engineering; machine learning; Parkinson’ s disease; video processing
Parkinson's Disease is currently the fastest growing neurodegenerative disease and impacts patients' quality of life. This study presents a second opinion system based on video analysis and machine learning methods to assist in accurate diagnosis and avoid misdiagnosis of PD as essential tremor.
Parkinson's Disease (PD) is currently the fastest growing neurodegenerative disease. It decreases the quality of life for patients, especially when not diagnosed properly and timely. Accurate diagnostic of PD is complicated by the fact that there exist several neurodegenerative diseases with similar motor symptoms, e.g. essential tremor. In this work, we report on a second opinion system based on the video analysis and classification of subjects using machine learning methods including feature extraction, dimensionality reduction and classification. Our approach serves for avoiding a typical misdiagnosis of PD by essential tremor. Consequently, we designed 15 common tasks and recorded the movement video. Video data was collected from 89 subjects at a medical center and labeled by doctors. We first demonstrate classification between the healthy subjects and subjects with PD suspected case followed by the classification between the subjects with true PD and the subjects with essential tremor. We achieved f1 score 0.90 for the first classification and f1 score 0.84 for the second classification. The proposed unobtrusive approach demonstrated its feasibility through a pilot study. It opens up wide vista for differentiating PD patients against other patients and not against a cohort of healthy subjects.
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