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An Intelligent Motor Assessment Method Utilizing a Bi-Lateral Virtual-Reality Task for Stroke Rehabilitation on Upper Extremity
Chia Ru Chung
, Mu Chun Su
, Si Huei Lee
, Eric Hsiao Kuang Wu
*
, Li Hsien Tang
, Shih Ching Yeh
*
此作品的通信作者
光電系統研究所
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引文 斯高帕斯(Scopus)
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Keyphrases
Virtual Reality
100%
Assessment Method
100%
Evaluation Scale
100%
Stroke Rehabilitation
100%
Upper Extremity
100%
Motor Assessment
100%
Clinical Evaluation
85%
Motion Trajectory
57%
Virtual Reality System
42%
Clinical Trials
28%
Assessment Model
28%
Machine Learning Models
28%
Motor Function
28%
Motor Learning
28%
Fugl-Meyer Assessment
28%
Wolf Motor Function Test
28%
Motor Rehabilitation
28%
Stroke Patients
14%
Clinical Impact
14%
Machine Learning
14%
Time Series Data
14%
Evidence-based
14%
Machine Learning Techniques
14%
Therapist
14%
Clinical Assessment
14%
Assessment Approach
14%
Machine Learning Based
14%
Upper Limb
14%
Indicator Assessment
14%
Training Tasks
14%
Limb Motor
14%
Evidence-based Assessment
14%
Trajectory Evaluation
14%
Translational Impact
14%
Automatic Assessment
14%
Computer Science
Virtual Reality
100%
Assessment Method
100%
Machine Learning
100%
Learning System
100%
Motor Function
80%
Virtual Reality System
60%
Assessment Model
40%
Time Series Data
20%
Engineering
Virtual Reality
100%
Assessment Method
100%
Motor Function
57%
Learning System
57%
Meyer
28%
Machine Learning Method
14%
Data Series
14%
Nursing and Health Professions
Virtual Reality
100%
Stroke Rehabilitation
100%
Clinical Evaluation
85%
Motor Function Test
28%
Hospital
14%
Cerebrovascular Accident
14%
Time Series Analysis
14%
Clinical Assessment
14%
Psychology
Stroke Rehabilitation
100%
Learning Model
50%
Stroke Patient
50%
Neuroscience
Cerebrovascular Accident
100%
Clinical Assessment
33%