Title :
An Intelligent Recovery Progress Evaluation System for ACL Reconstructed Subjects Using Integrated 3-D Kinematics and EMG Features
Author :
Malik, Owais A. ; Arosha Senanayake, S.M.N. ; Zaheer, Dansih
Author_Institution :
Fac. of Sci., Univ. Brunei Darussalam, Gadong, Brunei
Abstract :
An intelligent recovery evaluation system is presented for objective assessment and performance monitoring of anterior cruciate ligament reconstructed (ACL-R) subjects. The system acquires 3-D kinematics of tibiofemoral joint and electromyography (EMG) data from surrounding muscles during various ambulatory and balance testing activities through wireless body-mounted inertial and EMG sensors, respectively. An integrated feature set is generated based on different features extracted from data collected for each activity. The fuzzy clustering and adaptive neuro-fuzzy inference techniques are applied to these integrated feature sets in order to provide different recovery progress assessment indicators (e.g., current stage of recovery, percentage of recovery progress as compared to healthy group, etc.) for ACL-R subjects. The system was trained and tested on data collected from a group of healthy and ACL-R subjects. For recovery stage identification, the average testing accuracy of the system was found above 95% (95-99%) for ambulatory activities and above 80% (80-84%) for balance testing activities. The overall recovery evaluation performed by the proposed system was found consistent with the assessment made by the physiotherapists using standard subjective/objective scores. The validated system can potentially be used as a decision supporting tool by physiatrists, physiotherapists, and clinicians for quantitative rehabilitation analysis of ACL-R subjects in conjunction with the existing recovery monitoring systems.
Keywords :
bioMEMS; biomechanics; biomedical electrodes; body sensor networks; bone; electromyography; feature extraction; fuzzy reasoning; image reconstruction; kinematics; mechanoception; patient care; patient monitoring; patient rehabilitation; wearable computers; 3-D tibio-femoral joint kinematics acquisition; ACL reconstructed subjects; ACL-R subject monitoring assessment; ACL-R subject monitoring performance; ACL-R subject recovery monitoring systems; ACL-R subject recovery stage; EMG data acquisition; EMG features; EMG sensors; adaptive neuro-fuzzy inference technique; ambulatory activity-based system testing accuracy; ambulatory testing activities; anterior cruciate ligament reconstructed subjects; average system testing accuracy; balance testing activities; clinician decision supporting tool; electromyography data acquisition; electromyography features; electromyography sensors; feature extraction; fuzzy clustering technique; integrated 3-D kinematics; integrated feature set generation; integrated feature sets; intelligent recovery evaluation system; intelligent recovery progress evaluation system; physiatrist decision supporting tool; physiotherapist decision supporting tool; physiotherapist-led system assessment; quantitative ACL-R subject rehabilitation analysis; standard objective scores; standard subjective scores; subject recovery progress assessment indicators; subject recovery progress percentage; subject recovery stage identification; surrounding muscles; system-performed overall recovery evaluation; wireless body-mounted inertial sensor; Electromyography; Feature extraction; Kinematics; Muscles; Sensor systems; Testing; Electromyography; fuzzy systems; kinematics; knee injury; motion sensors; rehabilitation;
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
DOI :
10.1109/JBHI.2014.2320408