DocumentCode
61498
Title
Accurate and Reliable Gait Cycle Detection in Parkinson´s Disease
Author
Hundza, Sandra R. ; Hook, William R. ; Harris, Christopher R. ; Mahajan, Sunny V. ; Leslie, Paul A. ; Spani, Carl A. ; Spalteholz, Leonhard G. ; Birch, Benjamin J. ; Commandeur, Drew T. ; Livingston, Nigel J.
Author_Institution
Sch. of Exercise Sci., Phys. & Health Educ., Univ. of Victoria, Victoria, BC, Canada
Volume
22
Issue
1
fYear
2014
fDate
Jan. 2014
Firstpage
127
Lastpage
137
Abstract
There is a growing interest in the use of Inertial Measurement Unit (IMU)-based systems that employ gyroscopes for gait analysis. We describe an improved IMU-based gait analysis processing method that uses gyroscope angular rate reversal to identify the start of each gait cycle during walking. In validation tests with six subjects with Parkinson disease (PD), including those with severe shuffling gait patterns, and seven controls, the probability of True-Positive event detection and False-Positive event detection was 100% and 0%, respectively. Stride time validation tests using high-speed cameras yielded a standard deviation of 6.6 ms for controls and 11.8 ms for those with PD. These data demonstrate that the use of our angular rate reversal algorithm leads to improvements over previous gyroscope-based gait analysis systems. Highly accurate and reliable stride time measurements enabled us to detect subtle changes in stride time variability following a Parkinson´s exercise class. We found unacceptable measurement accuracy for stride length when using the Aminian gyro-based biomechanical algorithm, with errors as high as 30% in PD subjects. An alternative method, using synchronized infrared timing gates to measure velocity, combined with accurate mean stride time from our angular rate reversal algorithm, more accurately calculates mean stride length.
Keywords
biomedical equipment; biomedical optical imaging; diseases; gait analysis; gyroscopes; image sensors; infrared imaging; neurophysiology; probability; synchronisation; IMU-based gait analysis processing method; Parkinson disease; Parkinson exercise class; accurate gait cycle detection; angular rate reversal algorithm; biomechanical algorithm; false-positive event detection probability; gyroscope angular rate; high-speed cameras; inertial measurement unit-based systems; reliable gait cycle detection; shuffling gait patterns; standard deviation; stride time validation testing; synchronized infrared timing gates; true-positive event detection probability; Accuracy; Event detection; Gyroscopes; Legged locomotion; Reliability; Timing; Angular rate reversal; Parkinsons; continuous walking gait analysis; gyroscope; medical instrumentation; stride event detection; stride time validation; stride time variability;
fLanguage
English
Journal_Title
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1534-4320
Type
jour
DOI
10.1109/TNSRE.2013.2282080
Filename
6644261
Link To Document