Title :
Accelerometry-Based Gait Analysis and Its Application to Parkinson´s Disease Assessment— Part 1: Detection of Stride Event
Author :
Yoneyama, Mitsuru ; Kurihara, Yosuke ; Watanabe, K. ; Mitoma, Hiroshi
Author_Institution :
Mitsubishi Chem. Group, Sci. & Technol. Res. Center, Inc., Yokohama, Japan
Abstract :
Gait analysis is widely recognized as a promising tool for obtaining objective information on the walking behavior of Parkinson´s disease (PD) patients. It is especially useful in clinical practices if gait properties can be captured with minimal instrumentation that does not interfere with the subject´s usual behavioral pattern under ambulatory conditions. In this study, we propose a new gait analysis system based on a trunk-mounted acceleration sensor and automatic gait detection algorithm. The algorithm identifies the acceleration signal with high intensity, periodicity, and biphasicity as a possible gait sequence, from which gait peaks due to stride events are extracted by utilizing the cross-correlation and anisotropy properties of the signal. A total of 11 healthy subjects and 12 PD patients were tested to evaluate the performance of the algorithm. The result indicates that gait peaks can be detected with an accuracy of more than 94%. The proposed method may serve as a practical component in the accelerometry-based assessment of daily gait characteristics.
Keywords :
accelerometers; diseases; feature extraction; gait analysis; medical disorders; medical signal detection; medical signal processing; neurophysiology; psychology; sequences; PD patient walking behavior; Parkinson disease assessment; acceleration signal identification; accelerometry-based gait analysis; ambulatory conditions; anisotropy properties; automatic gait detection algorithm; behavioral pattern; clinical practices; cross-correlation properties; daily gait characteristics assessment; gait analysis system; gait peak detection accuracy; gait properties; gait sequence; signal biphasicity identification; signal intensity identification; signal periodicity identification; stride event detection; stride event extraction; trunk-mounted acceleration sensor; Accelerometers; Parkinson´s disease (PD); biomedical signal processing; gait analysis;
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
DOI :
10.1109/TNSRE.2013.2260561