Wl. Wu et Fc. Su, Potential of the back propagation neural network in the assessment of gaitpatterns in ankle arthrodesis, CLIN BIOMEC, 15(2), 2000, pp. 143-145
Objective. The purpose of this study was to recognize gait pattern in ankle
arthrodesis by using a neural network trained with time domain input and c
ompare the performance of the neural network with the statistical method.
Design. Three-layered feed-forward back propagation neural network and a st
atistical method were used to classify gait patterns of patients with ankle
arthrodesis and normal subjects.
Background. Although backpropagation neural networks are very efficient in
many pattern recognition tasks, they have not been used for gait pattern re
cognition of ankle arthrodesis.
Methods. A total of eighteen parameters measured by force platforms, includ
ing nine force parameters and their chronologic incidence of occurrence, we
re used to classify gait patterns.
Results. The results showed that the neural network model was able to class
ify subjects with recognition rates up to 95.8%. In contrast, the statistic
al method was only able to classify the subjects with recognition rates of
91.5%.
Conclusions. The backpropagation neural network method has better accuracy
than the statistical method in discriminating subjects and the time domain
features carry important prognostic information.