Title of article :
Classification of Gait Patterns in Patients with Neurodegenerative Disease Using Adaptive Neuro-Fuzzy Inference System
Author/Authors :
Ye, Qiang Department of Sport and Health Science - Nanjing Sport Institute - Nanjing, China , Xia, Yi School of Electrical Engineering and Automation - Anhui University - Hefei, China , Yao, Zhiming Chinese Academy of Sciences - Hefei, China
Abstract :
A common feature that is typical of the patients with neurodegenerative (ND) disease is the impairment of motor function, which
can interrupt the pathway from cerebrum to the muscle and thus cause movement disorders. For patients with amyotrophic lateral
sclerosis disease (ALS), the impairment is caused by the loss of motor neurons. While for patients with Parkinson’s disease (PD)
and Huntington’s disease (HD), it is related to the basal ganglia dysfunction. Previously studies have demonstrated the usage of
gait analysis in characterizing the ND patients for the purpose of disease management. However, most studies focus on extracting
characteristic features that can differentiate ND gait from normal gait. Few studies have demonstrated the feasibility of modelling
the nonlinear gait dynamics in characterizing the ND gait. -erefore, in this study, a novel approach based on an adaptive neurofuzzy inference system (ANFIS) is presented for identification of the gait of patients with ND disease. -e proposed ANFIS model
combines neural network adaptive capabilities and the fuzzy logic qualitative approach. Gait dynamics such as stride intervals,
stance intervals, and double support intervals were used as the input variables to the model. -e particle swarm optimization
(PSO) algorithm was utilized to learn the parameters of the ANFIS model. -e performance of the system was evaluated in terms
of sensitivity, specificity, and accuracy using the leave-one-out cross-validation method. -e competitive classification results on
a dataset of 13 ALS patients, 15 PD patients, 20 HD patients, and 16 healthy control subjects indicated the effectiveness of our
approach in representing the gait characteristics of ND patients.
Keywords :
Gait , Neuro-Fuzzy , System , ND
Journal title :
Computational and Mathematical Methods in Medicine