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Novel Method of Classification in Knee Osteoarthritis: Machine Learning Application Versus Logistic Regression Model
Annals of Rehabilitation Medicine ; : 415-427, 2020.
Article in English | WPRIM | ID: wpr-889212
ABSTRACT
Objective@#To present new classification methods of knee osteoarthritis (KOA) using machine learning and compare its performance with conventional statistical methods as classification techniques using machine learning have recently been developed. @*Methods@#A total of 84 KOA patients and 97 normal participants were recruited. KOA patients were clustered into three groups according to the Kellgren-Lawrence (K-L) grading system. All subjects completed gait trials under the same experimental conditions. Machine learning-based classification using the support vector machine (SVM) classifier was performed to classify KOA patients and the severity of KOA. Logistic regression analysis was also performed to compare the results in classifying KOA patients with machine learning method. @*Results@#In the classification between KOA patients and normal subjects, the accuracy of classification was higher in machine learning method than in logistic regression analysis. In the classification of KOA severity, accuracy was enhanced through the feature selection process in the machine learning method. The most significant gait feature for classification was flexion and extension of the knee in the swing phase in the machine learning method. @*Conclusion@#The machine learning method is thought to be a new approach to complement conventional logistic regression analysis in the classification of KOA patients. It can be clinically used for diagnosis and gait correction of KOA patients.
Full text: Available Index: WPRIM (Western Pacific) Language: English Journal: Annals of Rehabilitation Medicine Year: 2020 Type: Article

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Full text: Available Index: WPRIM (Western Pacific) Language: English Journal: Annals of Rehabilitation Medicine Year: 2020 Type: Article