Abstract

Patellofemoral pain syndrome (PFPS) is a common disease of the knee. Despite its high incidence rate, its specific cause remains unclear. The artificial neural network model can be used for computer-aided diagnosis. Traditional diagnostic methods usually only consider a single factor. However, PFPS involves different biomechanical characteristics of the lower limbs. Thus, multiple biomechanical characteristics must be considered in the neural network model. The data distribution between different characteristic dimensions is different. Thus, preprocessing is necessary to make the different characteristic dimensions comparable. However, a general rule to follow in the selection of biomechanical data preprocessing methods is lacking, and different preprocessing methods have their own advantages and disadvantages. Therefore, this paper proposes a multi-input convolutional neural network (MI-CNN) method that uses two input channels to mine the information of lower limb biomechanical data from two mainstream data preprocessing methods (standardization and normalization) to diagnose PFPS. Data were augmented by horizontally flipping the multi-dimensional time-series signal to prevent network overfitting and improve model accuracy. The proposed method was tested on the walking and running datasets of 41 subjects (26 patients with PFPS and 15 pain-free controls). Three joint angles of the lower limbs and surface electromyography signals of seven muscles around the knee joint were used as input. MI-CNN was used to automatically extract features to classify patients with PFPS and pain-free controls. Compared with the traditional single-input convolutional neural network (SI-CNN) model and previous methods, the proposed MI-CNN method achieved a higher detection sensitivity of 97.6%, a specificity of 76.0%, and an accuracy of 89.0% on the running dataset. The accuracy of SI-CNN in the running dataset was about 82.5%. The results prove that combining the appropriate neural network model and biomechanical analysis can establish an accurate, convenient, and real-time auxiliary diagnosis system for PFPS to prevent misdiagnosis.

Highlights

  • Patellofemoral pain syndrome (PFPS), known as patellofemoral pain and chondromalacia patellae, often presents as a gradual onset of knee pain behind or around the patella [1,2,3]

  • To solve the above problems, we propose an improved multi-input convolution neural network (MI-CNN) model to diagnose PFPS

  • Compared with single-input convolutional neural network (SI-CNN) and previous methods, multi-input convolutional neural network (MI-CNN) achieved higher accuracy (89.0%) on the running dataset

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Summary

Introduction

Patellofemoral pain syndrome (PFPS), known as patellofemoral pain and chondromalacia patellae, often presents as a gradual onset of knee pain behind or around the patella [1,2,3]. PFPS is a common chronic knee disease, especially among women and athletes [4, 5]. It can cause pain in patients climbing up and down the stairs or squatting, thereby affecting their activities of daily living [6]. PFPS may eventually evolve into patellofemoral osteoarthritis [7,8,9]. The early and accurate diagnosis of PFPS is highly important

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