TL;DR
This paper introduces a deep learning-based gait analysis system using 1D-Convnet for accurate Parkinson's disease detection and severity prediction, achieving state-of-the-art results and aiding clinical diagnosis.
Contribution
It presents a novel 1D-Convnet model that processes gait sensor data for Parkinson's detection and severity prediction, outperforming existing methods.
Findings
Achieved 98.7% accuracy in Parkinson's detection
Achieved 85.3% accuracy in severity prediction
First to predict severity using UPDRS with high accuracy
Abstract
Diagnosing Parkinson's disease is a complex task that requires the evaluation of several motor and non-motor symptoms. During diagnosis, gait abnormalities are among the important symptoms that physicians should consider. However, gait evaluation is challenging and relies on the expertise and subjectivity of clinicians. In this context, the use of an intelligent gait analysis algorithm may assist physicians in order to facilitate the diagnosis process. This paper proposes a novel intelligent Parkinson detection system based on deep learning techniques to analyze gait information. We used 1D convolutional neural network (1D-Convnet) to build a Deep Neural Network (DNN) classifier. The proposed model processes 18 1D-signals coming from foot sensors measuring the vertical ground reaction force (VGRF). The first part of the network consists of 18 parallel 1D-Convnet corresponding to system…
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