Two-Stage Convolutional Neural Network for Classification of Movement Patterns in Tremor Patients

Information Pub Date : 2024-04-18 DOI:10.3390/info15040231
Patricia Weede, Piotr Dariusz Smietana, Gregor Kuhlenbäumer, Günther Deuschl, Gerhard Schmidt
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Abstract

Accurate tremor classification is crucial for effective patient management and treatment. However, clinical diagnoses are often hindered by misdiagnoses, necessitating the development of robust technical methods. Here, we present a two-stage convolutional neural network (CNN)-based system for classifying physiological tremor, essential tremor (ET), and Parkinson’s disease (PD) tremor. Employing acceleration signals from the hands of 408 patients, our system utilizes both medically motivated signal features and (nearly) raw data (by means of spectrograms) as system inputs. Our model employs a hybrid approach of data-based and feature-based methods to leverage the strengths of both while mitigating their weaknesses. By incorporating various data augmentation techniques for model training, we achieved an overall accuracy of 88.12%. This promising approach demonstrates improved accuracy in discriminating between the three tremor types, paving the way for more precise tremor diagnosis and enhanced patient care.
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用于震颤患者运动模式分类的两级卷积神经网络
准确的震颤分类对于有效的患者管理和治疗至关重要。然而,临床诊断常常受到误诊的阻碍,因此有必要开发强大的技术方法。在此,我们提出了一种基于卷积神经网络(CNN)的两阶段系统,用于对生理性震颤、本质性震颤(ET)和帕金森病(PD)震颤进行分类。我们的系统采用 408 名患者手部的加速度信号,利用医学上的信号特征和(几乎)原始数据(通过频谱图)作为系统输入。我们的模型采用了基于数据和基于特征的混合方法,以充分利用二者的优势,同时减轻其不足。通过采用各种数据增强技术进行模型训练,我们的总体准确率达到了 88.12%。这种有前途的方法提高了区分三种震颤类型的准确性,为更精确的震颤诊断和更好的患者护理铺平了道路。
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