通过步态分析和机器学习方法对偏瘫进行分类

IF 0.2 Q4 MEDICINE, GENERAL & INTERNAL Marmara Medical Journal Pub Date : 2023-04-13 DOI:10.5472/marumj.1379890
Hazal TAŞ, Ahmet YARDIMCI, Hilmi UYSAL, Uğur BİLGE
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 software with an accuracy of 86.1% correct prediction.
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 walking. It is important to objectively determine the stage of the disease in order to decide interventions and treatment strategies. This
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 Patients and Methods: In the first part of the study, the gait signal data were taken from 28 post-stroke hemiplegic patients and
 7 healthy individuals with three-axis accelerometers. In the second part, new gait data were collected from 15 healthy individuals
 through an accelerometer on the anteroposterior axis.
 First the accelerometer signals were decomposed to Daubechies 5 (Db5) level six wavelets using MATLAB software. Subsequently,
 these attributes were classified through several classifier and machine learning algorithms on WEKA and MATLAB software packages
 to predict the stages of hemiplegia.
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引用次数: 0

摘要

目的:步态分析是一种用于了解正常行走和确定疾病阶段的方法,因为它影响了 散步。重要的是客观地确定疾病的阶段,以确定干预措施和治疗策略。这个# x0D;研究旨在通过分析偏瘫患者的步态数据来确定布伦斯特罗姆期。 患者和方法:在研究的第一部分,步态信号数据取自28例脑卒中后偏瘫患者和 7个健康的人带着三轴加速度计。在第二部分中,收集了15名健康个体的新步态数据 通过前后轴上的加速度计。 首先利用MATLAB软件将加速度计信号分解为Db5级6小波;随后,& # x0D;在WEKA和MATLAB软件包上通过几种分类器和机器学习算法对这些属性进行分类 预测偏瘫的分期。 结果:LogitBoost算法在WEKA与 上预测偏瘫分期准确率最高;35个样本91%,50个样本90%。这个性能之后是在MATLAB 软件的正确预测准确率为86.1%。 结论:机器学习算法可预测偏瘫的Brunnstrom期,准确率较高,对临床偏瘫患者有一定的帮助 医生对偏瘫患者进行正确的分期,并对其康复进行监测和管理。
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Classification of hemiplegia through gait analysis and machine learning methods
Objective: Gait analysis is a method that is used for understanding normal walking and determining the stage of the disease as it affects walking. It is important to objectively determine the stage of the disease in order to decide interventions and treatment strategies. This study aims to determine the Brunnstrom Stage of the hemiplegic patients with an analysis of gait data. Patients and Methods: In the first part of the study, the gait signal data were taken from 28 post-stroke hemiplegic patients and 7 healthy individuals with three-axis accelerometers. In the second part, new gait data were collected from 15 healthy individuals through an accelerometer on the anteroposterior axis. First the accelerometer signals were decomposed to Daubechies 5 (Db5) level six wavelets using MATLAB software. Subsequently, these attributes were classified through several classifier and machine learning algorithms on WEKA and MATLAB software packages to predict the stages of hemiplegia. Results: The highest accuracy rate in the prediction of hemiplegia stage was achieved with the LogitBoost algorithm on WEKA with 91% for 35 samples, and 90% for 50 samples. This performance was followed by the RUSBoosted Trees algorithm on the MATLAB software with an accuracy of 86.1% correct prediction. Conclusion: The Brunnstrom Stage of hemiplegia can be predicted with machine learning algorithms with a good accuracy, helping physicians to classify hemiplegic patients into correct stages, monitor and manage their rehabilitation.
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来源期刊
Marmara Medical Journal
Marmara Medical Journal MEDICINE, GENERAL & INTERNAL-
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期刊介绍: Marmara Medical Journal, Marmara Üniversitesi Tıp Fakültesi tarafından yılda üç kere yayımlanan multidisipliner bir dergidir. Bu dergide tıbbın tüm alanlarına ait orijinal araştırma makaleleri, olgu sunumları ve derlemeler İngilizce veya Türkçe olarak yer alır.
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