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首页> 外文期刊>Biomedical Engineering: Applications, Basis and Communications >PRESENTING A NEW DECISION SUPPORT SYSTEM FOR SCREENING PARKINSON’S DISEASE PATIENTS USING SYMLET WAVELET
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PRESENTING A NEW DECISION SUPPORT SYSTEM FOR SCREENING PARKINSON’S DISEASE PATIENTS USING SYMLET WAVELET

机译:介绍一种新的决策支持系统,用于使用Spyl小波筛选帕金森病患者

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Objective: Parkinson’s Disease (PD) is a neurodegenerative disease that is categorized by tremor, rigidity, and bradykinesia. Currently, there is no standard method to diagnose patients with PD. One of the common symptoms of PD is gait disorders which are caused by rigid muscles. Gait disorders may start some years before disease diagnosis. Therefore, better understanding of the gait signal can lead to early diagnosis of PD.Methods: Computer-aided system has been useful in early detection of PD symptoms. In the present study, gait disturbances have received attention as potential biomarkers for early diagnosing of PD. Time and frequency analysis of gait signals together can provide more useful information. Wavelet-based features were extracted from stride, swing and double support time signals of healthy subjects and PD patients. These signals were decomposed into five levels using “sym4” wavelet. Mean and standard deviation (SD) of the absolute values of the approximation and detailed coefficients at each level were computed. Then final features were picked accordingly to obtain the best result for the classification.Results: Support Vector Machine (SVM) was employed for classification of patients and healthy people. The classifier performance was measured based on accuracy, sensitivity and specificity. The classifier performance is obtained with 93.3% accuracy employing linear kernel.Conclusions: The proposed system can be employed as a Decision Support Systems (DSSs) for early diagnosing of PD. Presenting DSSs can be employed to screen suspected cases of PD disease for further evaluation. Studying large number of patients and healthy subjects may lead to more precise study on PD. Also, it seems that using other different classifiers, along with our features, can reduce the diagnosis error.
机译:目的:帕金森病(PD)是一种神经变性疾病,由震颤,刚性和Bradykinesia分类。目前,没有标准方法诊断PD患者。 PD的常见症状之一是由刚性肌肉引起的步态障碍。步态障碍可能在疾病诊断前几年开始。因此,更好地理解步态信号可以导致PD.Method的早期诊断:计算机辅助系统在早期检测PD症状。在本研究中,步态干扰受到关注作为早期诊断PD的潜在生物标志物。步态信号的时间和频率分析在一起可以提供更有用的信息。从健康受试者和PD患者的高级,摆动和双支撑时间信号中提取基于小波的特征。这些信号使用“SYM4”小波分解成五个级别。计算了每个级别的近似和详细系数的绝对值的平均值和标准偏差(SD)。然后挑选最终特征,以获得分类的最佳结果。结果:支持向量机(SVM)用于患者和健康人的分类。基于精度,灵敏度和特异性来测量分类器性能。使用线性内核的精度为93.3%的精度获得了分类器性能。链接:所提出的系统可以作为决策支持系统(DSSS),用于早期诊断PD。呈现DSSS可用于筛选PD病例的筛选病例进行进一步评价。研究大量患者和健康受试者可能导致对PD的更精确研究。此外,似乎使用其他不同的分类器以及我们的功能,可以降低诊断误差。

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