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Detection of Periodic Leg Movements by Machine Learning Methods Using Polysomnographic Parameters Other Than Leg Electromyography

机译:使用除腿肌电图之外的多酷科图参数的机器学习方法检测定期腿部运动

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摘要

The number of channels used for polysomnographic recording frequently causes difficulties for patients because of the many cables connected. Also, it increases the risk of having troubles during recording process and increases the storage volume. In this study, it is intended to detect periodic leg movement (PLM) in sleep with the use of the channels except leg electromyography (EMG) by analysing polysomnography (PSG) data with digital signal processing (DSP) and machine learning methods. PSG records of 153 patients of different ages and genders with PLM disorder diagnosis were examined retrospectively. A novel software was developed for the analysis of PSG records. The software utilizes the machine learning algorithms, statistical methods, and DSP methods. In order to classify PLM, popular machine learning methods (multilayer perceptron, K-nearest neighbour, and random forests) and logistic regression were used. Comparison of classified results showed that while K-nearest neighbour classification algorithm had higher average classification rate (91.87%) and lower average classification error value (RMSE = 0.2850), multilayer perceptron algorithm had the lowest average classification rate (83.29%) and the highest average classification error value (RMSE = 0.3705). Results showed that PLM can be classified with high accuracy (91.87%) without leg EMG record being present.
机译:由于连接的电缆,用于多仪表录制的通道数通常对患者造成困难。此外,它增加了在记录过程中具有麻烦并增加存储体积的风险。在这项研究中,通过使用数字信号处理(DSP)和机器学习方法,通过使用除腿肌动画(EMG)以外的通道来检测睡眠中的周期腿运动(PLM)。回顾性地检查了153例不同年龄和PLM障碍诊断的患者153名患者的PSG记录。开发了一种新软件,用于分析PSG记录。该软件利用机器学习算法,统计方法和DSP方法。为了对PLM进行分类,使用流行的机器学习方法(多层的Perceptron,K最近邻居和随机林)和逻辑回归。分类结果的比较显示,虽然K最近邻分类算法具有更高的平均分类率(91.87%)和较低的平均分类误差值(RMSE = 0.2850),但多层的Perceptron算法具有最低的平均分类率(83.29%)和最高的平均分类误差值(RMSE = 0.3705)。结果表明,PLM可以以高精度(91.87%)分类,没有腿部EMG记录。

著录项

  • 作者

    İlhan Umut; Güven Çentik;

  • 作者单位
  • 年度 2016
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 入库时间 2022-08-20 22:06:17

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