...
首页> 外文期刊>BioSystems >Learning systems in biosignal analysis
【24h】

Learning systems in biosignal analysis

机译:生物信号分析中的学习系统

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

In biosignal analysis, the utility of artificial neural networks (ANN) in classifying electromyographic (EMG) data trained with the momentum back propagation algorithm has recently been demonstrated. In the current study, the self-organizing feature map algorithm, the genetics-based machine learning (GBML) paradigm, and the K-means nearest neighbour clustering algorithm are applied on the same set of data. The aim of this exercise is to show how these three paradigms can be used in practice, given that their diagnostic performance is problem- and parameter-dependent. A total of 720 macro EMG recordings were carried out from four groups, from seven normal, nine motor neuron disease, 14 Becker's muscular dystrophy, and six spinal muscular atrophy subjects, respectively. Twenty-three of the subjects were used for training and 13 for evaluating the various models. For each subject, the mean and the standard deviation of the parameters (i) amplitude, (ii) area, (iii) average power and (iv) duration were extracted. The feature vector was structured in two different ways for input to the models: an eight-input feature vector that consisted of both the mean and the standard deviation of the four parameters measured, and a four-input feature vector that included only the mean of the parameters. Also, due to the heterogenous nature of the spinal muscular atrophy group, three class models that excluded this group were investigated. In general, self-organizing feature map and GBML models resulted in comparable diagnostic performance of the order of 80-90% correct classifications (CCs) score for the evaluation set, whereas the K-means nearest neighbour algorithm models gave lower percentage CCs. Furthermore, for all three learning paradigms: better diagnostic performance was obtained for the three class models compared with the four class models; similar diagnostic performance was obtained for both the eight- and four-input feature vectors. Finally, it is claimed that the proposed methodology followed in this work can be applied for the development of diagnostic systems in the analysis of biosignals. Copyright (C) 1997 Elsevier Science Ireland Ltd.
机译:在生物信号分析中,最近已证明了人工神经网络(ANN)在对由动量反向传播算法训练的肌电图(EMG)数据进行分类中的效用。在当前的研究中,自组织特征图算法,基于遗传的机器学习(GBML)范例和K均值最近邻居聚类算法应用于同一组数据。本练习的目的是展示这三个范例在诊断性能取决于问题和参数的情况下如何在实践中使用。分别从7个正常组,9个运动神经元疾病,14个Becker肌营养不良症和6个脊髓性肌萎缩受试者的四个组进行了总共720次宏观EMG记录。 23个主题用于训练,13个主题用于评估各种模型。对于每个受试者,提取参数(i)振幅,(ii)面积,(iii)平均功率和(iv)持续时间的平均值和标准偏差。以两种不同的方式构造特征向量,以输入模型:由八项输入的特征向量组成,其中包括测量的四个参数的均值和标准差;以及四项输入的特征向量,仅包含以下项的均值:参数。另外,由于脊髓性肌萎缩症组的异质性,研究了排除该组的三类模型。通常,自组织特征图和GBML模型可为评估集提供可比的80-90%正确分类(CC)分数的诊断性能,而K均值最近邻居算法模型给出的CC百分比较低。此外,对于所有三种学习范例:与四类模型相比,三类模型获得了更好的诊断性能;对于八输入特征向量和四输入特征向量,获得了相似的诊断性能。最后,据称这项工作中遵循的拟议方法可以用于生物信号分析中诊断系统的开发。版权所有(C)1997 Elsevier Science Ireland Ltd.

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号