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A new feature extraction method for signal classification applied to cord dorsum potential detection

机译:一种用于信号分类的新特征提取方法用于脐带背电位检测

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摘要

In the spinal cord of the anesthetized cat, spontaneous cord dorsum potentials (CDPs) appear synchronously along the lumbo-sacral segments. These CDPs have different shapes and magnitudes. Previous work has indicated that some CDPs appear to be specially associated with the activation of spinal pathways that lead to primary afferent depolarization and presynaptic inhibition. Visual detection and classification of these CDPs provides relevant information on the functional organization of the neural networks involved in the control of sensory information and allows the characterization of the changes produced by acute nerve and spinal lesions. We now present a novel feature extraction approach for signal classification, applied to CDP detection. The method is based on an intuitive procedure. We first remove by convolution the noise from the CDPs recorded in each given spinal segment. Then, we assign a coefficient for each main local maximum of the signal using its amplitude and distance to the most important maximum of the signal. These coefficients will be the input for the subsequent classification algorithm. In particular, we employ gradient boosting classification trees. This combination of approaches allows a faster and more accurate discrimination of CDPs than is obtained by other methods.
机译:在麻醉猫的脊髓中,自发脊髓背侧电位(CDP)沿腰-段同步出现。这些CDP具有不同的形状和大小。先前的工作表明,某些CDP似乎与导致主要传入去极化和突触前抑制的脊髓途径激活特别相关。这些CDP的视觉检测和分类提供了有关参与感觉信息控制的神经网络的功能组织的相关信息,并可以表征急性神经和脊柱病变产生的变化。现在,我们提出了一种用于信号分类的新颖特征提取方法,应用于CDP检测。该方法基于直观的过程。我们首先通过卷积除去记录在每个给定脊柱节段中的CDP的噪声。然后,我们使用信号的幅度和到信号最重要最大值的距离为信号的每个主要局部最大值分配一个系数。这些系数将作为后续分类算法的输入。特别是,我们采用梯度增强分类树。与其他方法相比,这种方法的组合可以更快,更准确地区分CDP。

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  • 来源
    《Journal of neural engineering》 |2012年第5期|p.056009.1-056009.11|共11页
  • 作者单位

    Computational Intelligence Group, Departamento de Inteligencia Artificial, Universidad Politecnica de Madrid, Madrid, Spain;

    Departamento de Fisiologia, Biofisica y Neurociencias, Centra de Investigation y Estudios Avanzados del Instituto Politecnico Nacional, Mexico DF, Mexico,Centra de Investigacion en Matematicas, Universidad Autonoma de Hidalgo, Mexico;

    Computational Intelligence Group, Departamento de Inteligencia Artificial, Universidad Politecnica de Madrid, Madrid, Spain;

    Computational Intelligence Group, Departamento de Inteligencia Artificial, Universidad Politecnica de Madrid, Madrid, Spain;

    Departamento de Fisiologia, Biofisica y Neurociencias, Centra de Investigation y Estudios Avanzados del Instituto Politecnico Nacional, Mexico DF, Mexico;

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