Department of Systems Design Engineering, University of Waterloo, Canada.
Med Eng Phys. 2011 Jun;33(5):581-9. doi: 10.1016/j.medengphy.2010.12.012. Epub 2011 Jan 26.
A decomposed electromyographic (EMG) signal provides information that can be used clinically or for physiological investigation. However, in all instances the validity of the extracted motor unit potential trains (MUPTs) must first be determined because, as with all pattern recognition applications, errors will occur during decomposition. Moreover, detecting invalid MUPTs during EMG signal decomposition can enhance decompositions results. Eight methods to validate an extracted MUPT using its motor unit potential (MUP) shape information were studied. These MUPT validation methods are based on existing cluster analysis algorithms, four were newly developed adaptive methods and four were classical cluster validation methods. The methods evaluate the shapes of the MUPs of a MUPT to determine whether the MUPT represents the activity of a single motor unit (i.e. it is a valid MUPT) or not. Evaluation results using both simulated and real data show that the newly developed adaptive methods are sufficiently fast and accurate to be used during or after the decomposition of EMG signals. The adaptive gap-based Duda and Hart (AGDH) method had significantly better accuracies in correctly categorizing the MUPTs extracted during decomposition (91.3% and 94.7% for simulated and real data, respectively; assuming 12.7% of the extracted MUPTs are on average invalid). The accuracy with which invalid MUPTs can be detected is dependent on the similarity of the MUP templates of the MUPTs merged to create the invalid train and suggests the need, in some cases, for the combined use of motor unit firing pattern and MUP shape information.
一段分解的肌电图(EMG)信号提供了可用于临床或生理研究的信息。然而,在所有情况下,都必须首先确定提取的运动单位电位(MUP)的有效性,因为与所有模式识别应用一样,在分解过程中会出现错误。此外,在 EMG 信号分解过程中检测无效的 MUPT 可以增强分解结果。研究了使用其运动单位电位(MUP)形状信息验证提取的 MUPT 的八种方法。这些 MUPT 验证方法基于现有的聚类分析算法,其中四种是新开发的自适应方法,四种是经典的聚类验证方法。这些方法评估 MUPT 的 MUP 形状,以确定 MUPT 是否代表单个运动单位的活动(即它是有效的 MUPT)。使用模拟和真实数据的评估结果表明,新开发的自适应方法足够快速和准确,可以在 EMG 信号分解期间或之后使用。基于自适应间隙的 Duda 和 Hart(AGDH)方法在正确分类分解过程中提取的 MUPT 方面具有显著更高的准确性(模拟数据和真实数据分别为 91.3%和 94.7%;假设提取的 MUPT 中有 12.7%平均无效)。可以检测到无效 MUPT 的准确性取决于创建无效训练的 MUPT 的 MUP 模板的相似性,并表明在某些情况下需要结合使用运动单位发射模式和 MUP 形状信息。