Pino Lou J, Stashuk Daniel W
University of Waterloo department of Systems Design Engineering, Canada.
Annu Int Conf IEEE Eng Med Biol Soc. 2008;2008:4138-41. doi: 10.1109/IEMBS.2008.4650120.
Based on the analysis of electromyographic (EMG) data muscles are often characterized as normal or affected by a neuromuscular disorder. Motor unit potential (MUP) characterizations comprised of the conditional probabilities of a MUP being detected from a muscle of each of the following categories: myopathic, normal, and neuropathic, were estimated. The sets of MUP characterizations of a set of MUPs detected in a muscle were averaged to produce a set of muscle characterization measures related to the probability of the muscle belonging to each category conditioned on the set of MUPs detected. Using simulated EMG signals, the objective of this work was to evaluate the correlation between the muscle characterization measures produced by different MUP characterization methods and the level of involvement of a disorder. The results showed a correlation of 0.9 between myopathic and neuropathic muscle characterization measures and the actual level of involvement when using a Pattern Discovery (PD) method to estimate MUP characterizations. This work suggests that MUP characterizations can be used to assist clinicians in tracking the progress of a disease process.
基于肌电图(EMG)数据的分析,肌肉通常被表征为正常或受神经肌肉疾病影响。估计了运动单位电位(MUP)的特征,其由从以下每类肌肉中检测到MUP的条件概率组成:肌病性、正常和神经病性。对在一块肌肉中检测到的一组MUP的MUP特征集进行平均,以产生一组与该肌肉属于基于检测到的MUP集的每个类别的概率相关的肌肉特征测量值。使用模拟的EMG信号,这项工作的目的是评估不同MUP特征方法产生的肌肉特征测量值与疾病受累程度之间的相关性。结果表明,当使用模式发现(PD)方法估计MUP特征时,肌病性和神经病性肌肉特征测量值与实际受累程度之间的相关性为0.9。这项工作表明,MUP特征可用于协助临床医生跟踪疾病进程。