首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Depth and intensity of equivalent current dipoles estimated through an inverse analysis of surface electromyograms using the image method.
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Depth and intensity of equivalent current dipoles estimated through an inverse analysis of surface electromyograms using the image method.

机译:通过使用图像方法对表面肌电图进行逆分析来估算等效电流偶极子的深度和强度。

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摘要

The depth and intensity of equivalent current dipoles that can create the surface potentials of active motor units in human skeletal muscles are estimated through an inverse analysis of surface electromyographic (EMG) potentials in an attempt to measure detailed muscular activity non-invasively. The inverse analysis is conducted by repetition of forward analyses. In the study, the image method is used for forward analysis, because it is the simplest potential calculation method for electric currents in a semi-infinite volume conductor. Using this method, surface EMG potentials are calculated for current sources assumed to be located in a muscle. An inverse analysis is then carried out by searching for the depth and intensity of such current sources that would minimise the sum of squares difference between measured and calculated surface EMG potentials. The inverse analysis is applied to surface EMG potentials measured from the biceps brachii of three healthy subjects. As a result, the individual current sources are estimated to be 2.7 +/- 1.6 mm deep and 0.5 +/- 0.9 nAm in intensity, whereas the total current intensity for individual motor units is 2.4 +/- 2.9 nAm.
机译:可通过对表面肌电图(EMG)电位进行逆分析来估算可在人体骨骼肌中产生主动运动单位表面电位的等效电流偶极子的深度和强度,以试图以非侵入方式测量详细的肌肉活动。逆分析是通过重复进行正向分析来进行的。在这项研究中,将图像方法用于正向分析,因为它是用于半无限体积导体中电流的最简单的电势计算方法。使用这种方法,可以为假定位于肌肉中的电流源计算表面肌电势。然后,通过搜索这样的电流源的深度和强度来进行反分析,该深度和强度将使测量到的和计算出的表面肌电势之间的平方差最小化。逆分析适用于从三个健康受试者的肱二头肌肱二头肌测得的表面肌电势。结果,单个电流源的深度估计为2.7 +/- 1.6 mmA,强度为0.5 +/- 0.9 nAm,而单个电机的总电流强度为2.4 +/- 2.9 nAm。

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