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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >The Sensitive and Efficient Detection of Quadriceps Muscle Thickness Changes in Cross-Sectional Plane Using Ultrasonography: A Feasibility Investigation
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The Sensitive and Efficient Detection of Quadriceps Muscle Thickness Changes in Cross-Sectional Plane Using Ultrasonography: A Feasibility Investigation

机译:超声检查断面中股四头肌肌肉厚度变化的灵敏有效检测:可行性研究

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摘要

As a direct determinant parameter to quantify muscle activity, the muscle thickness (MT) has been investigated in many aspects and for various purposes. Ultrasonography (US) is a promising modality to detect muscle morphological changes during contractions since it is portable, noninvasive, and real time. However, there are few reports on sensitive and efficient estimation of changes of MT in a cross-sectional plane. In this feasibility investigation, we proposed a coarse-to-fine method based on a compressive-tracking algorithm for estimation of MT changes during an example task of isometric knee extension using ultrasound images. The sensitivity and efficiency are evaluated with 1920 US images from quadriceps muscle (QM) in eight subjects. The detection results were compared with those obtained from both traditional manual measurement and the well known normalized cross-correlation method, and the effect of the size of tracking window on detection performance was evaluated as well. It is demonstrated that the proposed method agrees well with the manual measurement. Meanwhile, it is not only sensitive to relatively small changes of MT but also computationally efficient.
机译:作为量化肌肉活动的直接决定因素,已经在许多方面和出于各种目的研究了肌肉厚度(MT)。超声检查(US)是便携式,无创且实时的,是一种在收缩过程中检测肌肉形态变化的有前途的方法。但是,很少有关于灵敏有效地估计横截面MT变化的报道。在此可行性研究中,我们提出了一种基于压缩跟踪算法的从粗到细的方法,用于估计使用超声图像进行等距膝盖伸展的示例任务期间的MT变化。灵敏度和效率通过1920股四头肌肌肉(QM)的US图像进行评估。将检测结果与从传统手动测量和众所周知的归一化互相关方法获得的结果进行比较,并评估跟踪窗口大小对检测性能的影响。结果表明,所提出的方法与人工测量吻合良好。同时,它不仅对MT的相对较小的变化敏感,而且对计算效率也很敏感。

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