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基于注意力 U-Net 的超声自动提取肌肉参数。

Automatic Extraction of Muscle Parameters with Attention UNet in Ultrasonography.

机构信息

Electronics Laboratory, Department of Physics, University of Patras, 26504 Patras, Greece.

Department of Medical Physics, School of Medicine, University of Patras, 26504 Patras, Greece.

出版信息

Sensors (Basel). 2022 Jul 13;22(14):5230. doi: 10.3390/s22145230.

Abstract

Automatically delineating the deep and superficial aponeurosis of the skeletal muscles from ultrasound images is important in many aspects of the clinical routine. In particular, finding muscle parameters, such as thickness, fascicle length or pennation angle, is a time-consuming clinical task requiring both human labour and specialised knowledge. In this study, a multi-step solution for automating these tasks is presented. A process to effortlessly extract the aponeurosis for automatically measuring the muscle thickness has been introduced as a first step. This process consists mainly of three parts. In the first part, the Attention UNet has been incorporated to automatically delineate the boundaries of the studied muscles. Afterwards, a specialised post-processing algorithm was utilised to improve (and correct) the segmentation results. Lastly, the calculation of the muscle thickness was performed. The proposed method has achieved similar to a human-level performance. In particular, the overall discrepancy between the automatic and the manual muscle thickness measurements was equal to 0.4 mm, a significant result that demonstrates the feasibility of automating this task. In the second step of the proposed methodology, the fascicle's length and pennation angle are extracted through an unsupervised pipeline. Initially, filtering is applied to the ultrasound images to further distinguish the tissues from the other muscle structures. Later, the well-known K-Means algorithm is used to isolate them successfully. As the last step, the dominant angle of the segmented muscle tissues is reported and compared with manual measurements. The proposed pipeline is showing very promising results in the evaluated dataset. Specifically, in the calculation of the pennation angle, the overall discrepancy between the automatic and the manual measurements was less than 2.22° (degrees), once more comparable with the human-level performance. Finally, regarding the fascicle length measurements, the results were divided based on the muscle properties. In the muscles where a large portion (or all) of the fascicles are located between the upper and lower aponeuroses, the proposed pipeline exhibits superb performance; otherwise, overall accuracy deteriorates due to errors caused by the trigonometric approximations needed for the length calculation.

摘要

从超声图像中自动描绘骨骼肌肉的深、浅肌腱膜在许多临床常规中都很重要。特别是,寻找肌肉参数,如厚度、肌束长度或羽状角,是一项需要人力和专业知识的耗时临床任务。在这项研究中,提出了一种自动化这些任务的多步骤解决方案。作为第一步,引入了一种轻松提取肌腱膜以自动测量肌肉厚度的过程。该过程主要由三部分组成。在第一部分中,引入了注意力 UNet 来自动描绘研究肌肉的边界。之后,利用专门的后处理算法来改进(和纠正)分割结果。最后,计算肌肉厚度。所提出的方法已达到类似人类水平的性能。特别是,自动和手动肌肉厚度测量之间的总体差异等于 0.4 毫米,这一显著结果表明了自动化这项任务的可行性。在所提出的方法的第二步中,通过无监督流水线提取肌束的长度和羽状角。首先,对超声图像进行滤波,以进一步将组织与其他肌肉结构区分开来。之后,成功使用了著名的 K-Means 算法将它们分离。作为最后一步,报告并比较分段肌肉组织的主导角度与手动测量值。所提出的流水线在评估数据集上显示出非常有前途的结果。具体来说,在羽状角的计算中,自动和手动测量之间的总体差异小于 2.22°(度),再次与人类水平的性能相当。最后,关于肌束长度的测量,结果根据肌肉特性进行了划分。在所研究的肌肉中,大部分(或全部)肌束位于上、下肌腱膜之间,所提出的流水线表现出色;否则,由于长度计算所需的三角近似误差,整体准确性会恶化。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7b54/9324543/bc0d0a9a723f/sensors-22-05230-g001.jpg

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