Joint segmentation of sternocleidomastoid and skeletal muscles in computed tomography images using a multiclass learning approach.

IF 1.7 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Kosuke Ashino, Naoki Kamiya, Xiangrong Zhou, Hiroki Kato, Takeshi Hara, Hiroshi Fujita
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引用次数: 0

Abstract

Deep-learning-based methods can improve robustness against individual variations in computed tomography (CT) images of the sternocleidomastoid muscle, which is a challenge when using conventional methods based on probabilistic atlases are used for automatic segmentation. Thus, this study proposes a novel multiclass learning approach for the joint segmentation of the sternocleidomastoid and skeletal muscles in CT images, and it employs a two-dimensional U-Net architecture. The proposed method concurrently learns and segmented segments the sternocleidomastoid muscle and the entire skeletal musculature. Consequently, three-dimensional segmentation results are generated for both muscle groups. Experiments conducted on a dataset of 30 body CT images demonstrated segmentation accuracies of 82.94% and 92.73% for the sternocleidomastoid muscle and entire skeletal muscle compartment, respectively. These results outperformed those of conventional methods, such as the single-region learning of a target muscle and multiclass learning of specific muscle pairs. Moreover, the multiclass learning paradigm facilitated a robust segmentation performance regardless of the input image range. This highlights the method's potential for cases that present muscle atrophy or reduced muscle strength. The proposed method exhibits promising capabilities for the high-accuracy joint segmentation of the sternocleidomastoid and skeletal muscles and is effective in recognizing skeletal muscles, thus, it holds promise for integration into computer-aided diagnostic systems for comprehensive musculoskeletal analysis. These findings are expected to enhance medical image analysis techniques and their applications in clinical decision support systems.

利用多类学习方法联合分割计算机断层扫描图像中的胸锁乳突肌和骨骼肌
基于深度学习的方法可以提高胸锁乳突肌计算机断层扫描(CT)图像中个体差异的鲁棒性,而在使用基于概率图集的传统方法进行自动分割时,这是一项挑战。因此,本研究针对 CT 图像中胸锁乳突肌和骨骼肌的联合分割提出了一种新颖的多类学习方法,并采用了二维 U-Net 架构。该方法同时学习并分割胸锁乳突肌和整个骨骼肌。因此,两组肌肉都能得到三维分割结果。在 30 幅人体 CT 图像的数据集上进行的实验表明,胸锁乳突肌和整个骨骼肌区的分割准确率分别为 82.94% 和 92.73%。这些结果优于传统方法,如目标肌肉的单区域学习和特定肌肉对的多类学习。此外,无论输入图像的范围如何,多类学习范式都能促进稳健的分割性能。这凸显了该方法在肌肉萎缩或肌肉力量减弱情况下的潜力。所提出的方法在胸锁乳突肌和骨骼肌的高精度关节分割方面表现出良好的能力,并能有效识别骨骼肌,因此有望集成到计算机辅助诊断系统中,进行全面的肌肉骨骼分析。这些发现有望提高医学图像分析技术及其在临床决策支持系统中的应用。
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来源期刊
Radiological Physics and Technology
Radiological Physics and Technology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
3.00
自引率
12.50%
发文量
40
期刊介绍: The purpose of the journal Radiological Physics and Technology is to provide a forum for sharing new knowledge related to research and development in radiological science and technology, including medical physics and radiological technology in diagnostic radiology, nuclear medicine, and radiation therapy among many other radiological disciplines, as well as to contribute to progress and improvement in medical practice and patient health care.
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