Hashimoto Fumio, Kakimoto Akihiro, Ota Nozomi, Ito Shigeru, Nishizawa Sadahiko
Central Research Laboratory, Hamamatsu Photonics K.K., Hamamatsu, 434-8601, Japan.
Global Strategic Challenge Center, Hamamatsu Photonics K.K., Hamamatsu, 434-8601, Japan.
Radiol Phys Technol. 2019 Jun;12(2):210-215. doi: 10.1007/s12194-019-00512-y. Epub 2019 Apr 1.
The psoas-major muscle has been reported as a predictive factor of sarcopenia. The cross-sectional area (CSA) of the psoas-major muscle in axial images has been indicated to correlate well with the whole-body skeletal muscle mass. In this study, we evaluated the segmentation accuracy of low-dose X-ray computed tomography (CT) images of the psoas-major muscle using the U-Net convolutional neural network, which is a deep-learning technique. Deep learning has been recently known to outperform conventional image-segmentation techniques. We used fivefold cross validation to validate the segmentation performance (n = 100) of the psoas-major muscle. For the intersection over union and CSA ratio, segmentation accuracies of 86.0 and 103.1%, respectively, were achieved. These results suggest that the U-Net network is competitive compared with the previous methods. Therefore, the proposed technique is useful for segmenting the psoas-major muscle even in low-dose CT images.
腰大肌已被报道为肌肉减少症的一个预测因素。轴向图像中腰大肌的横截面积(CSA)已被表明与全身骨骼肌质量密切相关。在本研究中,我们使用U-Net卷积神经网络(一种深度学习技术)评估了低剂量X射线计算机断层扫描(CT)图像中腰大肌的分割准确性。最近已知深度学习优于传统的图像分割技术。我们使用五折交叉验证来验证腰大肌的分割性能(n = 100)。对于交并比和CSA比,分割准确率分别达到了86.0%和103.1%。这些结果表明,与之前的方法相比,U-Net网络具有竞争力。因此,所提出的技术即使在低剂量CT图像中也可用于分割腰大肌。