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Automated Recognition of Erector Spinae Muscles and Their Skeletal Attachment Region via Deep Learning in Torso CT Images

机译:通过躯干CT图像中的深度学习自动识别竖脊肌及其骨骼附着区域

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Erector spinae muscle (ESM) is an important muscle in the torso region. Changes of sizes, shapes and densities in the cross section of the spinal column muscles have been found in chronic low back pain, degenerative lumbar sclerosis and chronic obstructive pulmonary disease. However, the image features of the ESM are measured manually by the physician. Therefore, automatic recognition in three dimensions (3D) not only for the limited two-dimensional (2D) section but also for the whole ESM is required. In this study, we realize automatic recognition of the ESMs and its attachment region on the skeleton using a 2D deep convolutional neural network. Each cross section of the 3D computed tomography (CT) image is input as a 2D image to the fully convolutional network. Then, the obtained result is reconstructed into a 3D image to obtain the recognition result of the ESM and its attachment region on the skeleton. ESM and attached area are extracted manually from the CT images of 11 cases and used for evaluation. In the experiments, automatic recognition was performed for each case using the leave-one-out method. The mean recognition accuracy of ESM and attached area was 89.9% and 65.5%, respectively for the Dice coefficient. In this study, although there is over-extraction in the recognition of the attachment region, the initial region has been acquired successfully and it is the first study to simultaneously recognize the ESMs and its attachment region on the skeleton.
机译:竖脊肌(ESM)是躯干区域的重要肌肉。在慢性下背痛,退行性腰椎硬化症和慢性阻塞性肺疾病中,发现了脊柱肌肉横截面的大小,形状和密度的变化。但是,ESM的图像特征是由医生手动测量的。因此,不仅需要对有限的二维(2D)部分进行三维(3D)自动识别,而且还需要对整个ESM进行自动识别。在这项研究中,我们使用二维深度卷积神经网络实现了对ESM及其骨架上附着区域的自动识别。将3D计算机断层扫描(CT)图像的每个横截面作为2D图像输入到全卷积网络。然后,将获得的结果重建为3D图像,以获得ESM及其在骨骼上的附着区域的识别结果。从11例CT图像中手动提取ESM和附着区域,并将其用于评估。在实验中,使用遗忘法对每种情况进行自动识别。对于Dice系数,ESM和附着区域的平均识别准确度分别为89.9%和65.5%。在这项研究中,尽管对附着区域的识别存在过度提取,但已成功获取了初始区域,这是同时识别骨骼上ESM及其附着区域的第一项研究。

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