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基于 U-Net 的 CT 图像自动骨骼分割。

Automatic Skeleton Segmentation in CT Images Based on U-Net.

机构信息

Biomedical Engineering and Telemedicine Centre, Center for Biomedical Technology, ETSI Telecomunicación, Universidad Politécnica de Madrid, 28040, Madrid, Spain.

Department of Nuclear Medicine, Hospital Universitario, 12 de Octubre, 28041, Madrid, Spain.

出版信息

J Imaging Inform Med. 2024 Oct;37(5):2390-2400. doi: 10.1007/s10278-024-01127-5. Epub 2024 Apr 30.

Abstract

Bone metastasis, emerging oncological therapies, and osteoporosis represent some of the distinct clinical contexts which can result in morphological alterations in bone structure. The visual assessment of these changes through anatomical images is considered suboptimal, emphasizing the importance of precise skeletal segmentation as a valuable aid for its evaluation. In the present study, a neural network model for automatic skeleton segmentation from bidimensional computerized tomography (CT) slices is proposed. A total of 77 CT images and their semimanual skeleton segmentation from two acquisition protocols (whole-body and femur-to-head) are used to form a training group and a testing group. Preprocessing of the images includes four main steps: stretcher removal, thresholding, image clipping, and normalization (with two different techniques: interpatient and intrapatient). Subsequently, five different sets are created and arranged in a randomized order for the training phase. A neural network model based on U-Net architecture is implemented with different values of the number of channels in each feature map and number of epochs. The model with the best performance obtains a Jaccard index (IoU) of 0.959 and a Dice index of 0.979. The resultant model demonstrates the potential of deep learning applied in medical images and proving its utility in bone segmentation.

摘要

骨转移、新兴的肿瘤治疗方法和骨质疏松症是一些可能导致骨骼结构形态改变的特殊临床情况。通过解剖图像对这些变化进行直观评估并不理想,这强调了精确的骨骼分割作为评估工具的重要性。在本研究中,提出了一种从二维计算机断层扫描(CT)切片中自动进行骨骼分割的神经网络模型。总共使用了 77 张 CT 图像及其半自动骨骼分割,来自两种采集方案(全身和股骨到头),形成了一个训练组和一个测试组。图像的预处理包括四个主要步骤:去除担架、阈值处理、图像裁剪和归一化(采用两种不同的技术:患者间和患者内)。然后,将五个不同的集合以随机顺序排列用于训练阶段。实现了基于 U-Net 架构的神经网络模型,其中每个特征图的通道数量和训练轮数都不同。性能最佳的模型获得了 0.959 的 Jaccard 指数(IoU)和 0.979 的 Dice 指数。该结果模型证明了深度学习在医学图像中的应用潜力,并证明了其在骨骼分割中的实用性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4bc0/11522221/c9d5960741ff/10278_2024_1127_Fig1_HTML.jpg

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