论文标题

准确识别大数据集中的椎骨水平

Accurately identifying vertebral levels in large datasets

论文作者

Elton, Daniel C., Sandfort, Veit, Pickhardt, Perry J., Summers, Ronald M.

论文摘要

脊柱的椎骨水平在测量斑块,肌肉,脂肪和骨矿物质密度时提供了有用的坐标系。由于每个椎骨的相似外观,脊柱的曲率以及异常的可能性,例如椎骨骨折,植入物,the骨的腰椎和L5的s骨化,因此正确准确地对椎骨水平进行了高度的分类。这项工作的目的是开发一个可以准确,稳健地识别大型异质数据集中的L1级别的系统。我们研究的第一种方法是使用3D U-NET使用整个扫描量直接分割L1椎骨以提供上下文。我们还测试了L1和T12的两类分割的模型,以及L1,T12的三类分割以及附着在T12上的肋骨。通过使用内部分割工具中的伪分割来增加训练示例的数量为249次扫描,我们能够在识别L1椎骨方面达到98%的准确性,在颅尾水平的平均误差为4.5 mm。接下来,我们开发了一种算法,该算法用3D U-NET对整个脊柱进行迭代实例分割和分类。我们发现基于实例的方法能够对几乎整个脊柱的更好分割进行更好的分割,但分类的精度较低。

The vertebral levels of the spine provide a useful coordinate system when making measurements of plaque, muscle, fat, and bone mineral density. Correctly classifying vertebral levels with high accuracy is challenging due to the similar appearance of each vertebra, the curvature of the spine, and the possibility of anomalies such as fractured vertebrae, implants, lumbarization of the sacrum, and sacralization of L5. The goal of this work is to develop a system that can accurately and robustly identify the L1 level in large heterogeneous datasets. The first approach we study is using a 3D U-Net to segment the L1 vertebra directly using the entire scan volume to provide context. We also tested models for two class segmentation of L1 and T12 and a three class segmentation of L1, T12 and the rib attached to T12. By increasing the number of training examples to 249 scans using pseudo-segmentations from an in-house segmentation tool we were able to achieve 98% accuracy with respect to identifying the L1 vertebra, with an average error of 4.5 mm in the craniocaudal level. We next developed an algorithm which performs iterative instance segmentation and classification of the entire spine with a 3D U-Net. We found the instance based approach was able to yield better segmentations of nearly the entire spine, but had lower classification accuracy for L1.

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