Suppr超能文献

基于深度学习的全自动程序,用于对轴向腰椎磁共振图像上的主要脊柱成分进行分割和定量分析。

A Deep-Learning-Based, Fully Automated Program to Segment and Quantify Major Spinal Components on Axial Lumbar Spine Magnetic Resonance Images.

机构信息

Spine Lab, Department of Orthopedic Surgery, the First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, China.

Department of Radiology, Dongyang People's Hospital, Dongyang, China.

出版信息

Phys Ther. 2021 Jun 1;101(6). doi: 10.1093/ptj/pzab041.

Abstract

OBJECTIVE

The paraspinal muscles have been extensively studied on axial lumbar magnetic resonance imaging (MRI) for better understanding of back pain; however, the acquisition of measurements mainly relies on manual segmentation, which is time consuming. The study objective was to develop and validate a deep-learning-based program for automated acquisition of quantitative measurements for major lumbar spine components on axial lumbar MRIs, the paraspinal muscles in particular.

METHODS

This study used a cross-sectional observational design. From the Hangzhou Lumbar Spine Study, T2-weighted axial MRIs at the L4-5 disk level of 120 participants (aged 54.8 years [SD = 15.0]) were selected to develop the deep-learning-based program Spine Explorer (Tulong). Another 30 axial lumbar MRIs were automatically measured by Spine Explorer and then manually measured using ImageJ to acquire quantitative size and compositional measurements for bilateral multifidus, erector spinae, and psoas muscles; the disk; and the spinal canal. Intersection-over-union and Dice score were used to evaluate the performance of automated segmentation. Intraclass coefficients and Bland-Altman plots were used to examine intersoftware agreements for various measurements.

RESULTS

After training, Spine Explorer (Tulong) measures an axial lumbar MRI in 1 second. The intersections-over-union were 83.3% to 88.4% for the paraspinal muscles and 92.2% and 82.1% for the disk and spinal canal, respectively. For various size and compositional measurements of paraspinal muscles, Spine Explorer (Tulong) was in good agreement with ImageJ (intraclass coefficient = 0.85 to approximately 0.99).

CONCLUSION

Spine Explorer (Tulong) is automated, efficient, and reliable in acquiring quantitative measurements for the paraspinal muscles, the disk, and the canal, and various size and compositional measurements were simultaneously obtained for the lumbar paraspinal muscles.

IMPACT

Such an automated program might encourage further epidemiological studies of the lumbar paraspinal muscle degeneration and enhance paraspinal muscle assessment in clinical practice.

摘要

目的

在轴向腰椎磁共振成像(MRI)上对脊柱旁肌肉进行广泛研究,以更好地了解腰痛;然而,测量值的获取主要依赖于手动分割,这很耗时。本研究的目的是开发和验证一种基于深度学习的程序,用于自动获取轴向腰椎 MRI 上主要腰椎成分的定量测量值,特别是脊柱旁肌肉。

方法

本研究采用横断面观察性设计。从杭州腰椎研究中,选择了 120 名参与者(年龄 54.8 岁[标准差=15.0])在 L4-5 椎间盘水平的 T2 加权轴向 MRI 用于开发基于深度学习的程序 Spine Explorer(图龙)。另外 30 个轴向腰椎 MRI 由 Spine Explorer 自动测量,然后使用 ImageJ 手动测量,以获取双侧多裂肌、竖脊肌和腰大肌;椎间盘;和椎管的定量大小和组成测量值。并使用交并率和 Dice 评分评估自动分割的性能。使用组内相关系数和 Bland-Altman 图检查各种测量的软件间一致性。

结果

经过训练,Spine Explorer(图龙)在 1 秒内测量一个轴向腰椎 MRI。脊柱旁肌肉的交并率分别为 83.3%至 88.4%,椎间盘和椎管分别为 92.2%和 82.1%。对于脊柱旁肌肉的各种大小和组成测量值,Spine Explorer(图龙)与 ImageJ 高度一致(组内相关系数=0.85 至 0.99)。

结论

Spine Explorer(图龙)在获取脊柱旁肌肉、椎间盘和椎管的定量测量值方面具有自动化、高效和可靠的特点,并且同时获得了腰椎脊柱旁肌肉的各种大小和组成测量值。

影响

这种自动化程序可能会鼓励进一步对腰椎脊柱旁肌肉退行性变进行流行病学研究,并增强临床实践中对脊柱旁肌肉的评估。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验