Department of Spinal Surgery, Fifth Affiliated Hospital of Sun Yat-sen University, Zhuhai, China.
School of Biomedical Engineering, Southern Medical University, Guangdong Provincial Key Laboratory of Medical Image Processing, Guangzhou, China.
Orthop Surg. 2022 Sep;14(9):2256-2264. doi: 10.1111/os.13431. Epub 2022 Aug 18.
3D reconstruction of lumbar intervertebral foramen (LIVF) has been beneficial in evaluating surgical trajectory. Still, the current methods of reconstructing the 3D LIVF model are mainly based on manual segmentation, which is laborious and time-consuming. This study aims to explore the feasibility of automatically segmenting lumbar spinal structures and increasing the speed and accuracy of 3D lumbar intervertebral foramen (LIVF) reconstruction on magnetic resonance image (MRI) at the L4-5 level.
A total of 100 participants (mean age: 42.2 ± 14.0 years; 52 males and 48 females; mean body mass index, 22.7 ± 3.2 kg/m ), were enrolled in this prospective study between March and July 2020. All participants were scanned on L4-5 level with a 3T MR unit using 3D T2-weighted sampling perfection with application-optimized contrast with various flip-angle evolutions (SPACE) sequences. The lumbar spine's vertebra bone structures (VBS) and intervertebral discs (IVD) were manually segmented by skilled surgeons according to their anatomical outlines from MRI. Then all manual segmentation were saved and used for training. An automated segmentation method based on a 3D U-shaped architecture network (3D-UNet) was introduced for the automated segmentation of lumbar spinal structures. A number of quantitative metrics, including dice similarity coefficient (DSC), precision, and recall, were used to evaluate the performance of the automated segmentation method on MRI. Wilcoxon signed-rank test was applied to compare morphometric parameters, including foraminal area, height and width of 3D LIVF models between automatic and manual segmentation. The intra-class correlation coefficient was used to assess the test-retest reliability and inter-observer reliability of multiple measurements for these morphometric parameters of 3D LIVF models.
The automatic segmentation performance of all spinal structures (VBS and IVD) was found to be 0.918 (healthy levels: 0.922; unhealthy levels: 0.916) for the mean DSC, 0.922 (healthy levels: 0.927; unhealthy levels: 0.920) for the mean precision, and 0.917 (healthy levels: 0.918; unhealthy levels: 0.917) for the mean recall in the test dataset. It took approximately 2.5 s to achieve each automated segmentation, far less than the 240 min for manual segmentation. Furthermore, no significant differences were observed in the foraminal area, height and width of the 3D LIVF models between manual and automatic segmentation images (P > 0.05).
A method of automated MRI segmentation based on deep learning algorithms was capable of rapidly generating accurate segmentation of spinal structures and can be used to construct 3D LIVF models from MRI at the L4-5 level.
腰椎椎间孔(LIVF)的 3D 重建有助于评估手术轨迹。尽管如此,目前重建 3D LIVF 模型的方法主要基于手动分割,既费力又耗时。本研究旨在探索在磁共振成像(MRI)上自动分割腰椎结构并提高 L4-5 水平 3D 腰椎椎间孔(LIVF)重建速度和准确性的可行性。
本前瞻性研究于 2020 年 3 月至 7 月期间共纳入 100 名参与者(平均年龄:42.2±14.0 岁;52 名男性,48 名女性;平均体重指数,22.7±3.2kg/m )。所有参与者均在 3T MR 设备上使用 3D T2 加权采样完美应用优化对比具有各种翻转角演化(SPACE)序列进行 L4-5 水平扫描。熟练的外科医生根据 MRI 上的解剖轮廓手动分割腰椎椎体骨结构(VBS)和椎间盘(IVD)。然后保存所有手动分割并用于训练。引入了一种基于 3D U 形架构网络(3D-UNet)的自动分割方法,用于自动分割腰椎结构。使用 Dice 相似系数(DSC)、精度和召回率等多项定量指标评估自动分割方法在 MRI 上的性能。Wilcoxon 符号秩检验用于比较自动和手动分割的 3D LIVF 模型的形态参数,包括椎间孔面积、高度和宽度。使用组内相关系数评估 3D LIVF 模型形态参数的多次测量的测试-重测信度和观察者间信度。
在测试数据集上,所有脊柱结构(VBS 和 IVD)的自动分割性能均为平均 DSC 为 0.918(健康水平:0.922;不健康水平:0.916),平均精度为 0.922(健康水平:0.927;不健康水平:0.920),平均召回率为 0.917(健康水平:0.918;不健康水平:0.917)。自动分割每个结构大约需要 2.5 秒,远低于手动分割的 240 分钟。此外,手动和自动分割图像之间的 3D LIVF 模型的椎间孔面积、高度和宽度无显著差异(P>0.05)。
基于深度学习算法的自动 MRI 分割方法能够快速生成准确的脊柱结构分割,并可用于从 L4-5 水平的 MRI 构建 3D LIVF 模型。