Department of Pain Medicine, Huazhong University of Science and Technology Union Shenzhen Hospital, Shenzhen, China.
Department of Spine Surgery, Third Affiliated Hospital, Sun Yat-Sen University, Guangzhou, China.
J Appl Clin Med Phys. 2024 Jul;25(7):e14378. doi: 10.1002/acm2.14378. Epub 2024 May 10.
The diagnosis of lumbar spinal stenosis (LSS) can be challenging because radicular pain is not often present in the culprit-level localization. Accurate segmentation and quantitative analysis of the lumbar dura on radiographic images are key to the accurate differential diagnosis of LSS. The aim of this study is to develop an automatic dura-contouring tool for radiographic quantification on computed tomography myelogram (CTM) for patients with LSS.
A total of 518 CTM cases with or without lumbar stenosis were included in this study. A deep learning (DL) segmentation algorithm 3-dimensional (3D) U-Net was deployed. A total of 210 labeled cases were used to develop the dura-contouring tool, with the ratio of the training, independent testing, and external validation datasets being 150:30:30. The Dice score (DCS) was the primary measure to evaluate the segmentation performance of the 3D U-Net, which was subsequently developed as the dura-contouring tool to segment another unlabeled 308 CTM cases with LSS. Automatic masks of 446 slices on the stenotic levels were then meticulously reviewed and revised by human experts, and the cross-sectional area (CSA) of the dura was compared.
The mean DCS of the 3D U-Net were 0.905 ± 0.080, 0.933 ± 0.018, and 0.928 ± 0.034 in the five-fold cross-validation, the independent testing, and the external validation datasets, respectively. The segmentation performance of the dura-contouring tool was also comparable to that of the second observer (the human expert). With the dura-contouring tool, only 59.0% (263/446) of the automatic masks of the stenotic slices needed to be revised. In the revised cases, there were no significant differences in the dura CSA between automatic masks and corresponding revised masks (p = 0.652). Additionally, a strong correlation of dura CSA was found between the automatic masks and corresponding revised masks (r = 0.805).
A dura-contouring tool was developed that could automatically segment the dural sac on CTM, and it demonstrated high accuracy and generalization ability. Additionally, the dura-contouring tool has the potential to be applied in patients with LSS because it facilitates the quantification of the dural CSA on stenotic slices.
腰椎管狭窄症(LSS)的诊断具有挑战性,因为神经根性疼痛并不经常出现在罪魁祸首水平的定位中。在影像学图像上对腰椎硬脑膜进行准确的分割和定量分析是准确鉴别诊断 LSS 的关键。本研究旨在为 LSS 患者开发一种用于计算断层扫描脊髓造影(CTM)的自动硬脑膜描绘工具。
本研究共纳入 518 例有或无腰椎狭窄的 CTM 病例。部署了深度学习(DL)分割算法 3 维(3D)U-Net。共使用 210 例标记病例来开发硬脑膜描绘工具,训练、独立测试和外部验证数据集的比例为 150:30:30。Dice 评分(DCS)是评估 3D U-Net 分割性能的主要指标,随后将其开发为自动描绘工具,以分割另一个有 308 例 LSS 的未标记 CTM 病例。然后由人类专家仔细检查和修订狭窄水平上 446 个切片的自动掩模,并比较硬脑膜的横截面积(CSA)。
3D U-Net 在 5 折交叉验证、独立测试和外部验证数据集中的平均 DCS 分别为 0.905±0.080、0.933±0.018 和 0.928±0.034。硬脑膜描绘工具的分割性能也与第二观察者(人类专家)相当。使用硬脑膜描绘工具,仅需修订 446 个狭窄切片自动掩模中的 59.0%(263/446)。在修订病例中,自动掩模和相应修订掩模之间的硬脑膜 CSA 无显著差异(p=0.652)。此外,自动掩模和相应修订掩模之间的硬脑膜 CSA 具有很强的相关性(r=0.805)。
开发了一种能够自动分割 CTM 硬脑膜的硬脑膜描绘工具,该工具具有较高的准确性和泛化能力。此外,硬脑膜描绘工具有可能应用于 LSS 患者,因为它便于对狭窄切片上的硬脑膜 CSA 进行量化。