1Department of Neurosurgery, Clinical Neurosciences Center, University of Utah, Salt Lake City, Utah.
Departments of2Neurosurgery and.
J Neurosurg Spine. 2024 Jul 26;41(5):639-647. doi: 10.3171/2024.4.SPINE24107. Print 2024 Nov 1.
A major shortcoming in optimizing care for patients with cervical spondylotic myelopathy (CSM) is the lack of robust quantitative imaging tools offered by conventional MRI. Advanced MRI modalities, such as diffusion MRI (dMRI), including diffusion tensor imaging (DTI) and diffusion basis spectrum imaging (DBSI), may help address this limitation by providing granular evaluations of spinal cord microstructure.
Forty-seven patients with CSM underwent comprehensive clinical assessments and dMRI, followed by DTI and DBSI modeling. Conventional MRI metrics included 10 total qualitative and quantitative assessments of spinal cord compression in both the sagittal and axial planes. The dMRI metrics included 12 unique measures including anisotropic tensors, reflecting axonal diffusion, and isotropic tensors, describing extraaxonal diffusion. The primary outcome was the modified Japanese Orthopaedic Association (mJOA) score measured at 2 years postoperatively. Extreme gradient boosting-supervised classification algorithms were used to classify patients into disease groups and to prognosticate surgical outcomes at 2-year follow-up.
Forty-seven patients with CSM, including 24 (51%) with a mild mJOA score, 12 (26%) with a moderate mJOA score, and 11 (23%) with a severe mJOA score, as well as 21 control subjects were included. In the classification task, the traditional MRI metrics correctly assigned patients to healthy control versus mild CSM versus moderate/severe CSM cohorts, with an accuracy of 0.647 (95% CI 0.64-0.65). In comparison, the DTI model performed with an accuracy of 0.52 (95% CI 0.51-0.52) and the DBSI model's accuracy was 0.81 (95% CI 0.808-0.814). In the prognostication task, the traditional MRI metrics correctly predicted patients with CSM who improved at 2-year follow-up on the basis of change in mJOA, with an accuracy of 0.58 (95% CI 0.57-0.58). In comparison, the DTI model performed with an accuracy of 0.62 (95% CI 0.61-0.62) and the DBSI model had an accuracy of 0.72 (95% CI 0.718-0.73).
Conventional MRI is a powerful tool to assess structural abnormality in CSM but is inherently limited in its ability to characterize spinal cord tissue injury. The results of this study demonstrate that advanced imaging techniques, namely DBSI-derived metrics from dMRI, provide granular assessments of spinal cord microstructure that can offer better diagnostic and prognostic utility.
优化脊髓型颈椎病(CSM)患者治疗的一个主要缺点是常规 MRI 提供的强大定量成像工具的缺乏。高级 MRI 模式,如扩散 MRI(dMRI),包括扩散张量成像(DTI)和扩散基础谱成像(DBSI),可以通过提供脊髓微观结构的精细评估来帮助解决这一限制。
47 例 CSM 患者接受全面的临床评估和 dMRI,随后进行 DTI 和 DBSI 建模。常规 MRI 指标包括矢状面和轴面 10 项脊髓压迫的总定性和定量评估。dMRI 指标包括 12 个独特的指标,包括各向异性张量,反映轴突扩散,和各向同性张量,描述细胞外扩散。主要结局是术后 2 年的改良日本矫形协会(mJOA)评分。极端梯度提升监督分类算法用于将患者分为疾病组,并预测 2 年随访时的手术结果。
47 例 CSM 患者,包括 24 例(51%)mJOA 评分轻度,12 例(26%)mJOA 评分中度,11 例(23%)mJOA 评分重度,以及 21 例对照。在分类任务中,传统 MRI 指标正确地将患者分配到健康对照组与轻度 CSM 组与中度/重度 CSM 组,准确率为 0.647(95%CI 0.64-0.65)。相比之下,DTI 模型的准确率为 0.52(95%CI 0.51-0.52),DBSI 模型的准确率为 0.81(95%CI 0.808-0.814)。在预后任务中,传统 MRI 指标基于 mJOA 的变化正确预测了在 2 年随访时改善的 CSM 患者,准确率为 0.58(95%CI 0.57-0.58)。相比之下,DTI 模型的准确率为 0.62(95%CI 0.61-0.62),DBSI 模型的准确率为 0.72(95%CI 0.718-0.73)。
常规 MRI 是评估 CSM 结构异常的有力工具,但在表征脊髓组织损伤方面的能力固有受限。本研究结果表明,高级成像技术,即来自 dMRI 的 DBSI 衍生指标,可提供脊髓微观结构的精细评估,从而提供更好的诊断和预后效用。