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在预测颈椎前路椎间盘切除融合术后沉降方面,终板亨氏单位相对于颈椎椎体亨氏单位的优越性。

The superiority of endplate Hounsfield units relative to cervical vertebral Hounsfield units in predicting subsidence after anterior cervical discectomy and fusion.

作者信息

Levy Hannah A, Astudillo Potes Maria D, Messer Caden J, Magera Christopher A, Pinter Zachariah W, Bydon Mohamad, Fogelson Jeremy L, Elder Benjamin D, Currier Bradford L, Nassr Ahmad N, Freedman Brett A, Karamian Brian A, Sebastian Arjun S

机构信息

Departments of1Orthopedic Surgery and.

2Neurologic Surgery, Mayo Clinic, Rochester, Minnesota; and.

出版信息

J Neurosurg Spine. 2025 Aug 8:1-9. doi: 10.3171/2025.4.SPINE241067.

Abstract

OBJECTIVE

The present investigation aimed to 1) develop a new CT-based assessment of endplate bone density (endplate Hounsfield unit [EP-HU]) and 2) analyze if EP-HU was a better predictor than vertebral Hounsfield unit (HU) for subsidence after anterior cervical discectomy and fusion (ACDF).

METHODS

All adult patients who underwent one- to three-level ACDF with a titanium interbody for radiculopathy and/or myelopathy at an academic center between 2018 and 2020 were retrospectively identified. Based on preoperative sagittal CT scans (left, right, and middle cuts), 2-mm superior and inferior endplate regions were circumscribed with the free draw tool to account for endplate surface undulations. The average of the superior and inferior EP-HUs on all CT cuts was used to calculate EP-HU. Cervical vertebral HUs were determined from the average of axial CT cranial, middle, and caudal cuts circumscribing only trabecular bone. The interbody subsidence of the cranial and caudal endplates of each ACDF level was directly measured on the endplate-facing surface of both coronal and sagittal cuts of postoperative CT scans (at 1 year) to determine the maximum subsidence (subsidence defined as ≥ 2 mm). Univariate and stepwise logistic regression analyses were used to compare subsidence based on CT bone metrics. Receiver operating characteristic (ROC) curve analyses were used to determine the probability of subsidence based on EP-HUs and vertebral HUs.

RESULTS

A total of 35 patients were included. Subsidence occurred at 32 of 67 unique fusion levels. Subsidence was associated with older age (p = 0.008), diabetes diagnosis (p = 0.015), and decreased interbody length (p = 0.019). EP-HUs exhibited moderate correlation with cervical vertebral HUs (Pearson's ρ = 0.63). Subsidence was significantly associated with decreased total EP-HUs (subsidence: 475 HU, no subsidence: 543 HU; p = 0.019) and decreased lumbar vertebral HUs (subsidence: 296 HU, no subsidence: 341 HU; p = 0.011). ROC curve analysis identified an optimal EP-HU cutoff of 512.30 (area under the curve [AUC] = 0.701) to predict subsidence. The AUC of the vertebral HUs with respect to subsidence was 0.662. EP-HUs < 512.30 predicted subsidence (OR 6.67, p = 0.001) independent of significant demographic and surgical factors.

CONCLUSIONS

CT cervical EP-HUs rather than vertebral cervical trabecular HUs may be more efficacious in predicting subsidence after ACDF.

摘要

目的

本研究旨在1)开发一种基于CT的新型终板骨密度评估方法(终板亨氏单位[EP-HU]),以及2)分析在颈椎前路椎间盘切除融合术(ACDF)后,EP-HU是否比椎体亨氏单位(HU)更能预测沉降。

方法

回顾性纳入2018年至2020年在某学术中心因神经根病和/或脊髓病接受单节段至三节段ACDF并使用钛椎间融合器的所有成年患者。基于术前矢状位CT扫描(左、右和中间层面),使用自由绘制工具勾勒出上下终板2毫米区域,以考虑终板表面起伏。所有CT层面上终板上下EP-HU的平均值用于计算EP-HU。颈椎椎体HU由仅勾勒小梁骨的轴向CT颅侧、中间和尾侧层面的平均值确定。在术后CT扫描(1年)的冠状位和矢状位层面面向终板的表面直接测量每个ACDF节段颅侧和尾侧终板的椎间沉降,以确定最大沉降(沉降定义为≥2毫米)。使用单因素和逐步逻辑回归分析比较基于CT骨指标的沉降情况。采用受试者工作特征(ROC)曲线分析来确定基于EP-HU和椎体HU的沉降概率。

结果

共纳入35例患者。67个独特融合节段中有32个发生了沉降。沉降与年龄较大(p = 0.008)、糖尿病诊断(p = 0.015)和椎间长度缩短(p = 0.019)相关。EP-HU与颈椎椎体HU呈中度相关(Pearson相关系数ρ = 0.63)。沉降与总EP-HU降低(沉降:475 HU,无沉降:543 HU;p = 0.019)和腰椎椎体HU降低(沉降:296 HU,无沉降:341 HU;p = 0.011)显著相关。ROC曲线分析确定预测沉降的最佳EP-HU临界值为512.30(曲线下面积[AUC] = 0.701)。椎体HU相对于沉降的AUC为0.662。EP-HU < 512.30独立于显著的人口统计学和手术因素预测沉降(比值比6.67,p = 0.001)。

结论

CT测量的颈椎EP-HU而非颈椎椎体小梁HU可能在预测ACDF术后沉降方面更有效。

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