利用桥髓交界处自动测量脊髓横截面积并将其归一化。

Frontiers in neuroimaging Pub Date : 2022-11-02 eCollection Date: 2022-01-01 DOI:10.3389/fnimg.2022.1031253
Sandrine Bédard, Julien Cohen-Adad
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引用次数: 0

摘要

脊髓横截面积(CSA)是评估神经退行性疾病脊髓萎缩的相关生物标志物。然而,目前健康受试者之间的巨大变异性限制了它的使用。以前的研究探讨了导致变异的因素,但归一化模型需要人工干预,并使用椎骨水平作为参考,这对脊柱水平的预测并不精确。在这项研究中,我们采用了一种基于中枢神经系统(髓质交界处,PMJ)的空间参照自动测量 CSA 的方法,研究了解释变异性的因素,并在一个大型队列(N = 804)中开发了归一化策略。在对脊髓进行自动分割、椎体标记和 PMJ 标记后,我们根据英国生物库数据库中的 T1w MRI 扫描结果计算出了脊髓 CSA。计算 CSA 的方法有两种。第一种方法是在 C2-C3 椎间盘水平计算 CSA。第二种方法是在距PMJ尾部64毫米处计算CSA,该距离相当于所有参与者的PMJ与C2-C3椎间盘之间的平均距离。研究人员探讨了各种人口和解剖因素的影响,并通过逐步回归发现了重要的预测因素;最佳拟合模型的系数被用来对 CSA 进行归一化处理。在 C2-C3 椎间盘测量的 CSA 与使用 PMJ 测量的 CSA 有显著差异(配对 t 检验,p 值 = 0.0002)。最佳归一化模型包括丘脑、脑容量、性别以及脑容量与性别之间的交互作用。PMJ CSA 的变异系数从 10.09%(未标准化)下降到 8.59%,降低了 14.85%。C2-C3的CSA变异系数从9.96%降至8.42%,降低了15.13%。这项研究引入了一个端到端的自动管道,以神经参考值为基础测量脐带 CSA 并使其正常化。这种方法需要进一步验证,以便在纵向研究中评估萎缩情况。CSA的受试者间差异可部分归因于人口统计学和解剖学因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Automatic measure and normalization of spinal cord cross-sectional area using the pontomedullary junction.

Automatic measure and normalization of spinal cord cross-sectional area using the pontomedullary junction.

Automatic measure and normalization of spinal cord cross-sectional area using the pontomedullary junction.

Automatic measure and normalization of spinal cord cross-sectional area using the pontomedullary junction.

Spinal cord cross-sectional area (CSA) is a relevant biomarker to assess spinal cord atrophy in neurodegenerative diseases. However, the considerable inter-subject variability among healthy participants currently limits its usage. Previous studies explored factors contributing to the variability, yet the normalization models required manual intervention and used vertebral levels as a reference, which is an imprecise prediction of the spinal levels. In this study we implemented a method to measure CSA automatically from a spatial reference based on the central nervous system (the pontomedullary junction, PMJ), we investigated factors to explain variability, and developed normalization strategies on a large cohort (N = 804). Following automatic spinal cord segmentation, vertebral labeling and PMJ labeling, the spinal cord CSA was computed on T1w MRI scans from the UK Biobank database. The CSA was computed using two methods. For the first method, the CSA was computed at the level of the C2-C3 intervertebral disc. For the second method, the CSA was computed at 64 mm caudally from the PMJ, this distance corresponding to the average distance between the PMJ and the C2-C3 disc across all participants. The effect of various demographic and anatomical factors was explored, and a stepwise regression found significant predictors; the coefficients of the best fit model were used to normalize CSA. CSA measured at C2-C3 disc and using the PMJ differed significantly (paired t-test, p-value = 0.0002). The best normalization model included thalamus, brain volume, sex and the interaction between brain volume and sex. The coefficient of variation went down for PMJ CSA from 10.09 (without normalization) to 8.59%, a reduction of 14.85%. For CSA at C2-C3, it went down from 9.96 to 8.42%, a reduction of 15.13 %. This study introduces an end-to-end automatic pipeline to measure and normalize cord CSA from a neurological reference. This approach requires further validation to assess atrophy in longitudinal studies. The inter-subject variability of CSA can be partly accounted for by demographics and anatomical factors.

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