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先进的磁共振成像指标可改善对退行性颈椎脊髓病患者基线疾病严重程度的预测。

Advanced MRI metrics improve the prediction of baseline disease severity for individuals with degenerative cervical myelopathy.

作者信息

Al-Shawwa Abdul, Ost Kalum, Anderson David, Cho Newton, Evaniew Nathan, Jacobs W Bradley, Martin Allan R, Gaekwad Ranjeet, Tripathy Saswati, Bouchard Jacques, Casha Steve, Cho Roger, duPlessis Stephen, Lewkonia Peter, Nicholls Fred, Salo Paul T, Soroceanu Alex, Swamy Ganesh, Thomas Kenneth C, Yang Michael M H, Cohen-Adad Julien, Cadotte David W

机构信息

Cumming School of Medicine, Hotchkiss Brain Institute, University of Calgary, 3330 Hospital Drive NW, Calgary, Alberta, T2N4N1, Canada.

Department of Biochemistry and Molecular Biology, Cumming School of Medicine, University of Calgary, HMRB 231, 3330 Hospital Drive NW, Calgary, Alberta, T2N4N1, Canada.

出版信息

Spine J. 2024 Sep;24(9):1605-1614. doi: 10.1016/j.spinee.2024.04.028. Epub 2024 Apr 26.

Abstract

BACKGROUND CONTEXT

Degenerative cervical myelopathy (DCM) is the most common form of atraumatic spinal cord injury globally. Degeneration of spinal discs, bony osteophyte growth and ligament pathology results in physical compression of the spinal cord contributing to damage of white matter tracts and grey matter cellular populations. This results in an insidious neurological and functional decline in patients which can lead to paralysis. Magnetic resonance imaging (MRI) confirms the diagnosis of DCM and is a prerequisite to surgical intervention, the only known treatment for this disorder. Unfortunately, there is a weak correlation between features of current commonly acquired MRI scans ("community MRI, cMRI") and the degree of disability experienced by a patient.

PURPOSE

This study examines the predictive ability of current MRI sequences relative to "advanced MRI" (aMRI) metrics designed to detect evidence of spinal cord injury secondary to degenerative myelopathy. We hypothesize that the utilization of higher fidelity aMRI scans will increase the effectiveness of machine learning models predicting DCM severity and may ultimately lead to a more efficient protocol for identifying patients in need of surgical intervention.

STUDY DESIGN/SETTING: Single institution analysis of imaging registry of patients with DCM.

PATIENT SAMPLE

A total of 296 patients in the cMRI group and 228 patients in the aMRI group.

OUTCOME MEASURES

Physiologic measures: accuracy of machine learning algorithms to detect severity of DCM assessed clinically based on the modified Japanese Orthopedic Association (mJOA) scale.

METHODS

Patients enrolled in the Canadian Spine Outcomes Research Network registry with DCM were screened and 296 cervical spine MRIs acquired in cMRI were compared with 228 aMRI acquisitions. aMRI acquisitions consisted of diffusion tensor imaging, magnetization transfer, T-weighted, and T*-weighted images. The cMRI group consisted of only T-weighted MRI scans. Various machine learning models were applied to both MRI groups to assess accuracy of prediction of baseline disease severity assessed clinically using the mJOA scale for cervical myelopathy.

RESULTS

Through the utilization of Random Forest Classifiers, disease severity was predicted with 41.8% accuracy in cMRI scans and 73.3% in the aMRI scans. Across different predictive model variations tested, the aMRI scans consistently produced higher prediction accuracies compared to the cMRI counterparts.

CONCLUSIONS

aMRI metrics perform better in machine learning models at predicting disease severity of patients with DCM. Continued work is needed to refine these models and address DCM severity class imbalance concerns, ultimately improving model confidence for clinical implementation.

摘要

背景

退行性颈椎脊髓病(DCM)是全球最常见的非创伤性脊髓损伤形式。椎间盘退变、骨赘生长和韧带病变导致脊髓受到物理压迫,进而损害白质束和灰质细胞群。这会导致患者出现隐匿性神经功能和功能衰退,最终可能导致瘫痪。磁共振成像(MRI)可确诊DCM,是手术干预的前提条件,而手术干预是目前已知的治疗该疾病的唯一方法。不幸的是,目前常用的MRI扫描(“社区MRI,cMRI”)特征与患者的残疾程度之间的相关性较弱。

目的

本研究旨在检验当前MRI序列相对于旨在检测退行性脊髓病继发脊髓损伤证据的“高级MRI”(aMRI)指标的预测能力。我们假设,使用更高保真度的aMRI扫描将提高预测DCM严重程度的机器学习模型的有效性,并最终可能导致制定出一种更有效的方案,用于识别需要手术干预的患者。

研究设计/设置:对DCM患者的影像登记进行单机构分析。

患者样本

cMRI组共有296例患者,aMRI组有228例患者。

观察指标

生理指标:基于改良日本骨科协会(mJOA)量表,通过机器学习算法检测临床评估的DCM严重程度的准确性。

方法

对纳入加拿大脊柱结局研究网络登记的DCM患者进行筛查,将296例cMRI采集的颈椎MRI与228例aMRI采集的结果进行比较。aMRI采集包括扩散张量成像、磁化传递、T加权和T*加权图像。cMRI组仅包括T加权MRI扫描。将各种机器学习模型应用于两组MRI,以评估使用颈椎脊髓病mJOA量表临床评估的基线疾病严重程度的预测准确性。

结果

通过使用随机森林分类器,cMRI扫描预测疾病严重程度的准确率为41.8%,aMRI扫描为73.3%。在测试的不同预测模型变体中,与cMRI相比,aMRI扫描始终具有更高的预测准确率。

结论

aMRI指标在预测DCM患者疾病严重程度的机器学习模型中表现更好。需要继续开展工作来完善这些模型,并解决DCM严重程度类别不平衡问题,最终提高模型在临床应用中的可信度。

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