Jayasekera Dinal, Zhang Justin K, Blum Jacob, Jakes Rachel, Sun Peng, Javeed Saad, Greenberg Jacob K, Song Sheng-Kwei, Ray Wilson Z
1Department of Biomedical Engineering, Washington University in St. Louis McKelvey School of Engineering, St. Louis.
2Department of Neurosurgery, Washington University School of Medicine, St. Louis.
J Neurosurg Spine. 2022 May 6;37(4):588-598. doi: 10.3171/2022.3.SPINE2294. Print 2022 Oct 1.
Cervical spondylotic myelopathy (CSM) is the most common cause of chronic spinal cord injury, a significant public health problem. Diffusion tensor imaging (DTI) is a neuroimaging technique widely used to assess CNS tissue pathology and is increasingly used in CSM. However, DTI lacks the needed accuracy, precision, and recall to image pathologies of spinal cord injury as the disease progresses. Thus, the authors used diffusion basis spectrum imaging (DBSI) to delineate white matter injury more accurately in the setting of spinal cord compression. It was hypothesized that the profiles of multiple DBSI metrics can serve as imaging outcome predictors to accurately predict a patient's response to therapy and his or her long-term prognosis. This hypothesis was tested by using DBSI metrics as input features in a support vector machine (SVM) algorithm.
Fifty patients with CSM and 20 healthy controls were recruited to receive diffusion-weighted MRI examinations. All spinal cord white matter was identified as the region of interest (ROI). DBSI and DTI metrics were extracted from all voxels in the ROI and the median value of each patient was used in analyses. An SVM with optimized hyperparameters was trained using clinical and imaging metrics separately and collectively to predict patient outcomes. Patient outcomes were determined by calculating changes between pre- and postoperative modified Japanese Orthopaedic Association (mJOA) scale scores.
Accuracy, precision, recall, and F1 score were reported for each SVM iteration. The highest performance was observed when a combination of clinical and DBSI metrics was used to train an SVM. When assessing patient outcomes using mJOA scale scores, the SVM trained with clinical and DBSI metrics achieved accuracy and an area under the curve of 88.1% and 0.95, compared with 66.7% and 0.65, respectively, when clinical and DTI metrics were used together.
The accuracy and efficacy of the SVM incorporating clinical and DBSI metrics show promise for clinical applications in predicting patient outcomes. These results suggest that DBSI metrics, along with the clinical presentation, could serve as a surrogate in prognosticating outcomes of patients with CSM.
脊髓型颈椎病(CSM)是慢性脊髓损伤最常见的病因,是一个重大的公共卫生问题。扩散张量成像(DTI)是一种广泛用于评估中枢神经系统组织病理学的神经成像技术,在CSM中应用越来越多。然而,随着疾病进展,DTI缺乏对脊髓损伤病变进行成像所需的准确性、精确性和召回率。因此,作者使用扩散基谱成像(DBSI)在脊髓受压情况下更准确地描绘白质损伤。假设多个DBSI指标的概况可作为成像结果预测指标,以准确预测患者对治疗的反应及其长期预后。通过将DBSI指标用作支持向量机(SVM)算法中的输入特征来检验这一假设。
招募50例CSM患者和20名健康对照者接受扩散加权MRI检查。将所有脊髓白质确定为感兴趣区域(ROI)。从ROI中的所有体素中提取DBSI和DTI指标,并将每位患者的中位数用于分析。使用优化超参数的SVM分别和共同使用临床和成像指标进行训练,以预测患者预后。通过计算术前和术后改良日本骨科协会(mJOA)量表评分之间的变化来确定患者预后。
报告了每次SVM迭代的准确性、精确性、召回率和F1分数。当使用临床和DBSI指标的组合训练SVM时,观察到最高性能。使用mJOA量表评分评估患者预后时,使用临床和DBSI指标训练的SVM的准确率和曲线下面积分别为88.1%和0.95,而同时使用临床和DTI指标时分别为66.7%和0.65。
结合临床和DBSI指标的SVM的准确性和有效性在预测患者预后的临床应用中显示出前景。这些结果表明,DBSI指标与临床表现一起可作为预测CSM患者预后的替代指标。