Hopkins Benjamin S, Weber Kenneth A, Kesavabhotla Kartik, Paliwal Monica, Cantrell Donald R, Smith Zachary A
Department of Neurological Surgery, Northwestern University Feinberg School of Medicine, Chicago, Illinois, USA.
Department of Radiology, Stanford University School of Medicine, Stanford, California, USA.
World Neurosurg. 2019 Jul;127:e436-e442. doi: 10.1016/j.wneu.2019.03.165. Epub 2019 Mar 25.
Cervical spondylotic myelopathy (CSM) severity and presence of symptoms are often difficult to predict based simply on clinical imaging alone. Similarly, improved machine learning techniques provide new tools with immense clinical potential.
A total of 14 patients with CSM and 14 controls underwent imaging of the cervical spine. Two different artificial neural network models were trained; 1) to predict CSM diagnosis; and 2) to predict CSM severity. Model 1 consisted of 6 inputs including 3 common imaging scales for the evaluation of cord compression, alongside 3 objective magnetic resonance imaging measurements. The outcome for model 1 was binary to predict CSM diagnosis. Model 2 consisted of 23 input variables derived from probabilistic volume mapping measurements of white matter tracts in the region of compression. The outcome of model 2 was linear, to predict the modified Japanese Orthopedic Association (mJOA) score.
Model 1 was used in predicting CSM. The mean cross-validated accuracy of the trained model was 86.50% (95% confidence interval, 85.16%-87.83%) with a median accuracy of 90.00%. Area under the curve (AUC) was calculated for each repetition. Average AUC for each repetition was 0.947 with a median AUC of 1.0. Average sensitivity, specificity, positive predictive value, and negative predictive value were 90.25%, 85.05%, 81.58%, and 91.94%, respectively. Model 2 was used in modeling mJOA. The mJOA model predicted scores, with a mean and median error of -0.29 mJOA points and -0.08 mJOA points, respectively, mean error per batch was 0.714 mJOA points.
Machine learning provides a promising method for prediction, diagnosis, and even prognosis in patients with CSM.
仅基于临床影像学往往难以预测脊髓型颈椎病(CSM)的严重程度和症状的存在情况。同样,改进的机器学习技术提供了具有巨大临床潜力的新工具。
共有14例CSM患者和14名对照者接受了颈椎成像检查。训练了两种不同的人工神经网络模型;1)预测CSM诊断;2)预测CSM严重程度。模型1由6个输入组成,包括3个用于评估脊髓压迫的常见影像学量表,以及3个客观的磁共振成像测量值。模型1的结果是二元的,用于预测CSM诊断。模型2由23个输入变量组成,这些变量来自压迫区域白质束的概率体积映射测量。模型2的结果是线性的,用于预测改良日本骨科协会(mJOA)评分。
模型1用于预测CSM。训练模型的平均交叉验证准确率为86.50%(95%置信区间,85.16%-87.83%),中位数准确率为90.00%。计算每次重复的曲线下面积(AUC)。每次重复的平均AUC为0.947,中位数AUC为1.0。平均敏感性、特异性、阳性预测值和阴性预测值分别为90.25%、85.05%、81.58%和91.94%。模型2用于建立mJOA模型。mJOA模型预测的分数,平均误差和中位数误差分别为-0.29个mJOA点和-0.08个mJOA点,每批次的平均误差为0.714个mJOA点。
机器学习为CSM患者的预测、诊断甚至预后提供了一种有前景的方法。