A machine learning based prognostic prediction of cervical myelopathy using diffusion tensor imaging

Richu Jin, K. Luk, J. Cheung, Yong Hu
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引用次数: 5

Abstract

Diffusion Tensor imaging (DTI), composing of various metrics, including fractional anisotropy (FA), axial diffusivity (AD), mean diffusivity (MD) and radial diffusivity (RD) has been considered as a useful clinical tool to reveal microstructure of spinal cord. Previous studies have intensively applied DTI in investigating the pathology of cervical spondylotic myelopathy (CSM), as well the symptomatic level diagnosis of CSM. However, it still remains unclear whether the DTI metric could be used in the prognosis of CSM, which is of great significance for selection of the best treatment strategy. Thus, the present study attempted to establish a prognosis model of CSM based on DTI metrics using machine learning methods. Particularly, three conventional machine learning algorithms, Naive Bayesian, Least Squares Support Vector Machine (LS-SVM), and Multi-label K-nearest Neighbour (ML-KNN) were tested on DTI data from 35 CSM patients accepting surgery treatments with post-operative outcomes followed. The results showed that prognosis of CSM with DTI metrics using LS-SVM algorithms could achieve higher prediction performance, with accuracy of 88.62%, and the learning curve of LS-SVM showed that the performance would be significantly improved if the sample size is greater than 202, indicating the potential application of the prognosis prediction of CSM from DTI metrics using machine learning algorithms.
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基于机器学习的颈椎病弥散张量成像预后预测
弥散张量成像(Diffusion Tensor imaging, DTI)由分数各向异性(FA)、轴向弥散性(AD)、平均弥散性(MD)和径向弥散性(RD)等指标组成,被认为是显示脊髓微观结构的有用临床工具。以往的研究已将DTI广泛应用于脊髓型颈椎病(CSM)的病理研究以及CSM的症状水平诊断。然而,DTI指标是否可以用于CSM的预后仍不清楚,这对选择最佳治疗策略具有重要意义。因此,本研究试图利用机器学习方法建立基于DTI指标的CSM预后模型。特别地,三种传统的机器学习算法,朴素贝叶斯,最小二乘支持向量机(LS-SVM)和多标签k近邻(ML-KNN)在35例接受手术治疗的CSM患者的DTI数据上进行了测试,并随访了术后结果。结果表明,使用LS-SVM算法对DTI指标的CSM预测可以达到更高的预测性能,准确率为88.62%,并且LS-SVM的学习曲线显示,当样本量大于202时,性能将得到显著提高,这表明使用机器学习算法对DTI指标的CSM预测具有潜在的应用前景。
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