Zhang Yingteng, Liu Shenquan
School of Mathematics, South China University of Technology, Guangzhou 510640, China.
Biomed Tech (Berl). 2018 Jul 26;63(4):427-437. doi: 10.1515/bmt-2016-0239.
Incorporating with machine learning technology, neuroimaging markers which extracted from structural Magnetic Resonance Images (sMRI), can help distinguish Alzheimer's Disease (AD) patients from Healthy Controls (HC). In the present study, we aim to investigate differences in atrophic regions between HC and AD and apply machine learning methods to classify these two groups. T1-weighted sMRI scans of 158 patients with AD and 145 age-matched HC were acquired from the ADNI database. Five kinds of parameters (i.e. cortical thickness, surface area, gray matter volume, curvature and sulcal depth) were obtained through the preprocessing steps. The recursive feature elimination (RFE) method for support vector machine (SVM) and leave-one-out cross validation (LOOCV) were applied to determine the optimal feature dimensions. Each kind of parameter was trained by SVM algorithm to acquire a classifier, which was used to classify HC and AD ultimately. Moreover, the ROC curves were depicted for testing the classifiers' performance and the SVM classifiers of two-dimensional spaces took the top two important features as classification features for separating HC and AD to the maximum extent. The results showed that the decreased cortical thickness and gray matter volume dramatically exhibited the trend of atrophy. The key differences between AD and HC existed in the cortical thickness and gray matter volume of the entorhinal cortex and medial orbitofrontal cortex. In terms of classification results, an optimal accuracy of 90.76% was obtained via multi-parameter combination (i.e. cortical thickness, gray matter volume and surface area). Meanwhile, the receiver operating characteristic (ROC) curves and area under the curve (AUC) were also verified multi-parameter combination could reach a better classification performance (AUC=0.94) after the SVM-RFE method. The results could be well prove that multi-parameter combination could provide more useful classified features from multivariate anatomical structure than single parameter. In addition, as cortical thickness and multi-parameter combination contained more important classified information with fewer feature dimensions after feature selection, it could be optimum to separate HC from AD to take the top two important features of them to construct SVM classifiers in two-dimensional space. The proposed work is a promising approach suggesting an important role for machine-learning based diagnostic image analysis for clinical practice.
结合机器学习技术,从结构磁共振图像(sMRI)中提取的神经影像标志物有助于区分阿尔茨海默病(AD)患者和健康对照(HC)。在本研究中,我们旨在研究HC和AD之间萎缩区域的差异,并应用机器学习方法对这两组进行分类。从ADNI数据库中获取了158例AD患者和145例年龄匹配的HC的T1加权sMRI扫描图像。通过预处理步骤获得了五种参数(即皮质厚度、表面积、灰质体积、曲率和脑沟深度)。应用支持向量机(SVM)的递归特征消除(RFE)方法和留一法交叉验证(LOOCV)来确定最佳特征维度。每种参数都通过SVM算法进行训练以获得一个分类器,该分类器最终用于对HC和AD进行分类。此外,绘制ROC曲线以测试分类器的性能,二维空间的SVM分类器将最重要的两个特征作为分类特征,以最大程度地分离HC和AD。结果表明,皮质厚度和灰质体积的减少显著呈现出萎缩趋势。AD和HC之间的关键差异存在于内嗅皮质和内侧眶额皮质的皮质厚度和灰质体积中。在分类结果方面,通过多参数组合(即皮质厚度、灰质体积和表面积)获得了90.76%的最佳准确率。同时,在SVM-RFE方法之后,也验证了接收器操作特征(ROC)曲线和曲线下面积(AUC)表明多参数组合可以达到更好的分类性能(AUC = 0.94)。结果可以很好地证明,与单一参数相比,多参数组合可以从多变量解剖结构中提供更有用的分类特征。此外,由于皮质厚度和多参数组合在特征选择后包含更重要的分类信息且特征维度更少,在二维空间中采用它们最重要的两个特征来构建SVM分类器以将HC与AD分开可能是最佳选择。所提出的工作是一种有前景的方法,表明基于机器学习的诊断图像分析在临床实践中具有重要作用。