Fan Yong, Shen Dinggang, Gur Ruben C, Gur Raquel E, Davatzikos Christos
Section of Biomedical Image Analysis, Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.
IEEE Trans Med Imaging. 2007 Jan;26(1):93-105. doi: 10.1109/TMI.2006.886812.
This paper presents a method for classification of structural brain magnetic resonance (MR) images, by using a combination of deformation-based morphometry and machine learning methods. A morphological representation of the anatomy of interest is first obtained using a high-dimensional mass-preserving template warping method, which results in tissue density maps that constitute local tissue volumetric measurements. Regions that display strong correlations between tissue volume and classification (clinical) variables are extracted using a watershed segmentation algorithm, taking into account the regional smoothness of the correlation map which is estimated by a cross-validation strategy to achieve robustness to outliers. A volume increment algorithm is then applied to these regions to extract regional volumetric features, from which a feature selection technique using support vector machine (SVM)-based criteria is used to select the most discriminative features, according to their effect on the upper bound of the leave-one-out generalization error. Finally, SVM-based classification is applied using the best set of features, and it is tested using a leave-one-out cross-validation strategy. The results on MR brain images of healthy controls and schizophrenia patients demonstrate not only high classification accuracy (91.8% for female subjects and 90.8% for male subjects), but also good stability with respect to the number of features selected and the size of SVM kernel used.
本文提出了一种通过结合基于变形的形态测量法和机器学习方法来对大脑结构磁共振(MR)图像进行分类的方法。首先使用一种高维质量守恒模板变形方法获得感兴趣解剖结构的形态学表示,这会生成构成局部组织体积测量的组织密度图。使用分水岭分割算法提取在组织体积与分类(临床)变量之间显示出强相关性的区域,同时考虑到通过交叉验证策略估计的相关图的区域平滑度,以实现对异常值的鲁棒性。然后将体积增量算法应用于这些区域以提取区域体积特征,基于支持向量机(SVM)标准的特征选择技术会根据这些特征对留一法泛化误差上限的影响来选择最具判别力的特征。最后,使用最佳特征集应用基于SVM的分类,并使用留一法交叉验证策略进行测试。对健康对照者和精神分裂症患者的MR脑图像的结果表明,不仅分类准确率高(女性受试者为91.8%,男性受试者为90.8%),而且在所选特征数量和所用SVM核大小方面具有良好的稳定性。