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基于结构磁共振成像和扩散张量成像的多变量特征判别分析

Discriminative analysis of multivariate features from structural MRI and diffusion tensor images.

作者信息

Li Muwei, Qin Yuanyuan, Gao Fei, Zhu Wenzhen, He Xiaohai

机构信息

College of Electronics and Information Engineering, Sichuan University, Chengdu 610064, China.

Department of Radiology, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan 430030, China.

出版信息

Magn Reson Imaging. 2014 Oct;32(8):1043-51. doi: 10.1016/j.mri.2014.05.008. Epub 2014 Jun 23.

Abstract

Imaging markers derived from magnetic resonance images, together with machine learning techniques allow for the recognition of unique anatomical patterns and further differentiating Alzheimer's disease (AD) from normal states. T1-based imaging markers, especially volumetric patterns have demonstrated their discriminative potential, however, rely on the tissue abnormalities of gray matter alone. White matter abnormalities and their contribution to AD discrimination have been studied by measuring voxel-based intensities in diffusion tensor images (DTI); however, no systematic study has been done on the discriminative power of either region-of-interest (ROI)-based features from DTI or the combined features extracted from both T1 images and DTI. ROI-based analysis could potentially reduce the feature dimensionality of DTI indices, usually from more than 10e+5, to 10-150 which is almost equal to the order of magnitude with respect to volumetric features from T1. Therefore it allows for straight forward combination of intensity based landmarks of DTI indices and volumetric features of T1. In the present study, the feasibility of tract-based features related to Alzheimer's disease was first evaluated by measuring its discriminative capability using support vector machine on fractional anisotropy (FA) maps collected from 21 subjects with Alzheimer's disease and 15 normal controls. Then the performance of the tract-based FA+gray matter volumes-combined feature was evaluated by cross-validation. The combined feature yielded good classification result with 94.3% accuracy, 95.0% sensitivity, 93.3% specificity, and 0.96 area under the receiver operating characteristic curve. The tract-based FA and the tract-based FA+gray matter volumes-combined features are certified their feasibilities for the recognition of anatomical features and may serve to complement classification methods based on other imaging markers.

摘要

源自磁共振图像的成像标记物,结合机器学习技术,能够识别独特的解剖模式,并进一步将阿尔茨海默病(AD)与正常状态区分开来。基于T1的成像标记物,尤其是体积模式已经显示出它们的鉴别潜力,然而,仅依赖于灰质的组织异常。通过测量扩散张量图像(DTI)中基于体素的强度,对白质异常及其对AD鉴别的贡献进行了研究;然而,尚未对基于感兴趣区域(ROI)的DTI特征或从T1图像和DTI中提取的组合特征的鉴别能力进行系统研究。基于ROI的分析有可能将DTI指数的特征维度从通常超过10e+5降低到10 - 150,这几乎与T1的体积特征的数量级相等。因此,它允许直接组合DTI指数的基于强度的地标和T1的体积特征。在本研究中,首先通过使用支持向量机对从21名阿尔茨海默病患者和15名正常对照收集的分数各向异性(FA)图测量其鉴别能力,评估与阿尔茨海默病相关的基于束的特征的可行性。然后通过交叉验证评估基于束的FA +灰质体积组合特征的性能。组合特征产生了良好的分类结果,准确率为94.3%,灵敏度为95.0%,特异性为93.3%,受试者工作特征曲线下面积为0.96。基于束的FA和基于束的FA +灰质体积组合特征被证明在识别解剖特征方面是可行的,并且可以补充基于其他成像标记物的分类方法。

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