Human Brain Research Center, Kyoto University Graduate School of Medicine, 54 Shogoin-Kawahara-cho, Sakyo-ku, Kyoto 606-8507, Japan.
J Neurosci Methods. 2014 Jan 15;221:139-50. doi: 10.1016/j.jneumeth.2013.10.003. Epub 2013 Oct 16.
Although previous voxel-based studies using features extracted by atlas-based parcellation produced relatively poor performances on the prediction of Alzheimer's disease (AD) in subjects with mild cognitive impairment (MCI), classification performance usually depends on features extracted from the original images by atlas-based parcellation. To establish whether classification performance differs depending on the choice of atlases, support vector machine (SVM)-based classification using different brain atlases was performed.
Seventy-seven three-dimensional T1-weighted MRI data sets of subjects with amnestic MCI, including 39 subjects who developed AD (MCI-C) within three years and 38 who did not (MCI-NC), were used for voxel-based morphometry (VBM) analyses and analyzed using SVM-based pattern recognition methods combined with a feature selection method based on the SVM recursive feature elimination (RFE) method. Three brain atlases were used for the feature selections: the Automated Anatomical Labeling (AAL) Atlas, Brodmann's Areas (BA), and the LONI Probabilistic Brain Atlas (LPBA40).
The VBM analysis showed a significant cluster of gray matter density reduction, located at the left hippocampal region, in MCI-C compared to MCI-NC. The SVM analyses with the SVM-RFE algorithm revealed that the best classification performance was achieved by LPBA40 with 37 selected features, giving an accuracy of 77.9%. The overall performance in LPBA40 was better than that of AAL and BA regardless of the number of selected features.
These results suggest that feature selection is crucial to improve the classification performance in atlas-based analysis and that the choice of atlases is also important.
尽管先前使用基于图谱分割提取特征的体素基研究在预测轻度认知障碍(MCI)患者的阿尔茨海默病(AD)方面表现相对较差,但分类性能通常取决于基于图谱分割从原始图像中提取的特征。为了确定分类性能是否因图谱的选择而有所不同,使用不同的脑图谱进行了基于支持向量机(SVM)的分类。
使用基于支持向量机(SVM)的模式识别方法结合基于 SVM 递归特征消除(RFE)方法的特征选择方法,对 77 名有遗忘型 MCI 的受试者的三维 T1 加权 MRI 数据集进行了体素形态计量学(VBM)分析和分析。这些数据包括三年内发展为 AD 的 39 名受试者(MCI-C)和未发展为 AD 的 38 名受试者(MCI-NC)。使用了三个脑图谱进行特征选择:自动解剖标记(AAL)图谱、布罗德曼区域(BA)和 LONI 概率脑图谱(LPBA40)。
VBM 分析显示,与 MCI-NC 相比,MCI-C 左侧海马区域的灰质密度明显降低。使用 SVM-RFE 算法的 SVM 分析显示,LPBA40 结合 37 个选择特征的分类性能最佳,准确率为 77.9%。无论选择的特征数量如何,LPBA40 的整体性能都优于 AAL 和 BA。
这些结果表明,特征选择对于提高基于图谱分析的分类性能至关重要,并且图谱的选择也很重要。