Department of Computing, Imperial College, London, UK.
Department of Computing, Imperial College, London, UK.
Neuroimage. 2014 Jul 1;94:275-286. doi: 10.1016/j.neuroimage.2014.03.036. Epub 2014 Mar 21.
We propose a framework for feature extraction from learned low-dimensional subspaces that represent inter-subject variability. The manifold subspace is built from data-driven regions of interest (ROI). The regions are learned via sparse regression using the mini-mental state examination (MMSE) score as an independent variable which correlates better with the actual disease stage than a discrete class label. The sparse regression is used to perform variable selection along with a re-sampling scheme to reduce sampling bias. We then use the learned manifold coordinates to perform visualization and classification of the subjects. Results of the proposed approach are shown using the ADNI and ADNI-GO datasets. Three types of classification techniques, including a new MRI Disease-State-Score (MRI-DSS) classifier, are tested in conjunction with two learning strategies. In the first case Alzheimer's Disease (AD) and progressive mild cognitive impairment (pMCI) subjects were grouped together, while cognitive normal (CN) and stable mild cognitive impaired (sMCI) subjects were also grouped together. In the second approach, the classifiers are learned using the original class labels (with no grouping). We show results that are comparable to other state-of-the-art methods. A classification rate of 71%, of arguably the most clinically relevant subjects, sMCI and pMCI, is shown. Additionally, we present classification accuracies between CN and early MCI (eMCI) subjects, from the ADNI-GO dataset, of 65%. To our knowledge this is the first time classification accuracies for eMCI patients have been reported.
我们提出了一种从表示受试者间变异性的学习到的低维子空间中提取特征的框架。流形子空间是从数据驱动的感兴趣区域(ROI)构建的。这些区域是通过使用 mini-mental state examination(MMSE)评分作为独立变量的稀疏回归学习得到的,该评分与实际疾病阶段的相关性优于离散类别标签。稀疏回归用于执行变量选择以及重新采样方案以减少采样偏差。然后,我们使用学习到的流形坐标对受试者进行可视化和分类。使用 ADNI 和 ADNI-GO 数据集展示了所提出方法的结果。结合两种学习策略,测试了三种分类技术,包括一种新的 MRI 疾病状态评分(MRI-DSS)分类器。在第一种情况下,将阿尔茨海默病(AD)和进行性轻度认知障碍(pMCI)受试者归为一组,同时将认知正常(CN)和稳定轻度认知障碍(sMCI)受试者也归为一组。在第二种方法中,使用原始类别标签(无分组)学习分类器。我们展示了与其他最先进方法相当的结果。对于最具临床相关性的受试者 sMCI 和 pMCI,显示出 71%的分类率。此外,我们还展示了来自 ADNI-GO 数据集的 CN 和早期 MCI(eMCI)受试者之间的分类准确性,为 65%。据我们所知,这是首次报告 eMCI 患者的分类准确性。