IEEE Trans Med Imaging. 2020 Oct;39(10):3137-3147. doi: 10.1109/TMI.2020.2987817. Epub 2020 Apr 14.
The resting-state functional magnetic resonance imaging (rs-fMRI) reflects functional activity of brain regions by blood-oxygen-level dependent (BOLD) signals. Up to now, many computer-aided diagnosis methods based on rs-fMRI have been developed for Autism Spectrum Disorder (ASD). These methods are mostly the binary classification approaches to determine whether a subject is an ASD patient or not. However, the disease often consists of several sub-categories, which are complex and thus still confusing to many automatic classification methods. Besides, existing methods usually focus on the functional connectivity (FC) features in grey matter regions, which only account for a small portion of the rs-fMRI data. Recently, the possibility to reveal the connectivity information in the white matter regions of rs-fMRI has drawn high attention. To this end, we propose to use the patch-based functional correlation tensor (PBFCT) features extracted from rs-fMRI in white matter, in addition to the traditional FC features from gray matter, to develop a novel multi-class ASD diagnosis method in this work. Our method has two stages. Specifically, in the first stage of multi-source domain adaptation (MSDA), the source subjects belonging to multiple clinical centers (thus called as source domains) are all transformed into the same target feature space. Thus each subject in the target domain can be linearly reconstructed by the transformed subjects. In the second stage of multi-view sparse representation (MVSR), a multi-view classifier for multi-class ASD diagnosis is developed by jointly using both views of the FC and PBFCT features. The experimental results using the ABIDE dataset verify the effectiveness of our method, which is capable of accurately classifying each subject into a respective ASD sub-category.
静息态功能磁共振成像 (rs-fMRI) 通过血氧水平依赖 (BOLD) 信号反映脑区的功能活动。到目前为止,已经开发出许多基于 rs-fMRI 的计算机辅助诊断方法用于自闭症谱系障碍 (ASD)。这些方法大多是二元分类方法,用于确定一个对象是否为 ASD 患者。然而,这种疾病通常由几个亚类组成,这对于许多自动分类方法来说仍然很复杂,容易混淆。此外,现有的方法通常侧重于灰质区域的功能连接 (FC) 特征,而这些特征仅占 rs-fMRI 数据的一小部分。最近,揭示 rs-fMRI 中白质区域连接信息的可能性引起了高度关注。为此,我们提出在传统的从灰质提取的功能连接特征的基础上,从 rs-fMRI 的白质中提取基于斑块的功能相关张量 (PBFCT) 特征,用于开发一种新的多类 ASD 诊断方法。我们的方法有两个阶段。具体来说,在多源域自适应 (MSDA) 的第一阶段,来自多个临床中心的源对象(因此称为源域)都被转换到相同的目标特征空间。因此,目标域中的每个对象都可以通过转换后的对象进行线性重建。在多视图稀疏表示 (MVSR) 的第二阶段,通过联合使用 FC 和 PBFCT 特征的两个视图,开发了用于多类 ASD 诊断的多视图分类器。使用 ABIDE 数据集的实验结果验证了我们的方法的有效性,该方法能够准确地将每个对象分类到相应的 ASD 亚类。