Wang Xin, Ren Yanshuang, Zhang Wensheng
Institute of Automation, Chinese Academy of Sciences, Beijing 100190, China.
Department of Radiology, Guang'anmen Hospital, China Academy of Chinese Medical Sciences, Beijing 100053, China.
Comput Math Methods Med. 2017;2017:3609821. doi: 10.1155/2017/3609821. Epub 2017 Apr 12.
Study of functional brain network (FBN) based on functional magnetic resonance imaging (fMRI) has proved successful in depression disorder classification. One popular approach to construct FBN is Pearson correlation. However, it only captures pairwise relationship between brain regions, while it ignores the influence of other brain regions. Another common issue existing in many depression disorder classification methods is applying only single local feature extracted from constructed FBN. To address these issues, we develop a new method to classify fMRI data of patients with depression and healthy controls. First, we construct the FBN using a sparse low-rank model, which considers the relationship between two brain regions given all the other brain regions. Moreover, it can automatically remove weak relationship and retain the modular structure of FBN. Secondly, FBN are effectively measured by eight graph-based features from different aspects. Tested on fMRI data of 31 patients with depression and 29 healthy controls, our method achieves 95% accuracy, 96.77% sensitivity, and 93.10% specificity, which outperforms the Pearson correlation FBN and sparse FBN. In addition, the combination of graph-based features in our method further improves classification performance. Moreover, we explore the discriminative brain regions that contribute to depression disorder classification, which can help understand the pathogenesis of depression disorder.
基于功能磁共振成像(fMRI)的大脑功能网络(FBN)研究已被证明在抑郁症分类中是成功的。一种构建FBN的常用方法是皮尔逊相关性。然而,它只捕捉脑区之间的成对关系,而忽略了其他脑区的影响。许多抑郁症分类方法中存在的另一个常见问题是仅应用从构建的FBN中提取的单个局部特征。为了解决这些问题,我们开发了一种新的方法来对抑郁症患者和健康对照的fMRI数据进行分类。首先,我们使用稀疏低秩模型构建FBN,该模型考虑了在所有其他脑区存在的情况下两个脑区之间的关系。此外,它可以自动去除弱关系并保留FBN的模块化结构。其次,从不同方面通过八个基于图的特征有效地测量FBN。在31名抑郁症患者和29名健康对照的fMRI数据上进行测试,我们的方法实现了95%的准确率、96.77%的灵敏度和93.10%的特异性,优于皮尔逊相关性FBN和稀疏FBN。此外,我们方法中基于图的特征的组合进一步提高了分类性能。此外,我们探索了有助于抑郁症分类的鉴别性脑区,这有助于理解抑郁症的发病机制。