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用于功能磁共振成像(fMRI)数据分类的判别性稀疏连接模式

Discriminative sparse connectivity patterns for classification of fMRI Data.

作者信息

Eavani Harini, Satterthwaite Theodore D, Gur Raquel E, Gur Ruben C, Davatzikos Christos

出版信息

Med Image Comput Comput Assist Interv. 2014;17(Pt 3):193-200. doi: 10.1007/978-3-319-10443-0_25.

Abstract

Functional connectivity using resting-state fMRI has emerged as an important research tool for understanding normal brain function as well as changes occurring during brain development and in various brain disorders. Most prior work has examined changes in pairwise functional connectivity values using a multi-variate classification approach, such as Support Vector Machines (SVM). While it is powerful, SVMs produce a dense set of high-dimensional weight vectors as output, which are difficult to interpret, and require additional post-processing to relate to known functional networks. In this paper, we propose a joint framework that combines network identification and classification, resulting in a set of networks, or Sparse Connectivity Patterns (SCPs) which are functionally interpretable as well as highly discriminative of the two groups. Applied to a study of normal development classifying children vs. adults, the proposed method provided accuracy of 76%(AUC= 0.85), comparable to SVM (79%,AUC=0.87), but with dramatically fewer number of features (50 features vs. 34716 for the SVM). More importantly, this leads to a tremendous improvement in neuro-scientific interpretability, which is specially advantageous in such a study where the group differences are wide-spread throughout the brain. Highest-ranked discriminative SCPs reflect increases in long-range connectivity in adults between the frontal areas and posterior cingulate regions. In contrast, connectivity between the bilateral parahippocampal gyri was decreased in adults compared to children.

摘要

利用静息态功能磁共振成像的功能连接性已成为理解正常脑功能以及脑发育过程中和各种脑部疾病中发生的变化的重要研究工具。大多数先前的工作使用多变量分类方法(如支持向量机(SVM))来检查成对功能连接值的变化。虽然支持向量机功能强大,但它会产生一组密集的高维权重向量作为输出,这些向量难以解释,并且需要额外的后处理才能与已知的功能网络相关联。在本文中,我们提出了一个联合框架,该框架将网络识别和分类相结合,从而产生一组在功能上可解释且对两组具有高度区分性的网络,即稀疏连接模式(SCP)。将该方法应用于一项区分儿童与成人的正常发育研究,结果显示其准确率为76%(曲线下面积=0.85),与支持向量机(79%,曲线下面积=0.87)相当,但特征数量大幅减少(50个特征,而支持向量机为34716个)。更重要的是,这极大地提高了神经科学的可解释性,这在这样一项群体差异遍布整个大脑的研究中特别有利。排名最高的区分性SCP反映了成年人额叶区域与后扣带回区域之间长程连接的增加。相比之下,与儿童相比,成年人双侧海马旁回之间的连接性降低。

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本文引用的文献

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6
Functional network organization of the human brain.人类大脑的功能网络组织。
Neuron. 2011 Nov 17;72(4):665-78. doi: 10.1016/j.neuron.2011.09.006.
7
The influence of head motion on intrinsic functional connectivity MRI.头部运动对自发性功能磁共振连接的影响。
Neuroimage. 2012 Jan 2;59(1):431-8. doi: 10.1016/j.neuroimage.2011.07.044. Epub 2011 Jul 23.
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Generative-discriminative basis learning for medical imaging.基于生成-判别式的医学影像基础学习。
IEEE Trans Med Imaging. 2012 Jan;31(1):51-69. doi: 10.1109/TMI.2011.2162961. Epub 2011 Jul 25.

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