IEEE Trans Med Imaging. 2018 Oct;37(10):2165-2175. doi: 10.1109/TMI.2017.2721640. Epub 2017 Jun 29.
In this paper, we consider the problem of estimating multiple sparse, co-activated brain regions from functional magnetic resonance imaging (fMRI) observations belonging to different classes. More precisely, we propose a method to analyze similarities and differences in functional connectivity between children and young adults. Often, analysis is conducted on each class separately, and differences across classes are identified with an additional postprocessing step using adequate statistical tools. Here, we propose to rely on a generalized fused Lasso penalty, which allows us to make use of the entire data set in order to estimate connectivity patterns that are either shared across classes, or specific to a given group. By using the entire population during the estimation, we hope to increase the power of our analysis. The proposed model falls in the category of population-wise matrix decomposition, and a simple and efficient alternating direction method of multipliers algorithm is introduced to solve the associated optimization problem. After validating our approach on simulated data, experiments are performed on resting-state fMRI imaging from the Philadelphia neurodevelopmental cohort data set, comprised of normally developing children from ages 8 to 21. Developmental differences were observed in various brain regions, as a total of three class-specific resting-state components were identified. Statistical analysis of the estimated subject-specific features, as well as classification results (based on age groups, up to 81% accuracy, samples) related to these components demonstrate that the proposed method is able to properly extract meaningful shared and class-specific sub-networks.
在本文中,我们考虑从属于不同类别的功能磁共振成像 (fMRI) 观测中估计多个稀疏、共同激活的脑区的问题。更确切地说,我们提出了一种方法来分析儿童和年轻人之间功能连接的相似性和差异。通常,对每个类别分别进行分析,并使用适当的统计工具在附加的后处理步骤中识别类别之间的差异。在这里,我们建议依赖广义融合 Lasso 惩罚,这使我们能够利用整个数据集来估计跨类别的连接模式,或者特定于给定组的连接模式。通过在估计过程中使用整个群体,我们希望提高我们分析的功效。所提出的模型属于群体矩阵分解的范畴,并引入了一种简单而有效的交替方向乘子算法来解决相关的优化问题。在对模拟数据进行验证后,我们在费城神经发育队列数据集的静息态 fMRI 成像上进行了实验,该数据集由年龄在 8 至 21 岁之间的正常发育的儿童组成。在各个脑区观察到了发育差异,总共确定了三个特定于类别的静息态成分。对估计的个体特定特征的统计分析以及与这些成分相关的分类结果(基于年龄组,最高可达 81%的准确率,样本)表明,所提出的方法能够正确提取有意义的共享和特定于类别的子网络。