Major depressive disorder (MDD) requires study of brain functional connectivity alterations for patients, which can be uncovered by resting-state functional magnetic resonance imaging (rs-fMRI) data. We consider the problem of identifying alterations of brain functional connectivity for a single MDD patient. This is particularly difficult since the amount of data collected during an fMRI scan is too limited to provide sufficient information for individual analysis. Additionally, rs-fMRI data usually has the characteristics of incompleteness, sparsity, variability, high dimensionality and high noise. To address these problems, we proposed a multitask Gaussian Bayesian network (MTGBN) framework capable for identifying individual disease-induced alterations for MDD patients. We assume that such disease-induced alterations show some degrees of similarity with the tool to learn such network structures from observations to understanding of how system are structured jointly from related tasks. First, we treat each patient in a class of observation as a task and then learn the Gaussian Bayesian networks (GBNs) of this data class by learning from all tasks that share a default covariance matrix that encodes prior knowledge. This setting can help us to learn more information from limited data. Next, we derive a closed-form formula of the complete likelihood function and use the Monte-Carlo Expectation-Maximization(MCEM) algorithm to search for the approximately best Bayesian network structures efficiently. Finally, we assess the performance of our methods with simulated and real-world rs-fMRI data.
翻译:大型抑郁症(MDD) 需要研究病人大脑功能连接的变化,这可以通过休息状态功能磁共振成像(rs-fMRI)数据来发现。我们考虑了为单一MDD病人确定大脑功能连接改变的问题。这特别困难,因为在FMRI扫描过程中收集的数据量太有限,无法为个人分析提供足够的信息。此外,rs-fMRI数据通常具有不完全、偏僻、易变性、高度高度维度和高噪音等特征。为了解决这些问题,我们建议建立一个多任务多任务高山巴耶斯网络(MTGBN)框架,能够识别由个别疾病引发的MDD病人变化。我们假设,这种疾病引起的改变与从观察中学习这种网络结构的工具具有一定程度的相似性,无法了解系统如何与相关任务相结合。首先,我们将每个病人的观察类别视为一项任务,然后学习Gaussian Bayesian网络(GBNs) 网络(GBNs) 。我们从所有共享默认的默认可变缩缩缩缩缩缩图矩阵的任务中学习了我们之前掌握的数据功能。