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A CCA+ICA based model for multi-task brain imaging data fusion and its application to schizophrenia.

机译:基于CCA + ICA的多任务脑成像数据融合模型及其在精神分裂症中的应用。

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Collection of multiple-task brain imaging data from the same subject has now become common practice in medical imaging studies. In this paper, we propose a simple yet effective model, "CCA+ICA", as a powerful tool for multi-task data fusion. This joint blind source separation (BSS) model takes advantage of two multivariate methods: canonical correlation analysis and independent component analysis, to achieve both high estimation accuracy and to provide the correct connection between two datasets in which sources can have either common or distinct between-dataset correlation. In both simulated and real fMRI applications, we compare the proposed scheme with other joint BSS models and examine the different modeling assumptions. The contrast images of two tasks: sensorimotor (SM) and Sternberg working memory (SB), derived from a general linear model (GLM), were chosen to contribute real multi-task fMRI data, both of which were collected from 50 schizophrenia patients and 50 healthy controls. When examining the relationship with duration of illness, CCA+ICA revealed a significant negative correlation with temporal lobe activation. Furthermore, CCA+ICA located sensorimotor cortex as the group-discriminative regions for both tasks and identified the superior temporal gyrus in SM and prefrontal cortex in SB as task-specific group-discriminative brain networks. In summary, we compared the new approach to some competitive methods with different assumptions, and found consistent results regarding each of their hypotheses on connecting the two tasks. Such an approach fills a gap in existing multivariate methods for identifying biomarkers from brain imaging data.
机译:现在,从同一受试者收集多任务脑成像数据已成为医学成像研究的普遍做法。在本文中,我们提出了一个简单而有效的模型“ CCA + ICA”,作为用于多任务数据融合的强大工具。此联合盲源分离(BSS)模型利用了两种多元方法:规范相关分析和独立成分分析,以实现较高的估计精度并提供两个数据集之间的正确连接,在这些数据集中,源之间可以具有公共或不同的特征,数据集相关性。在模拟和实际fMRI应用中,我们将提出的方案与其他联合BSS模型进行比较,并检查不同的建模假设。选择来自普通线性模型(GLM)的两个任务:感觉运动(SM)和Sternberg工作记忆(SB)的对比图像来贡献真实的多任务fMRI数据,这两个数据均来自50例精神分裂症患者和50个健康对照。在检查与疾病持续时间的关系时,CCA + ICA显示与颞叶激活显着负相关。此外,CCA + ICA将感觉运动皮层定位为这两个任务的组区分区域,并将SM中的上颞回和SB的前额叶皮层确定为特定任务的组区分脑网络。总而言之,我们将新方法与具有不同假设的某些竞争方法进行了比较,并发现了关于它们在连接两个任务时的每个假设的一致结果。这种方法填补了现有的用于从脑成像数据中识别生物标志物的多元方法中的空白。

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