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Canonical Correlation Analysis for Feature-Based Fusion of Biomedical Imaging Modalities and Its Application to Detection of Associative Networks in Schizophrenia

机译:基于特征的生物医学影像学特征融合的典范相关分析及其在精神分裂症关联网络检测中的应用

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摘要

Typically data acquired through imaging techniques such as functional magnetic resonance imaging (fMRI), structural MRI (sMRI), and electroencephalography (EEG) are analyzed separately. However, fusing information from such complementary modalities promises to provide additional insight into connectivity across brain networks and changes due to disease. We propose a data fusion scheme at the feature level using canonical correlation analysis (CCA) to determine inter-subject covariations across modalities. As we show both with simulation results and application to real data, multimodal CCA (mCCA) proves to be a flexible and powerful method for discovering associations among various data types. We demonstrate the versatility of the method with application to two datasets, an fMRI and EEG, and an fMRI and sMRI dataset, both collected from patients diagnosed with schizophrenia and healthy controls. CCA results for fMRI and EEG data collected for an auditory oddball task reveal associations of the temporal and motor areas with the N2 and P3 peaks. For the application to fMRI and sMRI data collected for an auditory sensorimotor task, CCA results show an interesting joint relationship between fMRI and gray matter, with patients with schizophrenia showing more functional activity in motor areas and less activity in temporal areas associated with less gray matter as compared to healthy controls. Additionally, we compare our scheme with an independent component analysis based fusion method, joint-ICA that has proven useful for such a study and note that the two methods provide complementary perspectives on data fusion.
机译:通常,通过成像技术(例如功能磁共振成像(fMRI),结构性MRI(sMRI)和脑电图(EEG))获得的数据将分别进行分析。然而,融合来自这种互补方式的信息有望为跨大脑网络的连通性以及疾病引起的变化提供更多见解。我们提出了使用标准相关分析(CCA)在特征级别上的数据融合方案,以确定跨模态的受试者间协变量。正如我们在仿真结果和实际数据中所展示的那样,多模式CCA(mCCA)被证明是一种发现各种数据类型之间关联的灵活而强大的方法。我们证明了该方法的多功能性,并应用于两个数据集,即fMRI和EEG,以及fMRI和sMRI数据集,均从诊断为精神分裂症的患者和健康对照者收集。针对听觉怪胎任务收集的fMRI和EEG数据的CCA结果揭示了颞叶和运动区与N2和P3峰的关联。对于用于听觉感觉运动任务的fMRI和sMRI数据的应用,CCA结果显示fMRI与灰质之间有趣的联合关系,精神分裂症患者在运动区域显示出更多的功能活动,而在颞部区域表现出较少的活动,而灰质较少与健康对照组相比此外,我们将我们的方案与基于独立成分分析的融合方法(joint-ICA)进行了比较,事实证明该方法对此类研究有用,并且请注意,这两种方法在数据融合方面提供了互补的观点。

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