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Predicting Activation Across Individuals with Resting-State Functional Connectivity Based Multi-Atlas Label Fusion

机译:通过基于休息状态功能连接的多图集标签融合预测个体之间的激活

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The alignment of brain imaging data for functional neu-roimaging studies is challenging due to the discrepancy between correspondence of morphology, and equivalence of functional role. In this paper we map functional activation areas across individuals by a multi-atlas label fusion algorithm in a functional space. We learn the manifold of resting-state fMRI signals in each individual, and perform manifold alignment in an embedding space. We then transfer activation predictions from a source population to a target subject via multi-atlas label fusion. The cost function is derived from the aligned manifolds, so that the resulting correspondences are derived based on the similarity of intrinsic connectivity architecture. Experiments show that the resulting label fusion predicts activation evoked by various experiment conditions with higher accuracy than relying on morphological alignment. Interestingly, the distribution of this gain is distributed heterogeneously across the cortex, and across tasks. This offers insights into the relationship between intrinsic connectivity, morphology and task activation. Practically, the mechanism can serve as prior, and provides an avenue to infer task-related activation in individuals for whom only resting data is available.
机译:由于形态的对应性和功能作用的等价性之间的差异,用于功能性神经影像学研究的脑成像数据的对齐是具有挑战性的。在本文中,我们通过功能空间中的多图例标签融合算法在各个人之间绘制功能激活区域。我们学习每个人的静止状态fMRI信号的流形,并在嵌入空间中进行流形对齐。然后,我们通过多图谱标签融合将激活预测从源种群转移到目标受试者。成本函数是从对齐的歧管派生的,因此,基于内在连通性体系结构的相似性,可以得出结果对应关系。实验表明,与依赖形态学比对相比,所得到的标记融合物可以更准确地预测各种实验条件引起的激活。有趣的是,此增益的分布在整个皮质和各个任务之间是不均匀的。这提供了对内在连通性,形态与任务激活之间关系的见解。实际上,该机制可以用作先验机制,并为推断仅休息数据可用的个人提供与任务相关的激活的途径。

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