Department of Biomedical Engineering, Washington University.
Department of Neurology and Neurosurgery, Washington University.
Neuroimage. 2013 Nov 15;82:616-633. doi: 10.1016/j.neuroimage.2013.05.108. Epub 2013 Jun 2.
Resting state functional magnetic resonance imaging (fMRI) has been used to study brain networks associated with both normal and pathological cognitive functions. The objective of this work is to reliably compute resting state network (RSN) topography in single participants. We trained a supervised classifier (multi-layer perceptron; MLP) to associate blood oxygen level dependent (BOLD) correlation maps corresponding to pre-defined seeds with specific RSN identities. Hard classification of maps obtained from a priori seeds was highly reliable across new participants. Interestingly, continuous estimates of RSN membership retained substantial residual error. This result is consistent with the view that RSNs are hierarchically organized, and therefore not fully separable into spatially independent components. After training on a priori seed-based maps, we propagated voxel-wise correlation maps through the MLP to produce estimates of RSN membership throughout the brain. The MLP generated RSN topography estimates in individuals consistent with previous studies, even in brain regions not represented in the training data. This method could be used in future studies to relate RSN topography to other measures of functional brain organization (e.g., task-evoked responses, stimulation mapping, and deficits associated with lesions) in individuals. The multi-layer perceptron was directly compared to two alternative voxel classification procedures, specifically, dual regression and linear discriminant analysis; the perceptron generated more spatially specific RSN maps than either alternative.
静息态功能磁共振成像 (fMRI) 已被用于研究与正常和病理认知功能相关的脑网络。本研究的目的是可靠地计算单个参与者的静息态网络 (RSN) 拓扑结构。我们训练了一个监督分类器 (多层感知机; MLP),将与预定义种子相对应的血氧水平依赖 (BOLD) 相关图与特定的 RSN 身份相关联。来自先验种子的映射的硬分类在新参与者中具有高度可靠性。有趣的是,RSN 成员的连续估计保留了大量剩余误差。这一结果与 RSN 是分层组织的观点一致,因此不能完全分离为空间上独立的成分。在基于先验种子的映射上进行训练后,我们通过 MLP 传播体素级相关图,以在整个大脑中产生 RSN 成员的估计值。MLP 生成的个体 RSN 拓扑估计与先前的研究一致,即使在训练数据中没有表示的大脑区域也是如此。该方法可用于未来的研究,将 RSN 拓扑与其他功能脑组织结构的测量值(例如,任务诱发反应、刺激映射和与损伤相关的缺陷)相关联。多层感知机与两种替代体素分类方法(双回归和线性判别分析)进行了直接比较;感知机生成的 RSN 图谱比任何替代方法都更具空间特异性。