Mejia Amanda F, Bolin David, Yue Yu Ryan, Wang Jiongran, Caffo Brian S, Nebel Mary Beth
Department of Statistics, Indiana University, Bloomington, IN, 47408.
CEMSE Division, King Abdullah University of Science and Technology, Thuwal, Saudi Arabia.
J Comput Graph Stat. 2023;32(2):413-433. doi: 10.1080/10618600.2022.2104289. Epub 2022 Sep 27.
Independent component analysis is commonly applied to functional magnetic resonance imaging (fMRI) data to extract independent components (ICs) representing functional brain networks. While ICA produces reliable group-level estimates, single-subject ICA often produces noisy results. Template ICA is a hierarchical ICA model using empirical population priors to produce more reliable subject-level estimates. However, this and other hierarchical ICA models assume unrealistically that subject effects are spatially independent. Here, we propose spatial template ICA (stICA), which incorporates spatial priors into the template ICA framework for greater estimation efficiency. Additionally, the joint posterior distribution can be used to identify brain regions engaged in each network using an excursions set approach. By leveraging spatial dependencies and avoiding massive multiple comparisons, stICA has high power to detect true effects. We derive an efficient expectation-maximization algorithm to obtain maximum likelihood estimates of the model parameters and posterior moments of the latent fields. Based on analysis of simulated data and fMRI data from the Human Connectome Project, we find that stICA produces estimates that are more accurate and reliable than benchmark approaches, and identifies larger and more reliable areas of engagement. The algorithm is computationally tractable, achieving convergence within 12 hours for whole-cortex fMRI analysis.
独立成分分析通常应用于功能磁共振成像(fMRI)数据,以提取代表功能性脑网络的独立成分(IC)。虽然独立成分分析能产生可靠的组水平估计值,但单受试者独立成分分析往往会产生有噪声的结果。模板独立成分分析是一种分层独立成分分析模型,它使用经验总体先验来产生更可靠的受试者水平估计值。然而,这种模型和其他分层独立成分分析模型不切实际地假设受试者效应在空间上是独立的。在此,我们提出空间模板独立成分分析(stICA),它将空间先验纳入模板独立成分分析框架以提高估计效率。此外,联合后验分布可用于通过偏移集方法识别参与每个网络的脑区。通过利用空间依赖性并避免大规模多重比较,空间模板独立成分分析具有检测真实效应的高功效。我们推导了一种有效的期望最大化算法,以获得模型参数的最大似然估计值和潜在场的后验矩。基于对模拟数据和人类连接体项目的功能磁共振成像数据的分析,我们发现空间模板独立成分分析产生的估计值比基准方法更准确、更可靠,并且能识别出更大、更可靠的参与区域。该算法在计算上易于处理,对于全脑皮质功能磁共振成像分析,在12小时内即可收敛。