论文标题
指数家庭图形模型:相关的重复和未衡量的混杂因素与fMRI数据的应用
Exponential Family Graphical Models: Correlated Replicates and Unmeasured Confounders, with Applications to fMRI Data
论文作者
论文摘要
图形模型已广泛用于建模大脑连接网络。但是,在模型拟合期间通常会忽略未衡量的混杂因素和测量之间的相关性,这可能会导致虚假的科学发现。通过功能磁共振成像(fMRI)研究的激励,我们提出了一种新的方法,用于构建具有相关重复和潜在影响的大脑连通性网络。在典型的功能磁共振成像研究中,扫描每个参与者,并在一段时间内收集fMRI测量。在许多情况下,受试者可能具有在大脑扫描期间无法测量的不同心态:例如,在大脑扫描的上半年可能会醒来,并且在大脑扫描的下半部分可能会入睡。为了建模由不同心态引起的重复和潜在效应之间的相关性,我们假设每个独立受试者中的相关重复均遵循一个单延矢量矢量自回旋模型,并且未衡量的混杂因素引起的潜在效应是分段常数的。所提出的方法会导致凸优化问题,我们使用块坐标下降算法解决该问题。为参数估计建立了理论保证。我们通过广泛的数值研究证明,我们的方法能够比现有方法更准确地估计具有相关复制的潜在可变图形模型。
Graphical models have been used extensively for modeling brain connectivity networks. However, unmeasured confounders and correlations among measurements are often overlooked during model fitting, which may lead to spurious scientific discoveries. Motivated by functional magnetic resonance imaging (fMRI) studies, we propose a novel method for constructing brain connectivity networks with correlated replicates and latent effects. In a typical fMRI study, each participant is scanned and fMRI measurements are collected across a period of time. In many cases, subjects may have different states of mind that cannot be measured during the brain scan: for instance, some subjects may be awake during the first half of the brain scan, and may fall asleep during the second half of the brain scan. To model the correlation among replicates and latent effects induced by the different states of mind, we assume that the correlated replicates within each independent subject follow a one-lag vector autoregressive model, and that the latent effects induced by the unmeasured confounders are piecewise constant. The proposed method results in a convex optimization problem which we solve using a block coordinate descent algorithm. Theoretical guarantees are established for parameter estimation. We demonstrate via extensive numerical studies that our method is able to estimate latent variable graphical models with correlated replicates more accurately than existing methods.