Wang Jiaping, Zhu Hongtu, Fan Jianqing, Giovanello Kelly, Lin Weili
University of North Carolina at Chapel Hill.
Princeton University.
Ann Appl Stat. 2013 Jun;7(2):904-935. doi: 10.1214/12-aoas609.
In the event-related functional magnetic resonance imaging (fMRI) data analysis, there is an extensive interest in accurately and robustly estimating the hemodynamic response function (HRF) and its associated statistics (e.g., the magnitude and duration of the activation). Most methods to date are developed in the time domain and they have utilized almost exclusively the temporal information of fMRI data without accounting for the spatial information. The aim of this paper is to develop a multiscale adaptive smoothing model (MASM) in the frequency domain by integrating the spatial and temporal information to adaptively and accurately estimate HRFs pertaining to each stimulus sequence across all voxels in a three-dimensional (3D) volume. We use two sets of simulation studies and a real data set to examine the finite sample performance of MASM in estimating HRFs. Our real and simulated data analyses confirm that MASM outperforms several other state-of-art methods, such as the smooth finite impulse response (sFIR) model.
在事件相关功能磁共振成像(fMRI)数据分析中,人们对准确且稳健地估计血流动力学响应函数(HRF)及其相关统计量(例如激活的幅度和持续时间)有着广泛的兴趣。迄今为止,大多数方法是在时域中开发的,并且几乎完全利用了fMRI数据的时间信息,而没有考虑空间信息。本文的目的是通过整合空间和时间信息,在频域中开发一种多尺度自适应平滑模型(MASM),以自适应且准确地估计三维(3D)体积中所有体素上与每个刺激序列相关的HRF。我们使用两组模拟研究和一个真实数据集来检验MASM在估计HRF方面的有限样本性能。我们对真实数据和模拟数据的分析证实,MASM优于其他几种先进方法,如平滑有限脉冲响应(sFIR)模型。