Li Huanjie, Nickerson Lisa D, Nichols Thomas E, Gao Jia-Hong
Department of Biomedical Engineering, Dalian University of Technology, Dalian, China.
Beijing City Key Lab for Medical Physics and Engineering, Institute of Heavy Ion Physics, School of Physics, Peking University, Beijing, China.
Hum Brain Mapp. 2017 Mar;38(3):1269-1280. doi: 10.1002/hbm.23453. Epub 2016 Oct 27.
Two powerful methods for statistical inference on MRI brain images have been proposed recently, a non-stationary voxelation-corrected cluster-size test (CST) based on random field theory and threshold-free cluster enhancement (TFCE) based on calculating the level of local support for a cluster, then using permutation testing for inference. Unlike other statistical approaches, these two methods do not rest on the assumptions of a uniform and high degree of spatial smoothness of the statistic image. Thus, they are strongly recommended for group-level fMRI analysis compared to other statistical methods. In this work, the non-stationary voxelation-corrected CST and TFCE methods for group-level analysis were evaluated for both stationary and non-stationary images under varying smoothness levels, degrees of freedom and signal to noise ratios. Our results suggest that, both methods provide adequate control for the number of voxel-wise statistical tests being performed during inference on fMRI data and they are both superior to current CSTs implemented in popular MRI data analysis software packages. However, TFCE is more sensitive and stable for group-level analysis of VBM data. Thus, the voxelation-corrected CST approach may confer some advantages by being computationally less demanding for fMRI data analysis than TFCE with permutation testing and by also being applicable for single-subject fMRI analyses, while the TFCE approach is advantageous for VBM data. Hum Brain Mapp 38:1269-1280, 2017. © 2016 Wiley Periodicals, Inc.
最近提出了两种用于对MRI脑图像进行统计推断的强大方法,一种是基于随机场理论的非平稳体素化校正聚类大小检验(CST),另一种是基于计算聚类局部支持水平然后使用置换检验进行推断的无阈值聚类增强(TFCE)。与其他统计方法不同,这两种方法并不依赖于统计图像具有均匀且高度空间平滑性的假设。因此,与其他统计方法相比,强烈推荐将它们用于组水平的功能磁共振成像(fMRI)分析。在这项工作中,针对平稳和非平稳图像,在不同的平滑度水平、自由度和信噪比下,对用于组水平分析的非平稳体素化校正CST和TFCE方法进行了评估。我们的结果表明,在对fMRI数据进行推断期间,这两种方法都能对正在执行的体素级统计检验数量提供适当控制,并且它们都优于流行的MRI数据分析软件包中实现的当前CST。然而,TFCE对于基于体素的形态学测量(VBM)数据的组水平分析更敏感且更稳定。因此,体素化校正CST方法可能具有一些优势,因为它对fMRI数据分析的计算要求低于带有置换检验的TFCE,并且还适用于单受试者fMRI分析,而TFCE方法对VBM数据具有优势。《人类大脑图谱》38:1269 - 1280,2017年。© 2016威利期刊公司。