Gonzalez-Castillo Javier, Panwar Puja, Buchanan Laura C, Caballero-Gaudes Cesar, Handwerker Daniel A, Jangraw David C, Zachariou Valentinos, Inati Souheil, Roopchansingh Vinai, Derbyshire John A, Bandettini Peter A
Section on Functional Imaging Methods, Laboratory of Brain and Cognition, National Institute of Mental Health, National Institutes of Health, Bethesda, MD, United States.
Section on Functional Imaging Methods, Laboratory of Brain and Cognition, National Institute of Mental Health, National Institutes of Health, Bethesda, MD, United States.
Neuroimage. 2016 Nov 1;141:452-468. doi: 10.1016/j.neuroimage.2016.07.049. Epub 2016 Jul 27.
Multi-echo fMRI, particularly the multi-echo independent component analysis (ME-ICA) algorithm, has previously proven useful for increasing the sensitivity and reducing false positives for functional MRI (fMRI) based resting state connectivity studies. Less is known about its efficacy for task-based fMRI, especially at the single subject level. This work, which focuses exclusively on individual subject results, compares ME-ICA to single-echo fMRI and a voxel-wise T2(⁎) weighted combination of multi-echo data for task-based fMRI under the following scenarios: cardiac-gated block designs, constant repetition time (TR) block designs, and constant TR rapid event-related designs. Performance is evaluated primarily in terms of sensitivity (i.e., activation extent, activation magnitude, percent detected trials and effect size estimates) using five different tasks expected to evoke neuronal activity in a distributed set of regions. The ME-ICA algorithm significantly outperformed all other evaluated processing alternatives in all scenarios. Largest improvements were observed for the cardiac-gated dataset, where ME-ICA was able to reliably detect and remove non-neural T1 signal fluctuations caused by non-constant repetition times. Although ME-ICA also outperformed the other options in terms of percent detection of individual trials for rapid event-related experiments, only 46% of all events were detected after ME-ICA; suggesting additional improvements in sensitivity are required to reliably detect individual short event occurrences. We conclude the manuscript with a detailed evaluation of ME-ICA outcomes and a discussion of how the ME-ICA algorithm could be further improved. Overall, our results suggest that ME-ICA constitutes a versatile, powerful approach for advanced denoising of task-based fMRI, not just resting-state data.
多回波功能磁共振成像(Multi-echo fMRI),尤其是多回波独立成分分析(ME-ICA)算法,先前已被证明有助于提高基于功能磁共振成像(fMRI)的静息态连接性研究的灵敏度并减少假阳性。关于其在基于任务的fMRI中的功效,尤其是在单受试者水平上,人们了解较少。这项工作专门关注个体受试者的结果,在以下几种情况下,将ME-ICA与单回波fMRI以及多回波数据的体素级T2(⁎)加权组合用于基于任务的fMRI进行比较:心脏门控块设计、恒定重复时间(TR)块设计和恒定TR快速事件相关设计。主要根据灵敏度(即激活范围、激活幅度、检测到的试验百分比和效应大小估计)来评估性能,使用五种不同的任务,预计这些任务会在一组分布的区域中诱发神经元活动。在所有情况下,ME-ICA算法均显著优于所有其他评估的处理方法。在心脏门控数据集中观察到最大的改进,其中ME-ICA能够可靠地检测并去除由非恒定重复时间引起的非神经T1信号波动。尽管在快速事件相关实验中,就单个试验的检测百分比而言,ME-ICA也优于其他选项,但在ME-ICA之后仅检测到所有事件的46%;这表明需要进一步提高灵敏度,以可靠地检测单个短事件的发生。我们在论文结尾对ME-ICA的结果进行了详细评估,并讨论了如何进一步改进ME-ICA算法。总体而言,我们的结果表明,ME-ICA构成了一种通用、强大的方法,不仅可用于静息态数据,还可用于对基于任务的fMRI进行高级去噪。