The Mind Research Network Albuquerque NM USA.
Departments of Neurology and Psychiatry University of New Mexico Albuquerque NM USA.
Brain Behav. 2017 Sep 15;7(10):e00809. doi: 10.1002/brb3.809. eCollection 2017 Oct.
Dynamic functional network connectivity (dFNC), derived from magnetic resonance imaging (fMRI), is an important technique in the search for biomarkers of brain diseases such as mild traumatic brain injury (mTBI). At the individual level, mTBI can affect cognitive functions and change personality traits. Previous research aimed at detecting significant changes in the dFNC of mTBI subjects. However, one of the main concerns in dFNC analysis is the appropriateness of methods used to correct for subject movement. In this work, we focus on the effect that rearranging movement correction at different points of the processing pipeline has in dFNC analysis utilizing mTBI data.
The sample cohort consists of 50 mTBI patients and matched healthy controls. A 5-min resting-state run was completed by each participant. Data were preprocessed using different pipeline alternatives varying with the place where motion-related variance was removed. In all pipelines, group-independent component analysis (gICA) followed by dFNC analysis was performed. Additional tests were performed varying the detection of temporal spikes, the number of gICA components, and the sliding-window size. A linear support vector machine was used to test how each pipeline affects classification accuracy.
Results suggest that correction for motion variance before spatial smoothing, but leaving correction for spiky time courses after gICA produced the best mean classification performance. The number of gICA components and the sliding-window size were also important in determining classification performance. Variance in spikes correction affected some pipelines more than others with fewer significant differences than the other parameters.
The sequence of preprocessing steps motion regression, smoothing, gICA, and despiking produced data most suitable for differentiating mTBI from healthy subjects. However, the selection of optimal preprocessing parameters strongly affected the final results.
动态功能网络连接(dFNC)是一种从磁共振成像(fMRI)中提取的重要技术,用于寻找轻度创伤性脑损伤(mTBI)等脑部疾病的生物标志物。在个体水平上,mTBI 可能会影响认知功能并改变个性特征。之前的研究旨在检测 mTBI 患者的 dFNC 显著变化。然而,dFNC 分析中的一个主要关注点是用于校正受试者运动的方法是否恰当。在这项工作中,我们专注于在利用 mTBI 数据进行 dFNC 分析时,在处理管道的不同点重新排列运动校正对 dFNC 分析的影响。
样本队列由 50 名 mTBI 患者和匹配的健康对照组组成。每位参与者都完成了 5 分钟的静息状态运行。数据使用不同的管道替代方案进行预处理,这些替代方案因去除与运动相关的方差的位置而异。在所有管道中,都进行了群组独立成分分析(gICA),然后进行 dFNC 分析。通过改变检测时间尖峰、gICA 成分的数量和滑动窗口的大小,进行了其他测试。使用线性支持向量机来测试每个管道如何影响分类准确性。
结果表明,在进行空间平滑之前校正运动方差,但在 gICA 之后保留校正尖峰时间序列,可以产生最佳的平均分类性能。gICA 成分的数量和滑动窗口的大小也是确定分类性能的重要因素。尖峰校正的方差对某些管道的影响大于其他管道,并且与其他参数相比,差异较小。
运动回归、平滑、gICA 和去尖峰处理的预处理步骤序列产生了最适合区分 mTBI 和健康受试者的数据。然而,最优预处理参数的选择强烈影响最终结果。