Department of Psychiatry, University of Pennsylvania, Philadelphia, USA.
Department of Radiology, University of Pennsylvania, Philadelphia, USA.
Neuroimage. 2018 Jun;173:275-286. doi: 10.1016/j.neuroimage.2018.02.041. Epub 2018 Feb 24.
Multiple studies have shown that data quality is a critical confound in the construction of brain networks derived from functional MRI. This problem is particularly relevant for studies of human brain development where important variables (such as participant age) are correlated with data quality. Nevertheless, the impact of head motion on estimates of structural connectivity derived from diffusion tractography methods remains poorly characterized. Here, we evaluated the impact of in-scanner head motion on structural connectivity using a sample of 949 participants (ages 8-23 years old) who passed a rigorous quality assessment protocol for diffusion magnetic resonance imaging (dMRI) acquired as part of the Philadelphia Neurodevelopmental Cohort. Structural brain networks were constructed for each participant using both deterministic and probabilistic tractography. We hypothesized that subtle variation in head motion would systematically bias estimates of structural connectivity and confound developmental inference, as observed in previous studies of functional connectivity. Even following quality assurance and retrospective correction for head motion, eddy currents, and field distortions, in-scanner head motion significantly impacted the strength of structural connectivity in a consistency- and length-dependent manner. Specifically, increased head motion was associated with reduced estimates of structural connectivity for network edges with high inter-subject consistency, which included both short- and long-range connections. In contrast, motion inflated estimates of structural connectivity for low-consistency network edges that were primarily shorter-range. Finally, we demonstrate that age-related differences in head motion can both inflate and obscure developmental inferences on structural connectivity. Taken together, these data delineate the systematic impact of head motion on structural connectivity, and provide a critical context for identifying motion-related confounds in studies of structural brain network development.
多项研究表明,数据质量是从功能磁共振成像构建脑网络的关键混淆因素。这个问题在研究人类大脑发育时尤为相关,因为重要的变量(如参与者年龄)与数据质量相关。然而,头部运动对从扩散轨迹方法得出的结构连通性估计的影响仍未得到很好的描述。在这里,我们使用 949 名参与者(8-23 岁)的样本评估了扫描内头部运动对结构连通性的影响,这些参与者通过了扩散磁共振成像(dMRI)的严格质量评估协议,这些 dMRI 是费城神经发育队列的一部分。使用确定性和概率轨迹追踪法为每个参与者构建了结构脑网络。我们假设,正如先前对功能连接性的研究中观察到的那样,头部运动的细微变化将系统地影响结构连通性的估计,并混淆发育推断。即使在进行质量保证和对头部运动、涡流和场扭曲进行回顾性校正后,扫描内头部运动仍以一致性和长度依赖性的方式显著影响结构连通性的强度。具体而言,增加的头部运动与具有高组内一致性的网络边缘的结构连通性估计值降低有关,这些网络边缘包括短程和长程连接。相比之下,运动增加了低一致性网络边缘的结构连通性估计值,这些网络边缘主要是短程的。最后,我们证明头部运动的年龄相关差异既可以夸大也可以掩盖结构连通性的发育推断。总之,这些数据描绘了头部运动对结构连通性的系统影响,并为识别结构脑网络发育研究中的运动相关混淆因素提供了关键背景。