Brain Information Communication Research Laboratory Group, Advanced Telecommunications Research Institutes International, Kyoto, Japan.
Department of Neuropsychiatry, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan.
PLoS Biol. 2019 Apr 18;17(4):e3000042. doi: 10.1371/journal.pbio.3000042. eCollection 2019 Apr.
When collecting large amounts of neuroimaging data associated with psychiatric disorders, images must be acquired from multiple sites because of the limited capacity of a single site. However, site differences represent a barrier when acquiring multisite neuroimaging data. We utilized a traveling-subject dataset in conjunction with a multisite, multidisorder dataset to demonstrate that site differences are composed of biological sampling bias and engineering measurement bias. The effects on resting-state functional MRI connectivity based on pairwise correlations because of both bias types were greater than or equal to psychiatric disorder differences. Furthermore, our findings indicated that each site can sample only from a subpopulation of participants. This result suggests that it is essential to collect large amounts of neuroimaging data from as many sites as possible to appropriately estimate the distribution of the grand population. Finally, we developed a novel harmonization method that removed only the measurement bias by using a traveling-subject dataset and achieved the reduction of the measurement bias by 29% and improvement of the signal-to-noise ratios by 40%. Our results provide fundamental knowledge regarding site effects, which is important for future research using multisite, multidisorder resting-state functional MRI data.
当收集与精神疾病相关的大量神经影像学数据时,由于单个站点的容量有限,必须从多个站点获取图像。但是,站点差异在获取多站点神经影像学数据时是一个障碍。我们利用旅行受试者数据集和多站点、多疾病数据集来证明站点差异由生物采样偏差和工程测量偏差组成。由于这两种偏差类型,基于成对相关性的静息态功能磁共振连接的影响大于或等于精神疾病差异。此外,我们的研究结果表明,每个站点只能从参与者的子集中进行采样。这一结果表明,从尽可能多的站点收集大量神经影像学数据以适当估计总体分布至关重要。最后,我们开发了一种新的协调方法,仅使用旅行受试者数据集去除测量偏差,将测量偏差降低了 29%,并将信噪比提高了 40%。我们的研究结果为使用多站点、多疾病静息态功能磁共振成像数据进行未来研究提供了关于站点效应的基本知识。