Penn Statistics in Imaging and Visualization Center, Department of Biostatistics, Epidemiology, and Informatics, University of Pennsylvania, Philadelphia, PA 19104, USA; Center for Biomedical Image Computing and Analytics, University of Pennsylvania, Philadelphia, PA 19104, USA.
Center for Biomedical Image Computing and Analytics, University of Pennsylvania, Philadelphia, PA 19104, USA; Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.
Neuroimage. 2022 Aug 1;256:119198. doi: 10.1016/j.neuroimage.2022.119198. Epub 2022 Apr 11.
Community detection on graphs constructed from functional magnetic resonance imaging (fMRI) data has led to important insights into brain functional organization. Large studies of brain community structure often include images acquired on multiple scanners across different studies. Differences in scanner can introduce variability into the downstream results, and these differences are often referred to as scanner effects. Such effects have been previously shown to significantly impact common network metrics. In this study, we identify scanner effects in data-driven community detection results and related network metrics. We assess a commonly employed harmonization method and propose new methodology for harmonizing functional connectivity that leverage existing knowledge about network structure as well as patterns of covariance in the data. Finally, we demonstrate that our new methods reduce scanner effects in community structure and network metrics. Our results highlight scanner effects in studies of brain functional organization and provide additional tools to address these unwanted effects. These findings and methods can be incorporated into future functional connectivity studies, potentially preventing spurious findings and improving reliability of results.
基于功能磁共振成像 (fMRI) 数据构建的图的社区检测为深入了解大脑功能组织提供了重要的见解。关于大脑社区结构的大型研究通常包括在不同研究中从多个扫描仪获取的图像。扫描仪的差异会给下游结果带来可变性,这些差异通常被称为扫描仪效应。先前的研究表明,这些效应会显著影响常见的网络指标。在这项研究中,我们确定了数据驱动的社区检测结果和相关网络指标中的扫描仪效应。我们评估了一种常用的调和方法,并提出了一种新的功能连接调和方法,该方法利用了关于网络结构以及数据中协方差模式的现有知识。最后,我们证明了我们的新方法可以减少社区结构和网络指标中的扫描仪效应。我们的结果强调了大脑功能组织研究中的扫描仪效应,并提供了额外的工具来解决这些不需要的效应。这些发现和方法可以被纳入未来的功能连接研究中,有可能防止虚假发现并提高结果的可靠性。