Graduate Program in Biological and Biomedical Engineering, McGill University, Duff Medical Building, 3775 rue University, Montreal H3A 2B4, Canada.
Department of Bioengineering, McGill University, 3480 University Street, Montreal H3A 0E9, Canada.
Gigascience. 2024 Jan 2;13. doi: 10.1093/gigascience/giae009.
Dynamic functional connectivity (dFC) has become an important measure for understanding brain function and as a potential biomarker. However, various methodologies have been developed for assessing dFC, and it is unclear how the choice of method affects the results. In this work, we aimed to study the results variability of commonly used dFC methods.
We implemented 7 dFC assessment methods in Python and used them to analyze the functional magnetic resonance imaging data of 395 subjects from the Human Connectome Project. We measured the similarity of dFC results yielded by different methods using several metrics to quantify overall, temporal, spatial, and intersubject similarity.
Our results showed a range of weak to strong similarity between the results of different methods, indicating considerable overall variability. Somewhat surprisingly, the observed variability in dFC estimates was found to be comparable to the expected functional connectivity variation over time, emphasizing the impact of methodological choices on the final results. Our findings revealed 3 distinct groups of methods with significant intergroup variability, each exhibiting distinct assumptions and advantages.
Overall, our findings shed light on the impact of dFC assessment analytical flexibility and highlight the need for multianalysis approaches and careful method selection to capture the full range of dFC variation. They also emphasize the importance of distinguishing neural-driven dFC variations from physiological confounds and developing validation frameworks under a known ground truth. To facilitate such investigations, we provide an open-source Python toolbox, PydFC, which facilitates multianalysis dFC assessment, with the goal of enhancing the reliability and interpretability of dFC studies.
动态功能连接(dFC)已成为理解大脑功能的重要手段,也是一种潜在的生物标志物。然而,已经开发出了各种评估 dFC 的方法,目前尚不清楚方法的选择如何影响结果。在这项工作中,我们旨在研究常用 dFC 方法的结果可变性。
我们在 Python 中实现了 7 种 dFC 评估方法,并使用它们分析了来自人类连接组计划的 395 名受试者的功能磁共振成像数据。我们使用几种指标来测量不同方法产生的 dFC 结果的相似性,以量化整体、时间、空间和受试者间的相似性。
我们的结果表明,不同方法的结果之间存在从弱到强的一系列相似性,表明整体可变性相当大。有些出人意料的是,dFC 估计的观察到的可变性被发现与预期的随时间变化的功能连接变化相当,这强调了方法选择对最终结果的影响。我们的发现揭示了 3 组具有显著组间可变性的方法,每组都具有独特的假设和优势。
总的来说,我们的研究结果揭示了 dFC 评估分析灵活性的影响,并强调了需要采用多分析方法和仔细选择方法来捕捉 dFC 变化的全部范围。它们还强调了区分神经驱动的 dFC 变化与生理干扰以及在已知真实情况的基础下开发验证框架的重要性。为了促进这些研究,我们提供了一个开源的 Python 工具包 PydFC,它促进了多分析 dFC 评估,旨在提高 dFC 研究的可靠性和可解释性。