Bauer Lena G, Hirsch Fabian, Jones Corey, Hollander Matthew, Grohs Philipp, Anand Amit, Plant Claudia, Wohlschläger Afra
Research Network Data Science, University of Vienna, Vienna, Austria.
Departement of Neuroradiology, Klinikum Rechts der Isar, Technical University of Munich, Munich, Germany.
Front Comput Neurosci. 2022 Mar 3;16:729556. doi: 10.3389/fncom.2022.729556. eCollection 2022.
Organized patterns of system-wide neural activity adapt fluently within the brain to adjust behavioral performance to environmental demands. In major depressive disorder (MD), markedly different co-activation patterns across the brain emerge from a rather similar structural substrate. Despite the application of advanced methods to describe the functional architecture, e.g., between intrinsic brain networks (IBNs), the underlying mechanisms mediating these differences remain elusive. Here we propose a novel complementary approach for quantifying the functional relations between IBNs based on the Kuramoto model. We directly estimate the Kuramoto coupling parameters () from IBN time courses derived from empirical fMRI data in 24 MD patients and 24 healthy controls. We find a large pattern with a significant number of s depending on the disease severity score Hamilton D, as assessed by permutation testing. We successfully reproduced the dependency in an independent test data set of 44 MD patients and 37 healthy controls. Comparing the results to functional connectivity from partial correlations (), to phase synchrony () as well as to first order auto-regressive measures () between the same IBNs did not show similar correlations. In subsequent validation experiments with artificial data we find that a ground truth of parametric dependencies on artificial regressors can be recovered. The results indicate that the calculation of s can be a useful addition to standard methods of quantifying the brain's functional architecture.
全脑范围内有组织的神经活动模式在大脑中能够灵活地适应,以根据环境需求调整行为表现。在重度抑郁症(MD)中,大脑中截然不同的共激活模式源自相当相似的结构基础。尽管应用了先进方法来描述功能架构,例如内在脑网络(IBNs)之间的架构,但介导这些差异的潜在机制仍然难以捉摸。在此,我们提出一种基于Kuramoto模型的新颖互补方法,用于量化IBNs之间的功能关系。我们直接从24名MD患者和24名健康对照的经验性功能磁共振成像(fMRI)数据得出的IBN时间历程中估计Kuramoto耦合参数()。通过置换检验评估,我们发现了一个与疾病严重程度评分汉密尔顿抑郁量表(Hamilton D)相关的大量耦合参数的模式。我们在一个由44名MD患者和37名健康对照组成的独立测试数据集中成功重现了这种相关性。将结果与相同IBNs之间的偏相关功能连接性()、相位同步性()以及一阶自回归测量值()进行比较,未显示出类似的相关性。在随后使用人工数据的验证实验中,我们发现可以恢复人工回归变量参数相关性的基本事实。结果表明,耦合参数的计算可以作为量化大脑功能架构标准方法的有益补充。