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Model-based estimation of dynamic functional connectivity in resting-state functional magnetic resonance imaging

机译:基于模型的静态功能磁共振成像中动态功能连通性的估计

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Abstract Recently, we have witnessed an increase in scientific interest in understanding the dynamic nature of brain networks by evaluating dynamic functional connectivity (FC) using functional magnetic resonance imaging (fMRI). In this work, we introduce two multivariate volatility models, standardized dynamic conditional correlation, and standardized exponentially weighted moving average, both of which are built upon the framework of dynamic conditional correlation and exponentially weighted moving average models, respectively. In these two models, we use standardized residuals with the goal of determining whether the use of standardized residuals reduces the mean square rate error. Moreover, in traditional simulation studies, time series were considered with zero conditional expectation and static conditional variance which do not capture the nature of the real data. This is because of hemodynamic response function in the brain and dynamic functional connectivity of each brain region with itself during the experiment time, respectively. That is why, next, some new simulation studies are introduced which are more similar to blood-oxygen-level-dependent time series of brain regions. Then, methods’ proficiency is analyzed using previous and new simulation studies. Results show that, in both former and latter simulations, the new methods work better. Finally, the best model is utilized to model FC in an Iranian resting-state fMRI data.
机译:摘要最近,我们目睹了通过使用功能磁共振成像(fMRI)评估动态功能连通性(FC)来了解大脑网络的动态性质的科学兴趣的增长。在这项工作中,我们介绍了两个多元波动率模型:标准化的动态条件相关性和标准化的指数加权移动平均值,这两种模型分别基于动态条件相关性和指数加权移动平均值模型的框架。在这两个模型中,我们使用标准化残差,目的是确定使用标准化残差是否会降低均方差。此外,在传统的模拟研究中,时间序列被认为具有零条件期望和静态条件方差,而这些时间序列并没有捕获真实数据的本质。这是因为在实验期间,大脑中的血液动力学响应功能以及每个大脑区域与其自身的动态功能连接。这就是为什么接下来引入一些新的模拟研究的原因,这些研究与血氧水平依赖的大脑区域的时间序列更相似。然后,使用先前和新的模拟研究来分析方法的熟练程度。结果表明,在以前和以后的仿真中,新方法都可以更好地工作。最后,利用最佳模型对伊朗静止状态fMRI数据中的FC进行建模。

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