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The Use of a priori Information in ICA-Based Techniques for Real-Time fMRI: An Evaluation of Static/Dynamic and Spatial/Temporal Characteristics

机译:在基于ICA的实时功能性MRI技术中使用先验信息:静态/动态和空间/时间特性的评估

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摘要

Real-time brain functional MRI (rt-fMRI) allows in vivo non-invasive monitoring of neural networks. The use of multivariate data-driven analysis methods such as independent component analysis (ICA) offers an attractive trade-off between data interpretability and information extraction, and can be used during both task-based and rest experiments. The purpose of this study was to assess the effectiveness of different ICA-based procedures to monitor in real-time a target IC defined from a functional localizer which also used ICA. Four novel methods were implemented to monitor ongoing brain activity in a sliding window approach. The methods differed in the ways in which a priori information, derived from ICA algorithms, was used to monitor a target independent component (IC). We implemented four different algorithms, all based on ICA. One Back-projection method used ICA to derive static spatial information from the functional localizer, off-line, which was then back-projected dynamically during the real-time acquisition. The other three methods used real-time ICA algorithms that dynamically exploited temporal, spatial, or spatial-temporal priors during the real-time acquisition. The methods were evaluated by simulating a rt-fMRI experiment that used real fMRI data. The performance of each method was characterized by the spatial and/or temporal correlation with the target IC component monitored, computation time, and intrinsic stochastic variability of the algorithms. In this study the Back-projection method, which could monitor more than one IC of interest, outperformed the other methods. These results are consistent with a functional task that gives stable target ICs over time. The dynamic adaptation possibilities offered by the other ICA methods proposed may offer better performance than the Back-projection in conditions where the functional activation shows higher spatial and/or temporal variability.
机译:实时脑功能MRI(rt-fMRI)允许对神经网络进行体内无创监测。诸如独立成分分析(ICA)之类的多元数据驱动分析方法的使用在数据可解释性和信息提取之间提供了有吸引力的折衷方案,并且可以在基于任务的实验和休息实验中使用。这项研究的目的是评估基于ICA的各种程序的实时性,该程序可实时监视从也使用ICA的功能定位器定义的目标IC。实施了四种新颖的方法以滑动窗口方式监视正在进行的大脑活动。这些方法的不同之处在于使用从ICA算法获得的先验信息来监视目标独立组件(IC)的方式。我们实现了四种基于ICA的不同算法。一种反投影方法使用ICA从离线的功能定位器中获取静态空间信息,然后在实时采集过程中对其进行动态反投影。其他三种方法使用实时ICA算法,该算法在实时采集过程中动态利用时间,空间或时空先验。通过模拟使用真实fMRI数据的rt-fMRI实验评估了这些方法。每种方法的性能均以与所监视的目标IC组件的空间和/或时间相关性,计算时间以及算法的固有随机变异性为特征。在这项研究中,可以监控多个目标IC的反投影方法优于其他方法。这些结果与功能任务一致,该任务可以随着时间的推移提供稳定的目标IC。在功能激活表现出更高的空间和/或时间可变性的情况下,由其他建议的ICA方法提供的动态适应可能性可以提供比反投影更好的性能。

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