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ICA analysis of fMRI with real-time constraints: an evaluation of fast detection performance as function of algorithms parameters and a priori conditions

机译:具有实时约束的fMRI的ICA分析:根据算法参数和先验条件对快速检测性能的评估

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摘要

Independent component analysis (ICA) techniques offer a data-driven possibility to analyze brain functional MRI data in real-time. Typical ICA methods used in functional magnetic resonance imaging (fMRI), however, have been until now mostly developed and optimized for the off-line case in which all data is available. Real-time experiments are ill-posed for ICA in that several constraints are added: limited data, limited analysis time and dynamic changes in the data and computational speed. Previous studies have shown that particular choices of ICA parameters can be used to monitor real-time fMRI (rt-fMRI) brain activation, but it is unknown how other choices would perform. In this rt-fMRI simulation study we investigate and compare the performance of 14 different publicly available ICA algorithms systematically sampling different growing window lengths (WLs), model order (MO) as well as a priori conditions (none, spatial or temporal). Performance is evaluated by computing the spatial and temporal correlation to a target component as well as computation time. Four algorithms are identified as best performing (constrained ICA, fastICA, amuse, and evd), with their corresponding parameter choices. Both spatial and temporal priors are found to provide equal or improved performances in similarity to the target compared with their off-line counterpart, with greatly reduced computation costs. This study suggests parameter choices that can be further investigated in a sliding-window approach for a rt-fMRI experiment.
机译:独立成分分析(ICA)技术为实时分析大脑功能MRI数据提供了数据驱动的可能性。但是,迄今为止,功能磁共振成像(fMRI)中使用的典型ICA方法大部分都是针对离线情况而开发和优化的,在离线情况下所有数据均可用。实时实验不适用于ICA,因为它增加了几个约束:有限的数据,有限的分析时间以及数据和计算速度的动态变化。先前的研究表明,ICA参数的特定选择可用于监视实时功能磁共振成像(rt-fMRI)的大脑激活,但尚不清楚其他选择将如何执行。在此rt-fMRI仿真研究中,我们调查并比较了14种不同的公开ICA算法的性能,这些算法系统地采样了不同的生长窗口长度(WL),模型阶数(MO)以及先验条件(无,空或时)。通过计算与目标组件的空间和时间相关性以及计算时间来评估性能。四种算法被确定为性能最佳(约束ICA,fastICA,amuse和evd),并带有相应的参数选择。与离线目标相比,空间和时间先验都可以提供与目标相似或相同的性能,并且大大降低了计算成本。这项研究提出了可以在rt-fMRI实验的滑动窗口方法中进一步研究的参数选择。

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