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Identification of Temporal Transition of Functional States Using Recurrent Neural Networks from Functional MRI

机译:使用功能性磁共振成像的递归神经网络识别功能状态的时间转变

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Dynamic functional connectivity analysis provides valuable information for understanding brain functional activity underlying different cognitive processes. Besides sliding window based approaches, a variety of methods have been developed to automatically split the entire functional MRI scan into segments by detecting change points of functional signals to facilitate better characterization of temporally dynamic functional connectivity patterns. However, these methods are based on certain assumptions for the functional signals, such as Gaussian distribution, which are not necessarily suitable for the fMRI data. In this study, we develop a deep learning based framework for adaptively detecting temporally dynamic functional state transitions in a data-driven way without any explicit modeling assumptions, by leveraging recent advances in recurrent neural networks (RNNs) for sequence modeling. Particularly, we solve this problem in an anomaly detection framework with an assumption that the functional profile of one single time point could be reliably predicted based on its preceding profiles within a stable functional state, while large prediction errors would occur around change points of functional states. We evaluate the proposed method using both task and resting-state fMRI data obtained from the human connectome project and experimental results have demonstrated that the proposed change point detection method could effectively identify change points between different task events and split the resting-state fMRI into segments with distinct functional connectivity patterns.
机译:动态功能连接性分析提供了宝贵的信息,可用于了解不同认知过程中的大脑功能活动。除了基于滑动窗口的方法外,还开发了多种方法来通过检测功能信号的变化点来自动将整个功能MRI扫描分为多个部分,以促进更好地表征时间动态功能连接模式。但是,这些方法基于功能信号的某些假设,例如高斯分布,这些假设不一定适用于fMRI数据。在这项研究中,我们通过利用递归神经网络(RNN)的最新进展进行序列建模,开发了一种基于深度学习的框架,该框架可以以数据驱动的方式自适应地检测时间动态功能状态转变,而无需任何明确的建模假设。特别是,我们在一个异常检测框架中解决了这个问题,并假设一个单个时间点的功能配置文件可以在稳定的功能状态下根据其先前的配置文件可靠地进行预测,而在功能状态的变化点周围会出现较大的预测误差。我们使用从人类连接套项目获得的任务和静止状态fMRI数据对所提出的方法进行了评估,实验结果表明,所提出的变化点检测方法可以有效地识别不同任务事件之间的变化点,并将静止状态fMRI分为多个部分具有独特的功能连接模式。

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