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A robust deep neural network for denoising task-based fMRI data: An application to working memory and episodic memory

机译:一种强大的深度神经网络,用于去噪基于任务的FMRI数据:应用于工作记忆和焦虑内存的应用

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In this study, a deep neural network (DNN) is proposed to reduce the noise in task-based fMRI data without explicitly modeling noise. The DNN artificial neural network consists of one temporal convolutional layer, one long short-term memory (LSTM) layer, one time-distributed fully-connected layer, and one unconventional selection layer in sequential order. The LSTM layer takes not only the current time point but also what was perceived in a previous time point as its input to characterize the temporal autocorrelation of fMRI data. The fully-connected layer weights the output of the LSTM layer, and the output denoised fMRI time series is selected by the selection layer. Assuming that task-related neural response is limited to gray matter, the model parameters in the DNN network are optimized by maximizing the correlation difference between gray matter voxels and white matter or ventricular cerebrospinal fluid voxels. Instead of targeting a particular noise source, the proposed neural network takes advantage of the task design matrix to better extract task-related signal in fMRI data. The DNN network, along with other traditional denoising techniques, has been applied on simulated data, working memory task fMRI data acquired from a cohort of healthy subjects and episodic memory task fMRI data acquired from a small set of healthy elderly subjects. Qualitative and quantitative measurements were used to evaluate the performance of different denoising techniques. In the simulation, DNN improves fMRI activation detection and also adapts to varying hemodynamic response functions across different brain regions. DNN efficiently reduces physiological noise and generates more homogeneous task-response correlation maps in real data. (C) 2019 Elsevier B.V. All rights reserved.
机译:在本研究中,提出了一种深度神经网络(DNN),以减少基于任务的FMRI数据中的噪声而不明确地建模噪声。 DNN人工神经网络由一个时间卷积层,一个长短期存储器(LSTM)层,一个时间分布的完全连接层和顺序的一个非传统选择层组成。 LSTM层不仅需要当前时间点,而且还采用了在前一次时间点中被感知的内容,以表征FMRI数据的时间自相关。完全连接的层权重LSTM层的输出,并由选择层选择输出的去噪FMRI时间序列。假设任务相关的神经响应仅限于灰质,通过最大化灰质体素和白质或心室脑脊液塑料之间的相关差来优化DNN网络中的模型参数。该提出的神经网络而不是针对特定的噪声源,而是利用任务设计矩阵以更好地提取FMRI数据中的任务相关信号。除了其他传统的去噪技术之外,DNN网络已经应用于模拟数据,工作存储器任务FMRI数据从一小组健康的老年人获取的健康受试者和集体存储器任务FMRI数据获取。定性和定量测量用于评估不同去噪技术的性能。在模拟中,DNN改善了FMRI激活检测,并且还适应不同脑区的不同血液动力学响应函数。 DNN有效降低生理噪声,并在实际数据中产生更加均匀的任务响应相关图。 (c)2019年Elsevier B.V.保留所有权利。

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