首页> 外文期刊>Quality Control, Transactions >Sparse Representation-Based Denoising for High-Resolution Brain Activation and Functional Connectivity Modeling: A Task fMRI Study
【24h】

Sparse Representation-Based Denoising for High-Resolution Brain Activation and Functional Connectivity Modeling: A Task fMRI Study

机译:基于稀疏表示的高分辨率脑激活和功能连接建模的去噪:任务FMRI研究

获取原文
获取原文并翻译 | 示例
           

摘要

In the field of neuroimaging and cognitive neuroscience, functional Magnetic Resonance Imaging (fMRI) has been widely used to study the functional localization and connectivity of the brain. However, the inherently low signal-to-noise ratio (SNR) of the fMRI signals greatly limits the accuracy and resolution of current studies. In addressing this fundamental challenge in fMRI analytics, in this work we develop and implement a denoising method for task fMRI (tfMRI) data in order to delineate the high-resolution spatial pattern of the brain activation and functional connectivity via dictionary learning and sparse coding (DLSC). In addition to the traditional unsupervised dictionary learning model which has shown success in image denoising, we further utilize the prior knowledge of task paradigm to learn a dictionary consisting of both data-driven and model-driven terms for a more stable sparse representation of the data. The proposed method is applied to preprocess the motor tfMRI dataset from Human Connectome Project (HCP) for the purpose of brain activation detection and functional connectivity estimation. Comparison between the results from original and denoised fMRI data shows that the disruptive brain activation and functional connectivity patterns can be recovered, and the prominence of such patterns is improved through denoising. The proposed method is then compared with the temporal non-local means (tNLM)-based denoising method and shows consistently superior performance in various experimental settings. The promising results show that the proposed DLSC-based fMRI denoising method can effectively reduce the noise level of the fMRI signals and increase the interpretability of the inferred results, therefore constituting a crucial part of the preprocessing pipeline and provide the foundation for further high-resolution functional analysis.
机译:在神经影像和认知神经科学领域,功能磁共振成像(FMRI)已被广泛用于研究大脑的功能定位和连接性。然而,FMRI信号的固有低信噪比(SNR)大大限制了当前研究的准确性和分辨率。在解决FMRI分析中的这一基本挑战中,在这项工作中,我们开发并实施任务FMRI(TFMRI)数据的去噪方法,以便通过字典学习和稀疏编码描绘大脑激活和功能连接的高分辨率空间模式( DLSC)。除了传统的无人监督字典学习模型,它在图像去噪中取得成功之外,我们还利用了任务范例的先验知识来了解由数据驱动和模型驱动的术语组成的字典,以便更稳定的数据稀疏表示。该提出的方法用于预处理来自人类连接项目(HCP)的电动机TFMRI数据集以脑激活检测和功能连接估计。原始和去噪FMRI数据的结果之间的比较表明,可以回收破坏性脑激活和功能性连接模式,通过去噪提高了这种模式的突出。然后将所提出的方法与时间非局部方式(TNLM)进行比较,并在各种实验设置中显示出始终如一的优异性能。有希望的结果表明,所提出的基于DLSC的FMRI去噪方法可以有效地降低FMRI信号的噪声水平,并提高推断结果的可解释性,从而构成预处理管道的关键部分,并为进一步的高分辨率提供基础功能分析。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号