首页> 外文会议>Society of Photo-Optical Instrumentation Engineers Conference on Medical Imaging : Physiology and Function--Methods, Systems, and Applications >Analysis of Brain fMRI Time-Series using HRF Knowledge-Based Correlation Classifier on Unsupervised Self-Organizing Neural Network Map
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Analysis of Brain fMRI Time-Series using HRF Knowledge-Based Correlation Classifier on Unsupervised Self-Organizing Neural Network Map

机译:基于HRF知识的相关分类器对无监督自组织神经网络地图的脑FMRI时间序列分析

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Brain imaging and particular functional MRI (fMRI), which acquires brain volumes in time, reveals new understanding of the functional/structural relation in neuroscience. During fMRI imaging physiological state changes occur in the brain regions activated from the task paradigm which the subject performs in the scanner. These state changes can be depicted in the small veins of the activated region due to the blood oxygen level dependent (BOLD) effect. For each brain voxel in the fMRI experiment one accumulates a time series vector which has to be analyzed for sir lilarity to the original task paradigm vector and its characteristic hemodynamic response function (HRF). Various analysis methods have been discussed for fMRI analysis, model-based statistical or unsupervised data-driven techniques. The purpose of this paper is to introduce a new method which combines two different approaches. We use an unsupervised self-organizing map (SOM) neural network to reduce the time series vector space by non-linear pattern recognition into a 2D table of representative time series wave-forms. Using a-priori knowledge of the HRF, either derived from a theoretical waveform model or estimated from a brain region of interest (ROI), one can use correlation analysis between the time series patterns of the SOM table and the HRF to depict regions of activation specific to the HRF. An optional second SOM training with a reduce number of neurons of the best-matching time series to the HRF classification refines the second neural network pattern table. The learned time series pattern of each neuron and the corresponding brain voxels are superimposed onto the subject's brain image for visual investigation.
机译:脑成像和特定功能MRI(FMRI)及时获取脑体积,揭示了对神经科学功能/结构关系的新了解。在FMRI成像期间,从主题在扫描仪中执行的任务范例激活的大脑区域发生了生理状态的变化。由于血氧水平依赖性(粗体)效应,这些状态变化可以在活化区域的小静脉中描绘。对于FMRI实验中的每个脑体素,累积时间序列矢量必须分析为原始任务范式载体及其特征性血液动力响应函数(HRF)的激烈的激烈性。已经讨论了各种分析方法,用于FMRI分析,基于模型的统计或无监督的数据驱动技术。本文的目的是引入一种结合两种不同方法的新方法。我们使用无监督的自组织地图(SOM)神经网络来减少通过非线性模式识别到代表性时间序列波形的2D表中的时间序列向量空间。利用HRF的先验知识,无论是从理论波形模型导出的,要么从感兴趣的大脑区域(ROI)估计,可以在SOM表和HRF的时间序列模式之间使用相关分析来描绘激活区域特定于HRF。通过对HRF分类的最佳匹配时间序列的最佳匹配时间序列的神经元数量的可选第二个SOM培训改进了第二个神经网络模式表。每个神经元和相应的脑体素的学习时间序列模式叠加在受试者的脑图像上以进行视觉调查。

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