Analysis and classification of fMR time series using map blind deconvolution and fourier wavelet regularized deconvolution

I. Akyol, E. Adli, D. Gökçay, A. Erkmen
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引用次数: 0

Abstract

The procedure to estimate brain activity based on fMR signals is a process based on many assumptions. Some of the methods such as GLM (General Linear Model) and ICA(Independent Component Analysis) used for this purpose contain several restrictions. In GLM, it is assumed that each active voxel responds similarly and linearly towards a given stimulus. In ICA, an unsurmountable number of independent time series are produced, one of which is assumed to reflect the activity pattern. In this study, we used minimal number of assumptions to estimate an underlying HRF (hemodynamic response function) from a given fMR time series, and then used the estimated HRFs to classify voxels as active or passive. We have investigated results from simulations and real fMR experiments.
用映射盲反卷积和傅立叶小波正则反卷积分析和分类fMR时间序列
基于fMR信号估计大脑活动的过程是一个基于许多假设的过程。用于此目的的一些方法,如GLM(一般线性模型)和ICA(独立成分分析)包含一些限制。在GLM中,假设每个活动体素对给定刺激的响应相似且线性。在ICA中,产生不可逾越的独立时间序列,并假设其中一个序列反映活动模式。在这项研究中,我们使用了最少的假设来从给定的fMR时间序列中估计潜在的HRF(血流动力学反应函数),然后使用估计的HRF将体素分类为主动或被动。我们研究了模拟和真实fMR实验的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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