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Wavelet-based estimation of a semiparametric generalized linear model of fMRI time-series

机译:fMRI时间序列的半参数广义线性模型的基于小波的估计

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Addresses the problem of detecting significant changes in fMRI time series that are correlated to a stimulus time course. This paper provides a new approach to estimate the parameters of a semiparametric generalized linear model of the fMRI time series. The fMRI signal is described as the sum of two effects: a smooth trend and the response to the stimulus. The trend belongs to a subspace spanned by large scale wavelets. The wavelet transform provides an approximation to the Karhunen-Loeve transform for the long memory noise and we have developed a scale space regression that permits one to carry out the regression in the wavelet domain while omitting the scales that are contaminated by the trend. In order to demonstrate that our approach outperforms the state-of-the art detrending technique, we evaluated our method against a smoothing spline approach. Experiments with simulated data and experimental fMRI data, demonstrate that our approach can infer and remove drifts that cannot be adequately represented with splines.
机译:解决了在fMRI时间序列中检测到与刺激时间过程相关的重大变化的问题。本文提供了一种新的方法来估计fMRI时间序列的半参数广义线性模型的参数。 fMRI信号被描述为两种效应的总和:平滑趋势和对刺激的响应。趋势属于由大型小波跨越的子空间。小波变换为长记忆噪声提供了与Karhunen-Loeve变换的近似值,并且我们开发了一种尺度空间回归,该尺度空间回归允许人们在小波域中进行回归,同时省略被趋势污染的尺度。为了证明我们的方法优于最新的去趋势技术,我们针对平滑样条方法评估了我们的方法。使用模拟数据和实验性fMRI数据进行的实验表明,我们的方法可以推断和消除不能用样条曲线充分表示的漂移。

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