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Functional generalized linear models with images as predictors.

机译:以图像为预测变量的泛函线性模型。

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摘要

Functional principal component regression (FPCR) is a promising new method for regressing scalar outcomes on functional predictors. In this article, we present a theoretical justification for the use of principal components in functional regression. FPCR is then extended in two directions: from linear to the generalized linear modeling, and from univariate signal predictors to high-resolution image predictors. We show how to implement the method efficiently by adapting generalized additive model technology to the functional regression context. A technique is proposed for estimating simultaneous confidence bands for the coefficient function; in the neuroimaging setting, this yields a novel means to identify brain regions that are associated with a clinical outcome. A new application of likelihood ratio testing is described for assessing the null hypothesis of a constant coefficient function. The performance of the methodology is illustrated via simulations and real data analyses with positron emission tomography images as predictors.
机译:功能主成分回归(FPCR)是一种有前途的新方法,可用于对功能预测变量上的标量结果进行回归。在本文中,我们提出了在功能回归中使用主成分的理论依据。然后将FPCR扩展到两个方向:从线性建模到广义线性建模,以及从单变量信号预测变量到高分辨率图像预测变量。我们展示了如何通过使广义加性模型技术适应功能回归上下文来有效地实施该方法。提出了一种估计系数函数同时置信带的技术。在神经影像学背景下,这产生了一种新颖的方法来识别与临床结果相关的大脑区域。描述了一种似然比测试的新应用,用于评估常数系数函数的零假设。通过仿真和以正电子发射断层扫描图像作为预测因子的实际数据分析来说明该方法的性能。

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