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Joint generalized models for multidimensional outcomes: A case study of neuroscience data from multimodalities

机译:多维结果联合广义模型:来自多模态的神经科学数据的案例研究

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This paper is motivated from the analysis of neuroscience data in a study of neural and muscular mechanisms of muscle fatigue. Multidimensional outcomes of different natures were obtained simultaneously from multiple modalities, including handgrip force, electromyography (EMG), and functional magnetic resonance imaging (fMRI). We first study individual modeling of the univariate response depending on its nature. A mixed-effects beta model and a mixed-effects simplex model are compared for modeling the force/EMG percentages. A mixed-effects negative-binomial model is proposed for modeling the fMRI counts. Then, I present a joint modeling approach to model the multidimensional outcomes together, which allows us to not only estimate the covariate effects but also to evaluate the strength of association among the multiple responses from different modalities. A simulation study is conducted to quantify the possible benefits by the new approaches in finite sample situations. Finally, the analysis of the fatigue data is illustrated with the use of the proposed methods.
机译:本文的动机是通过对神经科学数据的分析来研究肌肉疲劳的神经和肌肉机制。同时从多种模式中获得了不同性质的多维结果,包括握力,肌电图(EMG)和功能磁共振成像(fMRI)。我们首先根据其性质研究单变量响应的个体建模。比较了混合效应beta模型和混合效应单纯形模型,以对力/ EMG百分比进行建模。提出了一种混合效应负二项式模型来对功能磁共振成像计数进行建模。然后,我提出了一种联合建模方法,可以一起对多维结果进行建模,这使我们不仅可以估计协变量效应,还可以评估来自不同模式的多个响应之间的关联强度。进行了仿真研究,以量化在有限样本情况下新方法可能带来的好处。最后,通过提出的方法说明了疲劳数据的分析。

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