Improving brain decoding through constrained and parametrized temporal smoothing

Loizos Markides, D. Gillies
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Abstract

Decoding mental states from task-related fMRI data has recently been the focus of much research. Nevertheless, high levels of acquisition and physiological noise still makes inter-subject decoding a difficult and quite unstable process. Since all of the existing decoding approaches are applied on a volume-by-volume basis, it would be sensible to ensure that sudden signal changes reflect a true change of cognitive state rather than noise artefacts. Correction of the temporal signal can be achieved through temporal smoothing, which over the years has always been a debatable fMRI preprocessing step among the neuroscience community. In this paper, we present two methods for improving decoding accuracy by correcting the temporal dynamics of a number of functional regions, using parametrized temporal smoothing. We test our methods on a real fMRI dataset and we show that when temporal smoothing is applied separately in multiple scales and is both properly constrained and conditioned, it can remove sudden artefact-driven peaks and drops from the fMRI signal and thus improve the prediction accuracy of different tasks. Moreover, since our methods are performed independently from the decoding operations, they can be used in conjunction with any feature selection and classification algorithm.
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通过约束和参数化时间平滑改进大脑解码
从与任务相关的功能磁共振成像数据中解码心理状态最近成为许多研究的焦点。然而,高水平的习得和生理噪声仍然使主体间解码成为一个困难且相当不稳定的过程。由于所有现有的解码方法都是在逐个体积的基础上应用的,因此确保突然的信号变化反映了认知状态的真实变化而不是噪声伪影是明智的。时间信号的校正可以通过时间平滑来实现,多年来,这一直是神经科学界有争议的fMRI预处理步骤。在本文中,我们提出了两种方法,通过使用参数化时间平滑来纠正一些功能区的时间动态,从而提高解码精度。我们在一个真实的fMRI数据集上测试了我们的方法,我们表明,当时间平滑在多个尺度上单独应用并且适当地约束和条件化时,它可以从fMRI信号中去除突然的伪影驱动的峰值和下降,从而提高不同任务的预测精度。此外,由于我们的方法是独立于解码操作执行的,因此它们可以与任何特征选择和分类算法结合使用。
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