利用TV-L1先验识别fMRI预测区域

Alexandre Gramfort, B. Thirion, G. Varoquaux
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引用次数: 88

摘要

解码,即从功能性脑图像中预测刺激相关数量,是证明不同条件下大脑活动差异的有力工具。然而,与标准的大脑映射不同,它不能保证这些信息的定位。在这里,我们将解码视为一个统计估计问题,并表明注入空间分割先验会导致恢复预测区域的无与伦比的性能。具体来说,我们使用1-惩罚来将体素设置为零,并使用TV惩罚来分割区域。我们的贡献是双重的。一方面,我们通过大量的实验表明,在大量的解码和脑映射策略中,TV+ 1导致最佳的区域恢复。另一方面,我们考虑与此估计器相关的实现问题。为了有效地解决这种联合预测分割问题,我们引入了一种基于原始对偶方法的快速优化算法。解决了脑成像中出现的不规则掩模的超参数自动设置和图像运算的快速计算问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Predictive Regions from fMRI with TV-L1 Prior
Decoding, i.e. predicting stimulus related quantities from functional brain images, is a powerful tool to demonstrate differences between brain activity across conditions. However, unlike standard brain mapping, it offers no guaranties on the localization of this information. Here, we consider decoding as a statistical estimation problem and show that injecting a spatial segmentation prior leads to unmatched performance in recovering predictive regions. Specifically, we use ℓ1-penalization to set voxels to zero and Total-Variation (TV) penalization to segment regions. Our contribution is two-fold. On the one hand, we show via extensive experiments that, amongst a large selection of decoding and brain-mapping strategies, TV+ℓ1 leads to best region recovery. On the other hand, we consider implementation issues related to this estimator. To tackle efficiently this joint prediction-segmentation problem we introduce a fast optimization algorithm based on a primal-dual approach. We also tackle automatic setting of hyper-parameters and fast computation of image operation on the irregular masks that arise in brain imaging.
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