五十度灰,物质:使用贝叶斯先验来提高全脑体素和连接推理的能力

Krzysztof J. Gorgolewski, P. Bazin, Haakon G. Engen, D. Margulies
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引用次数: 2

摘要

为了提高神经成像分析的能力,通常的做法是将全脑搜索空间减少到假设驱动的兴趣区域(roi)的子集。而不是严格的约束分析,我们建议结合先验知识使用概率roi (proi)使用层次贝叶斯框架。每个体素“感兴趣”或“不感兴趣”的先验概率用于执行混合模型的加权拟合。我们通过各种proi的模拟演示了这种方法的实用性,以及使用基于NeuroSynth数据库搜索术语“情感”的先验对情感处理任务的fMRI结果进行阈值处理的适用性。pROI校正的模块化结构有助于在贝叶斯混合建模中包含其他创新,并为在不忽略先验知识的情况下平衡探索性分析提供基础。
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Fifty Shades of Gray, Matter: Using Bayesian Priors to Improve the Power of Whole-Brain Voxel- and Connexelwise Inferences
To increase the power of neuroimaging analyses, it is common practice to reduce the whole-brain search space to subset of hypothesis-driven regions-of-interest (ROIs). Rather than strictly constrain analyses, we propose to incorporate prior knowledge using probabilistic ROIs (pROIs) using a hierarchical Bayesian framework. Each voxel prior probability of being "of-interest" or "of-non-interest" is used to perform a weighted fit of a mixture model. We demonstrate the utility of this approach through simulations with various pROIs, and the applicability using a prior based on the NeuroSynth database search term "emotion" for thresholding the fMRI results of an emotion processing task. The modular structure of pROI correction facilitates the inclusion of other innovations in Bayesian mixture modeling, and offers a foundation for balancing between exploratory analyses without neglecting prior knowledge.
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