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Do We Really Need Robust and Alternative Inference Methods for Brain MRI?

机译:我们真的需要脑MRI的强大和替代推理方法吗?

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Voxel-wise statistical inference lies at the heart of quantitative multimodal brain imaging. The general linear model with its fixed and mixed effects formulations has been the workhorse of empirical neuroscience for both structural and functional brain assessment. Yet, the validity of estimated p-values hinges upon assumptions of Gaussian distributed errors. Inference approaches based on relaxed distributional assumptions (e.g., non-parametric, robust) have been available in the statistical community for decades. Recently, there has been renewed interest in applying these methods in medical imaging. Despite theoretically attractive behavior, relaxing Gaussian assumptions comes at the practical cost of reduced power (when Gaussian assumptions are met), increased computational complexity, and limited community support. We discuss the challenges of applying robust and alternative statistical methods to medical imaging inference, characterize the conditions under which such approaches are necessary, and present a new quantitative framework to empirically justify selection of inference methods.
机译:Voxel-Wise统计推理位于定量多模脑成像的核心。具有固定和混合效应配方的一般线性模型一直是结构和功能性脑评估的经验神经科学的主视神。然而,在高斯分布式错误假设假设时估计的P值铰链的有效性。几十年来,基于松弛分布假设(例如,非参数,鲁棒)的推理方法已经在统计界中提供。最近,对应用这些方法在医学成像中进行了兴趣。尽管具有理论上有吸引力的行为,但放宽高斯假设以降低的功率(当达到高斯假设时),增加计算复杂性和有限的社区支持。我们讨论将稳健和替代统计方法应用于医学影像推断的挑战,其特征在于,这些方法是必要的条件,并提出了一种新的定量框架,以统一地证明了推理方法的选择。

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