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Measuring heterogeneity in normative models as the effective number of deviation patterns

机译:测量规范模型中的异质性作为有效数量的偏差模式

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Normative modeling is an increasingly popular method for characterizing the ways in which clinical cohorts deviate from a reference population, with respect to one or more biological features. In this paper, we extend the normative modeling framework with an approach for measuring the amount of heterogeneity in a cohort. This heterogeneity measure is based on the Representational Rényi Heterogeneity method, which generalizes diversity measurement paradigms used across multiple scientific disciplines. We propose that heterogeneity in the normative modeling setting can be measured as the effective number of deviation patterns ; that is, the effective number of coherent patterns by which a sample of data differ from a distribution of normative variation. We show that lower effective number of deviation patterns is associated with the presence of systematic differences from a (non-degenerate) normative distribution. This finding is shown to be consistent across (A) application of a Gaussian process model to synthetic and real-world neuroimaging data, and (B) application of a variational autoencoder to well-understood database of handwritten images.
机译:规范建模是一种越来越流行的方法,用于表征临床队列的临床群体偏离参考人群的方式,相对于一种或多种生物学特征。在本文中,我们将规范建模框架扩展了一种测量队列中异质性量的方法。这种异质性度量是基于代表性的Rényi异质性方法,其概括了多个科学学科的分集测量范式。我们提出了规范建模设定中的异质性可以作为有效数量的偏差模式来测量;也就是说,数据样本与规范变异的分布不同的相干模式的有效数量。我们表明,较低有效数量的偏差模式与来自(非退化)规范分布的系统差异的存在相关。该发现显示在(a)的应用中,将高斯过程模型应用于合成和现实世界的神经影像数据,(b)将变形式自动码器应用于良好的手写图像数据库。

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