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Inferring Multidimensional Rates of Aging from Cross-Sectional Data

机译:从截面数据推断出老化的多维速率

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Modeling how individuals evolve over time is a fundamental problem in the natural and social sciences. However, existing datasets are often cross-sectional with each individual observed only once, making it impossible to apply traditional time-series methods. Motivated by the study of human aging, we present an interpretable latent-variable model that learns temporal dynamics from cross-sectional data. Our model represents each individual’s features over time as a nonlinear function of a low-dimensional, linearly-evolving latent state. We prove that when this nonlinear function is constrained to be order-isomorphic, the model family is identifiable solely from cross-sectional data provided the distribution of time-independent variation is known. On the UK Biobank human health dataset, our model reconstructs the observed data while learning interpretable rates of aging associated with diseases, mortality, and aging risk factors.
机译:建模个人如何随着时间的推移而发展是自然和社会科学的基本问题。然而,现有数据集通常是横截面,每个人只观察一次,使得不可能应用传统的时间序列方法。通过研究人类衰老的研究,我们提出了一种可解释的潜在变量模型,可以从横截面数据中学习时间动态。我们的模型代表每个单独的功能随着时间的推移,作为低维,线性发展潜在状态的非线性函数。我们证明,当该非线性函数被约束为订单同构时,可以仅从横截面数据识别模型系列,所以提供了相互关系的分布是已知的。在英国Biobank人类健康数据集上,我们的模型重建了观察到的数据,同时学习了与疾病,死亡率和老化风险因素相关的可解释的衰老率。

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