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Mechanistic machine learning: how data assimilation leverages physiologic knowledge using Bayesian inference to forecast the future, infer the present, and phenotype

机译:机械机械学习:数据同化如何利用贝叶斯推理利用生理知识来预测未来,推断出现和表型

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摘要

We introduce data assimilation as a computational method that uses machine learning to combine data with human knowledge in the form of mechanistic models in order to forecast future states, to impute missing data from the past by smoothing, and to infer measurable and unmeasurable quantities that represent clinically and scientifically important phenotypes. We demonstrate the advantages it affords in the context of type 2 diabetes by showing how data assimilation can be used to forecast future glucose values, to impute previously missing glucose values, and to infer type 2 diabetes phenotypes. At the heart of data assimilation is the mechanistic model, here an endocrine model.
机译:我们将数据同化介绍作为一种计算方法,该方法使用机器学习以机械模型的形式将数据与人类知识相结合,以便预测未来状态,通过平滑,并推断出可测量和不可测量的数量来赋予过去的缺失数据。 临床和科学上重要的表型。 我们证明了在2型糖尿病的背景下提供的优势通过展示如何使用数据同化来预测未来的葡萄糖值,以赋予以前缺少葡萄糖值,并推断出2型糖尿病表型。 在数据同化的核心,是机械模型,这里是一个内分泌模型。

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