In several crucial applications, domain knowledge is encoded by a system of ordinary differential equations (ODE), often stemming from underlying physical and biological processes. A motivating example is intensive care unit patients: the dynamics of vital physiological functions, such as the cardiovascular system with its associated variables (heart rate, cardiac contractility and output and vascular resistance) can be approximately described by a known system of ODEs. Typically, some of the ODE variables are directly observed (heart rate and blood pressure for example) while some are unobserved (cardiac contractility, output and vascular resistance), and in addition many other variables are observed but not modeled by the ODE, for example body temperature. Importantly, the unobserved ODE variables are known-unknowns: We know they exist and their functional dynamics, but cannot measure them directly, nor do we know the function tying them to all observed measurements. As is often the case in medicine, and specifically the cardiovascular system, estimating these known-unknowns is highly valuable and they serve as targets for therapeutic manipulations. Under this scenario we wish to learn the parameters of the ODE generating each observed time-series, and extrapolate the future of the ODE variables and the observations. We address this task with a variational autoencoder incorporating the known ODE function, called GOKU-net for Generative ODE modeling with Known Unknowns. We first validate our method on videos of single and double pendulums with unknown length or mass; we then apply it to a model of the cardiovascular system. We show that modeling the known-unknowns allows us to successfully discover clinically meaningful unobserved system parameters, leads to much better extrapolation, and enables learning using much smaller training sets.
翻译:在几个关键应用中,域知识由普通差异方程式系统(ODE)编码,通常来自基本的物理和生物过程。一个积极的例子是强化护理单位病人:关键生理功能的动态,如心血管系统及其相关变量(心率、心电联和输出及血管抗力)可以大致由一个已知的ODE系统描述。通常,一些ODE变量是直接观测的(例如心脏率和血压),而一些未观测的(心电联缩、输出和血管抗力),此外,许多其他变量则由ODE观察,但没有建模,例如身体温度。 重要的是,未观测的ODE变量及其相关变量(心率、心电联、输出和血管抗力)的动态可以被一个已知的ODE系统描述。通常在医学、特别是心血管模型中,估算这些已知的未知变量非常有价值,并且用作治疗操作操作的具体目标。在这个假设中,我们希望学习ODEODOD的未知参数,然后通过我们所观察到的运行的奥运变数系统,然后用我们所观察到的ODE的ODODOD系统,我们所观测到的奥运的奥运的ODODOD。我们所观测到一个已知的奥运的奥运的奥运的轨变。我们所要用一个已知的ODODODODODOD系统。我们所的奥运的奥运系统,我们所的奥运的奥运的轨系统,我们知道的OD的奥运系统要到的奥运的奥运的奥运到的奥运的ODL。