Generative ODE Modeling with Known Unknowns

03/24/2020
by   Ori Linial, et al.
5

In several crucial applications, domain knowledge is encoded by a system of ordinary differential equations (ODE). A motivating example is intensive care unit patients: The dynamics of some vital physiological variables such as heart rate, blood pressure and arterial compliance can be approximately described by a known system of ODEs. Typically, some of the ODE variables are directly observed while some are unobserved, 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. Estimating these known-unknowns is often highly valuable to physicians. Under this scenario we wish to: (i) learn the static parameters of the ODE generating each observed time-series (ii) infer the dynamic sequence of all ODE variables including the known-unknowns, and (iii) extrapolate the future of the ODE variables and the observations of the time-series. We address this task with a variational autoencoder incorporating the known ODE function, called GOKU-net for Generative ODE modeling with Known Unknowns. We test our method on videos of pendulums with unknown length, and a model of the cardiovascular system.

READ FULL TEXT
research
12/12/2012

Generalized Instrumental Variables

This paper concerns the assessment of direct causal effects from a combi...
research
09/28/2022

Identifying Differential Equations to predict Blood Glucose using Sparse Identification of Nonlinear Systems

Describing dynamic medical systems using machine learning is a challengi...
research
06/03/2023

Identifying Subgroups of ICU Patients Using End-to-End Multivariate Time-Series Clustering Algorithm Based on Real-World Vital Signs Data

This study employed the MIMIC-IV database as data source to investigate ...
research
06/28/2023

Forecasting of the development of a partially-observed dynamical time series with the aid of time-invariance and linearity

A dynamical system produces a dependent multivariate sequence called dyn...
research
08/19/2020

Augmenting Neural Differential Equations to Model Unknown Dynamical Systems with Incomplete State Information

Neural Ordinary Differential Equations replace the right-hand side of a ...
research
10/06/2019

Estimating Unknown Cycles in Geophysical data

Examples of cyclic (periodic) behavior in geophysical data abound. In ma...
research
11/14/2019

Long-range Prediction of Vital Signs Using Generative Boosting via LSTM Networks

Vital signs including heart rate, respiratory rate, body temperature and...

Please sign up or login with your details

Forgot password? Click here to reset