Inferring Granger Causality from Irregularly Sampled Time Series

06/04/2021
by   Song Wei, et al.
0

Continuous, automated surveillance systems that incorporate machine learning models are becoming increasingly more common in healthcare environments. These models can capture temporally dependent changes across multiple patient variables and can enhance a clinician's situational awareness by providing an early warning alarm of an impending adverse event such as sepsis. However, most commonly used methods, e.g., XGBoost, fail to provide an interpretable mechanism for understanding why a model produced a sepsis alarm at a given time. The black-box nature of many models is a severe limitation as it prevents clinicians from independently corroborating those physiologic features that have contributed to the sepsis alarm. To overcome this limitation, we propose a generalized linear model (GLM) approach to fit a Granger causal graph based on the physiology of several major sepsis-associated derangements (SADs). We adopt a recently developed stochastic monotone variational inequality-based estimator coupled with forwarding feature selection to learn the graph structure from both continuous and discrete-valued as well as regularly and irregularly sampled time series. Most importantly, we develop a non-asymptotic upper bound on the estimation error for any monotone link function in the GLM. We conduct real-data experiments and demonstrate that our proposed method can achieve comparable performance to popular and powerful prediction methods such as XGBoost while simultaneously maintaining a high level of interpretability.

READ FULL TEXT
research
01/26/2023

Causal Graph Discovery from Self and Mutually Exciting Time Series

We present a generalized linear structural causal model, coupled with a ...
research
01/18/2021

Discrete Graph Structure Learning for Forecasting Multiple Time Series

Time series forecasting is an extensively studied subject in statistics,...
research
10/06/2022

Temporal Spatial Decomposition and Fusion Network for Time Series Forecasting

Feature engineering is required to obtain better results for time series...
research
02/11/2015

Dependent Matérn Processes for Multivariate Time Series

For the challenging task of modeling multivariate time series, we propos...
research
12/06/2021

Learning Generalized Causal Structure in Time-series

The science of causality explains/determines 'cause-effect' relationship...
research
09/09/2022

Granger Causal Chain Discovery for Sepsis-Associated Derangements via Multivariate Hawkes Processes

Modern health care systems are conducting continuous, automated surveill...
research
04/28/2019

Real numbers, data science and chaos: How to fit any dataset with a single parameter

We show how any dataset of any modality (time-series, images, sound...) ...

Please sign up or login with your details

Forgot password? Click here to reset