LUME-DBN: Full Bayesian Learning of DBNs from Incomplete data in Intensive Care
Federico Pirola, Fabio Stella, Marco Grzegorczyk

TL;DR
This paper introduces a Bayesian Gibbs sampling method for learning dynamic Bayesian networks from incomplete intensive care data, improving uncertainty quantification and data imputation accuracy.
Contribution
It presents a novel full Bayesian approach for DBNs that explicitly models missing data as unknown parameters, enhancing clinical decision support.
Findings
Superior reconstruction accuracy over MICE in ICU data
Better convergence properties in simulated and real datasets
Provides more reliable uncertainty estimates for clinical use
Abstract
Dynamic Bayesian networks (DBNs) are increasingly used in healthcare due to their ability to model complex temporal relationships in patient data while maintaining interpretability, an essential feature for clinical decision-making. However, existing approaches to handling missing data in longitudinal clinical datasets are largely derived from static Bayesian networks literature, failing to properly account for the temporal nature of the data. This gap limits the ability to quantify uncertainty over time, which is particularly critical in settings such as intensive care, where understanding the temporal dynamics is fundamental for model trustworthiness and applicability across diverse patient groups. Despite the potential of DBNs, a full Bayesian framework that integrates missing data handling remains underdeveloped. In this work, we propose a novel Gibbs sampling-based method for…
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