LGCLMEApr 23

Learning Dynamic Representations and Policies from Multimodal Clinical Time-Series with Informative Missingness

arXiv:2604.2123528.4h-index: 3
Predicted impact top 75% in LG · last 90 daysOriginality Incremental advance
AI Analysis

For clinical AI researchers, this work addresses the underexplored problem of using observation patterns in multimodal clinical time series to improve treatment policy learning and outcome prediction.

The paper proposes a patient representation learning framework for multimodal clinical time series that explicitly leverages informative missingness from structured measurements and clinical notes. On ICU sepsis cohorts, it improves offline treatment policy learning (FQE 0.679 vs 0.528 for clinician behavior) and adverse outcome prediction (AUROC 0.886 for post-72-hour mortality).

Multimodal clinical records contain structured measurements and clinical notes recorded over time, offering rich temporal information about the evolution of patient health. Yet these observations are sparse, and whether they are recorded depends on the patient's latent condition. Observation patterns also differ across modalities, as structured measurements and clinical notes arise under distinct recording processes. While prior work has developed methods that accommodate missingness in clinical time series, how to extract and use the information carried by the observation process itself remains underexplored. We therefore propose a patient representation learning framework for multimodal clinical time series that explicitly leverages informative missingness. The framework combines (1) a multimodal encoder that captures signals from structured and textual data together with their observation patterns, (2) a Bayesian filtering module that updates a latent patient state over time from observed multimodal signals, and (3) downstream modules for offline treatment policy learning and patient outcome prediction based on the learned patient state. We evaluate the framework on ICU sepsis cohorts from MIMIC-III, MIMIC-IV, and eICU. It improves both offline treatment policy learning and adverse outcome prediction, achieving FQE 0.679 versus 0.528 for clinician behavior and AUROC 0.886 for post-72-hour mortality prediction on MIMIC-III.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes