Multimodal Deep Learning for Early Prediction of Patient Deterioration in the ICU: Integrating Time-Series EHR Data with Clinical Notes
Binesh Sadanandan

TL;DR
This study introduces a multimodal deep learning model that combines structured time-series data and unstructured clinical notes to predict ICU patient deterioration within 24 hours, demonstrating improved accuracy over existing methods.
Contribution
The paper presents a novel multimodal deep learning framework integrating clinical notes with time-series data, along with a systematic review of ICU deterioration prediction models.
Findings
Multimodal model achieves AUROC of 0.7857 and AUPRC of 0.1908.
Clinical notes improve prediction performance significantly.
Deep learning models outperform classical machine learning baselines.
Abstract
Early identification of patients at risk for clinical deterioration in the intensive care unit (ICU) remains a critical challenge. Delayed recognition of impending adverse events, including mortality, vasopressor initiation, and mechanical ventilation, contributes to preventable morbidity and mortality. We present a multimodal deep learning approach that combines structured time-series data (vital signs and laboratory values) with unstructured clinical notes to predict patient deterioration within 24 hours. Using the MIMIC-IV database, we constructed a cohort of 74,822 ICU stays and generated 5.7 million hourly prediction samples. Our architecture employs a bidirectional LSTM encoder for temporal patterns in physiologic data and ClinicalBERT embeddings for clinical notes, fused through a cross-modal attention mechanism. We also present a systematic review of existing approaches to ICU…
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Taxonomy
TopicsSepsis Diagnosis and Treatment · Machine Learning in Healthcare · Healthcare Technology and Patient Monitoring
