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Bridging Electronic Health Records and Clinical Texts: Contrastive Learning for Enhanced Clinical Tasks

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Conventional machine learning models, particularly tree-based approaches, have demonstrated promising performance across various clinical prediction tasks using electronic health record (EHR) data. Despite their strengths, these models struggle with tasks that require deeper contextual understanding, such as predicting 30-day hospital readmission. This can be primarily due to the limited semantic information available in structured EHR data. To address this limitation, we propose a deep multimodal contrastive learning (CL) framework that aligns the latent representations of structured EHR data with unstructured discharge summary notes. It works by pulling together paired EHR and text embeddings while pushing apart unpaired ones. Fine-tuning the pretrained EHR encoder extracted from this framework significantly boosts downstream task performance, e.g., a 4.1% AUROC enhancement over XGBoost for 30-day readmission prediction. Such results demonstrate the effect of integrating domain knowledge from clinical notes into EHR-based pipelines, enabling more accurate and context-aware clinical decision support systems.

Sara Ketabi, Dhanesh Ramachandram• 2025

Related benchmarks

TaskDatasetResultRank
In-hospital mortality predictionMIMIC IV
AUROC0.792
62
In-hospital mortality predictionMIMIC-III (test)
AUC0.573
59
In-hospital mortality predictionMIMIC-III
AUPRC37.4
36
Length of Stay (LOS) predictionMIMIC-III (test)--
14
In-hospital mortalityMIMIC-III 72-hour observation horizon
AUROC0.737
10
Length of StayMIMIC-IV ICU
AUROC0.67
10
Length of StayMIMIC-III
AUROC67.3
10
Length of StayMIMIC-III 72-hour observation horizon
AUROC0.649
10
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