Bridging Data Gaps of Rare Conditions in ICU: A Multi-Disease Adaptation Approach for Clinical Prediction
Journal:
arXiv
Published Date:
Jul 8, 2025
Abstract
Artificial Intelligence has revolutionised critical care for common
conditions. Yet, rare conditions in the intensive care unit (ICU), including
recognised rare diseases and low-prevalence conditions in the ICU, remain
underserved due to data scarcity and intra-condition heterogeneity. To bridge
such gaps, we developed KnowRare, a domain adaptation-based deep learning
framework for predicting clinical outcomes for rare conditions in the ICU.
KnowRare mitigates data scarcity by initially learning condition-agnostic
representations from diverse electronic health records through self-supervised
pre-training. It addresses intra-condition heterogeneity by selectively
adapting knowledge from clinically similar conditions with a developed
condition knowledge graph. Evaluated on two ICU datasets across five clinical
prediction tasks (90-day mortality, 30-day readmission, ICU mortality,
remaining length of stay, and phenotyping), KnowRare consistently outperformed
existing state-of-the-art models. Additionally, KnowRare demonstrated superior
predictive performance compared to established ICU scoring systems, including
APACHE IV and IV-a. Case studies further demonstrated KnowRare's flexibility in
adapting its parameters to accommodate dataset-specific and task-specific
characteristics, its generalisation to common conditions under limited data
scenarios, and its rationality in selecting source conditions. These findings
highlight KnowRare's potential as a robust and practical solution for
supporting clinical decision-making and improving care for rare conditions in
the ICU.