Prediction of 30-day hospital readmission with clinical notes and EHR information
Journal:
arXiv
Published Date:
Mar 29, 2025
Abstract
High hospital readmission rates are associated with significant costs and
health risks for patients. Therefore, it is critical to develop predictive
models that can support clinicians to determine whether or not a patient will
return to the hospital in a relatively short period of time (e.g, 30-days).
Nowadays, it is possible to collect both structured (electronic health records
- EHR) and unstructured information (clinical notes) about a patient hospital
event, all potentially containing relevant information for a predictive model.
However, their integration is challenging. In this work we explore the
combination of clinical notes and EHRs to predict 30-day hospital readmissions.
We address the representation of the various types of information available in
the EHR data, as well as exploring LLMs to characterize the clinical notes. We
collect both information sources as the nodes of a graph neural network (GNN).
Our model achieves an AUROC of 0.72 and a balanced accuracy of 66.7\%,
highlighting the importance of combining the multimodal information.