StayLTC: A Cost-Effective Multimodal Framework for Hospital Length of Stay Forecasting
Journal:
arXiv
Published Date:
Apr 8, 2025
Abstract
Accurate prediction of Length of Stay (LOS) in hospitals is crucial for
improving healthcare services, resource management, and cost efficiency. This
paper presents StayLTC, a multimodal deep learning framework developed to
forecast real-time hospital LOS using Liquid Time-Constant Networks (LTCs).
LTCs, with their continuous-time recurrent dynamics, are evaluated against
traditional models using structured data from Electronic Health Records (EHRs)
and clinical notes. Our evaluation, conducted on the MIMIC-III dataset,
demonstrated that LTCs significantly outperform most of the other time series
models, offering enhanced accuracy, robustness, and efficiency in resource
utilization. Additionally, LTCs demonstrate a comparable performance in LOS
prediction compared to time series large language models, while requiring
significantly less computational power and memory, underscoring their potential
to advance Natural Language Processing (NLP) tasks in healthcare.