Saved in:
Bibliographic Details
Main Authors: Zhuang, Yipeng, Guo, Yifeng, Li, Yuewen, Wu, Yuheng, Yu, Philip Leung-Ho, Song, Tingting, Wang, Zhiyong, Zhou, Kunzhong, Wang, Weifang, Zhuang, Li
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.16739
Tags: Add Tag
No Tags, Be the first to tag this record!
Table of Contents:
  • Lung cancer patients frequently experience breakthrough pain episodes, with up to 91% requiring timely intervention. To enable proactive pain management, we propose a hybrid machine learning and large language model pipeline that predicts pain episodes within 48 and 72 hours of hospitalization using both structured and unstructured electronic health record data. A retrospective cohort of 266 inpatients was analyzed, with features including demographics, tumor stage, vital signs, and WHO-tiered analgesic use. The machine learning module captured temporal medication trends, while the large language model interpreted ambiguous dosing records and free-text clinical notes. Integrating these modalities improved sensitivity and interpretability. Our framework achieved an accuracy of 0.876 (48h) and 0.917 (72h), with improvements in sensitivity of 10.6% and 10.7%, respectively, attributable to large language model augmentation. This hybrid approach offers a clinically interpretable and scalable tool for early pain episode forecasting, with potential to enhance treatment precision and optimize resource allocation in oncology care.