Automated Identification of Eviction Status from Electronic Health Record Notes
Zonghai Yao, Jack Tsai, Weisong Liu, David A. Levy, Emily, Druhl, Joel I Reisman, Hong Yu

TL;DR
This study presents KIRESH-Prompt, a novel NLP system that accurately detects eviction status from electronic health records, aiding in addressing housing insecurity among veterans.
Contribution
We developed KIRESH-Prompt, a new model with a novel prompt and calibration techniques that significantly outperforms existing models in eviction status detection from EHR notes.
Findings
KIRESH-Prompt achieved MCC of 0.747 in eviction period prediction.
The model outperformed BioClinicalBERT in multiple metrics.
Demonstrated generalizability on social determinants of health dataset.
Abstract
Objective: Evictions are important social and behavioral determinants of health. Evictions are associated with a cascade of negative events that can lead to unemployment, housing insecurity/homelessness, long-term poverty, and mental health problems. In this study, we developed a natural language processing system to automatically detect eviction status from electronic health record (EHR) notes. Materials and Methods: We first defined eviction status (eviction presence and eviction period) and then annotated eviction status in 5000 EHR notes from the Veterans Health Administration (VHA). We developed a novel model, KIRESH, that has shown to substantially outperform other state-of-the-art models such as fine-tuning pre-trained language models like BioBERT and BioClinicalBERT. Moreover, we designed a novel prompt to further improve the model performance by using the intrinsic connection…
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Taxonomy
TopicsHomelessness and Social Issues · Geriatric Care and Nursing Homes · Health disparities and outcomes
