Augmenting large language models to predict social determinants of mental health in opioid use disorder using patient clinical notes.
Identifying social determinants of mental health (SDOMH) in patients with opioid use disorder (OUD) is crucial for estimating risk and enabling early intervention. Extracting such data from unstructured clinical notes is challenging due to annotation complexity and requires advanced natural language processing (NLP) techniques. We propose the Human-in-the-Loop Large Language Model Interaction for Annotation (HLLIA) framework, combined with a Multilevel Hierarchical Clinical-Longformer Embedding (MHCLE) algorithm, to annotate and predict SDOMH [...]
Author(s): Pagare, Madhavi, Bheesetti, Deva Sai Kumar, Essien-Aleksi, Inyene, Alam, Mohammad Arif Ul
DOI: 10.1093/jamiaopen/ooaf142