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Main Authors: Zhu, Yinghao, Ren, Changyu, Xie, Shiyun, Liu, Shukai, Ji, Hangyuan, Wang, Zixiang, Sun, Tao, He, Long, Li, Zhoujun, Zhu, Xi, Pan, Chengwei
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.07016
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author Zhu, Yinghao
Ren, Changyu
Xie, Shiyun
Liu, Shukai
Ji, Hangyuan
Wang, Zixiang
Sun, Tao
He, Long
Li, Zhoujun
Zhu, Xi
Pan, Chengwei
author_facet Zhu, Yinghao
Ren, Changyu
Xie, Shiyun
Liu, Shukai
Ji, Hangyuan
Wang, Zixiang
Sun, Tao
He, Long
Li, Zhoujun
Zhu, Xi
Pan, Chengwei
contents The integration of multimodal Electronic Health Records (EHR) data has significantly improved clinical predictive capabilities. Leveraging clinical notes and multivariate time-series EHR, existing models often lack the medical context relevent to clinical tasks, prompting the incorporation of external knowledge, particularly from the knowledge graph (KG). Previous approaches with KG knowledge have primarily focused on structured knowledge extraction, neglecting unstructured data modalities and semantic high dimensional medical knowledge. In response, we propose REALM, a Retrieval-Augmented Generation (RAG) driven framework to enhance multimodal EHR representations that address these limitations. Firstly, we apply Large Language Model (LLM) to encode long context clinical notes and GRU model to encode time-series EHR data. Secondly, we prompt LLM to extract task-relevant medical entities and match entities in professionally labeled external knowledge graph (PrimeKG) with corresponding medical knowledge. By matching and aligning with clinical standards, our framework eliminates hallucinations and ensures consistency. Lastly, we propose an adaptive multimodal fusion network to integrate extracted knowledge with multimodal EHR data. Our extensive experiments on MIMIC-III mortality and readmission tasks showcase the superior performance of our REALM framework over baselines, emphasizing the effectiveness of each module. REALM framework contributes to refining the use of multimodal EHR data in healthcare and bridging the gap with nuanced medical context essential for informed clinical predictions.
format Preprint
id arxiv_https___arxiv_org_abs_2402_07016
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle REALM: RAG-Driven Enhancement of Multimodal Electronic Health Records Analysis via Large Language Models
Zhu, Yinghao
Ren, Changyu
Xie, Shiyun
Liu, Shukai
Ji, Hangyuan
Wang, Zixiang
Sun, Tao
He, Long
Li, Zhoujun
Zhu, Xi
Pan, Chengwei
Artificial Intelligence
The integration of multimodal Electronic Health Records (EHR) data has significantly improved clinical predictive capabilities. Leveraging clinical notes and multivariate time-series EHR, existing models often lack the medical context relevent to clinical tasks, prompting the incorporation of external knowledge, particularly from the knowledge graph (KG). Previous approaches with KG knowledge have primarily focused on structured knowledge extraction, neglecting unstructured data modalities and semantic high dimensional medical knowledge. In response, we propose REALM, a Retrieval-Augmented Generation (RAG) driven framework to enhance multimodal EHR representations that address these limitations. Firstly, we apply Large Language Model (LLM) to encode long context clinical notes and GRU model to encode time-series EHR data. Secondly, we prompt LLM to extract task-relevant medical entities and match entities in professionally labeled external knowledge graph (PrimeKG) with corresponding medical knowledge. By matching and aligning with clinical standards, our framework eliminates hallucinations and ensures consistency. Lastly, we propose an adaptive multimodal fusion network to integrate extracted knowledge with multimodal EHR data. Our extensive experiments on MIMIC-III mortality and readmission tasks showcase the superior performance of our REALM framework over baselines, emphasizing the effectiveness of each module. REALM framework contributes to refining the use of multimodal EHR data in healthcare and bridging the gap with nuanced medical context essential for informed clinical predictions.
title REALM: RAG-Driven Enhancement of Multimodal Electronic Health Records Analysis via Large Language Models
topic Artificial Intelligence
url https://arxiv.org/abs/2402.07016