Retrieval augmented generation for large language models in healthcare: A systematic review
Boehringer Ingelheim (Germany) · Boehringer Ingelheim (China)
Abstract
Large Language Models (LLMs) have demonstrated promising capabilities to solve complex tasks in critical sectors such as healthcare. However, LLMs are limited by their training data which is often outdated, the tendency to generate inaccurate ("hallucinated") content and a lack of transparency in the content they generate. To address these limitations, retrieval augmented generation (RAG) grounds the responses of LLMs by exposing them to external knowledge sources. However, in the healthcare domain there is currently a lack of systematic understanding of which datasets, RAG methodologies and evaluation frameworks are available. This review aims to bridge this gap by assessing RAG-based approaches employed by…
Citation impact
- FWCI
- 217.25
- Percentile
- 100%
- References
- 134
Authors
5- LMLameck Mbangula AmugongoCorresponding
Boehringer Ingelheim (Germany)
- PMPietro MascheroniCorresponding
Boehringer Ingelheim (Germany)
- SESteven E. BrooksCorresponding
Boehringer Ingelheim (China)
- SDStefan DoeringCorresponding
Boehringer Ingelheim (Germany)
- JSJan SeidelCorresponding
Boehringer Ingelheim (Germany)
Topics & keywords
- Health care
- Computer science
- Natural language processing
- Political science