Enhancing Biomedical Question Answering with Large Language Models
-
Published:2024-08-19
Issue:8
Volume:15
Page:494
-
ISSN:2078-2489
-
Container-title:Information
-
language:en
-
Short-container-title:Information
Author:
Yang Hua1ORCID, Li Shilong12ORCID, Gonçalves Teresa34ORCID
Affiliation:
1. School of Artificial Intelligence, Zhongyuan University of Technology, Zhengzhou 450007, China 2. School of Computer Science, Zhongyuan University of Technology, Zhengzhou 450007, China 3. Department of Computer Science, University of Évora, 7000-671 Évora, Portugal 4. VISTA Lab, Algoritmi Center, University of Évora, 7000-671 Évora, Portugal
Abstract
In the field of Information Retrieval, biomedical question answering is a specialized task that focuses on answering questions related to medical and healthcare domains. The goal is to provide accurate and relevant answers to the posed queries related to medical conditions, treatments, procedures, medications, and other healthcare-related topics. Well-designed models should efficiently retrieve relevant passages. Early retrieval models can quickly retrieve passages but often with low precision. In contrast, recently developed Large Language Models can retrieve documents with high precision but at a slower pace. To tackle this issue, we propose a two-stage retrieval approach that initially utilizes BM25 for a preliminary search to identify potential candidate documents; subsequently, a Large Language Model is fine-tuned to evaluate the relevance of query–document pairs. Experimental results indicate that our approach achieves comparative performances on the BioASQ and the TREC-COVID datasets.
Funder
Key Scientific Research Project of Higher Education Institutions in Henan Province
Reference69 articles.
1. Qiu, M., Li, F.L., Wang, S., Gao, X., Chen, Y., Zhao, W., Chen, H., Huang, J., and Chu, W. (August, January 30). Alime chat: A sequence to sequence and rerank based chatbot engine. Proceedings of the 55th Annual Meeting of the Association for Computational Linguistics (Volume 2: Short Papers), Vancouver, BC, Canada. 2. Yan, Z., Duan, N., Bao, J., Chen, P., Zhou, M., Li, Z., and Zhou, J. (2016, January 7–12). Docchat: An information retrieval approach for chatbot engines using unstructured documents. Proceedings of the 54th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers), Berlin, Germany. 3. Amato, F., Marrone, S., Moscato, V., Piantadosi, G., Picariello, A., and Sansone, C. (2017, January 14). Chatbots Meet eHealth: Automatizing Healthcare. Proceedings of the WAIAH@ AI* IA, Bari, Italy. 4. Ram, A., Prasad, R., Khatri, C., Venkatesh, A., Gabriel, R., Liu, Q., Nunn, J., Hedayatnia, B., Cheng, M., and Nagar, A. (2018). Conversational ai: The science behind the alexa prize. arXiv. 5. Kadam, A.D., Joshi, S.D., Shinde, S.V., and Medhane, S.P. (2015, January 24–25). Notice of Removal: Question Answering Search engine short review and road-map to future QA Search Engine. Proceedings of the 2015 International Conference on Electrical, Electronics, Signals, Communication and Optimization (EESCO), Visakhapatnam, India.
|
|