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Building a RAG system for tissue engineering: insights from domain specific text and sepsis management

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dc.contributor.author Iapăscurtă, Victor
dc.date.accessioned 2025-05-05T11:33:31Z
dc.date.available 2025-05-05T11:33:31Z
dc.date.issued 2025
dc.identifier.citation IAPĂSCURTĂ, Victor. Building a rag system for tissue engineering: insights from domain specific text and sepsis management. In: Cells and tissues transplantation. Actualities and perspectives. The 3rd edition : The Materials of the National Scientific Conference with international participation dedicated to the 80th anniversary of the founding of Nicolae Testemitanu State University of Medicine and Pharmacy. Chisinau, March 21-22, 2025: [abstracts]. Chişinău: CEP Medicina, 2025, p. 43. ISBN 978-9975-82-413-2. en_US
dc.identifier.isbn 978-9975-82-413-2
dc.identifier.uri http://repository.usmf.md/handle/20.500.12710/30459
dc.description.abstract Introduction: Tissue engineering (TI) is a complex field that requires access to specific domain knowledge. Large Language Models (LLMs) are powerful but limited by their training data. Retrieval Augmented Generation (RAG) addresses this limitation by integrating LLMs with external knowledge sources. This work explores the design and implementation of a RAG system for TI, inspired by our successful applications in specific domains, including sepsis management. Such a system can greatly enhance the efficiency and accuracy of knowledge retrieval and generation in TI. Materials and Methods: The RAG system for TI can be developed using a large language model augmented by a vector database of TI literature. The knowledge base is to be curated from research papers, textbooks, and other domain-specific texts. These texts can be processed to create embeddings stored in a vector database for efficient retrieval. When a user submits a query, the LLM generates an initial response and retrieves relevant information from the database to refine its output, ensuring accuracy and relevance. The RAG-based sepsis management system that can serve as an example that can be adapted to TI is available (after sending a request to victor.iapascurta@usmf.md) at: https://huggingface.co/spaces/LlmRAGbasedAPPs/LLM_MA_RAG_Sepsis. Results: Our previous implementations of RAG in different domains have shown that integrating external knowledge significantly enhances the accuracy and relevance of LLM-generated responses. For TI, we anticipate this approach will similarly improve the system's ability to handle complex, domain-specific queries. Conclusions: The development of a RAG system for tissue engineering represents a significant step forward in leveraging AI technologies for domain-specific applications. By combining the generative capabilities of LLMs with the precision of a curated knowledge base, we can create a tool that not only understands the language of TI but also possesses the depth of knowledge required to make meaningful contributions to the field. This work outlines the design, implementation, and expected benefits of such a system, drawing from our successful experiences in other domains. en_US
dc.language.iso en en_US
dc.publisher CEP Medicina en_US
dc.relation.ispartof Cells and tissues transplantation. Actualities and perspectives. The 3-rd edition. Chisinau, March 21-22, 2025 en_US
dc.subject Tissue engineering en_US
dc.subject RAG en_US
dc.subject LLMs en_US
dc.subject Knowledge base en_US
dc.subject Vector database en_US
dc.subject Domain-specific knowledge en_US
dc.subject AI in biomedical engineering en_US
dc.title Building a RAG system for tissue engineering: insights from domain specific text and sepsis management en_US
dc.type Other en_US


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