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Bibliographic Details
Main Authors: Cisneros, Cesar Felipe Martínez, Bautista, Jesús Ulises Quiroz, Solano, Claudia Anahí Guzmán, Rivera, Bogdan Kaleb García, Pacheco, Iván García, Martínez, Yalbi Itzel Balderas, Adebayoc, Kolawole John, Fernández, Ignacio Arroyo
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.02604
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Table of Contents:
  • The integration of Large Language Models (LLMs) into biomedical research offers new opportunities for domainspecific reasoning and knowledge representation. However, their performance depends heavily on the semantic quality of training data. In oncology, where precision and interpretability are vital, scalable methods for constructing structured knowledge bases are essential for effective fine-tuning. This study presents a pipeline for developing a lung cancer knowledge base using Open Information Extraction (OpenIE). The process includes: (1) identifying medical concepts with the MeSH thesaurus; (2) filtering open-access PubMed literature with permissive licenses (CC0); (3) extracting (subject, relation, object) triplets using OpenIE method; and (4) enriching triplet sets with Named Entity Recognition (NER) to ensure biomedical relevance. The resulting triplet sets provide a domain-specific, large-scale, and noise-aware resource for fine-tuning LLMs. We evaluated T5 models finetuned on this dataset through Supervised Semantic Fine-Tuning. Comparative assessments with ROUGE and BERTScore show significantly improved performance and semantic coherence, demonstrating the potential of OpenIE-derived resources as scalable, low-cost solutions for enhancing biomedical NLP.