Medical Text
Medical text analysis leverages natural language processing (NLP) and large language models (LLMs) to extract meaningful information from clinical notes, research papers, and other medical documents, aiming to improve healthcare efficiency and decision-making. Current research focuses on enhancing LLMs' accuracy and reliability for tasks like diagnosis prediction, risk factor identification, and patient summarization, often employing techniques like knowledge graph integration, retrieval-augmented generation, and multi-agent systems. This field is significant because it promises to automate time-consuming tasks, improve the quality of medical information, and ultimately enhance patient care and medical research.
Papers
Efficient Standardization of Clinical Notes using Large Language Models
Daniel B. Hier, Michael D. Carrithers, Thanh Son Do, Tayo Obafemi-Ajayi
CancerKG.ORG A Web-scale, Interactive, Verifiable Knowledge Graph-LLM Hybrid for Assisting with Optimal Cancer Treatment and Care
Michael Gubanov, Anna Pyayt, Aleksandra Karolak
A Review on Scientific Knowledge Extraction using Large Language Models in Biomedical Sciences
Gabriel Lino Garcia, João Renato Ribeiro Manesco, Pedro Henrique Paiola, Lucas Miranda, Maria Paola de Salvo, João Paulo Papa
Automatic detection of diseases in Spanish clinical notes combining medical language models and ontologies
Leon-Paul Schaub Torre, Pelayo Quiros, Helena Garcia Mieres
Enhancing Multi-Class Disease Classification: Neoplasms, Cardiovascular, Nervous System, and Digestive Disorders Using Advanced LLMs
Ahmed Akib Jawad Karim, Muhammad Zawad Mahmud, Samiha Islam, Aznur Azam
A Review on Generative AI Models for Synthetic Medical Text, Time Series, and Longitudinal Data
Mohammad Loni, Fatemeh Poursalim, Mehdi Asadi, Arash Gharehbaghi