ImmunoFOMO: Are Language Models missing what oncologists see?
By: Aman Sinha , Bogdan-Valentin Popescu , Xavier Coubez and more
Potential Business Impact:
Helps doctors find cancer treatments in research papers.
Language models (LMs) capabilities have grown with a fast pace over the past decade leading researchers in various disciplines, such as biomedical research, to increasingly explore the utility of LMs in their day-to-day applications. Domain specific language models have already been in use for biomedical natural language processing (NLP) applications. Recently however, the interest has grown towards medical language models and their understanding capabilities. In this paper, we investigate the medical conceptual grounding of various language models against expert clinicians for identification of hallmarks of immunotherapy in breast cancer abstracts. Our results show that pre-trained language models have potential to outperform large language models in identifying very specific (low-level) concepts.
Similar Papers
Towards Scalable and Cross-Lingual Specialist Language Models for Oncology
Computation and Language
Helps doctors understand cancer patient data better.
Advances in Large Language Models for Medicine
Artificial Intelligence
Helps doctors understand patient health better.
Small Language Models Can Use Nuanced Reasoning For Health Science Research Classification: A Microbial-Oncogenesis Case Study
Computational Engineering, Finance, and Science
Helps AI quickly sort medical papers.