학술논문

Applications of Large Language Models in Pathology
Document Type
Academic Journal
Author
Source
Bioengineering. April, 2024, Vol. 11 Issue 4
Subject
Neural network
Artificial intelligence
Artificial intelligence
Natural language interfaces
Computational linguistics
Language processing
Teaching -- Equipment and supplies
Neural networks
Language
English
ISSN
2306-5354
Abstract
Large language models (LLMs) are transformer-based neural networks that can provide human-like responses to questions and instructions. LLMs can generate educational material, summarize text, extract structured data from free text, create reports, write programs, and potentially assist in case sign-out. LLMs combined with vision models can assist in interpreting histopathology images. LLMs have immense potential in transforming pathology practice and education, but these models are not infallible, so any artificial intelligence generated content must be verified with reputable sources. Caution must be exercised on how these models are integrated into clinical practice, as these models can produce hallucinations and incorrect results, and an over-reliance on artificial intelligence may lead to de-skilling and automation bias. This review paper provides a brief history of LLMs and highlights several use cases for LLMs in the field of pathology.
Author(s): Jerome Cheng 1. Introduction LLMs are based on the transformer neural network architecture introduced in the 2017 paper “Attention Is All You Need” written by Vaswani et al. [1] [...]