AI Article Synopsis

  • The study explores the use of large language models (LLMs), specifically GPT-4, to relabel medical structure names in line with the American Association of Physicists in Medicine Task Group-263 standards, aiming to create a benchmark for future research in the field.
  • A digital system was developed that integrates GPT-4 to automatically rename structure names from Digital Imaging and Communications in Medicine files for prostate, head and neck, and thorax cancer patient data, achieving high accuracy rates.
  • Results showed that GPT-4 achieved over 97% accuracy across all evaluated disease sites, indicating its potential as a valuable tool for standardizing terminology in radiation oncology amid ongoing advancements in language model technology.

Article Abstract

Purpose: To introduce the concept of using large language models (LLMs) to relabel structure names in accordance with the American Association of Physicists in Medicine Task Group-263 standard and to establish a benchmark for future studies to reference.

Methods And Materials: Generative Pretrained Transformer (GPT)-4 was implemented within a Digital Imaging and Communications in Medicine server. Upon receiving a structure-set Digital Imaging and Communications in Medicine file, the server prompts GPT-4 to relabel the structure names according to the American Association of Physicists in Medicine Task Group-263 report. The results were evaluated for 3 disease sites: prostate, head and neck, and thorax. For each disease site, 150 patients were randomly selected for manually tuning the instructions prompt (in batches of 50), and 50 patients were randomly selected for evaluation. Structure names considered were those that were most likely to be relevant for studies using structure contours for many patients.

Results: The per-patient accuracy was 97.2%, 98.3%, and 97.1% for prostate, head and neck, and thorax disease sites, respectively. On a per-structure basis, the clinical target volume was relabeled correctly in 100%, 95.3%, and 92.9% of cases, respectively.

Conclusions: Given the accuracy of GPT-4 in relabeling structure names as presented in this work, LLMs are poised to become an important method for standardizing structure names in radiation oncology, especially considering the rapid advancements in LLM capabilities that are likely to continue.

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Source
http://dx.doi.org/10.1016/j.prro.2024.04.017DOI Listing

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