RAPID: Reliable and efficient Automatic generation of submission rePortIng checklists with large language moDels.
Zeming Li1, Xufei Luo2, Zhenhua Yang3
1Department of Computer Science, Hong Kong Baptist University, Hong Kong SAR 999077, China.
View abstract on PubMed
The RAPID tool, using large language models, automates checklist generation for medical reporting guidelines, improving efficiency for authors and editors. It demonstrates high accuracy and consistency on CONSORT and CONSORT-AI datasets.
Area of Science:
- Medical Informatics
- Artificial Intelligence in Healthcare
- Scientific Publishing
Background:
- Accurate and comprehensive reporting in medical research is crucial for reproducibility and clinical decision-making.
- Existing manual checklist generation processes can be time-consuming and prone to errors.
- The integration of Artificial Intelligence (AI) offers potential solutions for enhancing reporting quality and efficiency.
Purpose of the Study:
- To evaluate the performance of RAPID, an automated reporting checklist generation tool.
- To assess the tool's effectiveness in utilizing large language models (LLMs) and retrieval augmentation generation (RAG) for medical reporting.
Main Methods:
- Developed a RAG architecture using LLMs to create the RAPID tool.
- Collected and manually annotated 91 published randomized controlled trials (RCTs) according to CONSORT and CONSORT-AI guidelines.
- Dataset included 50 RCTs without AI and 41 RCTs with AI interventions.
Main Results:
- RAPID incorporated all 37 CONSORT reporting items, achieving 92.11% average accuracy and 81.14% content consistency.
- For CONSORT-AI, RAPID included 11 AI-specific items, reaching 83.81% average accuracy and 72.51% content consistency.
- The tool demonstrated state-of-the-art performance on both datasets compared to other methods.
Conclusions:
- RAPID effectively automates checklist generation, saving time and improving efficiency for medical authors, researchers, editors, and reviewers.
- The tool exhibits strong scalability and adaptability to various medical reporting guidelines without extensive retraining.
- RAPID represents a significant advancement in AI-assisted medical reporting quality assurance.
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