Leveraging LLMs for Title and Abstract Screening for Systematic Review: A Cost-Effective Dynamic Few-Shot Learning Approach
PositiveArtificial Intelligence
- A new approach utilizing large language models (LLMs) has been developed to enhance the efficiency of title and abstract screening in systematic reviews, a crucial step in evidence-based medicine. This two-stage dynamic few-shot learning method employs a low-cost LLM for initial screening, followed by a high-performance LLM for re-evaluation of low-confidence instances, demonstrating strong generalizability across ten systematic reviews.
- This development is significant as it addresses the increasing burden of conducting systematic reviews amidst the rapid growth of research publications. By improving screening efficiency and performance, this method can potentially streamline the review process, making it more accessible and less resource-intensive for researchers and healthcare professionals.
- The advancement of LLMs in systematic reviews reflects a broader trend in AI research, where innovative methodologies are being explored to enhance the capabilities of language models. This includes addressing challenges such as multilingual reasoning and bias in evaluations, as well as improving the accuracy of health-related information detection, indicating a growing recognition of the need for reliable AI tools in various fields.
— via World Pulse Now AI Editorial System
