On the Use of Large Language Models for Qualitative Synthesis
By: Sebastián Pizard , Ramiro Moreira , Federico Galiano and more
Potential Business Impact:
Helps doctors organize medical research faster.
Large language models (LLMs) show promise for supporting systematic reviews (SR), even complex tasks such as qualitative synthesis (QS). However, applying them to a stage that is unevenly reported and variably conducted carries important risks: misuse can amplify existing weaknesses and erode confidence in the SR findings. To examine the challenges of using LLMs for QS, we conducted a collaborative autoethnography involving two trials. We evaluated each trial for methodological rigor and practical usefulness, and interpreted the results through a technical lens informed by how LLMs are built and their current limitations.
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