Framework that uses LLMs to generate study triplets and triplet loss to learn embeddings for clustering observational studies prior to meta-analysis, applied to 58 studies on preterm birth cognitive outcomes.
A re -evaluation of random-effects meta-analysis
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Proposes and compares CG-C, 2MA-C and MIX-C random-effects approaches for clustered flexible calibration plots, with simulation and case-study evidence favoring 2MA-C (splines) for overall curves and MIX-C for cluster-specific curves.
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Learning study similarity to investigate heterogeneity in meta-analysis using LLMs and triplet loss
Framework that uses LLMs to generate study triplets and triplet loss to learn embeddings for clustering observational studies prior to meta-analysis, applied to 58 studies on preterm birth cognitive outcomes.