Papers by Joao H Bettencourt-Silva

2 papers
Query-driven Document-level Scientific Evidence Extraction from Biomedical Studies (2025.acl-long)

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Challenge: Systematic reviews are widely regarded as the gold standard in evidence-based medicine, heavily influencing medical decisions made by doctors, health authorities, and patients.
Approach: They propose a retrieval-augmented generation framework to tackle the unique challenges of evidence extraction by leveraging forest plots from Cochrane systematic reviews.
Outcome: The proposed framework outperforms existing methods by up to 10.3% in the F1 score on this task.
AutoForest: Automatically Generating Forest Plots from Biomedical Studies with End-to-End Evidence Extraction and Synthesis (2026.acl-demo)

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Challenge: Existing systems that generate publication-ready forest plots from biomedical papers are fragmented and time-consuming.
Approach: They propose a system that generates publication-ready forest plots directly from biomedical papers . autoforest automatically suggests ICO elements, extracts outcome data and performs statistical synthesis . authors demonstrate how the system can accelerate evidence synthesis and lower the barrier to conducting meta-analyses .
Outcome: The proposed system accelerates evidence synthesis and lowers the barrier to meta-analyses.

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