Transforming evidence synthesis: A systematic review of the evolution of automated meta-analysis in the age of AI

dc.citation.volumeFirst View
dc.contributor.authorLi L
dc.contributor.authorMathrani A
dc.contributor.authorSusnjak T
dc.date.accessioned2026-02-16T02:26:26Z
dc.date.issued2026-01-09
dc.description.abstractExponential growth in scientific literature has heightened the demand for efficient evidence-based synthesis, driving the rise of the field of automated meta-analysis (AMA) powered by natural language processing and machine learning. This PRISMA systematic review introduces a structured framework for assessing the current state of AMA, based on screening 13,216 papers (2006–2024) and analyzing 61 studies across diverse domains. Findings reveal a predominant focus on automating data processing (52.5%), such as extraction and statistical modeling, while only 16.4% address advanced synthesis stages. Just one study (approximately 2%) explored preliminary full-process automation, highlighting a critical gap that limits AMA’s capacity for comprehensive synthesis. Despite recent breakthroughs in large language models and advanced AI, their integration into statistical modeling and higher-order synthesis, such as heterogeneity assessment and bias evaluation, remains underdeveloped. This has constrained AMA’s potential for fully autonomous meta-analysis (MA). From our dataset spanning medical (67.2%) and non-medical (32.8%) applications, we found that AMA has exhibited distinct implementation patterns and varying degrees of effectiveness in actually improving efficiency, scalability, and reproducibility. While automation has enhanced specific meta-analytic tasks, achieving seamless, end-to-end automation remains an open challenge. As AI systems advance in reasoning and contextual understanding, addressing these gaps is now imperative. Future efforts must focus on bridging automation across all MA stages, refining interpretability, and ensuring methodological robustness to fully realize AMA’s potential for scalable, domain-agnostic synthesis.
dc.description.confidentialfalse
dc.format.pagination1-48
dc.identifier.citationLi L, Mathrani A, Susnjak T. (2026). Transforming evidence synthesis: A systematic review of the evolution of automated meta-analysis in the age of AI. Research Synthesis Methods. First View. (pp. 1-48).
dc.identifier.doi10.1017/rsm.2025.10065
dc.identifier.eissn1759-2887
dc.identifier.elements-typejournal-article
dc.identifier.issn1759-2879
dc.identifier.urihttps://mro.massey.ac.nz/handle/10179/74146
dc.languageEnglish
dc.publisherCambridge University Press on behalf of The Society for Research Synthesis Methodology
dc.publisher.urihttps://www.cambridge.org/core/journals/research-synthesis-methods/article/transforming-evidence-synthesis-a-systematic-review-of-the-evolution-of-automated-metaanalysis-in-the-age-of-ai/2D8147C2EC26AEECE707BAB17DBD753C#article
dc.relation.isPartOfResearch Synthesis Methods
dc.rightsCC BY 4.0
dc.rights(c) 2026 The Author/s
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/
dc.subjectAI-driven meta-analysis
dc.subjectautomated evidence synthesis
dc.subjectautomated meta-analysis (AMA)
dc.subjectlarge language models for meta-analysis
dc.subjectscalable meta-analysis
dc.subjectsystematic reviews
dc.titleTransforming evidence synthesis: A systematic review of the evolution of automated meta-analysis in the age of AI
dc.typeJournal article
pubs.elements-id609380
pubs.organisational-groupOther

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