ArXiv TLDR

Contrast-Space Projection for Network Meta-Analysis: An Exact and Invariant Study-Based Decomposition of Direct and Indirect Contributions

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2604.21994

Chong Wang, Yanqi Zhang, Zhezhen Jin, Annette O'Connor

stat.MEstat.APstat.COstat.ML

TLDR

This paper introduces a contrast-space projection method for Network Meta-Analysis, providing an exact, invariant decomposition of direct and indirect evidence contributions.

Key contributions

  • Develops a contrast-space projection formulation for Network Meta-Analysis (NMA).
  • Provides an exact, invariant study-based decomposition of direct and indirect evidence.
  • Enables the first forest-plot representation that precisely reconstructs NMA estimates.
  • Introduces novel projection-based diagnostic and graphical tools for NMA.

Why it matters

The paper addresses a critical reproducibility gap in Network Meta-Analysis by offering an exact, invariant decomposition of evidence. This framework enhances transparency and interpretability of NMA results. It provides robust tools for understanding and reporting treatment effect contributions.

Original Abstract

Network meta-analysis (NMA) combines direct and indirect comparisons across a connected treatment network to estimate relative treatment effects. However, there is a lack of exact contribution decompositions that reproduce NMA estimates, particularly in the presence of multi-arm trials that induce within-study correlations. We address this reproducibility gap by developing a contrast-space projection formulation of NMA. Working in the space of all estimable pairwise treatment contrasts, we express the NMA estimator as an explicit linear mapping of the observed contrasts onto the consistency-constrained contrast space induced by orthogonal projection. Building on this representation, we introduce a rigorous study-based definition of direct and indirect evidence through a canonical within-study reduction that removes algebraic redundancy and yields a unique, invariant decomposition. This leads to exact covariance-aware decompositions of the NMA estimator into study-level direct and indirect contributions, with indirect evidence further resolved into path-level components. The resulting weights are directly analogous to inverse-variance weights in pairwise meta-analysis and enable, to our knowledge, the first forest-plot representation that exactly reconstructs the NMA estimator. The framework also yields projection-based diagnostic and graphical tools, including forest plots, tension plots, and path-based visualizations. Applications to empirical datasets demonstrate how the proposed approach provides a reproducible and interpretable framework for understanding evidence contributions in network meta-analysis, supporting transparent interpretation and reporting.

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