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Knowledge-based Graphical Method for Safety Signal Detection in Clinical Trials

Published: November 24, 2025 | arXiv ID: 2511.18937v1

By: Francois Vandenhende , Anna Georgiou , Michalis Georgiou and more

Potential Business Impact:

Finds drug side effects faster and more clearly.

Business Areas:
Semantic Search Internet Services

We present a graphical, knowledge-based method for reviewing treatment-emergent adverse events (AEs) in clinical trials. The approach enhances MedDRA by adding a hidden medical knowledge layer (Safeterm) that captures semantic relationships between terms in a 2-D map. Using this layer, AE Preferred Terms can be regrouped automatically into similarity clusters, and their association to the trial disease may be quantified. The Safeterm map is available online and connected to aggregated AE incidence tables from ClinicalTrials.gov. For signal detection, we compute treatment-specific disproportionality metrics using shrinkage incidence ratios. Cluster-level EBGM values are then derived through precision-weighted aggregation. Two visual outputs support interpretation: a semantic map showing AE incidence and an expectedness-versus-disproportionality plot for rapid signal detection. Applied to three legacy trials, the automated method clearly recovers all expected safety signals. Overall, augmenting MedDRA with a medical knowledge layer improves clarity, efficiency, and accuracy in AE interpretation for clinical trials.

Page Count
13 pages

Category
Computer Science:
Computation and Language