Performance of the SafeTerm AI-Based MedDRA Query System Against Standardised MedDRA Queries
Francois Vandenhende, Anna Georgiou, Michalis Georgiou, Theodoros Psaras, Ellie Karekla, Elena Hadjicosta

TL;DR
This study evaluates SafeTerm, an AI-based system for automating MedDRA query retrieval in drug safety, demonstrating its effectiveness in balancing recall and precision compared to standard methods.
Contribution
The paper introduces SafeTerm, a novel AI system that embeds medical terms in vector space and applies similarity measures for automated MedDRA query generation.
Findings
High recall (94%) at moderate thresholds indicates good sensitivity.
Optimal threshold (0.70) yields 48% recall and 45% precision.
Automatic threshold selection prioritizes recall, achieving 58% recall.
Abstract
In pre-market drug safety review, grouping related adverse event terms into SMQs or OCMQs is critical for signal detection. We assess the performance of SafeTerm Automated Medical Query (AMQ) on MedDRA SMQs. The AMQ is a novel quantitative artificial intelligence system that understands and processes medical terminology and automatically retrieves relevant MedDRA Preferred Terms (PTs) for a given input query, ranking them by a relevance score (0-1) using multi-criteria statistical methods. The system (SafeTerm) embeds medical query terms and MedDRA PTs in a multidimensional vector space, then applies cosine similarity, and extreme-value clustering to generate a ranked list of PTs. Validation was conducted against tier-1 SMQs (110 queries, v28.1). Precision, recall and F1 were computed at multiple similarity-thresholds, defined either manually or using an automated method. High recall…
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Taxonomy
TopicsPharmacovigilance and Adverse Drug Reactions · Biomedical Text Mining and Ontologies · Machine Learning in Healthcare
