CLDec 8, 2025

Automated Generation of Custom MedDRA Queries Using SafeTerm Medical Map

arXiv:2512.07694v12 citationsh-index: 2
Originality Incremental advance
AI Analysis

This provides a supplementary automated method for drug safety analysts, though it is incremental as it builds on existing query standards like FDA OCMQs.

The researchers tackled the problem of automating the grouping of adverse event terms into standardized MedDRA queries for drug safety review by developing an AI system (SafeTerm) that retrieves and ranks relevant terms, achieving up to 86% precision and over 95% recall at different thresholds.

In pre-market drug safety review, grouping related adverse event terms into standardised MedDRA queries or the FDA Office of New Drugs Custom Medical Queries (OCMQs) is critical for signal detection. We present 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 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 the FDA OCMQ v3.0 (104 queries), restricted to valid MedDRA PTs. Precision, recall and F1 were computed across similarity-thresholds. High recall (>95%) is achieved at moderate thresholds. Higher thresholds improve precision (up to 86%). The optimal threshold (~0.70 - 0.75) yielded recall ~50% and precision ~33%. Narrow-term PT subsets performed similarly but required slightly higher similarity thresholds. The SafeTerm AI-driven system provides a viable supplementary method for automated MedDRA query generation. A similarity threshold of ~0.60 is recommended initially, with increased thresholds for refined term selection.

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