Detection of Adverse Drug Events in Dutch clinical free text documents using Transformer Models: benchmark study
Rachel M. Murphy, Nishant Mishra, Nicolette F. de Keizer, Dave A. Dongelmans, Kitty J. Jager, Ameen Abu-Hanna, Joanna E. Klopotowska, Iacer Calixto

TL;DR
This study benchmarks transformer models for detecting adverse drug events in Dutch clinical free text, demonstrating that MedRoBERTa.nl performs best with significant recall in ICU and hospital discharge notes.
Contribution
It introduces a comprehensive benchmark for ADE detection in Dutch clinical texts using multiple transformer models and evaluation strategies, highlighting the importance of task-specific performance measures.
Findings
MedRoBERTa.nl achieved the highest macro F1 score of 0.63.
Recall rates ranged from 0.67 to 0.74 in external validation.
Small differences observed between models for ADE relation classification.
Abstract
In this study, we establish a benchmark for adverse drug event (ADE) detection in Dutch clinical free-text documents using several transformer models, clinical scenarios, and fit-for-purpose performance measures. We trained a Bidirectional Long Short-Term Memory (Bi-LSTM) model and four transformer-based Dutch and/or multilingual encoder models (BERTje, RobBERT, MedRoBERTa(.)nl, and NuNER) for the tasks of named entity recognition (NER) and relation classification (RC) using 102 richly annotated Dutch ICU clinical progress notes. Anonymized free-text clinical progress notes of patients admitted to the intensive care unit (ICU) of one academic hospital and discharge letters of patients admitted to Internal Medicine wards of two non-academic hospitals were reused. We evaluated our ADE RC models internally using the gold standard (two-step task) and predicted entities (end-to-end task). In…
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Taxonomy
TopicsTopic Modeling · Machine Learning in Healthcare · Biomedical Text Mining and Ontologies
