Investigating ADR mechanisms with knowledge graph mining and explainable AI
Emmanuel Bresso, Pierre Monnin, C\'edric Bousquet, Fran\c{c}ois-Elie, Calvier, Ndeye-Coumba Ndiaye, Nadine Petitpain, Malika Sma\"il-Tabbone,, Adrien Coulet

TL;DR
This paper uses knowledge graph mining and explainable AI techniques like decision trees to identify molecular features that can explain drug-induced adverse reactions, aiding understanding of their mechanisms.
Contribution
It introduces a method to extract and interpret molecular features from knowledge graphs to reproduce expert classifications of ADR causality with explainable models.
Findings
Features accurately reproduce expert classifications for DILI and SCAR.
73% and 38% of top features are possibly explanatory for DILI and SCAR.
Most discriminative features are promising candidates for further ADR mechanism investigation.
Abstract
Adverse Drug Reactions (ADRs) are characterized within randomized clinical trials and postmarketing pharmacovigilance, but their molecular mechanism remains unknown in most cases. Aside from clinical trials, many elements of knowledge about drug ingredients are available in open-access knowledge graphs. In addition, drug classifications that label drugs as either causative or not for several ADRs, have been established. We propose to mine knowledge graphs for identifying biomolecular features that may enable reproducing automatically expert classifications that distinguish drug causative or not for a given type of ADR. In an explainable AI perspective, we explore simple classification techniques such as Decision Trees and Classification Rules because they provide human-readable models, which explain the classification itself, but may also provide elements of explanation for molecular…
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Taxonomy
TopicsComputational Drug Discovery Methods · Pharmacovigilance and Adverse Drug Reactions · Biomedical Text Mining and Ontologies
