Abstract

BackgroundAdverse drug reactions (ADRs) are statistically characterized within randomized clinical trials and postmarketing pharmacovigilance, but their molecular mechanism remains unknown in most cases. This is true even for hepatic or skin toxicities, which are classically monitored during drug design. Aside from clinical trials, many elements of knowledge about drug ingredients are available in open-access knowledge graphs, such as their properties, interactions, or involvements in pathways. In addition, drug classifications that label drugs as either causative or not for several ADRs, have been established.MethodsWe propose in this paper to mine knowledge graphs for identifying biomolecular features that may enable automatically reproducing expert classifications that distinguish drugs 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 mechanisms behind ADRs. In summary, (1) we mine a knowledge graph for features; (2) we train classifiers at distinguishing, on the basis of extracted features, drugs associated or not with two commonly monitored ADRs: drug-induced liver injuries (DILI) and severe cutaneous adverse reactions (SCAR); (3) we isolate features that are both efficient in reproducing expert classifications and interpretable by experts (i.e., Gene Ontology terms, drug targets, or pathway names); and (4) we manually evaluate in a mini-study how they may be explanatory.ResultsExtracted features reproduce with a good fidelity classifications of drugs causative or not for DILI and SCAR (Accuracy = 0.74 and 0.81, respectively). Experts fully agreed that 73% and 38% of the most discriminative features are possibly explanatory for DILI and SCAR, respectively; and partially agreed (2/3) for 90% and 77% of them.ConclusionKnowledge graphs provide sufficiently diverse features to enable simple and explainable models to distinguish between drugs that are causative or not for ADRs. In addition to explaining classifications, most discriminative features appear to be good candidates for investigating ADR mechanisms further.

Highlights

  • Adverse drug reactions (ADRs) are statistically characterized within randomized clinical trials and postmarketing pharmacovigilance, but their molecular mechanism remains unknown in most cases

  • We propose in this article to leverage elements of knowledge about drugs that lie in biomedical knowledge graphs to investigate ADR molecular mechanisms

  • The contribution of our work is twofold: first, we show that knowledge graphs provide sufficiently diverse features to enable simple and explainable models to distinguish between drugs that are causative or not, for two types of ADRs commonly monitored; second, we manually evaluate in a mini-study that in this setting, predictive features constitute good candidates for investigating ADR mechanisms further

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Summary

Introduction

Adverse drug reactions (ADRs) are statistically characterized within randomized clinical trials and postmarketing pharmacovigilance, but their molecular mechanism remains unknown in most cases. Understanding a drug’s mechanism is fruitful: it can guide drug development, improve drug safety, and enable precision medicine, through better dosing or combination of drugs [2] Aside from this partial ignorance, many elements of knowledge about drug ingredients are available in open-access knowledge graphs, such as their chemical and physical properties, their interactions with biomolecules such as their targets, or their involvements in biological pathways or molecular functions [3]. We consider knowledge graphs represented using Semantic Web technologies, including RDF (Resource Description Framework) and URI (Uniform Resource Identifier) [4, 5] In such knowledge graphs, nodes represent entities, named individuals, of a domain (e.g., acetaminophen), classes of individuals (e.g., analgesics), or literals (e.g., strings, dates, numbers). Nodes are connected by directed edges that are labeled with predicates (e.g., transportedBy)

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