Explainable Artificial Intelligence for Pharmacovigilance: What Features Are Important When Predicting Adverse Outcomes?
Isaac Ronald Ward, Ling Wang, Juan lu, Mohammed Bennamoun, Girish, Dwivedi, Frank M Sanfilippo

TL;DR
This study develops machine learning models combined with explainable AI techniques to identify important drug features influencing adverse cardiovascular outcomes, demonstrating potential for pharmacovigilance monitoring.
Contribution
The paper introduces an XAI-based method to quantify drug feature importance in predicting adverse outcomes, specifically applied to ACS risk using linked health datasets.
Findings
ML models predicted ACS with 72% accuracy
SHAP outperformed LIME in feature importance detection
Rofecoxib and celecoxib contributed to ACS predictions
Abstract
Explainable Artificial Intelligence (XAI) has been identified as a viable method for determining the importance of features when making predictions using Machine Learning (ML) models. In this study, we created models that take an individual's health information (e.g. their drug history and comorbidities) as inputs, and predict the probability that the individual will have an Acute Coronary Syndrome (ACS) adverse outcome. Using XAI, we quantified the contribution that specific drugs had on these ACS predictions, thus creating an XAI-based technique for pharmacovigilance monitoring, using ACS as an example of the adverse outcome to detect. Individuals aged over 65 who were supplied Musculo-skeletal system (anatomical therapeutic chemical (ATC) class M) or Cardiovascular system (ATC class C) drugs between 1993 and 2009 were identified, and their drug histories, comorbidities, and other key…
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Taxonomy
MethodsShapley Additive Explanations · Local Interpretable Model-Agnostic Explanations
