Title
Advanced visual analytics interfaces for adverse drug event detection
Abstract
Adverse reactions to drugs are a major public health care issue. Currently, the Food and Drug Administration (FDA) publishes quarterly reports that typically contain on the order of 200,000 adverse incidents. In such numerous incidents, low frequency events that are clinically highly significant often remain undetected. In this paper, we introduce a visual analytics system to solve this problem using (1) high scalable interfaces for analyzing correlations between a number of complex variables (e.g., drug and reaction); (2) enhanced statistical computations and interactive relevance filters to quickly identify significant events including those with a low frequency; and (3) a tight integration of expert knowledge for detecting and validating adverse drug events. We applied these techniques to the FDA Adverse Event Reporting System and were able to identify important adverse drug events, such as the known association of the drug Avandia with myocardial infarction and Seroquel with diabetes mellitus, as well as low frequency events such as the association of Boniva with femur fracture. In our evaluation, we found over 90% of the adverse drug events that were published in the Institute for Safe Medication Practices (ISMP) reports from 2009 to 2012. In addition, our domain expert was able to identify some previously unknown adverse drug events.
Year
DOI
Venue
2014
10.1145/2598153.2598156
AVI
Keywords
Field
DocType
design,miscellaneous,pixel-based technique,visual analytics,adverse drug event detection
Data science,Adverse Event Reporting System,Subject-matter expert,Computer science,Visual analytics,Intensive care medicine,Human–computer interaction,Complex variables,Drug,Drug administration
Conference
Citations 
PageRank 
References 
3
0.39
10
Authors
6
Name
Order
Citations
PageRank
Sebastian Mittelstädt1363.64
Ming C. Hao2814.59
Umeshwar Dayal384522538.92
Meichun Hsu43437778.34
Joseph Terdiman561.48
Daniel A. Keim677041141.60