Point Process Modeling of Drug Overdoses with Heterogeneous and Missing Data
Xueying Liu, Jeremy Carter, Brad Ray, George Mohler

TL;DR
This paper develops a spatial-temporal point process model that integrates heterogeneous EMS and toxicology data to better predict drug overdose hotspots and analyze overdose contagion effects.
Contribution
It introduces an EM algorithm for combining diverse overdose data sources and demonstrates improved hotspot prediction accuracy over models using single data types.
Findings
Integrated data model outperforms single-source models in hotspot prediction (AUC up to .85).
Overdose deaths show significant contagion effects with high branching ratios.
Clustering toxicology reports enhances overdose categorization.
Abstract
Opioid overdose rates have increased in the United States over the past decade and reflect a major public health crisis. Modeling and prediction of drug and opioid hotspots, where a high percentage of events fall in a small percentage of space-time, could help better focus limited social and health services. In this work we present a spatial-temporal point process model for drug overdose clustering. The data input into the model comes from two heterogeneous sources: 1) high volume emergency medical calls for service (EMS) records containing location and time, but no information on the type of non-fatal overdose and 2) fatal overdose toxicology reports from the coroner containing location and high-dimensional information from the toxicology screen on the drugs present at the time of death. We first use non-negative matrix factorization to cluster toxicology reports into drug overdose…
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Taxonomy
TopicsPoint processes and geometric inequalities
