Tides Need STEMMED: A Locally Operating Spatio-Temporal Mutually Exciting Point Process with Dynamic Network for Improving Opioid Overdose Death Prediction
Che-Yi Liao, Gian-Gabriel P. Garcia, Kamran Paynabar, Zheng Dong, Yao Xie, Mohammad S. Jalali

TL;DR
STEMMED is a novel spatio-temporal point process model that predicts opioid overdose death trends by capturing community interactions and drug influences, significantly improving forecasting accuracy and informing policy interventions.
Contribution
This paper introduces STEMMED, a dynamic network-based point process model with a distributed learning algorithm for accurate opioid overdose trend prediction across communities.
Findings
STEMMED accurately recovers known parameters in simulations.
The model reduces prediction error by 60% compared to existing methods.
Nearby community interactions significantly influence overdose trends.
Abstract
We develop a Spatio-TEMporal Mutually Exciting point process with Dynamic network (STEMMED), i.e., a point process network wherein each node models a unique community-drug event stream with a dynamic mutually-exciting structure, accounting for influences from other nodes. We show that STEMMED can be decomposed node-by-node, suggesting a tractable distributed learning procedure. Simulation shows that this learning algorithm can accurately recover known parameters of STEMMED, especially for small networks and long data-horizons. Next, we turn this node-by-node decomposition into an online cooperative multi-period forecasting framework, which is asymptotically robust to operational errors, to facilitate Opioid-related overdose death (OOD) trends forecasting among neighboring communities. In our numerical study, we parameterize STEMMED using individual-level OOD data and county-level…
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Taxonomy
TopicsData-Driven Disease Surveillance · Mental Health Research Topics · Functional Brain Connectivity Studies
