Application of a Bayesian Spatiotemporal Surveillance Method to NYC Syndromic Data
Author(s) -
Alison Alison,
Ana CorberánVallet,
Andrew Lawson,
Ramona Lall,
Robert Mathes
Publication year - 2014
Publication title -
online journal of public health informatics
Language(s) - English
Resource type - Journals
ISSN - 1947-2579
DOI - 10.5210/ojphi.v6i1.5040
Subject(s) - zip code , bayesian probability , computer science , outbreak , medicine , population , pandemic , covid-19 , data mining , geography , artificial intelligence , environmental health , virology , database , infectious disease (medical specialty) , disease
Incorporating prior knowledge (e.g., the spatial distribution of zip codes and background population effects) into a model using Bayesian methods could potentially improve outbreak detection. We adapted a previously described Bayesian model-based spatiotemporal surveillance technique to daily respiratory syndrome counts in NYC Emergency Department data in 2009, the year of the H1N1 influenza pandemic. Citywide, 56 alarms were produced across 15 zip codes, all during days of elevated respiratory visits. Future work includes evaluating our choice of baseline length, considering other alarm thresholds, and conducting a formal evaluation of the method across five syndromes in NYC.
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