Detection of Outbreaks in Syndromic Surveillance Data Using Monotonic Regression

Abstract

Due to nonstationarity and substantial variability in outbreak profiles, early detection of disease outbreaks is challenging. In this paper we propose a method to detect outbreaks in syndromic surveillance data using a generalized likelihood ratio test in which both the null and alternative hypotheses are normally distributed. The data is daily counts of interactions between patients and the National Bioterrorism Syndromic Surveillance Demonstration Program System in the Boston area. Using Poisson regression, we estimate the daily means and variances of the data as well as day of the week variations. The estimated means serve as the means under the null hypothesis. To determine the means under the alternative hypothesis we use a generalized form of the Pool-Adjacent-Violators algorithm on five-day windows of data. For each window a test statistic is computed and an outbreak is indicated if it exceeds a threshold.

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Document Details

Document Type
Technical Report
Publication Date
Jan 01, 2007
Accession Number
AD1107044

Entities

People

  • James Dunyak
  • Jared Burdin
  • Martin Kulldorff
  • Mojdeh Mohtashemi

Organizations

  • Harvard Medical School
  • MITRE Corporation
  • Massachusetts Institute of Technology

Tags

Communities of Interest

  • Biomedical

DTIC Thesaurus Topics

  • Bioterrorism
  • Data Set
  • Demonstrations
  • Detection
  • Detectors
  • Digital Data
  • Disease Outbreaks
  • Diseases And Disorders
  • False Alarms
  • Health
  • Health Care
  • Health Services
  • Homeland Defense
  • Infection
  • Infectious Diseases
  • Morbidity
  • Patient Care
  • Probability
  • Public Health
  • Random Variables
  • Seasonal Variations
  • Signal Processing
  • Surveillance
  • Warning Systems
  • Wound Infections

Fields of Study

  • Mathematics

Readers

  • Infectious Disease/Epidemiology
  • Regression Analysis.
  • Statistical inference.