Comparing Directionally Sensitive MCUSUM and MEWMA Procedures with Application to Biosurveillance

Type: Article

Publication Date: 2008-09-11

Citations: 37

DOI: https://doi.org/10.1080/08982110802334104

Abstract

ABSTRACT This paper compares the performance of two new directionally sensitive multivariate methods, based on the multivariate CUSUM (MCUSUM) and the multivariate exponentially weighted moving average (MEWMA), for biosurveillance. While neither of these methods is currently in use in a biosurveillance system, they are among the most promising multivariate methods for this application. Our analysis is based on a detailed series of simulations using synthetic biosurveillance data that mimics various types of disease background incidence and outbreaks. We apply the MCUSUM and the MEWMA to residuals from an adaptive regression that accounts for the systematic effects normally present in biosurveillance data. We find that, much like the results from univariate CUSUM and EWMA comparisons in classical statistical process control applications, the directionally sensitive MCUSUM and MEWMA perform very similarly.

Locations

  • Quality Engineering - View
  • Calhoun: The Naval Postgraduate School Institutional Archive (Naval Postgraduate School) - View - PDF

Similar Works

Action Title Year Authors
+ PDF Chat Directionally Sensitive Multivariate Control Charts in Practice: Application to Biosurveillance 2013 Inbal Yahav
Galit Shmueli
+ Directionally sensitive adaptive MEWMA charts with fixed and variable sampling rates 2024 Abdul Haq
Michael B. C. Khoo
+ Evaluating Directionally-Sensitive Multivariate Control Charts with an Application to Biosurveillance 2007 Inbal Yahav
Galit Shmueli
+ Directionally Sensitive Multivariate Statistical Process Control Methods with Application to Syndromic Surveillance 2007 Ronald D. Fricker
+ Principles for Multivariate Surveillance 2007 Marianne Frisén
+ Principles for Multivariate Surveillance 2007 Marianne Frisén
+ Robust distribution-free multivariate CUSUM charts for spatiotemporal biosurveillance in the presence of spatial correlation 2015 Mi Lim Lee
David Goldsman
Seong‐Hee Kim
+ Principles for Multivariate Surveillance 2010 Marianne Frisén
+ Statistical analysis of multivariate infectious disease surveillance time series 2011 Michaela Paul
+ Robustness to Non-Normality of the Multivariate EWMA Control Chart 2002 Zachary G. Stoumbos
Joe H. Sullivan
+ Statistical Quality Control; a Tool for Monitoring Epidemic Diseases Outbreak 2014 Odunayo J. Braimah
P.E Omaku
Yakub Kayode Saheed
A.A Momo
+ Optimal exponentially weighted moving average (EWMA) plans for detecting seasonal epidemics when faced with non-homogeneous negative binomial counts 2011 Ross Sparks
Tim Keighley
David Muscatello
+ PDF Chat Evaluation of multivariate surveillance 2010 Marianne Frisén
Eva Andersson
Linus Schiöler
+ Evaluation of multivariate surveillance 2009 Marianne Frisén
Eva Andersson
Linus Schiöler
+ Robustness to non-normality of the multivariate EWMA control chart 2003 Zachary G. Stoumbos
Joe H. Sullivan
+ Monitoring multivariate coefficient of variation with upward Shewhart and EWMA charts in the presence of measurement errors using the linear covariate error model 2020 Heba N. Ayyoub
Michael B. C. Khoo
Ming Ha Lee
Abdul Haq
+ Directionally sensitive MCUSUM mean charts 2021 Abdul Haq
Komal Sohrab
+ PDF Chat A one‐sided MEWMA chart for health surveillance 2008 M. D. Joner
William H. Woodall
Marion R. Reynolds
Ronald D. Fricker
+ PDF Chat Advances in spatiotemporal models for non-communicable disease surveillance 2019 Marta Blangiardo
Areti Boulieri
Peter J. Diggle
Frédéric B. Piel
Gavin Shaddick
Paul Elliott
+ PDF Chat A simulation study to evaluate the performance of five statistical monitoring methods when applied to different time-series components in the context of control programs for endemic diseases 2017 Ana Carolina Lopes Antunes
Dan Børge Jensen
Tariq Halasa
Nils Toft