Biosurveillance of measles using control charts: A case study using National Capital Region laboratory confirmed measles counts from January 2009 to January 2014

College

College of Science

Department/Unit

Mathematics and Statistics Department

Document Type

Article

Source Title

Philippine Statistician

Volume

63

Issue

2

First Page

31

Last Page

49

Publication Date

2014

Abstract

This paper aims to explore early outbreak detection methods for measles. Two methods adapted from statistical process control were modified and used to fit biosurveillance, namely Shewhart and Exponentially Weighted Moving Average (EWMA) charts. Seven variations of such control charts are proposed: two under Shewhart chart (normal-based and zero-inflated Poisson (ZIP)-based) and five under EWMA charts (λs of 0.05, 0.10, 0.15, 0.20, and 0.25). To study the proposed charts, daily counts of laboratory confirmed cases of measles in the National Capital Region from 2009 until 2014 were utilized to characterize both the disease background and outbreak equations. During this time span, three measles outbreaks have transpired. The proposed charts, set at average time between false signals (ATFSs) of both one and two months, were evaluated and compared using performance metrics such as conditional expected delay (CED), proportion of true signals (PTS), proportions of detections in an outbreak (PDO), and probability of successful detection (PSD), computed from 500 sets of simulated data. It was found that ZIP-based Shewhart and EWMA with a λ of 0.05 work best for ATFSs of one and two months, respectively. Health-governing bodies may seek to explore the possible utilization of these charts to improve measles surveillance.

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Disciplines

Applied Mathematics

Keywords

Public health surveillance; Measles—Charts, diagrams, etc.

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