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  <title><![CDATA[Phd Defense by Sue Reynolds]]></title>
  <body><![CDATA[<p>Phd Defense by <strong>Sue Reynolds</strong></p><p>&nbsp;Title:&nbsp; <strong>Statistical Estimation and Changepoint Detection Methods in Public Health Surveillance.</strong></p><p>Advisors:&nbsp; Dr. David Goldsman,&nbsp; Dr. Kwok-Leung Tsui (City University of Hong Kong)</p><p>Committee members:&nbsp; Dr. Christos Alexopoulos,&nbsp; Dr. Xiaoming Huo,&nbsp; Dr. Brani Vidakovic,&nbsp; Dr. David Shay (Centers for Disease Control and Prevention)</p><p>&nbsp;Date and time:&nbsp; Wednesday,&nbsp;April 1, 2015,&nbsp; 9:00am</p><p>&nbsp;Location:&nbsp; Groseclose 204 - Academic Conference Room</p><p>&nbsp;</p><p><strong>Abstract:</strong></p><p>&nbsp;This thesis focuses on assessing and improving statistical methods implemented in two areas of public health research.&nbsp; The first topic involves estimation of national influenza-associated mortality rates via mathematical modeling.&nbsp; The second topic involves the timely detection of infectious disease outbreaks using statistical process control monitoring.</p><p>&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;&nbsp;For over fifty years, the Centers for Disease Control and Prevention has been estimating annual rates of U.S. deaths attributable to influenza.&nbsp; These estimates have been used to determine costs and benefits associated with influenza prevention and control strategies.&nbsp; Quantifying the effect of influenza on mortality, however, can be challenging since influenza infections typically are not confirmed virologically nor specified on death certificates.&nbsp; Consequently, a wide range of ecologically based, mathematical modeling approaches have been applied to specify the association between influenza and mortality.&nbsp; To date, all influenza-associated death estimates have been based on mortality data first aggregated at the national level and then modeled.&nbsp; Unfortunately, there are a number of local-level seasonal factors that may confound the association between influenza and mortality&nbsp;&nbsp;thus suggesting that data be modeled at the local level and then pooled to make national estimates of death.&nbsp;</p><p>The first component of the thesis topic involving mortality estimation addresses this issue by introducing and implementing a two-stage hierarchical Bayesian modeling approach.&nbsp; In the first stage, city-level data with varying trends in mortality and weather were modeled using semi-parametric, generalized additive models.&nbsp; In the second stage, the log-relative risk estimates calculated for each city in stage 1 represented the “outcome” variable, and were modeled two ways: (1) assuming spatial independence across cities using a Bayesian generalized linear model, and (2) assuming correlation among cities using a Bayesian spatial correlation model.&nbsp; Results from these models were compared to those from a more-conventional approach.</p><p>The second component of this topic examines the extent to which seasonal confounding and collinearity affect the relationship between influenza and mortality at the local (city) level.&nbsp; Disentangling the effects of temperature, humidity, and other seasonal confounders on the association between influenza and mortality is challenging since these covariates are often temporally collinear with influenza activity.&nbsp; Three modeling strategies with varying representations of background seasonality were compared.&nbsp; Seasonal covariates entered into the model may have been measured (e.g., ambient temperature) or unmeasured (e.g., time-based smoothing splines or Fourier terms).&nbsp; An advantage of modeling background seasonality via time splines is that the amount of seasonal curvature can be controlled by the number of degrees of freedom specified for the spline.&nbsp; A comparison of the effects of influenza activity on mortality based on these varying representations of seasonal confounding is assessed.&nbsp;</p><p>The third component of this topic explores the relationship between mortality rates and influenza activity using a flexible, natural cubic spline function to model the influenza term.&nbsp; The conventional approach of fitting influenza-activity terms linearly in regression was found to be too constraining.&nbsp; Results show that the association is best represented nonlinearly.</p><p>The second area of focus in this thesis involves infectious disease outbreak detection.&nbsp; A fundamental goal of public health surveillance, particularly syndromic surveillance, is the timely detection of increases in the rate of unusual events.&nbsp; In syndromic surveillance, a significant increase in the incidence of monitored disease outcomes would trigger an alert, possibly prompting the implementation of an intervention strategy.&nbsp; Public health surveillance generally monitors count data (e.g., counts of influenza-like illness, sales of over-the-counter remedies, and number of visits to outpatient clinics).&nbsp; Statistical process control charts, designed for quality control monitoring in industry, have been widely adapted for use in disease and syndromic surveillance.&nbsp; The behavior of these detection methods on discrete distributions, however, has not been explored in detail.&nbsp;&nbsp;</p><p>For this component of the thesis, a simulation study was conducted to compare the CuSum and EWMA methods for detection of increases in negative binomial rates with varying amounts of dispersion.&nbsp; The goal of each method is to detect an increase in the mean number of cases as soon as possible after an upward rate shift has occurred.&nbsp; The performance of the CuSum and EWMA detection methods is evaluated using the conditional expected delay criterion, which is a measure of the detection delay, i.e., the time between the occurrence of a shift and when that shift is detected.&nbsp; Detection capabilities were explored under varying shift sizes and times at which the shifts occurred.</p><p>&nbsp;</p>]]></body>
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