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Activity Number: 429
Type: Contributed
Date/Time: Tuesday, August 2, 2016 : 2:00 PM to 3:50 PM
Sponsor: Section on Statistics and the Environment
Abstract #319360
Title: The Positive Effects of Population-Based Preferential Sampling in Environmental Epidemiology
Author(s): Joseph Antonelli* and Matthew Cefalu and Luke Bornn
Companies: Harvard T.H. Chan School of Public Health and RAND Corporation and Simon Fraser University
Keywords: Preferential sampling ; Exposure estimation ; Air pollution epidemiology
Abstract:

In environmental epidemiology, exposures are not always available at subject locations and must be predicted using monitoring data. The monitor locations are often outside the control of researchers, and previous studies have shown that 'preferential sampling' of monitoring locations can adversely affect exposure prediction and subsequent health effect estimation. We adopt a slightly different definition of preferential sampling than is typically seen in the literature, which we call population based preferential sampling. Population based preferential sampling occurs when the location of the monitors is dependent on the subject locations. We show the impact that population based preferential sampling has on exposure prediction and health effect estimation using analytic results and a simulation study. A simple, one parameter model is proposed to measure the degree to which monitors are preferentially sampled with respect to population density. We then discuss these concepts in the context of PM2.5 and the EPA Air Quality System monitoring sites.


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