Quantifying Selection Bias in Cross-Sectional Studies of Ovarian Hormones
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Date
2009-03
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Publisher
Wiley
Abstract
Most studies of ovarian hormones in adult women collect data from a
cross-sectional sample of participants meeting various selection
criteria including not having been pregnant or breastfeeding for
several months. Although this approach is intended to eliminate the
effects of these factors on hormonal variation, it introduces a
selection bias of unknown magnitude: in a non-contracepting population,
those women with the highest fecundity are more likely to be either
pregnant or lactating, and so not included in a study sample.
Thus a cross-sectional sample disproportionately represents
women with the lowest fecundity (and potentially the lowest hormone
levels). Here we present a preliminary evaluation of the magnitude of this
selection bias, focusing on progesterone ($P$) levels near the luteal peak.
We use data from Project REPA, a longitudinal study of reproductive
functioning in rural Bolivians, recruited without regard to reproductive
status (Vitzthum, Spielvogel, and Thornburg \textit{Proceedings of the U.S. National Academy of Sciences/} 101, 1443 (2004)). Drawing from
542~non-conception cycles in 144~women, we construct simulated
cross-sectional samples meeting various inclusion criteria and
compare their anovulation rates and progesterone levels.
Description
Keywords
ovarian hormones, progesterone, selection bias, cross-sectional study, longitudinal study, project REPA
Citation
American Journal of Human Biology 21, 271 (abstract)
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poster presented at spring 2009 joint meeting of the American Association of Physical Anthropologists and the Human Biology Association, Chicago
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Article