TY - JOUR
T1 - Analysis of repeated pregnancy outcomes
AU - Louis, Germaine Buck
AU - Dukic, Vanja
AU - Heagerty, Patrick J.
AU - Louis, Thomas A.
AU - Lynch, Courtney D.
AU - Ryan, Louise M.
AU - Schisterman, Enrique F.
AU - Trumble, Ann
AU - Klebanoff, Mark
AU - Liu, Aiyi
AU - Yu, Kai
AU - Collins, James
AU - Olsen, Geary
PY - 2006/4
Y1 - 2006/4
N2 - Women tend to repeat reproductive outcomes, with past history of an adverse outcome being associated with an approximate two-fold increase in subsequent risk. These observations support the need for statistical designs and analyses that address this clustering. Failure to do so may mask effects, result in inaccurate variance estimators, produce biased or inefficient estimates of exposure effects. We review and evaluate basic analytic approaches for analysing reproductive outcomes, including ignoring reproductive history, treating it as a covariate or avoiding the clustering problem by analysing only one pregnancy per woman, and contrast these to more modern approaches such as generalized estimating equations with robust standard errors and mixed models with various correlation structures. We illustrate the issues by analysing a sample from the Collaborative Perinatal Project dataset, demonstrating how the statistical model impacts summary statistics and inferences when assessing etiologic determinants of birth weight.
AB - Women tend to repeat reproductive outcomes, with past history of an adverse outcome being associated with an approximate two-fold increase in subsequent risk. These observations support the need for statistical designs and analyses that address this clustering. Failure to do so may mask effects, result in inaccurate variance estimators, produce biased or inefficient estimates of exposure effects. We review and evaluate basic analytic approaches for analysing reproductive outcomes, including ignoring reproductive history, treating it as a covariate or avoiding the clustering problem by analysing only one pregnancy per woman, and contrast these to more modern approaches such as generalized estimating equations with robust standard errors and mixed models with various correlation structures. We illustrate the issues by analysing a sample from the Collaborative Perinatal Project dataset, demonstrating how the statistical model impacts summary statistics and inferences when assessing etiologic determinants of birth weight.
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U2 - 10.1191/0962280206sm434oa
DO - 10.1191/0962280206sm434oa
M3 - Article
C2 - 16615652
AN - SCOPUS:33645744332
SN - 0962-2802
VL - 15
SP - 103
EP - 126
JO - Statistical Methods in Medical Research
JF - Statistical Methods in Medical Research
IS - 2
ER -