To address how best to model a sequence of pregnancy outcomes, we utilized data from the U.S. Collaborative Perinatal Project to identify determinants of infant birth weight and small-for-gestational age (SGA). The CPP Study enrolled approximately 48,197 pregnant women at one of 12 clinical centers in the United States between 1959-1964 (Niswander and Gordon, 1972). For study purposes, we restricted our sample to 2,211 mothers with 2+ consecutively born infants with complete information on study covariates (i.e., clinical site, maternal age, race, pre-pregnancy weight, cigarette smoking, family income, infant sex). [We intentionally constructed this sample to represent the ideal world with complete pregnancy history and covariate data to examine the issue how best to model prior history.] Modeling strategies included: 1) generalized estimating equations (GEE) with working independence; 2) ignoring prior history; 3) treating history as a confounder, and 4) mixed models with a variety of correlation structures. The various approaches resulted in differences in estimated effect size for birth weight (slopes) and robustly estimated standard errors, and odds ratios and 95% confidence intervals for SGA for known biologic determinants of fetal growth. For example, smoking >1 ppd reduced birth weight from 220-259 grams depending upon modeling strategy with standard errors ranging from 2-32. Risk of SGA ranged from an odds ratio of 2.19 to 2.89. The direction of point estimates for some covariates varied by model selected for analysis.

Project Start
Project End
Budget Start
Budget End
Support Year
2
Fiscal Year
2004
Total Cost
Indirect Cost
Name
U.S. National Inst/Child Hlth/Human Dev
Department
Type
DUNS #
City
State
Country
United States
Zip Code
Schisterman, Enrique F; Moysich, Kirsten B; England, Lucinda J et al. (2003) Estimation of the correlation coefficient using the Bayesian Approach and its applications for epidemiologic research. BMC Med Res Methodol 3:5
Faraggi, David; Reiser, Benjamin; Schisterman, Enrique F (2003) ROC curve analysis for biomarkers based on pooled assessments. Stat Med 22:2515-27
Schisterman, Enrique F (2002) Statistical analysis. Receiver operating characteristic (ROC) curve and lipid peroxidation. Methods Mol Biol 196:343-52
Schisterman, Enrique F (2002) Statistical correction of the area under the ROC curve in the presence of random measurement error and applications to biomarkers of oxidative stress. Methods Mol Biol 186:313-7