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Relative risks of GWG above the IOM recommendations depending on education were calculated within strata of normal weight, overweight and obesity.
Pearsons product moment-correlations between deproduct moment-correlationss well as duration of education were calculated for betweenagnostic groups.
Two gender specific multinomial logistic regression models with smoking status [current, former or never-smoker (reference)] as dependent variable were computed and predicted probabilities of smoking status among groups with different levels of education were calculated.
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Education was calculated as a continuous variable with three levels (No education =1; Three years or less of education =2; More than three years of education =3).
Population attributable percentage of Tobacco use for each level of education was calculated (Table 4).
For (i) a repeated measures MANCOVA with between-subject factors BDNF genotype, gender and diagnosis, within-subject factor side and covariates age and education was calculated.
Education years were calculated from elementary school entrance to the graduation or dropout of the last institution of higher education, which consisted of junior high school, senior high school, vocational school, junior college and university and graduate school.
Neighbourhood education quintiles were calculated using the percentages of people with certificate, diploma or degree in the dissemination areas of the study region.
To quantify the strength of the phenotypic association between symptoms of depression and education, partial correlations were calculated.
Median household incomes per DA, number of residents over the age of 65 years per DA, and number of individuals with university level education per DA were calculated.
Unadjusted odds ratios (ORs) and the associated 95% CI for risk of clubfoot by different strata of maternal and paternal age, family history, pregnancy maternal history, maternal exposure to illicit drugs or alcohol during the index pregnancy, maternal education, and ethnicity were calculated.
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