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Due to a lot of missing data for some of the background variables (especially for females), we only considered adjustments for age, smoking, BMI, year of sampling, and ApoB/ApoA1.
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We also considered adjustment for NHANES wave.
We also considered adjustment for arsenic exposure and demographics.
We then considered adjustment for other potential confounding factors.
Similarly, we also considered adjustment for BMI, but again with virtually no impact on the results.
For childhood WG analyses, we additionally considered adjustment for every breastfeeding, in-home smoking, height, and caloric intake at age 3 years.
In addition, we considered adjustment for regularity and length of cycles during several different time periods: high school, ages 18 22 years, and recent (reported only once in 1993).
Analyses considered adjustment for imbalances in baseline characteristics between the randomised groups and the differential effects of treatment over time (treatment by time interaction).
Also, having considered adjustment for multiple testing in this study, the associations of VEGF ligands and their receptors fall short of significance although several strong trends were observed.
All studies included in our meta-analysis considered adjustment for potential confounding by various diet and lifestyle factors, and for most a positive association persisted, suggesting an independent effect of SSBs.
We considered adjustment for maternal age and paternal years of education, but because their inclusion in models did not change effect estimates by 10%, they were left out of the final models.
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