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Breast cancer risk in relation to history of preeclampsia and hyperemesis gravidarum: Prospective analysis in the Generations Study.

Lauren B WrightMinouk J SchoemakerMichael E JonesAlan AshworthAnthony J Swerdlow
Published in: International journal of cancer (2018)
Preeclampsia and hyperemesis gravidarum are pregnancy complications associated with altered sex hormone levels. Previous studies suggest preeclampsia may be associated with a decreased risk of subsequent breast cancer and hyperemesis with an increased risk, but the evidence remains unclear. We used data from the Generations Study, a large prospective study of women in the United Kingdom, to estimate relative risks of breast cancer in relation to a history of preeclampsia and hyperemesis using Cox regression adjusting for known breast cancer risk factors. During 7.5 years average follow-up of 82,053 parous women, 1,969 were diagnosed with invasive or in situ breast cancer. Women who had experienced preeclampsia during pregnancy had a significantly decreased risk of premenopausal breast cancer (hazard ratio (HR) =0.67, 95% confidence interval (CI): 0.49-0.90) and of HER2-enriched tumours (HR = 0.33, 95% CI: 0.12-0.91), but there was no association with overall (HR = 0.90, 95% CI: 0.80-1.02) or postmenopausal (HR = 0.97, 95% CI: 0.85-1.12) breast cancer risk. Risk reductions among premenopausal women were strongest within 20 years since the last pregnancy with preeclampsia. Hyperemesis was associated with a significantly increased risk of HER2-enriched tumours (HR = 1.76, 95% CI: 1.07-2.87), but not with other intrinsic subtypes or breast cancer risk overall. These results provide evidence that preeclampsia is associated with a decreased risk of premenopausal and HER2-enriched breast cancer and that hyperemesis, although not associated with breast cancer risk overall, may be associated with raised risk of HER2-enriched tumours.
Keyphrases
  • breast cancer risk
  • early onset
  • pregnancy outcomes
  • risk factors
  • pregnant women
  • machine learning
  • preterm birth
  • metabolic syndrome
  • adipose tissue
  • polycystic ovary syndrome
  • cross sectional
  • human health