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Large-scale proteomics in early pregnancy and hypertensive disorders of pregnancy
Greenland, P., Segal, M. R., Mcneil, R. B., Parker, C. B., Pemberton, V. L., Grobman, W. A., Silver, R. M., Simhan, H. N., Saade, G. R., Ganz, P., Mehta, P., Catov, J. M., Merz, C. N. B., Varagic, J., Khan, S. S., Parry, S., Reddy, U. M., Mercer, B. M., Wapner, R. J., & Haas, D. M. (2024). Large-scale proteomics in early pregnancy and hypertensive disorders of pregnancy. JAMA Cardiology, (9). https://doi.org/10.1001/jamacardio.2024.1621
IMPORTANCE There is no consensus regarding the best method for prediction of hypertensive disorders of pregnancy (HDP), including gestational hypertension and preeclampsia. OBJECTIVE To determine predictive ability in early pregnancy of large-scale proteomics for prediction of HDP. DESIGN, SETTING, AND PARTICIPANTS This was a nested case-control study, conducted in 2022 to 2023, using clinical data and plasma samples collected between 2010 and 2013 during the first trimester, with follow-up until pregnancy outcome. This multicenter observational study took place at 8 academic medical centers in the US. Nulliparous individuals during first-trimester clinical visits were included. Participants with HDP were selected as cases; controls were selected from those who delivered at or after 37 weeks without any HDP, preterm birth, or small-for-gestational-age infant. Age, self-reported race and ethnicity, body mass index, diabetes, health insurance, and fetal sex were available covariates. EXPOSURES Proteomics using an aptamer-based assay that included 6481 unique human proteins was performed on stored plasma. Covariates were used in predictive models. MAIN OUTCOMES AND MEASURES Prediction models were developed using the elastic net, and analyses were performed on a randomly partitioned training dataset comprising 80% of study participants, with the remaining 20% used as an independent testing dataset. Primary measure of predictive performance was area under the receiver operating characteristic curve (AUC). RESULTS This study included 753 HDP cases and 1097 controls with a mean (SD) age of 26.9 (5.5) years. Maternal race and ethnicity were 51 Asian (2.8%), 275 non-Hispanic Black (14.9%), 275 Hispanic (14.9%), 1161 non-Hispanic White (62.8% ), and 88 recorded as other (4.8%), which included those who did not identify according to these designations. The elastic net model, allowing for forced inclusion of prespecified covariates, was used to adjust protein-based models for clinical and demographic variables. Under this approach, no proteins were selected to augment the clinical and demographic covariates. The predictive performance of the resulting model was modest, with a training set AUC of 0.64 (95% CI, 0.61-0.67) and a test set AUC of 0.62 (95% CI, 0.56-0.68). Further adjustment for study site yielded only minimal changes in AUCs. CONCLUSIONS AND RELEVANCE In this case-control study with detailed clinical data and stored plasma samples available in the first trimester, an aptamer-based proteomics panel did not meaningfully add to predictive utility over and above clinical and demographic factors that are routinely available.