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USING A MULTI-OMICS LANDSCAPE OF THE MATERNAL-FETAL INTERFACE TO MODEL THE LONGITUDINAL PATHOGENESIS OF EARLY-ONSET PRE-ECLAMPSIA

Journal of hypertension(2024)

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摘要
Objective: Pre-eclampsia (PE) is a syndrome that affects multiple organ systems and is the most severe hypertensive disorder in pregnancy. It frequently leads to preterm delivery, maternal and fetal morbidity and mortality and life-long complications. We currently lack efficient screening tools and early therapies to address PE. Design and method: To identify candidate biomarkers and operative pathways in early onset PE (eoPE, severe PE with onset before week 34), we performed spatio-temporal multi-omics profiling of human eoPE placentae and healthy controls, and validated targets in early gestation in a longitudinal clinical cohort. We used a single-nuclei RNA-sequencing combined with spatial proteo- and transcriptomics and mechanistic in vitro signalling analyses to bridge the gap from late pregnancy disease to early pregnancy pathomechanisms. Results: We discovered a key disruption in villous trophoblast differentiation, which is driven by the increase of transcriptional coactivator p300, that ultimately ends with a senescence-associated secretory phenotype (SASP) of trophoblasts in eoPE. We found a significant increase in the senescence markers in preeclamptic maternal serum in early gestation and late gestation, before the development of clinical symptoms, indicating that the placental syndrome drives systemic maternal syndrome, even before clinical manifestation of eoPE. Conclusions: Our work describes a new disease progression model, starting with dysregulated transition in villous trophoblast differentiation. Our study identifies potential pathophysiology-relevant biomarkers for the early diagnosis of the disease as well as possible targets for interventions, which would be crucial steps toward protecting the mother and child from gestational mortality and morbidity and an increased risk of cardiovascular disease later in life.
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