# Machine Learning and Blood-Targeted Proteomics Enable Early Prediction and Etiological Discrimination of Hypertensive Pregnancy Disorders

**Authors:** Natalia Starodubtseva, Alisa Tokareva, Alexey Kononikhin, Anna Bugrova, Maria Indeykina, Evgenii Kukaev, Alina Poluektova, Alexander Brzhozovskiy, Evgeny Nikolaev, Gennady Sukhikh

PMC · DOI: 10.3390/ijms27031402 · International Journal of Molecular Sciences · 2026-01-30

## TL;DR

This study uses blood proteomics and machine learning to improve early prediction and classification of hypertensive pregnancy disorders, such as preeclampsia.

## Contribution

A novel 18-protein machine learning model for early and accurate prediction of preeclampsia with high sensitivity and specificity.

## Key findings

- A proteomic signature linked to preeclampsia involves complement and coagulation pathways.
- An 18-protein SVM model predicted preeclampsia with 94% sensitivity and 100% specificity.
- Gestational hypertension is associated with lipid metabolism-related proteins, while chronic hypertension is not.

## Abstract

Imperfect first-trimester screening for hypertensive disorders of pregnancy (HDP) means many high-risk women miss the window for preventive aspirin, and the biological heterogeneity of HDPs is overlooked. This study aimed to leverage first-trimester serum proteomics to create a more precise tool for predicting preeclampsia (PE) and differentiating it from other HDPs. A prospective nested case–control study (n = 172) was conducted using targeted liquid chromatography-multiple reaction monitoring-mass spectrometry (LC-MRM-MS) proteomic profiling of 115 proteins. Machine learning (ML) methods were used to develop classifiers from the proteomic data. The signature predictive of PE was characterized by dysregulation of the complement and coagulation cascades (F10, C8A, C1QA, SERPING1, VTN). The profile differentiating gestational hypertension (GAH) from chronic hypertension (CAH) was linked to lipid metabolism (HRG, APOA4, APOC2). An 18-protein support vector machine (SVM) model for predicting PE demonstrated exceptional performance, with 94% sensitivity and 100% specificity, significantly outperforming the standard Fetal Medicine Foundation (FMF) screening algorithm. Pathway analysis confirmed that PE is associated with early activation of innate immunity and coagulation pathways, while GAH is linked to a pregnancy-induced metabolic response. A targeted serum proteomic combined with ML approach represents a new perspective diagnostic tool with strong potential to personalize monitoring for women at the highest risk for specific hypertensive pregnancy complications.

## Linked entities

- **Proteins:** F10 (coagulation factor X), C8A (complement C8 alpha chain), C1QA (complement C1q A chain), SERPING1 (serpin family G member 1), VTN (vitronectin), HRG (histidine rich glycoprotein), APOA4 (apolipoprotein A4), APOC2 (apolipoprotein C2)
- **Diseases:** preeclampsia (MONDO:0005081), gestational hypertension (MONDO:0024664)

## Full-text entities

- **Genes:** SERPING1 (serpin family G member 1) [NCBI Gene 710] {aka C1IN, C1INH, C1NH, HAE1, HAE2}, C8A (complement C8 alpha chain) [NCBI Gene 731], HRG (histidine rich glycoprotein) [NCBI Gene 3273] {aka HPRG, HRGP, THPH11}, APOC2 (apolipoprotein C2) [NCBI Gene 344] {aka APO-CII, APOC-II}, APOA4 (apolipoprotein A4) [NCBI Gene 337] {aka ADTKD6}, VTN (vitronectin) [NCBI Gene 7448] {aka V75, VN, VNT}, C1QA (complement C1q A chain) [NCBI Gene 712] {aka C1QD1}, F10 (coagulation factor X) [NCBI Gene 2159] {aka FX, FXA}
- **Diseases:** GAH (MESH:D046110), pregnancy (MESH:D011254), hypertensive pregnancy complications (MESH:D011248), chronic hypertension (MESH:D006973), PE (MESH:D011225)
- **Chemicals:** aspirin (MESH:D001241), lipid (MESH:D008055)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/PMC12897837/full.md

## Figures

4 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12897837/full.md

## References

70 references — full list in the complete paper: https://tomesphere.com/paper/PMC12897837/full.md

---
Source: https://tomesphere.com/paper/PMC12897837