4.7 Article

Unbiased plasma proteomics discovery of biomarkers for improved detection of subclinical atherosclerosis

Journal

EBIOMEDICINE
Volume 76, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.ebiom.2022.103874

Keywords

Subclinical atherosclerosis; Proteomics; Biomarkers; IGHA2; APOA; HPT

Funding

  1. Spanish Ministry of Science, Innovation and Universities [BIO2015-67580-P, PGC2018-097019-B-I00, PID2019-106814RB-I00, SAF2016-80843-R]
  2. Carlos III Institute of Health-Fondo de Investigacion Sanitaria grant PRB3 [IPT17/0019-ISCIII-SGEFI/ERDF]
  3. CIBERCV
  4. CIBERDEM
  5. Fundacio Marato TV3 [122/C/2015]
  6. la Caixa Banking Foundation [HR17-00247]
  7. Centro Nacional de Investigaciones Cardiovasculares (CNIC), Madrid, Spain
  8. Banco Santander, Madrid, Spain
  9. Diputacio de Lleida
  10. Instituto de Salud Carlos III [PI15/02019, PI18/00610, RD16/0009]
  11. FEDER funds
  12. Instituto de Salud Carlos III (ISCIII)
  13. Ministerio de Ciencia, Innovacion y Universidades (MCNU)
  14. Pro CNIC Foundation

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This study identified circulating proteins that are associated with subclinical atherosclerosis and can predict the disease. These proteins offer potential for improving primary prevention strategies in areas where cardiovascular imaging is not available.
Background Imaging of subclinical atherosclerosis improves cardiovascular risk prediction on top of traditional risk factors. However, cardiovascular imaging is not universally available. This work aims to identify circulating proteins that could predict subclinical atherosclerosis. Methods Hypothesis-free proteomics was used to analyze plasma from 444 subjects from PESA cohort study (222 with extensive atherosclerosis on imaging, and 222 matched controls) at two timepoints (three years apart) for discovery, and from 350 subjects from AWHS cohort study (175 subjects with extensive atherosclerosis on imaging and 175 matched controls) for external validation. A selected three-protein panel was further validated by immunoturbidimetry in the AWHS population and in 2999 subjects from ILERVAS cohort study. Findings PIGR, IGHA2, APOA, HPT and HEP2 were associated with subclinical atherosclerosis independently from traditional risk factors at both timepoints in the discovery and validation cohorts. Multivariate analysis rendered a potential three-protein biomarker panel, including IGHA2, APOA and HPT. Immunoturbidimetry confirmed the independent associations of these three proteins with subclinical atherosclerosis in AWHS and ILERVAS. A machine-learning model with these three proteins was able to predict subclinical atherosclerosis in ILERVAS (AUC [95%CI]:0.73 [0.70-0.74], p < 1 x 10(-99)), and also in the subpopulation of individuals with low cardiovascular risk according to FHS 10-year score (0.71 [0.69-0.73], p < 1 x 10(-69)). Interpretation Plasma levels of IGHA2, APOA and HPT are associated with subclinical atherosclerosis independently of traditional risk factors and offers potential to predict this disease. The panel could improve primary prevention strategies in areas where imaging is not available. Copyright (C) 2022 The Authors. Published by Elsevier B.V.

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