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Machine Learning‐Driven Prediction of Coronary Artery Disease Risk Based on UK Biobank Plasma Proteomics

Yuezhong Huang, Xiaoli Chen, Hao Zhang, Zhanpei Bai and 7 more

Journal of the American Heart Association | Jun 15, 2026

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It is demonstrated that integrating conventional risk factors, polygenic risk scores, and proteomic data improves CAD risk prediction and highlights the utility of proteomics in precision cardiovascular medicine and simplified risk stratification tools.

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BACKGROUND: Coronary artery disease (CAD) is a leading global cause of mortality, yet the predictive accuracy of conventional risk models is limited. Here, we integrate conventional risk factors, polygenic risk scores, and large-scale proteomics to develop a unified model for enhanced CAD risk prediction. METHODS: Using data from UK Biobank, participants with plasma proteomics and genetic risk data were included after excluding prevalent CAD. Participants from England were split into training (n=32 330) and internal validation (n=13 857) sets, and Scotland/Wales participants formed an external validation set (n=5775). Incident CAD was ascertained from linked health records. A 202-protein proteomic risk score was derived by least absolute shrinkage and selection operator Cox regression, and CatBoost models were trained using conventional risk factors alone and with incremental addition of polygenic risk scores and protein proteomic risk scores; Shapley Additive Explanations-guided forward selection identified a compact protein panel. RESULTS: Across cohorts, the median age was 58 years and ∼45% were men. Protein proteomic risk score was dose-dependently associated with CAD risk. Compared with conventional risk factors alone, integrating polygenic risk scores and protein proteomic risk scores improved discrimination, with the area under the curve increasing from 0.750 (95% CI, 0.732-0.767) to 0.789 (95% CI, 0.772-0.805) in internal validation and from 0.717 (95% CI, 0.683-0.750) to 0.762 (95% CI, 0.732-0.791) in external validation. A 9-protein panel (GDF15 [growth differentiation factor 15], MMP12 [matrix metalloproteinase 12], NPPB [natriuretic peptide B], PGF [placental growth factor], REN [renin], ADGRG2 [adhesion G-protein coupled receptor], ACE2 [angiotensin-converting enzyme 2], CDCP1 [CUB domain-containing protein 1], CXCL17 [C-X-C motif chemokine ligand 17)]) captured most proteomic predictive information. CONCLUSIONS: Our findings demonstrate that integrating conventional risk factors, polygenic risk scores, and proteomic data improves CAD risk prediction. This study highlights the utility of proteomics in precision cardiovascular medicine and simplified risk stratification tools.

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Yuezhong Huang

first | Wenzhou Medical University | ORCID 0009-0005-0629-1456

Xiaoli Chen

middle | Wenzhou Medical University

Hao Zhang

middle | Wenzhou Medical University | ORCID 0009-0007-9202-7962

Zhanpei Bai

middle | Wenzhou Medical University

Yifan Shen

middle | Wenzhou Medical University

Daishan Zheng

middle | Wenzhou Medical University

Longyu Fang

middle | Wenzhou Medical University

Hongzi Song

middle | Wenzhou Medical University

He-Bei Gao

middle | Wenzhou Medical University | ORCID 0000-0002-0034-8475

Fan Lu

middle | Wenzhou Medical University | ORCID 0009-0002-4709-4385

Xiu‐Feng Huang

last | Wenzhou Medical University | ORCID 0000-0002-7852-6358

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BibTeX

@article{Huang2026Machine,
  title = {Machine Learning‐Driven Prediction of Coronary Artery Disease Risk Based on UK Biobank Plasma Proteomics},
  author = {Yuezhong Huang and Xiaoli Chen and Hao Zhang and Zhanpei Bai and Yifan Shen and Daishan Zheng and Longyu Fang and Hongzi Song and He-Bei Gao and Fan Lu and Xiu‐Feng Huang},
  journal = {Journal of the American Heart Association},
  year = {2026},
  doi = {10.1161/jaha.125.047248},
  url = {https://doi.org/10.1161/jaha.125.047248}
}

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