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A curated arterial stiffness dataset for vascular age prediction in China.

Chen X, Ding P, He M, Zhang S, Tang Q, Wang G, Tian Z, An H.

Scientific data · 2026

Abstract

Arterial stiffness is an important biomarker of cardiovascular health, and vascular age (VA) prediction provides additional value beyond chronological age. Here we present a curated arterial stiffness dataset comprising 36,223 participants aged 30-80 years from China. To benchmark its utility for VA modelling, we evaluated the Klemera-Doubal Method (KDM) and six Artificial Intelligence (AI) models: multiple linear regression, LASSO, random forest, support vector regression, XGBoost, and a deep neural network. Results showed that the dataset enables VA prediction using both statistical and learning-based approaches. Across both male and female cohorts, KDM showed the lowest prediction error under the current benchmark setting, while several nonlinear learning-based models achieved better performance than the linear baselines. Among the learning-based methods evaluated here, SVR and XGBoost showed comparatively strong performance. This dataset provides a useful open resource for vascular aging research, cardiovascular risk assessment, and methodological benchmarking.

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Provenance

Source
Europe PMC
DOI
10.1038/s41597-026-07276-2
Canonical
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Fetched
2026-07-02 MST

Cite this

APA
X, C., P, D., M, H., S, Z., Q, T., G, W., Z, T., &amp; H., A. (2026). A curated arterial stiffness dataset for vascular age prediction in China. <em>Scientific data</em>. https://doi.org/10.1038/s41597-026-07276-2
Vancouver
X C, P D, M H, S Z, Q T, G W, et al. A curated arterial stiffness dataset for vascular age prediction in China. Scientific data. 2026. doi:10.1038/s41597-026-07276-2.
BibTeX
@article{chen2026Acurat, title = {A curated arterial stiffness dataset for vascular age prediction in China.}, author = {Chen X and Ding P and He M and Zhang S and Tang Q and Wang G and Tian Z and An H.}, journal = {Scientific data}, year = {2026}, doi = {10.1038/s41597-026-07276-2}, }

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