# Chronic kidney disease onset, progression, and cardiovascular outcomes: proteomics informs biology and risk stratification

**Authors:** Jijuan Zhang, Hancheng Yu, Xingyue Song, Xianli Li, Jinchi Xie, Yuxiang Wang, Yue Li, Kun Xu, Gang Liu, Yunfei Liao, Xiong-Zhong Ruan, An Pan, Tingting Geng

PMC · DOI: 10.1186/s12933-025-03049-0 · 2026-01-20

## TL;DR

This study uses proteomics to uncover shared biological pathways and risk factors between chronic kidney disease and cardiovascular diseases, improving risk prediction and understanding of disease biology.

## Contribution

The study identifies shared and unique proteins across CKD and cardiovascular diseases, offering new insights into disease biology and enhancing risk stratification models.

## Key findings

- 598 proteins were shared across ≥2 diseases, with 279 shared specifically between CKD and heart failure.
- Incorporating predictive proteins improved risk prediction models with Harrell’s C indices of 0.750–0.818.
- Key proteins like POLR2F and IGFBP2 showed genetic associations with cardiovascular and renal diseases.

## Abstract

Large-scale proteomics provides an opportunity to understand chronic kidney disease (CKD) and cardiovascular disease, yet research in this field is limited. This study utilized proteomics to inform biology and risk stratification for these diseases.

This cohort study included 44,779 participants free of prevalent CKD, and 3,749–4,272 participants with prevalent CKD from the UK Biobank. The Olink Explore 3072 platform quantified 2,923 plasma proteins. Cox proportional hazards models were used to assess associations of proteins with kidney diseases including CKD and end stage kidney disease, and cardiovascular diseases including coronary heart disease (CHD), stroke, and heart failure (HF). Mendelian randomization examined genetic associations, pathway analyses identified biological pathways, and predictive models were developed for incident diseases.

Median follow-up periods were 12.2–12.6 years. We identified 598 (20.5%) proteins shared across ≥ 2 diseases, with 595 (20.4%) showing consistent directions of associations, and 471 (16.1%) unique to a single disease. CKD and HF specifically shared the largest number of 279 (9.6%) proteins. POLR2F, TNFRSF10B, and IGFBP2 were positively associated with all five diseases, with Mendelian randomization supporting genetic associations of POLR2F with CHD and IGFBP2 with hypertensive renal disease. Pathway analyses highlighted cell adhesion, signal transduction, and cytokine-cytokine receptor interaction for disease-associated proteins. Incorporating predictive proteins into clinical models improved risk prediction for CKD, CHD, stroke, and HF, yielding Harrell’s C indices of 0.750–0.818 (corresponding increases of 0.027–0.090).

This study deepens insights into disease biology and provides a foundation for early detection and integrated risk stratification in CKD and cardiovascular disease.

The online version contains supplementary material available at 10.1186/s12933-025-03049-0.

## Linked entities

- **Proteins:** POLR2F (RNA polymerase II, I and III subunit F), TNFRSF10B (TNF receptor superfamily member 10b), IGFBP2 (insulin like growth factor binding protein 2)
- **Diseases:** chronic kidney disease (MONDO:0005300), cardiovascular disease (MONDO:0004995), coronary heart disease (MONDO:0005010), stroke (MONDO:0005098), heart failure (MONDO:0005252), hypertensive renal disease (MONDO:0024633)

## Full-text entities

- **Genes:** TNFRSF10B (TNF receptor superfamily member 10b) [NCBI Gene 8795] {aka CD262, DR5, KILLER, KILLER/DR5, TRAIL-R2, TRAILR2}, IGFBP2 (insulin like growth factor binding protein 2) [NCBI Gene 3485] {aka IBP2, IGF-BP53}, POLR2F (RNA polymerase II, I and III subunit F) [NCBI Gene 5435] {aka HRBP14.4, POLRF, RPABC14.4, RPABC2, RPB14.4, RPB6}
- **Diseases:** CHD (MESH:D003327), HF (MESH:D006333), cardiovascular disease (MESH:D002318), kidney diseases (MESH:D007674), CKD (MESH:D051436), hypertensive renal disease (MESH:D006977), end stage kidney disease (MESH:D007676), stroke (MESH:D020521)

## Figures

5 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12903537/full.md

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Source: https://tomesphere.com/paper/PMC12903537