Author
Listed:
- Yuhui Zhang
(Peking University First Hospital
Peking University
Ministry of Health of China)
- Damin Xu
(Peking University First Hospital
Peking University
Ministry of Health of China)
- Jianwei Gao
(Digital Health China Technologies Co. Ltd)
- Ruiguo Wang
(Digital Health China Technologies Co. Ltd)
- Kun Yan
(Peking University)
- Hong Liang
(Peking University)
- Juan Xu
(Digital Health China Technologies Co. Ltd)
- Youlu Zhao
(Peking University First Hospital
Peking University
Ministry of Health of China)
- Xizi Zheng
(Peking University First Hospital
Peking University
Ministry of Health of China)
- Lingyi Xu
(Peking University First Hospital
Peking University
Ministry of Health of China)
- Jinwei Wang
(Peking University First Hospital
Peking University
Ministry of Health of China)
- Fude Zhou
(Peking University First Hospital
Peking University
Ministry of Health of China)
- Guopeng Zhou
(Peking University First Hospital)
- Qingqing Zhou
(Peking University First Hospital
Peking University
Ministry of Health of China)
- Zhao Yang
(Peking University First Hospital)
- Xiaoli Chen
(Taiyuan Central Hospital)
- Yulan Shen
(Beijing Miyun District Hospital)
- Tianrong Ji
(The Second Affiliated Hospital of Harbin Medical University
Harbin Medical University)
- Yunlin Feng
(Sichuan Provincial People’s Hospital
University of Electronic Science and Technology of China)
- Ping Wang
(Peking University
Ministry of Education)
- Jundong Jiao
(The Second Affiliated Hospital of Harbin Medical University
Harbin Medical University)
- Li Wang
(Sichuan Provincial People’s Hospital
University of Electronic Science and Technology of China)
- Jicheng Lv
(Peking University First Hospital
Peking University
Ministry of Health of China)
- Li Yang
(Peking University First Hospital
Peking University
Ministry of Health of China)
Abstract
Early prediction of acute kidney injury (AKI) may provide a crucial opportunity for AKI prevention. To date, no prediction model targeting AKI among general hospitalized patients in developing countries has been published. Here we show a simple, real-time, interpretable AKI prediction model for general hospitalized patients developed from a large tertiary hospital in China, which has been validated across five independent, geographically distinct, different tiered hospitals. The model containing 20 readily available variables demonstrates consistent, high levels of predictive discrimination in validation cohort, with AUCs for serum creatinine-based AKI and severe AKI within 48 h ranging from 0.74–0.85 and 0.83–0.90 for transported models and from 0.81–0.90 and 0.88–0.95 for refitted models, respectively. With optimal probability cutoffs, the refitted model could predict AKI at a median of 72 (24–198) hours in advance in internal validation, and 54–90 h in advance in external validation. Broad application of the model in the future may provide an effective, convenient and cost-effective approach for AKI prevention.
Suggested Citation
Yuhui Zhang & Damin Xu & Jianwei Gao & Ruiguo Wang & Kun Yan & Hong Liang & Juan Xu & Youlu Zhao & Xizi Zheng & Lingyi Xu & Jinwei Wang & Fude Zhou & Guopeng Zhou & Qingqing Zhou & Zhao Yang & Xiaoli , 2025.
"Development and validation of a real-time prediction model for acute kidney injury in hospitalized patients,"
Nature Communications, Nature, vol. 16(1), pages 1-17, December.
Handle:
RePEc:nat:natcom:v:16:y:2025:i:1:d:10.1038_s41467-024-55629-5
DOI: 10.1038/s41467-024-55629-5
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