专家学者_山东第一医科大学机构知识库
专家学者_山东第一医科大学机构知识库
高级检索 在检索结果中检索
全部字段 题名 作者 关键词 摘要 学术ID
An explainable machine-learning model for predicting persistent sepsis associated acute kidney injury: development, validation, and comparison with CCL14
作者
Wei Jiang, Yaosheng Zhang, Jiayi Weng, Lin Song, Siqi Liu, Xianghui Li, Shiqi Xu, Keran Shi, Luanluan Li, Chuanqing Zhang, Jing Wang, Quan Yuan, Yongwei Zhang, Jun Shao, Jiangquan Yu, Ruiqiang Zheng
作者单位
Affiliations 1 Department of Critical Care Medicine, Northern Jiangsu People's hospital affiliated to Yangzhou University, No. 98 Nantong West Road, Yangzhou, CN. 2 School of Clinical and Basic Medicine, Shandong First Medical University & Shandong Academy of Medical Sciences, Jinan, CN. 3 School of Economics and Management, Beijing Jiao Tong University, Beijing, CN.
刊名
Journal of medical Internet research
年份
2025
ISSN
1438-8871
摘要
Background: Persistent sepsis-associated acute kidney injury portends worse clinical outcomes and remains a therapeutic challenge for clinicians. Early identification and prediction of persistent SA-AKI is crucial. Objective: The aim of this study was to develop and validate an interpretable machine learning model that predicts persistent SA-AKI, and to compare its diagnostic performance with CCL14 in a prospective cohort. Methods: Four retrospective cohorts and one prospective cohort were use...更多
文献类型
期刊
列表公用js 卡片页统计
专家学者_山东第一医科大学机构知识库
卡片页统计