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Progress in research of risk prediction model for chronic kidney disease / 中华流行病学杂志
Chinese Journal of Epidemiology ; (12): 498-503, 2023.
Article 在 Zh | WPRIM | ID: wpr-969934
Responsible library: WPRO
ABSTRACT
Chronic kidney disease (CKD) is an important global public health problem that greatly threatens population health. Application of risk prediction model is a crucial way for the primary prevention of CKD, which can stratify the risk for developing CKD and identify high-risk individuals for more intensive interventions. By now, more than twenty risk prediction models for CKD have been developed worldwide. There are also four domestic risk prediction models developed for Chinese population. However, none of these models have been recommended in clinical guidelines yet. The existing risk prediction models have some limitations in terms of outcome definition, predictors, strategies for handling missing data, and model derivation. In the future, the applications of emerging biomarkers and polygenic risk scores as well as advances in machine learning methods will provide more possibilities for the further improvement of the model.
Subject(s)
全文: 1 索引: WPRIM 主要主题: Biomarkers / Risk Factors / Renal Insufficiency, Chronic 限制: Humans 语言: Zh 期刊: Chinese Journal of Epidemiology 年: 2023 类型: Article
全文: 1 索引: WPRIM 主要主题: Biomarkers / Risk Factors / Renal Insufficiency, Chronic 限制: Humans 语言: Zh 期刊: Chinese Journal of Epidemiology 年: 2023 类型: Article