利用患者层面的模拟,开发并验证慢性肾病进展模型。

IF 3 3区 医学 Q1 UROLOGY & NEPHROLOGY Renal Failure Pub Date : 2024-12-01 Epub Date: 2024-10-21 DOI:10.1080/0886022X.2024.2406402
Mafalda Ramos, Laetitia Gerlier, Anastasia Uster, Louise Muttram, Dominik Steubl, Andrew H Frankel, Mark Lamotte
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引用次数: 0

摘要

慢性疾病进展模型适用于几种高发疾病。对于慢性肾脏病(CKD),现有进展模型的范围仅限于肾衰竭和主要心血管(CV)事件的风险。本项目旨在开发一种全面的慢性肾脏病进展模型(CKD-PM),以模拟慢性肾脏病进展风险和慢性肾脏病患者的各种并发症。在选择风险因素时参考了一系列文献综述,并确定了肾脏替代疗法 (KRT)、冠心病事件、其他 CKD 相关并发症和死亡率的现有风险方程/算法。风险方程和转换概率主要来源于美国和国际大型 CKD 登记处的出版物。根据 "肾脏病改善全球结果 "类别所定义的健康状态,建立了患者级别的状态转换模型。通过比较模型开发中使用的源队列(内部验证)和其他队列(外部验证)的预测结果与观察结果,对模型进行了验证。CKD-PM 的建模特性令人满意。无需校准就能准确预测全因死亡率和冠心病死亡率,而通过 CKD 特定方程预测冠心病事件则需要使用校准因子来平衡时间依赖性风险和基线风险。与外部值相比,预测的估计肾小球滤过率(eGFR)和尿白蛋白-肌酐比值的年度变化是可以接受的。用于 KRT 方程的灵活的 eGFR 阈值能够准确预测这些事件。该 CKD-PM 具有可靠的建模特性。内部和外部验证均显示了可靠的结果。
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Development and validation of a chronic kidney disease progression model using patient-level simulations.

Chronic disease progression models are available for several highly prevalent conditions. For chronic kidney disease (CKD), the scope of existing progression models is limited to the risk of kidney failure and major cardiovascular (CV) events. The aim of this project was to develop a comprehensive CKD progression model (CKD-PM) that simulates the risk of CKD progression and a broad range of complications in patients with CKD. A series of literature reviews informed the selection of risk factors and identified existing risk equations/algorithms for kidney replacement therapy (KRT), CV events, other CKD-related complications, and mortality. Risk equations and transition probabilities were primarily sourced from publications produced by large US and international CKD registries. A patient-level, state-transition model was developed with health states defined by the Kidney Disease Improving Global Outcomes categories. Model validation was performed by comparing predicted outcomes with observed outcomes in the source cohorts used in model development (internal validation) and other cohorts (external validation). The CKD-PM demonstrated satisfactory modeling properties. Accurate prediction of all-cause and CV mortality was achieved without calibration, while prediction of CV events through CKD-specific equations required implementation of a calibration factor to balance time-dependent versus baseline risk. Predicted annual changes in estimated glomerular filtration rate (eGFR) and urine albumin-creatinine ratio were acceptable in comparison to external values. A flexible eGFR threshold for KRT equations enabled accurate prediction of these events. This CKD-PM demonstrated reliable modeling properties. Both internal and external validation revealed robust outcomes.

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来源期刊
Renal Failure
Renal Failure 医学-泌尿学与肾脏学
CiteScore
3.90
自引率
13.30%
发文量
374
审稿时长
1 months
期刊介绍: Renal Failure primarily concentrates on acute renal injury and its consequence, but also addresses advances in the fields of chronic renal failure, hypertension, and renal transplantation. Bringing together both clinical and experimental aspects of renal failure, this publication presents timely, practical information on pathology and pathophysiology of acute renal failure; nephrotoxicity of drugs and other substances; prevention, treatment, and therapy of renal failure; renal failure in association with transplantation, hypertension, and diabetes mellitus.
期刊最新文献
The use of urinary kidney injury molecule-1 and neutrophil gelatinase-associated lipocalin for diagnosis of hepato-renal syndrome in advanced cirrhotic patients. Identification of common and specific fibrosis-related genes in three common chronic kidney diseases. A Mendelian randomization study: physical activities and chronic kidney disease. Association between normal saline infusion volume in the emergency department and acute kidney injury in heat stroke patients: a multicenter retrospective study. Association of frequent intradialytic hypotension with the clinical outcomes of patients on hemodialysis: a prospective cohort study.
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