2型糖尿病患者肾功能下降的预测模型:研究方案。

Mariella Gregorich, Andreas Heinzel, Michael Kammer, Heike Meiselbach, Carsten Böger, Kai-Uwe Eckardt, Gert Mayer, Georg Heinze, Rainer Oberbauer
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引用次数: 6

摘要

背景:慢性肾脏疾病(CKD)是糖尿病患者公认的并发症。大约四分之一的糖尿病流行患者表现为CKD阶段为3或更高,个体的进展过程是高度可变的。因此,明确需要识别快速进展的高风险患者并实施预防策略。然而,现有的肾功能衰退预测模型,其目的是在建立模型之前,通过纵向波动的eGFR值,通过最小二乘斜率的分类来定义风险层,人为地将患者分组,从而评估风险,从而导致预测精度和准确性的降低。方法:本研究方案描述了一个预测2型糖尿病(DM2)高加索患者肾功能下降纵向进展的模型的开发和验证。为了开发和内外验证,将使用两项前瞻性多中心观察性研究(PROVALID和GCKD)。在基线和所有计划随访时获得的估计肾小球滤过率(eGFR)将是纵向结果。在基线访问时可获得的人口统计、临床信息和实验室测量将被用作预测因素,此外还将使用随机国家特定拦截来解释聚集数据。将拟合一个多变量混合效应模型,包括临床变量的主要效应及其与时间的相互作用。在实际应用中,该模型可用于根据基线eGFR值获得eGFR轨迹的个性化预测。最后的模型将使用第三个前瞻性队列(DIACORE)进行外部验证。最终的预测模型将通过一个R闪亮的web应用程序的实现公开发布。讨论:我们提出的最先进的方法将采用多个多中心的研究队列,研究对象是基线时处于不同CKD阶段的DM2患者,与以前的模型相比,这些患者接受了糖尿病肾病的现代治疗策略。因此,我们预计多变量预测模型将有助于作为一种额外的信息工具来确定患者特异性肾功能的进展,并为早期识别DM2患者快速进展的高风险个体提供有用的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A prediction model for the decline in renal function in people with type 2 diabetes mellitus: study protocol.

Background: Chronic kidney disease (CKD) is a well-established complication in people with diabetes mellitus. Roughly one quarter of prevalent patients with diabetes exhibit a CKD stage of 3 or higher and the individual course of progression is highly variable. Therefore, there is a clear need to identify patients at high risk for fast progression and the implementation of preventative strategies. Existing prediction models of renal function decline, however, aim to assess the risk by artificially grouped patients prior to model building into risk strata defined by the categorization of the least-squares slope through the longitudinally fluctuating eGFR values, resulting in a loss of predictive precision and accuracy.

Methods: This study protocol describes the development and validation of a prediction model for the longitudinal progression of renal function decline in Caucasian patients with type 2 diabetes mellitus (DM2). For development and internal-external validation, two prospective multicenter observational studies will be used (PROVALID and GCKD). The estimated glomerular filtration rate (eGFR) obtained at baseline and at all planned follow-up visits will be the longitudinal outcome. Demographics, clinical information and laboratory measurements available at a baseline visit will be used as predictors in addition to random country-specific intercepts to account for the clustered data. A multivariable mixed-effects model including the main effects of the clinical variables and their interactions with time will be fitted. In application, this model can be used to obtain personalized predictions of an eGFR trajectory conditional on baseline eGFR values. The final model will then undergo external validation using a third prospective cohort (DIACORE). The final prediction model will be made publicly available through the implementation of an R shiny web application.

Discussion: Our proposed state-of-the-art methodology will be developed using multiple multicentre study cohorts of people with DM2 in various CKD stages at baseline, who have received modern therapeutic treatment strategies of diabetic kidney disease in contrast to previous models. Hence, we anticipate that the multivariable prediction model will aid as an additional informative tool to determine the patient-specific progression of renal function and provide a useful guide to early on identify individuals with DM2 at high risk for rapid progression.

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