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儿童肾功能评估:基于血清胱抑素C和体细胞质量的新型肾小球滤过率模型

Estimating renal function in children: a new GFR-model based on serum cystatin C and body cell mass.

作者信息

Andersen Trine Borup

机构信息

Department of Nuclear Medicine, Aarhus University Hospital, Aalborg Hospital, Hobrovej 18-22, Aalborg, Denmark.

出版信息

Dan Med J. 2012 Jul;59(7):B4486.

Abstract

This PhD thesis is based on four individual studies including 131 children aged 2-14 years with nephro-urologic disorders. The majority (72%) of children had a normal renal function (GFR > 82 ml/min/1.73 square metres), and only 8% had a renal function < 50% of the normal mean value. The present thesis´ main aims were: 1) to develop a more accurate GFR model based on a novel theory of body cell mass (BCM) and cystatin C (CysC); 2) to investigate the diagnostic performance in comparison to other models as well as serum CysC and creatinine; 3) to validate the new models precision and validity. The model´s diagnostic performance was investigated in study I as the ability to detect changes in renal function (total day-to-day variation), and in study IV as the ability to discriminate between normal and reduced function. The model´s precision and validity were indirectly evaluated in study II and III, and in study I accuracy was estimated by comparison to reference GFR. Several prediction models based on CysC or a combination of CysC and serum creatinine have been developed for predicting GFR in children. Despite these efforts to improve GFR estimates, no alternative to exogenous methods has been found and the Schwartz´s formula based on height, creatinine and an empirically derived constant is still recommended for GFR estimation in children. However, the inclusion of BCM as a possible variable in a CysC-based prediction model has not yet been explored. As CysC is produced at a constant rate from all nucleated cells we hypothesize that including BCM in a new prediction model will increase accuracy of the GFR estimate. Study I aimed at deriving the new GFR-prediction model based on the novel theory of CysC and BCM and comparing the performance to previously published models. The BCM-model took the form GFR (mL/min) = 10.2 × (BCM/CysC)E 0.40 × (height × body surface area/Crea)E 0.65. The model predicted 99% within ± 30% of reference GFR, and 67% within ±10%. This was higher than any other model. The present model also had the highest R E2 and the narrowest 95% limits of agreement. If replacing BCM with weight (Weight-model) the results were almost as convincing. The total day-to-day variation of the GFR-estimate (7.7%) was low. The two new models are, however, still not sufficiently accurate to replace exogenous markers when GFR must be determined with high accuracy. Study II aimed at determining biological variation and analytical precision of serum CysC and creatinine. The precision of CysC (1.7%), and creatinine (2.5%) was very good and the day-to-day variation of CysC and creatinine (within-subject variation between two days) also proved very low (6.4% for both analytes). Because of a relatively low ratio between within-subject variation and between-subject variation neither CysC nor creatinine seems qualified to discriminate between normal and reduced renal function, which was also confirmed in study IV. However, the relatively low total day-to-day variation of 6.6% (CysC) and 6.9% (creatinine) indicate that both are suitable for detecting changes in renal function over time. Study III aimed at determining biological variation and analytical precision of BCM and all other parameters given by measurement by bioimpedance spectroscopy (BIS). Depending on parameter the precision was 0.3-0.8% in children ≥ 6 years and 0.5-2.4% in children < 6 years with a statistically significant difference between the two age-groups (p < 0.001). Within-day variation was 1.1-2.8% and between-day variation 2.4-5.7%. The median value of three repeated measurements is recommended in order to avoid incorrect measurements. Study IV aimed at investigating the diagnostic performance of the BCM-model by: 1) Determining cut-off levels for a three-sided diagnostic procedure with the following outcomes: normal renal function, reduced renal function, indeterminable; 2) Calculating the diagnostic probabilities of reduced renal function for the indeterminable results. The lower the number of children in between cut-off levels, the better the diagnostic performance. The BCM-model resulted in the smallest percentage (39%) of indeterminate children in need for further investigation. In conclusion, with the models developed in the present thesis we are able to provide the clinician with both a reasonably accurate estimate of renal function and a probability of reduced renal function. Furthermore, the positive results from study II and III on precision and biological variation indicate that CysC, creatinine and BCM are very stable variables, which is an indirect validation of the BCM-model´s precision and validity. This is also reflected in the relatively low total day-to-day variation of the GFR-estimate.

摘要

本博士论文基于四项独立研究,涉及131名年龄在2至14岁之间患有肾泌尿系统疾病的儿童。大多数儿童(72%)肾功能正常(肾小球滤过率[GFR]>82毫升/分钟/1.73平方米),只有8%的儿童肾功能低于正常平均值的50%。本论文的主要目的是:1)基于一种新的体细胞质量(BCM)和胱抑素C(CysC)理论,开发一个更准确的GFR模型;2)与其他模型以及血清CysC和肌酐相比,研究其诊断性能;3)验证新模型的精度和有效性。在研究I中,研究了该模型检测肾功能变化(每日总变化)的诊断性能,在研究IV中,研究了该模型区分正常和降低功能的能力。在研究II和III中间接评估了该模型的精度和有效性,在研究I中,通过与参考GFR比较估计了准确性。已经开发了几种基于CysC或CysC与血清肌酐组合的预测模型来预测儿童的GFR。尽管做出了这些努力来改进GFR估计,但尚未找到替代外源性方法的方法,基于身高、肌酐和经验推导常数的施瓦茨公式仍然被推荐用于儿童GFR估计。然而,尚未探索将BCM作为基于CysC的预测模型中可能的变量纳入。由于CysC由所有有核细胞以恒定速率产生,我们假设在新的预测模型中纳入BCM将提高GFR估计的准确性。研究I旨在基于CysC和BCM的新理论推导新GFR预测模型,并将其性能与先前发表的模型进行比较。BCM模型的形式为GFR(毫升/分钟)=10.2×(BCM/CysC)^0.40×(身高×体表面积/肌酐)^0.65。该模型预测的结果有99%在参考GFR的±30%范围内,67%在±10%范围内。这高于任何其他模型。本模型还具有最高的R^2,一致性界限最窄。如果用体重代替BCM(体重模型),结果几乎同样令人信服。GFR估计值的每日总变化(7.7%)较低。然而,当必须高精度确定GFR时,这两个新模型仍不够准确,无法替代外源性标志物。研究II旨在确定血清CysC和肌酐的生物学变异和分析精度。CysC(1.7%)和肌酐(2.5%)的精度非常好,CysC和肌酐的每日变化(两天内的个体内变异)也非常低(两种分析物均为6.4%)。由于个体内变异与个体间变异的比率相对较低,CysC和肌酐似乎都没有资格区分正常和降低的肾功能,这在研究IV中也得到了证实。然而,相对较低的每日总变化6.6%(CysC)和6.9%(肌酐)表明两者都适合检测肾功能随时间的变化。研究III旨在确定BCM以及生物电阻抗光谱(BIS)测量给出的所有其他参数的生物学变异和分析精度。根据参数不同,6岁及以上儿童的精度为0.3 - 0.8%,6岁以下儿童为0.5 - 2.4%,两个年龄组之间存在统计学显著差异(p<0.001)。日内变异为1.1 - 2.8%,日间变异为2.4 - 5.7%。为避免测量错误,建议对三次重复测量的中位数进行测量。研究IV旨在通过以下方式研究BCM模型的诊断性能:1)确定三边诊断程序的截断水平,结果如下:肾功能正常、肾功能降低、无法确定;2)计算无法确定结果中肾功能降低的诊断概率。截断水平之间的儿童数量越少,诊断性能越好。BCM模型导致需要进一步调查的不确定儿童比例最小(39%)。总之,通过本论文中开发的模型,我们能够为临床医生提供肾功能的合理准确估计以及肾功能降低的概率。此外,研究II和III关于精度和生物学变异的积极结果表明,CysC、肌酐和BCM是非常稳定的变量,这是对BCM模型精度和有效性的间接验证。这也反映在GFR估计值相对较低的每日总变化中。

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