Levey A S, Bosch J P, Lewis J B, Greene T, Rogers N, Roth D
New England Medical Center, Boston, MA 02111, USA.
Ann Intern Med. 1999 Mar 16;130(6):461-70. doi: 10.7326/0003-4819-130-6-199903160-00002.
Serum creatinine concentration is widely used as an index of renal function, but this concentration is affected by factors other than glomerular filtration rate (GFR).
To develop an equation to predict GFR from serum creatinine concentration and other factors.
Cross-sectional study of GFR, creatinine clearance, serum creatinine concentration, and demographic and clinical characteristics in patients with chronic renal disease.
1628 patients enrolled in the baseline period of the Modification of Diet in Renal Disease (MDRD) Study, of whom 1070 were randomly selected as the training sample; the remaining 558 patients constituted the validation sample.
The prediction equation was developed by stepwise regression applied to the training sample. The equation was then tested and compared with other prediction equations in the validation sample.
To simplify prediction of GFR, the equation included only demographic and serum variables. Independent factors associated with a lower GFR included a higher serum creatinine concentration, older age, female sex, nonblack ethnicity, higher serum urea nitrogen levels, and lower serum albumin levels (P < 0.001 for all factors). The multiple regression model explained 90.3% of the variance in the logarithm of GFR in the validation sample. Measured creatinine clearance overestimated GFR by 19%, and creatinine clearance predicted by the Cockcroft-Gault formula overestimated GFR by 16%. After adjustment for this overestimation, the percentage of variance of the logarithm of GFR predicted by measured creatinine clearance or the Cockcroft-Gault formula was 86.6% and 84.2%, respectively.
The equation developed from the MDRD Study provided a more accurate estimate of GFR in our study group than measured creatinine clearance or other commonly used equations.
血清肌酐浓度被广泛用作肾功能指标,但该浓度受肾小球滤过率(GFR)以外的因素影响。
建立一个根据血清肌酐浓度及其他因素预测GFR的方程。
对慢性肾病患者的GFR、肌酐清除率、血清肌酐浓度以及人口统计学和临床特征进行横断面研究。
1628例参与肾病饮食改良(MDRD)研究基线期的患者,其中1070例被随机选为训练样本;其余558例患者构成验证样本。
通过逐步回归分析训练样本建立预测方程,然后在验证样本中对该方程进行检验并与其他预测方程比较。
为简化GFR预测,该方程仅纳入人口统计学和血清变量。与较低GFR相关的独立因素包括较高的血清肌酐浓度、年龄较大、女性、非黑人种族、较高的血清尿素氮水平和较低的血清白蛋白水平(所有因素P<0.001)。多元回归模型解释了验证样本中GFR对数变异的90.3%。实测肌酐清除率高估GFR 19%,Cockcroft-Gault公式预测的肌酐清除率高估GFR 16%。校正此高估后,实测肌酐清除率或Cockcroft-Gault公式预测的GFR对数变异百分比分别为86.6%和84.2%。
在我们的研究组中,MDRD研究建立的方程比实测肌酐清除率或其他常用方程能更准确地估计GFR。