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*Renal Section, Salt Lake VA Healthcare System, Salt Lake City, Utah;
Division of Nephrology and Hypertension, and
Division of Clinical Epidemiology, University of Utah School of Medicine, Salt Lake City, Utah; and
Section of Decision Sciences and Clinical System Modeling, Division of General Medicine, University of Pittsburgh, Pittsburgh, Pennsylvania.
Correspondence to Dr. Srinivasan Beddhu, 85 North Medical Drive East, Rm 201, Salt Lake City, UT 84112; Phone: 801-585-3810; Fax: 801-581-4750;
| Abstract |
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| Introduction |
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The hypothesized associations of nutritional status and creatinine production with MDRD formula estimate of GFR are as follows. In malnourished patients with low muscle mass and low creatinine production, the Scr at initiation of dialysis will be low. If age, sex, race and BUN do not fully account for creatinine production and the MDRD estimate of GFR is inversely proportional to Scr, the MDRD GFR will be expected to be higher than the measured creatinine clearance in patients with low creatinine production. For the same reasons, in patients with high creatinine production, the MDRD GFR will be lower than the measured creatinine clearance. The overestimation of GFR in patients with low creatinine production (malnourished patients) and vice versa in patients with high creatinine production (well-nourished patients) might result in a spurious association of higher prevalence of malnutrition in patients with higher MDRD GFR compared with those with lower MDRD GFR. We examined this hypothesis in the Dialysis Morbidity Mortality Study (DMMS) Wave II patients with measured creatinine clearances reported in the Medical Evidence form.
| Materials and Methods |
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The DMMS II patient questionnaire data on demographics (age, gender, and race), cause of ESRD (diabetes or others), insurance status (Medicare or non-Medicare), comorbid conditions (coronary artery disease, cerebrovascular disease, peripheral vascular disease, congestive heart failure, malignancy, acquired immunodeficiency syndrome, chronic lung disease, and left ventricular hypertrophy), smoking, height, weight, and clinical diagnosis of malnutrition as determined by the dialysis unit personnel, and functional ability were used in this analysis (35 ). Medical Evidence form data on BUN, Scr, serum albumin, and 24-h creatinine clearance were also used (6).
Calculations for GFR and Creatinine Production
The Modification of Diet in Renal Disease Study (MDRD) equation [GFR = 270 x (Scr - 1.007) x (age - 0.18) x 0.775 if female x 1.18 if black x (BUN - 0.169)] was used to determine GFR values at the initiation of dialysis therapy (1,2,7 ). The measured 24-h urinary creatinine (g/d) was considered indicative of creatinine production and was calculated on the basis of the measured creatinine clearance and Scr reported in the Medical Evidence form as [creatinine clearance (ml/min) x Scr (mg/dl)]/70. Four creatinine production groups were defined by urinary creatinine quartiles.
Malnutrition was defined as a clinical diagnosis of malnutrition as recorded by dialysis unit personnel or serum albumin 2.9 g/dl (25th percentile) or BMI
19.2 kg/m2 (10th percentile). As lower BMI might reflect a muscular but thin individual, a stringent threshold for BMI was used to increase the specificity of BMI criteria for malnutrition.
The USRDS_ID variable enabled the linkage of Wave 2 data to other USRDS files (8). The treatment history, claims, and patients files provided data on follow-up periods, mortality, and transplantation (8). Patients were tracked until loss to follow-up, transplantation, death, or December 31, 1998.
Statistical Analyses
The differences in demographics, comorbidity, nutritional status, and functional status of DMMS patients with and without reported creatinine clearances were examined by
2 tests or ANOVA as appropriate. Linear regression was used to examine the association of creatinine production, age, gender, race, and BUN with Scr levels. The relationship of MDRD GFR with the reciprocal of Scr was examined graphically and by Pearson correlation. The MDRD GFR minus the measured creatinine clearances was plotted against creatinine production.
Paired groups t tests were used to compare MDRD GFR and measured creatinine clearances within each of the creatinine production quartiles. The differences in baseline characteristics, nutritional status, and subsequent death and transplantation among creatinine production quartiles were examined by
2 tests for trends or ANOVA to examine the biologic relevance of creatinine production.
A forward stepwise logistic regression model of demographics, cause of ESRD (diabetes or others), insurance status (Medicare or non-Medicare), comorbid conditions, and smoking history was used to identify factors independently associated with malnutrition at the initiation of dialysis. The association of MDRD GFR with malnutrition was examined by adding the MDRD GFR into the multivariable logistic regression model with and without measured 24-h urinary creatinine.
| Results |
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Of the 1356 patients with reported creatinine clearances, 1074 patients had non-missing data for age, gender, race, height, weight, BUN, Scr, and albumin and were further studied. Baseline clinical characteristics, nutritional and renal parameters, and outcomes in creatinine production quartiles are summarized in Table 1. Scr levels were higher in patients with higher creatinine production (Table 1). In a multivariable linear regression, this association was independent of age, gender, race, and BUN (Table 2). Despite lower Scr levels, the estimated creatinine clearances of low creatinine producers were lower than those of high creatinine producers (Table 1).
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In a multiple logistic regression model, inability to independently eat or ambulate, AIDS, and congestive heart failure were independently associated with malnutrition. When the MDRD GFR was added into the model, each 5-ml/min increase in GFR was associated with 21% higher odds of malnutrition (P = 0.046) (Table 3). However the association of MDRD GFR with malnutrition was no longer significant with further addition of creatinine production into the model (Table 3). On the other hand, creatinine production had an independent negative association with malnutrition (Table 3).
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| Discussion |
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Although true GFR (e.g. iothalamate or iohexol clearances) was not directly measured in this retrospective study, the fundamental assumptions underlying the MDRD equation were critically examined. If the fundamental assumptions of the MDRD formula are invalid in the extremes of creatinine production, GFR estimations by the MDRD formula in patients with low and high creatinine production are likely to be invalid. As creatinine clearance overestimates true GFR, it is quite likely that the actual GFR of the lowest creatinine production quartile was even lower than the measured creatinine clearance of 5.8 ml/min and not the 10.9 ml/min estimated by the MDRD formula (Table 1). The MDRD formula implies that all patients of a given age, gender, race, BUN, and Scr have the same GFR. For example, in two 65-yr-old white women with BUN of 70 mg% and Scr of 5 mg%, the GFR calculated by the MDRD formula will be the same (9.3 ml/min), even if the 24-h urinary creatinine excretion is 0.5 g/d in one and 1.5 g/d in another.
The MDRD formula has not been validated with true GFR measurements in patients with advanced renal failure and, more specifically, in patients at extremes of creatinine production. The National Kidney Foundation guidelines recommend that measuring 24-h creatinine clearance to assess GFR is not more reliable than estimating GFR from a prediction equation (1). However, these guidelines also state that important exceptions include estimation of GFR at initiation of dialysis and in individuals with variation in dietary intake or muscle mass, as these factors are not specifically taken into account in GFR prediction equations. Nonetheless, it has been suggested that the GFR prediction equations be used to accurately time the initiation of renal replacement therapy (12). In addition, the MDRD estimate is also used by the United States Renal Data System to calculate GFR at the initiation of dialysis (13).
In the African American Study of Kidney Disease and Hypertension (AASK), the correlation of creatinine clearance with GFR determined by iothalamate clearance was quite low (R2 = 0.59) (12). Because of tubular secretion, creatinine clearance consistently overestimates true GFR; it would therefore be expected that the correlation coefficient of creatinine clearance with true GFR would be low. In the MDRD study, when creatinine clearance was corrected for overestimation of GFR by multiplying creatinine clearance by 0.81, the correlation coefficient of the corrected creatinine clearance with iothalamate clearance was quite high (R2 = 0.87) (2).
The error in estimation of true GFR from creatinine clearance is likely consistent overestimation of GFR regardless of the magnitude of creatinine production, as estimation of creatinine clearance accounts for creatinine production but not tubular secretion. On the other hand, the MDRD GFR overestimates GFR in patients with low creatinine production and underestimates GFR in patients with high creatinine production. Thus, misclassification bias for early versus late initiation of dialysis is greater with the MDRD estimate than with creatinine clearance. Therefore, the present results support the National Kidney Foundation recommendation to use creatinine clearance to guide the initiation of dialysis (1), as the use of MDRD estimate of GFR at initiation of dialysis might result in biases.
One of the major issues with the measurement of creatinine clearance is the accuracy of the 24-h urine collection (12). Inaccurate 24-h urine collection will bias against finding biologically plausible associations of creatinine production with baseline characteristics and subsequent outcomes. There are several reasons to believe that the 24-h urine collections reported in the Medical Evidence form were reliable. First, as would be expected, patients with lower creatinine production were older, had more comorbidity, and worse functional status. Second, the measured Scr levels were lower in patients with measured lower creatinine production. Finally, if the 24-h urinary collection were inadequate, creatinine production would not be strongly associated with subsequent transplantation and death, and controlling for urinary creatinine would not abolish the association of higher MDRD GFR with malnutrition.
It has been suggested that as much as two thirds of total daily creatinine excretion can occur by extrarenal excretion in patients with advanced renal failure (14). However, our data suggest that 24-h urinary creatinine excretion strongly correlated with malnutrition (Table 3). These findings in incident dialysis patients are similar to the earlier findings by Ohkawa et al. (15) that malnutrition strongly correlated with thigh muscle mass quantified by computed tomography and creatinine production (determined from the sum of creatinine present in the spent dialysate and estimated metabolic degradation) in anuric hemodialysis patients. Therefore, even in patients with advanced renal failure, 24-h urinary creatinine excretion is likely an accurate reflection of muscle mass and creatinine generation.
Only about a third of patients initiated on dialysis had creatinine clearances reported. These patients were older and had more comorbidity and worse functional and nutritional status compared with those without reported creatinine clearances. However, the anticipated doubling of the US ESRD population over the next decade will primarily be due to older patients with significant comorbidity (13). Therefore, the results of this study should be generalizable to a large proportion of the rapidly growing segment of the US ESRD population. On the other hand, the MDRD equation was derived and validated in the MDRD cohort with a mean age of 51 ± 13 yr and only 3% diabetes (2,16 ). This equation was also validated in the AASK population with a mean age of 54 ± 10 yr, 100% African-Americans, and 0% diabetes (12). Therefore, the MDRD and AASK populations are very different from the USRDS DMMS II population, a nationally representative sample of incident dialysis patients. Thus the applicability of a formula derived with regression techniques in a very different population to patients with advanced renal failure is questionable.
There are several limitations to our study. First, the limitations of this study include those of all retrospective observational studies that rely on existent databases. Second, as noted above, only a third of patients had reported measured creatinine clearances, and this might limit the generalizability. Third, the associations noted might be biased by the differential exclusion (due to nonavailability of data) of patients characterized by levels of Scr and/or creatinine production.
We conclude that the assumptions of the MDRD estimate of GFR are invalid in patients with advanced renal failure with high and low creatinine production. These result in a spurious association of malnutrition with higher MDRD GFR. Thus, the application of MDRD formula in patients with advanced renal failure introduces biases. In these patients, creatinine clearance or other measurement techniques should be used instead to estimate GFR.
| Acknowledgments |
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| References |
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