Address correspondence to D.B. Barr, Centers for Disease Control and Prevention, 4770 Buford Hwy, Mailstop F17, Atlanta, GA 30341 USA. Telephone: (770) 488-7886. Fax: (770) 488-0142. E-mail:
We thank the National Center for Health Statistics for their thorough review and thoughtful input into this article.
The authors declare they have no competing financial interests.
Biologic monitoring (i.e., biomonitoring) is used to assess human exposures to environmental and workplace chemicals. Urinary biomonitoring data typically are adjusted to a constant creatinine concentration to correct for variable dilutions among spot samples. Traditionally, this approach has been used in population groups without much diversity. The inclusion of multiple demographic groups in studies using biomonitoring for exposure assessment has increased the variability in the urinary creatinine levels in these study populations. Our objectives were to document the normal range of urinary creatinine concentrations among various demographic groups, evaluate the impact that variations in creatinine concentrations can have on classifying exposure status of individuals in epidemiologic studies, and recommend an approach using multiple regression to adjust for variations in creatinine in multivariate analyses. We performed a weighted multivariate analysis of urinary creatinine concentrations in 22,245 participants of the Third National Health and Nutrition Examination Survey (1988–1994) and established reference ranges (10th–90th percentiles) for each demographic and age category. Significant predictors of urinary creatinine concentration included age group, sex, race/ethnicity, body mass index, and fat-free mass. Time of day that urine samples were collected made a small but statistically significant difference in creatinine concentrations. For an individual, the creatinine-adjusted concentration of an analyte should be compared with a “reference” range derived from persons in a similar demographic group (e.g., children with children, adults with adults). For multiple regression analysis of population groups, we recommend that the analyte concentration (unadjusted for creatinine) should be included in the analysis with urinary creatinine added as a separate independent variable. This approach allows the urinary analyte concentration to be appropriately adjusted for urinary creatinine and the statistical significance of other variables in the model to be independent of effects of creatinine concentration.
Biologic monitoring (i.e., biomonitoring) is used to assess human exposures to environmental and workplace chemicals. The most commonly used matrices for biomonitoring are blood (and its components, e.g., serum and plasma) and urine. The average blood volume of an individual changes an average of 80 mL/kg body weight (
Urine also is a widely used matrix for biomonitoring, especially for nonpersistent chemicals (i.e., chemicals that have short biologic half-lives), such as some current-use pesticides, metals, and drugs. One of the major advantages of using urine in biomonitoring is its ease of collection for spot or grab (untimed) urine samples but not for 24-hr urine voids, because 24-hr collection can be cumbersome, often resulting in improper or incomplete collection. Therefore, spot urine samples, whether first-morning voids or “convenience” samples, are generally used for biomonitoring. The major disadvantages of spot urine samples include the variability in the volume of urine and the concentrations of endogenous and exogenous chemicals from void to void. How to best adjust the urinary concentrations of environmental chemicals in a manner analogous to the adjustment of the concentrations of lipophilic chemicals in blood samples remains a subject of research.
Variations in urinary analyte concentrations from changing water content in urine have been eliminated using urinary excretion rate (UER) calculations (
Urinary creatinine concentrations, specific gravity, and osmolality are common methods for adjusting dilution and for determining whether a spot urine sample is valid for assessing chemical exposures. The most widely used method is creatinine adjustment that involves dividing the analyte concentration (micrograms analyte per liter urine) by the creatinine concentration (grams creatinine per liter urine). Analyte results are then reported as weight of analyte per gram of creatinine (micrograms analyte per gram creatinine).
Many studies have documented that creatinine-adjusted urinary metabolite concentrations correlate better with blood, serum, or plasma concentrations of the parent chemical than the unadjusted concentrations, suggesting that creatinine-adjusted analyte concentrations may serve as good surrogates for size-related dose (
Creatinine concentrations also are used to determine whether the spot urinary sample is valid. The guidelines of the World Health Organization (WHO) for valid urine samples for occupational monitoring often are used. The WHO recommends that if a sample is too dilute (creatinine concentration < 30 mg/dL) or too concentrated (creatinine concentration > 300 mg/dL), another urine void should be collected (
Urine creatinine concentrations were used to adjust the urinary concentrations of pesticides and metabolites of pesticides and phthalates in subsets of adults participating in NHANES III. These “creatinine-corrected” concentrations (micrograms analyte per gram creatinine) were reported in addition to the unadjusted concentrations in micrograms analyte per liter urine (
Because urinary creatinine concentrations are so widely used to adjust or correct urinary concentrations of environmental and workplace chemicals or their metabolites, the formation of urinary creatinine and the ways in which various factors may affect its concentration are important to review. Creatinine is a waste product formed by the spontaneous, essentially irreversible dehydration of body creatine and creatine phosphate from muscle metabolism. A total of 94–98% of total creatine is accumulated within skeletal muscle. The rate of creatinine formation is fairly constant, with approximately 2% of body creatine converted to creatinine every 24 hr; this rate decreases with age in adults.
Creatinine is cleared from the body through the kidney primarily by glomerular filtration. However, 15–20% of the creatinine in urine can occur by active secretion from the blood through the renal tubules (
Because of the relatively constant excretion rate of creatinine into the urine (which makes urinary creatinine concentration inversely proportional to urine flow rate), creatinine adjustment has been used to normalize analyte concentrations in spot samples for occupational and environmental exposure monitoring. This approach reportedly works well for individual occupational exposure analysis (e.g., preshift and postshift samples from the same person) if the analyte measured behaves similarly to creatinine in the kidney (
Urinary creatinine concentration data have been used to adjust urinary concentrations of environmental and workplace chemicals, primarily in adults. Thus, most of the published urinary creatinine concentration data are for adults. However, as more emphasis is placed on children’s health issues and assessment of their exposures to environmental contaminants, biomonitoring of younger populations is also increasing (
Our study objectives were to document the normal range of urinary creatinine concentrations among various demographic groups, evaluate the influence demographic variations in creatinine concentrations can have on biologic monitoring measurements, and explore methods to appropriately adjust urinary analytes using creatinine that take into account demographic differences in urinary creatinine levels. In this article, we present urinary creatinine concentrations in samples collected during 1988–1994 throughout the United States from NHANES III participants. We describe the distribution of urinary creatinine concentrations within this population by age, sex, and race/ethnicity for persons ≥6 years of age. We also examine other factors that can affect urinary creatinine concentrations, such as body mass index (BMI), fat-free mass (FFM), and health status: kidney function, hyperthyroidism, hypertension, and diabetes (
NHANES III, which was conducted by the National Center for Health Statistics (NCHS) of the Centers for Disease Control and Prevention (CDC), was a 6-year survey during 1988–1994 designed to measure the health and nutrition status of the civilian, noninstitutionalized U.S. population ≥2 months of age. National population estimates and estimates for the three largest racial/ethnic subgroups in the U.S. population (non-Hispanic white, non-Hispanic black, and Mexican American) can be derived from each of the two individual 3-year phases (1988–1991 and 1992–1994) and from the full 6-year survey.
Sampling selection for NHANES III was based on a complex multistage area probability design. Children younger than 5 years, adults ≥60 years of age, non-Hispanic blacks, and Mexican Americans were oversampled to allow an adequate number of sample persons in these demographic groups from which population-based estimates could be derived. However, urine samples were not collected for children < 6 years of age. Data were collected through a household interview, and a standardized physical examination was conducted in a mobile examination center. Urine specimens for analyses, including those for measuring creatinine concentrations, were collected during this examination throughout the day. Pre-examination procedures depended on the age and health status of the individual. For example, persons > 12 years of age were asked to fast for 2–12 hr, depending on appointment times, and persons with known diabetes or < 12 years of age were asked to eat a normal diet before the examination. Sociodemographic information and medical histories of the survey participants and their families were collected during the household interviews. Details of the sample design have been published (
During the physical examinations, urine specimens were collected, stored cold (2–4°C) or frozen, and sent to the Fairview University Medical Center (Minneapolis, MN), where they were analyzed for creatinine using an automated colorimetric determination based on a modified Jaffe reaction using a Beckman Synchron AS/ASTRA clinical analyzer (Beckman Instruments, Brea, CA) (
Age was reported at the time of the household interview as the age in years at the last birthday. Age categories used in our statistical analyses were 6–11, 12–19, 20–29, 30–39, 40–49, 50–59, 60–69, and ≥70 years. A composite racial/ethnic variable based on reported race and ethnicity was created to define three major racial/ethnic groups: non-Hispanic black, non-Hispanic white, and Mexican American. Persons who self-reported race as none of the three major racial/ethnic groups were included in the overall estimates but excluded from analyses in which race/ethnicity was the stratification variable.
The health status of participants was considered in the data analysis. All participants were tested for a variety of physical conditions that have been reported to potentially affect urinary creatinine concentrations. Participants were not screened for a given condition if they reported having been previously informed by a physician as having one of the conditions. Clinical parameters for determining the health status of individuals are summarized in
The GFR used for kidney function analysis was calculated using the equation derived from the Modification of Diet in Renal Disease (MDRD) study (
We analyzed data using the NHANES III analytic guidelines (
The collective data set of urinary creatinine values was slightly skewed toward higher values; however, logarithmic transformation did not improve the shape of the distribution. Because the results were only slightly skewed and variance estimates obtained using SUDAAN software were robust, we chose not to transform the urinary creatinine results for the analysis.
An analysis of covariance was used to correct for demographic covariates before comparing concentrations among demographic groups and daily collection times. Statistical significance was set at
Similar to the approach used by Wilder et al. (unpublished data), we used multiple linear regression models to study the influence of standard demographic variables on urinary creatinine concentration and additional factors previously reported to affect urinary creatinine concentrations. Nine variables were evaluated, although all variables were not used in the final model: race/ethnicity, sex, age, BMI, FFM, diabetes status, hypertension status, hyperthyroid disease status, and kidney disease status. FFM was calculated using a sex-and age-specific bioelectrical impedance analysis equation reported by
Our analysis comprised 22,245 valid creatinine values in urine samples collected during 1988–1994. Although we did not perform a thorough analysis of the rate of nonresponse and its possible effects on our analyses, we did evaluate the potential effects of differential nonresponse using the method of
The weighted urinary creatinine arithmetic means, medians, 10th and 90th percentiles, and their respective upper and lower 95% confidence intervals (CIs) are shown in
The percentage of individuals in each demographic group that had urinary creatinine concentrations outside the WHO exclusionary guidelines is shown in
We did not have the information to classify the diabetic status or kidney function of persons 6–19 years of age; thus, we first limited our multiple linear regression analysis to subjects ≥20 years of age to determine the effects of diabetes and kidney function on urinary creatinine. For subjects ≥20 years of age, statistically significant categorical independent variables in the model included race/ethnicity, sex, diabetic status, kidney function status, and age group. The continuous independent variable BMI was also a statistically significant factor. There were statistically significant interactions between race and diabetic status (
Participants with diabetes tended to have lower urinary creatinine levels than did those without diabetes, and the magnitude of the decrease varied significantly among the three racial/ethnic groups studied and among the age categories. For example, non-Hispanic black participants with diabetes had urinary creatinine levels 34.2 mg/dL lower (
The effect of kidney dysfunction on urinary creatinine concentration was not the same across racial/ethnic groups. Non-Hispanic whites with kidney dysfunction had urinary creatinine levels 10.7 mg/dL (
So that we could include children and adolescents in our analyses, we next performed multiple linear regression analyses that included all ages. Subjects ≥20 years of age were only included if they could be classified as not having diabetes and as not having moderately or severely decreased kidney function.
Coefficients from the multiple linear regression model are presented in
According to the model results, the effect of age category on urinary creatinine concentrations differed among each racial/ethnic group. Among Mexican Americans, urinary creatinine levels for 20- to 29-year-olds were 44.3 mg/dL higher (
BMI also was significantly related (
Biomonitoring of exposure is used in the workplace to evaluate a person’s chemical exposure during the workday and to provide some standard measure for allowable individual workplace exposures. When timed urine excretion (to determine UER) or 24-hr samples are not collected, the chemical measurement is routinely adjusted using creatinine to correct for urine concentration/dilution in spot samples.
For occupational monitoring, the WHO has recommended exclusionary guidelines for urinary creatinine concentrations to identify individual samples that are invalid for chemical analysis. The rationale behind these guidelines is that urine samples with extremely low creatinine concentrations are too dilute and may impair detection of low levels of toxicants, whereas samples with extremely high creatinine concentrations indicate dehydration, which could have changed the kidney’s secretion, excretion, and/or reabsorption of the target chemical. Therefore, analysis of either dilute or concentrated spot samples would not result in an analyte concentration representative of actual exposures. Typical statistical rules of exclusion of outliers would exclude the upper and lower 1 or 5% of the population. However, our data indicate that in some demographic categories, almost no one would be excluded using these criteria. In other demographic categories, as many as 20% of the participants would be excluded. These data support the findings recently reported by Wilder et al. (unpublished data). For example, essentially no Mexican-American female adults ≥70 years of age had urinary creatinine > 300 mg/dL. However, in the same demographic group, about 19% of the samples would be excluded because their urinary creatinine concentrations were < 30 mg/dL.
The WHO guidelines may have been established for occupational monitoring using a workforce with less diversity than the U.S. workforce. If only non-Hispanic white males 20–60 years of age are considered, approximately 10% of the samples would have been excluded, 5% for each exclusionary criterion. Among both sexes in this age range or women alone, approximately 15% of samples would have been excluded, with the majority (9–13%) excluded for being too dilute. In the U.S. population as a whole, samples from nearly 10 million women could be excluded using criteria that were likely not established using data from women. Clearly, with the change in the composition of the modern U.S. workforce to include women, multiple racial/ethnic groups, and older workers because of the increasing retirement age, the guidelines for sample exclusion should be re-evaluated to reflect the results shown in
We observed a small but statistically significant increase in creatinine concentrations in the morning compared with the afternoon and evening. Although we have no information suggesting the morning urine collections in NHANES III were first morning voids, our analyses appear consistent with the general thought that urine from a first morning void is more concentrated.
In the early 1980s, biomonitoring for nonoccupational, environmental exposures became an important exposure assessment tool in epidemiologic studies evaluating environmental exposure risks. In these studies, 24-hr samples were costly and logistically impractical to collect. Therefore, in keeping with the most common approach in workplace monitoring, spot urine samples were collected and chemical measurements were adjusted using creatinine. This approach was generally considered the only valid way to adjust spot urine samples for comparison across groups, even though limited data were available to evaluate the validity of this adjustment. With the increase in the number of child health studies in the 1990s, including assessing
The differences between children and adults are due partly to differences in lean muscle mass. Children and the elderly tend to have less muscle than active adults. Accordingly, children have lower FFM than adults. Because lean muscle produces the vast majority of creatinine in the body, we evaluated the relation between FFM and urinary creatinine. Indeed, FFM and urinary creatinine were significantly associated (
Urinary biomonitoring measurements are used to assess exposures of individuals and population groups. For an individual, if the urinary chemical level is divided by the creatinine concentration to adjust for dilution, one must recognize that the urinary creatinine concentration varies by age, sex, and race/ethnicity (
For population groups, public health scientists use the creatinine-adjusted urinary chemical level in two types of models. In model 1, the creatinine-adjusted urinary chemical level is a dependent variable, and other variables are regressed against it to determine significant predictors of exposure to that chemical. In model 2, the creatinine-adjusted urinary chemical level is an independent variable used to determine if that chemical exposure is a significant predictor of a disease outcome. In both models, the urinary chemical concentration is typically divided by the urinary creatinine level, and the resulting concentration, expressed per weight of creatinine, is the variable used.
In model 1, where the creatinine-corrected urinary level is the dependent variable, independent variables may be unrelated to the chemical concentration itself but related to the urinary creatinine concentration. In such a case, the independent variable could potentially achieve statistical significance only because it is related to urinary creatinine. Because age, sex, and race/ethnicity all relate to urinary creatinine, this possibility would have to be considered if they were significant predictors of creatinine-corrected urinary chemical levels.
In model 2, a similar problem could exist in which the creatinine-corrected urinary level may be a significant predictor of a health outcome only because the health outcome is related to urinary creatinine levels, not to the levels of the chemical. This would be a less likely scenario than model 1 but is possible because the urinary level is a ratio of a chemical concentration divided by urinary creatinine concentration.
A straightforward solution to both of these potential problems in interpreting multiple regression results is to separate the urinary chemical concentration from the urinary creatinine concentration in the regression models. For model 1, the dependent variable would be the urinary chemical concentration, unadjusted for creatinine. Urinary creatinine concentration would be included in the multiple regression as an independent variable. In this manner, the urinary chemical concentration is adjusted for urinary creatinine, because urinary creatinine is an independent variable, and other covariates in the model are also adjusted for urinary creatinine. Statistical significance of independent variables would therefore not be due to association with urinary creatinine concentration.
Similarly, in model 2, urinary chemical concentration (unadjusted for creatinine) would be included with urinary creatinine as independent variables to predict the health outcome. The health outcome and the urinary chemical concentration variables are adjusted for creatinine by the urinary creatinine independent variable, so any association of the health outcome with chemical concentration would not be influenced by a relationship with urinary creatinine levels.
The present study has several limitations. First, some of the variables used in our evaluation of the data such as the bioimpedance measurements and serum creatinine measurements were available only for persons > 12 years of age. Second, fasting times may have differed among participants and no dietary variables were considered in the analysis. Third, children < 6 years of age were not evaluated. Fourth, first morning void samples were not targeted for collection, so few were likely present in our study; therefore, these findings may not be directly applicable to first morning void samples. Last, upper-bound confidence intervals could not be established for seven of the 90th-percentile estimates given for creatinine levels in different age, sex, and racial/ethnic demographic groups.
Generally, in epidemiologic studies it is not practical to collect 24-hr urine samples or, when young children are involved, even first morning voids. Therefore, spot samples are generally the urine samples that are analyzed for assessing human exposures to many chemicals. The urinary concentrations of these chemicals are often reported on a weight/volume basis and a creatinine-adjusted basis. However, urinary creatinine concentrations differ dramatically among different demographic groups; thus, biomonitoring studies using creatinine concentrations to adjust the concentrations of environmental and occupational chemical concentrations should seriously consider the impact these findings will have on the data. For an individual, the creatinine-adjusted concentration of an analyte should be compared with a “reference” range derived from persons in a similar demographic group (e.g., children with children, adults with adults). For multiple regression analysis of population groups, we recommend that the analyte concentration (unadjusted for creatinine) be included in the multiple regression analysis with urinary creatinine added as a separate independent variable. This approach allows the urinary analyte concentration to be appropriately adjusted for urinary creatinine and the statistical significance of other variables in the model (e.g., age, sex, race/ethnicity) to be independent of effects of urinary creatinine concentration.
Clinical parameters for designation of health status of individuals in NHANES III (1988–1994) survey.
| Health status | Clinical parameter |
|---|---|
| Diabetes | Blood glucose > 126 mg/dL after 8-hr fast |
| Hypertension | Systolic value > 140 mm Hg or diastolic > 90 mm Hg |
| Hyperthyroidism | Serum thyroid-stimulating hormone > 5 μU/mL |
| Kidney dysfunction | Glomerular filtration rate < 60 mL/min/1.73 m2 |
Also included individuals who were told by a physician that they had diabetes.
Also included individuals who were told by one physician two or more time or by two or more physicians that they were hypertensive. Systolic and diastolic measurements were the average of three measurements.
Weighted quantiles (95% CIs) of urinary creatinine concentrations (mg/dL) in the NHANES III (1988–1994) study population in persons 6–90 years of age.
| Race/ethnicity, age (years) | All
| Male
| Female
| ||||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| No. | 10th | 50th | 90th | Mean | No. | 10th | 50th | 90th | Mean | No. | 10th | 50th | 90th | Mean | |
| All | |||||||||||||||
| All | 22,245 | 33.54 (32.07–35.22) | 118.6 (115.6–121.4) | 237.2 (234.7–241.1) | 130.4 (128.2–132.7) | 10,610 | 49.56 (46.08–53.30) | 137.2 (134.2–141.0) | 254.4 (249.9–262.1) | 148.3 (145.3–151.3) | 11,635 | 27.36 (26.04–28.90) | 99.49 (97.15–102.9) | 217.7 (212.6–224.0) | 113.5 (110.7–116.3) |
| 6–11 | 3,078 | 42.84 (38.77–46.55) | 98.09 (93.81–102.2) | 163.1 (157.9–173.4) | 102.1 (98.91–105.2) | 1,590 | 49.91 (43.18–55.95) | 97.84 (92.79–103.7) | 164.7 (158.1–179.6) | 104.4 (100.3–108.5) | 1,488 | 33.22 (29.54–40.47) | 98.34 (91.40–104.0) | 160.6 (153.4–171.7) | 99.48 (95.27–103.7) |
| 12–19 | 3,095 | 62.14 (56.47–67.04) | 150.2 (145.1–158.7) | 271.2 (263.0–283.4) | 161.5 (156.7–166.2) | 1,461 | 65.27 (60.08–75.83) | 151.9 (145.3–163.6) | 271.2 (258.8–285.3) | 163.6 (157.3–169.9) | 1,634 | 56.04 (46.63–64.40) | 149.5 (140.5–158.7) | 271.6 (261.3–290.1) | 159.3 (153.4–165.1) |
| 20–29 | 3,438 | 47.45 (42.53–53.42) | 153.8 (147.1–160.7) | 275.4 (266.4–294.4) | 161.8 (156.6–166.9) | 1,608 | 71.64 (61.62–79.74) | 172.8 (161.6–185.3) | 297.2 (283.5–324.2) | 183.0 (175.4–190.6) | 1,830 | 37.24 (31.64–44.04) | 132.8 (126.1–141.6) | 246.6 (236.4–264.6) | 141.0 (135.0–146.9) |
| 30–39 | 3,259 | 31.15 (28.80–36.01) | 128.8 (121.5–135.8) | 245.7 (239.0–259.1) | 138.0 (132.4–143.5) | 1,438 | 44.77 (39.90–55.96) | 150.5 (140.2–162.1) | 263.3 (251.8–285.2) | 157.9 (150.1–165.7) | 1,821 | 27.36 (24.80–29.49) | 106.9 (100.6–113.9) | 227.7 (215.3–240.0) | 118.8 (112.6–125.0) |
| 40–49 | 2,542 | 26.32 (23.20–30.79) | 119.0 (112.3–124.6) | 226.2 (216.4–238.8) | 124.6 (120.1–129.1) | 1,203 | 43.24 (33.38–54.56) | 146.9 (140.5–154.0) | 252.3 (235.8–265.8) | 149.7 (143.0–156.4) | 1,339 | 20.49 (17.75–24.31) | 89.62 (80.26–96.92) | 195.1 (185.0–207.8) | 100.6 (95.91–105.3) |
| 50–59 | 1,823 | 26.80 (25.02–29.92) | 98.43 (92.63–102.9) | 206.0 (195.2–217.1) | 108.1 (103.8–112.5) | 838 | 39.06 (33.30–47.73) | 123.5 (114.4–136.4) | 227.7 (216.9–243.5) | 131.8 (123.6–139.9) | 985 | 22.54 (20.73–25.22) | 73.09 (65.66–81.02) | 165.5 (155.0–178.2) | 86.06 (80.66–91.46) |
| 60–69 | 2,243 | 30.01 (27.67–32.95) | 94.22 (89.12–98.97) | 193.6 (187.0–200.7) | 105.5 (101.8–109.2) | 1,134 | 43.54 (39.06–52.11) | 121.4 (114.0–127.0) | 213.4 (206.3–231.8) | 126.4 (121.2–131.6) | 1,109 | 23.64 (21.53–28.25) | 75.37 (69.29–82.09) | 167.4 (159.3–179.3) | 87.91 (82.50–93.32) |
| ≥70 | 2,767 | 29.37 (27.41–31.37) | 86.23 (82.36–90.57) | 179.6 (175.3–189.1) | 97.99 (95.14–100.8) | 1,338 | 43.77 (39.62–50.19) | 107.4 (103.0–115.4) | 199.2 (188.6–210.9) | 117.5 (112.8–122.2) | 1,429 | 23.90 (21.86–26.68) | 69.14 (65.23–74.63) | 166.5 (157.2–180.0) | 84.51 (80.87–88.15) |
| Non-Hispanic white | |||||||||||||||
| All | 8,150 | 30.94 (29.31–33.10) | 112.7 (109.7–115.9) | 229.5 (224.7–236.1) | 124.6 (122.0–127.2) | 3,820 | 45.91 (41.88–50.56) | 133.0 (129.6–137.2) | 249.2 (242.3–259.3) | 144.0 (140.3–147.8) | 4,330 | 25.27 (24.03–26.63) | 92.09 (87.71–96.48) | 205.9 (200.5–212.9) | 106.1 (103.2–109.0) |
| 6–11 | 800 | 42.75 (38.08–47.69) | 98.11 (92.57–103.8) | 155.1 (149.0–166.7) | 99.92 (95.85–104.0) | 413 | 48.74 (42.61–59.12) | 97.19 (90.56–103.9) | 158.6 (149.1–169.9) | 102.1 (96.98–107.3) | 387 | 32.95 (28.89–40.18) | 99.00 (90.86–107.6) | 152.0 (145.5–169.4) | 97.48 (92.8–102.16) |
| 12–19 | 790 | 55.90 (50.31–63.98) | 147.1 (139.2–156.0) | 261.4 (248.8–278.3) | 156.0 (149.8–162.1) | 348 | 61.84 (55.72–74.85) | 147.4 (138.3–159.2) | 252.0 (237.8–275.1) | 155.7 (147.8–163.6) | 442 | 47.86 (39.55–61.86) | 145.3 (135.6–156.6) | 269.6 (252.1–301.7) | 156.2 (147.5–164.9) |
| 20–29 | 879 | 42.72 (36.40–50.15) | 143.3 (137.1–155.0) | 271.7 (258.8–296.4) | 154.8 (148.2–161.4) | 388 | 63.81 (53.31–79.41) | 169.7 (159.6–185.2) | 299.4 (281.2–333.8) | 181.7 (171.4–192.1) | 491 | 31.55 (26.10–40.42) | 120.3 (110.2–132.1) | 233.7 (214.7–246.5) | 128.9 (121.9–136.0) |
| 30–39 | 1,025 | 30.03 (27.68–34.07) | 123.3 (115.2–131.9) | 237.0 (231.2–254.5) | 133.3 (126.5–140.1) | 437 | 42.21 (36.31–53.47) | 146.3 (132.9–162.3) | 252.5 (241.1–286.5) | 153.7 (143.4–163.9) | 588 | 25.83 (23.08–29.71) | 103.3 (94.32–108.3) | 221.3 (208.0–232.5) | 113.2 (106.4–120.0) |
| 40–49 | 893 | 23.40 (20.58–28.72) | 113.9 (106.6–120.2) | 219.2 (208.7–234.9) | 119.8 (115.0–124.6) | 422 | 37.14 (27.78–49.52) | 142.3 (136.0–152.0) | 244.5 (225.5–260.1) | 145.0 (137.2–152.9) | 471 | 18.61 (16.70–22.96) | 78.56 (71.33–95.15) | 182.9 (172.8–220.2) | 94.46 (89.08–99.83) |
| 50–59 | 884 | 26.06 (23.96–28.89) | 93.95 (87.35–100.4) | 203.3 (186.8–218.4) | 104.3 (98.83–109.8) | 409 | 37.74 (32.01–46.84) | 117.6 (107.5–133.7) | 226.0 (213.8–244.7) | 129.0 (118.3–139.6) | 475 | 22.64 (20.46–25.30) | 70.44 (60.83–77.02) | 154.8 (144.1–170.3) | 81.36 (75.52–87.20) |
| 60–69 | 963 | 30.04 (27.35–33.20) | 90.41 (84.88–97.18) | 189.0 (184.0–197.1) | 102.7 (98.60–106.8) | 495 | 43.84 (39.83–54.25) | 121.0 (110.5–125.2) | 210.3 (201.7–231.6) | 124.8 (119.4–130.2) | 468 | 22.76 (20.24–27.22) | 72.55 (64.84–80.14) | 162.9 (153.6–174.0) | 83.35 (77.53–89.17) |
| ≥70 | 1,916 | 28.69 (26.60–30.86) | 84.89 (79.77–88.55) | 176.9 (171.2–187.6) | 96.03 (92.84–99.22) | 908 | 42.90 (38.70–49.49) | 107.0 (101.1–114.9) | 196.4 (184.3–209.6) | 116.2 (111.0–121.3) | 1,008 | 23.44 (21.27–27.17) | 66.73 (63.62–72.34) | 160.9 (152.0–173.8) | 82.30 (78.16–86.44) |
| Non-Hispanic black | |||||||||||||||
| All | 6,664 | 57.24 (54.37–61.00) | 153.3 (149.6–158.1) | 282.6 (277.7–289.5) | 165.4 (162.3–168.5) | 3,117 | 72.84 (68.31–76.59) | 170.3 (164.5–177.6) | 298.5 (292.7–310.3) | 181.9 (177.3–186.4) | 3,547 | 49.64 (45.94–53.27) | 140.1 (136.5–144.4) | 265.1 (257.6–272.6) | 151.3 (147.8–154.8) |
| 6–11 | 1,060 | 53.72 (47.81–58.87) | 113.8 (110.1–120.9) | 201.2 (192.5–211.3) | 120.9 (116.3–125.6) | 553 | 54.58 (47.09–60.66) | 113.2 (107.4–120.6) | 199.5 (188.2–209.9) | 120.3 (114.8–125.8) | 507 | 52.64 (44.80–59.58) | 115.6 (108.8–122.1) | 203.9 (192.5–215.0) | 121.6 (115.7–127.5) |
| 12–19 | 1,113 | 83.12 (74.04–92.62) | 179.4 (172.1–187.3) | 310.9 (302.2–325.6) | 193.1 (185.4–200.8) | 530 | 88.38 (76.57–102.1) | 188.5 (179.9–200.5) | 322.3 (313.1–343.1) | 203.9 (193.8–214.0) | 583 | 75.86 (65.30–87.54) | 172.3 (163.0–182.3) | 295.0 (279.4–317.6) | 182.4 (173.6–191.2) |
| 20–29 | 1,098 | 82.04 (69.40–93.87) | 193.4 (188.1–202.9) | 315.0 (301.5–332.9) | 200.1 (192.8–207.5) | 484 | 90.23 (76.67–115.3) | 207.0 (193.1–224.3) | 339.9 (316.1–377.4) | 214.7 (202.5–227.0) | 614 | 77.77 (61.32–89.35) | 185.2 (175.2–194.3) | 292.9 (285.9–315.4) | 188.0 (179.6–196.2) |
| 30–39 | 1,120 | 64.14 (59.23–68.77) | 164.4 (155.0–173.6) | 284.9 (272.8–299.6) | 172.0 (165.7–178.3) | 480 | 82.70 (72.56–97.43) | 186.1 (176.9–197.6) | 312.0 (290.2–326.5) | 193.1 (184.2–202.1) | 640 | 56.48 (48.35–63.58) | 148.7 (140.9–157.0) | 267.4 (252.3–283.1) | 155.3 (146.8–163.9) |
| 40–49 | 798 | 53.76 (47.98–65.24) | 152.8 (140.8–169.3) | 275.2 (260.6–288.1) | 164.2 (155.8–172.6) | 359 | 78.50 (68.15–92.70) | 180.6 (171.0–192.2) | 293.5 (279.4–321.4) | 189.5 (181.2–197.7) | 439 | 44.54 (36.66–53.85) | 130.0 (119.9–146.6) | 238.3 (226.1–267.4) | 142.9 (132.2–153.7) |
| 50–59 | 475 | 35.78 (28.68–48.23) | 134.6 (118.0–150.0) | 245.3 (228.4–264.5) | 164.2 (155.8–172.6) | 210 | 67.50 (57.98–81.14) | 165.3 (151.2–174.7) | 269.7 (242.4–NE) | 169.0 (157.8–180.1) | 265 | 26.01 (22.35–36.53) | 111.0 (95.86–125.3) | 217.8 (195.0–232.7) | 117.2 (105.9–116.7) |
| 60–69 | 557 | 47.22 (41.17–54.59) | 115.9 (107.1–126.2) | 224.5 (210.3–242.4) | 140.0 (130.7–149.3) | 279 | 62.87 (49.25–75.93) | 150.1 (139.9–162.2) | 270.2 (245.7–288.8) | 158.6 (149.3–167.9) | 278 | 41.38 (36.32–50.60) | 96.15 (90.57–103.2) | 186.4 (171.7–207.9) | 108.8 (100.8–116.7) |
| ≥70 | 443 | 38.79 (34.55–46.27) | 110.9 (105.6–120.3) | 209.8 (203.8–224.2) | 129.3 (122.4–136.3) | 222 | 49.05 (40.90–56.87) | 130.0 (11.2–145.9) | 220.8 (204.7–NE) | 136.0 (126.7–145.4) | 221 | 34.58 (30.28–42.77) | 104.1 (93.44–109.7) | 203.4 (185.0–NE) | 112.2 (103.5–120.9) |
| Mexican American | |||||||||||||||
| All | 6,496 | 38.35 (35.69–42.13) | 123.3 (120.2–126.4) | 236.5 (231.6–243.7) | 132.9 (129.7–136.1) | 3,253 | 50.52 (45.74–55.94) | 138.2 (133.2–144.5) | 252.5 (245.1–264.9) | 147.2 (142.4–151.9) | 3,243 | 30.80 (28.08–34.80) | 106.0 (102.7–110.1) | 218.3 (211.2–224.9) | 117.6 (114.3–120.9) |
| 6–11 | 1,083 | 31.92 (26.14–37.65) | 87.99 (82.28–92.45) | 154.4 (142.6–166.6) | 92.24 (87.67–96.82) | 548 | 32.22 (25.61–41.30) | 89.53 (84.26–97.65) | 160.3 (144.3–173.5) | 94.76 (89.59–99.93) | 535 | 30.10 (24.10–38.54) | 85.55 (77.88–95.20) | 152.2 (135.4–165.8) | 89.57 (82.58–96.55) |
| 12–19 | 1,039 | 57.50 (50.37–35.25) | 140.0 (134.9–145.8) | 249.0 (236.3–265.6) | 148.2 (142.1–154.3) | 518 | 57.72 (47.04–70.12) | 142.3 (133.6–152.3) | 255.7 (237.5–275.7) | 151.5 (141.3–161.6) | 521 | 56.75 (46.27–65.77) | 133.6 (127.5–145.7) | 240.4 (226.5–262.8) | 144.8 (138.4–151.3) |
| 20–29 | 1,311 | 50.96 (42.23–61.01) | 148.9 (142.8–156.9) | 261.9 (247.8–282.7) | 155.4 (150.2–160.7) | 664 | 65.14 (52.75–77.76) | 166.9 (157.8–174.4) | 276.3 (258.8–297.8) | 168.9 (162.4–175.4) | 647 | 38.47 (33.15–48.69) | 126.9 (117.1–137.6) | 246.5 (230.1–269.9) | 138.5 (132.0–145.0) |
| 30–39 | 979 | 36.71 (32.00–44.12) | 132.4 (126.9–138.5) | 251.8 (236.7–265.9) | 139.9 (133.5–146.3) | 464 | 52.12 (45.63–63.38) | 152.2 (143.9–159.7) | 270.9 (259.3–285.2) | 160.9 (153.1–168.6) | 515 | 29.57 (25.79–33.52) | 108.8 (101.0–115.5) | 216.1 (189.2–236.6) | 116.7 (108.9–124.6) |
| 40–49 | 738 | 36.33 (31.16–45.31) | 126.5 (118.7–136.6) | 227.7 (217.3–240.6) | 133.0 (126.6–139.3) | 376 | 53.58 (45.62–66.69) | 146.3 (138.0–157.9) | 244.7 (231.8–263.5) | 153.6 (146.1–161.1) | 362 | 30.05 (23.07–40.38) | 105.3 (90.92–120.9) | 202.8 (190.3–216.5) | 111.2 (101.6–120.7) |
| 50–59 | 367 | 27.21 (22.37–33.48) | 99.12 (85.91–113.7) | 196.2 (188.0–210.9) | 109.1 (100.2–118.1) | 177 | 46.38 (37.21–60.52) | 125.2 (106.7–151.5) | 218.5 (202.3–NE) | 134.5 (122.6–146.4) | 190 | 18.60 (15.41–26.66) | 71.09 (58.38–91.33) | 170.7 (153.9–183.6) | 85.27 (76.36–94.18) |
| 60–69 | 641 | 21.39 (19.67–27.51) | 88.47 (79.08–97.59) | 196.8 (184.4–211.1) | 99.68 (94.73–104.6) | 326 | 28.99 (19.82–47.54) | 111.2 (102.1–130.0) | 201.6 (174.7–217.9) | 116.9 (108.4–125.3) | 315 | 20.89 (14.85–25.71) | 66.85 (57.74–80.61) | 192.2 (157.1–NE) | 86.36 (77.82–94.90) |
| ≥70 | 338 | 27.77 (21.93–35.03) | 94.66 (87.62–104.8) | 174.8 (160.4–201.0) | 99.46 (91.72–107.2) | 180 | 59.55 (50.02–70.02) | 116.8 (101.7–135.7) | 190.8 (175.7–NE) | 123.8 (114.3–133.3) | 158 | 20.84 (16.97–29.49) | 67.79 (55.72–81.33) | 145.7 (116.5–NE) | 76.47 (66.0–86.94) |
NE, could not be reliably estimated.1
All population data, including those individuals not grouped into one of the three race/ethnicity categories, are presented.
Percentage of each demographic group in NHANES III (1988–1994) whose urinary creatinine concentrations (mg/dL) fell outside the WHO guideline range (i.e., < 30 mg/dL or > 300 mg/dL).
| All
| Male
| Female
| |||||||
|---|---|---|---|---|---|---|---|---|---|
| Race/ethnicity, age(years) | No. | < 30 mg/dL | > 300 mg/dL | No. | < 30 mg/dL | > 300 mg/dL | No. | < 30 mg/dL | > 300 mg/dL |
| All | |||||||||
| All | 22,245 | 7.7 | 3.3 | 10,610 | 4.0 | 4.6 | 11,635 | 11 | 2.2 |
| 6–11 | 3,078 | 4.7 | 0.1 | 1,590 | 2.9 | 0.1 | 1,488 | 6.7 | 0.1 |
| 12–19 | 3,095 | 2.3 | 6.5 | 1,461 | 1.6 | 6.0 | 1,634 | 3.1 | 7.0 |
| 20–29 | 3,438 | 5.2 | 6.9 | 1,608 | 3.4 | 10 | 1,830 | 7.0 | 4.2 |
| 30–39 | 3,259 | 8.4 | 4.2 | 1,438 | 4.3 | 6.4 | 1,821 | 12 | 2.0 |
| 40–49 | 2,542 | 11 | 2.5 | 1,203 | 5.9 | 3.8 | 1,339 | 16 | 1.3 |
| 50–59 | 1,823 | 12 | 0.9 | 838 | 6.0 | 1.5 | 985 | 17 | 0.3 |
| 60–69 | 2,243 | 9.3 | 0.6 | 1,134 | 3.9 | 1.2 | 1,109 | 14 | 0.1 |
| ≥70 | 2,767 | 10 | 0.7 | 1,338 | 3.5 | 1.1 | 1,429 | 15 | 0.5 |
| Non-Hispanic white | |||||||||
| All | 8,150 | 8.8 | 3.0 | 3,820 | 4.5 | 4.2 | 4,330 | 13 | 1.8 |
| 6–11 | 800 | 4.3 | 0.0 | 413 | 2.6 | 0.0 | 387 | 6.1 | 0.0 |
| 12–19 | 790 | 3.0 | 6.1 | 348 | 2.0 | 4.6 | 442 | 3.9 | 7.6 |
| 20–29 | 879 | 6.2 | 6.4 | 388 | 3.9 | 10 | 491 | 8.4 | 3.0 |
| 30–39 | 1,025 | 9.2 | 4.0 | 437 | 4.9 | 6.2 | 588 | 14 | 1.8 |
| 40–49 | 893 | 13 | 2.3 | 422 | 7.0 | 3.5 | 471 | 19 | 1.1 |
| 50–59 | 884 | 13 | 0.6 | 409 | 7.4 | 1.1 | 475 | 18 | 0.2 |
| 60–69 | 963 | 9.3 | 0.4 | 495 | 3.0 | 0.8 | 468 | 15 | 0.0 |
| ≥70 | 1,916 | 11 | 0.8 | 908 | 3.6 | 1.2 | 1,008 | 15 | 0.5 |
| Non-Hispanic black | |||||||||
| All | 6,664 | 2.8 | 7.1 | 3,117 | 1.5 | 9.8 | 3,547 | 3.8 | 4.8 |
| 6–11 | 1,060 | 3.4 | 0.6 | 553 | 2.7 | 0.4 | 507 | 4.2 | 0.8 |
| 12–19 | 1,113 | 0.6 | 12 | 530 | 0.2 | 15 | 583 | 1.1 | 8.5 |
| 20–29 | 1,098 | 1.7 | 13 | 484 | 1.6 | 17 | 614 | 1.7 | 9.5 |
| 30–39 | 1,120 | 2.8 | 7.6 | 480 | 1.8 | 12 | 640 | 3.5 | 4.5 |
| 40–49 | 798 | 3.3 | 5.8 | 359 | 1.4 | 8.2 | 439 | 4.9 | 3.7 |
| 50–59 | 475 | 6.9 | 3.5 | 210 | 1.1 | 5.8 | 265 | 12 | 1.6 |
| 60–69 | 557 | 2.4 | 2.6 | 279 | 1.0 | 54 | 278 | 3.4 | 0.7 |
| ≥70 | 443 | 4.9 | 1.1 | 222 | 3.6 | 1.2 | 221 | 5.9 | 0.6 |
| Mexican American | |||||||||
| All | 6,496 | 6.5 | 3.1 | 3,253 | 4.4 | 4.3 | 3,243 | 8.8 | 1.8 |
| 6–11 | 1,083 | 8.9 | 0 | 548 | 8.0 | 0.0 | 535 | 9.8 | 0.0 |
| 12–19 | 1,039 | 2.8 | 4.2 | 518 | 2.0 | 5.0 | 521 | 3.5 | 3.4 |
| 20–29 | 1,311 | 4.8 | 5.4 | 664 | 3.8 | 6.5 | 647 | 6.1 | 3.9 |
| 30–39 | 979 | 6.7 | 3.5 | 464 | 3.9 | 5.4 | 515 | 9.7 | 1.4 |
| 40–49 | 738 | 6.5 | 2.1 | 376 | 4.0 | 4.0 | 362 | 9.2 | 0.2 |
| 50–59 | 367 | 10 | 1.5 | 177 | 3.3 | 3.3 | 190 | 16 | 0.0 |
| 60–69 | 641 | 15 | 0.3 | 326 | 10 | 0.8 | 315 | 19 | 0.0 |
| ≥70 | 338 | 11 | 0.0 | 180 | 2.8 | 0.0 | 158 | 19 | 0.0 |
Weighted mean urinary creatinine concentration (mg/dL) for each collection time frame during the day.
| Collection time frame | No. | Mean creatinine (mg/dL) | Contrasted to morning | Contrasted to afternoon | Contrasted to evening |
|---|---|---|---|---|---|
| Morning | 10,621 | 133.5 | NA | ||
| Afternoon | 7,190 | 128.6 | NA | ||
| Evening | 4,434 | 126.1 | NA |
NA, not applicable. The concentrations were corrected for age, race/ethnicity, sex, and BMI. Each mean was contrasted to the means of other collection time frames using an analysis of covariance test to determine whether they were statistically different.
Coefficients of the independent variables from the multiple linear regression model of urinary creatinine concentrations (dependent variable).
| Independent variable
| ||
|---|---|---|
| Variable | Coefficient ± SE | |
| Intercept | 53.51 ± 6.83 | < 0.0001 |
| Race/ethnicity | ||
| Non-Hispanic white (1) | −7.33 ± 5.00 | 0.1486 |
| Non-Hispanic black (2) | 20.82 ± 5.68 | 0.0006 |
| Mexican American (3) | 0.00 ± 0.00 | NA |
| Sex | ||
| Male (1) | 34.59 ± 4.14 | < 0.0001 |
| Female (2) | 0.00 ± 0.00 | NA |
| Age group (years) | ||
| 6–11 (1) | 12.55 ± 5.24 | 0.0026 |
| 12–19 (2) | 62.90 ± 5.64 | < 0.0001 |
| 20–29 (3) | 43.56 ± 5.70 | < 0.0001 |
| 30–39 (4) | 29.78 ± 5.78 | < 0.0001 |
| 40–49 (5) | 16.65 ± 6.42 | 0.0125 |
| 50–59 (6) | −1.17 ± 6.24 | 0.8524 |
| 60–69 (7) | −8.47 ± 4.81 | 0.0847 |
| ≥70 (8) | 0.00 ± 0.00 | NA |
| BMI (continuous) | 1.30 ± 0.19 | < 0.0001 |
| Race/ethnicity × age group | ||
| (1) × (1) | 16.19 ± 6.09 | 0.0106 |
| (1) × (2) | 16.14 ± 6.67 | 0.0192 |
| (1) × (3) | 10.74 ± 6.68 | 0.1141 |
| (1) × (4) | 4.34 ± 5.66 | 0.4469 |
| (1) × (5) | −2.40 ± 6.94 | 0.7308 |
| (1) × (6) | −0.82 ± 5.73 | 0.8864 |
| (1) × (7) | 6.99 ± 4.86 | 0.1569 |
| (1) × (8) | 0.00 ± 0.00 | NA |
| (2) × (1) | 8.64 ± 6.48 | 0.1886 |
| (2) × (2) | 24.28 ± 6.48 | 0.0005 |
| (2) × (3) | 28.19 ± 6.50 | 0.0001 |
| (2) × (4) | 15.01 ± 7.12 | 0.0403 |
| (2) × (5) | 14.69 ± 7.77 | 0.0648 |
| (2) × (6) | 14.98 ± 8.27 | 0.0762 |
| (2) × (7) | 8.58 ± 6.35 | 0.1826 |
| (2) × (8) | 0.00 ± 0.00 | NA |
| (3) × (1) | 0.00 ± 0.00 | NA |
| (3) × (2) | 0.00 ± 0.00 | NA |
| (3) × (3) | 0.00 ± 0.00 | NA |
| (3) × (4) | 0.00 ± 0.00 | NA |
| (3) × (5) | 0.00 ± 0.00 | NA |
| (3) × (6) | 0.00 ± 0.00 | NA |
| (3) × (7) | 0.00 ± 0.00 | NA |
| (3) × (8) | 0.00 ± 0.00 | NA |
| Sex × age group | ||
| (1) × (1) | −30.64 ± 4.26 | < 0.0001 |
| (1) × (2) | −30.44 ± 5.86 | < 0.0001 |
| (1) × (3) | 11.57 ± 5.30 | 0.0339 |
| (1) × (4) | 6.01 ± 7.16 | 0.4051 |
| (1) × (5) | 15.86 ± 5.53 | 0.0061 |
| (1) × (6) | 12.53 ± 7.57 | 0.1045 |
| (1) × (7) | 9.39 ± 5.51 | 0.0944 |
| (1) × (8) | 0.00 ± 0.00 | NA |
| (2) × (1) | 0.00 ± 0.00 | NA |
| (2) × (2) | 0.00 ± 0.00 | NA |
| (2) × (3) | 0.00 ± 0.00 | NA |
| (2) × (4) | 0.00 ± 0.00 | NA |
| (2) × (5) | 0.00 ± 0.00 | NA |
| (2) × (6) | 0.00 ± 0.00 | NA |
| (2) × (7) | 0.00 ± 0.00 | NA |
| (2) × (8) | 0.00 ± 0.00 | NA |
NA, not applicable. Numbers in parentheses correspond to the specific racial/ethnic group, sex, or age group for which the interaction term was derived.