Literature DB >> 23947772

The correlates of urinary albumin to creatinine ratio (ACR) in a high risk Australian aboriginal community.

Zaimin Wang1, Wendy E Hoy, Zhiqiang Wang.   

Abstract

BACKGROUND: Albuminuria marks renal disease and cardiovascular risk. It was estimated to contribute 75% of the risk of all-cause natural death in one Aboriginal group. The urine albumin/creatinine ratio (ACR) is commonly used as an index of albuminuria. This study aims to examine the associations between demographic factors, anthropometric index, blood pressure, lipid-protein measurements and other biomarkers and albuminuria in a cross-sectional study in a high-risk Australian Aboriginal population. The models will be evaluated for albuminuria at or above the microalbuminuria threshold, and at or above the "overt albuminuria" threshold with the potential to distinguish associations they have in common and those that differ.
METHODS: This was a cross-sectional study of 598 adults aged 18-76 years. All participants were grouped into quartiles by age. Logistic regression models were used to explore the correlates of ACR categories.
RESULTS: The significant correlates were systolic blood pressure (SBP), C-reactive protein (CRP), uric acid, diabetes, gamma-glutamyl transferase (GGT) (marginally significant, p=0.054) and serum albumin (negative association) for ACR 17+ (mg/g) for men and 25+ for women. Independent correlates were SBP, uric acid, diabetes, total cholesterol, alanine amino transferase (ALT), Cystatin C and serum albumin (negative association) for overt albuminuria; and SBP, CRP and serum albumin only for microalbuminuria.
CONCLUSIONS: This is the most detailed modelling of pathologic albuminuria in this setting to date. The somewhat variable association with risk factors suggests that microalbuminuria and overt albuminuria might reflect different as well as shared phenomena.

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Year:  2013        PMID: 23947772      PMCID: PMC3765271          DOI: 10.1186/1471-2369-14-176

Source DB:  PubMed          Journal:  BMC Nephrol        ISSN: 1471-2369            Impact factor:   2.388


Background

Australian Aboriginal people, especially those living in remote areas, have greater rates of all-cause mortality, cardiovascular death and end-stage renal disease (ESRD) [1-3] compared with other Australian ethnicities. The incidence of patients with ESRD starting renal replacement therapy in remote regions is up to 30 times the national incidence for all Australians [4]. The urine albumin/creatinine ratio (ACR) is commonly used as an index of albuminuria. In a study of one high-risk community, albuminuria, which was pervasive, and much more common than hypertension and diabetes and, not only marked all future risk of renal failure, the treatment of which is very costly, but also predicted cardiovascular and nonrenal noncardiovascular deaths [2,5-8]. Albuminuria was estimated to contribute 75% of the risk of all-cause natural death during a short longitudinal period of observation [1]. Recently the authors reported that albuminuria was still a remarkable predictor for all-cause natural death over an average of 14 years follow-up interval in an Aboriginal community [9]. Thus albuminuria represents a potential target for intervention [10]. A number of variables were measured in a cross-sectional survey on a high-risk Australian Aboriginal population. Thus this study aims to explore the associations between demographic factors, anthropometric index, blood pressure, lipid-protein measurements and other biomarkers and albuminuria. The models will be evaluated for albuminuria at or above the microalbuminuria threshold, and at or above the “overt albuminuria” threshold with the potential to distinguish associations they have in common and those that differ.

Methods

Study population

Participants were recruited from an Australian Aboriginal community living in a remote area in Northern Territory of Australia between 1992 and 1998 as part of a screening program for chronic disease. Participants aged 18 years and over were included in the analysis.

Measurements of baseline characteristics

Urinary albumin concentrations were measured simultaneously by both nephelometric and high-performance liquid chromatography techniques on random urine sample. When we examined over a Z-score continuum of their values, they were identical in defining clinical profiles and predicting deaths [11]. Thus the results here are based on the concentration measured using Beckman immunoassay on a Dade Behring Prospect Analyser, with reagents and calibrators supplied by Dade Behring Diagnostics (Sydney, Australia). Urinary creatinine concentration was measured using an alkaline picrate method (Olympus AU800 Autoanalyzer; interassay CV 2%). Simple anthropometric indices, blood pressure, glucose, lipoprotein profiles, C-reactive protein (CRP), uric acid, serum albumin, cystatin C, serum gamma glutammyl transferase (GGT) and alanine amino transferase (ALT) were also measured. The sex-specific cut points of ACR were applied to categorise participants as, normal (ACR < 17 mg/g for men; <25 for women), microalbuminuria (ACR 17–249 for men; 25–354 for women) and overt albuminuria (ACR ≥ 250 for men; ≥355 for women) [12]. Diabetes refers to those known to be diabetic before the baseline survey or who had fasting glucose ≥126 or 2-hr glucose ≥199.8 mg/dl or “random glucose” ≥199.8 mg/dl. Smoking and alcohol drinking were self-reported. All participants were regrouped into quartiles by age. Continuous variables that are not normal distributed were logarithm-transferred prior to analysis.

Statistical analysis

Logistic regression modellings for ACR categories including all potential predictors available in this study were applied. All analyses were undertaken using Stata 11.1 (Stata Corp. Stata Statistical Software: Release 11.1, College Station. TX: StatCorp LP, 2009). The informed consent for the original population screening program was obtained prior to the survey. This study was approved by the Ethics Committee of the Menzies School of Health Research and Territory Health Services and The Behavioural and Social Science Ethical Review Committee of the University of Queensland.

Results

Characteristics of participants

At the baseline survey, ACR was measured in a total of 755 participants aged 18 years and over, and 598 of them with a complete set of risk factor measurements were included in the analysis. Age ranged from 18 to 76 years, with a mean of 34 years. The geometric mean, (95% CI) ACR value was 32.6 mg/g (27.5-38.7). Proportion of participants with normal ACR (using sex-specific cut-off points) was 47.8% while microalbuminuria and overt albuminuria were present in 40.8% and 19.2%, respectively. BMI, SBP, cholesterol, triglycerides, CRP, cystatin c, serum GGT and diabetes prevalence increased with the age while HDL and serum albumin were opposite (Table  1). Uric acid and serum ALT were not associated with age. The proportion of smokers was significantly high in this community ranged from 67-78% (Table  1).
Table 1

Characteristics of participants by age quartile

 
Quartile 1
Quartile 2
Quartile 3
Quartile 4
 (n = 150)(n = 151)(n = 149)(n = 148)
Age (years) (mean, SD)
21.6 (1.8)
27.7 (1.9)
35.8 (2.9)
50.8 (8.2)
BMI (kg/m2) (mean, SD)
21.4 (4.5)
23.6 (4.8)
24.5 (5.4)
24.5 (5.2)
SBP (mmHg) (mean, SD)
116.2 (15.7)
118.8 (15.1)
119.4 (16.7)
130.7 (21.8)
Cholesterol (mg/dL) (mean, SD)
4.12 (0.82)
4.69 (1.03)
4.86 (1.13)
4.99 (1.06)
HDL (mg/dL) (mean, SD)
1.14 (0.26)
1.14 (0.35)
1.12 (0.29)
1.06 (0.22)
Serum albumin (g/l) (mean, SD)
42.1 (4.8)
41.3 (5.7)
39.9 (5.1)
38.5 (4.6)
Uric acid (mg/l) (gmean, 95% CI)
0.34 (0.32–0.36)
0.36 (0.34–0.37)
0.35 (0.34–0.37)
0.35 (0.34–0.36)
Triglyceride (mg/dL) (gmean, 95% CI)
1.20 (1.13–1.28)
1.78 (1.63–1.94)
1.88 (1.70–2.08)
2.08 (1.91–2.25)
CRP (mg/l) (gmean, 95% CI)
3.84 (3.21–4.61)
3.97 (3.35–4.71)
5.74 (4.77–6.89)
6.61 (5.60–7.80)
Cystatin C (mg/l) (gmean,95% CI)
0.67 (0.66–0.69)
0.67 (0.65–0.70)
0.71 (0.68–0.74)
0.76 (0.73–0.80)
Serum ALT (IU/L) (gmean,95% CI)
24.0 (22.4–25.6)
26.7 (24.8–28.9)
23.2 (21.4–25.1)
19.4 (17.9–21.1)
Serum GGT (IU/L) (gmean, 95% CI)
26.9 (24.7–29.2)
36.2 (32.7–40.1)
37.7 (33.7–42.1)
38.0 (34.0–42.5)
Diabetes (%, 95% CI)
4.0 (0.8–7.1)
4.0 (0.8–7.1)
9.4 (4.7–14.1)
28.3 (21.0–35.7)
Smoking (%, 95% CI)73.3 (66.1–80.5)78.1 (71.5–84.8)67.1 (59.5–74.7)76.3 (69.4–83.2)
Characteristics of participants by age quartile

Logistic regression

In the logistic regression modelling, SBP, serum uric acid, CRP and diabetes were significantly associated with albuminuria (Table  2) and it was marginally significant for GGT (p = 0.054) while there was significantly inverse relationship between serum albumin and albuminuria (Table  2). Table  3 shows that the independent correlates of microalbuminuria were SBP, CRP, serum albumin (inverse association) and uric acid (marginally significantly, p = 0.068) while the independent predictors of overt albuminuria were total cholesterol, SBP, uric acid, cystatin c, diabetes, serum albumin and ALT (both were negative association).
Table 2

Logistic regression of any albuminuria (ACR ≥ 17 mg/g for men; ≥25 for women)

VariablesOdds ratio95% CIP
Age
1.15
0.94–1.40
0.181
BMI
0.99
0.95–1.04
0.767
Cholesterol
1.09
0.87–1.37
0.429
HDL
0.63
0.29–1.38
0.253
SBP
1.02
1.01–1.03
0.004
Serum albumin
0.91
0.87–0.95
<0.001
Serum uric acid*
3.16
1.31–7.61
0.010
ALT*
1.01
0.62–1.65
0.995
CRP*
1.29
1.07–1.57
0.009
Cystatin C*
1.69
0.66–4.30
0.275
Triglycerides*
1.47
0.93–2.30
0.103
GGT*
1.50
0.98–2.31
0.054
Diabetes
2.49
1.18–5.24
0.016
Smoking1.050.68–1.640.853

*log–transformed.

Table 3

Logistic regression modellings for microalbuminuria and overt albuminuria

 
Microalbuminuria
 
Overt albuminuria
 
VariablesOdds ratio95% CIPOdds ratio95% CIP
Age
1.15
0.94–1.43
0.187
1.11
0.83–1.47
0.491
BMI
0.98
0.94–1.03
0.454
1.04
0.98–1.10
0.183
Cholesterol
0.99
0.78–1.27
0.963
1.49
1.11–1.99
0.009
HDL
0.71
0.31–1.62
0.418
0.51
0.15–1.73
0.281
SBP
1.02
1.0–1.03
0.016
1.02
1.00–1.03
0.020
Serum uric acid
2.42
0.94–6.24
0.068
3.66
1.11–12.0
0.029
Serum albumin
0.95
0.91–0.99
0.044
0.85
0.80–0.90
<0.001
ALT*
1.29
0.76–2.20
0.355
0.50
0.27–0.94
0.031
CRP*
1.33
1.08–1.64
0.007
1.05
0.80–1.38
0.713
Cystatin C*
0.58
0.16–2.06
0.390
8.20
2.68–25.1
<0.001
Triglycerides*
1.48
0.92–2.40
0.114
1.48
0.79–2.76
0.225
GGT*
1.33
0.84–2.11
0.202
1.50
0.88–2.58
0.136
Diabetes
1.88
0.83–4.25
0.133
2.41
1.20–4.87
0.014
Smoking1.150.71–1.860.5840.740.40–1.350.326

*log–transformed.

Notes: Microalbuminuria refers to ACR 17–249 mg/g for men and 25–354 for women; Overt albuminuria: ACR ≥ 250 for men and ≥355 for women.

Logistic regression of any albuminuria (ACR ≥ 17 mg/g for men; ≥25 for women) *log–transformed. Logistic regression modellings for microalbuminuria and overt albuminuria *log–transformed. Notes: Microalbuminuria refers to ACR 17–249 mg/g for men and 25–354 for women; Overt albuminuria: ACR ≥ 250 for men and ≥355 for women. Figures  1 and 2 shows the predicted amplification of albuminuria and overt albuminuria produced by the simultaneous presence of risk factors identified as independent predictors in the final multivariate model. The predictors were categorical variables derived from each continuous variable using sex-specific median value as the cut-off point. There were substantial rates of elevated ACR (≥17 mg/g for men; ≥25 for women) with increasing age even in the absence of other factors which had independent correlations with ACR. However, the probability of overt albuminuria with increasing age alone was more modest.
Figure 1

Predicted amplification of albuminuria by multiple risk factors.

Figure 2

Predicted amplification of overt albuminuria by multiple risk factors.

Predicted amplification of albuminuria by multiple risk factors. Predicted amplification of overt albuminuria by multiple risk factors.

Discussion

In this high risk Aboriginal population, SBP, serum albumin (inverse association), uric acid, CRP, diabetes were significantly associated with albuminuria (p value for GGT was 0.054). SBP, serum albumin, CRP were significantly associated with microalbuminuria (p value for uric acid was 0.068) while additional risk factors including total cholesterol, ALT, cystatin C and diabetes were significantly associated with overt albuminuria. The shared and the different risk factors for these conditions, traditionally considered to be stages of albuminuria over a continuum, suggest that microalbuminuria and overt albuminuria might reflect different as well as shared phenomena. Different or inconsistent associations of albuminuria with abdominal obesity have been reported in some other studies [13-16] but no significant evidence in this study. Macroalbuminuria was independently associated with hypertension, diabetes and abdominal obesity in Central Australian Aboriginal communities [13]. A close link between high blood pressure and microalbuminuria has been reported by others. In the relationship, higher blood pressure might cause microalbuminuria by increasing glomerular filtration pressure and subsequent renal damage, [17] and adequate control of SBP was associated with low risk for development of microalbuminuria [18]. In addition, the magnitude of urinary albumin excretion determines the severity of BP elevation, [19,20] and there exist heritability and genetic associations between increased urinary albumin excretion and BP in some ethnic groups [21]. CRP, a member of the class of acute phase reactants, is regarded as a sensitive marker of inflammation and was reported as an important contributor to albuminuria (but not an independent predictor for overt albuminuria) in this study. CRP levels are affected significantly by an individual’s genetic makeup and life style [22,23]. People who smoke, have elevated BP, who are overweight or have less physical activity, tend to have higher level of CRP [24,25]. CRP has been reported to be a novel cardiovascular risk factor, [26] and we have reported that it is independently associated with the development of diabetes in this Aboriginal cohort [27]. A significant association between CRP level and microabuminuria has also been reported in some other epidemiological studies [26,28-30]. The relationship might indicate that chronic inflammation is a potential mediator between microalbuminuria and cardiovascular disease (CVD) [28]. A significant inverse association was found between serum albumin and albuminuria, even after adjusting for a number of confounding factors in this study. Albumin is the major protein produced only in the liver. Lower serum albumin may also indicate some conditions other than liver dysfunction. Serum albumin levels are lowered by infection and inflammation, and they decrease as a consequence of acute phase inflammatory reactions, [31] in which increased cytokines switch protein synthesis in the liver from albumin to other phase proteins, and serum albumin falls [32]. Serum albumin levels were also inversely related to age in this study, and, ironically, have been described as higher in smokers than non-smokers [33,34]. Thus, further evaluation in longitudinal studies is required to determine if the inverse relation between serum albumin and albuminuria is causal. Other reports describe that lower levels of pathologic albuminuria are significantly associated with cigarette smoking and heavy alcohol consumption [35]. However there was no significant association between smoking and albuminuria in our study. Serum GGT has long been used as a liver function test and a marker of excessive alcohol use; [36,37] about 35% of women and 87% of men in this cohort were drinkers, with of men with most males drinking to excess [38]. Associations between high GGT and CVD, [31,32] type-2 diabetes [33] and hypertension [38] have been reported. Our findings support the observation that GGT might also be a novel predictor of chronic kidney disease [39,40]. The possible mechanism of such associations is that oxidative stress depletes glutathione stores which leads to a compensatory increase in GGT, [41,42] or more free radicals might contribute to high levels of GGT [43,44]. There is also evidence that high GGT in certain people is genetically based [45,46]. As serum GGT is easy and cheap to measure, it might have important practical implications on predicting albuminuria and other chronic diseases in Aboriginal communities. Strengths of this study include the fact that over 80% adult population in this remote Aboriginal community participated. In addition, as Aboriginal people have significantly higher prevalence of chronic kidney disease (CKD), an easy implemented risk prediction model based on routinely obtained laboratory test is important [47]. In this study, all correlates of albuminuria were derived from the available clinical information, and important metabolic markers such as Cystatin C, uric acid and serum albumin were included in the data analysis. Both the albumin and the CRP have helped shed light on the possibly different associations depending on the level of albuminuria. Third, strength is that we now know that these relationships will apply whether ACR is measured by immunoassay rather than HPLC, as we have proven that both are identical in defining clinical profiles and predicting deaths in this community [11]. There were also some limitations in this study. First, the risk predictors in this study were derived from cross-sectional data only, causal association might not exist or the correlates might not be the same in future forecasting. In fact, some correlates are probably markers of the CKD and CVD risk state rather than causal. A 14–16 year longitudinal study in this community is now under analysis and one of reports revealed that albuminuria was still a significant predictor of all-cause natural death after a 14-year interval in this Aboriginal community. However more longitudinal outcomes would shed further light on this issue. Second, with inclusion of new markers, the numbers went down (from 755 down to 598). Those omitted were slightly older (37 yrs vs. 33 yrs), with higher DBP level (78 mmHg vs. 74 mmHg) and higher prevalence of diabetes (16% vs. 6%) than those included. It indicates that this study may underestimate the strength of correlates to ACR in this community. Third, random rather than 24-h urine ACR value was used to define albuminuria in this study. However, the spot ACR is a validated screening test for microalbuminuria and has been used in this setting for 13 years, with widely published data [13]. Finally, findings from a remote community in the Northern Territory of Australia might not be generalizable to other populations. However, most of the significant correlates in our studies have been demonstrated in other settings [7,48-51].

Conclusions

This is the most detailed modeling of pathologic albuminuria in this setting to date. In this study, SBP, CRP, lower serum albumin, uric acid, GGT and diabetes were significantly associated with albuminuria in the Aboriginal population. The somewhat variable association with risk factors suggests that microalbuminuria and overt albuminuria might reflect different as well as shared phenomena.

Abbreviations

ACR: Urinary albumin to creatinine ratio; BMI: Body mass index; CKD: Chronic kidney disease; GGT: High gamma-glutamyl transferase; CRP: C- reactive protein (CRP); ESRD: End-stage renal disease; ALT: Alanine amino transferase; HPLC: High-performance Liquid chromatography; SBP: Systolic blood pressure; CVD: Cardiovascular disease.

Competing interests

All the authors declared no competing interests.

Authors’ contributions

ZMW - Analysis of data, drafting the article; revising the article, final approval of the version to be published. WH – Design and conduct of field work; Accrual of baselineine and longitudinal data; Conception and interpretation of data; revising the article; providing intellectual content of critical importance to the work described and final approval of the version to be published. ZQW - Revising the article; providing intellectual content of critical importance to the work described and final approval of the version to be published. All authors read and approved the final manuscript.

Authors’ information

ZMW - Ph.D, research fellow/epidemiologist at Centre for Chronic Disease, School of Medicine, The University of Queensland, Australia. W H - FRACP, Professor, Director at Centre for Chronic Disease, School of Medicine, The University of Queensland, Australia. ZQW – PhD, Associate Professor, deputy Director at Centre for Chronic Disease, School of Medicine, The University of Queensland, Australia.

Pre-publication history

The pre-publication history for this paper can be accessed here: http://www.biomedcentral.com/1471-2369/14/176/prepub
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