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Kidney dysfunction: prevalence and associated risk factors in a community-based study from the North West Province of South Africa

Abstract

Background

Globally, the World Health Organization ranks chronic kidney disease (CKD) as one of the top 10 causes of mortality. In South Africa, where noncommunicable diseases have become leading causes of mortality, the true population prevalence of CKD is unknown and associated risk factors remain understudied. This study aimed to describe the prevalence of kidney dysfunction and associated risk factors in a community from the North West province of South Africa.

Methods

This cross-sectional study included 1999 participants older than 30 years. Kidney dysfunction was defined as (i) estimated glomerular filtration rate (eGFR) < 90 ml/min/1.73m2, or (ii) urine albuminuria-to-creatinine ratio (uACR) ≥ 3.0 mg/mmol, or a combination (i and ii). Risk factors included age, sex, urban/rural locality, body mass index (BMI), blood pressure (BP), lipid profile, haemoglobin A1c (HbA1C), C-reactive protein (CRP), gamma-glutamyl transferase (GGT), tobacco use, and HIV status.

Results

Mean age of participants was 48 (42;56) years, and 655/1999 (33%) had eGFR < 90 ml/min/1.73m2 and/or uACR  3.0 mg/mmol. Compared to those with normal kidney function, participants with eGFR < 90 ml/min/1.73m2 and/or uACR ≥ 3.0 mg/mmol were older, female, had higher measures of adiposity, systolic, diastolic, and mean arterial blood pressure, serum lipids and C-reactive protein (CRP) (all p  0.024). In multiple regression analyses eGFR was associated with systolic BP (β = 0.11) and HIV infection (β = -0.09), and albuminuria was associated with elevated CRP (β = 0.12) and HIV infection (β = 0.11) (all p < 0.026). In both groups (individuals with and without kidney dysfunction respectively), eGFR was associated with age (β = -0.29, β = -0.49), male sex (β = 0.35, β = 0.28), BMI (β = -0.12, β = -0.09), low-density/high-density lipoprotein cholesterol ratio (β = -0.17, β = -0.09) and CRP (β = 0.10, β = 0.09) (all p < 0.005); and uACR was associated with female sex (β = 0.10, β = -0.14), urban locality (β = -0.11, β = -0.08), BMI (β = -0.11, β-0.11), and systolic BP (β = 0.27, β = 0.14) (all p < 0.017).

Conclusion

In this study from the North West province, South Africa, eGFR < 90 ml/min/1.73m2 and/or uACR  3.0 mg/mmol was prevalent and associated with modifiable risk factors. The findings may inform screening strategies for kidney disease prevention, focusing on women, obesity, blood pressure control, dyslipidaemia, identifying and treating inflammation, and HIV diagnosis and treatment.

Peer Review reports

Background

Chronic Kidney Disease (CKD) is an emerging public health challenge with an estimated global prevalence of 13% [1, 2]. In sub-Saharan Africa (SSA), CKD affects approximately 14% of the adult population but varies substantially by region [3]. Despite similar estimated prevalence globally and in SSA, there is disproportionate CKD-associated morbidity and mortality in low- and middle-income settings, including SSA [4,5,6,7]. Available data on the burden of CKD in South Africa varies from 2 to 23.9% - in part due to differences in study design and definitions used for CKD [8, 9]. In these South African studies, associated risk for CKD included older age, high body mass index (BMI), sex, cholesterol, diabetes, and hypertension. While the true burden of CKD in SA remains speculative, prevalence is thought to be high because of the rise in noncommunicable diseases (NCD) such as obesity, hypertension, diabetes, and persistent communicable diseases such as HIV infection [10]. Furthermore, many rural communities are undergoing rapid sociodemographic and epidemiological transitions that exacerbate the risk of infectious and NCD [11].

Few population-based studies have been conducted in South Africa to determine CKD prevalence and associated risk factors (modifiable and non-modifiable), which precludes targeted strategies for screening and prevention. The aim of this study was to investigate the prevalence of kidney dysfunction and identify associated risk factors in a mixed urban and rural community from the North West province of South Africa.

Methods

Study population and participants

This study formed part of the multinational Prospective Urban and Rural Epidemiological (PURE) study that recruited urban and rural participants 30 years and older from 20 high-, middle-, and low-income countries. The PURE study aimed to examine the impact of social, economic, and demographic factors, and lifestyle behaviour on cardiovascular risk profiles; and determine the incidence of NCD [12]. The PURE study cohort underwent longitudinal follow-up at five and ten years after recruitment with baseline community-based recruitment from 2005. In this study, the baseline cross-sectional data are presented.

Of 4000 individuals approached to participate, 2010 consented adult participants of self-identified black African ethnicity were recruited from two rural (Ganyesa and Tlakgameng) and two urban (Ikageng and Sonderwater extension 7 and 11) areas in the North West province, South Africa. Criteria for inclusion were age, self-identified black African ethnicity, and permanent residence in above-mentioned areas. Participants with missing data on kidney function were excluded (n = 11) and final sample size for this analysis was n = 1999. All participants gave written informed consent before participation and the study was approved by the Health Research Ethics Committee (NWU-00486-20-A1) of the North-West University. All research-related procedures were conducted in accordance with institutional guidelines and the declaration of Helsinki.

Questionnaires

Questionnaires used in this study were validated for the South African population [13, 14]. With the help of trained field workers, participants completed questionnaires in which they reported information on demographic, health, and lifestyle-related information, including age, sex, alcohol consumption, tobacco use, and medical history.

Anthropometric measurements

Body height (Invicta Stadiometer, IP 1465, Invicta, London, UK), weight (Electronic scale, Precision Health Scale, A&D Company, Tokyo, Japan), and waist circumferences (WC) (Holtain unstretchable metal tape) were measured using standardised methods according to guidelines of the International Society for the Advancement of Kinanthropometry (ISAK) [15]. We calculated BMI as weight (kg)/height (m2).

Cardiovascular measurements

Clinic brachial blood pressure measurements were determined following standardised guidelines [16] using the Omron HEM-757 device (Omron Healthcare, Kyoto, Japan). Before measurements were taken, participants were required to be seated and resting for 10 min. Two measurements were taken on the left arm with 5-minute intervals between the measurements, with reporting of the second measurement. Pulse pressure (PP) was calculated as the difference between systolic blood pressure (SBP) and diastolic blood pressure (DBP) and mean arterial pressure (MAP) was calculated as DBP added to a third of PP. Hypertension was defined as any of the following (i) SBP ≥ 140 mmHg; (ii) DBP  90 mmHg; and (iii) current use of anti-hypertension medication.

Biochemical measurements

Participants were requested to be fasted for approximately 10 h before measurements. Blood samples and a spot urine sample were collected by a registered nurse, stored in ice-filled insulated containers, and transferred to the research laboratory where they were centrifuged, aliquoted, and stored at -20 °C within 2 h of collection. Thereafter, batched samples were transferred to a centralized long-term storage facility (–80 °C biofreezers).

Albumin and creatinine were analysed from serum and spot urine samples using Konelab20i™ auto-analyser (Thermo Fischer Scientific Oy, Vantaa, Finland) and Cobas Integra 400 plus (Roche Diagnostics, Basel, Switzerland), respectively. Serum and urine creatinine was determined by the kinetic colorimetric (Jaffe) assay. Urine albumin was analysed using immunoturbidimetric assay, and uACR was calculated by dividing urine albumin by urine creatinine. Glomerular filtration rate (GFR) was estimated using the Chronic Kidney Disease Epidemiology Collaboration (CKD-EPI) Eq. 2009 for creatinine without adjustment for race [17, 18].

Serum samples were used to determine total cholesterol (TC), high-density lipoprotein cholesterol (HDLC), triglycerides, C-reactive protein (CRP), and gamma-glutamyl transferase (GGT) using Konelab20i™ auto-analyser (Thermo Fischer Scientific, Vantaa, Finland). Low density lipoprotein cholesterol (LDLC) was calculated using the Friedewald formula (LDLC = HDLC – VLDLC where VLDLC = 0.456*TG) [19]. Glucose was analysed in fluoride samples using Vitros DT6011 Chemistry Analyzer (Ortho-Clinical Diagnostics, Rochester, New York, USA). Haemoglobin A1c (HbA1c) was analysed in ethylenediaminetetraacetic acid (EDTA) plasma samples using the D10 Haemoglobin testing system from Bio-Rad (#220 − 0101) that uses ion-exchange high-performance lipid chromatography. Human immunodeficiency Virus (HIV) status was determined according to the South African Department of Health using whole blood for the First Response rapid HIV card test (Premier Medical Corporation Ltd, Daman, India). If the first test result was positive, a second test was performed using an alternative supplier. HIV status was defined as positive if both screening and confirmatory tests were positive (Pareeshak card test (BHA T Biotech, India)).

Definitions

Using the kidney disease improving global outcomes (KDIGO) 2012 Clinical Practice Guideline for the Evaluation and Management of Chronic Kidney Disease guidelines, the biomarkers used to assess kidney function were estimated GFR (eGFR) and albuminuria (uACR) [20]. In the absence of follow-up testing to confirm abnormalities, we could not fulfil the definition of CKD and instead used the term “kidney dysfunction” rather than “CKD”. For this study, we defined “kidney dysfunction” as eGFR < 90 ml/min/1.73 m2 and/or uACR  3.0 mg/mmol.

Statistical analyses

We used IBM® SPSS® Statistics, Version 27 software (IBM Corporation, Armonk, New York) for all statistical analyses. The study was able to detect an effect size of 0.33 with a power of 95% using a minimum of 84 participants per eGFR and per uACR group with the significance level set at 0.05 for multiple linear regression with a maximum of 10 covariates. Variables were tested for normality by visual inspection (histograms and q-q plots) as well as skewness and kurtosis coefficients. Continuous data were expressed as median (interquartile range) and categorical data as proportions. The Mann-Whitney U test was used to compare means and proportions between individuals with eGFR ≥ 90 ml/min/1.73m2 and uACR < 3.0 mg/mmol; and eGFR < 90 ml/min/1.73m2 and/or uACR ≥ 3.0 mg/mmol. Spearman’s rank correlations were used to determine associations between eGFR and uACR (as per the above categories) with lifestyle and cardiometabolic risk factors. We used multiple regression to identify independent associations between various risk factors (age, sex, locality, BMI, SBP, HbA1c, LDLC/HDLC ratio, CRP, GGT, tobacco use, and HIV status) and eGFR and uACR (as per the above categories). Sensitivity analyses were performed for eGFR distributions overall and stratified by sex using (i) the CKD-EPI (creatinine) 2021 equation (no race coefficient) [21]; and (ii) the European Kidney Function Consortium (EKFC) (creatinine) Eq. (22). Sensitivity analyses were also performed to identify independent associations between risk factors and uromodulin. We used z-scores for the continuous variables and actual values for categorical variables.

Results

Baseline characteristics of the overall study population stratified by kidney function are presented in Table 1. Median age of the study population (n = 1999) was 48 years, 37.2% (743/1999) were men, and 50.2% (1004/1999) were from rural areas. Compared to those with normal kidney function (eGFR ≥ 90 ml/min/1.73m2; uACR < 3.0 mg/mmol), individuals with eGFR < 90 ml/min/1.73m2 and/or uACR  3.0 mg/mmol were: older and more likely to be female (both p < 0.001), had higher BMI, WC, blood pressure measures (SBP, DBP and MAP), HbA1c, lipid measures (total cholesterol, LDLC, HDLC and triglycerides), and CRP (all p  0.024), remained hypertensive despite a higher proportion on antihypertensive medication, and had lower rates of alcohol and tobacco use (all p  0.023). Characteristics of the study population stratified by sex have been included as Table S1.

Table 1 Baseline characteristics of the study population overall, and stratified by kidney function measured as eGFR and uACR

Distributions of eGFR and uACR overall, and stratified by sex are detailed in Table 2. For comparison, we performed sensitivity analyses for GFR distributions estimated by the CKD-EPI (creatinine) 2021 (without race) and EKFC (creatinine) equations (Tables S2 and S3).

Table 2 Distribution of eGFR and uACR overall, and stratified by sex

Spearman’s rank correlation was used to test for associations between eGFR and uACR and lifestyle and cardiometabolic risk factors to determine the required covariates to use in the multiple regression model (Table S4).

In multivariate regression analyses (Table 3) age, male sex, BMI, SBP, LDLC/HDLC ratio, CRP, and HIV status were factors associated with eGFR in individuals with eGFR < 90 ml/min/1.73m2 and/or uACR ≥ 3.0 mg/mmol (all p  0.026). These associations were also observed in individuals with normal kidney function except for SBP and HIV infection. Risk factors associated with uACR in those with eGFR < 90 ml/min/1.73m2 and/or uACR  3.0 mg/mmol were female sex, urban locality, BMI, SBP, CRP, and HIV infection (all p < 0.017), and the same associations were observed in individuals with normal kidney function with the exception of CRP and HIV infection.

Table 3 Multiple-regression analysis for associated risk factors stratified by eGFR and uACR.

Since the plasma levels of uromodulin have been suggested to be a promising biomarker of kidney function [23], and were identified as significantly lower in the study population with eGFR < 90 ml/min/1.73m2 and/or uACR ≥ 3 mg/mmol, we performed a sensitivity analysis to determine whether uromodulin was associated with lifestyle and cardiometabolic factors (Table S5).

Discussion

In this community-based, cross-sectional study in a mixed urban and rural population from the North West province of South Africa, we observed that risk factors associated with eGFR < 90 ml/min/1.73m2 and/or uACR ≥ 3.0 mg/mmol included HIV infection, elevated SBP, and elevated CRP (a non-specific marker of systemic inflammation). Overall, the crude prevalence of albuminuria was 13.0% with no significant sex-related differences in prevalence although levels of albuminuria were significantly higher in women. The crude prevalence of eGFR < 90 ml/min/1.73m2 was 29.2% and when compared by eGFR strata, with particular focus on eGFR < 60 ml/min/1.73m2, more women than men were affected. Women had higher BMIs and waist circumferences, higher total cholesterol and LDLC, and lower HDLC levels, and more lived in a rural location when compared to men.

The association with HIV, reduced eGFR, and albuminuria is well-described [24, 25]. HIV can directly affect the cellular structure of kidney parenchymal cells, or initiate damage through an immune inflammatory response [26]. The absence of an association with reduced eGFR in our study is notable as several studies have reported a decline in eGFR in HIV-infected populations [27,28,29]. One potential explanation is that our participants were young with relatively preserved kidney function, and most were ART naïve. The association with albuminuria might have been a consequence of untreated HIV infection, HIV-associated kidney disease, or comorbid infectious disease (most commonly TB). In the absence of confirmatory testing for albuminuria or longitudinal follow-up in this study, whether albuminuria persisted or resolved after initiation of ART remains speculative.

Persistent, low-grade inflammation plays an important role in the pathophysiology of kidney disease [30]. There are many factors that contribute to the inflammatory state, including increased production of proinflammatory cytokines and oxidative stress, acidosis, acute, chronic and recurrent infection [31]. While this study is one of a few in SA to describe the association between albuminuria and markers of inflammation (elevated CRP) this finding is well-described in Asia [32, 33]. One proposed mechanism to explain the association is that elevated CRP reflects the inflammatory milieu, and inflammatory cytokines lead to mesangial cell proliferation, matrix overproduction and increased vascular permeability resulting in albuminuria [34].

Many cardiometabolic risk factors are associated with kidney disease. High blood pressure is closely linked with kidney disease, and it can either be a cause or a consequence of CKD [35]. High blood pressure has been associated with the progression of CKD, the development of CVD and cardiovascular mortality [36,37,38]. Hypertension is strongly associated with kidney disease in South African populations [10, 39]. There is a high prevalence of hypertension in South Africa [40] and since CKD increases with blood pressure it is not surprising that we found eGFR to associate with SBP in our population.

Obesity is one of the common causes of CKD that lead to the deterioration of structure and function of the kidney [41]. BMI had been shown to be a risk factor associated with CKD in SSA [7]. Our finding confirms that eGFR declines with an increase in obesity [42]. There are, however, conflicting findings on the association of obesity and CKD. Some studies have found counterintuitive associations between obesity and more favourable clinical outcomes in individuals with CKD [43]. The underlying mechanisms of this reverse epidemiology are still unknown. Dyslipidaemia associated with CKD and is characterised by high triglycerides, high LDLC, low HDLC and altered lipoprotein composition [44]. Disturbances in lipoprotein metabolism is seen in individuals with kidney disease and individuals with hypercholesterolemia were found to have a high prevalence of albuminuria and reduced eGFR [45]. We found eGFR to associate with LDLC/HDLC ratio, and according to our knowledge, this is the first study to look at LDLC/HDLC ratio in a South African population.

Disparities in the risk and prevalence of CKD between men and women have been reported. Women tend to have higher prevalence of CKD whereas men are more likely to suffer kidney failure as kidney function declines faster in men[46]. In our study women appeared to have a higher prevalence of CKD and had more advanced stages according to eGFR compared to men. We also found albuminuria to associate with urban locality. Due to rapid urbanisation accompanied by changes in diet, lack of physical activity and increased habits such as smoking and alcohol consumption, it is not surprising that high prevalence of CKD is observed in urban areas [47, 48].

We also looked at the relationship between uromodulin and the risk factors and we found uromodulin to associate with GGT, tobacco use, urban locality, CRP and HIV infection. According to our knowledge these findings have never been described before and future studies are needed to investigate further.

The strength of this study is the large, well-characterised community-based cohort supported by a well-equipped research facility, and inclusion of rural and urban sites in a province of South Africa in which population-based research has not previously been conducted. A major study limitation pertains to the laboratory methodology for creatinine measures. At the time the study was conducted, isotope dilution mass spectrometry (IDMS)-traceable calibrated creatinine assays were not routine laboratory practice. Furthermore, the Jaffe method, rather than the enzymatic, was used for the creatinine assay. In combination, both factors contribute substantial sources of analytic bias in the interpretation of eGFR results and this effect cannot be underestimated. Aside from laboratory-induced bias, non-GFR determinants of creatinine (low muscle mass, low protein ingestion, and possibly, different renal tubular handling of creatinine) are potential contributors to the imprecision of GFR estimating equations in African populations [18] – evident in this study by the discrepant proportions of participants in each eGFR stratum depending on which estimating equation was used. Other limitations of the study included a single measure of eGFR and uACR, without confirmation after three months which precluded confirmation of CKD; the cross-sectional study design which prevented any assessment of causality with lifestyle and cardiometabolic risk factors and measures of kidney function; and limited lifestyle measures data such as diet and physical activity. Most HIV infected individuals were newly diagnosed and ART naive, but for those on ART, no information was collected regarding their treatment and virological control. These factors, and the cross-sectional study design prevented analysis of the effect of ART on the relationship between HIV and kidney function. While elevated CRP is a non-specific marker of inflammation, no further investigations were undertaken to measure additional infectious or inflammatory markers that might have shed light on the association we observed between inflammation with uACR. Lastly, our study was confined to the North West province and may not be generalisable to other ethnic groups in South Africa.

Conclusion

In this study from urban and rural communities in the North West province, South Africa, the prevalence of eGFR < 90 ml/min/1.73m2 and/or uACR  3.0 mg/mmol was high, and associated with modifiable risk factors. Our findings may inform screening strategies for kidney disease prevention, focusing on women, obesity, systolic blood pressure control, dyslipidaemia, identifying and treating inflammation, and HIV diagnosis and treatment.

Availability of data and materials

The dataset generated and/or analysed during the current study are not publicly available due to contractual agreements but are available from the corresponding author on reasonable request.

Abbreviations

BMI:

body mass index

CKD:

Chronic kidney disease

CKD-EPI:

CKD Epidemiology Collaboration

CVD:

Cardiovascular disease

CRP:

C-reactive protein

DBP:

Diastolic blood pressure

eGFR:

Estimated glomerular filtration rate

EKFC:

European Kidney Function Consortium

GGT:

Gamma-glutamyl transferase

HbA1c:

Haemoglobin A1c

HDLC:

High density lipoprotein cholesterol

HIV:

Human immunodeficiency virus

HT:

Hypertension

KDIGO:

Kidney disease improving global outcomes

LDLC:

Low density lipoprotein cholesterol

MAP:

Mean arterial pressure

PURE:

Prospective Urban and Rural Epidemiological

SBP:

Systolic blood pressure

TC:

Total cholesterol

uACR:

Urine albumin-to-creatinine ratio

UMOD:

uromodulin

WC:

Waist circumference.

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Acknowledgements

The authors would like to thank all the participants who voluntarily took part in the study, the students and supporting staff of the PURE study and in particular: (i) The PURE-SA research team, the field workers and the office staff at the North-West University, South Africa. (ii) The PURE-International: The PURE project office staff at the Population Health Research Institute (PHRI), Hamilton Health Sciences and McMaster University, ON, Canada.

Funding

This project was funded by the South African Netherlands Research Programme on Alternatives in Development, North-West University, Population Health Research Institute, Roche Diagnostics (South Africa) and South African Medical Research Council, South African National Research Foundation (NRF) and South African Sugar Association (SASA) for the analyses (grant number: Project 249).

Opinions expressed and conclusions are those of the authors and are not necessarily to be attributed to the NRF.

Open access funding provided by North-West University.

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NHN was responsible for the planning, writing and composition of the manuscript as well as the statistical analyses. GGM, LFG-M, JF and LL analysed the results of the statistical analyses, gave recommendations for the framework, writing and composition of the manuscript as well as revising it critically for intellectual content. LL further supervised the statistical analyses.

Corresponding author

Correspondence to Leandi Lammertyn.

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This study was approved by the Health Research Ethics Committee (NWU-00486-20-A1) of the North-West University and all procedures were done according to the institutional guidelines and the declaration of Helsinki. All participants gave and signed an informed consent to participate.

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Not applicable.

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The authors declare that they have no competing interests.

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Navise, N.H., Mokwatsi, G.G., Gafane-Matemane, L.F. et al. Kidney dysfunction: prevalence and associated risk factors in a community-based study from the North West Province of South Africa. BMC Nephrol 24, 23 (2023). https://doi.org/10.1186/s12882-023-03068-7

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