Skip Navigation
Skip to contents

Diabetes Metab J : Diabetes & Metabolism Journal

Search
OPEN ACCESS

Articles

Page Path
HOME > Diabetes Metab J > Volume 45(5); 2021 > Article
Original Article
Complications High Incidence of Chronic Kidney Disease among Iranian Diabetic Adults: Using CKD-EPI and MDRD Equations for Estimated Glomerular Filtration Rate
Seyyed Saeed Moazzeni1*orcid, Reyhane Hizomi Arani1*orcid, Mitra Hasheminia1, Maryam Tohidi1, Fereidoun Azizi2, Farzad Hadaegh1orcidcorresp_icon
Diabetes & Metabolism Journal 2021;45(5):684-697.
DOI: https://doi.org/10.4093/dmj.2020.0109
Published online: March 16, 2021
  • 6,886 Views
  • 169 Download
  • 16 Web of Science
  • 18 Crossref
  • 18 Scopus

1Prevention of Metabolic Disorders Research Center, Research Institute for Endocrine Sciences, Shahid Beheshti University of Medical Sciences, Tehran, Iran

2Endocrine Research Center, Research Institute for Endocrine Sciences, Shahid Beheshti University of Medical Sciences, Tehran, Iran

corresp_icon Corresponding author: Farzad Hadaegh orcid Prevention of Metabolic Disorders Research Center, Research Institute for Endocrine Sciences, Shahid Beheshti University of Medical Sciences, No. 24, Parvaneh Street, Velenjak, Tehran 19395-4763, Iran E-mail: fzhadaegh@endocrine.ac.ir
*Seyyed Saeed Moazzeni and Reyhane Hizomi Arani contributed equally to this study as first authors.
• Received: April 29, 2020   • Accepted: September 27, 2020

Copyright © 2021 Korean Diabetes Association

This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/4.0/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.

prev next
  • Background
    To investigate the population based incidence rate of chronic kidney disease (CKD) and its potential risk factors among Iranian diabetic adults during over 14 years of follow-up.
  • Methods
    Two different equations (Chronic Kidney Disease Epidemiology Collaboration [CKD-EPI] and Modification of Diet in Renal Disease [MDRD]) were applied for the calculating the estimated glomerular filtration rate (eGFR). Among a total of 1,374 diabetic Tehranian adults, 797 and 680 individuals were eligible for CKD-EPI and MDRD analyses, respectively. CKD was defined as eGFR lower than 60 mL/min/1.73 m2. Multivariable Cox proportional hazard models were used to estimate the hazard ratios (HRs) and 95% confidence intervals (CI) for all potential risk factors.
  • Results
    The incidence rates (95% CI) of CKD per 1,000 person-years were 43.84 (39.49 to 48.66) and 55.80 (50.29 to 61.91) based on CKD-EPI and MDRD equations, respectively. Being older, a history of cardiovascular disease, and having lower levels of eGFR were significant risk factors in both equations. Moreover, in CKD-EPI, using glucose-lowering medications and hypertension, and in MDRD, female sex and fasting plasma glucose ≥10 mmol/L were also independent risk factors. Regarding the discrimination index, CKD-EPI equation showed a higher range of C-index for the predicted probability of incident CKD in the full-adjusted model, compared to MDRD equation (0.75 [0.72 to 0.77] vs. 0.69 [0.66 to 0.72]).
  • Conclusion
    We found an incidence rate of more than 4%/year for CKD development among our Iranian diabetic population. Compared to MDRD, it can be suggested that CKD-EPI equation can be a better choice to use for prediction models of incident CKD among the Iranian diabetic populations.
- The incidence rate of CKD was over 4%/year among our Iranian diabetic population.
- Older age, history of CVD, and lower levels of eGFR were significant risk factors.
- Using glucose-lowering drugs and hypertension increased risk in CKD-EPI analysis.
- Female sex and FPG level ≥10 mmol/L were also independent risk factors in MDRD.
- CKD-EPI had higher discriminatory ability for prediction of CKD than MDRD.
Chronic kidney disease (CKD) is defined as kidney damage or glomerular filtration rate (GFR) lower than 60 mL/min/1.73 m2 lasting at least 3 months. It was a considerable public health challenge, with a global prevalence of 13.4% [1]. Previous studies have indicated a greater CKD burden in low- and middle-income countries, responsible for about 80% of overall CKD cases [2]. We previously reported that about 2.9% of women and 1.3% of men developed CKD annually among the Iranian adult population [3]; this issue was more prominent among those with type 2 diabetes mellitus (T2DM) constituting 11.37% of the Iranian adult population in 2011 [4].
It is well-known that diabetes mellitus (DM) plays a strong role in CKD development, almost tripling this phenomenon’s probability in both sexes [5]. Pro-inflammatory processes, glomerular injuries such as thickening of basal glomerular membranes, tubular injuries such as the diabetic kidney’s premature senescence, intra-renal vascular disease, and renin-angiotensin system insufficiency have been suggested to explain renal impairment in patients with T2DM [6]. The annual incidence rate of CKD varies from 2.2% to 4.3% in different populations with T2DM [7]. Moreover, it was shown that incident CKD was increased by female sex, obesity, older age, albuminuria, longer duration of diabetes, poor glycemic control, presence of macro-vascular complications, and higher blood pressure (BP), as well as low baseline estimated glomerular filtration rate (eGFR) [7-9]. Recently, Jiang et al. [10] established a model for predicting diabetic kidney disease (DKD) in a meta-analysis. They found huge heterogeneity (all I2 ≥70%) among included cohort studies conducted in Europe, Americas, and Eastern Asia for risk factors of DKD (apart from smoking), especially for eGFR with I2=100% [10].
Previous studies have reported some differences in the methodological aspects of GFR estimation, due to applied equations [11,12]. The most common equations used to estimate GFR are the Modification of Diet in Renal Disease (MDRD) study equation and the Chronic Kidney Disease Epidemiology Collaboration (CKD-EPI) equation [12]. In a study on 24,516 adults with diabetes, in comparison with CKD-EPI equation, smaller bias and higher accuracy were observed for MDRD equation [13]. On the other hand, in a meta-analysis of 1,130,472 adults, CKD-EPI was found to have more accurate categorization for the risk of mortality and end stage renal disease among diabetic, high risk, and general populations [14].
In the current study we examined the incidence rate and risk factors of CKD among Iranians with T2DM aged over 20 years, using MDRD and CKD-EPI equations for calculation of eGFR, in the oldest cohort of the Middle East and North Africa region, a zone with high burden of T2DM and CKD [15].
Study design
This study was done within the framework of the Tehran Lipid and Glucose Study (TLGS), which is a community-based cohort study on a representative sample of Tehran’s citizens in district 13. The TLGS aims to determine the epidemiologic aspect of non-communicable diseases (NCDs) and their risk factors. It also aims to prevent NCDs by advancing healthier lifestyles. The TLGS enrollment was conducted in two phases; phase one (January 31, 1999 to July 3, 2001) and phase two (October 20, 2001 to September 22, 2005). Data gathering for follow-up was conducted up to phase VI in 3-year intervals (i.e., phase III: 2005 to 2008; phase IV: 2008 to 2011; phase V: 2011 to 2014; and phase VI: 2015 to 2018). Further details on the TLGS design and enrollment have been previously published [16].
Study population
Among a total of 12,288 individuals aged >20 years, 1,374 subjects (1,163 individuals from phase I and 211 new individuals from phase II) were considered as diabetic population. Considering CKD-EPI equation, we initially excluded 325 subjects with prevalent CKD stages 3 to 5 at baseline (i.e., eGFR <60 mL/min/1.73 m2) [17]. Furthermore, the subjects with missing information on covariates such as body mass index (BMI), waist circumference (WC), creatinine levels, fasting plasma glucose (FPG), triglyceride level (TG), high-density lipoprotein cholesterol (HDL-C), total cholesterol (TC), systolic blood pressure (SBP), diastolic blood pressure (DBP), physical activity level, smoking status, and educational level at baseline were excluded (n=53, considering overlap features between numbers). After excluding those with no follow-up measurement (n=199), 797 participants who successfully followed until April 2018 (the 6th examination cycle) were eligible for analysis. A similar approach was applied to 1,374 diabetic participants based on MDRD equation. After the exclusion for prevalent CKD (n=471), those with missing data (n=49), those without any follow-up after recruitment (n=174), 680 eligible participants remained for MDRD analysis. Moreover, we had only three cases with type 1 of diabetes with a history of diabetic ketoacidosis at the time of presentation. Hence considering a very few number of patients with type 1 in our study sample, we generally considered our participants as a T2DM population.
This study was approved by the Institutional Review Board (IRB) of the Research Institute for Endocrine Sciences, Shahid Beheshti University of Medical Science (code number: IR. SBMU.ENDOCRINE.REC.1399.054). All subjects provided written informed consent. All methods of this study were performed following the relevant guidelines and regulations.
Clinical and laboratory measurements
Using standard questionnaires, a trained interviewer gathered data on demographic characteristics, past medical history, drug history, family history of cardiovascular disease (CVD) and T2DM, educational level, smoking habits and physical activity level.
Considering the TLGS protocol [16], we measured weight with shoes removed and wearing light clothing to the nearest 100 g. The height of subjects was measured in a standing position, using a tape measure. The mean of two measurements of SBP and DBP on the right arm, which were taken after a 15-minute rest in a sitting position, was defined as the subject’s BP.
A blood sample was taken after 12 to 14 hours of overnight fasting between 7:00 and 9:00 AM from all participants. A 82.5 g glucose monohydrate solution (equivalent to 75 g anhydrous glucose) was orally taken by participants (only for those without a history of using glucose-lowering medications). Then a blood sample was taken 2 hours later, for the oral glucose tolerance test. FPG and 2-hour post-challenge plasma glucose (2h-PCPG) were measured using enzymatic colorimetric glucose oxidase method, both inter-and intra-assay coefficient of variations (CVs) were less than 2.2%. Measurements of serum creatinine (SCr) levels were done using kinetic colorimetric Jaffe with a sensitivity of 0.2 mg/dL (range, 18 to 1,330 mmol/L [0.2 to 15 mg/dL]). Based on the manufacturer’s recommendation, reference intervals were 80 to 115 mmol/L (0.9 to 1.3 mg/dL), 53 to 97 mmol/L (0.6 to 1.1 mg/dL) in men and women, respectively. Both the baseline and follow-up phases had intraassay, and inter-assay CVs of less than 3.1%. More details on laboratory data including TG, TC, and HDL-C were previously expounded [16].
Definition of outcomes and variables
Incident CKD was defined as eGFR lower than 60 mL/min/1.73 m2 occurring at any time during the follow-up period. This equals to stage 3 to stage 5 CKD according to the Kidney Disease Outcome Quality Initiative (KDQOI) guidelines [17]. GFR was estimated from SCr values using both CKD-EPI and MDRD equations.
CKD-EPI equation [18]: Firstly, creatinine values were multiplied by 0.95 before eGFR calculation to standardize SCr [19,20].
eGFR=141×[the minimum of standardized SCr (mg/dL)/κ or 1]α×[the maximum of standardized SCr (mg/dL)/κ or 1] −1.209×0.993age×(1.018 if female)×(1.159 if black), where κ is 0.7 for females and 0.9 for males and α is −0.329 for females and −0.411 for males.
MDRD equation [20]:
eGFR=186×[SCr (mg/dL)]−1.154×(Age)−0.203×(0.742 if female).
Diabetes was defined as taking any glucose-lowering medications (known DM) or having FPG ≥7 mmol/L and/or 2hPCPG ≥11.1 mmol/L (newly diagnosed DM). According to TLGS protocol, glycosylated hemoglobin (HbA1c) measurement was not performed at the recruitment phases; hence, FPG categories were used as a surrogate for HbA1c; it categorized as FPG <7.22 mmol/L, 7.22≤ FPG <10.0 mmol/L, and FPG ≥10 mmol/L, corresponding to HbA1c levels of <7%, 7% to 8%, and ≥8%, respectively [21]; a similar approach was applied in our previous study [22]. Hypercholesterolemia was defined as having TC ≥5.1 mmol/L or using lipid-lowering medications. Hypertriglyceridemia was considered as having TG ≥1.695 mmol/L and low HDL-C was defined as having HDL-C <1.036 mmol/L for men and <1.295 mmol/L for women or using lipid-lowering medications. Since the distribution of eGFR was left skewed among our population, we preferred the categorical presentation of this variable as tertile rather than using predefined cut-off points. Participants divided into three tertiles according to eGFR; top tertile: eGFR >79.4 mL/min/1.73 m2; middle tertile: 70.0≤ eGFR ≤79.4 mL/min/1.73 m2; and bottom tertile: 60≤ eGFR <70.0 mL/min/1.73 m2 for CKD-EPI analysis. For MDRD analysis participants were also divided into top tertile: eGFR >72.8 mL/min/1.73 m2; middle tertile: 66.2≤ eGFR ≤72.8 mL/min/1.73 m2; and bottom tertile: 60≤ eGFR <66.2 mL/min/1.73 m2. General obesity was classified in three groups: BMI <25 kg/m2 (normal); 25≤ BMI ≥30 kg/m2 (overweight); and ≥30 kg/m2 (obese). Central obesity was defined as WC ≥90 cm for both sexes [23]. According to the seventh report of the Joint National Committee on prevention, detection, evaluation, and treatment of high blood pressure [24], BP was categorized into three groups; normal: SBP <120 mm Hg and DBP <80 mm Hg; prehypertension: SBP 120 to 139 mm Hg and/or DBP 80 to 89 mm Hg; and hypertension: SBP ≥140 mm Hg or DBP ≥90 mm Hg or using anti-hypertensive medications. Age was classified into three groups: 21–40, 41–60, and >60 years. The TLGS used the Lipid Research Clinic questionnaire for those who were enrolled in phase I, in which low physical activity was defined as having physical activity less than 3 days per week. Moreover, using the Modifiable Activity Questionnaire (MAQ), for those participants who were enrolled at phase II, individuals who had less than 600 minutes per week of metabolic equivalent tasks were considered as the low physical activity group [16,25]. Educational levels were categorized as having <6, 6 to 12, and >12 years of formal education. Smoking status was classified as current smokers, former smokers, and never smokers. A positive family history of premature CVD was considered as any history of coronary heart disease/ stroke in a male first-degree relative younger than 55 years or female first-degree relative younger than 65 years. A positive family history of DM was considered as any history of DM in a first-degree relative.
Statistical analyses
Descriptive statistics (mean±standard deviation, frequency [%]) were used to describe baseline characteristics based on CKD-EPI and MDRD equations. Comparing baseline characteristics among respondents (study participants) versus nonrespondents (including those with missing data of covariates at baseline or those without any follow-up) was done using Student’s t-test and chi-square tests, as appropriate. The mean difference (95% confidence interval [CI]) of continuous variables and the difference in the prevalence (95% CI) of each category of categorical variables were estimated to compare respondents with non-respondents.
Survival time was defined as the time of censoring or date of incident CKD, whichever firstly occurred. The event date for the incident CKD cases was defined as mid-time between the date of follow-up visit in which the CKD was diagnosed for the first time, and the most recent follow-up visit prior to the diagnosis. The follow-up time was drawn from the difference between the calculated mid-time date and the date at which the subjects entered the study. For censored subjects, the survival time was the interval between the first and last observation dates. Study participants were censored due to death, loss to follow-up, or the end of observation period. Follow-up duration and incidence rates were calculated using the measured survival time.
Incidence density rate of CKD per 1,000 person-years and respective 95% CIs were calculated for each gender and the total population across age groups by dividing the number of events to person-years at risk.
Univariate Cox regression was performed for each categorical potential risk factor including sex (men as reference), age groups (21 to 40 years as reference), BMI (normal as reference), central obesity, BP categories (normal as reference), FPG baseline categories (FPG <7.22 mmol/L as reference), glucose-lowering medications, low HDL-C, hypertriglyceridemia, hypercholesterolemia, lipid-lowering medications, positive history of CVD, physical activity, education level (greater than 12 years as reference), smoking status (never smokers as reference), family history of CVD, family history of DM, and eGFR baseline tertiles (top tertile as reference). Covariates with P values <0.20 in univariable analysis were then selected to enter the multivariable Cox proportional hazard regression analysis, to assess the association of selected categorical potential risk factors with incident CKD. Three models were defined: Model 1 was adjusted for age and sex; Model 2 was further adjusted for clinical variables including education level, history of CVD, BP categories, lipid-lowering medications (only for CKD-EPI analysis), and glucose-lowering medications; Model 3, further adjusted for laboratory data including FPG baseline categories and eGFR baseline tertiles.
To be sure about the event classification ability of the suggested variables, Harrell’s C-index was calculated, and using bootstrap resampling with 1,000 replications, optimism-corrected C-index (95% CI) was reported to consider optimization. A C-index equal to 1.0 indicates perfect discrimination. Moreover, the Akaike information criterion (AIC) was calculated for the measurement of the model fit. By adding a new factor to the base model, a drop of >10 in AIC is considered as a significant improvement in risk prediction [26].
The proportional hazards assumption in the Cox model was assessed with the Schoenfild residual test and all proportionality assumptions were appropriate. Statistical analyses were performed using SPSS for Windows version 20 (IBM Co., Armonk, NY, USA) and STATA version 14 (StataCorp., College Station, TX, USA); P values ≤0.05 were statistically considered significant.
The study population consisted of 797 participants (350 men) with a mean age of 51.6 years in CKD-EPI analysis. The baseline characteristics of respondents and non-respondents are shown in Table 1 for CKD-EPI analysis. Compared to non-respondents, respondents were about 4 years younger and had 0.7 unit higher BMI. Moreover, hypertriglyceridemia and family history of DM were more prevalent among respondents; however, non-respondents had higher prevalence of history of CVD and glucose-lowering medications usage. Other characteristics were similar between respondents and non-respondents. Additionally, for MDRD analysis, the baseline characteristics of the respondents and non-respondents are shown in Table 2, which consisted of 680 eligible respondent individuals (327 men) with a mean age of 51.0 years.
During a median follow-up of 14.40 years (interquartile range [IQR], 10.34 to 16.23 years), 352 incident CKD cases have occurred in CKD-EPI analysis. Considering MDRD equation, 356 incident CKD cases were also found during a median follow-up of 14.37 years (IQR, 10.35 to 16.21 years). The crude incidence rates of CKD across age groups are presented in Table 3. The crude incidence rate of CKD for CKD-EPI and MDRD analyses were 43.84 (95% CI, 39.49 to 48.66) and 55.80 (95% CI, 50.29 to 61.91) per 1,000 person-years in the total population, respectively. In general, women had a higher incidence rate of CKD, which reached a significant level in the total age-group in MDRD analysis (45.76 [95% CI, 38.82 to 53.94] for men and 65.30 [95% CI, 57.11 to 74.66] for women per 1,000 person-years). Moreover, older adults experienced higher incidence rates of CKD.
Univariate hazard ratios (HR) and 95% CI of potential categorical risk factors are shown in Supplementary Table 1. Being a woman (only in MDRD analysis), older age groups, prehypertension (only in MDRD analysis), hypertension, using glucose-lowering medications, positive history of CVD, bottom and middle tertiles of eGFR, and having <6 years of formal education were significantly associated with a higher risk of incident CKD. Moreover, compared to the participants with FPG of less than 7.22 mmol/L, having a level of ≥10 and ≥7.22 mmol/L of FPG, were significantly associated with a higher risk of incident CKD in CKD-EPI and MDRD analyses, respectively.
Multivariable HRs and 95% CI of incident CKD among the diabetic population based on CKD-EPI and MDRD equations are presented in Tables 4 and 5, respectively. In model 1, being a woman had age-adjusted HRs of 1.30 (95% CI, 1.04 to 1.61) and 1.54 (95% CI, 1.25 to 1.91) in CKD-EPI and MDRD analyses, respectively. Moreover, compared to the group aged 21 to 40 years, older age groups were at significantly higher risk of incident CKD. Following further adjustment in model 2 (not adjusted with laboratory factors), older age groups, positive history of CVD, hypertension, and using glucose-lowering medications were associated with increased risk of CKD development in both analyses. Moreover, being a woman increased the risk of incident CKD in MDRD analysis. After more adjustment for laboratory factors (model 3), female sex (in MDRD analysis), and older age groups remained at higher risk. Among the different BP categories, in CKD-EPI analysis, the hypertensive group showed a significant higher risk for incident CKD, in comparison with the normal group. Those with an FPG level of ≥10 mmol/L had a higher risk than participants with an FPG level of ≤7.22 mg/dL at baseline in MDRD analysis; however, using glucose-lowering medications was an independent risk factor in CKD-EPI analysis, only. Furthermore, compared to the top tertile of eGFR, those participants in the bottom and middle tertiles showed an increased risk of CKD development. A positive history of CVD increased the risk of incident CKD with HRs of 1.66 (95% CI, 1.20 to 2.30) and 1.53 (95% CI, 1.07 to 2.19) in CKD-EPI and MDRD analyses, respectively. Finally, there was no significant difference between different education levels and smoking status.
The discrimination power of multivariable prediction models as represented by the optimism-corrected Harrell’s C-index was 0.67 (95% CI, 0.65 to 0.70) for model 1, 0.71 (95% CI, 0.68 to 0.73) for model 2, and 0.75 (95% CI, 0.72 to 0.77) for model 3 in CKD-EPI analysis. The corresponding numbers were 0.64 (95% CI, 0.61 to 0.67), 0.66 (95% CI, 0.63 to 0.69), and 0.69 (95% CI, 0.66 to 0.72) in MDRD analysis, respectively.
Focusing on model fitness as presented by AIC, by adding data on significant risk factors including positive history of CVD, BP measurements, and glucose-lowering medications usage to the age and sex adjusted models, in CKD-EPI analysis, AIC value improved from 4,173.55 in model 1 to 4,158.90 in model 2; however, we did not find a similar superiority for model fitness between models 1 and 2 of MDRD analysis. Finally, adding FPG and eGFR levels in models 3 led to lower levels of AIC (4,098.38 in CKD-EPI and 4,093.60 in MDRD) than models 1 and 2 in both analyses.
In our cohort study with a median follow-up of more than 14 years, considering CKD-EPI equation, nearly 3.9% of men and 4.8% of women developed CKD, annually. The corresponding rates were 4.6% for men and 6.5% for women in MDRD analysis. Focusing on risk factors, aging, positive history of CVD, using glucose-lowering medications (only for CKD-EPI analysis), hypertension (only for CKD-EPI analysis), and having lower levels of eGFR were found to be significantly associated with higher risk of incident CKD. Furthermore, in MDRD analysis, female sex and FPG level of ≥10 mmol/L were found to be independent CKD risk factors. Generally, CKD-EPI analysis has higher discriminative power than MDRD analysis (C-index: 0.75 vs. 0.69 in the full-adjusted model).
During the follow-up period, nearly 4.4%/year and 5.6%/year of our diabetic population developed CKD based on CKD-EPI and MDRD equations, respectively. It is important to note that comparing our results with other studies is somewhat difficult due to different equations applied for GFR estimation, duration of follow-up, baseline characteristics of participants, approaches to present incidence rate and some other aspects of the methodology. Using Cockcroft-Gault equation, the incidence rate of eGFR <60 mL/min/1.73 m2 was reported to be 1.9%/year among a diabetic population in UK [8]. Considering MDRD equation, some previous studies conducted in Western countries showed that the incidence rates of eGFR <60 mL/min/1.73 m2 among the diabetic populations to be about 2.5%/year in Spain [27], 2.2%/year in Sweden [28], 2.5%/years in Italy [29], and 1.5%/year in the USA [30]. Among East Asian countries, the rates were also found to be about 3.0%/year in Hong Kong [31], 4.3%/year in South Korea [32], and 2.4%/year in Japan [33]. Generally, it seems that among our Tehranian diabetic population, the estimated incidence rates of CKD are alarmingly higher than the corresponding figures in UK [8], Spain [27], Sweden [28], Italy [29], USA [30], Hong Kong [31], South Korea [32], and Japan [33]. There are several possible explanations for the higher incidence rate of CKD among our Iranian diabetic population compared to previous studies on this issue. Firstly, nearly 50% and 30% of the Iranian diabetic population had achieved treatment targets for hyperglycemia and hypertension, respectively [34]. Indeed, many patients with DM are in a poor-controlled state which may contribute to increased diabetic complications such as CKD. Secondly, an unhealthy diet [35], especially higher consumption of salt [36], is prevalent among the Iranian population, which may be considered a risk factor for CKD development [37]. Thirdly, it is reported that urbanization factors had an association with CKD [38]. Therefore, since our study population is limited to Tehran city, the higher incidence in our study can be explained to some degree. Moreover, high exposure to air pollution among Tehranian residents [39] can exacerbate this condition [40].
Aging has been well-known as an independent risk factor for CKD [41]. In agreement with previous studies [8,27], older age groups had higher CKD incidence rates in the current study. We previously reported a similar pattern of incident CKD among a general population in Tehran, in which the effect of aging was more prominent among men. However, in that study, women had a 3-fold higher risk of CKD development [3]. Similarly, we have now illustrated a higher incidence rate of CKD among our female diabetic population. Additionally, women had a 30% and 54% age-adjusted higher risk of CKD development in CKD-EPI and MDRD analyses, respectively. In MDRD analysis, female sex was significantly associated with a higher risk of CKD development, even in the full-adjusted model. Similarly, some previous cohort studies on diabetic populations have also reported a significant association of being female with eGFR decline [8,19,28,29]. These sex differences could be related to sex hormones and sex-specific genetic variants [42].
Positive history of CVD was associated with a 66% and 53% higher risk of incident CKD in full-adjusted models of CKD-EPI and MDRD analyses, respectively. This finding is in line with a previous cohort study on a Spanish diabetic population, indicated that having a previous history of myocardial infarction was associated with approximately 72% higher incidence of CKD [27]. Moreover, based on data analysis of 34 multinational cohorts from the CKD Prognosis Consortium including more than 5 million individuals from 28 countries, positive history of CVD was associated with about 20% higher risk of incident CKD in both diabetic and non-diabetic populations [19]. These findings may be explained by the fact that participants with CVD at baseline had greater duration and severity of shared CVD and CKD risk factors. Another possible explanation is that arteriosclerosis and arteriolosclerosis may contribute to renal dysfunction. The pathogenic mechanisms involved in this process are common for both CKD and CVD development, including endothelial dysfunction, oxidative stress, inflammation, hyperhomocysteinemia, and thrombogenic factors [43,44].
In our results for different BP categories, hypertensive participants (having BP ≥140/90 mm Hg or using anti-hypertensive medications) were at higher risk of CKD development, generally; the issue was probably attributable to the drug-treated cases of hypertension. Hypertension has a two-way causal relationship with renal impairment [45], and it was found to be an independent predictor for CKD development in some previous cohort studies on diabetic populations [19,27,42]. Renal impairment usually occurred in patients with experience of at least 10 years of sustained hypertension [45]. Moreover, it was shown that taking anti-hypertensive medications, especially agents affecting the angiotensin-renin system, is associated with a delay in the time needed to double SCr concentrations and a decline in GFR among diabetic hypertensive with albuminuria [45,46]; however, the effect of using anti-hypertensive medications on increasing risk of CKD development may be explained by the fact that participants who had used anti-hypertensive medications had been previously diagnosed as known hypertensive-diabetic patients. They had been exposed to higher BPs before they were treated and therefore developed renal impairment sooner. Similarly, among the Iranian hypertensive population, treated participants had higher rates of total and CVD mortality, compared to non-treated hypertensive participants with equivalent levels of SBP and DBP [47]. Moreover, despite the high incidence rate of hypertension among the Iranian population [48], awareness is low, and only about 30% of those using anti-hypertensive medication reach BP targets [49].
It has been shown that diabetic participants with higher HbA1c levels are more susceptible to CKD development due to uncontrolled diabetes [30]. Similarly, in our results, using FPG levels as a surrogate for HbA1c, those with FPG level of ≥10 mmol/L were at higher risk of incident CKD than those who had FPG level of <7.22 mmol/L in MDRD analysis. Moreover, only 34% of our study population used glucose-lowering medications, mainly biguanide and sulfonylureas agents at recruitment time, which had a higher risk for CKD development, especially in CKD-EPI analysis. We suggested that these participants were known-diabetic patients with longer duration of disease that were more susceptible to diabetic complications.
Regarding the discrimination index, in comparison with MDRD equation, CKD-EPI analysis showed higher range of C-index for the predicted probability of incident CKD in all our models. In the current study, the Harrell’s C-index was found to be in an acceptable range for the full-adjusted model (model 3) in CKD-EPI analysis [50]. For CKD-EPI analysis, the index also remained in an acceptable range for model 2 (C-index, 0.71), which included only clinical factors (i.e., age, history of CVD, hypertension, and using glucose-lowering medications). It means that CKD-EPI equation can acceptably predict the risk of CKD development without using laboratory data. Nelson et al. [19] conducted a meta-analysis study on about 800,000 diabetic patients to develop the assessment tools to identify individuals at increased risk of reduced eGFR (i.e., eGFR lower than 60 mL/min/1.73 m2), using CKD-EPI equation; their prediction model, which included sociodemographic factors, smoking status, CVD, hypertension, BMI, eGFR, albuminuria, type of glucose-lowering medications, and HbA1c levels, showed a C-index for the predicted probability of 0.80 in an excellent range. In another meta-analysis study, a model was established for prediction of early DKD (i.e., eGFR <60 mL/min/1.73 m2 and/or a urinary albumin-to-creatinine ratio [UACR] ≥30 mg/g) which included age, BMI, smoking, diabetic retinopathy, HbA1c levels, SBP, HDL-C, TG, and UACR as input factors. In their model validation, the area under the curve (AUC) was found to be 0.765, which was comparable to our results (AUC, 0.75 in model 3 of CKD-EPI analysis), although we used fewer input factors [10].
The strength of this study consists in its long duration of follow-up, standardized measurement techniques, and use of a wide range of possible risk factors. There are several important limitations of this study to be considered. First, we did not have any access to valid data on the duration of DM, HbA1c level, and urine analyses of our participants, especially data on proteinuria. Second, our population study was limited to residents of a metropolitan city, and our results can’t be generalized to rural populations. Third, potential risk factors were considered at the time of baseline phases, and possible changes in risk factors were not taken into account during the follow-up period. Fourth, we couldn’t standardize the creatinine measurement to isotope dilution mass spectrometry.
To sum up, we found an alarmingly high range of CKD incidence rates among the Iranian diabetic population. According to the C-index of our models, compared to MDRD equation, it was suggested that CKD-EPI equation can be a better choice to use for the prediction models of incident CKD among the Iranian diabetic populations. Finally, in a model including only clinical factors (i.e., age, history of CVD, BP category, and glucose-lowering medications usage), without using laboratory data, risk prediction for incident CKD can be made by CKD-EPI equation in an acceptable range.
Supplementary materials related to this article can be found online at https://doi.org/10.4093/dmj.2020.0109.
Supplementary Table 1.
Univariable HRs and 95% CIs of categorical potential risk factors in relation to incident CKD among the diabetic population for CKD-EPI and MDRD analyses: Tehran Lipid and Glucose Study
dmj-2020-0109-suppl.pdf

CONFLICTS OF INTEREST

No potential conflict of interest relevant to this article was reported.

AUTHOR CONTRIBUTIONS

Conception or design: F.H.

Acquisition, analysis, or interpretation of data: S.S.M., R.H.A., M.H., F.H.

Drafting the work or revising: S.S.M., R.H.A., F.H.

Final approval of the manuscript: M.T., F.A., F.H.

FUNDING

None

Acknowledgements
The authors would like to express their appreciation to the TLGS participants and staff for their kind cooperation.
Table 1.
Baseline characteristics of the respondents (study participants) and non-respondents in CKD-EPI analysis: Tehran Lipid and Glucose Study
Characteristic Respondents Non-respondents Differences (95% CI)a
No. of participants (men) 797 (350) 252 (124)
Continuous variable
 Age, yr 51.6±10.6 55.8±11.6 –4.3 (–5.9 to –2.6)
 BMI, kg/m2 29.0±4.6 28.3±5.3 0.7 (0.0 to 1.5)
 WC, cm 96.5±10.9 95.1±11.3 1.4 (–0.3 to 3.0)
 SBP, mm Hg 131.4±21.3 134.7±23.7 –3.3 (–6.7 to 0.1)
 DBP, mm Hg 82.4±11.2 81.7±12.3 0.8 (–0.9 to 2.5)
 eGFR, mL/min/1.73 m2 76.3±11.2 75.0±11.2 1.2 (–0.3 to 2.8)
 FPG, mmol/L 9.0±3.4 9.5±3.6 –0.5 (–1.1 to 0)
 2h-PCPG, mmol/Lb 14.9±4.9 15.6±5.5 –0.8 (–1.8 to 0.3)
 TC, mmol/L 5.9±1.3 5.9±1.4 0.1 (–0.1 to 0.3)
 HDL-C, mmol/L 1.0±0.3 1.1±0.3 0 (–0.1 to 0.0)
 TG, mmol/L 2.8±1.9 2.8±2.6 0.0 (–0.3 to 0.3)
Categorical variable
 Educational level, yr
  <6 458 (57.5) 140 (55.8) 1.7 (–5.3 to 8.7)
  6–12 283 (35.5) 92 (36.7) –1.1 (–8.0 to 5.7)
  >12 56 (7.0) 19 (7.6) –0.6 (–4.3 to 3.2)
 Smoking status
  Never 611 (76.6) 170 (73.6) 3.1 (–3.3 to 9.5)
  Former 89 (11.2) 25 (10.8) 0.3 (–4.2 to 4.9)
  Current 97 (12.2) 36 (15.6) –3.4 (–8.6 to 1.8)
 Low physical activity 560 (70.3) 162 (72.6) –2.4 (–9.0 to 4.3)
 Hypercholesterolemia 581 (72.9) 173 (68.7) 4.2 (–2.3 to 10.8)
 Hypertriglyceridemia 615 (77.2) 178 (70.6) 6.5 (0.1 to 12.9)
 Low HDL-C 630 (79.0) 185 (74.6) 4.4 (–1.7 to 10.6)
 Positive history of CVD 78 (9.8) 43 (17.1) –7.3 (–12.4 to –2.2)
 Family history of premature CVD 158 (19.8) 46 (18.3) 1.6 (–3.9 to 7.1)
 Family history of DM 399 (50.1) 104 (41.3) 8.8 (1.8 to 15.8)
 Anti-hypertensive medications 126 (15.8) 51 (20.2) –4.4 (–10.0 to 1.1)
 Lipid-lowering medications 78 (9.8) 36 (14.3) –4.5 (–9.3 to 0.3)
 Glucose-lowering medications 276 (34.6) 105 (41.7) –7.0 (–14.0 to –0.1)

Values are presented as mean±standard deviation or number (%).

CKD-EPI, Chronic Kidney Disease Epidemiology Collaboration; CI, confidence interval; BMI, body mass index; WC, waist circumference; SBP, systolic blood pressure; DBP, diastolic blood pressure; eGFR, estimated glomerular filtration rate; FPG, fasting plasma glucose; 2h-PCPG, 2-hour post-challenge plasma glucose; TC, total cholesterol; HDL-C, high-density lipoprotein cholesterol; TG, triglyceride; CVD, cardiovascular disease; DM, diabetes mellitus.

a Differences between respondents vs. non respondents in mean values of continuous variables and prevalence values of categorical variables,

b Measurement of 2h-PCPG was done only for participants without history of glucose-lowering medications.

Table 2.
Baseline characteristics of the respondents (study participants) and non-respondents in MDRD analysis: Tehran Lipid and Glucose Study
Characteristic Respondents Non-respondents Differences (95% CI)a
No. of participants (men) 680 (327) 223 (119)
Continuous variable
 Age, yr 51.0±11.0 55.8±11.8 –4.8 (–6.5 to –3.1)
 BMI, kg/m2 29.0±4.7 28.0±5.1 1.0 (0.2 to 1.7)
 WC, cm 96.5±10.9 94.7±11.1 1.8 (0.1 to3.6)
 SBP, mm Hg 131.5±21.5 135.0±24.4 –3.5 (–7.2 to 0.2)
 DBP, mm Hg 82.5±11.3 81.4±12.7 1.0 (–0.8 to 2.8)
 eGFR, mL/min/1.73 m2 71.2±8.5 70.6±9.4 0.5 (–0.8 to 1.8)
 FPG, mmol/L 8.9±3.2 9.5±3.5 –0.6 (–1.1 to 0)
 2h-PCPG, mmol/Lb 14.8±4.8 15.6±5.6 –0.8 (–2.0 to 0.3)
 TC, mmol/L 5.8±1.2 5.8±1.5 0 (–0.2 to 0.2)
 HDL-C, mmol/L 1.0±0.3 1.0±0.3 0 (–0.1 to 0.0)
 TG mmol/L 2.8±1.9 2.9±2.7 –0.1 (–0.4 to 0.3)
Categorical variable
 Educational level, yr
  <6 374 (55.0) 124 (55.9) –0.9 (–8.4 to 6.7)
  6–12 255 (37.5) 80 (36.0) 1.5 (–5.8 to 8.8)
  >12 51 (7.5) 18 (8.1) –0.6 (–4.7 to 3.5)
 Smoking status
  Never 510 (75.0) 146 (71.6) 3.4 (–3.6 to 10.4)
  Former 78 (11.5) 23 (11.3) 0.2 (–4.8 to 5.2)
  Current 92 (13.5) 35 (17.2) –3.6 (–9.4 to 2.1)
 Low physical activity 474 (69.7) 143 (72.2) –2.5 (–9.6 to 4.6)
 Hypercholesterolemia 481 (70.7) 149 (66.8) 3.9 (–3.1 to 11.0)
 Hypertriglyceridemia 522 (76.8) 159 (71.3) 5.5 (–1.3 to 12.2)
 Low HDL-C 535 (78.7) 162 (74.0) 4.7 (–1.9 to 11.3)
 Positive history of CVD 62 (9.1) 39 (17.5) –8.4 (–13.8 to 2.9)
 Family history of premature CVD 126 (18.5) 40 (17.9) 0.6 (–5.2 to 6.4)
 Family history of DM 334 (49.1) 93 (41.7) 7.4 (–0.1 to 14 to9)
 Anti-hypertensive medications 98 (14.4) 41 (18.4) –4.0 (–9.7 to 1.8)
 Lipid-lowering medications 64 (9.4) 33 (14.8) –5.4 (–10.5 to –0.2)
 Glucose-lowering medications 228 (33.5) 94 (42.2) –8.6 (–16.0 to –1.2)

Values are presented as mean±standard deviation or number (%).

MDRD, Modification of Diet in Renal Disease; CI, confidence interval; BMI, body mass index; WC, waist circumference; SBP, systolic blood pressure; DBP, diastolic blood pressure; eGFR, estimated glomerular filtration rate; FPG, fasting plasma glucose; 2h-PCPG, 2-hour post-challenge plasma glucose; TC, total cholesterol; HDL-C, high-density lipoprotein cholesterol; TG, triglyceride; CVD, cardiovascular disease; DM, diabetes mellitus.

a Differences between respondents vs. non respondents in mean values of continuous variables and prevalence values of categorical variables,

b Measurement of 2h-PCPG was done only for participants without history of glucose-lowering medications.

Table 3.
The crude incidence rates of CKD per 1,000 person-years among the diabetic population across age groups: Tehran Lipid and Glucose Study
Age groups, yr CKD-EPI
MDRD
E/N Crude incidence rate (95% CI),/1,000 person-yr E/N Crude incidence rate (95% CI),/1,000 person-yr
Men
 21–40 3/52 4.39 (1.42–13.61) 5/52 7.40 (3.08–17.77)
 41–60 83/202 37.50 (30.24–46.50) 93/186 50.58 (41.27–61.97)
 >60 50/96 83.88 (63.58–110.68) 44/89 74.80 (55.66–100.51)
 Total 136/350 38.94 (32.91–46.06) 142/327 45.76 (38.82–53.94)
Women
 21–40 9/72 10.07 (5.24–19.35) 19/66 25.76 (16.43–40.39)
 41–60 148/302 47.56 (40.49–55.88) 152/237 68.91 (58.78–80.78)
 >60 59/73 110.96 (85.97–143.22) 43/50 128.72 (95.46–173.56)
 Total 216/447 47.61 (41.66–54.40) 214/353 65.30 (57.11–74.66)
Total population
 21–40 12/124 7.61 (4.32–13.40) 24/118 16.98 (11.38–25.34)
 41–60 231/504 43.38 (38.13–49.35) 245/423 60.58 (53.45–68.66)
 >60 109/169 96.65 (80.11–116.61) 87/139 94.33 (76.45–116.39)
 Total 352/797 43.84 (39.49–48.66) 356/680 55.80 (50.29–61.91)

CKD, chronic kidney disease; CKD-EPI, Chronic Kidney Disease Epidemiology Collaboration; MDRD, Modification of Diet in Renal Disease; E/N, event/number; CI, confidence interval.

Table 4.
Multivariable HRs and 95% CIs of incident CKD among the diabetic population in CKD-EPI analysis: Tehran Lipid and Glucose Study
Variable Model 1
Model 2
Model 3
HR (95% CI) P value HR (95% CI) P value HR (95% CI) P value
Women (men as reference) 1.30 (1.04–1.61) 0.018 1.22 (0.94–1.58) 0.137 1.17 (0.90–1.51) 0.250
Age groups, yr
 21–40 1 1 1
 41–60 6.14 (3.44–10.98) <0.001 5.35 (2.96–9.64) <0.001 4.04 (2.22–7.35) <0.001
 >60 17.18 (9.42–31.32) <0.001 12.48 (6.65–23.42) <0.001 7.21 (3.76–13.82) <0.001
Educational level, yr
 >12 1 1
 6–12 0.87 (0.52–1.46) 0.591 0.82 (0.49–1.38) 0.460
 <6 1.08 (0.65–1.80) 0.774 0.88 (0.53–1.48) 0.634
Positive history of CVD 1.82 (1.32–2.52) <0.001 1.66 (1.20–2.30) 0.002
Smoking status
 Never 1 1
 Former 1.13 (0.77–1.64) 0.533 1.09 (0.75–1.58) 0.657
 Current 1.08 (0.73–1.60) 0.689 1.08 (0.73–1.60) 0.707
Blood pressure categories
 Normal 1 1
 Prehypertension 1.15 (0.83–1.59) 0.397 1.22 (0.88–1.69) 0.227
 Hypertension 1.46 (1.07–2.00) 0.018 1.39 (1.01–1.90) 0.042
Glucose-lowering medications, yes 1.37 (1.09–1.73) 0.006 1.36 (1.06–1.74) 0.015
Lipid-lowering medications, yes 1.03 (0.73–1.47) 0.860 1.11 (0.78–1.58) 0.549
FPG baseline categories, mmol/L
 <7.22 1
 7.22–10 0.97 (0.74–1.25) 0.793
 ≥10 1.14 (0.86–1.51) 0.368
eGFR baseline tertilesa
 Top tertile 1
 Middle tertile 1.74 (1.26–2.40) 0.001
 Bottom tertile 3.43 (2.49–4.73) <0.001
Harrell’s C-index 0.67 (0.65–0.70) 0.71 (0.68–0.73) 0.75 (0.72–0.77)
Akaike information criterion 4,173.55 4,158.90 4,098.38

Model 1: adjusted for sex and age; Model 2: adjusted for sex, age, education level, smoking status, history of CVD, blood pressure categories, anti-hypertensive medications, and glucose-lowering medications; Model 3: adjusted for all contents of Model 2+FPG baseline categories and eGFR baseline tertiles.

HR, hazard ratio; CI, confidence interval; CKD, chronic kidney disease; CKD-EPI, Chronic Kidney Disease Epidemiology Collaboration; CVD, cardiovascular disease; FPG, fasting plasma glucose; eGFR, estimated glomerular filtration rate.

a The range of eGFR baseline tertiles: top tertile: eGFR >79.4 mL/min/1.73 m2; middle tertile: 70.0≤ eGFR ≤79.4 mL/min/1.73 m2; and bottom tertile: 60≤ eGFR <70.0 mL/min/1.73 m2 for CKD-EPI analysis.

Table 5.
Multivariable HRs and 95% CIs of incident CKD among the diabetic population in MDRD analysis: Tehran Lipid and Glucose Study
Variable Model 1
Model 2
Model 3
HR (95% CI) P value HR (95% CI) P value HR (95% CI) P value
Women (men as reference) 1.54 (1.25–1.91) <0.001 1.47 (1.13–1.90) 0.004 1.32 (1.01–1.71) 0.039
Age groups, yr
 21–40 1 1 1
 41–60 3.75 (2.46–5.71) <0.001 3.42 (2.22–5.27) <0.001 2.75 (1.77–4.28) <0.001
 >60 7.12 (4.51–11.24) <0.001 5.88 (3.59–9.64) <0.001 4.33 (2.59–7.26) <0.001
Educational level, yr
 >12 1 1
 6–12 0.86 (0.53–1.40) 0.541 0.85 (0.52–1.39) 0.521
 <6 1.01 (0.62–1.65) 0.962 0.98 (0.59–1.61) 0.931
Positive history of CVD 1.55 (1.08–2.21) 0.017 1.53 (1.07–2.19) 0.021
Smoking status
 Never 1 1
 Former 0.94 (0.63–1.40) 0.772 0.98 (0.66–1.45) 0.904
 Current 1.19 (0.83–1.72) 0.345 1.19 (0.83–1.72) 0.345
Blood pressure categories
 Normal 1 1
 Prehypertension 1.30 (0.94–1.78) 0.111 1.27 (0.92–1.74) 0.145
 Hypertension 1.43 (1.05–1.96) 0.025 1.31 (0.96–1.80) 0.090
Glucose-lowering medications, yes 1.31 (1.05–1.63) 0.016 1.19 (0.93–1.51) 0.161
FPG level at baseline, mmol/L
 <7.22 1
 7.22–10 1.10 (0.85–1.42) 0.490
 ≥10 1.43 (1.07–1.91) 0.015
eGFR baseline tertilesa
 Top tertile 1
 Middle tertile 1.62 (1.21–2.17) 0.001
 Bottom tertile 2.42 (1.80–3.25) <0.001
Harrell’s C-index 0.64 (0.61–0.67) 0.66 (0.63–0.69) 0.69 (0.66–0.72)
Akaike information criterion 4,131.41 4,127.72 4,093.60

Model 1: adjusted for sex and age; Model 2: adjusted for sex, age, education level, smoking status, history of CVD, blood pressure categories, anti-hypertensive medications, and glucose-lowering medications; Model 3: adjusted for all contents of Model 2+FPG baseline categories and eGFR baseline tertiles.

HR, hazard ratio; CI, confidence interval; CKD, chronic kidney disease; MDRD, Modification of Diet in Renal Disease; CVD, cardiovascular disease; FPG, fasting plasma glucose; eGFR, estimated glomerular filtration rate.

a The range of eGFR baseline tertiles: top tertile: eGFR >72.8 mL/min/1.73 m2; middle tertile: 66.2≤ eGFR ≤72.8 mL/min/1.73 m2; and bottom tertile: 60≤ eGFR <66.2 mL/min/1.73 m2.

  • 1. Hill NR, Fatoba ST, Oke JL, Hirst JA, O’Callaghan CA, Lasserson DS, et al. Global prevalence of chronic kidney disease: a systematic review and meta-analysis. PLoS One 2016;11:e0158765.ArticlePubMedPMC
  • 2. Mills KT, Xu Y, Zhang W, Bundy JD, Chen CS, Kelly TN, et al. A systematic analysis of worldwide population-based data on the global burden of chronic kidney disease in 2010. Kidney Int 2015;88:950-7.ArticlePubMedPMC
  • 3. Tohidi M, Hasheminia M, Mohebi R, Khalili D, Hosseinpanah F, Yazdani B, et al. Incidence of chronic kidney disease and its risk factors, results of over 10 year follow up in an Iranian cohort. PLoS One 2012;7:e45304.ArticlePubMedPMC
  • 4. Esteghamati A, Etemad K, Koohpayehzadeh J, Abbasi M, Meysamie A, Noshad S, et al. Trends in the prevalence of diabetes and impaired fasting glucose in association with obesity in Iran: 2005-2011. Diabetes Res Clin Pract 2014;103:319-27.ArticlePubMed
  • 5. Shen Y, Cai R, Sun J, Dong X, Huang R, Tian S, et al. Diabetes mellitus as a risk factor for incident chronic kidney disease and end-stage renal disease in women compared with men: a systematic review and meta-analysis. Endocrine 2017;55:66-76.ArticlePubMedPDF
  • 6. Thomas MC, Macisaac RJ, Jerums G, Weekes A, Moran J, Shaw JE, et al. Nonalbuminuric renal impairment in type 2 diabetic patients and in the general population (national evaluation of the frequency of renal impairment cO-existing with NIDDM [NEFRON] 11). Diabetes Care 2009;32:1497-502.ArticlePubMedPMCPDF
  • 7. Koye DN, Shaw JE, Reid CM, Atkins RC, Reutens AT, Magliano DJ. Incidence of chronic kidney disease among people with diabetes: a systematic review of observational studies. Diabet Med 2017;34:887-901.ArticlePubMedPDF
  • 8. Retnakaran R, Cull CA, Thorne KI, Adler AI, Holman RR; UKPDS Study Group. Risk factors for renal dysfunction in type 2 diabetes: U.K. Prospective Diabetes Study 74. Diabetes 2006;55:1832-9.PubMed
  • 9. De Cosmo S, Viazzi F, Pacilli A, Giorda C, Ceriello A, Gentile S, et al. Predictors of chronic kidney disease in type 2 diabetes: a longitudinal study from the AMD Annals initiative. Medicine (Baltimore) 2016;95:e4007.PubMedPMC
  • 10. Jiang W, Wang J, Shen X, Lu W, Wang Y, Li W, et al. Establishment and validation of a risk prediction model for early diabetic kidney disease based on a systematic review and meta-analysis of 20 cohorts. Diabetes Care 2020;43:925-33.ArticlePubMedPDF
  • 11. Levey AS, Inker LA, Coresh J. GFR estimation: from physiology to public health. Am J Kidney Dis 2014;63:820-34.ArticlePubMedPMC
  • 12. Bruck K, Jager KJ, Dounousi E, Kainz A, Nitsch D, Arnlov J, et al. Methodology used in studies reporting chronic kidney disease prevalence: a systematic literature review. Nephrol Dial Transplant 2015;30 Suppl 4(Suppl 4):iv6-16.PubMed
  • 13. Schwandt A, Denkinger M, Fasching P, Pfeifer M, Wagner C, Weiland J, et al. Comparison of MDRD, CKD-EPI, and Cockcroft-Gault equation in relation to measured glomerular filtration rate among a large cohort with diabetes. J Diabetes Complications 2017;31:1376-83.ArticlePubMed
  • 14. Matsushita K, Mahmoodi BK, Woodward M, Emberson JR, Jafar TH, Jee SH, et al. Comparison of risk prediction using the CKD-EPI equation and the MDRD study equation for estimated glomerular filtration rate. JAMA 2012;307:1941-51.ArticlePubMed
  • 15. Azizi F, Hadaegh F, Hosseinpanah F, Mirmiran P, Amouzegar A, Abdi H, et al. Metabolic health in the Middle East and north Africa. Lancet Diabetes Endocrinol 2019;7:866-79.ArticlePubMed
  • 16. Azizi F, Ghanbarian A, Momenan AA, Hadaegh F, Mirmiran P, Hedayati M, et al. Prevention of non-communicable disease in a population in nutrition transition: Tehran Lipid and Glucose Study phase II. Trials 2009;10:5.ArticlePubMedPMCPDF
  • 17. National Kidney Foundation. K/DOQI clinical practice guidelines for chronic kidney disease: evaluation, classification, and stratification. Am J Kidney Dis 2002;39(2 Suppl 1):S1-266.PubMed
  • 18. Levey AS, Stevens LA, Schmid CH, Zhang YL, Castro AF 3rd, Feldman HI, et al. A new equation to estimate glomerular filtration rate. Ann Intern Med 2009;150:604-12.ArticlePubMedPMC
  • 19. Nelson RG, Grams ME, Ballew SH, Sang Y, Azizi F, Chadban SJ, et al. Development of risk prediction equations for incident chronic kidney disease. JAMA 2019;322:2104-14.ArticlePubMedPMC
  • 20. Levey AS, Coresh J, Greene T, Marsh J, Stevens LA, Kusek JW, et al. Expressing the Modification of Diet in Renal Disease Study equation for estimating glomerular filtration rate with standardized serum creatinine values. Clin Chem 2007;53:766-72.ArticlePubMed
  • 21. American Diabetes Association. (6) Glycemic targets. Diabetes Care 2015;38 Suppl:S33-40.ArticlePubMedPDF
  • 22. Afsharian S, Akbarpour S, Abdi H, Sheikholeslami F, Moeini AS, Khalili D, et al. Risk factors for cardiovascular disease and mortality events in adults with type 2 diabetes:a 10-year follow-up: Tehran Lipid and Glucose Study. Diabetes Metab Res Rev 2016;32:596-606.ArticlePubMed
  • 23. Hadaegh F, Zabetian A, Sarbakhsh P, Khalili D, James WP, Azizi F. Appropriate cutoff values of anthropometric variables to predict cardiovascular outcomes: 7.6 years follow-up in an Iranian population. Int J Obes (Lond) 2009;33:1437-45.ArticlePubMedPDF
  • 24. Chobanian AV, Bakris GL, Black HR, Cushman WC, Green LA, Izzo JL Jr, et al. The seventh report of the Joint National Committee on prevention, detection, evaluation, and treatment of high blood pressure: the JNC 7 report. JAMA 2003;289:2560-72.ArticlePubMed
  • 25. IPAQ Research Committee: Guidelines for data processing and analysis of the International Physical Activity Questionnaire (IPAQ)-short and long forms. Available from: https://www.researchgate.net/file.PostFileLoader.html?id=5641f4c36143250eac8b45b7&assetKey=AS%3A294237418606593%401447163075131 (cited 2021 Jan 13).
  • 26. Burnham KP, Anderson DR. Model selection and multimodel inference: a practical information-theoretic approach. 2nd ed. New York: Springer; 2002.
  • 27. Salinero-Fort MA, San Andres-Rebollo FJ, de Burgos-Lunar C, Gomez-Campelo P, Chico-Moraleja RM, Lopez de Andres A, et al. Five-year incidence of chronic kidney disease (stage 3-5) and associated risk factors in a Spanish cohort: the MADIABETES Study. PLoS One 2015;10:e0122030.ArticlePubMedPMC
  • 28. Afghahi H, Cederholm J, Eliasson B, Zethelius B, Gudbjornsdottir S, Hadimeri H, et al. Risk factors for the development of albuminuria and renal impairment in type 2 diabetes: the Swedish National Diabetes Register (NDR). Nephrol Dial Transplant 2011;26:1236-43.ArticlePubMed
  • 29. Zoppini G, Targher G, Chonchol M, Perrone F, Lippi G, Muggeo M. Higher HDL cholesterol levels are associated with a lower incidence of chronic kidney disease in patients with type 2 diabetes. Nutr Metab Cardiovasc Dis 2009;19:580-6.ArticlePubMed
  • 30. Bash LD, Selvin E, Steffes M, Coresh J, Astor BC. Poor glycemic control in diabetes and the risk of incident chronic kidney disease even in the absence of albuminuria and retinopathy: Atherosclerosis Risk in Communities (ARIC) Study. Arch Intern Med 2008;168:2440-7.ArticlePubMedPMC
  • 31. Luk AO, Ma RC, Lau ES, Yang X, Lau WW, Yu LW, et al. Risk association of HbA1c variability with chronic kidney disease and cardiovascular disease in type 2 diabetes: prospective analysis of the Hong Kong Diabetes Registry. Diabetes Metab Res Rev 2013;29:384-90.ArticlePubMed
  • 32. Kim WJ, Kim SS, Bae MJ, Yi YS, Jeon YK, Kim BH, et al. High-normal serum uric acid predicts the development of chronic kidney disease in patients with type 2 diabetes mellitus and preserved kidney function. J Diabetes Complications 2014;28:130-4.ArticlePubMed
  • 33. Takagi M, Babazono T, Uchigata Y. Differences in risk factors for the onset of albuminuria and decrease in glomerular filtration rate in people with type 2 diabetes mellitus: implications for the pathogenesis of diabetic kidney disease. Diabet Med 2015;32:1354-60.ArticlePubMedPMCPDF
  • 34. Noshad S, Afarideh M, Heidari B, Mechanick JI, Esteghamati A. Diabetes care in Iran: where we stand and where we are headed. Ann Glob Health 2015;81:839-50.ArticlePubMed
  • 35. Akbari F, Azadbakht L. A systematic review on diet quality among Iranian youth: focusing on reports from Tehran and Isfahan. Arch Iran Med 2014;17:574-84.PubMed
  • 36. Rezaei S, Mahmoudi Z, Sheidaei A, Aryan Z, Mahmoudi N, Gohari K, et al. Salt intake among Iranian population: the first national report on salt intake in Iran. J Hypertens 2018;36:2380-9.PubMed
  • 37. Bach KE, Kelly JT, Palmer SC, Khalesi S, Strippoli GFM, Campbell KL. Healthy dietary patterns and incidence of CKD: a meta-analysis of cohort studies. Clin J Am Soc Nephrol 2019;14:1441-9.PubMedPMC
  • 38. Jagannathan R, Patzer RE. Urbanization and kidney function decline in low and middle income countries. BMC Nephrol 2017;18:276.ArticlePubMedPMCPDF
  • 39. Naddafi K, Hassanvand MS, Yunesian M, Momeniha F, Nabizadeh R, Faridi S, et al. Health impact assessment of air pollution in megacity of Tehran, Iran. Iranian J Environ Health Sci Eng 2012;9:28.ArticlePubMedPMCPDF
  • 40. Xu X, Nie S, Ding H, Hou FF. Environmental pollution and kidney diseases. Nat Rev Nephrol 2018;14:313-24.ArticlePubMedPDF
  • 41. Sobamowo H, Prabhakar SS. The kidney in aging: physiological changes and pathological implications. Prog Mol Biol Transl Sci 2017;146:303-40.PubMed
  • 42. Yu MK, Katon W, Young BA. Associations between sex and incident chronic kidney disease in a prospective diabetic cohort. Nephrology (Carlton) 2015;20:451-8.ArticlePubMedPMCPDF
  • 43. Bao YS, Song LT, Zhong D, Song AX, Jia XB, Liu RC, et al. Epidemiology and risk factors for chronic kidney disease in patients with ischaemic stroke. Eur J Clin Invest 2013;43:829-35.ArticlePubMed
  • 44. Uzu T, Kida Y, Shirahashi N, Harada T, Yamauchi A, Nomura M, et al. Cerebral microvascular disease predicts renal failure in type 2 diabetes. J Am Soc Nephrol 2010;21:520-6.ArticlePubMedPMC
  • 45. Lea JP, Nicholas SB. Diabetes mellitus and hypertension: key risk factors for kidney disease. J Natl Med Assoc 2002;94(8 Suppl):7S-15S.PubMedPMC
  • 46. American Diabetes Association. 11. Microvascular complications and foot care: standards of medical care in diabetes-2020. Diabetes Care 2020;43(Suppl 1):S135-51.ArticlePubMedPDF
  • 47. Sepanlou SG, Sharafkhah M, Poustchi H, Malekzadeh MM, Etemadi A, Khademi H, et al. Hypertension and mortality in the Golestan Cohort Study: a prospective study of 50000 adults in Iran. J Hum Hypertens 2016;30:260-7.ArticlePubMedPDF
  • 48. Asgari S, Moazzeni SS, Azizi F, Abdi H, Khalili D, Hakemi MS, et al. Sex-specific incidence rates and risk factors for hypertension during 13 years of follow-up: the Tehran Lipid and Glucose Study. Glob Heart 2020;15:29.ArticlePubMedPMC
  • 49. Malekzadeh MM, Etemadi A, Kamangar F, Khademi H, Golozar A, Islami F, et al. Prevalence, awareness and risk factors of hypertension in a large cohort of Iranian adult population. J Hypertens 2013;31:1364-71.ArticlePubMedPMC
  • 50. Hosmer DW, Lemeshow S, Sturdivant RX. Applied logistic regression. 3rd ed. Hoboken: John Wiley & Sons; 2013.

Figure & Data

References

    Citations

    Citations to this article as recorded by  
    • The Effect of the Holy Quran Recitation on Inflammatory Markers in Hemodialysis Patients in Iran: A Randomized Clinical Trial
      Maedeh Teimourzadeh, Hassan Babamohamadi, Maliheh Yarmohamadi, Raheb Ghorbani, Harold G. Koenig
      Journal of Religion and Health.2024;[Epub]     CrossRef
    • Performance investigating of the reverse osmosis treatment system to the water supply in the hemodialysis center of Khoy city in 2022
      Esrafil Asgari, Mohammad Aqanaghad, Rogayeh Hoseinzadeh, Pegah Jodiery, Mohammadamin Saifloo
      Health Science Monitor.2024; 3(2): 170.     CrossRef
    • Incidence and Predictors of Diabetic Nephropathy among Type 2 Diabetes Mellitus Patients, Southern Ethiopia
      Fasika Merid, Firdawek Getahun, Habtamu Esubalew, Tamirat Gezahegn, Eric Gumpricht
      Journal of Nutrition and Metabolism.2024;[Epub]     CrossRef
    • Association of dietary antioxidant indices with kidney function indicators in patients with type 2 diabetes: a cross-sectional study
      Noushin Omid, Ensieh Nasli Esfahani, Razieh Tabaeifard, Mohsen Montazer, Leila Azadbakht
      Scientific Reports.2024;[Epub]     CrossRef
    • Prevalence of anemia and its associated factors among patients with type 2 diabetes mellitus in a referral diabetic clinic in the north of Iran
      Reyhane Hizomi Arani, Farima Fakhri, Mohammad Naeimi Tabiee, Fatemeh Talebi, Zahra Talebi, Negin Rashidi, Maryam Zahedi
      BMC Endocrine Disorders.2023;[Epub]     CrossRef
    • The association between fasting plasma glucose variability and incident eGFR decline: evidence from two cohort studies
      Niloofar Deravi, Yasaman Sharifi, Fatemeh Koohi, Seyed Saeed Tamehri Zadeh, Soroush Masrouri, Fereidoun Azizi, Farzad Hadaegh
      BMC Public Health.2023;[Epub]     CrossRef
    • Low LncRNA LUCAT1 Expression Assists in the Diagnosis of Chronic Heart Failure and Predicts Poor Prognosis
      Jian Wang, Xujin Wu, Li Wang, Chengyong Zhao
      International Heart Journal.2023; 64(3): 409.     CrossRef
    • Comparison of eGFR formulas (CKD-EPI and MDRD) in patients with multiple myeloma
      Osman ERİNÇ, Soner YEŞİLYURT, Meliha NALCACİ
      Cukurova Medical Journal.2023; 48(2): 336.     CrossRef
    • Comparison and evaluation of the 2009 and 2021 chronic kidney disease-epidemiological collaboration equations among Jordanian patients with type 2 diabetes mellitus
      Randa I. Farah, Abdulrahman Alhajahjeh, Oraib Al-farahid, Hana Abuzaid, Dana Hiasat, Rama Rayyan, Laith Bdier, Izzat AlAwwa, Kamel Ajlouni
      Acta Diabetologica.2023; 61(2): 169.     CrossRef
    • Effect of teaching health-promoting behaviors on the care burden of family caregivers of hemodialysis patients: a four-group clinical trial
      Mehrdad Hayati, Razieh Bagherzadeh, Mehdi Mahmudpour, Fatemeh Heidari, Hakimeh Vahedparast
      BMC Nursing.2023;[Epub]     CrossRef
    • Impact of social and clinical factors on the diagnostic delay of chronic kidney disease: an evaluation study
      Mousa Ghelichi-Ghojogh, Mohammad fararouei, Mozhgan Seif, Bahram Shahryari, Maryam Pakfetrat
      International Urology and Nephrology.2022; 54(7): 1603.     CrossRef
    • Chronic kidney disease and its health-related factors: a case-control study
      Mousa Ghelichi-Ghojogh, Mohammad Fararouei, Mozhgan Seif, Maryam Pakfetrat
      BMC Nephrology.2022;[Epub]     CrossRef
    • Incidence and risk factors of severe non‐proliferative/proliferative diabetic retinopathy: More than a decade follow up in the Tehran Lipids and Glucose Study
      Mahsa Sardarinia, Samaneh Asgari, Reyhane Hizomi Arani, Fatemeh Eskandari, Fereidoun Azizi, Davood Khalili, Farzad Hadaegh
      Journal of Diabetes Investigation.2022; 13(2): 317.     CrossRef
    • Pathophysiologic Mechanisms and Potential Biomarkers in Diabetic Kidney Disease
      Chan-Young Jung, Tae-Hyun Yoo
      Diabetes & Metabolism Journal.2022; 46(2): 181.     CrossRef
    • Prevalence of chronic kidney diseases and its determinants among Iranian adults: results of the first phase of Shahedieh cohort study
      Ali Dehghani, Sadegh Alishavandi, Nader Nourimajalan, Hossein Fallahzadeh, Vahid Rahmanian
      BMC Nephrology.2022;[Epub]     CrossRef
    • Construct a classification decision tree model to select the optimal equation for estimating glomerular filtration rate and estimate it more accurately
      Zhenliang Fan, Qiaorui Yang, Zhuohan Xu, Ke Sun, Mengfan Yang, Riping Yin, Dongxue Zhao, Junfen Fan, Hongzhen Ma, Yiwei Shen, Hong Xia
      Scientific Reports.2022;[Epub]     CrossRef
    • Novel biomarkers for diabetic kidney disease
      Chan-Young Jung, Tae-Hyun Yoo
      Kidney Research and Clinical Practice.2022; 41(Suppl 2): S46.     CrossRef
    • Prevalence and Associated Factors of Kidney Dysfunction in Patients with Hypertension and/or Diabetes Mellitus from a Primary Care Population in Northwest China
      Mengyue Lin, Mulalibieke Heizhati, Lin Wang, Lin Gan, Mei Li, Wenbo Yang, Ling Yao, Zhongrong Wang, Zhikang Yang, Reyila Abudoyreyimu, Zihao Wu, Nanfang Li
      International Journal of General Medicine.2021; Volume 14: 7567.     CrossRef

    • PubReader PubReader
    • ePub LinkePub Link
    • Cite this Article
      Cite this Article
      export Copy Download
      Close
      Download Citation
      Download a citation file in RIS format that can be imported by all major citation management software, including EndNote, ProCite, RefWorks, and Reference Manager.

      Format:
      • RIS — For EndNote, ProCite, RefWorks, and most other reference management software
      • BibTeX — For JabRef, BibDesk, and other BibTeX-specific software
      Include:
      • Citation for the content below
      High Incidence of Chronic Kidney Disease among Iranian Diabetic Adults: Using CKD-EPI and MDRD Equations for Estimated Glomerular Filtration Rate
      Diabetes Metab J. 2021;45(5):684-697.   Published online March 16, 2021
      Close
    • XML DownloadXML Download
    High Incidence of Chronic Kidney Disease among Iranian Diabetic Adults: Using CKD-EPI and MDRD Equations for Estimated Glomerular Filtration Rate
    High Incidence of Chronic Kidney Disease among Iranian Diabetic Adults: Using CKD-EPI and MDRD Equations for Estimated Glomerular Filtration Rate
    Characteristic Respondents Non-respondents Differences (95% CI)a
    No. of participants (men) 797 (350) 252 (124)
    Continuous variable
     Age, yr 51.6±10.6 55.8±11.6 –4.3 (–5.9 to –2.6)
     BMI, kg/m2 29.0±4.6 28.3±5.3 0.7 (0.0 to 1.5)
     WC, cm 96.5±10.9 95.1±11.3 1.4 (–0.3 to 3.0)
     SBP, mm Hg 131.4±21.3 134.7±23.7 –3.3 (–6.7 to 0.1)
     DBP, mm Hg 82.4±11.2 81.7±12.3 0.8 (–0.9 to 2.5)
     eGFR, mL/min/1.73 m2 76.3±11.2 75.0±11.2 1.2 (–0.3 to 2.8)
     FPG, mmol/L 9.0±3.4 9.5±3.6 –0.5 (–1.1 to 0)
     2h-PCPG, mmol/Lb 14.9±4.9 15.6±5.5 –0.8 (–1.8 to 0.3)
     TC, mmol/L 5.9±1.3 5.9±1.4 0.1 (–0.1 to 0.3)
     HDL-C, mmol/L 1.0±0.3 1.1±0.3 0 (–0.1 to 0.0)
     TG, mmol/L 2.8±1.9 2.8±2.6 0.0 (–0.3 to 0.3)
    Categorical variable
     Educational level, yr
      <6 458 (57.5) 140 (55.8) 1.7 (–5.3 to 8.7)
      6–12 283 (35.5) 92 (36.7) –1.1 (–8.0 to 5.7)
      >12 56 (7.0) 19 (7.6) –0.6 (–4.3 to 3.2)
     Smoking status
      Never 611 (76.6) 170 (73.6) 3.1 (–3.3 to 9.5)
      Former 89 (11.2) 25 (10.8) 0.3 (–4.2 to 4.9)
      Current 97 (12.2) 36 (15.6) –3.4 (–8.6 to 1.8)
     Low physical activity 560 (70.3) 162 (72.6) –2.4 (–9.0 to 4.3)
     Hypercholesterolemia 581 (72.9) 173 (68.7) 4.2 (–2.3 to 10.8)
     Hypertriglyceridemia 615 (77.2) 178 (70.6) 6.5 (0.1 to 12.9)
     Low HDL-C 630 (79.0) 185 (74.6) 4.4 (–1.7 to 10.6)
     Positive history of CVD 78 (9.8) 43 (17.1) –7.3 (–12.4 to –2.2)
     Family history of premature CVD 158 (19.8) 46 (18.3) 1.6 (–3.9 to 7.1)
     Family history of DM 399 (50.1) 104 (41.3) 8.8 (1.8 to 15.8)
     Anti-hypertensive medications 126 (15.8) 51 (20.2) –4.4 (–10.0 to 1.1)
     Lipid-lowering medications 78 (9.8) 36 (14.3) –4.5 (–9.3 to 0.3)
     Glucose-lowering medications 276 (34.6) 105 (41.7) –7.0 (–14.0 to –0.1)
    Characteristic Respondents Non-respondents Differences (95% CI)a
    No. of participants (men) 680 (327) 223 (119)
    Continuous variable
     Age, yr 51.0±11.0 55.8±11.8 –4.8 (–6.5 to –3.1)
     BMI, kg/m2 29.0±4.7 28.0±5.1 1.0 (0.2 to 1.7)
     WC, cm 96.5±10.9 94.7±11.1 1.8 (0.1 to3.6)
     SBP, mm Hg 131.5±21.5 135.0±24.4 –3.5 (–7.2 to 0.2)
     DBP, mm Hg 82.5±11.3 81.4±12.7 1.0 (–0.8 to 2.8)
     eGFR, mL/min/1.73 m2 71.2±8.5 70.6±9.4 0.5 (–0.8 to 1.8)
     FPG, mmol/L 8.9±3.2 9.5±3.5 –0.6 (–1.1 to 0)
     2h-PCPG, mmol/Lb 14.8±4.8 15.6±5.6 –0.8 (–2.0 to 0.3)
     TC, mmol/L 5.8±1.2 5.8±1.5 0 (–0.2 to 0.2)
     HDL-C, mmol/L 1.0±0.3 1.0±0.3 0 (–0.1 to 0.0)
     TG mmol/L 2.8±1.9 2.9±2.7 –0.1 (–0.4 to 0.3)
    Categorical variable
     Educational level, yr
      <6 374 (55.0) 124 (55.9) –0.9 (–8.4 to 6.7)
      6–12 255 (37.5) 80 (36.0) 1.5 (–5.8 to 8.8)
      >12 51 (7.5) 18 (8.1) –0.6 (–4.7 to 3.5)
     Smoking status
      Never 510 (75.0) 146 (71.6) 3.4 (–3.6 to 10.4)
      Former 78 (11.5) 23 (11.3) 0.2 (–4.8 to 5.2)
      Current 92 (13.5) 35 (17.2) –3.6 (–9.4 to 2.1)
     Low physical activity 474 (69.7) 143 (72.2) –2.5 (–9.6 to 4.6)
     Hypercholesterolemia 481 (70.7) 149 (66.8) 3.9 (–3.1 to 11.0)
     Hypertriglyceridemia 522 (76.8) 159 (71.3) 5.5 (–1.3 to 12.2)
     Low HDL-C 535 (78.7) 162 (74.0) 4.7 (–1.9 to 11.3)
     Positive history of CVD 62 (9.1) 39 (17.5) –8.4 (–13.8 to 2.9)
     Family history of premature CVD 126 (18.5) 40 (17.9) 0.6 (–5.2 to 6.4)
     Family history of DM 334 (49.1) 93 (41.7) 7.4 (–0.1 to 14 to9)
     Anti-hypertensive medications 98 (14.4) 41 (18.4) –4.0 (–9.7 to 1.8)
     Lipid-lowering medications 64 (9.4) 33 (14.8) –5.4 (–10.5 to –0.2)
     Glucose-lowering medications 228 (33.5) 94 (42.2) –8.6 (–16.0 to –1.2)
    Age groups, yr CKD-EPI
    MDRD
    E/N Crude incidence rate (95% CI),/1,000 person-yr E/N Crude incidence rate (95% CI),/1,000 person-yr
    Men
     21–40 3/52 4.39 (1.42–13.61) 5/52 7.40 (3.08–17.77)
     41–60 83/202 37.50 (30.24–46.50) 93/186 50.58 (41.27–61.97)
     >60 50/96 83.88 (63.58–110.68) 44/89 74.80 (55.66–100.51)
     Total 136/350 38.94 (32.91–46.06) 142/327 45.76 (38.82–53.94)
    Women
     21–40 9/72 10.07 (5.24–19.35) 19/66 25.76 (16.43–40.39)
     41–60 148/302 47.56 (40.49–55.88) 152/237 68.91 (58.78–80.78)
     >60 59/73 110.96 (85.97–143.22) 43/50 128.72 (95.46–173.56)
     Total 216/447 47.61 (41.66–54.40) 214/353 65.30 (57.11–74.66)
    Total population
     21–40 12/124 7.61 (4.32–13.40) 24/118 16.98 (11.38–25.34)
     41–60 231/504 43.38 (38.13–49.35) 245/423 60.58 (53.45–68.66)
     >60 109/169 96.65 (80.11–116.61) 87/139 94.33 (76.45–116.39)
     Total 352/797 43.84 (39.49–48.66) 356/680 55.80 (50.29–61.91)
    Variable Model 1
    Model 2
    Model 3
    HR (95% CI) P value HR (95% CI) P value HR (95% CI) P value
    Women (men as reference) 1.30 (1.04–1.61) 0.018 1.22 (0.94–1.58) 0.137 1.17 (0.90–1.51) 0.250
    Age groups, yr
     21–40 1 1 1
     41–60 6.14 (3.44–10.98) <0.001 5.35 (2.96–9.64) <0.001 4.04 (2.22–7.35) <0.001
     >60 17.18 (9.42–31.32) <0.001 12.48 (6.65–23.42) <0.001 7.21 (3.76–13.82) <0.001
    Educational level, yr
     >12 1 1
     6–12 0.87 (0.52–1.46) 0.591 0.82 (0.49–1.38) 0.460
     <6 1.08 (0.65–1.80) 0.774 0.88 (0.53–1.48) 0.634
    Positive history of CVD 1.82 (1.32–2.52) <0.001 1.66 (1.20–2.30) 0.002
    Smoking status
     Never 1 1
     Former 1.13 (0.77–1.64) 0.533 1.09 (0.75–1.58) 0.657
     Current 1.08 (0.73–1.60) 0.689 1.08 (0.73–1.60) 0.707
    Blood pressure categories
     Normal 1 1
     Prehypertension 1.15 (0.83–1.59) 0.397 1.22 (0.88–1.69) 0.227
     Hypertension 1.46 (1.07–2.00) 0.018 1.39 (1.01–1.90) 0.042
    Glucose-lowering medications, yes 1.37 (1.09–1.73) 0.006 1.36 (1.06–1.74) 0.015
    Lipid-lowering medications, yes 1.03 (0.73–1.47) 0.860 1.11 (0.78–1.58) 0.549
    FPG baseline categories, mmol/L
     <7.22 1
     7.22–10 0.97 (0.74–1.25) 0.793
     ≥10 1.14 (0.86–1.51) 0.368
    eGFR baseline tertilesa
     Top tertile 1
     Middle tertile 1.74 (1.26–2.40) 0.001
     Bottom tertile 3.43 (2.49–4.73) <0.001
    Harrell’s C-index 0.67 (0.65–0.70) 0.71 (0.68–0.73) 0.75 (0.72–0.77)
    Akaike information criterion 4,173.55 4,158.90 4,098.38
    Variable Model 1
    Model 2
    Model 3
    HR (95% CI) P value HR (95% CI) P value HR (95% CI) P value
    Women (men as reference) 1.54 (1.25–1.91) <0.001 1.47 (1.13–1.90) 0.004 1.32 (1.01–1.71) 0.039
    Age groups, yr
     21–40 1 1 1
     41–60 3.75 (2.46–5.71) <0.001 3.42 (2.22–5.27) <0.001 2.75 (1.77–4.28) <0.001
     >60 7.12 (4.51–11.24) <0.001 5.88 (3.59–9.64) <0.001 4.33 (2.59–7.26) <0.001
    Educational level, yr
     >12 1 1
     6–12 0.86 (0.53–1.40) 0.541 0.85 (0.52–1.39) 0.521
     <6 1.01 (0.62–1.65) 0.962 0.98 (0.59–1.61) 0.931
    Positive history of CVD 1.55 (1.08–2.21) 0.017 1.53 (1.07–2.19) 0.021
    Smoking status
     Never 1 1
     Former 0.94 (0.63–1.40) 0.772 0.98 (0.66–1.45) 0.904
     Current 1.19 (0.83–1.72) 0.345 1.19 (0.83–1.72) 0.345
    Blood pressure categories
     Normal 1 1
     Prehypertension 1.30 (0.94–1.78) 0.111 1.27 (0.92–1.74) 0.145
     Hypertension 1.43 (1.05–1.96) 0.025 1.31 (0.96–1.80) 0.090
    Glucose-lowering medications, yes 1.31 (1.05–1.63) 0.016 1.19 (0.93–1.51) 0.161
    FPG level at baseline, mmol/L
     <7.22 1
     7.22–10 1.10 (0.85–1.42) 0.490
     ≥10 1.43 (1.07–1.91) 0.015
    eGFR baseline tertilesa
     Top tertile 1
     Middle tertile 1.62 (1.21–2.17) 0.001
     Bottom tertile 2.42 (1.80–3.25) <0.001
    Harrell’s C-index 0.64 (0.61–0.67) 0.66 (0.63–0.69) 0.69 (0.66–0.72)
    Akaike information criterion 4,131.41 4,127.72 4,093.60
    Table 1. Baseline characteristics of the respondents (study participants) and non-respondents in CKD-EPI analysis: Tehran Lipid and Glucose Study

    Values are presented as mean±standard deviation or number (%).

    CKD-EPI, Chronic Kidney Disease Epidemiology Collaboration; CI, confidence interval; BMI, body mass index; WC, waist circumference; SBP, systolic blood pressure; DBP, diastolic blood pressure; eGFR, estimated glomerular filtration rate; FPG, fasting plasma glucose; 2h-PCPG, 2-hour post-challenge plasma glucose; TC, total cholesterol; HDL-C, high-density lipoprotein cholesterol; TG, triglyceride; CVD, cardiovascular disease; DM, diabetes mellitus.

    Differences between respondents vs. non respondents in mean values of continuous variables and prevalence values of categorical variables,

    Measurement of 2h-PCPG was done only for participants without history of glucose-lowering medications.

    Table 2. Baseline characteristics of the respondents (study participants) and non-respondents in MDRD analysis: Tehran Lipid and Glucose Study

    Values are presented as mean±standard deviation or number (%).

    MDRD, Modification of Diet in Renal Disease; CI, confidence interval; BMI, body mass index; WC, waist circumference; SBP, systolic blood pressure; DBP, diastolic blood pressure; eGFR, estimated glomerular filtration rate; FPG, fasting plasma glucose; 2h-PCPG, 2-hour post-challenge plasma glucose; TC, total cholesterol; HDL-C, high-density lipoprotein cholesterol; TG, triglyceride; CVD, cardiovascular disease; DM, diabetes mellitus.

    Differences between respondents vs. non respondents in mean values of continuous variables and prevalence values of categorical variables,

    Measurement of 2h-PCPG was done only for participants without history of glucose-lowering medications.

    Table 3. The crude incidence rates of CKD per 1,000 person-years among the diabetic population across age groups: Tehran Lipid and Glucose Study

    CKD, chronic kidney disease; CKD-EPI, Chronic Kidney Disease Epidemiology Collaboration; MDRD, Modification of Diet in Renal Disease; E/N, event/number; CI, confidence interval.

    Table 4. Multivariable HRs and 95% CIs of incident CKD among the diabetic population in CKD-EPI analysis: Tehran Lipid and Glucose Study

    Model 1: adjusted for sex and age; Model 2: adjusted for sex, age, education level, smoking status, history of CVD, blood pressure categories, anti-hypertensive medications, and glucose-lowering medications; Model 3: adjusted for all contents of Model 2+FPG baseline categories and eGFR baseline tertiles.

    HR, hazard ratio; CI, confidence interval; CKD, chronic kidney disease; CKD-EPI, Chronic Kidney Disease Epidemiology Collaboration; CVD, cardiovascular disease; FPG, fasting plasma glucose; eGFR, estimated glomerular filtration rate.

    The range of eGFR baseline tertiles: top tertile: eGFR >79.4 mL/min/1.73 m2; middle tertile: 70.0≤ eGFR ≤79.4 mL/min/1.73 m2; and bottom tertile: 60≤ eGFR <70.0 mL/min/1.73 m2 for CKD-EPI analysis.

    Table 5. Multivariable HRs and 95% CIs of incident CKD among the diabetic population in MDRD analysis: Tehran Lipid and Glucose Study

    Model 1: adjusted for sex and age; Model 2: adjusted for sex, age, education level, smoking status, history of CVD, blood pressure categories, anti-hypertensive medications, and glucose-lowering medications; Model 3: adjusted for all contents of Model 2+FPG baseline categories and eGFR baseline tertiles.

    HR, hazard ratio; CI, confidence interval; CKD, chronic kidney disease; MDRD, Modification of Diet in Renal Disease; CVD, cardiovascular disease; FPG, fasting plasma glucose; eGFR, estimated glomerular filtration rate.

    The range of eGFR baseline tertiles: top tertile: eGFR >72.8 mL/min/1.73 m2; middle tertile: 66.2≤ eGFR ≤72.8 mL/min/1.73 m2; and bottom tertile: 60≤ eGFR <66.2 mL/min/1.73 m2.

    Moazzeni SS, Arani RH, Hasheminia M, Tohidi M, Azizi F, Hadaegh F. High Incidence of Chronic Kidney Disease among Iranian Diabetic Adults: Using CKD-EPI and MDRD Equations for Estimated Glomerular Filtration Rate. Diabetes Metab J. 2021;45(5):684-697.
    Received: Apr 29, 2020; Accepted: Sep 27, 2020
    DOI: https://doi.org/10.4093/dmj.2020.0109.

    Diabetes Metab J : Diabetes & Metabolism Journal
    Close layer
    TOP