Population and study design
Located in southwest of Iran, Khuzestan province is the major oil-producing region in our country. The natural condition, geological climate and soil characteristics of this region is unique. The extreme high temperature (possibly one of the hottest places on earth), frequent dust storms, air pollution as well as soil contamination caused by oil production heavily affect the health status of its residents. The capital city, Ahvaz, hits one of the highest temperature records in the world; in summer, the temperature can reach to 50 °C. Moreover, the region was highly damaged during the Iran-Iraq war (1980-1988), which further hampered the physical and psychological health of its residents.
Khuzestan is also known for its ethnic diversity. The population of Khuzestan consists of different ethnicity: Fars, Arabs, Bakhtiarys, and Lurs are the main ethnic groups. The socioeconomic status and life- style are quite different among these ethnicities. Arabs are mostly in lower socioeconomical levels of the society. Their diet comprises of different spices and carbohydrates rich- foods. On the other hand, Fars mostly resides in urban areas and rice is usually their main dish. Interestingly, according to central bank of Islamic republic of Iran, Khuzestan has obtained the highest budget in Iran among all the provinces (18). The history of war, extremely hot weather, time to time air pollution, multi-ethnic culture, and unavailability of previous health status despite enormous budget, lead us to select this province for comprehensive health survey.
The study was conducted from 2016-2019 as part of KCHS study. The details of the KCHS have been described elsewhere.(17) National Institute for Medical Research Development (NIMAD) and the Iranian Blood Transfusion Organization (IBTO) funded this study and the Digestive Diseases Research Institute (DDRI) in association with Jundishapur, Abadan, Dezful, and Behbahan medical universities executed it. The protocol was approved by the ethics committee of NIMAD (IR.NIMAD.REC.1394.002), and written informed consent was obtained from all participants. Using a multistage random sampling, the 1079 random Health Houses across 27 counties in the province were selected, and then 30 eligible individuals were randomly selected from the population covered by that Health House. The inclusion criteria set as both sexes, aged between 20 to 65 years. The exclusion criteria were individuals with mental, psychological, or physical disabilities that could not respond or attend the interview, unwillingness to participate, and being a temporary resident in the province.
The data were collected by employing a questionnaire through interviews. The collected data included demographic, socioeconomic, physical activity (International Physical Activity Questionnaires (IPAQ),(19) existing major diseases, medication history, and lifestyle risk factors (Appendix). A one-time blood sample was collected from all participants after 8-12 h of fasting. The blood samples were transferred to the reference laboratory within 3 h of sampling for measuring the fasting blood sugar (FBS), creatinine (Cr), total cholesterol (TC), triglyceride (TG), and high-density lipoprotein (HDL). The sample was analyzed by BT 1500 autoanalyzer (Biotecnica Instruments, Italy) using commercial kits (Pars Azmun, Iran). Due to the large number of participants, collecting first morning urine sample and transferring to reference laboratory within two hours were not possible, therefore the urine samples were not analyzed in this study.
Trained health personnel with similar standard tools in each center measured height, waist circumferences, and weight by the Seca 206 body meter measuring tape and adjusted Seca 762 mechanical flat scale in kilograms, respectively. Blood pressure was measured after 5 minutes of rest and in a sitting position, twice from each arm with 10 minutes interval using the Riester auscultatory Sphygmomanometers. (20) The calculated average systolic and diastolic blood pressure were taken as mean systolic and diastolic blood pressures, respectively.
Definitions
Hypertension (HTN) was defined as having any of the following conditions: self-reporting of HTN, anti-hypertensive medication consumption, systolic blood pressure (SBP) ≥ 140 mmHg, diastolic blood pressure (DBP) ≥ 90mmHg.(20)
Diabetes Mellitus was (DM) defined as having any of the following conditions: self-reporting of DM, blood glucose-lowering medications consumption, FBS≥126 mg/dl.(21)
Hypercholesterolemia was defined as having any of the following conditions: cholesterol-lowering medications consumption, TC> = 200 mg/dl.(22)
Metabolic syndrome was based on ATP III criteria and Iranian criteria (at least three items of the following conditions) (23-25):
- FBS ≥100 mg/dl or having Diabetes Mellitus
- SBP>=130 mmHg or DBP>=85 mmHg
- TG>150mg/dl or consuming triglyceride -lowering medications
- HDL < 40 mg/dL in men or < 50 mg/dL in women or consuming medications
- Waist circumference ≥95 cm in both sexes
Physical activity status included in the analysis as low, middle, and high activity by metabolic equivalent task (MET) score.(19)
Socioeconomic status included in the analysis as very low, low, middle, and high based on a validated questionnaire.(17)
Variable related to kidney function
Serum creatinine levels were measured according to the standard colorimetric Jaffe-Kinetic reaction method. The assay was not traceable to isotope dilution mass spectroscopy (IDMS).
MDRD study equation and CKD-EPI equation were used to estimate GFR, (8, 14) based on the following formula:
- GFR by MDRD (ml/min/1.73 m²) = 176 × Cr-1.154 × age-0.203 × 0.742 (if female)
- GFR by CKD-EPI (ml/min/1.73 m²) = A × (Cr / B) C × 0.993age: A, B, C substituted as following:
|
Female
|
Male
|
Cr (mg/dl)
|
≤0.7
|
>0.7
|
≤0.9
|
>0.9
|
A
|
144
|
144
|
141
|
141
|
B
|
0.7
|
0.7
|
0.9
|
0.9
|
C
|
-0.329
|
-1.209
|
-0.411
|
-1.209
|
CKD stage III+ was based on one measurement of serum creatinine and defined as: eGFR less than 60 ml/min/1.73 m2 by applying both equations.
eGFR was divided into following stages (26): CKD stages III: eGFR between 30 and 59 ml/min per 1.73 m2, CKD stage IV: eGFR between 30 and 15 ml/min per 1.73 m2, CKD stage V: eGFR less than 15 ml/min per 1.73 m2. Normal eGFR was defined as having eGFR higher than 90 ml/min/1.73 m2 (due to unclear kidney damage in this spectrum without urine data).
Statistical Analysis
We specified the frequency, mean, and standard deviation of the variables then investigated for the relation of qualitative variables. Physical activity was categorized into low, middle, and high activity by MET score,(19). Wealth score was grouped into quartiles called very low, low, middle, and high.(17) We used the cross tabulation to investigate the association between CKD stage III+ and categorized variables and student t-test to assess the association between CKD stage III+ and quantitative variables. A logistic regression model with impaired renal function as the outcome of interest was used to investigate the odds ratio of each variable. All variables with p-value less than 0.1 in former cross-tabulations were included in multivariable analysis. All the analyses were carried out with SPSS version 25 and the statistical significance was declared if the p-value was less than 0.05.