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Original article

Metabolic syndrome in urban city of North-Western Nigeria: prevalence and determinants

Metabolic syndrome in urban city of North-Western Nigeria: prevalence and determinants

Anas Ahmad Sabir1,&, Abdulgafar Jimoh2, Sandra Omozehio Iwuala3, Simeon Alabi Isezuo1, Lawal Suleiman Bilbis4, Kaoje Umar Aminu5, Sani Atta Abubakar6, Yusuf Saidu4

 

1Department of Medicine, Usmanu Danfodiyo University Teaching Hospital Sokoto, Nigeria, 2Pharmacology Department Usmanu Danfodiyo University Sokoto, Nigeria, 3Department of Medicine, Lagos University Teaching Hospital, Nigeria, 4Department of Biochemistry, Usmanu Danfodiyo University, Sokoto, Nigeria, 5Department of Community Health, Usmanu Danfodiyo University Teaching Hospital Sokoto, Nigeria, 6Department of Medicine, Ahmadu Bello University Teaching Hospital, Zaria, Nigeria

 

 

&Corresponding author
Anas Ahmad Sabir, Department of Medicine, Usmanu Danfodiyo University Teaching Hospital Sokoto, Nigeria

 

 

Abstract

Introduction: the aim of this study was to investigate the prevalence of metabolic syndrome in Sokoto metropolis of North-Western Nigeria.

 

Methods: a cross-sectional community based study was carried out. Four hundred and ten subjects (201 males and 209 females) were recruited for the study using a multi-stage sampling technique. Demographic and the life style data was obtained from the participants. Evaluation of anthropometric variables, fasting blood sugar, lipid profiles, insulin resistance and blood pressure was performed. The classification of metabolic syndrome was based on the NCEP ATP III guidelines.

 

Results: the mean (SD) age of the sample population was 39.6 (14.4) years. The mean (SD) age of the male subjects was 38.4(14.9) years and that of the females was 40.8(13.9) years (p> 0.05). The overall prevalence of metabolic syndrome was 35.1% with the females having 42.83% and the males 27.36%. The frequencies of metabolic syndrome parameters in the study subjects were low HDL (56.1%), hypertension (46.1%), dysglycemia (32.7%), central obesity (28%), and elevated triglycerides (22.4%). Most of the women had low HDL (62.2%) and central obesity elevated (49.8%).

 

Conclusion: metabolic syndrome is common in residents of North-Western Nigeria, commoner in the females than males. Risk factors for metabolic syndrome should be detected in normal individuals for implementing effective preventive measures.

 

 

Introduction    Down

Metabolic syndrome is a cluster of metabolically related cardiovascular risk factors, the core components of which comprise of central obesity, insulin resistance, dyslipidaemia and hypertension [1]. The presence of the metabolic syndrome predicts the risk of cardiovascular disease in both patients with diabetes mellitus as well as in those without diabetes mellitus [2, 3]. Central to development of the metabolic syndrome appears to be the presence of increased insulin resistance occasioned by oxidative stress [3, 4]. A large number of any populations with metabolic syndrome will have an important implication for the health sector. Lifestyle factors (nutrition, environment, stress, smoking, alcohol and drug intake, exercise, etc.) have a considerable, but not always well understood impact on a variety of health issues. The prevalence of metabolic syndrome is rising worldwide with urbanization and sedentary lifestyle being risk factors [5,6]. There is paucity of data on the prevalence of metabolic syndrome among the Hausa-Fulani ethnic group of Sokoto, North-Western Nigeria. The Hausa-Fulani usually have a lean physique that should prevent against metabolic syndrome. However, with modernization some have become obese and adopted sedentary lifestyles that are risk factors for metabolic syndrome [7]. The objective of this study is to investigate the prevalence and determinants of metabolic syndrome in an urban community of Sokoto state, Nigeria.

 

 

Methods Up    Down

Study Location: the study was conducted in Sokoto metropolis in the Sudan savannah zone of North western Nigeria. The state is bordered to the north by the republic of Niger and to the east and southwest respectively by Zamfara and Kebbi states of Nigeria. The state had a population of 3.69 million according to the 2006 census figures over 90% of whom are Muslim Fulani and Hausas [8].

Participants: consenting adults (above 18 years of age) were recruited. Trained research assistants administered questionnaires and obtained the measurements including collection of blood samples.

Ethical consideration: besides obtaining permission and consent from local authorities and individuals respectively, the study protocol was approved by the Research and Ethics Committee of Sokoto state, Nigeria. Study Design: a cross-sectional community based study was carried out. Four hundred and ten subjects (201 males and 209 females) were recruited for the study. Using a multi-stage sampling technique, three districts of Gidan Dare, Gidan Igwai and Arkilla were selected. The first stage involved random sampling selection of some districts; while the second stage involved selection of some households using clustered sampling technique from the districts selected. Pretested questionnaire was administered by trained research assistants. Demographic and the life style data was obtained from the participants. Evaluation of anthropometric variables, fasting blood sugar, lipid profiles, insulin resistance and blood pressure was performed.

Operational definitions: the classification of metabolic syndrome was based on the National Cholesterol Education Program-Adult Treatment Panel (NCEP ATP III) guidelines (Table 1) [1]. Metabolic syndrome was diagnosed when any three features of table 1 were present. Data Management and Statistical Analysis : raw data was entered into a spreadsheet (Microsoft Excel 2007) before exporting to Epi-Info version 3.3.2 for analysis. Significance of differences between group means was assessed using Student's t-test while chi-squared statistic was employed to determine significance of results of comparison of proportions between groups. Linear relationships were determined using Pearson's correlation coefficients (r). The level of statistical significance is set at p < 0.05.

 

 

Results Up    Down

Socio-demographic charactheristic: the mean (SD) age of the sample population was 39.6 (14.4) years. The mean (SD) age of the male subjects was 38.4(14.9) years and that of the females was 40.8(13.9) years (p> 0.05).

Anthropometric and blood pressure measurements: the anthropometric and blood pressure values of the research participants are shown in Table 2. The females had higher body mass index (BMI) and waist circumference (WC) than the males.

Metabolic profile: the metabolic profile of the research participants is shown in Figure 1. The females had significantly higher low density lipoprotein cholesterol (LDL-C) than the males (p=0.001). The total cholesterol (TC) is also higher in the females but not statistically significant (p=0.065) as is shown in Table 3.

Determinants of metabolic syndrome: the determinants of metabolic syndrome are as shown in Table 4. Decreased high density lipoprotein cholesterol (HDL) and hypertension were the most common components of metabolic syndrome respectively. Most of the women had low HDL (62.2%) and central obesity elevated (49.8%) also. Increased waist circumference, plasma glucose, triglycerides and decreased HDL were commoner in the female than the male subjects.

Prevalence of metabolic syndrome: the distribution of metabolic syndrome by age group and gender is shown in Figure 2. The overall prevalence of metabolic syndrome was 35.1% with the females having 42.83% and the males 27.36%.

 

 

Discussion Up    Down

The 35.1% prevalence of metabolic syndrome found in this study is high. This is contrary to previous reports of low prevalence of metabolic syndrome in Africa [9,10]. The high prevalence may be because the research was conducted in the urban area. Urbanization is known to be associated with physical inactivity as well as nutritional transition to refined, low fibre, calorie dense meals [11,12]. Similar findings were obtained by other researchers in other part of the world. Akintunde et al [13] found prevalence 35% among hypertensives in Nigerians. Gupta et al [14] found the prevalence of metabolic syndrome in an Indian urban population to be 31.6%. Sarkar et al [15] also found significantly higher prevalence of metabolic syndrome in the urban than the rural subjects (37% vs. 4%, p<0.05) in India. The prevalence is however lower than 86% Ogbera [16] found in an Urban community in Lagos Nigeria, although the study was hospital based and involved only patients with diabetes mellitus already. Kaler et al [17] found upto 52% prevalence of metabolic syndrome in Western Canada which is more industrialized area than our study area. The prevalence of metabolic syndrome was higher in the females than the males. This has been found in several other studies [18-20]. The difference might be because of the different cut off values used for the definition of obesity and dyslipidaemia in the different sex groups. Additionally, previous studies in the same population found females to be more obese and are less engaged in physical activities than males [7]. There was difference in the rates of appearance of the components of metabolic syndrome. We found hypertension and low HDL cholesterol to be the most prevalent components of the metabolic syndrome. However, central obesity was also found to be very common in the females (49%). Similar finding of central obesity being more common in females was obtained by other researchers. Beigh et al [21] found the most the most common component of metabolic syndrome to be hypertension (38%), low HDL (36%) and central obesity (29%). Similarly, Isezuo et al [20] also found hypertension and obesity to be common components of metabolic syndrome but with less common low HDL-C although the study was among patients with diabetes mellitus only.

 

Limitation of the study: the study was cross-sectional hence causal relationship cannot be established.

 

 

Conclusion Up    Down

Metabolic syndrome is very common in residents of North-western Nigeria, commoner in the females than males. There is an urgent need for mass public health education so as to reduce the potential complications of the risk factors for metabolic syndrome. Additionally risk factors for metabolic syndrome should be detected in normal individuals for implementing effective preventive measures.

What is known about this topic

  • The prevalence of metabolic syndrome is rising worldwide with urbanization and sedentary lifestyle being risk factors
  • Metabolic syndrome is a cluster of metabolically related cardiovascular risk factors, the core components of which comprise of central obesity, insulin resistance, dyslipidaemia and hypertension

What this study adds

  • We found hypertension and low HDL cholesterol to be the most prevalent components of the metabolic syndrome
  • We found Metabolic syndrome to be very common in residents of North-western Nigeria, commoner in the females than males

 

 

Competing interests Up    Down

The authors declare no competing interests.

 

 

Authors’ contributions Up    Down

Anas Ahmad Sabir, Abdulgafar Jimoh, Sandra Omozehio Iwuala, Simeon Alabi Isezuo, Lawal Suleiman Bilbis, Kaoje Umar Aminu, Sani Atta Abubakar, Yusuf Saidu were all involved with conception and design, acquisition of data, analysis and interpretation of data, drafting the data and revising it critically for important intellectual content. Final approval of the version to be published was carried out by Anas Ahmad Sabir, Abdulgafar Jimoh and Sandra Iwuala.

 

 

Tables and figures Up    Down

Table 1: ATP III Clinical identification of metabolic syndrome

Table 2: anthropometric and blood pressure values of the research participants

Table 3: metabolic profile of the research participants

Table 4: determinants of Metabolic Syndrome according to gender

Figure 1: metabolic profile of the research participant

Figure 2: prevalence of metabolic syndrome by sex and age group

 

 

References Up    Down

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