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Predictors of overweight and obesity in adult women in Nairobi Province, Kenya

Abstract

Background

Since obesity in urban women is prevalent in Kenya the study aimed to determine predictors of overweight and obesity in urban Kenyan women.

Methods

A cross-sectional study was undertaken in Nairobi Province. The province was purposively selected because it has the highest prevalence of overweight and obesity in Kenya.

A total of 365 women aged 25–54 years old were randomly selected to participate in the study.

Results

Higher age, higher socio-economic (SE) group, increased parity, greater number of rooms in the house, and increased expenditure showed greater mean body mass index (BMI),% body fat and waist circumference (WC) at highly significant levels (p <0.001). Most of the variance in BMI was explained by age, total physical activity, percentage of fat consumed, parity and SE group in that order, together accounting for 18% of the variance in BMI. The results suggest that age was the most significant predictor of all the dependent variables appearing first in all the models, while parity was a significant predictor of BMI and WC. The upper two SE groups had significantly higher mean protein (p <0.05), cholesterol (p <0.05) and alcohol (p <0.001) intakes than the lower SE groups; while the lower SE groups had significantly higher mean fibre (p <0.001) and carbohydrate (p <0.05) intakes. A fat intake greater than 100% of the DRI dietary reference intake (DRI) had a significantly greater mean BMI (p <0.05) than a fat intake less than the DRI.

Conclusions

The predictors of overweight and obesity showed that urbanization and the nutrition transition were well established in the sample of women studied in the high SE groups. They exhibited a sedentary lifestyle and consumed a diet high in energy, protein, fat, cholesterol, and alcohol and lower in fibre and carbohydrate compared with those in the low SE groups.

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Background

Overweight and obesity are modifiable risk factors for the development of non-communicable diseases (NCDs). Recent evidence indicates that overweight and obesity are increasing in sub-Saharan Africa, including Kenya, at a rate of 5% per year on average [1]. Hence it is predicted that there will be an accompanying surge in NCDs such as cardiovascular diseases and type 2 diabetes. Overweight and obesity in SSA are most common in women and specifically in the 25 to 44 year old age group. This is most probably due to the retention of gestational weight gain [2]; but may also be the outcome of numerous lifestyle factors, including poor diet and physical inactivity [3]. Urbanization also plays a significant role when people are exposed to a diet which veers from that of their traditional one by containing a high intake of saturated fat, sodium, and added sugar and a low intake of dietary fibre [4].

The Kenya Demographic and Health Survey (KDHS) of 2009 showed that the national prevalence of overweight and obesity for women (15–49 years old) in Kenya was 23%. The proportion of overweight and obese women was higher in urban areas than in rural areas, with Nairobi having the highest prevalence of 41% [5].

Obesity plays a significant role in causing poor health in women, negatively affecting quality of life and shortening quantity of life [6]. There are many obesity-related conditions, which uniquely or mostly affect women. These include: osteoarthritis, birth defects, breast and endometrial cancers, cardiovascular and gall bladder diseases, infertility and gynaecological complications, urinary stress incontinence, and stigma/discrimination [7]. Women who are overweight or obese are at a higher risk of developing these conditions compared to those who are not. A direct association has been found between body weight and deaths from all-causes in women, ages 30 to 55. According to the American Obesity Association, when BMI exceeds 30 kg/m2, the relative risk of death related to obesity increases by 50 percent. Obesity, especially abdominal obesity, is central to the metabolic syndrome and is strongly related to polycystic ovary syndrome (PCOS) in women. Obese women are particularly susceptible to diabetes, and diabetes, in turn, puts women at dramatically increased risk of cardiovascular diseases [8].

Overweight and obesity in developing countries, has been neglected as most attention is concentrated on famine and under-nutrition or malnutrition of children [911]. If preventive measures are not put in place, the problem will escalate and overburden the health care system in these areas. Hence there is need to put measures in place to arrest the problem of overweight and obesity and to prevent the negative consequences, especially among women. However, in order to do this it is necessary to examine the problem and to fully understand the aetiology of obesity and the factors which give rise to excess weight gain in women. Hence the aim of the present study was to determine which factors are predictors of overweight in women in an urban setting of Kenya.

Methods

Study setting and participants

The study was undertaken in Kibera Division of Nairobi Province, an urban area. The Province was purposively selected because it was found to have the highest prevalence of overweight and obesity, namely 39%, in the 2003 KDHS and 41% in the KDHS of 2009 [5]. Kibera had a total adult female population of 127 656 in the most recent census. A sample of 365 adult women aged 25–54 years were required to meet sample size requirements [12]. Stratified random sampling was used according to five socio-economic strata (lower, upper lower, middle, lower upper, and upper) based on proportions of adult women living in each stratum. This resulted in four strata with 75 women and one (upper) with 36 women. One sub-location was selected at random from the division to represent each socio-economic group. All households in each sub-location were counted and households were randomly selected from these.

Research tools

Two research assistants having a bachelor’s degree were trained to collect data on: socio-demographic status, physical activity, dietary intake and anthropometry. The main instrument of data collection was an interviewer-administered, structured questionnaire. The questionnaire was divided into four parts. The first part was used to collect socio-demographic and socio-economic status data. The second part was used to collect data on physical activity during work, transportation and leisure time in a typical week. The third part was used to collect information on dietary intake and eating habits. This was done using a food frequency questionnaire and a 24-hour dietary recall. The final part of the questionnaire was used to collect anthropometric data (weight, height, waist circumference, and body fat percentage).

Socio-demographic status

The socio-demographic questionnaire (SDQ) involved asking the respondents about their age, marital status and parity, while the socio-economic status questions elicited the following information: Area of residence, income status, main occupation, type of dwelling, fuel used for cooking, sources of income and monthly expenditure on selected items, water source and ownership/possession of various household items. These household items included a television, radio, refrigerator, cooker (with oven), sofa set, microwave, home computer, mobile phone, landline, land/plot, and a vehicle.

Physical activity

The Global Physical Activity Questionnaire (GPAQ) was used to collect data on type, frequency, duration and intensity of physical activity during work, transportation and leisure time in a typical week [13]. This is a tool that was developed by the World Health Organization (WHO) for physical activity surveillance in countries, including developing countries. The GPAQ has been validated in nine countries [13].

Dietary intake

In this study the food frequency questionnaire (FFQ) was used to obtain information on the type and frequency of foods consumed by the respondents in the preceding 7 days. Various foods from different food groups were read out to the respondent, who in return was required to state the number of times she had consumed this food in the preceding 7 days. Portion sizes were not calculated since only food intake and not nutrients were required.

A 24-hour recall (24 HR) was used to determine nutrient intakes and portion sizes were calculated. This method has been used in numerous studies in Africa [1416]. One such study in Kenya used a repeated 24HR and found that there were no specific differences between the two recalls [16], hence negating the expense and time of doing a second recall. The reason for this is thought to be due to the low variety of foods eaten. Furthermore, using both the FFQ and 24 HR ensured that a check was provided for food taken in by the 24HR recall.

The 24 HR involved asking the participants to report on all foods and drinks consumed in the previous 24 hours (the previous day), in direct chronological order from the first foods in the morning to the last foods before going to bed. Probing allowed the interviewer to obtain information on forgotten foods. A range of local household utensils: glasses, spoons, cups and plates were used for estimating the amount of foods and beverages actually consumed by the respondents. The use of these local utensils acted as visual aids to increase the accuracy of portion size estimations. In some instances the respondent was asked to supply her own utensils for the recall. Seasonal fruits and vegetables were also purchased to help in estimation of the portion sizes. Rulers and tape measures were used to obtain quantities of some foods such as sugarcane and maize [17]. To obtain the weight/ gram equivalents of foods, the South African Food Photo Manual [18] was used, which converts food items of different sizes and composition to gram equivalents. In addition, the respondents were asked to provide information on the following: type of fat/oil used for cooking, preferred cooking method, meal consumption patterns in the preceding three months and the number of times food was eaten away from home.

Anthropometry

Anthropometric measurements of height, weight, waist circumference (WC) and percent body fat were taken to determine nutritional status [11]. Height (in metres) was measured using a steel tape which was anchored to a flat wall, and the respondent was asked to stand on a flat surface. A wooden head rest was placed on the head, which allowed the measurement to be taken at the point perpendicular to the top of the head. Weight was measured to the nearest 100 grams (0.1 kg) using a Soehnle bathroom scale, after calibrating it to zero, and after removal of shoes and excess clothing. Both weight and height were taken twice. In order to ensure quality data, the weighing scale was calibrated before measuring of weight began everyday and after every five measurements during the measuring exercise. Percentage body fat (% BF) was measured using a Soehnle scale which estimates the body fat percentage by the bioelectrical impedance analysis (BIA) method. Data on height, weight, sex and age of the participant was fed to the unit. Weight and body fat percentage values were read from the display unit of the device. Waist circumference (WC) was measured using a non-stretchable tape halfway between the lower border of ribs and the iliac crest on a horizontal plane, while ensuring that the tape was level around the body and parallel to the floor. The tape was tightened around the body without depressing the skin. Two measurements to the nearest 0.5 cm were taken and the mean recorded [11].

Validity and reliability

Content validity of the SDQ questionnaire was tested by three experts in the field of overweight and obesity research, who were requested to assess the relevance of the content used in the questionnaire [19]. They examined the questionnaire individually and provided feedback to the researcher. Their recommendations and suggestions were integrated and incorporated in the final questionnaire.

The test re-test method [20] was used to test consistency (reliability) of the questionnaires in producing the same results. The pre-test sample comprised of 10 women who were randomly sampled outside the study area. The same questionnaire was administered to the same group of respondents after a period of one week in order to establish the extent to which the contents of the questionnaire were consistent in eliciting the same responses every time the instrument was administered. Areas of the questionnaire that were found to be deficient were revised and the questionnaire adapted accordingly.

Pilot study

The questionnaires were pre-tested for accuracy and clarity prior to the main study on a sample of 37 women (10% of the sample size) with similar characteristics to the actual sample, but who were not included in the final study.

Data analyses

Completed questionnaires were checked on a daily basis for accuracy and completeness in recording of responses. They were edited and coded before data entry. Before analysis, all the data were cleaned. A dietary software programme [21] was used to calculate energy and macronutrient content of the diet while SPSS was used for other data analyses. Chi-square tests were performed to establish the association between categorical variables like age group, marital status, and expenditure, while ANOVA was used to compare the means for age, income, expenditure, anthropometric measurements and the mean nutrient consumption between the five socio-economic groups. Multiple regression analysis using the stepwise method was done to determine the independent variables that were significant predictors of overweight and obesity in the study. A p value of less than 0.05 was considered to be significant.

Ethical approval

Permission for the study was obtained from the research committee of the Ministry of Education. Ethical approval was obtained from the Kenyatta National Hospital Ethics and Research Committee. Interviews and measurements of the participants were done upon obtaining their informed and voluntary consent after the purpose of the study had been explained to them.

Results

Results of the FFQ (Table 1) indicated that in the preceding 7 days 93% of participants had consumed sugar, 92% had whole milk, 81% had beef, 82% had kale, 80% had bananas, 77% had white rice, 76% had cabbage; 70% had sifted ugali (maize meal), 64% had dried beans, 63% had sweetened soft drinks, 61% had eggs, 57% had maize, 45% had mandazi (fried balls of bread dough). For nearly all items with exception of maize, milk, and groundnuts there were significant differences between the SE groups.

Table 1 Percent women consuming different foods in the preceding 7 days by socio-economic status

Table 2 presents data on weight status by selected socio-demographic characteristics. With the exception of education level and occupation there is an increase in mean BMI,% BF and WC with SE characteristics. Higher age, higher SE group, increased parity, greater number of rooms in the house, and increased expenditure showed greater mean BMI,%BF and WC at highly significant levels (p <0.001). Divorced and widowed women also have greater mean BMI and WC values.

Table 2 Mean body mass index, percent body fat and waist circumference of women (n = 365) by selected socio-demographic characteristics

The largest percentage women with high physical activity levels (PALs) are found in the lowest three SE groups (p <0.001) (Table 3). These three groups also have the lowest levels of sedentary time (p <0.0001). There is a significant increase in mean BMI (p <0.001),% BF (p <0.01) and WC (p <0.05) as PAL levels decrease with the highest mean BMI,%BF and WC found at the lowest level of PAL (Table 4). There is a similar trend with increasing sedentary time which is only significant for BMI; with the highest mean BMI having the highest level of sedentary time (p <0.05).

Table 3 Percentage time spent on physical activity by the Kenyan women according to socio-economic group
Table 4 Mean body mass index, percent body fat and waist circumference of women by physical activity levels

Table 5 shows that the upper two SE groups have significantly higher mean protein (p <0.05), cholesterol (p <0.05) and alcohol (p <0.001) intakes than the lower SE groups; while the lower SE groups have significantly higher mean fibre (p <0.001) and carbohydrate (p <0.05) intakes. This was due to a significantly more frequent consumption of beef, chicken, processed meats and eggs by the highest two SE groups; while the lowest two groups consumed significantly more dry beans and maize meal (not shown). Both BMI (p <0.05) and% BF (p <01) are significantly greater when protein intake is higher than 100% of the DRI (Table 6). This is also the case for mean fat intake. A fat intake greater than 100% of the DRI has a significantly greater mean BMI (p <0.05) than a fat intake less than 100% of the DRI.

Table 5 Comparison of energy and macronutrient intakes as a percentage of Dietary Reference Intakes of women in different socioeconomic groups
Table 6 Mean body mass index, percent body fat and waist circumference of women by energy and macronutrient levels

Most of the variance in BMI was explained by age, total physical activity, percentage DRI of fat consumed, parity and socio-economic group, in that order, together accounting for 18.0% of the variance in BMI (Table 7). The most significant predictors of overweight and obesity by fat percentage were age and the number of items/assets in the women’s households, both of which explained 17.8% of the variation in the body fat percentage of the women. With regard to WC, age, parity and the number of rooms in the houses where the women resided, were the most significant predictors of abdominal fat deposition. These three variables together accounted for 20.6% of the variation in the WC measurements. Significant variables are shown in Table 7. The results suggest that age was the most significant predictor of all the dependent variables appearing first in all the models, while parity was a significant predictor of BMI and WC.

Table 7 Multiple linear regression showing the effects of selected variables on body mass index, percent body fat and waist circumference of women using the stepwise method

Discussion

The study demonstrated a significantly higher prevalence of overweight and obesity among women as the socio-economic status (determined by residential area, income and expenditure, number of household assets, number of rooms in the house), age and parity increased; while physical activity was seen to have a protective effect on BMI and abdominal obesity. This high prevalence of overweight and obesity is a clear indication that the study population, and probably women in other urban areas of SSA, may be vulnerable to co-morbidities associated with being overweight or obese. These results are consistent with the findings of earlier studies in SSA countries [22, 23].

The finding that the BMI of Kenyan women followed a socio-economic gradient; being lowest in the lower SE category and highest in upper income women is an interesting feature since it is in direct contrast to the USA where the socio-economic gradient is reversed and lower income women have the highest rates of overweight and obesity [24]. Studies in the USA have shown a significant association between obesity and food insecurity in women, particularly in minority groups [25, 26].

These results are comparable to an earlier study in Kenya which demonstrated that urban women in the higher SE groups had a higher prevalence of obesity as illustrated by both BMI and WC [16]. This is postulated to be due to urbanization with a resulting westernization of diet as more convenience and fast foods become available. While these foods may be affordable to the higher SE group it is likely that they may still be out of the price range of the lower income group. This was also clearly illustrated in this study by the finding that women in the higher income groups ate more meals away from home. It was interesting to note that there appeared to be no significant differences in BMI, WC and percent body fat by level of education in the present study. This is different to an earlier study [16] in women in Kenya where overweight was found to be highest in the higher education group. The most likely cause for this is the fact that the earlier study comprised a representative sample from urban and rural areas while the current study was done in an urban area known to have a high prevalence of obesity. It is known that the prevalence of obesity is generally higher in urban areas of African countries [27].

The dietary intake of the women in the present study confirms what we know about the nutrition transition [28]. Those women having the highest protein (beef, chicken, processed meats) and fat intake also had the highest mean BMI. Furthermore, those in the highest income group were the most sedentary and fewer women had high levels of physical activity. This is also supported by the predictors of overweight since most of the variance in BMI was explained by age, total physical activity, amount of fat consumed, parity and SE group; the classic picture of urbanization and westernization of lifestyle [29, 30].

The low levels of physical activity (especially in the upper SE groups) in this study could be an indication that this could be the situation in other geographical locations and population groups. Hence there is a need for concerted effort to promote increased physical activity. Interventions on lifestyle changes should especially target the people in the upper SE groups, and those who are better off in terms of SE status. This is justified by the rising levels of overweight and obesity up the SE ladder, and the low levels of physical activity relative to the other SE groups.

The high prevalence of overweight and obesity in all three indicators calls for public health interventions to reduce the prevalence of overweight and obesity among urban women in Kenya . Awareness programs about the consequences of overall and abdominal obesity including prevention activities should be made available in the workplace and in the community to act as reference points for the women in these areas. Even as the government of Kenya, non-governmental organizations and other stakeholders grapple with the problem of hunger and food insecurity, some effort should be directed towards overweight and obesity because of the associated health risks. This problem needs to be emphasized as the prevalence of obesity keeps increasing, and may continue to worsen unless appropriate preventive measures are taken.

Conclusions

The predictors of overweight and obesity showed that urbanization and the nutrition transition were well established in the sample of women studied in the high SE groups. They exhibited a sedentary lifestyle and consumed a diet high in energy, protein, fat, cholesterol, and alcohol and lower in fibre and carbohydrate compared with those in the low SE groups.

Recommendations

In terms of practice, the high rates of overweight and obesity among the women point to a need for behaviour change related to improved lifestyle through increased physical activity and improved dietary practices. This could be through increasing their physical activity, both planned and unplanned, for instance by walking or enrolling in facilities that offer planned physical activity. For women who are in lower socio-economic groups, and who cannot afford these facilities, walking or jogging could be recommended. In terms of policy, the study found that overweight and obesity is not a problem only limited to the high socio-economic groups; hence affordable interventions targeting all socio-economic groups should be put in place.

With regard to further research, studies to determine nutrition knowledge and attitudes of Kenyan women and the determinants of different behaviours that may lead to overweight and obesity (e.g. why people make the food choices they do; and perceived barriers to healthy eating and engaging in physical activity) should be done in order to understand the problem and to develop relevant, practical solutions.

References

  1. Ziraba AK, Fortso JC, Ochako R: Overweight and obesity in urban Africa: a problem of the rich or the poor?. BMC Publ Health. 2009, 9: 465-10.1186/1471-2458-9-465. Accessed December 30th 2009, http://www.biomedcentral.com/content/pdf/1471-24

    Article  Google Scholar 

  2. Siega-Riz AM, Evenson KR, Dole N: Pregnancy-related weight gain- a link to obesity?. Nutr Rev. 2004, 62 (7): S105-S111. 10.1301/nr.2004.jul.S105-S111.

    Article  PubMed  Google Scholar 

  3. Popkin BM: An overview on the nutrition transition and its health implications: the Bellagio meeting. Public Health Nutr. 2002, 5: 93-103.

    PubMed  Google Scholar 

  4. WHO: Global Strategy on Diet. 2004, Geneva: Physical Activity and Health, Accessed November 18th 2009, http://www.who.int/dietphysicalactivity.org

    Google Scholar 

  5. Kenya National Bureau of Statistics (KNBS) and ICF Macro: Kenya Demographic and Health Survey 2008–09. 2010, Calverton, Maryland: KNBS and ICF Macro

    Google Scholar 

  6. Schlenker ED, Long S: Essentials of Nutrition and Diet Therapy. 2007, St. Louis, Mo: Mosby Elsevier, 9

    Google Scholar 

  7. American Obesity Association: AOA Fact Sheets. 2005, Accessed http://obesity1.tempdomainname.com/subs

    Google Scholar 

  8. Hu FB: Overweight and obesity in women: Health risks and consequences. J Womens Health. 2003, 12 (2): 163-172. 10.1089/154099903321576565. Accessed January 15th 2008 http://www.ncbi.nlm.nih.gov/pubmed/12737715

    Article  Google Scholar 

  9. Riley JC: Rising Life Expectancy: A Global History. 2001, New York: Cambridge University Press

    Book  Google Scholar 

  10. Philip W, James T: The challenges of obesity and its associated chronic diseases. Nutrition Transition, Obesity and Non-communicable Diseases: Drivers, Outlook and Concerns. 2005, Rome: FAO United Nations System Standing Committee on Nutrition

    Google Scholar 

  11. WHO: Preventing and managing the global epidemic. Report of a WHO consultation. WHO technical report series, no. 894. 2000, Geneva: WHO

    Google Scholar 

  12. Mugenda OM, Mugenda AG: Research methods: quantitative and qualitative approaches. 1999, Nairobi: Acts Press

    Google Scholar 

  13. Armstrong T, Bull F: Development of the World Health Organization Global Physical Activity Questionnaire (GPAQ) J. Public Health. 2006, 14 (2): 66-70. 10.1007/s10389-006-0024-x.

    Article  Google Scholar 

  14. Labadarios D, Steyn NP, Maunder E, Gericke G, Swart R, Huskisson J, Dannhauser A, Vorster HH, Nesamvuni AE, Nel JH: The National Food Consumption Survey (NFCS): South Africa, 1999. Public Health Nutr. 2005, 8 (5): 533-543. http://www.ncbi.nlm.nih.gov/pubmed/16153334,

    Article  CAS  PubMed  Google Scholar 

  15. Steyn NP, Burger S, Monyeki KD, Alberts M, Nthangeni G: Seasonal variation in dietary intake of the adult population of Dikgale. S Afr J C N. 2001, 14 (4): 140-145.

    Google Scholar 

  16. Steyn NP, Nel JH, Parker W, Ayah R, Mbithe D: Dietary, social, and environmental determinants of obesity in Kenyan women. Scand J Public Health. 2011, 39: 88-97. 10.1177/1403494810384426. http://www.ncbi.nlm.nih.gov/pubmed/20851847,

    Article  PubMed  Google Scholar 

  17. Gibson RS, Fegusson EL: An interactive 24-Hour recall for assessing the adequacy of iron and zinc intakes in developing countries. 1999, Washington D.C: ILSI Press

    Google Scholar 

  18. Steyn NP, Senekal M: Dietary Assessment and Education Kit (DAEK). Chronic Diseases of Lifestyle Unit, Medical Research Council, Cape Town, http://www.mrc.ac.za/chronic/cdlbrochure.pdf. Accessed 12/12/2011

  19. Sapp SG, Jensen H: Reliability and validity of nutrition knowledge, and diet-health awareness tests developed from the 1989–1991 diet and health knowledge surveys. J Nutr Educ. 1997, 29: 63-72. 10.1016/S0022-3182(97)70157-2.

    Article  Google Scholar 

  20. Talmage H, Rasher SP: Validity and reliability issues in measurement instrumentation. J Nutr Educ. 1981, 13: 83-85.

    Article  Google Scholar 

  21. NutritSurvey program (EBISpro): Nutrition Surveys and Calculations. Accessed 12/12/2011 http://www.nutrisurvey.de/

  22. Duda RB, Darko R, Seffah J, Adanu RMK, Anarfi JK, Hill AG: Prevalence of obesity in women of Accra, Ghana. Afr J Health Sci. 2007, 14 (3–4): Accessed November 21st 2009, http://www.bioline.org.br/pdf?jh07023

    Google Scholar 

  23. Fezeu L, Minkoulou E, Balkau B, Kengne A, Awah P, Unwin N, Alberti G, Mbanya J: Association between socio-economic status and adiposity in urban Cameroon. Int J Epidemiol. 2005, Accessed 16th 2009, http://www.ncbi.nlm.nih.gov/pubmed/

    Google Scholar 

  24. Flegal KM, Carroll MD, Ogden CL, Jonson CI: Prevalence and trends in obesity among US adults 1999–2000. JAMA. 2002, 288 (14): 1723-1727. 10.1001/jama.288.14.1723.

    Article  PubMed  Google Scholar 

  25. Adams EJ, Grummer-Strawn L, Chavez G: Food insecurity is associated with increased risk of obesity in California women. J Nutr. 2003, 133 (4): 1070-1074.

    CAS  PubMed  Google Scholar 

  26. Townsend MS, Peerson J, Love B, Achterberg C, Murphy SP: Food insecurity is positively related to overweight in women. J Nutr. 2001, 131 (6): 1738-1745.

    CAS  PubMed  Google Scholar 

  27. Demographic and Health Surveys: Country Reports. 2011, Accessed 28 August 2012. [http://www.measuredhs.com/countries/]

    Google Scholar 

  28. Popkin BM: Global Nutrition Dynamics: The world is shifting rapidly toward a diet linked with non communicable diseases. Am J Clin Nutr. 2006, 84 (2): 289-298.

    CAS  PubMed  Google Scholar 

  29. Awah PK, Kengne AP, Fezeu LL, Mbanya J-C: Perceived risk factors of cardiovascular diseases and diabetes in Cameroon. Health Educ Res. 2008, 23 (4): 612-620.

    Article  PubMed  Google Scholar 

  30. Hossain P, Katar B, Nahas M: Obesity and diabetes in the developing world-A growing challenge. New Eng J Med. 2007, 356 (3): 213-215. 10.1056/NEJMp068177.

    Article  CAS  PubMed  Google Scholar 

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Correspondence to Nelia P Steyn.

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Authors’ contributions

EK, JK and SO were involved in planning of the study and design. RM was involved in planning, field work, data analyses and writing. NPS was involved conceptually and in writing the manuscript. All authors read and approved the final manuscript.

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Mbochi, R.W., Kuria, E., Kimiywe, J. et al. Predictors of overweight and obesity in adult women in Nairobi Province, Kenya. BMC Public Health 12, 823 (2012). https://doi.org/10.1186/1471-2458-12-823

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