| Literature DB >> 26404371 |
Zandile J Mchiza1, Nelia P Steyn2, Jillian Hill3, Annamarie Kruger4,5, Hettie Schönfeldt6, Johanna Nel7, Edelweiss Wentzel-Viljoen8,9.
Abstract
One serious concern of health policymakers in South Africa is the fact that there is no national data on the dietary intake of adult South Africans. The only national dietary study was done in children in 1999. Hence, it becomes difficult to plan intervention and strategies to combat malnutrition without national data on adults. The current review consequently assessed all dietary studies in adults from 2000 to June 2015 in an attempt to portray typical adult dietary intakes and to assess possible dietary deficiencies. Notable findings were that, in South Africa micronutrient deficiencies are still highly prevalent and energy intakes varied between very low intakes in informal settlements to very high intakes in urban centers. The most commonly deficient food groups observed are fruit and vegetables, and dairy. This has been attributed to high prices and lack of availability of these food groups in poorer urban areas and townships. In rural areas, access to healthy foods also remains a problem. A national nutrition monitoring system is recommended in order to identify dietary deficiencies in specific population groups.Entities:
Keywords: South Africans; dietary diversity; food consumption; food intake; macronutrients; micronutrients
Mesh:
Year: 2015 PMID: 26404371 PMCID: PMC4586583 DOI: 10.3390/nu7095389
Source DB: PubMed Journal: Nutrients ISSN: 2072-6643 Impact factor: 5.717
Figure 1Schematic presentation of the literature search undertaken to find dietary surveys done in South Africa after 2000.
Details of the reviewed studies.
| Author | Age | Gender | Race | No. of Participants | Area of Study | Urban/Rural | Other Info |
|---|---|---|---|---|---|---|---|
| Nel and Steyn, 2002 [ | Adults | Men and Women | Black and White Africans | Adults: Men | South Africa | Both | Secondary data analysis |
| Tydeman-Edwards, 2012 [ | Adults (25–64 years) | Mostly Black | Adult men: | Free State | Both | Primary data analysis | |
| Jaffer, 2009 CRIBSA ‡ [ | Adults 25+ years | Men and Women | Black Africans | 544 | Cape Town | Urban townships (Langa, Gugulethu, Crossroads, Khayelitsha, Nyanga) | Primary data analysis |
| Hattingh | 25–34 years | Women | Black Africans | 496 | Bloemfontein | Urban townships (2 formal settlements 2 informal settlements) | Primary data analysis |
| Oldewage-Theron and Kruger, 2011 [ | Households | Women and grandmothers | Black (assumption, not mentioned in article) | 357 | Vaal region—Gauteng province | Peri-urban Informal settlements | Primary data analysis |
| Msaki and Hendricks, 2013 [ | Households | Women or other head of household | Black Africans (assumption, not mentioned in article) | 200 | KwaZulu Natal | Rural community, Embo | Primary data analysis |
| Msaki and Hendricks, 2014 [ | Households | Women or other head of household | Black Africans (assumption, not mentioned in article) | 200 | KwaZulu Natal | Rural community, Embo | Secondary data analysis |
| Kolahdooz | Adults | Men and Women | Black Africans (assumption, not mentioned in article) | 136 | KwaZulu Natal | Rural, Empangeni | Primary data analysis |
| Audain | 14–21 years | Men and Women | Diverse ** | 209 | KwaZulu Natal | Hilton, peri-urban and rural | Primary data analysis |
| Labadarios | 16+ years | Men and women | Diverse ** | 3287 | All 9 South African provinces | Urban and rural | Primary data analysis |
| Shisana | 15+ years | Men and women | Diverse ** | 13,357 | All 9 South African provinces | Urban and rural | Primary data analysis |
| Naicker, 2009 [ | Adults (35–55 years) | Men and Women | Indian | Adult men: | KwaZulu Natal | Urban | Primary data analysis |
| Wentzel-Viljoen and Kruger, 2005 | 30–70 years | Men and Women | Black Africans | 2009 | North West | Urban and rural | Raw data |
| Wentzel-Viljoen and Kruger, 2010 | 30–70 years | Men and Women | Black Africans | 1275 | North West | Urban and rural | Raw data |
* PURE [20,21]: Prospective Urban and Rural Epidemiological study designed to track the changing lifestyles, risk factors and chronic disease among 150,000 people over 15 years across 17 high- to low-income countries from every major developing region in the world. PURE-SA-NWP refers to the South African leg of the PURE study running in the North West Province; ‡ CRIBSA [22]: Cardiovascular Risk in Black South Africans study designed to measure the dietary intake of the urban black population of Cape Town twenty years after the BRISK study in 1990. ** Diffent ethnic groups: Black, Coloured, White and Indian/Asian Africans.
Research methodology used in the reviewed studies.
| Author | Aim | Dietary Intake Method | Analysis Method |
|---|---|---|---|
| Naicker, 2009 [ | To assess the association of dietary and lifestyle exposures with the risk of non-communicable diseases among apparently healthy Indian adults in KwaDukuza, South Africa | Quantitative food frequency questionnaire validated by three quantified 24-h recalls | The quantities of food items recorded were converted to gram weights and the data processed using the South African FoodFinder software |
| Hattingh | To assess micronutrient intake of black women living in Mangaung, South Africa | Quantitative food frequency questionnaire (culture sensitive) | The quantities of food items recorded were converted to gram weights and the data processed using the South African FoodFinder software |
| Jaffer, 2009 CRIBSA ‡ [ | To determine the occurrence of lifestyle risk factors associated with non-communicable diseases. In particular, this specific study focused on the dietary intake and nutritional status of this population in order to ascertain whether dietary patterns/habits have changed in urbanized South Africans since 1990 | Quantified 24-h recall | South African FoodFinder software was used to calculate the dietary intake of every person |
| Oldewage-Theron and Kruger, 2011 [ | To assess the food security situation of black women in an informal settlement by exploring their food access capabilities through dietary diversity measures and the coping strategies they employ to cope with poverty and hunger | 1-week quantified food frequency questionnaire, quantified or 24-h recall and Cornell Hunger Scale | South African FoodFinder software was used to calculate the dietary intake of every person |
| Msaki and Hendricks, 2013 [ | To understand household food security using food diversity, quality, and intake | Checklist, food item count and screening | Household food intake strata were developed using matrices obtained from the household food intake index and nutritional adequacy ratios |
| Msaki and Hendricks, 2014 [ | Estimation of micronutrients intake in household food consumption surveys | Household food intake index | The principal component analysis (PCA) involved breaking down household energy, protein and micronutrients per capita intakes (w.r.t. women adult equivalents) into categorical or interval variables |
| Kolahdooz | To investigate dietary adequacy amongst adults in rural KwaZulu-Natal, by determining daily energy and nutrient intakes, and identifying the degree of satisfaction of dietary requirements | 24-h dietary recall | All dietary data from the interviewer-administered 24-h recalls were coded and analysed using Nutribase version 9 (Cybersoft Inc., Pheonix, AZ, USA), which calculated energy and nutrient intakes per person |
| Audain | To make a comparative analysis of the dietary preferences of adolescents attending an urban | Self-administered non-quantified food frequency questionnaire | Data analysis employed the grouping of food according to groups and assigned the frequency of eating. |
| Labadarios | To measure the dietary diversity score (DDS) in South Africans aged 16+ years from all the population groups as a proxy of food insecurity | Face validated 24-h recall which was not quantified | Each specific food item was included in a group of nine selected food groups as used in an earlier study on children. A score below 4 was indicative of poor dietary diversity (and by association poor food security) while a score of nine represented a very varied diet. Each food group was only counted once when calculating DDS. The nine groups used were: (1) cereals/roots/tubers; (2) meat/poultry/fish; (3) dairy; (4) eggs; (5) vitamin A rich fruit and vegetables; (6) legumes; (7) other fruit; (8) other vegetables; (9) fats and oils. The results also included calculating the proportion of people who had consumed a food group at least once |
| Shisana | To measure the DDS of South Africans 15+ years by summing the number of food groups from which food had been consumed | 24-h recall which was not quantified | The outcome was based on the 9 food groups namely: cereals, roots and tubers; vitamin A-rich vegetables and fruit; vegetables other than vitamin A rich; fruit other than vitamin A-rich fruit; meat, poultry, and fish; eggs; legumes; dairy products; and foods made with fats or oils. A score below 4 was indicative of poor dietary diversity (and by association poor food security) while a score of nine represented a very varied diet. Each food group was only counted once when calculating DDS. |
| Wentzel-Viljoen and Kruger, 2005 PURE * Data (unpublished) [ | To determine the occurrence of lifestyle risk factors associated with non-communicable diseases. | Quantified food frequency questionnaire | Macro- and micronutrient intakes were calculated using the South African Medical Research Council (SAMRC) Food Database |
| Wentzel-Viljoen and Kruger, 2010 PURE * Data (unpublished) [ | To determine the occurrence of lifestyle risk factors associated with non-communicable diseases. The dietary data in the South African leg of the PURE study focused on the dietary intake and nutritional status of this population in the North West Province in order to ascertain whether dietary patterns/habits have changed in the same participants since 2005 in North West province | Quantified food frequency questionnaire | Macro- and micronutrient intakes were calculated using SAMRC Food Database |
| Nel and Steyn, 2002 [ | The primary objective of this study was to generate a reference table of “most commonly” consumed food items and average intakes of these items in the diet of South Africans. The table is required to be representative of foods eaten by children and adults from all age and ethnic groups in South Africa. | Secondary data-analysis was conducted on existing dietary databases (raw data) obtained from surveys undertaken in South Africa between 1983 and 2000. | Data had to be extrapolated from existing isolated surveys on adults. In this process the following databases were utilized: Black Risk Factor Study (BRISK); First Year Women Student (FYWS) Project; Weight and Risk Factor Study (WRFS); the National Food Consumption Survey (NFCS) and the Coronary Risk Factor Study (CORIS). The dietary intake for the groups 1–5 years and 6–9 years were calculated only from the NFCS, and were not supplemented by other databases. The substantiation for treating age 10+ as a unit (and calling it an adult group), was the finding that average consumption of adolescents (10–15 years) did not differ significantly from that of adults when comparing mean energy intakes of age groups in the studies analyzed. |
| Tydeman-Edwards, 2012 [ | The main aim of this study was to determine the diet and anthropometric status of adults (between 25 and 64 years old) and pre-school children (zero to seven years old) in rural and urban areas. | A 24-h recall of reported usual intake and adjusted food frequency questionnaire were used to determine dietary intake during individual interviews with each participant. | The exchange lists, based on the American Dietetics Association (ADA) Food Guide Pyramid (United States Department of Agriculture (USDA), 1992: online), classify food into seven groups according to their energy, carbohydrate, fat, and protein content, and these were used to quantify the energy and macronutrient content of the dietary intake of participants. Cut off points were followed such that: food intake less than the recommendations of the Food Guide Pyramid (USDA, 1992: online) were regarded as inadequate or below requirements; intake within the guidelines, as adequate or within requirements; and intake higher than the guidelines, as high or above requirements. |
* PURE [20,21]: Prospective Urban and Rural Epidemiological study designed to track the changing lifestyles, risk factors and chronic disease among 150,000 people over 15 years across 17 high- to low-income countries from every major developing region in the world. PURE-SA-NWP refers to the South African leg of the PURE study running in the North West Province; ‡ CRIBSA [22]: Cardiovascular Risk in Black South Africans study designed to measure the dietary intake of the urban black population of Cape Town twenty years after the BRISK study in 1990.
Macronutrient intake of South Africans based on the second dietary analysis of studies undertaken after 2000.
| Energy: Men of height 1.70 m of low activity with BMI = 22.5 = 10,626 | Fat: AMDR = 20%–35% | Protein: AMDR = 10%–35% | Carbohydrate: AMDR = 45%–65% | Added Sugar ** | Fiber: RDA | ||
| Energy: Women of height 1.60 m with low activity and BMI = 22.5 = 8465 | Fat: AMDR = 20%–35% | Protein: AMDR = 10%–35% | Carbohydrate: AMDR = 45%–65% | <10%E or 25 g per day | Fiber | ||
| Naicker, 2009 [ | Men | 7815 (1514.1) | 35.1 (3.2) | 12.8 | 49.9 | 59.6 (68.4) | 18.8 (4.1) |
| Women | 7214 (1209.5) | 37.1 (3.2) | 12.0 | 47.0 | 45.4 (46.4) | 18.1 (3.8) | |
| Nel and Steyn, 2002 [ | Men | 9788 (5485) | 25.1 (12.4) | 14.5 (4.5) | 59.6 (14.3) | 59.6 (68.4) | 22 (14) |
| Women | 7250 (3610) | 25.0 (12.2) | 14.3 (4.7) | 59.9 (14.1) | 45.4 (46.4) | 18 (12) | |
| Tydeman-Edwards, 2012 [ | Men (Rural) | 8630 | 25.2 | 18.3 | 60.2 | na | |
| Men (Urban) | 7078 | 23.3 | 17.5 | 62.2 | na | ||
| Women (Rural) | 7755 | 25.9 | 16.9 | 60.3 | na | ||
| Women (Urban) | 6621 | 22.8 | 17.7 | 63.3 | na | ||
| Jaffer, 2009 CRIBSA ‡ [ | Men 19–44 years | 8600 (3200) | 30.1 (12.7) | 13.7 (4.8) | 53.2 (13.7) | 45.0 g (42.8 g) | 18.9 (10.4) |
| Men 45–64 years | 7700 (2200) | 25.9 (13.8) | 13.4 (5.1) | 57.4 (14.1) | 49.4 g (37.7 g) | 18.1 (10.4) | |
| Women 19–44 years | 7600 (2300) | 30.1 (12.7) | 12.4 (4.5) | 55.5 (12.5) | 54.4 g (40.5 g) | 16.2 (8.5) | |
| Women 45–64 years | 7100 (1800) | 27.6 (14.1) | 12.4 (4.9) | 57.3 (15.0) | 47.0 g (36.3 g) | 16.8 (8.2) | |
| Kolahdooz | Men 19–50 years | 11,159 | 19 (11) | 13 (3) | 69 (13) | 35 g (25 g) | 36 (18) |
| Men 50+ years | 10,874 | 18 (10) | 13 (3) | 68 (9) | 39 g (53 g) | 28 (25) | |
| Women 19–50 years | 11,650 | 17 (9) | 11 (2) | 67 (12) | 47 g (24 g) | 39 (14) | |
| Women 50+ years | 11,978 | 17 (7) | 12 (3) | 64 (11) | 47 g (21 g) | 47 (14) | |
| Wentzel-Viljoen and Kruger, 2005 | Men (Rural) | 6973 (3203) | 18.3 (6.3) | 10.9 (2.0) | 64.2 (9.4) | 32 g (28 g) | 19 (9) |
| Men (Urban) | 10,054 (4164) | 25.3 (6.9) | 12.6 (1.9) | 56.5 (6.9) | 55 g (33 g) | 27 (13) | |
| Women (Rural) | 6107 (2472) | 20.3 (7.1) | 11.0 (1.7) | 66.5 (8.7) | 33 g (23 g) | 17 (7) | |
| Women (Urban) | 9008 (3899) | 28.2 (6.6) | 12.5 (2.0) | 55.6 (7.0) | 58 g (33.5 g) | 23 (11) | |
| Wentzel-Viljoen and Kruger, 2010 | Men (Rural) | 10,084 (5709) | 23.2 (7.43) | 12.1 (3.4) | 59.8 (11.3) | 62 g (62 g) | 27 (19) |
| Men (Urban) | 15,485 (10,209) | 27.2 (7.4) | 13.1 (2.4) | 54.7 (8.5) | 82 g (72 g) | 40 (25) | |
| Women (Rural) | 9891 (5528) | 24.8 (8.5) | 11.9 (3.1) | 61.5 (10.5) | 66 g (78 g) | 27 (19) | |
| Women (Urban) | 12,302 (5876) | 27.8 (7.1) | 13.3 (2.4) | 55.5 (8.5) | 81 g (68 g) | 33 (16) | |
BMI = body mass index; AMDR = acceptable macronutrient distribution range; WHO = World Health Organisation; RDA = recommended dietary allowance; SD = standard deviation; na = not available; * PURE [20,21]: Prospective Urban and Rural Epidemiological study designed to track the changing lifestyles, risk factors and chronic disease among 150,000 people over 15 years across 17 high- to low-income countries from every major region of the world. PURE-SA-NWP refers to the South African leg of the PURE study running in the North West Province; ** Added sugars included sugars (sucrose) added by adults or manufacturers. Sugars naturally present in foods such as fructose were not included ‡ CRIBSA [22]: Cardiovascular Risk in Black South Africans study designed to measure the dietary intake of the urban black population of Cape Town twenty years after the BRISK study in 1990.
Figure 2(a) Mean total energy intake (kilo Joules, kJ) consumed by South African men and women based on the studies undertaken after 2000; (b) Mean percentage contribution of macronutrients to the total energy intake of South Africans based on the studies undertaken after 2000; (c) Mean added sugar (g) and fiber (g) intake of South Africans based on the studies undertaken after 2000. Nel and Steyn [14]; Kolahdooz et al. [19]; Wentzel-Viljoen and Kruger [20,21]; Jaffer et al. [22]; Naicker [23]; Tydeman-Edwards [26].
Summary of micronutrient intake from different studies undertaken after 2000 reporting minimum and maximum values.
| Dietary Variable and Their DRIs | Minimum (Lowest) Reported Mean Value out of all 6 Studies | Maximum (Highest) Reported Mean Value out of all 6 Studies |
|---|---|---|
| Calcium: AI for M and W = 1000 mg | M = 299 mg [ | M = 743.2 mg [ |
| Iron: EAR for M = 6.0 mg, for W = 8.1 mg | M = 8.0 mg [ | M = 27.7 mg [ |
| Zinc: EAR for M = 9.4 mg, for W = 6.8 mg | M = 7.6 mg [ | M = 21.7 mg [ |
| Folate: EAR for M and W = 320 μg | M = 226 μg [ | M = 1633 μg [ |
| Niacin: EAR for M = 12 mg, for W = 11 mg | M = 12.8 mg [ | M = 38.8 mg [ |
| Riboflavin: EAR for M = 1.1 mg, for W = 0.9 mg | M = 1.0 mg [ | M = 2.8 mg [ |
| Thiamin: EAR for M = 1.0 mg, for W = 0.9 mg | M = 0.8 mg [ | M = 2.8 mg [ |
| Vitamin A: EAR for M = 625 μg, RE for W = 500 μg | M = 125 μg [ | M = 2159 μg [ |
| Vitamin B6: EAR for M and W = 1.1 mg | M = 1.0 mg [ | M = 5.3 mg [ |
| Vitamin C: EAR for M = 75 mg, for W = 60 mg | M = 12.6 mg [ | M = 90.7 mg [ |
| Vitamin B12: EAR for M and W = 2.0 μg | M = 1.1 μg [ | M = 11.2 μg [ |
| Vitamin E: EAR for M and W = 12 mg | M = 8.1 mg [ | M = 21.4.1 mg [ |
| Vitamin D: EAR for M and W = 10 μg | M = 2.8 μg [ | M = 7.7 μg [ |
M: men and W: women. Location of studies: North West-PURE 2005, 2010 [20,21]; Bloemfontein [27]; Cape Town CRIBSA [22]; North West-PURE-2010 [21]; Vaal region [28]; Kwa Zulu-Natal [19]; Kwa Zulu-Natal [23]. Dietary reference intakes (DRI), Estimated average requirements (EARs), adequate intakes (AIs), retinol equivalents (RE), recommended dietary allowances (RDAs) and acceptable macronutrient distribution range (AMDR).
Comparison of 10 most frequently consumed foods by South Africans.
| Study on Secondary Analyses | Bloemfontein Men | Bloemfontein Women |
|---|---|---|
| Maize porridge and dishes | Sugar | Sugar |
| Sugar | Maize porridge | Tea |
| Tea | Tea | Maize porridge |
| Brown bread | Stock | Stock/salt |
| White bread | Coffee | Margarine/oil |
| Non-dairy creamer | Margarine/oil | Bread |
| Brick margarine 1 | Full cream milk | Full cream milk |
| Chicken meat | Bread | Vegetables |
| Full cream milk | Vegetables | Fruit |
| Green leafy vegetables | Fruit | Cold drinks |
| Potatoes | Cold drinks | Chicken |
| Tomato and onion stewed | Eggs | Eggs |
| Coffee | Chicken | Sweets/chocolates |
| Eggs | Cake/biscuits | Chips |
| Cabbage | Alcohol | Cakes/biscuits |
1 Brick margarine—hard (hydrogenated) margarine packaged in a paper cover.
Mean dietary diversity scores (DDSs) based on items from nine food groups, according to two South African national studies.
| 2012 SANHANES (Shisana | 2009 Study (Labadarios | ||||||
|---|---|---|---|---|---|---|---|
| Mean DDS | DDS < 4 | Mean DDS | DDS < 4 | ||||
| Mean | 95% CI | Percent | 95% CI | Percent | 95% CI | ||
| Urban formal | 4.7 | 4.5–4.9 | 29.3 | 25.8–33.1 | 4.42 | 4.34–4.07 | 26 |
| Urban informal | 3.8 | 3.5–4.1 | 46.6 | 40.7–52.6 | 3.46 | 3.30–3.61 | 55.7 |
| Rural formal | 3.6 | 3.4–3.9 | 50.7 | 44.3–57.1 | 3.64 | 3.46–3.81 | 50.1 |
| Rural informal | 3.3 | 3.2–3.5 | 59.7 | 54.6–64.7 | 3.17 | 3.05–3.29 | 63.9 |
| Western Cape | 4.6 | 4.3–4.8 | 28.2 | 22.5–34.7 | 4.78 | 4.66–4.90 | 15.7 |
| Eastern Cape | 4.0 | 3.7–4.2 | 42.1 | 37.1–47.4 | 3.38 | 3.22–3.54 | 59.6 |
| Northern Cape | 3.8 | 3.5–4.1 | 43.6 | 35.2–52.5 | 4.05 | 3.85–4.26 | 35.1 |
| Free State | 4.0 | 3.7–4.3 | 45.1 | 37.1–53.4 | 4.40 | 4.23–4.58 | 26.6 |
| Kwa-Zulu Natal | 3.7 | 3.5–4.0 | 49.3 | 41.9–56.6 | 3.97 | 3.81–4.12 | 40.8 |
| North West | 3.3 | 3.1–3.5 | 61.3 | 55.3–67.0 | 3.72 | 3.43–4.01 | 44.1 |
| Gauteng | 4.9 | 4.6–5.2 | 26.3 | 21.0–32.2 | 4.22 | 4.08–4.31 | 32.5 |
| Mpumalanga | 4.0 | 3.5–4.4 | 46.2 | 37.3–55.4 | 4.14 | 3.95–4.33 | 30.5 |
| Limpopo | 3.2 | 2.8–3.6 | 65.6 | 52.8–76.5 | 4.02 | 3.03–3.45 | 61.8 |
| African | 4.0 | 3.8–4.1 | 44.9 | 41.1–48.8 | 3.63 | 3.55–3.71 | 50 |
| White | 5.6 | 5.2–6.0 | 14.9 | 10.2–21.2 | 4.96 | 4.82–5.10 | 9 |
| Coloured | 4.5 | 4.2–4.7 | 30.0 | 26.0–34.4 | 4.43 | 4.30–4.56 | 26 |
| Asian | 4.1 | 3.7–4.6 | 31.6 | 20.8–44.9 | 4.44 | 4.29–4.58 | 26 |
| Total SA | 4.2 | 4.1–4.3 | 39.7 | 36.7–42.7 | 4.02 | 3.96–4.07 | 38 |
SANHANES, South African National Health and Nutrition Examination Survey; DDS, dietary diversity score; CI, confidence interval; SA, South Africa.