Literature DB >> 24676350

Evidence of an overweight/obesity transition among school-aged children and youth in Sub-Saharan Africa: a systematic review.

Stella K Muthuri1, Claire E Francis2, Lucy-Joy M Wachira3, Allana G Leblanc1, Margaret Sampson2, Vincent O Onywera4, Mark S Tremblay5.   

Abstract

BACKGROUND: Prevalence of childhood overweight/obesity has increased considerably in recent years. The transition to higher rates of overweight/obesity has been well documented in high income countries; however, consistent or representative data from lower income countries is scarce. It is therefore pertinent to assess if rates of overweight/obesity are also increasing in lower income countries, to inform public health efforts.
OBJECTIVE: This systematic review aimed to investigate the evidence for an overweight/obesity transition occurring in school-aged children and youth in Sub Saharan Africa.
METHODS: Studies were identified by searching the MEDLINE, Embase, Africa Index Medicus, Global Health, Geobase, and EPPI-Centre electronic databases. Studies that used subjective or objective metrics to assess body composition in apparently healthy or population-based samples of children and youth aged 5 to 17 years were included.
RESULTS: A total of 283 articles met the inclusion criteria, and of these, 68 were used for quantitative synthesis. The four regions (West, Central, East, and South) of Sub Saharan Africa were well represented, though only 11 (3.9%) studies were nationally representative. Quantitative synthesis revealed a trend towards increasing proportions of overweight/obesity over time in school-aged children in this region, as well as a persistent problem of underweight. Weighted averages of overweight/obesity and obesity for the entire time period captured were 10.6% and 2.5% respectively. Body composition measures were found to be higher in girls than boys, and higher in urban living and higher socioeconomic status children compared to rural populations or those of lower socioeconomic status.
CONCLUSIONS: This review provides evidence for an overweight/obesity transition in school-aged children in Sub Saharan Africa. The findings of this review serve to describe the region with respect to the growing concern of childhood overweight/obesity, highlight research gaps, and inform interventions. PROSPERO REGISTRATION NUMBER: CRD42013004399.

Entities:  

Mesh:

Year:  2014        PMID: 24676350      PMCID: PMC3968060          DOI: 10.1371/journal.pone.0092846

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Worldwide populations are facing “modern” health risks due to increasing prevalence of overweight and obesity (overweight/obesity), physical inactivity, and sedentary behaviours, which are associated with obesogenic environments. This has caused a shift in the major causes of death from “traditional” health risks associated with poverty such as undernutrition, unsafe water, and poor sanitation, to a growing burden of modifiable non-communicable diseases (NCDs) [1]. The World Health Organization (WHO) classifies overweight/obesity as the fifth leading cause of global mortality, and one of the greatest health challenges and determinants for various chronic diseases such as heart disease, hypertension, diabetes, and psychosocial problems, in the 21st century [1], [2]–[6]. This growing population health threat has garnered much attention in view of the declaration and global campaign on the prevention and control of NCDs signed by the United Nations in 2011 [7]. While the health benefits of maintaining healthy body weights and an active lifestyle are well established [6], consumption of calorie-dense foods, declines in habitual physical activity, and increases in sedentary behaviour have been on the rise across developing nations [8]. Traditional practices such as walking long distances, and habitual physical labour have been replaced by motorized transport, and sedentary activities, particularly in urban settings [9]. Furthermore, in many Sub Saharan Africa (SSA) countries, an increased level of body fat is associated with beauty, prosperity, health, and prestige, while in contrast, thinness is perceived to be a sign of ill health or poverty [9]. These factors are now leading to increases in the occurrence of overweight/obesity and related risk factors for NCDs in SSA's children and youth [1], [9]. The health risks associated with overweight/obesity are particularly problematic in children due to the potential for long-term health concerns. A growing body of evidence has shown that overweight/obesity in childhood is significantly associated with increased risk of obesity, physical morbidity, and premature mortality in adulthood [10], [11], [12]. Fortunately, children who are able to attain a normal weight by adolescence have better cardiovascular disease risk factor profiles when compared to those that remain overweight [10]. Childhood is therefore a crucial time to learn basic life skills, including proper nutrition, and how to accumulate sufficient levels of activity in order to attain healthy body weights. While we must recognise the diversity of populations in SSA, there are certain long-term developmental problems in this region that tend to adversely affect most or all of its countries and peoples [13]. Being the poorest continent in the world, with the highest population growth rate, the concern for an immense double burden of disease due to persistent infectious diseases and modern risks such as an overweight/obesity transition is troubling. The need for population wide interventions to reduce or prevent the adoption of less healthy lifestyles and body weights, particularly for children in SSA has never been greater [9], [14]. The objective of this systematic review was to determine if SSA is indeed undergoing an overweight/obesity transition. Specifically, this review aimed to examine time trends in the proportions of overweight/obesity in school-aged children and youth in SSA, thereby highlighting any research gaps and identifying areas of need for healthy active living interventions.

Methods

Study inclusion criteria

Studies were included if they reported using either subjective (e.g., parent or self-report questionnaires) or objective (e.g., directly measured) measures of body composition (weight, height, body mass index, waist/hip circumference, skin-folds, or body image assessment) in children aged 5–17 years. No date or language limits were set, but due to feasibility, only studies presented in either English or French were included. In addition, only studies of populations from SSA countries were included.

Study exclusion criteria

All published, peer-reviewed studies were eligible for inclusion; however, in order to obtain information on a general population living under ordinary conditions, intervention programs and studies were excluded unless they conducted baseline assessments. Studies done on children with chronic conditions were excluded.

Search strategy

Studies were identified using the following electronic databases: Ovid MEDLINE (1948 to May, Week 4, 2013), Ovid Embase (1974 to Week 21, 2013), Africa Index Medicus (database dates not available, latest search on June 3, 2013), Global Health (1973 to June 3, 2013, through the CAB direct interface), Geobase (1884-June 3, 2013 through the Engineering Village interface), and EPPI-Centre database of health promotion research (Bibliomap) (dates of coverage not available, latest search on June 3, 2013). In addition, several open access journals relevant to SSA were identified and those journal web sites were searched for additional relevant papers. The search strategy for this systematic review was completed in tandem with a sister publication examining the evidence for a physical activity, sedentary behaviour, and physical fitness transition among school-age children and youth in SSA; hence, the inclusion of these terms in the search strategy. The search strategy was created and run by MS. The complete search strategy used for MEDLINE is presented in . The PRISMA flow chart in accounts for the number of articles included to inform this systematic review. References were exported, de-duplicated and reviewed using Reference Manager Software (Version 11, Thompson Reuters, San Francisco, CA). Titles and abstracts of potentially relevant articles were screened by two independent reviewers (SKM and one of CEF or LJW), and full text copies were obtained for articles meeting initial screening criteria. Full text articles were screened in duplicate for inclusion in the review (SKM and one of CEF or LJW), and any discrepancies were discussed and resolved by the reviewers. This review is registered with the international prospective register of systematic reviews PROSPERO network (registration number: CRD42013004399); available at http://www.crd.york.ac.uk/prospero/.
Table 1

MEDLINE search strategy; Ovid interface.

1exp “Africa South of the Sahara”/
2(sub-sahar* or east afric* or south afric* or keny* or (south adj3 sahar*)).mp.
31 or 2
4
5Sedentary Lifestyle/
6((chair or sitting or car or automobile or auto or bus or indoor or in-door or screen or computer) adj time).tw.
7low energy expenditure.tw.
8(computer game* or video game* or ((television adj watch*) or tv watch*)).tw.
9television/or computers/or video games/
10(screen based entertainment or screen-based entertainment or screen time).tw.
11physical inactivit*.tw.
12bed rest.mp.
13sitting.tw.
14exp obesity/
15(obesit* or obese).tw.
16exp overweight/
17(overweight or over weight).tw.
18exp Body Fat Distribution/
19exp body composition/
20Waist Circumference/
21waist circumference.tw.
22Skinfold Thickness/
23(skin folds or skin fold*).tw.
24(body composition* or BMI or body mass index).tw.
25exp “body weights and measures”/
26(bio-impedance analysis or BIA).tw.
27Absorptiometry, Photon/
28(absorptiometery or densitometry or photodensitometry or DXA or DEXA).tw.
29Physical Fitness/
30(physical conditioning or physical fitness).tw.
31musculoskeletal fitness.tw.
32physical endurance/
33cardiovascular fitness.tw.
34motor
35physical exertion/
36aerobic exercise.tw.
37exp sports/
38play/
39exp physical education/
40musculoskeletal physiological processes/or exercise/or movement/or locomotion/or running/or swimming/or walking/or motor activity/
41or/4-40
42(child* or adolescent* or youth* or pediatric* or paediatric*).tw.
433 and 41 and 42

Note: The search strategy for this systematic review was completed in tandem with a sister publication examining the evidence for a physical activity, sedentary behaviour, and physical fitness transition among school-age children and youth in Sub Saharan Africa; hence, the inclusion of these terms in the search strategy.

Figure 1

PRISMA flow chart of search strategy results.

Note: The search strategy for this systematic review was completed in tandem with a sister publication examining the evidence for a physical activity, sedentary behaviour, and physical fitness transition among school-age children and youth in Sub Saharan Africa; hence, the inclusion of these terms in the search strategy.

Data extraction, quality assessment, and synthesis

Data extraction was completed using a standardized data extraction template (SKM, CEF, AGL, and LJW). Study quality was assessed by SKM and CEF using a modified Downs and Black instrument [15]. Due to limitations in study design, questions selected from the Downs and Black quality assessment instrument excluded any questions that referred to intervention and trial study methodology. Ten out of the possible 27 questions were used for quality assessment as represented in . provides the score out of ten for all studies included in this systematic review. Due to heterogeneity in study methodology and cut-points used to categorize samples into under, healthy, overweight, and obese, we were unable to carry out a meta-analysis in this review. However, quantitative syntheses were conducted by calculating the weighted averages (by sample size) of the prevalence of overweight/obesity. Our goal was to examine time trends and thereafter compute an overall prevalence of overweight/obesity in the region, by comparing the crude rates or prevalence of overweight/obesity in the individual populations or samples. As such, we attempted to standardize the crude rates by acknowledging and adjusting with respect to the sample sizes in each of the included studies, and indicating graphically the sample size upon which a particular data point was based. Findings from the quantitative synthesis were also complemented with narrative syntheses of the included studies.
Table 2

Modified Downs and Black checklist (Downs & Black, 1998).

Reporting
Objective Clearly Stated Question 1 from full checklist (Y = 1/N = 0)
Main Outcomes Clearly DescribedQuestion 2 (Y = 1/N = 0)
Patient Characteristics Clearly DefinedQuestion 3 (Y = 1/N = 0)
Main Findings Clearly DefinedQuestion 6 (Y = 1/N = 0)
Random Variability in Estimates ProvidedQuestion 7 (Y = 1/N = 0)
Actual Probability Values ReportedQuestion 10 (Y = 1/N = 0)
External Validity
Sample Targeted Representative of PopulationQuestion 11 (Y = 1/N = 0)
Sample Recruited Representative of PopulationQuestion 12 (Y = 1/N = 0)
Internal Validity/Bias
Statistical Tests Used AppropriatelyQuestion 18 (Y = 1/N = 0)
Primary Outcomes Valid/ReliableQuestion 20 (Y = 1/N = 0)
Table 3

Descriptive characteristics of included studies.

First AuthorYearStudy DesignCountrySample SizeAge Range (Years)Body Composition Measure or Categorization SystemD&B Score
Prinsloo [104] 1964Cross sectionalSouth Africa2615–6Weight, height7
Sloan [105] 1967Cross sectionalSouth Africa39315–17Weight, height7
Smit [106] 1967Cross sectionalSouth Africa22506–15Weight, height, skin fold measures7
Leary [107] 1969Cross sectionalSouth Africa3017–15Weight, height7
Areskog [108] 1969Cross sectionalEthiopia1539–14Weight, height, skin fold measures7
Fisher [109] 1970Cross sectionalZambia1957–16Weight, height7
Davies [266] 1971Cross sectionalRhodesia (now Zimbabwe)2527–15Harvard standards7
Davies [111] 1973Cross sectionalTanzania1417–17Weight, height7
Davies [110] 1974Cross sectionalTanzania10387–16Weight, height7
Walker [112] 1974Cross sectionalSouth Africa40016–17Weight, height5
Margo [268] 1976Cross sectionalSouth Africa1955–16None OW/OB7
Booyens [113] 1977Cross sectionalSouth Africa4886–7Weight, height6
Richardson [267] 1977Cross sectionalSouth Africa80417Harvard standards7
Richardson [270] 1977Cross sectionalSouth Africa65987–17None OW/OB6
Richardson [271] 1977Cross sectionalSouth Africa46557, 12 and 17None OW/OB7
van Rensburg [272] a 1977Cross sectionalSouth Africa4886–7None OW/OB6
Clegg [114] 1978Cross sectionalEthiopia2035–16Weight, height6
Coovadia [269] 1978Cross sectionalSouth Africa57435–12Weight, height3
Walker [273] 1978Cross sectionalSouth Africa70510–12None OW/OB7
Sukkar [274] a 1979Cross sectionalSudan8555–13Tanner et al., 19667
Haller [154] 1980Cross sectionalCôte d'Ivoire4305–15None OW/OB6
Walker [115] 1980Cross sectionalSouth Africa124016–17Weight, height7
Grassivaro [116] b , c 1980Cross sectionalSomalia12066–17Weight, height9
Rao [117] b 1981Cross sectionalZambia24875–17Weight, height7
Carswell [275] 1981Cross sectionalTanzania23810–14Tanner et al., 19666
Singer [118] 1981Cross sectionalNamibia3065–17Weight, height7
Oyemade [276] 1981Cross sectionalNigeria3536–14None OW/OB7
Griffin [277] 1982Cross sectionalKenya1097–13Other NCHS based system7
Nnanyelugo [155] 1982Cross sectionalNigeria13476–15Weight, height7
Kulin [119] 1982Cross sectionalKenya65610–17Weight, height7
Sukkar [278] 1982MixedSudan18645–14Harvard standards7
Power [279] b , c 1982Cross sectionalSouth Africa7906–8Other NCHS based system9
Richardson [280] b , c 1983Cross sectionalSouth Africa13378, 11, 14, and 17Harvard standards9
Akesode [281] 1983Cross sectionalNigeria3946–17Other categorization system7
Little [120] 1983Cross sectionalKenya2655–17Weight, height7
Ng'andu [282] 1984Cross sectionalZambia3747–14Other WHO based system6
Rekart [121] 1985Cross sectionalSudan22713–17Weight, height6
Stephenson [122] 1985Cross sectionalKenya127–15Weight, height, skin fold measures7
Ndamba [123] 1986Cross sectionalZimbabwe1478–15Weight, height7
Ogunranti [124] 1986Cross sectionalNigeria11655–12Weight7
Corlett [125] 1986Cross sectionalBotswana7216–14Weight, height7
Adams-Campbell [126] 1987Cross sectionalNigeria2546–17BMI7
Wagstaff [243] 1987LongitudinalSouth Africa8645–14NCHS reference6
Villiers [244] 1987Cross sectionalSouth Africa37510–17NCHS reference7
Ogunranti [127] 1987Cross sectionalNigeria6005–10Mid upper arm circumference5
Corlett [128] 1988Cross sectionalBotswana6127–12Weight, height7
Corlett [129] 1988Cross sectionalBotswana4837–14Weight, height7
Adeniran [130] 1988Cross sectionalNigeria1813–17Weight, height, body fat %7
Adeniran [131] 1988Cross sectionalNigeria2313–17Weight, height, body fat %7
Jacobs [283] 1988Cross sectionalSouth Africa4305–10Other NCHS based system6
Sigman [16] 1989LongitudinalKenya1387 and 8Weight z-scores7
Prazuck [132] b , c 1989Cross sectionalMali84415–17Weight, height9
Ekpo [17] 1990Cross sectionalNigeria15525–16BMI6
Walker [284] b , c 1991Cross sectionalSouth Africa101514–17Other NCHS based system7
Neumann [18] 1992Cross sectionalKenya1337–9Weight, height7
Ng'andu [133] 1992Cross sectionalZambia3727–16BMI7
Benefice [19] 1992Cross sectionalSenegal1009–14BMI7
Goduka [134] 1992Cross sectionalSouth Africa3005–6Weight, height7
Adams-Campbell [20] 1992LongitudinalNigeria2086–17Skin fold measures7
Williams [21] 1992Cross sectionalKenya and Nigeria35010–15BMI6
Ng'andu [285] 1992Cross sectionalZambia80012–17Nominal/adjusted classification system7
Oli [135] 1994Cross sectionalEthiopia18507–14Weight, height7
McDonald [22] 1994LongitudinalKenya1387–8Weight z-scores8
Lawless [23] 1994LongitudinalKenya866–11Weight z-scores7
Mabrouk [136] 1995Cross sectionalSudan4007–12Weight, height7
Dufetel [137] 1995Cross sectionalSenegal728–14Weight, height7
Walker [156] b , c 1996Cross sectionalNigeria11926–12None OW/OB8
Proctor [24] 1996Cross sectionalCameroon1199–14BMI7
Benefice [25] 1996Cross sectionalSenegal3485–13Weight, height, skin fold measures7
Pettifor [26] 1997Cross sectionalSouth Africa6516–17BMI z-scores8
Brabin [138] 1997Cross sectionalNigeria91414–17Weight, height7
Cole [286] 1997Cross sectionalNigeria2211–17Ketz 1990 system7
Owa [287] 1997Cross sectionalNigeria9045–15US reference sample8
Longo-Mbenza [27] 1998Cross sectionalZaire (now Democratic Republic of Congo - DRC)48485–16BMI6
Benefice [157] 1998Cross sectionalSenegal3485–13None OW/OB7
Prista [158] 1998Cross sectionalMozambique5938–15None OW/OB8
Benefice [28] 1999Cross sectionalSenegal22112–13BMI8
Oelofse [159] 1999Cross sectionalSouth Africa1315–11None OW/OB6
Levitt [29] 1999Prospective Cohort StudySouth Africa8185BMI7
Monyeki [245] 1999Cross sectionalSouth Africa11495–10NCHS reference8
Nyirongo [160] 1999Cross sectionalZimbabwe9305–16None OW/OB8
Akinkugbe [139] 1999Cross sectionalNigeria107611–15Weight, height8
Sellen [30] a 1999Cross sectionalTanzania & Kenya2345–17BMI7
Hamidu [140] 2000Cross sectionalNigeria17125–16Weight, height7
Sellen [288] 2000Cross sectionalTanzania1695–12Seoane & Latham 19718
Dibba [141] 2000Cross sectionalGambia1608–11Weight, height8
Zverev [161] 2001Cross sectionalMalawi4936–17None OW/OB7
Garnier [31] 2001Cross sectionalSenegal8013–15BMI8
Benefice [32] a 2001Cross sectionalSenegal4013BMI8
Benefice [33] a 2001Cross sectionalSenegal4013BMI8
Jinabhai [246] a 2001Cross sectionalSouth Africa5798–10NCHS reference7
Beasley [162] 2002Cross sectionalChad10246–15None OW/OB7
Pawloski [34] 2002Cross sectionalMali105610–17Weight z-scores7
Perzanowski [142] 2002Cross sectionalKenya2658–15Weight, height, body fat %6
Underhay [187] a , b 2002Cross sectionalSouth Africa124210–15IOTF categories9
Bhargava [35] 2003LongitudinalKenya1006–9BMI6
Eckhardt [36] 2003Cross sectionalSouth Africa866–16BMI7
Garnier [37] 2003Cross sectionalSenegal33114–16Weight z-scores8
Grillenberger [38] 2003Cross sectionalKenya1107Weight z-scores7
Mabalia-Babela [289] 2003Cross sectionalDRC10876–13BMI percentiles per Rolland-Cachera 19948
Mukundi [163] 2003Cross sectionalKenya85110–17None OW/OB7
Prista [247] 2003Cross sectionalMozambique23166–17NCHS reference8
Leman [39] 2003Cross sectionalNigeria395–8BMI7
Jinabhai [184] b , c , d 2003Cross sectionalSouth Africa295358–11WHO and IOTF categories9
Schutte [40] a , b 2003Cross sectionalSouth Africa124410–15BMI9
Gray [143] 2004Cross sectionalKenya1835–16Weight, height7
Micklesfield [290] 2004Cross sectionalSouth Africa1987–11US reference sample7
Larsen [41] 2004Cross sectionalKenya1115–17BMI7
Benefice [188] 2004Cross sectionalSenegal50716IOTF categories6
Benefice [42] 2004Cross sectionalSenegal4013–15Weight z-scores7
Monyeki [43] 2004LongitudinalSouth Africa857BMI8
McVeigh [44] a 2004Cross sectionalSouth Africa3869BMI7
Cameron [144] a 2004Cross sectionalSouth Africa2149Body fat %7
Mukuddem-Petersen [164] a , b 2004Cross sectionalSouth Africa125710–15None OW/OB9
Prista [45] 2005Cross sectionalMozambique227116–17BMI8
Agyemang [189] b , c 2005Cross sectionalGhana12778–16IOTF categories9
Garnier [165] 2005LongitudinalSenegal18065–17CDC categories7
Calvert [291] 2005Cross sectionalSouth Africa3938–12BMI z-score8
Monyeki [292] 2005LongitudinalSouth Africa8557–14US reference sample8
Benefice [46] 2005Cross sectionalSenegal9910–13BMI8
Friedman [47] 2005Cross sectionalKenya27210–13BMI z-score8
Jinabhai [190] b , c , d 2005Secondary analysisSouth Africa6438–11IOTF categories9
Steyn [248] b , c , d 2005Secondary analysisSouth Africa5447–8NCHS reference10
Underhay [192] a , b 2005Cross sectionalSouth Africa124210–15IOTF categories9
Monyeki [191] a 2006LongitudinalSouth Africa18846–13IOTF categories8
Zerfu [249] 2006Cross sectionalEthiopia12089–17NCHS reference6
Armstrong [193] b , c , d 2006Cross sectionalSouth Africa101956–13IOTF categories10
Kruger [194] b 2006Cross sectionalSouth Africa125710–15IOTF categories9
Aandstad [48] 2006Cross sectionalTanzania1569–10BMI7
Munday [49] 2006LongitudinalGambia625–10BMI z-scores7
Djarova [50] 2006Cross sectionalZimbabwe496–14BMI6
Onyewadume [51] 2006Cross sectionalBotswana3011–14BMI8
Nyati [145] a 2006Cross sectionalSouth Africa3699Weight, height8
Vidulich [52] a 2006Cross sectionalSouth Africa47610BMI7
Micklesfield [146] 2007Cross sectionalSouth Africa649Weight, height7
Micklesfield [53] 2007Cross sectionalSouth Africa4009BMI8
Ben-Bassey [54] 2007Cross sectionalNigeria150412–17BMI8
Longo-Mbenza [250] 2007Cross sectionalDRC15355–17NCHS reference6
Rohner [166] 2007Cross sectionalCôte d'Ivoire (Ivory Coast)2815–15None OW/OB7
Jinabhai [195] b , c , d 2007Cross sectionalSouth Africa532213–17IOTF categories10
Madhavan [167] 2007Cross sectionalSouth Africa1175–14None OW/OB7
Vidulich [55] 2007Cross sectionalSouth Africa47610BMI7
Monyeki [56] 2007LongitudinalSouth Africa7027–14Weight z-score8
Semproli [196] 2007Cross sectionalKenya1,3835–17IOTF categories7
Andries [57] 2007LongitudinalSouth Africa7027–14Weight z-score7
Bovet [197] b , c , d 2007Cross sectionalSeychelles434312–15IOTF categories9
Goon [147] 2007Cross sectionalNigeria2015 Body fat %8
Travill [293] 2007Cross sectionalSouth Africa7208–17Waterlow et al., 19777
Makgae [198] a 2007LongitudinalSouth Africa19026–13IOTF categories8
Ejike [58] 2008Cross sectionalNigeria92310–17BMI8
Ekpo [168] 2008Cross sectionalNigeria2285–15None OW/OB8
Anyiam [169] b , c 2008Cross sectionalNigeria38025–13None OW/OB10
Nienaber [59] 2008Cross sectionalSouth Africa19515BMI8
Olivieri [170] 2008Cross sectionalZimbabwe9826–17None OW/OB7
Monyeki [199] 2008LongitudinalSouth Africa18177–13IOTF categories7
Jeremiah [294] 2008Cross sectionalNigeria1445–8Other WHO based system7
Funke [60] 2008Cross sectionalNigeria31510–17BMI7
Lennox [61] 2008Cross sectionalSouth Africa31815BMI8
Goon [62] a 2008Cross sectionalNigeria20159–12BMI8
Alaofe [251] 2009Cross sectionalBenin18012–17NCHS reference7
Prista [227] 2009Cross sectionalMozambique2566–16WHO categories8
Micklesfield [63] 2009Cross sectionalSouth Africa4009BMI8
Demerath [64] 2009Secondary analysisSouth Africa1969Other NCHS based system8
Cameron [65] 2009Secondary analysisSouth Africa2278–11BMI7
Hawley [66] 2009Secondary analysisSouth Africa11649–11Weight z-scores6
Berntsen [67] 2009Cross sectionalTanzania1909–10BMI8
Dapi [255] 2009Cross sectionalCameroon58112–16CDC categories7
Ayoola [171] 2009Cross sectionalNigeria3497–16None OW/OB7
Senbanjo [68] 2009Cross sectionalNigeria3925–14BMI8
Padez [228] 2009Cross sectionalMozambique14179–17WHO categories7
Mulugeta [148] 2009Cross sectionalEthiopia41310–15BMI z-scores7
Naiho [69] 2009Cross sectionalNigeria2005–10BMI6
Adegoke [70] 2009Cross-sectionalNigeria7046–17BMI8
Amuta [172] 2009Cross sectionalNigeria6006–17None OW/OB6
Poopedi [74] b , c 2009Cross sectionalSouth Africa38510BMI10
Kimani-Murage [252] b , c 2010Cross sectionalSouth Africa19145–14IOTF categories9
Bamidele [173] 2010Cross sectionalNigeria1395–15Other WHO based system7
Omigbodun [229] 2010Cross sectionalNigeria150310–17WHO categories7
Harmse [72] 2010Cross sectionalSouth Africa22113–17BMI7
Senbanjo [256] 2010Cross sectionalNigeria3925–14CDC categories8
Goon [73] 2010Cross sectionalNigeria56312–17BMI7
Mosha [230] 2010Cross sectionalTanzania4286–12WHO categories5
Olumakaiye [174] 2010Cross sectionalNigeria31510–17Other NCHS based system8
Goon [186] 2010Cross sectionalNigeria20159–12CDC and IOTF categories8
Goon [200] 2010Cross sectionalNigeria2197–14IOTF categories7
Opara [231] 2010Cross sectionalNigeria7705–14WHO categories7
Ejike [253] 2010Cross sectionalNigeria56310–17NCHS reference7
Truter [254] 2010Cross sectionalSouth Africa2809–13NCHS reference7
Ansa [75] 2010Cross sectionalNigeria96410–17BMI8
Bogale [175] 2010Cross sectionalEthiopia1005None OW/OB7
Mulugeta [176] 2010Cross sectionalEthiopia41310–15None OW/OB8
Hawkesworth [295] 2010Cross sectionalGambia1715–10BMI8
Poopedi [71] 2011Cross sectionalSouth Africa38510BMI7
Micklesfield [76] 2011Cross sectionalSouth Africa47113BMI7
Salman [257] 2011Cross sectionalSudan3046–12CDC categories7
Nagwa [232] 2011Cross sectionalSudan113810–17WHO categories7
Griffiths [77] 2011MixedSouth Africa2819–10BMI7
Dabone [233] 2011Cross sectionalBurkina Faso6497–14WHO categories7
Henry-Unaeze [78] b , c 2011Cross sectionalNigeria20012–17BMI9
Hadley [79] b , c 2011Cross sectionalEthiopia194313–17BMI8
Odenigbo [258] 2011Cross sectionalNigeria1196–12CDC categories7
Thrandrayen [80] b , c 2009Retrospective longitudinalSouth Africa67210 and 15BMI z-scores8
Goon [81] 2012Cross sectionalSouth Africa11369–13BMI7
Kruger [82] b , c 2012Cross sectionalSouth Africa582 and 4627–9Weight z-scores6
Semproli [83] 2011Cross sectionalKenya13835–17BMI z-scores7
Koueta [201] 2011Cross sectionalBurkina Faso20413–16IOTF categories7
Stevens [84] 2011Cross sectionalGhana1819–16BMI7
Peltzer [202] d 2011Secondary analysisGhana & Uganda561313–15IOTF categories9
Goon [234] a , b , c 2011Cross sectionalNigeria20159–12WHO categories9
Nwizu [85] 2011Cross sectionalNigeria72810–17BMI7
Naude [86] 2011Cross sectionalSouth Africa16212–16BMI z-scores5
Abolarin [87] 2011Cross sectionalNigeria5606–12BMI8
Abrahams [88] 2011Cross sectionalSouth Africa71710–12BMI z-scores8
Motswagole [89] 2011Cross sectionalSouth Africa9199–15BMI8
Croteau [259] 2011Cross sectionalKenya728–12CDC categories8
Fetuga [226] 2011Cross sectionalNigeria16906–16CDC categories7
Rankin [149] 2011Cross sectionalSouth Africa8113–16Weight7
Larbi [260] 2011Cross sectionalGhana14826–15CDC categories8
Mchiza [90] 2011Secondary analysisSouth Africa2019–12BMI6
Armstrong [203] b , c , d 2011Secondary analysisSouth Africa303658–11IOTF categories10
Benefice [91] 2011Cross sectionalSenegal7915–15BMI8
Kimani-Murage [204] 2011Cross sectionalSouth Africa94410–14IOTF categories7
Dapi [92] 2011Cross sectionalCameroon22712–16BMI8
Vidulich [150] 2011Cross sectionalSouth Africa41910Weight, height8
Faye [296] b , c 2011Cross sectionalSenegal235611–17Rolland-Cachera et al., 19918
Fetuga [235] 2011Cross sectionalNigeria10166–10WHO categories8
Cameron [93] 2011Cross sectionalSouth Africa1199–10BMI6
Goon [151] b 2011Cross sectionalSouth Africa11369–13Weight, height9
Amusa [205] 2011Cross sectionalSouth Africa4097–13IOTF categories8
Ramos [177] 2011Cross sectionalKenya2159–10None OW/OB7
Puckree [236] 2011Cross sectionalSouth Africa12010–12WHO categories7
Armstrong [94] a , d 2011Cross sectionalSouth Africa102956–13BMI10
Adamo [206] a 2011Cross sectionalKenya1799–13IOTF categories7
Goon [261] 2011Cross sectionalNigeria55312–1 7CDC categories7
Kamau [237] b , c 2011Cross sectionalKenya532510–15WHO categories9
Ojofeitimi [297] 2011Cross sectionalNigeria28010–14Other similar study8
Kemp [207] b , c 2011Cross sectionalSouth Africa8166–7IOTF categories10
Oldewage-Theron [238] 2011Cross sectionalSouth Africa976–13WHO categories7
Okoh [262] 2012Cross sectionalNigeria13026–12CDC categories7
Naidoo [263] 2012Cross sectionalSouth Africa1707–10CDC categories7
Ene-Obong [209] 2012Cross sectionalNigeria1,5995–9IOTF categories7
Prentice [152] 2012LongitudinalGambia808–16Weight, height7
Kramoh [239] 2012Cross sectionalCôte d'Ivoire203812WHO categories7
Musa [95] 2012Cross sectionalNigeria32439–15BMI7
Adesina [96] 2012Cross sectionalNigeria88410–17BMI8
Cordeiro [178] b , c 2012Cross sectionalTanzania67010–15None OW/OB9
Monyeki [210] a 2012LongitudinalSouth Africa25614IOTF categories8
Griffiths [211] 2012Cross sectionalSouth Africa35816IOTF categories7
Onywera [185] 2012Cross sectionalKenya1699–12WHO categories7
Bafor [97] 2012Cross sectionalNigeria3695–10BMI7
Reddy [212] b , c , d 2012Secondary analysisSouth Africa9522 and 937114–17IOTF categories9
Opare-Addo [240] 2012Cross sectionalGhana7207–17WHO categories8
Ojiambo [98] 2012Cross sectionalKenya20012–16BMI z-scores7
Chinedu [264] 2012Cross sectionalNigeria9266–16CDC categories5
Craig [179] 2012Cross sectionalSouth Africa15197, 11, and 15None OW/OB5
Amare [180] 2012Cross sectionalEthiopia1005–15None OW/OB8
Moselakgomo [213] 2012Cross sectionalSouth Africa117210–16IOTF categories8
Micklesfield [214] 2012Cross sectionalSouth Africa38111–15IOTF categories6
Monyeki [215] 2012Cross sectionalSouth Africa25614IOTF categories8
Monyeki [298] 2012Cross sectionalSouth Africa15314–15Not indicated8
Truter [216] 2012Cross sectionalSouth Africa2809–13IOTF categories7
Musa [217] 2012Cross sectionalNigeria32409–16IOTF categories8
Bovet [218] b , c 2012Cross sectionalSeychelles84629–16IOTF categories9
Fetuga [299] 2012Cross sectionalNigeria15575–11Weight standard deviation scores8
Girma [100] 2012Cross sectionalEthiopia1167–9Weight z-scores6
Motswagole [241] 2012Cross sectionalSouth Africa21116–15WHO categories7
Wolff [101] 2012Cross sectionalMadagascar12366–15BMI8
Toriola [265] a 2012Cross sectionalSouth Africa117210–16CDC categories7
Wolff [102] a 2012Cross sectionalMadagascar12366–15BMI7
Goon [153] a , b , c 2012Cross sectionalNigeria20159–12Weight, height10
Toriola [219] 2012LongitudinalSouth Africa28314IOTF categories8
Feeley [208] 2013LongitudinalSouth Africa129813, 15, and 17IOTF categories7
Wilson [220] b , c , d 2013Secondary analysisSeychelles58011–17IOTF categories8
Ginsburg [221] 2013Cross sectionalSouth Africa161315IOTF categories7
Senbanjo [103] 2013Cross sectionalNigeria5485–17BMI7
Malete [222] 2013Cross sectionalBotswana75613–16IOTF categories7
Neumann [181] 2013Cross sectionalKenya9106–14None OW/OB7
Degarege [182] 2013Cross sectionalEthiopia4035–15None OW/OB8
Puoane [242] 2013Cross sectionalSouth Africa16210–15WHO categories7
Amare [183] 2013Cross sectionalEthiopia4059–14None OW/OB8
Mang'eni [223] a 2013Cross sectionalKenya20013–16IOTF categories7
Onywera [224] a 2013Cross sectionalKenya1799–13IOTF categories7
Heroux [225] a 2013Cross sectionalKenya1799–13IOTF categories7
Average (D&B) score 7.4

Acronyms: D & B score (Downs & Black score); None OW/OB (none were overweight/obese); BMI (Body Mass Index); CDC-NCHS (Centers for Disease Control and Prevention – National Center for Health Statistics); WHO (World Health Organization); IOTF (International Obesity Task Force).

 =  Identical study sample as used in another included manuscript (not included in quantitative synthesis) [n = 27].

 =  Article indicated targeting a sample size representative of the population of interest [n = 38].

 =  Article indicated recruiting a sample size representative of the population of interest [n = 31].

 =  Article indicated that the sample size was nationally representative [n = 11].

Acronyms: D & B score (Downs & Black score); None OW/OB (none were overweight/obese); BMI (Body Mass Index); CDC-NCHS (Centers for Disease Control and Prevention – National Center for Health Statistics); WHO (World Health Organization); IOTF (International Obesity Task Force). =  Identical study sample as used in another included manuscript (not included in quantitative synthesis) [n = 27]. =  Article indicated targeting a sample size representative of the population of interest [n = 38]. =  Article indicated recruiting a sample size representative of the population of interest [n = 31]. =  Article indicated that the sample size was nationally representative [n = 11].

Results

shows the PRISMA flow chart with numbers of included and excluded articles at each step of the review process, while provides a summary of all studies that met the inclusion criteria. A total of 2657 records were identified through database searches and other sources. Following de-duplication, 2242 articles were screened for eligibility, and 663 articles were selected for a full-text review. Of these, 283 articles met the inclusion criteria, and 68 of the studies (comprising 190,149 participants) were used in quantitative synthesis. Reasons for exclusion included: ineligible population (e.g., studies that did not involve children 5–17 years of age with no pre-existing condition) (n = 181); ineligible country (e.g., population living in a country/region outside of SSA) (10); ineligible outcome (n = 122); or ineligible study design (n = 67). It is important to note that all the studies included in this review were found to have used objective methods of collecting body composition data.

Regional representation

As shown in , which includes a summary of the 283 studies included in the review, the four regions of SSA were well represented, with 91 (32.1%) from West African countries - with Nigeria represented in 60 of these records; 7 (2.5%) from Central African countries; 75 (26.5%) from East African countries - with Kenya represented in 28 of these records; 108 (38.2%) from South African countries - with South Africa represented in 102 of these records; and 2 (0.7%) that were East and West combined. In total, 27 countries were captured in this review.

Publication rate

The earliest relevant record captured was published in 1964. There was a marked increase in the publishing rate from the earliest to the current studies: 5 articles between 1960 and 1969, 15 from 1970–1979, 32 from 1980–1989, 31 from 1990–1999, 92 from 2000–2009, and 108 articles from 2010 to May/June 2013.

Data quality assessment

The average modified Downs and Black score out of ten for all studies included in this systematic review was 7.4; indicative that data quality was fairly high among the included records, within the prescribed limitations of study designs included in this review. The majority of studies used in the quantitative synthesis scored 7 or higher. As presented in , the scoring process further revealed that only 38 (13.4%) of 283 included articles targeted a sample that was representative of their population of interest, and 31 (11.0%) recruited a sample that was representative of their population of interest. Only 11 (3.9%) articles explicitly mentioned using a nationally representative sample, one of which used the same study sample as that of another already included study.

Body composition measures

Of the 283 included studies, 88 (31.1%) articles [16]–[103] reported on mean BMI, BMI-z-score, and/or weight z-scores of the sample population, 50 (17.7%) articles [104]–[153] reported on body fat percentage, waist circumference, skin fold measures, and/or weight and height measures, and a total of 30 (10.6%) articles [154]–[183] reported finding no prevalence of overweight/obesity in their study samples. Of the remaining 115 (40.6%) records, 82 articles [184]–[265] used the more widely accepted international cut-points (namely, the International Obesity Task Force (IOTF), the Centers for Disease Control and Prevention (CDC), and the most recent WHO cut-points) to further categorize their samples into underweight, normal-weight, and overweight/obese. The other 33 articles [266]–[298] mentioned using one of a number of other cut-points and reference standard groups including but not limited to Tanner et al., 1966, Seoane & Latham, 1971, Frisancho 1990, Rosner et al., 1998, Harvard Standards, Waterlow 1972/77, and various US and UK reference samples. Of the 30 studies reporting no prevalence of overweight/obesity, a majority had not used the more widely accepted international cut-points, while the reminder did not provide the required prevalence estimates to be included in the quantitative synthesis.

Quantitative synthesis

Of the 82 articles that used more widely accepted international cut-points, 11 studies [187], [191], [192], [198], [206], [215], [224], [225], [234], [246], [265] were removed due to having an identical study sample as an already included study, and 3 studies [214], [218], [264] were removed for having not indicated the sample sizes in the age range of interest. As represented in , the remaining 68 (24.0%) articles [184]–[186], [188]–[190], [193]–[197], [199]–[205], [207]–[213], [216], [217], [219]–[223], [226]–[233], [235]–[245], [247]–[263] were used in quantitative synthesis. Of these, the largest proportion (44.1%) used the IOTF cut-points [299], 30.9% used CDC cut-points [300], and 25.0% used the most recent WHO cut-points [301] for weight status. Briefly, the IOTF methodology involved obtaining the body mass index for children from six large nationally representative cross sectional surveys on growth from Brazil, Great Britain, Hong Kong, the Netherlands, Singapore, and the United States. Thereafter, centile curves for body mass index were constructed for each dataset by sex, and passed though the widely used cut off points of 25 and 30 kg/m2 for adult overweight and obesity at age 18 years. The resulting curves were averaged to provide age and sex specific cut off points for children 2–18 years of age [299]. In the case of the CDC cut-points, growth charts were developed based on data from five national health examination surveys conducted in the United States, including limited supplemental data. Smoothed percentile curves were created by first smoothing selected empirical percentiles, then creating parameters obtain the final curves, additional percentiles, and z-scores [300]. Finally, the WHO cut-points were developed after data from the 1977 National Center for Health Statistics (NCHS)/WHO growth reference for 1–24 years, were merged with data from the under-fives growth standards' cross-sectional sample to smooth the transition between the two samples. The new curves filled the gap in growth curves and provided an appropriate reference for the 5 to 19 years age group [301].
Table 4

Proportions of overweight/obesity as reported by studies used in quantitative synthesis.

Sample Size (n)Proportions in MalesProportions in FemalesProportions in Both Males and Females
First AuthorYearCountryCut OffAge Range (years)MFTotalUWNWOWOBUWNWOWOBUWNWOWOB
Villiers [244] 1987South Africa114–15 5757 1.8 1.8
Wagstaff [243] 1987a (1981)South Africa15–14 937 27.3 3.93.4
Wagstaff [243] 1987a (1983)South Africa15–14 864 21.9 7.14.0
Monyeki [245] 1999South Africa15–105955571152 0.5 0.7 0.6
Prista [247] 2003Mozambique16–1710941222231621.9 4.8 10.0 7.7 15.6 6.3
Jinabhai [184] 2003South Africa28–11173511202529376 3.00.7 4.51.2 3.60.9
Benefice [188] 2004Senegal31618831950750.0 0.00.017.9 1.60.029.8 1.00.0
Agyemang [189] 2005Ghana38–166166611277 3.1 6.4 4.8
Jinabhai [190] 2005South Africa38–11292351643 5.10.6
Steyn [248] 2005South Africa17–8 544 6.485.45.03.3
Zerfu [249] 2006Ethiopia19–17 918 23.8 3.5
Armstrong [193] 2006South Africa36–135603468010283 10.83.2 13.04.9 11.84.0
Kruger [194] 2006South Africa310–156086491257 4.11.5 8.31.7 6.31.6
Longo-Mbenza [250] 2007DRC1≥12362124486 24.0 68.5 35.5
Jinabhai [195] 2007South Africa313–1723982924532218.4 4.2 2.6 20.9 9.7 13.4
Semproli [196] 2007Kenya35–17702681138310.6 6.3 3.2
Bovet [197] 2007Seychelles312–15220221414343 8.13.1 13.14.4 10.63.7
Monyeki [199] 2008South Africa37–139388791817 1.1 2.1 1.6
Alaofe [251] 2009Benin112–17 180180 8.081.08.03.08.081.08.03.0
Prista [227] 2009Mozambique26–16139117256 1.10.0
Dapi [255] 2009Cameroon112–162483335816.0 4.0 1.0 14.0 3.0 10.0
Padez [228] 2009Mozambique29–17298400698 0.70.0 1.30.3 1.00.2
Goon [186] 2010Nigeria19–129791036201587.1 2.11.6 3.22.8 2.72.2
Kimani-Murage [252] 2010South Africa35–14 1884 6.5 5.01.5
Omigbodun [229] 2010Nigeria210–17763740150322.3 1.2 15.5 3.9 19.0 2.5
Senbanjo [256] 2010Nigeria15–1420219039237.161.91.0 23.274.72.1 30.468.11.5
Mosha [230] 2010Tanzania26–960145205 21.468.85.84.0
Goon [200] 2010Nigeria37–14107112219 2.71.0
Odenigbo [258] 2010Nigeria16–12 119 29.463.06.70.8
Opara [231] 2010Nigeria25–12.5 378 29.1 10.3
Ejike [253] 2010Nigeria110–173372265635.3 23.7 2.7 7.2 4.3 17.1
Salman [257] 2010Sudan16–1268236304 82.411.85.9 75.014.011.0 76.713.59.9
Truter [254] 2010South Africa19–12128152280 78.915.65.5 77.615.17.2 78.215.46.4
Nagwa [232] 2011Sudan210–17526612113817.761.09.911.410.669.611.68.213.965.610.89.7
Dabone [233] 2011Burkina Faso27–14312337649 13.7 2.3
Koueta [201] 2011Burkina Faso313–16 204 3.9
Peltzer [202] 2011Ghana & Uganda313–15273828755613 2.70.5 9.50.9 6.20.7
Croteau [259] 2011Kenya18–12294372 11.184.74.2
Fetuga [226] 2011Nigeria26–168216691690 2.5 3.3 2.5
Larbi [290] 2011Ghana16–157067761482 7.978.713.4
Kimani-Murage [204] 2011South Africa310–14 944 7.5
Fetuga [235] 2011Nigeria26–10479537101623.8 3.8 20.8 3.3 22.2 3.5
Amusa [205] 2011South Africa37–13193216409 2.6 2.9 2.8
Puckree [236] 2011South Africa210–124872120 66.228.85.0
Goon [261] 2011Nigeria112–170553553 5.477.011.15.45.477.011.15.4
Kamau [237] 2011Kenya210–15262027055325 6.52.6 10.93.6 8.73.1
Kemp [207] 2011South Africa36–7419397816 90.26.43.3 86.49.34.3 88.47.83.8
Oldewage-Theron [238] 2011South Africa26–134354974.790.72.32.35.790.53.80.05.290.73.11.0
Armstrong [203] 2011a (1994)South Africa38–11177561260930365 1.1 1.4 1.20.2
Armstrong [203] 2011a (2004)South Africa38–11177561260930365 9.52.2 16.54.4 12.43.1
Okoh [262] 2012Nigeria16–125857171302 11.776.75.75.9
Naidoo [263] 2012South Africa17–1070100170 54.311.434.3 55.016.029.0 54.714.131.2
Ene-Obong [209] 2012Nigeria35–9 706 19.068.79.52.8
Kramoh [239] 2012Côte d'Ivoire21285611822038 1.8 6.864.027.04.05.0
Monyeki [210] 2012South Africa31410015625644.048.08.0 30.751.917.3 35.950.413.7
Griffiths [211] 2012South Africa316190168358 6.33.7 22.28.4 13.35.7
Onywera [185] 2012Kenya29–128584169 6.8 16.7 12.0
Opare-Addo [240] 2012Ghana27–170720720 6.074.610.48.9
Moselakgomo [213] 2012South Africa310–1654163111724.680.89.15.55.279.411.04.44.980.010.14.9
Truter [216] 2012South Africa39–13128152280 15.65.5 15.17.2 15.56.5
Musa [217] 2012Nigeria39–1615261,7143240 88.59.71.8
Motswagole [241] 2012South Africa26–15 2111 34.2 0.6
Toriola [219] 2012South Africa31411117228334.248.617.1 26.241.032.4 29.344.026.4
Reddy [212] 2012a (2002)South Africa314–17418453389522 6.31.6 24.35.0 16.43.5
Reddy [212] 2012a (2008)South Africa314–17456548069371 11.03.3 29.07.5 20.25.5
Feeley [208] 2013South Africa313–176076161223 8.1 27.0 17.6
Wilson [220] 2013Seychelles311–17278302580 13.4 15.67.7
Ginsburg [221] 2013South Africa315773840161320.371.85.42.59.665.417.57.514.268.511.75.1
Malete [222] 2013Botswana313–16464292756 5.078.411.65.1
Puoane [242] 2013South Africa210–150162162 2.461.436.2
Mang'eni [223] 2013Kenya313–1698102200 5.0
95885 84455 190149 25.0 68.0 5.6 2.0 8.3 68.6 11.5 3.9 17.6 68.5 8.1 2.5
Sample totals (M) – weighted averages (F) – weighted averages (T) – weighted averages

Acronyms: M (male); F (female); UW (underweight); NW (normal weight); OW (overweight); OB (obese).

Weighted averages: Proportions may not add up to 100% for M, F, and T since some of the included studies did not report in each of the UW, NW, OW, and, OB categories.

Year of publication (year that corresponding data was collected included in brackets).

Acronyms: M (male); F (female); UW (underweight); NW (normal weight); OW (overweight); OB (obese). Weighted averages: Proportions may not add up to 100% for M, F, and T since some of the included studies did not report in each of the UW, NW, OW, and, OB categories. Year of publication (year that corresponding data was collected included in brackets). shows a distinctive time trend towards increasing proportions of overweight/obesity in school-aged children in SSA. The figure also shows a similar but less prominent trend towards increasing proportions of obesity over time. , shows increasing trends in proportions of overweight/obesity over time for both boys and girls; however, the proportions are consistently higher in girls than in boys. To determine the robustness of these findings, we examined the trends in overweight/obesity over time using the few studies that indicated having recruited a representative sample of the population. We similarly found a trend towards increasing proportions of overweight/obesity among school-aged children in this region. The findings were also similar when boys and girls were assessed separately. While not the focus of this manuscript, as shown in , we also examined trends in underweight over time for the included studies that had also reported this proportion. We found a trend towards decreasing proportions of underweight over time in boys, a trend towards increasing proportions over time in girls, and a largely unaltered trend over time - at approximately 20% - when boys and girls were considered together.
Figure 2

Proportions of overweight/obesity (combined) and obesity over time in Sub Saharan Africa.

Figure 3

Proportions of overweight/obesity (combined) in Sub Saharan Africa's boys and girls.

Figure 4

Proportions of underweight over time in Sub Saharan Africa.

The weighted averages (for the entire time period and all studies included in the quantitative analysis) of overweight/obesity proportions in boys and girls were calculated as 7.6% and 15.4% respectively. Weighted averages of obesity alone for boys and girls were 2.0% and 3.9% respectively. Weighted averages of overweight/obesity and obesity proportions for boys and girls combined were 10.6% and 2.5%. Weighted proportion of underweight was calculated as 25.0% for boys, 8.3% for girls, and 17.6% for boys and girls combined.

Narrative synthesis

Narrative descriptions of the relationship between body composition and age, sex, socioeconomic status (SES), and urban/rural differences are discussed below based largely on the studies not included in the quantitative synthesis:

Sex differences

Of the 96 studies [16]–[18], [20], [24]–[26], [29], [36], [39], [40], [43], [45], [46], [48], [51], [53]–[56], [59]–[61], [63]–[68], [70]–[72], [74], [76]–[80], [83], [85], [86], [89], [91], [92], [95], [96], [98], [103]–[105], [107], [109]–[114], [116]–[120], [123], [124], [126], [128], [129], [132], [133], [135], [136], [140], [143], [147], [149]–[152], [163], [169], [170], [214], [215], [218], [225], [281], [287], [289], [292], [293], [295] that reported their data by sex, 31 articles [20], [25], [29], [40], [45], [59], [67], [68], [70], [71], [74], [76], [78], [79], [85], [86], [89], [92], [95], [96], [103], [107], [124], [126], [132], [147], [151], [163], [170], [214], [215] reported that girls had higher body composition measures than boys, while 5 articles [265], [267], [289], [292], [293] reported that boys had higher body composition measures than girls. The remaining studies either found no significant difference or did not report a difference between boys and girls.

Urban/rural differences

Thirty-three articles compared body composition measures in urban and rural populations. Of these, 29 studies (including 7 studies used in the quantitative synthesis) [17, 24, 27, 31, 34, 37, 54, 58, 79, 84, 87, 98, 119, 128, 129, 138, 156, 163, 206, 212, 282, 298, (185, 189, 200, 217, 233, 240, 260)] reported significantly higher body composition measures in the urban compared to the rural sample, with the remaining studies [110], [111], [140], [280] reporting no significant difference between the two populations.

Socioeconomic status (SES) differences

Twenty four articles reported on outcomes of interest by some measure of socioeconomic status (e.g., income quartile, public/private school attendance). Of these, 19 articles (including 8 studies used in the quantitative synthesis) [45, 54, 61, 68, 75, 77, 84, 92, 99, 101, 156, 163, 169, 218, 296, 297, (212, 228, 231, 237, 247, 250, 255, 256)] reported that higher SES was associated with higher body composition measures, whilst the remaining articles [54], [75], [92], [169], [256] found no significant association of SES on body composition.

Age differences

Of the articles that reported on body composition measures by age, 15 studies found a largely positive relationship with age [287], [170], [70], [147], [103], [95], [151], [20], [42], [242], [256], [229], [230], [199], [297], while 7 studies found a largely negative relationship with age [83], [264], [233], [19], [190], [196], [245]. In some cases, the relationship between age and body composition measures differed between sexes; as such, we may conclude that there was no convincing or consistent evidence of an independent age effect.

Discussion

To our knowledge, this systematic review is the first to comprehensively examine if there is evidence supporting an overweight/obesity transition in school-aged children and youth in SSA.

An overweight/obesity transition

Due to vast heterogeneity in types of measurement, classification, and analysis, both narrative and quantitative analyses (weighted proportions and bubble plots of overweight/obesity) were presented in this review. Quantitative synthesis was completed using 68 studies that categorized children and youth based on internationally accepted cut-points for weight status. The weighted averages of overweight/obesity proportions in boys and girls was 7.6% and 15.4% respectively, while obesity proportions in boys and girls was 2.0% and 3.9% respectively. Weighted averages of overweight/obesity, and obesity for the total population were 10.6% and 2.5%. Current evidence revealed a clear transition of increasing proportions of overweight/obesity in school-aged children in SSA, and a similar, but less prominent trend towards increasing proportions of obesity over time. This transition to higher proportions of overweight/obesity is similar to observed trends in developed countries; however, the weighted averages fall far below proportions in various high income countries. For example, in Canada, research has shown that the prevalence of overweight/obesity has more than doubled (14% to 29%) and the obesity rate has tripled (3% to 9%) over the last 25 years in children and youth 5 to 17 years of age [302], [303]. In the USA, 33% of children and youth 6–19 years are considered to be overweight/obesity, and 18% are considered to obese [304]. It is important to note that across all age groups, WHO cut-points yield higher proportions of boys and girls classified as overweight/obesity than do the IOTF, or CDC cut-points [305]. While studies that used any of the three cut-points were analysed together in this review, when interpreting prevalence estimates of overweight/obesity, it is important to consider the choice of cut-point used in each study. With the largest proportion of included studies using IOTF cut-points, it could be argued that this may “dilute” the weighted average of the proportions of overweight/obesity calculated for SSA. Nonetheless, these results indicate that while there is an imminent threat of continued increases in levels of childhood overweight/obesity in SSA, implementing viable population health interventions may mitigate the associated health risks in these earlier stages.

Persistence of underweight

In discussing an overweight/obesity transition, it is important to recognize that child under-nutrition remains one of SSA's most fundamental challenge for improved human development [306], [307], [308]. This is particularly concerning when considering the school-aged child population as malnutrition affects their education outcomes, and consequently opportunities for success in later years [306]. Inadequate access to food and health services as a result of poverty and broader social determinants of health are some of the underlying determinants of child under-nutrition. The underweight trend over time was largely unaltered at approximately 20% for boys and girls combined, providing the evidence of a persisting underweight problem among SSA's children and youth, and substantiating the emergence of a public health double-edged sword. This persistence in underweight coupled with an overweight/obesity transition may place undue strain on the limited healthcare resources in SSA countries [14]. As such, frameworks for interventions to improve the nutritional status of SSA children will have to account for broader concepts such as societal organization, economic structures, and political ideologies [306]. We would however like to caution the reader that describing an underweight trend was not an objective of this systematic review; as such, pertinent articles reporting on underweight may have been omitted during the literature search thereby skewing these results.

Sex differences

Both quantitative and narrative synthesis revealed that there were increasing trends in proportions of overweight/obesity over time for both boys and girls; however, body composition measures and the proportions of overweight/obesity were proportionally higher in girls than in boys. In contrast, in North America, obesity is more common in boys than in girls, with the most significant differences observed among younger children 5–11 years [304], [309]. Higher proportions of overweight/obesity in SSA girls may be related to differences in gender roles particularly those requiring higher physical exertion (e.g., boys participating in higher energy expending roles/activities); and, cultural desirability whereby being overweight (i.e., “rounder”) is an admired trait and seen as a sign of wealth and prestige, particularly in girls.

Urban/rural and SES differences

Narrative synthesis revealed higher body composition measures in the urban compared to the rural population. In addition, higher SES was associated with higher body composition measures, pointing to a positive SES relationship. Factors associated with overweight/obesity span various behavioural, social, environmental, and biological constructs making them difficult to ascertain; however, urban residence and higher SES may be positively associated with overweight/obesity in SSA owing to improved access to governance, health care, education, employment and income, in addition to increased availability of packaged foods high in saturated fats and sugars and increased sedentary behaviour, all of which are more accessible to and/or affordable for those of higher SES or individuals living in urban areas.

Strengths, limitations, and future directions

The main strength of this review was the use of high quality standards to conceptualize and conduct the methodology and synthesis. Further, as many decisions as possible were made a priori to limit possible bias, and all levels of the review process were conducted in duplicate, ensuring a higher level of accuracy. Our assessment indicated that the quality of included studies was relatively high. The main limitation of this study lies in the vast heterogeneity in study methodology. The variety in the types of body composition measurements, analyses, definitions of SES, and reference standards limited our interpretation and presentation of the results. Quantitative synthesis was limited to those using the more widely accepted cut-points to further categorise study samples by weight status. It is also unclear if any material relevant for this review may have been published in un-indexed journals and hence not captured by the literature search. Recognizing that future studies may increasingly employ WHO cut-points, since they represent a more robust criterion-based standard, we recommend that studies use the WHO cut-points for categorizing childhood overweight/obese in SSA, as this would allow for improved comparability and time trend analyses as attempted in this paper. A repository of studies, particularly those that are representative may be set up to this end, to allow for periodic comparative analysis for the whole of SSA. Measurements on more population representative samples are also required e.g., a multi-country survey using common measurement techniques and sampling procedures would be most desirable.

Conclusion

This systematic review provides evidence for an overweight/obesity transition in school-aged children in SSA. While the weighted averages of overweight/obesity in SSA are lower, this transition to higher proportions of overweight/obesity is similar to findings in various developed countries. The weighted average of overweight/obesity was higher in girls than in boys, and higher in those with higher SES. The review also revealed a persisting problem of underweight in the region, underpinning a double burden of risk factors. Findings of this review indicate that more nationally representative studies are needed to strengthen this field of research, and that interventions and strategies to address the growing threat of childhood overweight/obesity should focus on the higher SES and urban populations, with greater attention placed on girls.

Acknowledgments

The authors are grateful to Alison McFarlane and Afekwo Mbonu for their contributions towards locating the full text articles and for assistance with manuscript formatting. PRISMA checklist. (DOC) Click here for additional data file.
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