Food and nutrition insecurity are serious public health challenges affecting millions of households globally(Reference Motbainor, Worku and Kumie1). The United Nations (UN) agencies reported in 2019 that more than 2 billion individuals do not have daily access to healthy, nutritious and adequate food, and one in nine individuals faces chronic food insufficiency(Reference Barrett2,Reference Oldewage-Theron, Dicks and Napier3) . Africa has the highest number of undernourishment, with food insecurity being one in every four citizens(Reference Obayelu4).
Food insecurity is becoming a major threat for contemporary societies with both short- and long-term impacts on human survival and well-being(Reference Szabo5). It has been linked to a variety of health outcomes such as under nutrition(Reference Saaka and Osman6–Reference Gundersen and Ziliak9), iron deficiency anaemia, multiple chronic conditions (diabetes, kidney disease and CVD), obesity(Reference Hartline-Grafton10–Reference Peterson12), mental illness (depression)(Reference Hadley and Patil13) and risky sexual behaviours (HIV/AIDS)(7,Reference Xiong14,Reference Miller, Bangsberg and Tuller15) . There is an increasing evidence representing that in young and school-age children, food insecurity is associated with the risk of developmental problems, which affects their school performances(Reference Arzhang, Gargari and Sarbakhsh16). Furthermore, food insecurity has a great impact on healthcare burden and healthcare costs(Reference Tarasuk, Mitchell and Dachner17).
Approximately 55 % of the global population currently resides in urban areas and this number is expected to increase to 68 % by 2050 due to rural–urban migration(Reference Joshi, Arora and Amadi-Mgbenka18). Inequalities, in terms of infrastructure, services, social amenities and economic activities in favour of urban centres resulted in rise of urban poor due to rural–urban migration(Reference Buhaug and Urdal19,Reference Oyeleye20) . Many rural migrants are less educated and unskilled and end up in low-income, informal sectors(21). As a result of rapid urbanisation with unparalleled economic growth, urban growth in developing countries is followed by swift expansion of unplanned, disadvantaged neighbourhoods/slums with large concentration of poor urban population hence leading to high burden of urban food insecurity(Reference Szabo5,Reference Battersby22) .
A number of studies have been conducted to assess the magnitude and determinants of urban household food insecurity in East African countries(Reference Motbainor, Worku and Kumie23). However, results were inconsistent with a reported magnitude ranging from 20·5 % to 93 %(Reference Leung, Epel and Willett24). Rigorous evaluations of the magnitude and factors associated with urban food insecurity are needed to inform interventions that support the Sustainable Development Goals which aims zero hunger by 2030. This systematic review and meta-analysis were therefore carried out to determine the magnitude and determinant of urban household food insecurity in East African countries.
Methods
Reporting
We used the Preferred Reporting Items for Systematic Review and Meta-Analysis statement (PRISMA) guideline to report the finding(Reference Moher, Liberati and Tetzlaff25). The article screening and selection process was depicted using a PRISMA flow diagram(Reference Stovold, Beecher and Foxlee26).
Searching strategy and information sources
We reported studies providing data from PubMed, Cochrane library, EMBASE, CINAHL, African Journals OnLine, Web of Science and Scopus and Google Scholar on the prevalence and possible risk factors of household food insecurity in urban residents, with the search focusing on Eastern Africa. To find additional appropriate studies for this study, we also screened the reference lists of the remaining articles. We contacted the corresponding authors to handle articles with incomplete recorded data. Additional grey literatures were also collected from foreign and local organisations and universities’ official websites. The search included MeSH terms and keywords independently and/or in combination using Boolean operators ‘OR’ or ‘AND’. The core search terms and phrases included ‘prevalence’, ‘magnitude’, ‘burden’, ‘causes’, ‘determinants’, ‘associated factors’, ‘predictors’ ‘risk factors’, ‘urban’, ‘city’, ‘town’, ‘municipal’, ‘metropolitan’, ‘household’, ‘domestic’, ‘family’, ‘food insecurity’, ‘food security’ and ‘East Africa’. In PubMed database, the following search strategy was used: (prevalence OR magnitude OR epidemiology) AND (causes OR determinants OR associated factors OR predictors OR risk factors) AND (urban (MeSH Terms) OR city OR town OR municipal OR metropolitan) AND (household (MeSH Terms) OR domestic OR family) AND (food insecurity (MeSH Terms) OR food security) AND Eastern Africa.
Study selection and data extraction
Retrieved studies were exported to Endnote software, version 8, and duplicate studies were removed. The authors created a data extraction form that includes the name of the author, year of publication, country of study, study design, sample size, prevalence of urban household food insecurity and identified categories of factors associated with food insecurity. The data abstraction form was piloted using four randomly chosen papers from the data base. After having piloted the template, the extraction form was amended. Before full-text articles retrieval, two authors (BB and MB) independently screened the selected studies using their titles and abstracts. To further screen the full-text articles, we used pre-specified inclusion criteria. Differences were addressed and resolved through a consensus meeting with other reviewer (BG), for the final selection of studies to be included in the systematic review and meta-analysis.
Inclusion and exclusion criteria
We included observational studies (cross-sectional and cohort studies). Studies published in English between 2005 and 2020, reporting the prevalence and/or at least one associated factor with urban household food insecurity in Eastern Africa countries, were considered. With the goal of providing a valid instrument for use in developing countries, Food and Nutrition Technical Assistance Project (FANTA) developed the Household Food Insecurity Access Scale (HFIAS) between 2001 and 2006. Hence, the HFIAS was globally used to quantify food insecurity during this period(Reference Ballard, Coates and Swindale27) which is why we limited our review to start from 2005. Unpublished (grey literature) from credible sources were also considered.
Quality assessment
For quality assessment of the published reports, the Joanna Briggs Institute (JBI) quality assessment checklist was used(Reference Peters, Godfrey and McInerney28,29) . Cross-sectional and cohort studies with scores of 5 and above were considered as low risk or good quality(Reference Peters, Godfrey and McInerney28,29) , while those with scores of 4 and below were considered as high risk or poor quality and were therefore omitted (see online Supplemental Table 1).
Outcome measurement
The main outcome was urban household food insecurity. All the seventeen studies in the meta-analysis used HFIAS to determine household food insecurity status.
Statistical analysis
We imported the data to STATA version 14.0 statistical software for further analysis after the data were extracted using the Microsoft Excel format. Standard errors for each sample were determined using the binomial distribution formula. Pooled estimates of the magnitude of urban household food insecurity was estimated by a random effect model(Reference Borenstein, Hedges and Higgins30). We used forest plot to show the pooled prevalence with 95 % CI of urban household food insecurity. OR with 95 % CI was also presented in forest plot to show factors associated with urban household food insecurity. Cochrane’s Q statistics (χ 2), I 2 (inverse variance weighting) and P-values were used to examine the heterogeneity(Reference Higgins, Thompson and Deeks31). The I 2 statistical value of 0 in this analysis shows homogeneity, while the values of 25, 50 and 75 percent showed medium, moderate and strong heterogeneity, respectively(Reference Ioannidis32,Reference Higgins and Thompson33) . Owing to a small number of studies, variability in the study design and settings in our analysis which would likely introduce heterogeneity, random effects model was used for the analysis.
For variables that showed high heterogeneity, we used narrative synthesis to summarise the finding in addition to reporting the pooled estimate. We used sensitivity analysis by removing outlier study to see the effect of a single study on the overall estimation. Funnel plot and Egger’s regression test were used to check publication bias. Sensitivity analysis was done for those studies that showed potential publication bias by removing them(Reference Egger, Smith and Schneider34).
Result
Study selection
Overall, 9879 studies that were conducted between 2005 and 2020 were identified by electronic searches (9865 studies via database searching and 14 studies from other sources). After excluding duplicates, a total of 3350 papers remained. Finally, 250 studies were screened for full-text review and, 17(Reference Feleke and Bogale35–Reference Nantale, Tumwesigye and Kiwanuka51) articles (n 156, 996 households) were selected for the final analysis (Fig. 1).
Characteristics of included studies
The characteristics of the seventeen studies included in the systematic review and meta-analysis are summarised in Table 1 (Reference Feleke and Bogale35–Reference Nantale, Tumwesigye and Kiwanuka51). Regarding the countries where the studies were conducted, six studies were done in Ethiopia(Reference Feleke and Bogale35–Reference Etana and Tolossa40), four in Kenya(Reference Kimani-Murage, Schofield and Wekesah41–Reference Webb-Girard, Cherobon and Mbugua43,Reference Owuor46) , one in Mozambique(Reference Ganhão, Sperandio and Pires50), one in Burundi(Reference Mairie and Cities44), two in Rwanda(Reference Foeken and Owuor47,Reference Thomas Gill, David and Emily48) , one in Somalia(Reference Oloo49), one in Sudan(Reference Bushara and Ibrahim45) and one in Uganda(Reference Nantale, Tumwesigye and Kiwanuka51). The studies included households, ranging from 103(Reference Ganhão, Sperandio and Pires50) to 84 756(Reference Thomas Gill, David and Emily48) (Table 1).
Meta-analysis
Prevalence of urban household food insecurity in East Africa
The prevalence of household food insecurity was reported by all of the studies (n 17)(Reference Feleke and Bogale35–Reference Nantale, Tumwesigye and Kiwanuka51). The prevalence of urban household food insecurity ranged from 21 % in Kenya(Reference Foeken and Owuor47) up to 91 % in Sudan(Reference Bushara and Ibrahim45). Based on the random effects model analysis, the pooled prevalence of urban household food insecurity in East Africa was estimated to be 60·91 % (95 % CI 47·72, 74·11; I 2 = 100 %; P < 0·001) (Fig. 2).
Sensitivity analysis
The results of the sensitivity analysis showed that our findings were not dependent on a single study. The 95 % CI of the pooled prevalence of urban household food insecurity overlapped after removing a single study in the sensitivity analysis but varied between 58·3 % (95 % CI 45·82, 70·72)(Reference Bushara and Ibrahim45) and 70·0 % (95 % CI 50·46, 73·53)(Reference Foeken and Owuor47) (see online Supplemental Fig. 1).
Publication bias
We checked for possible publication bias and a funnel plot demonstrated symmetrical distribution. The P-value of the Egger regression test was 0·475, which showed the low publication bias risk (see online Supplemental Fig. 2).
Factors associated with urban household food insecurity
Nine studies out of the total seventeen studies included in this meta-analysis reported on factors associated with urban food insecurity (Table 2).
References: Male household head, Small family size (≤ 4), Richest wealth quantile, Literate (Attended higher education or above).
Female-headed households
Three studies found a significant association between female-headed households and urban household food insecurity. Of these, the highest and lowest AOR (95 % CI) was 1·5 (95 % CI 1·1, 1·91)(Reference Feleke and Bogale35) and 1·3 (95 % CI 0·39, 4·28)(Reference Tantu, Gamebo and Sheno39), respectively (Table 2).
Regarding the heterogeneity test, Galbraith plot showed the heterogeneity is very low. The combined result based on the two studies showed an overall estimate AOR of female-headed household as a determinant of urban household food insecurity was 1·45 (95 % CI 1·16, 1·75; I 2 = 0·0 %; P = 0·9937) (Fig. 3).
A funnel plot revealed a symmetrical distribution with respect to the test for publication bias. Egger’s regression test P-value was 0·649, which revealed the absence of publication bias (see online Supplemental Fig. 3).
Sensitivity analysis was used to check if there is possible source of heterogeneity in the pooled estimate of female as a household head as a risk factor of urban household food insecurity. The finding showed that our result was not dependent on a single study (see online Supplemental Fig. 4).
Educational status
Five of the studies reported that illiteracy (no formal education) of head of the household was significantly associated with urban food insecurity compared to household headed by those who attended higher education. Among this, the highest AOR = 6·03 (95 % CI 2·2, 11·4)(Reference Etana and Tolossa40) and the lowest AOR = 1·33 (95 % CI 0·76, 2·32)(Reference Tantu, Gamebo and Sheno39) were observed among those who were illiterate (no formal education) when compared with those educated (Table 2).
The overall estimated AOR of illiteracy as a risk factor for urban household food insecurity was 2·53 (95 % CI 2·11, 2·95; I 2 = 90 %; P = < 0·01). Regarding the heterogeneity, I-squared (I 2) and P-value showed heterogeneity. Galbraith plot also showed heterogeneity. Therefore, it should be noted that the interpretation of the pooled estimate should be made with caution as there was heterogeneity (Fig. 4).
Regarding publication bias, both the funnel plot and Egger’s regression test P-value indicated the absence of publication bias (see online Supplemental Fig. 5).
The results of the sensitivity analysis showed that our findings were not dependent on a single study (see online Supplemental Fig. 6).
Family size
Large family size was considered when number of family is greater than or equal to 5. Four studies found a significant association between increased family size and urban household food insecurity. The highest AOR = 1·9 (95 % CI 1·02, 3·68) was observed in Sudan(Reference Bushara and Ibrahim45) and lowest AOR = 1·25 (95 % CI 0·76, 2·32) was observed in Ethiopia(Reference Tantu, Gamebo and Sheno39) (Table 2).
The meta regression showed that having large family size increase odds of food insecurity by 43 %, that is, 1·43 (95 % CI 1·09, 1·76; I 2 = 0·0 %; P = 0·863) (Fig. 5).
Regarding the test of publication bias, both the funnel plot and Egger’s regression test P-value indicated the absence of publication bias (see online Supplemental Fig. 7). Based on the leave-one-out sensitivity analysis, our findings were not dependent on a single study (see online Supplemental Fig. 8).
Wealth index
Five studies found a significant association between lowest wealth quantile and urban household food insecurity. The highest AOR = 9·5 (95 % CI 2·1, 12·6) was observed in Ethiopia(Reference Tantu, Gamebo and Sheno39) and lowest AOR = 2·2 (95 % CI 1·05, 4·86) was observed in Sudan(Reference Bushara and Ibrahim45) (Table 2).
The forest plot showed the overall estimated AOR of lowest wealth quantile as a determinant factor for urban household food insecurity was 3·95 (95 % CI 1·93, 5·98; I 2 = 57·2 %; P = 0·053) (Fig. 6).
Publication bias was checked using a funnel plot. The finding showed that there was asymmetrical distribution. Egger’s regression test P-value (0·045) also indicated the presence of publication bias (see online Supplemental Fig. 9). Therefore, we performed a trim and fill analysis. After the trim and fill analysis, the overall estimated AOR of low family income as a determinant of urban household food insecurity became 3·95 (95 % CI 1·93, 5·98) (see online Supplemental Fig. 10).
Moreover, the results of the sensitivity analysis showed that our findings were not dependent on a single study (see online Supplemental Fig. 11).
Discussion
These systematic review and meta-analysis were carried out to determine the magnitude and factors associated with urban household food insecurity in East Africa. In the final analysis, seventeen studies were included and the combined magnitude of urban household food insecurity was found to be high in East Africa. Factors like being uneducated, household headed by female, increased family size and low household income were found to be associated with urban household food insecurity in the region.
Urbanisation poses a big challenge to food availability in terms of changing consumption patterns and supply processes(Reference Szabo5). Due to the combination of high urban poverty rates, high reliance of urban households on market-supplied food and fluctuating food prices, urban food insecurity is a rising concern(Reference Birhane, Shiferaw and Hagos37). Similarly, the result of this systematic review and meta-analysis showed that more than half (60·91 %) of urban households in East Africa were food-insecure. The finding was comparable with a study conducted in South Africa and Brazil(Reference Grobler52,Reference Costa, Santos and Carvalho53) . However, the finding of this study was lower than results reported from the eleven cities in southern Africa and Southwest Nigeria(Reference Frayne, Pendleton and Crush54,Reference Maetz, Aguirre and Kim55) . This discrepancy might be attributed to methodological differences (differences in operational definition and measurement scale for food insecurity). On the other hand, our findings reported higher levels than those reported from Iran(Reference Maetz, Aguirre and Kim55), Canada(Reference Tarasuk, Mitchell and Dachner56) and USA(Reference Greenwald and Zajfen57). The possible explanation could be socio-economic differences, as countries like Canada, USA, Iran and are more developed than countries in East Africa.
This study revealed several factors associated with household food insecurity. Higher odds of food insecurity were observed in households headed by female compared to their counterparts. Similar findings were observed in other studies(Reference Costa, Santos and Carvalho53,Reference Jung, de Bairros and Pattussi58,Reference Drammeh, Hamid and Rohana59) . This could be due to the deep-rooted gender inequalities which affect females across the world. Mainly, women in developing countries are affected by inequalities and discrimination which results in low rate of education and employment(Reference Klasen60). Women tend to be majorly involved in childbearing and home activities which could be a barrier for career development to get good paying jobs in the highly competitive urban job opportunity. Due to this reason, they will not have enough time for paid job. Furthermore, in most countries of the world, resources like lands are owned by males(Reference Quisumbing, Payongayong and Aidoo61). Therefore, females are vulnerable to low-income jobs, which lead to food insecurity(Reference Kennedy and Peters62–Reference Kassie, Ndiritu and Stage64).
Lower levels of education, especially illiteracy, was also found to increase the odds of food insecurity among urban households in East Africa. This result was in line with a systematic review conducted from studies conducted in sub-Saharan countries(Reference Drammeh, Hamid and Rohana59). Similarly, studies conducted in Nigeria, South Africa(Reference Grobler52), North India(Reference Chinnakali, Upadhyay and Shokeen65), Iran(Reference Mortazavi, Dorosty and Eshraghian66) and USA(Reference Leitz67) also found association between low educational attainment and food insecurity. The possible justification could be lower levels of education leads to lower skills which end up with unemployment/employment in informal sectors. This in turn leads to low payment and lower purchasing abilities. Lower levels of education also lead to low ability in managing and planning food expenditures and food utilisation, which in turn lead to food insecurity.
Urban households mainly depend on purchasing to access their daily food. Households with lower incomes cannot afford the rising cost of food specially in urban areas which results in food insecurity(Reference Assefa, Abebe and Lamoot68,Reference Bachewe and Minten69) . Our study also found that households with low income were found to have higher odds of food insecurity than their counterparts. This finding was in line with studies conducted in sub-Saharan Africa(Reference Drammeh, Hamid and Rohana59), South and Southern Africa(Reference Grobler52,Reference Frayne, Pendleton and Crush54) , Nigeria, Brazil(Reference Costa, Santos and Carvalho53), North India(Reference Chinnakali, Upadhyay and Shokeen65) and USA(Reference Leitz67). In the contrary to this, food insecurity is also recorded in high-income households. Various reasons like unusually high economic needs, difference in intrahousehold allocation of money and change in household composition have been postulated to justify that. There are also non-economic causes of food insecurity(Reference Nord and Brent70).
Family size was another factor that was significantly associated with urban food insecurity in this study. Households with higher number of family members were found to have higher odds of food insecurity than households with fewer family members. This was consistent with findings conducted in sub-Saharan Africa(Reference Drammeh, Hamid and Rohana59), Nigeria, Iran(Reference Mortazavi, Dorosty and Eshraghian66) and India(Reference Joshi, Arora and Amadi-Mgbenka71). The likely explanation behind the association between family size and food insecurity might be due to the fact that households with increased family size will have increased demand of food and other living expenses which jeopardise food security status of the household.
Various interventions are being implemented to combat food insecurity in the region. But the interventions mainly focus on rural community(Reference Burchi, Scarlato and d’Agostino72,Reference Coll-Black, Gilligan and Hoddinott73) . As food security is highly wide spreading in urban areas, interventions that focuses only on rural area alone are unlikely to bring about impactful change. Although few interventions are implemented in urban setups, they mainly focus on general and specific economic interventions (e.g. cash transfer programme) which only improves a single aspect of food security (access to food)(Reference Coll-Black, Gilligan and Hoddinott73,Reference Drimie74) . Based on our study, various factors were found to be associated with household food insecurity in the region. To enhance all aspects of food security, the already established intervention should integrate other interventions that also targets women empowerment, family planning and education sectors.
Strengths and limitations
This study has several strengths: we used a pre-specified search strategy and data abstraction protocol. In addition, we used internationally accepted tools for a critical appraisal of individual studies. Besides, we performed publication bias and sensitivity analysis. Nevertheless, this review had some limitations: because of the inclusion of studies which are published in English only, language bias is likely. In addition, included studies which reported the outcome of interest were not from all East African countries which affects its representativeness. Furthermore, due to limited number of studies included, high heterogeneity was observed for some of the variable of interest. Therefore, caution should be taken in the interpretation of the result.
Conclusion and recommendations
The magnitude of urban household food insecurity found to be high in East Africa. Family size, educational status, lower income and being a female-headed household were identified factors that have significant association with urban household food insecurity. Because of the study design, we cannot determine whether the observed associations between food insecurity and the identified factors are causal in nature. However, these observations are valuable in identifying subgroups of the population who are at highest risk for food insecurity and should be targeted for interventions. Therefore, comprehensive policies and intervention programmes should be designed to reduce the high burden of food insecurity among urban residents considering the identified factors.
Acknowledgements
Acknowledgements: Not applicable. Financial support: This research received no specific grant from any funding agency in the public, commercial or not-for-profit sectors. Conflict of interests: The authors declare that we have no competing interest. One of the authors Dr Kaleab Baye is a deputy editor in this journal. Authorship: B.G. contributed to the conception and design of the study, quality appraisal, establishment of the search strategy, investigation, and the formal data analysis, writing-original draft, writing-review, and editing; B.B. and M.B. contributed to the quality appraisal, establishment of the search strategy, investigation, and formal data analysis, writing-original draft, writing-review, and editing; D.H., S.B. and K.B. contributed to the investigation, formal data analysis, writing-review, and editing. All authors critically reviewed and approved the manuscript and meet ICMJE criteria for authorship. Ethics of human subject participation: Not applicable because no primary data were collected
Supplementary material
For supplementary material accompanying this paper visit https://doi.org/10.1017/S1368980021003529