Effects of the COVID-19 pandemic on food insecurity in El Salvador during 2020

Efectos de la pandemia de COVID-19 en la inseguridad alimentaria en El Salvador durante el año 2020

Efeitos da pandemia de COVID-19 sobre a insegurança alimentar em El Salvador durante 2020

ABSTRACT

Objective.

This study sought to quantify the prevalence of food insecurity among Salvadorian households, to identify the determinants of food insecurity and to explore the impact of the COVID-19 pandemic on food insecurity.

Methods.

A nationwide, representative random sample of 2358 households was used for this cross-sectional study. The Household Hunger Scale (HHS) was used to assess the prevalence of food insecurity during a 30-day period. For comparison, three items were used from the Household Food Insecurity Experience Scale (HFIES), which measures hunger occurring during a 12-month time frame. For determinant analysis, binary logistic regression was used for the HHS and ordered logistic regression for the HFIES.

Results.

The prevalence of food insecurity was 6.45% (152/2356) among Salvadorian households when the HHS was used, affecting 5.48% (129/2356) to a moderate degree and 0.98% (23/2356) to a severe degree. The prevalence significantly increased when the HFIES scale items were used, with 35.41% (835/2358) of households being affected, a figure closer to the national poverty level. Determinants of food insecurity according to the HHS included agricultural problems (P = 0.00, odds ratio [OR] =1.69), the household’s prepandemic income (P = 0.00, OR = 0.48) and higher educational levels (i.e. having a secondary education [P = 0.00, OR = 0.31], technical [P = 0.03, OR = 0.24] or university education [P = 0.00, OR = 0.05]). When using the HFIES, the determinants were similar (i.e. income, agricultural problems, educational level). In more than 94% (744/785) of households, participants reported that food insecurity was exacerbated by the COVID-19 pandemic.

Conclusions.

When compared with other relevant international studies, the prevalence of food insecurity identified using the HHS – only 6.45% – was low for El Salvador. However, when using the HFIES scale, the prevalence rose to 35.41% of households. Some determinants align with previous studies, namely income, educational level and agricultural problems. The COVID-19 pandemic appeared to have direct effects on food insecurity

Keywords
Central America; eating; prevalence; regression analysis

RESUMEN

Objetivo.

Este estudio tuvo por objetivo cuantificar la prevalencia de la inseguridad alimentaria en los hogares salvadoreños, determinar cuáles son los determinantes de la inseguridad alimentaria y explorar los efectos de la pandemia de COVID-19 en la inseguridad alimentaria.

Métodos.

En este estudio transversal se utilizó una muestra aleatoria representativa a nivel nacional de 2 358 hogares. Se empleó la escala del hambre en el hogar (HHS, por su sigla en inglés) para evaluar la prevalencia de la inseguridad alimentaria en un período de 30 días. Para la comparación, se utilizaron tres indicadores de la escala de experiencia de inseguridad alimentaria en el hogar (HFIES, por su sigla en inglés), que mide el hambre durante un período de 12 meses. Para el análisis de los determinantes, se empleó la regresión logística binaria para HHS y la regresión logística ordenada para HFIES.

Resultados.

La prevalencia de la inseguridad alimentaria fue de 6,45% (152/2356) en los hogares salvadoreños al emplearse HHS, y afectó moderadamente a 5,48% (129/2356) y gravemente a 0,98% (23/2356). La prevalencia aumentó de forma considerable al utilizarse los indicadores de HFIES, con 35,41% (835/2358) de los hogares afectados, una cifra más cercana al nivel nacional de pobreza. Los determinantes de la inseguridad alimentaria según HHS incluyeron problemas agrícolas (P = 0,00, razón de posibilidades [OR] = 1,69), los ingresos familiares previos a la pandemia (P = 0,00, OR = 0,48) y niveles educativos superiores (educación secundaria [P = 0,00, OR = 0,31], formación técnica [P = 0,03, OR = 0,24] o universitaria [P = 0,00, OR = 0,05]). Con HFIES, los determinantes fueron similares (ingresos, problemas agrícolas, nivel educativo). En más de 94% (744/785) de los hogares, los participantes notificaron que la inseguridad alimentaria se agravó por la pandemia de COVID-19.

Conclusiones.

En comparación con otros estudios internacionales pertinentes, la prevalencia de la inseguridad alimentaria mediante HHS –de solo 6,45%– fue baja en El Salvador. Sin embargo, al utilizar HFIES, la prevalencia aumentó a 35,41% de los hogares. Algunos determinantes coinciden con estudios anteriores, como los ingresos, el nivel educativo y los problemas agrícolas. La pandemia de COVID-19 parece tener un impacto directo en la inseguridad alimentaria.

Palabras clave
América Central; ingestión de alimentos; prevalencia; análisis de regresión

RESUMO

Objetivo.

Este estudo procurou quantificar a prevalência de insegurança alimentar entre as famílias salvadorenhas, identificar os determinantes de insegurança alimentar e explorar o impacto da pandemia de COVID-19 sobre a insegurança alimentar.

Métodos.

Este estudo transversal foi realizado com uma amostra representativa nacional randomizada de 2358 domicílios. Usou-se a Household Hunger Scale (HHS) [escala de fome domiciliar] para avaliar a prevalência de insegurança alimentar durante um período de 30 dias. Para fins de comparação, usaram-se três itens da Household Food Insecurity Experience Scale (HFIES) [escala de experiência de insegurança alimentar domiciliar], que mede a fome durante um período de 12 meses. Para a análise de determinantes, usou-se a regressão logística binária com a HHS e a regressão logística ordenada com a HFIES.

Resultados.

A prevalência de insegurança alimentar nos domicílios salvadorenhos medida com a HHS foi de 6,45% (152/2356), sendo moderada em 5,48% (129/2356) e grave em 0,98% (23/2356). Quando se usaram os itens da HFIES, a prevalência aumentou consideravelmente, com 35,41% (835/2358) dos domicílios afetados – um número mais próximo do nível nacional de pobreza. Entre os determinantes da insegurança alimentar, de acordo com a HHS, estavam os problemas agrícolas (P = 0,00, razão de chances [RC] = 1,69), a renda familiar pré-pandemia (P = 0,00, RC = 0,48) e a maior escolaridade (ou seja, educação secundária [P = 0,00, RC = 0,31], técnica [P = 0,03, RC = 0,24] ou universitária [P = 0,00, RC = 0,05]). Com a HFIES, os determinantes foram semelhantes (ou seja, renda, problemas agrícolas e escolaridade). Em mais de 94% (744/785) dos domicílios, os participantes relataram exacerbação da insegurança alimentar pela pandemia de COVID-19.

Conclusões.

Em comparação com outros estudos internacionais pertinentes, a prevalência de insegurança alimentar identificada com uso da HHS – somente 6,45% – foi baixa em El Salvador. Entretanto, quando se usou a HFIES, a prevalência aumentou para 35,41% dos domicílios. Alguns determinantes coincidem com os de estudos anteriores, a saber, renda, escolaridade e problemas agrícolas. Aparentemente, a pandemia de COVID-19 teve efeitos diretos sobre a insegurança alimentar.

Palavras-chave
América Central; ingestão de alimentos; prevalência; análise de regressão

Food security exists when all people, at all times, have physical and economic access to sufficient, safe and nutritious food that meets their preferences and dietary needs for an active and healthy life (11. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO), Programa de las Naciones Unidas para el Desarrollo (PNUD). Seguridad alimentaria y nutricional: camino hacia el desarrollo humano [Food and nutrition security: pathway to human development]. San Salvador: FAO, PNUD; 2016.). Societies around the world strive to achieve optimal levels of food security because food insecurity (FI) represents a public health issue. For instance, FI can lead to the prevalence of anemia, mental health issues, clinical depression and suicide (22. Gundersen C, Ziliak JP. Food insecurity and health outcomes. Health Aff. 2015;34(11):1830–9.). Some of the negative consequences of FI can also harm vulnerable groups, such as infants and teenagers, by affecting their noncognitive skills (e.g. patterns of thought, feelings and behaviors), increasing their chance of developing asthma, reducing their academic performance and affecting their general health outcomes (22. Gundersen C, Ziliak JP. Food insecurity and health outcomes. Health Aff. 2015;34(11):1830–9., 33. Wolfson JA, Leung CW. Food insecurity during COVID-19: an acute crisis with long-term health implications. Am J Public Health. 2020;110(12):1763–5.).

Although the concept of food security is constantly updated and its meaning has varied over time (44. Santos AAMT, Redin C, Ayala Durán CE, Machado DCM, Zuñiga Escobar M, Printes RB, et al. Segurança alimentar e nutricional e a sustentabilidade [Food and nutrition security and sustainability]. In: Dal Soglio F, Kubo RR, editors. Desenvolvimento, agricultura e sustentabilidade [Development, agriculture and sustainability]. Porto Alegre: Universidade Federal do Rio Grande do Sul; 2016. p. 115–39.), one of its main, unchanging dimensions is economic access to food. Numerous tools center the importance of economic access in measuring food security, including those published by the United States Department of Agriculture (USDA) (55. Bickel G, Nord M, Price C, Hamilton W, Cook J. Guide to measuring household food security, revised 2000. Alexandria (VA): United States Department of Agriculture; 2000.), the Household Food Insecurity Experience Scale (HFIES) (66. Cafiero C, Nord M, Viviani S, Del Grossi ME, Ballard T, Kepple A, et al. Methods for estimating comparable prevalence rates of food insecurity experienced by adults throughout the world. Rome: Food and Agriculture Organization of the United Nations; 2016.), the Household Hunger Scale (HHS) (77. Ballard T, Coates J, Swindale A, Deitchler M. Household Hunger Scale: indicator definition and measurement guide. Washington (DC): Food and Nutrition Technical Assistance; 2011.) and the Integrated Classification of Food Security (or CIF) (88. Sistema de la Integración Centroamericana. Análisis de inseguridad alimentaria aguda de la CIF Noviembre 2020 – Agosto 2021 [Acute food insecurity analysis (CIF) November 2020 – August 2021]. San Salvador: Sistema de la Integración Centroamericana, Ministerio de Salud de El Salvador; 2020.). It is precisely the economic dimension that has worsened in El Salvador and around the world since the beginning of the COVID-19 pandemic, particularly the indicators relating to income, employment and financial contributions to social security (99. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO). Seguridad alimentaria bajo la pandemia de COVID-19 [Food security during the COVID-19 pandemic]. Santiago: FAO; 2020., 1010. Fundación Salvadoreña para el Desarrollo Económico y Social (FUSADES). Informe de coyuntura económica [Economic situation report]. Antiguo Cuscatlán: FUSADES; 2021.). Moreover, global food supply chains have suffered serious disruptions (99. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO). Seguridad alimentaria bajo la pandemia de COVID-19 [Food security during the COVID-19 pandemic]. Santiago: FAO; 2020.), potentially exacerbating FI internationally.

Although all nations have faced major food challenges since 2020, conditions in developing countries can be particularly worrying since socioeconomic indicators are fragile and safety nets are often nonexistent or insufficient. Within Latin America, El Salvador stands out as a country with unique FI challenges.

In 2015, international organizations, such as the Food and Agriculture Organization of the United Nations (FAO) and the United Nations Development Programme, reported that 49.4% of Salvadorian households faced some degree of FI (11. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO), Programa de las Naciones Unidas para el Desarrollo (PNUD). Seguridad alimentaria y nutricional: camino hacia el desarrollo humano [Food and nutrition security: pathway to human development]. San Salvador: FAO, PNUD; 2016.). Additionally, recent publications have emphasized that lack of access to adequate food during the pandemic may have increased FI in El Salvador (88. Sistema de la Integración Centroamericana. Análisis de inseguridad alimentaria aguda de la CIF Noviembre 2020 – Agosto 2021 [Acute food insecurity analysis (CIF) November 2020 – August 2021]. San Salvador: Sistema de la Integración Centroamericana, Ministerio de Salud de El Salvador; 2020., 1111. Ayala C. Seguridad alimentaria y nutricional en tiempos de COVID-19: perspectivas para el Salvador [Food and nutrition security in the time of COVID-19: perspectives for El Salvador]. Rev Latinoam Investig Soc. 2020;3(1):42–6.). Moreover, it has been estimated that by August 2021, 1.04 million people faced severe FI in the country (88. Sistema de la Integración Centroamericana. Análisis de inseguridad alimentaria aguda de la CIF Noviembre 2020 – Agosto 2021 [Acute food insecurity analysis (CIF) November 2020 – August 2021]. San Salvador: Sistema de la Integración Centroamericana, Ministerio de Salud de El Salvador; 2020.). Geographical departments within the dry corridor (1212. World Food Programme. Food security and emigration: why people flee and the impact on family members left behind in El Salvador, Guatemala and Honduras. Rome: World Food Programme; 2017.) in the east of the country have been particularly affected (88. Sistema de la Integración Centroamericana. Análisis de inseguridad alimentaria aguda de la CIF Noviembre 2020 – Agosto 2021 [Acute food insecurity analysis (CIF) November 2020 – August 2021]. San Salvador: Sistema de la Integración Centroamericana, Ministerio de Salud de El Salvador; 2020.). Additionally, food scarcity has been exacerbated by the rainy season and hurricane cycle in 2020, which negatively affected up to 150 000 people and approximately 3 000 hectares of crops (1313. Oxfam International. Los rostros del hambre en Centroamérica. La inseguridad alimentaria y nutricional en el Corredor Seco como consecuencia de la temporada ciclónica, sequías y la covid-19 [Faces of hunger in Central America: food and nutrition security in the dry corridor as a consequence of cyclones, droughts and COVID-19]. Oxford: Oxfam International; 2021.). Similarly, reports by the FAO emphasized that El Salvador had a medium to high food price index in 2020, which contributed to the reduction in the food supply nationwide during the same period (99. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO). Seguridad alimentaria bajo la pandemia de COVID-19 [Food security during the COVID-19 pandemic]. Santiago: FAO; 2020.). All of these challenges help to explain the 4% increase in poverty nationwide, which affected approximately 26.2% of all households in 2020 (1414. Dirección General de Estadísticas y Censos (DIGESTYC). Encuesta de hogares de propósitos múltiples 2020 [Multiple-purpose household survey 2020]. Ciudad Delgado, El Salvador: DIGESTYC; 2021.).

Although these reports shed some light on FI in El Salvador, there are no public databases that allow for its systematic assessment in the country. Moreover, most of these reports rely on qualitative methodologies (11. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO), Programa de las Naciones Unidas para el Desarrollo (PNUD). Seguridad alimentaria y nutricional: camino hacia el desarrollo humano [Food and nutrition security: pathway to human development]. San Salvador: FAO, PNUD; 2016., 88. Sistema de la Integración Centroamericana. Análisis de inseguridad alimentaria aguda de la CIF Noviembre 2020 – Agosto 2021 [Acute food insecurity analysis (CIF) November 2020 – August 2021]. San Salvador: Sistema de la Integración Centroamericana, Ministerio de Salud de El Salvador; 2020., 99. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO). Seguridad alimentaria bajo la pandemia de COVID-19 [Food security during the COVID-19 pandemic]. Santiago: FAO; 2020., 1111. Ayala C. Seguridad alimentaria y nutricional en tiempos de COVID-19: perspectivas para el Salvador [Food and nutrition security in the time of COVID-19: perspectives for El Salvador]. Rev Latinoam Investig Soc. 2020;3(1):42–6., 1313. Oxfam International. Los rostros del hambre en Centroamérica. La inseguridad alimentaria y nutricional en el Corredor Seco como consecuencia de la temporada ciclónica, sequías y la covid-19 [Faces of hunger in Central America: food and nutrition security in the dry corridor as a consequence of cyclones, droughts and COVID-19]. Oxford: Oxfam International; 2021.). In light of the worsening sanitary and social conditions in the country following the COVID-19 pandemic, generating reliable nationwide information on food security constitutes a pressing need. This information is also essential to developing evidence-based public policies to address FI.

This study considers this challenging scenario and aims to quantify the prevalence of FI among Salvadorian households. Additionally, it seeks to identify the determinants of FI, and finally, it aims to explore the influence of the COVID-19 pandemic on FI.

METHODS

This study was conducted following the Equator Network’s Standards for Reporting of Observational Studies in Epidemiology (known as STROBE) (1515. Vandenbroucke J, von Elm E, Altman D, Gøtzsche P, Mulrow C, Pocock S, et al. Strengthening the Reporting of Observational Studies in Epidemiology (STROBE): explanation and elaboration. PLoS Med. 2007;4(10):e297.). Thus, this work is classified as a retrospective cross-sectional study. The data used in the study were collected by El Salvador’s General Directorate of Statistics and Censuses (Dirección General de Estadísticas y Censos; DIGESTYC) at the request of the FAO (1616. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO). Monitoreo de indicadores relacionados con el impacto y las implicaciones de COVID-19 en la agricultura, los medios de vida y la seguridad alimentaria [Monitoring of COVID-19 indicators in agriculture, livelihoods and food security]. San Salvador: FAO, Dirección General de Estadísticas y Censos El Salvador; 2021.). Primary data collection was carried by DIGESTYC across El Salvador’s 14 geographical departments, based on a random household sample. Data were collected between November 24 and December 2, 2020. In light of the difficulties brought about by the pandemic, data were collected by telephone, using computer-assisted telephone interviewing. Respondents were at least 18 years old and only one respondent from each household was included. Being younger than 18 years and unwilling to participate were the only exclusion criteria. A total of 25 121 phone calls were made and 2358 surveys were completed, resulting in a 9.38% response rate. This analysis uses all 2358 surveys with valid responses.

Two different scales were used for data analysis and prevalence calculations. The first was the HHS (77. Ballard T, Coates J, Swindale A, Deitchler M. Household Hunger Scale: indicator definition and measurement guide. Washington (DC): Food and Nutrition Technical Assistance; 2011.). In this study, the calculations for this scale rely on three questions: In the past 30 days, was there ever no food to eat of any kind in your house because of a lack of resources to get food? (denoted here as HH1); in the past 30 days, did you or any household member go to sleep at night hungry because there was not enough food? (denoted here as HH2); in the past 30 days, did you or any household member go a whole day and night without eating anything at all because there was not enough food? (denoted here as HH3).

The HHS relies on a 30-day time frame because longer recall periods pose greater risks of inaccuracy (77. Ballard T, Coates J, Swindale A, Deitchler M. Household Hunger Scale: indicator definition and measurement guide. Washington (DC): Food and Nutrition Technical Assistance; 2011.). International guidelines advise that the HHS should be administered during or directly after the worst of the lean season (77. Ballard T, Coates J, Swindale A, Deitchler M. Household Hunger Scale: indicator definition and measurement guide. Washington (DC): Food and Nutrition Technical Assistance; 2011.).

If participants responded “yes” to any of the three HHS questions, they were asked to provide additional information about how often these events happened: rarely (coded as 1), sometimes (coded as 1) or often (coded as 2). If they did not respond “yes” to a question, the response was coded as 0. Based on these scores, an aggregated scale ranging from 0 to 6 was constructed. Following HHS guidelines (77. Ballard T, Coates J, Swindale A, Deitchler M. Household Hunger Scale: indicator definition and measurement guide. Washington (DC): Food and Nutrition Technical Assistance; 2011.), households with a total score between 0 and 1 are considered to have little to no hunger. Those with total scores between 2 and 6 are considered to face some degree of hunger: they are considered to face a moderate degree of hunger if their score is 2 or 3 and a severe degree of hunger if their score is in the range of 4 to 6.

Additionally, three items from the FAO’s HFIES were used (66. Cafiero C, Nord M, Viviani S, Del Grossi ME, Ballard T, Kepple A, et al. Methods for estimating comparable prevalence rates of food insecurity experienced by adults throughout the world. Rome: Food and Agriculture Organization of the United Nations; 2016., 1616. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO). Monitoreo de indicadores relacionados con el impacto y las implicaciones de COVID-19 en la agricultura, los medios de vida y la seguridad alimentaria [Monitoring of COVID-19 indicators in agriculture, livelihoods and food security]. San Salvador: FAO, Dirección General de Estadísticas y Censos El Salvador; 2021.). Following HFIES guidelines (66. Cafiero C, Nord M, Viviani S, Del Grossi ME, Ballard T, Kepple A, et al. Methods for estimating comparable prevalence rates of food insecurity experienced by adults throughout the world. Rome: Food and Agriculture Organization of the United Nations; 2016.), the three HHS questions denoted as HH1 to HH3 were asked using a 12-month time frame. These questions were denoted as HFIES1, HFIES2 and HFIES3. This shortened scale was used for comparison purposes because the HHS covers only a 30-day period. According to the HFIES, these three questions represent thresholds for severe and extreme food insecurity (66. Cafiero C, Nord M, Viviani S, Del Grossi ME, Ballard T, Kepple A, et al. Methods for estimating comparable prevalence rates of food insecurity experienced by adults throughout the world. Rome: Food and Agriculture Organization of the United Nations; 2016., 1717. Pool U, Dooris M. Prevalence of food security in the UK measured by the Food Insecurity Experience Scale. J Public Health (Oxf.). 2022;44(3):634–41.). The FAO uses these three items to identify acute food insecurity occurring during a 12-month period. In order to aggregate these three questions for the comparative analysis, a scale of 0 to 3 was constructed. The value of 0 indicated no positive answers for the questions, while values of 1 to 3 indicated a positive answer to any of the three HFIES questions. Notably, a positive answer to any of them would indicate times during which the household had no food during the past 12 months and, as the most worrying scenario, had a household member who did not eat for a whole day. Respondents who answered “yes” to any of these questions, were also asked whether the lack of food was caused by the COVID-19 pandemic. This question was used to explore the relationship between FI and the pandemic.

After the prevalence was calculated, statistical analyses were carried out to identify the determinants of FI. Binomial logistic regression was used for the determinants of household hunger, based on responses to the HHS, and ordered logistic regression was used to assess food deprivation during the previous 12 months, based on responses to the HFIES. The variables used to identify determinants are summarized in Table 1. They include household characteristics and information about agricultural practices and problems. These have been widely used in food security research (66. Cafiero C, Nord M, Viviani S, Del Grossi ME, Ballard T, Kepple A, et al. Methods for estimating comparable prevalence rates of food insecurity experienced by adults throughout the world. Rome: Food and Agriculture Organization of the United Nations; 2016., 1717. Pool U, Dooris M. Prevalence of food security in the UK measured by the Food Insecurity Experience Scale. J Public Health (Oxf.). 2022;44(3):634–41.2020. Nkegbe PK, Abu BM, Issahaku H. Food security in the Savannah Accelerated Development Authority Zone of Ghana: an ordered probit with household hunger scale approach. Agric Food Secur. 2017;6(1):35.). The odds ratios are reported with 95% confidence intervals and an error level of 0.05. Odds ratios are normally used to measure the association between exposures and outcomes (2121. Szumilas M. Explaining odds ratios. J Can Acad Child Adolesc Psychiatry. 2010;19(3):227–9.), in this case to measure the association between all chosen covariates and FI. Missing values were excluded from the regressions.

To validate the binary model, the Pearson goodness-of-fit test statistic (P = 0.95) and the Hosmer–Lemeshow test (P = 0.93) were used. Additionally, the area under the curve was plotted (area under the curve = 0.69). All of these tests suggested a good model fit. Calculations were done using Stata 14 (StataCorp, College Station, TX).

Participants gave informed consent at the beginning of the contact to use and store their data. The survey was not completed if a potential respondent did not explicitly accept that their data could be used in this way. Staff from the FAO and DIGESTYC worked together to plan, conduct and supervise the study. This joint committee considered the ethical aspects of survey implementation.

TABLE 1.
Description of dependent and independent variables used to assess food insecurity, El Salvador, 2020

RESULTS

The scores for the descriptive variables are summarized in Table 2. The mean age of respondents was 44 years (data not shown), and the most common level of education completed was secondary school, which was completed by 30.49% of the respondents. Around half of surveyed households engaged in agriculture and reported having problems during the previous 12 months. Furthermore, 69.02% (1615/2340) of households reported having less family income when compared with February 2020 (data not shown).

The prevalence of household hunger as measured by the HHS reached 6.45% (152/2356) of households: 5.48% (129/2356) of these households were categorized as having moderate hunger and 0.98% (23/2356) as severe hunger. This indicator summarizes food deprivation during the past 30 days and identifies particularly fragile households. Nonetheless, this was lower than the FI prevalence as reported in other international studies using the same methodology (1818. Doocy S, Busingye M, Lyles E, Colantouni E, Aidam B, Ebulu G, et al. Cash and voucher assistance and children’s nutrition status in Somalia. Matern Child Nutr. 2020;16(3):e12966., 2020. Nkegbe PK, Abu BM, Issahaku H. Food security in the Savannah Accelerated Development Authority Zone of Ghana: an ordered probit with household hunger scale approach. Agric Food Secur. 2017;6(1):35.) and in those addressing hunger and food security during the pandemic (2222. Basurko C, Benazzouz B, Boceno C, Dupart O, Souchard E, Trepont A, et al. La faim au temps du Covid-19 à Cayenne (Guyane) et dans ses environs [Hunger during the COVID-19 crisis in Cayenne (French Guiana) and its surroundings]. Bull Epidemiol Hebd. 2020;29:582–8.).

In light of such a low prevalence, the HFIES might provide a more accurate comparison (1616. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO). Monitoreo de indicadores relacionados con el impacto y las implicaciones de COVID-19 en la agricultura, los medios de vida y la seguridad alimentaria [Monitoring of COVID-19 indicators in agriculture, livelihoods and food security]. San Salvador: FAO, Dirección General de Estadísticas y Censos El Salvador; 2021.). According to the HFIES, 64.59% (1523/2358) of households did not experience FI and 35.41% (835/2358) of households did. Altogether, 18.74% (442/2358) reported at least one indicator of FI. These indicators identified in the HFIES are much closer to the official poverty level in 2020, which affected 26.2% of all households in the country (1414. Dirección General de Estadísticas y Censos (DIGESTYC). Encuesta de hogares de propósitos múltiples 2020 [Multiple-purpose household survey 2020]. Ciudad Delgado, El Salvador: DIGESTYC; 2021.). FI levels drop to 11.03% (260/2358) for households responding affirmatively to two HFIES questions and to 5.64% (133/2358) for those responding positively to three HFIES questions. Notably, 7.59% (179/2357) of households reported at least one member went a whole day without eating during the previous 12 months because there was not enough food or resources. In more than 94% (744/785) of cases, the COVID-19 pandemic was the reason for this food shortage. This confirms that the pandemic severely affected food security, and the magnitude of the effect, greater than 90%, highlights its enormous influence.

Figure 1 shows household hunger prevalence by geographical department. With a few exceptions, eastern departments, such as Usulután, San Miguel, Morazán and La Unión, presented higher hunger levels. These last four departments fall within the dry corridor, an area of historical drought that is often associated with FI (88. Sistema de la Integración Centroamericana. Análisis de inseguridad alimentaria aguda de la CIF Noviembre 2020 – Agosto 2021 [Acute food insecurity analysis (CIF) November 2020 – August 2021]. San Salvador: Sistema de la Integración Centroamericana, Ministerio de Salud de El Salvador; 2020., 1212. World Food Programme. Food security and emigration: why people flee and the impact on family members left behind in El Salvador, Guatemala and Honduras. Rome: World Food Programme; 2017.). Thus, the eastern parts of the country continue to face more challenges to food security. However, the metropolitan department of La Libertad accounted for the highest level of hunger among all geographical departments. Considering that La Libertad is home to a large proportion of the Salvadorian population and is located next to the capital, it might be prioritized when drafting assistance policies.

Table 3 shows the results of the binary logistic regression model used to identify the determinants of household hunger. As expected, families who had the same income at the time of the study as in February 2020 have lower levels of hunger (P = 0.00, odds ratio [OR] = 0.48). Similarly, having a higher education level was inversely related to the prevalence of FI. This was the case for households with a member who had completed primary school (P = 0.09, OR = 0.56), completed secondary school (P = 0.00, OR = 0.31), completed technical school (P = 0.03, OR = 0.24) and completed university (P = 0.01, OR = 0.05). Likewise, experiencing agricultural problems negatively impacted hunger (P = 0.00, OR = 1.69).

TABLE 2.
Scores for descriptive statistics used to assess food insecurity, El Salvador, 2020
FIGURE 1.
Prevalence of household hunger by geographical department, El Salvador, 2020

The determinant analysis for the HFIES items is summarized in Table 4. The number of household members is an explanatory variable (P = 0.00, OR = 1.10). And similar to the HHS determinants, family income and education levels played important roles. Those who had the same income at the time of the study as they did in February 2020 had a lower chance of experiencing FI (P = 0.00, OR = 0.53). In the same way, higher education levels were associated with lower levels of FI, particularly for those households in which the highest level of education completed was secondary education (P = 0.00, OR = 0.55), technical school (P = 0.00, OR = 0.31), and university (P = 0.00, OR = 0.21). Additionally, households with agricultural problems were more likely to experience FI (P = 0.00, OR = 1.49). Closely related to these determinants, those who reported using hybrid seed were also more likely to experience FI (P = 0.02, OR = 1.32).

DISCUSSION

When using a 30-day time frame, the prevalence of household hunger was estimated to be 6.45% of households, representing a relatively low prevalence when compared with other international studies (1818. Doocy S, Busingye M, Lyles E, Colantouni E, Aidam B, Ebulu G, et al. Cash and voucher assistance and children’s nutrition status in Somalia. Matern Child Nutr. 2020;16(3):e12966., 1919. DiClemente K, Grace K, Kershaw T, Bosco E, Humphries D. Investigating the relationship between food insecurity and fertility preferences in Tanzania. Matern Child Health J. 2021;25(2):302–10., 2222. Basurko C, Benazzouz B, Boceno C, Dupart O, Souchard E, Trepont A, et al. La faim au temps du Covid-19 à Cayenne (Guyane) et dans ses environs [Hunger during the COVID-19 crisis in Cayenne (French Guiana) and its surroundings]. Bull Epidemiol Hebd. 2020;29:582–8., 2323. Regassa N, Stoecker BJ. Household food insecurity and hunger among households in Sidama district, southern Ethiopia. Public Health Nutr. 2012;15(7):1276–83.). But when using the 12-month time frame, the prevalence is estimated to be substantially higher, at 35.41% of households. Of those households that experienced FI, 18.74% reported at least one positive answer to the HFIES questions. Also, there was a decrease in FI among families responding positively to two and three HFIES items, as those percentages drop to 11.03% and to 5.64% of households, respectively. Similar differences in indicators of FI have been found in other international studies when comparing these two methodologies (1818. Doocy S, Busingye M, Lyles E, Colantouni E, Aidam B, Ebulu G, et al. Cash and voucher assistance and children’s nutrition status in Somalia. Matern Child Nutr. 2020;16(3):e12966., 2323. Regassa N, Stoecker BJ. Household food insecurity and hunger among households in Sidama district, southern Ethiopia. Public Health Nutr. 2012;15(7):1276–83.). For El Salvador, the prevalence of FI as measured by the three HFIES questions is closer to the official poverty level in 2020, which peaked at 26.2% of households (1414. Dirección General de Estadísticas y Censos (DIGESTYC). Encuesta de hogares de propósitos múltiples 2020 [Multiple-purpose household survey 2020]. Ciudad Delgado, El Salvador: DIGESTYC; 2021.). Hence, this indicator seems to more accurately represent the country’s food security status in 2020.

Additionally, differences in the two scales suggest that the time chosen for data collection (between November 24 and December 2, 2020), represented times when the most critical FI crisis had already occurred. It is likely that the most severe period for FI corresponded to the quarantine and lockdown orders, which occurred between February and August 2020. After August, the economy suddenly reopened, and numerous economic indicators – such as the gross domestic product, exports and job creation – started to recover (1010. Fundación Salvadoreña para el Desarrollo Económico y Social (FUSADES). Informe de coyuntura económica [Economic situation report]. Antiguo Cuscatlán: FUSADES; 2021.). Thus, when the 12-month time frame was used, the FI prevalence substantially increased. The differences in prevalence levels found using these two different methodological guidelines highlight the need for up-to-date indicators that are measured within appropriate time scales because immediate policies may be drafted based on results from the HHS while mid-term policies may be based on results from the HFIES. Future research might consider using the full HFIES scale, along with other relevant alternatives, such as the Integrated Classification of Food Security (or CIF) scale (88. Sistema de la Integración Centroamericana. Análisis de inseguridad alimentaria aguda de la CIF Noviembre 2020 – Agosto 2021 [Acute food insecurity analysis (CIF) November 2020 – August 2021]. San Salvador: Sistema de la Integración Centroamericana, Ministerio de Salud de El Salvador; 2020.) or the USDA’s Guide to measuring household food security (55. Bickel G, Nord M, Price C, Hamilton W, Cook J. Guide to measuring household food security, revised 2000. Alexandria (VA): United States Department of Agriculture; 2000.). Similarly, future studies could also collect anthropometric information, as this text relies only on social and economic indicators of FI.

TABLE 3.
Logistic regression for the determinants of hunger using the Household Hunger Scale, El Salvador, 2020a

The exploration of the COVID-19 pandemic’s influence on FI emphasizes that between 94.78% and 96.09% of respondents attributed their hunger to the pandemic (questions 1 to 3 on the HFIES). Of particular concern are those households that reported having at least one member who went one full day without eating during the previous 12 months, which was 7.59% of total households. This indicator serves as a threshold for identifying severe FI (66. Cafiero C, Nord M, Viviani S, Del Grossi ME, Ballard T, Kepple A, et al. Methods for estimating comparable prevalence rates of food insecurity experienced by adults throughout the world. Rome: Food and Agriculture Organization of the United Nations; 2016., 1717. Pool U, Dooris M. Prevalence of food security in the UK measured by the Food Insecurity Experience Scale. J Public Health (Oxf.). 2022;44(3):634–41.). According to self-reports, the pandemic directly affected food security, a trend that had already been identified in relevant international studies (88. Sistema de la Integración Centroamericana. Análisis de inseguridad alimentaria aguda de la CIF Noviembre 2020 – Agosto 2021 [Acute food insecurity analysis (CIF) November 2020 – August 2021]. San Salvador: Sistema de la Integración Centroamericana, Ministerio de Salud de El Salvador; 2020., 1111. Ayala C. Seguridad alimentaria y nutricional en tiempos de COVID-19: perspectivas para el Salvador [Food and nutrition security in the time of COVID-19: perspectives for El Salvador]. Rev Latinoam Investig Soc. 2020;3(1):42–6.).

Moreover, the determinants of FI prevalence yielded similar explanatory variables, irrespective of the measurement scale used. One of the most prominent was income: those households that reported having the same income at the time of the study as in February 2020 had a lower prevalence of FI across either a 30-day (P = 0.00, OR = 0.48) or 12-month (P = 0.00, OR = 0.53) period. These results align with other relevant studies reporting an inverse relationship between FI and household income (1717. Pool U, Dooris M. Prevalence of food security in the UK measured by the Food Insecurity Experience Scale. J Public Health (Oxf.). 2022;44(3):634–41., 2424. Rose D. Economic determinants and dietary consequences of food insecurity in the United States. J Nutr. 1999;129(2 Suppl):517S-20S., 2525. Furness BW, Simon PA, Wold CM, Asarian-Anderson J. Prevalence and predictors of food insecurity among low-income households in Los Angeles County. Public Health Nutr. 2004;7(6):791–4.). This implies that ensuring people possess enough economic resources or food is a pressing public health matter in El Salvador. To that end, public policies, such as food donations or monetary transfers, may represent valid ways to address FI (2626. Gentilini U, Almenfi M, Orton I, Dale P. Social protection and jobs responses to COVID-19. Washington (DC): World Bank; 2020.), although such initiatives have faced multiple barriers in El Salvador (2727. Ayala Durán C. COVID-19 monetary transfer in El Salvador: determining factors. Rev Adm Publica. 2021;55(1):140–50.).

Similarly, the number of household members proved to be a determinant of and positively associated with FI (in the HFIES, P = 0.00, OR = 1.10), contrary to findings in other studies (2323. Regassa N, Stoecker BJ. Household food insecurity and hunger among households in Sidama district, southern Ethiopia. Public Health Nutr. 2012;15(7):1276–83., 2828. Demeke AB, Keil A, Zeller M. Using panel data to estimate the effect of rainfall shocks on smallholders food security and vulnerability in rural Ethiopia. Clim Change. 2011;108(1–2):185–206.). However, international empirical evidence is not conclusive when assessing the influence of the number of household members on FI (2828. Demeke AB, Keil A, Zeller M. Using panel data to estimate the effect of rainfall shocks on smallholders food security and vulnerability in rural Ethiopia. Clim Change. 2011;108(1–2):185–206.).

Additionally, those households reporting agricultural problems during 2020 had higher levels of FI, either measured through the HHS (P = 0.00, OR = 1.69) or HFIES (P = 0.00, OR = 1.49). In a country such as El Salvador, with numerous households engaged in agriculture, it is increasingly necessary to ensure acceptable food production and consumption standards are met. It may be relevant to consider developing public policies such as widespread agricultural subsidies or the use of native seeds (2929. Ayala Durán C. Alcance local de una política agraria en El Salvador: programa público de paquetes agrícolas 2013-2016 [Local reach of an agrarian policy in El Salvador: agricultural packages governmental program 2013–2016]. Chakiñan Rev Cienc Soc Humanid. 2021;(13):85–101.3131. Cortez Azenón M, Ayala Durán C. Contenido de proteína, hierro y zinc en maíces criollos salvadoreños [Protein, iron and zinc content in Salvadorian native maize]. Real Reflex. 2020;51:25–35.). Also, households using hybrid crop seed appeared to have a higher prevalence of FI. One explanation for this might be that production using hybrid seed requires more expensive agricultural inputs, and households experienced a general reduction in income in 2020.

Even those variables that are not determinants might provide some key information about FI in the country. For instance, rural households were not more prone to FI. Historically in El Salvador, rural areas are more economically fragile (1414. Dirección General de Estadísticas y Censos (DIGESTYC). Encuesta de hogares de propósitos múltiples 2020 [Multiple-purpose household survey 2020]. Ciudad Delgado, El Salvador: DIGESTYC; 2021.). Additionally, agricultural production was harmed during 2020 due to social and environmental factors. Social factors include the strict mobility restrictions (i.e. the lockdowns) put in place to fight the pandemic in 2020. Environmental stressors include excess precipitation during the rainy season, particularly tropical storms and hurricanes Amanda, Cristobal, Eta and Iota (3232. Berg R. Tropical storm Amanda (EP022020). Miami (FL): National Hurricane Center; 2020., 3333. Miller T. The climate-induced U.S. border. NACLA Rep Am. 2021;53(3):220–5.). These environmental events destroyed 60% of vegetable crops and almost 6 million kg of beans (99. Organización de las Naciones Unidas para la Alimentación y Agricultura (FAO). Seguridad alimentaria bajo la pandemia de COVID-19 [Food security during the COVID-19 pandemic]. Santiago: FAO; 2020.). Similarly, Oxfam International estimated that 150000 people were affected by these storms (1313. Oxfam International. Los rostros del hambre en Centroamérica. La inseguridad alimentaria y nutricional en el Corredor Seco como consecuencia de la temporada ciclónica, sequías y la covid-19 [Faces of hunger in Central America: food and nutrition security in the dry corridor as a consequence of cyclones, droughts and COVID-19]. Oxford: Oxfam International; 2021.). Consideration of these conditions would lead to predictions that rural households would be more prone to FI. Surprisingly, the evidence in this study does not support rural households having a higher FI prevalence.

Another variable that seemed not to have a determining role was governmental assistance. Although 32.70% (771/2358) of households reported having received governmental support during the 30 days before data collection, this was irrelevant to the prevalence of FI. This may be partially explained by the fact that many public schemes have been flagged as inefficient and even politically biased, both before the pandemic (2929. Ayala Durán C. Alcance local de una política agraria en El Salvador: programa público de paquetes agrícolas 2013-2016 [Local reach of an agrarian policy in El Salvador: agricultural packages governmental program 2013–2016]. Chakiñan Rev Cienc Soc Humanid. 2021;(13):85–101., 3434. Ayala Durán C. Selección de beneficiarios para subsidio agrícola en El Salvador: modelo logit a la producción del maíz [Beneficiaries selection for an agricultural subsidy in El Salvador: a logit model for maize]. Disjuntiva Crit les Cienc Soc. 2022;3(2):61.) and during the current COVID-19 health emergency (2727. Ayala Durán C. COVID-19 monetary transfer in El Salvador: determining factors. Rev Adm Publica. 2021;55(1):140–50.).

CONCLUSIONS

This paper reports the FI prevalence in El Salvador in 2020. The two different scales report varying prevalence indicators, but the HFIES most closely matched El Salvador’s poverty level. However, regardless of the scale used, the COVID-19 pandemic seems to have been a major catalyst for FI, with more than 94% of households attributing their food shortages to it.

TABLE 4.
Ordered logistic model for the determinants of food scarcity using the Household Food Insecurity Experience Scale, El Salvador, 2020a

The study also quantifies the determinants of FI in El Salvador in 2020. To the author’s knowledge, no similar work has been published. The determinants of FI in El Salvador in 2020 included lower income, lower educational level and issues with agriculture (i.e. problems, use of hybrid seeds). Households with these traits should be of special concern, as their food security may be more fragile than households without these characteristics. Public, and even private, action to counter FI, should target populations with these characteristics. Future research should use scales with both short and medium time frames. Similarly, collecting and incorporating anthropometric data could potentially strengthen food security research in the future.

Disclaimer.

The author holds sole responsibility for the views expressed in the manuscript, which may not necessarily reflect the opinion or policy of the Revista Panamericana de Salud Pública/Pan American Journal of Public Health or those of the Pan American Health Organization.

Acknowledgments.

The author expresses his gratitude to Karina Cantó for her kind support. Similarly, Jerry Arguello’s assistance is appreciated. The author thanks Oscar Peña Rodas for proofreading the document. Special gratitude to the Food and Agriculture Organization of the United Nations for providing the data set and key supporting information.

  • Author’s contributions.
    CAD is the sole author of the text. CAD conceived the original idea, analyzed the data, interpreted the results, wrote the paper and revised it according to the reviewers’ comments.
  • Funding.
    No funding was received for this study.
  • Conflicts of interest.
    None declared.

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Publication Dates

  • Publication in this collection
    19 May 2023
  • Date of issue
    2022

History

  • Received
    14 May 2022
  • Accepted
    07 Sept 2022
Organización Panamericana de la Salud Washington - Washington - United States
E-mail: contacto_rpsp@paho.org