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Article

Exploring the Impact of Crises on Food Security in Lebanon: Results from a National Cross-Sectional Study

1
Faculty of Public Health, Lebanese University, Beirut 6573, Lebanon
2
Lebanese Food, Drugs and Chemical Administration, Lebanese University, Beirut 6573, Lebanon
3
Faculty of Science, Lebanese University, Beirut 6573, Lebanon
4
Faculty of Pharmacy, Lebanese University, Beirut 6573, Lebanon
5
INSPECT-LB (Institut National de Santé Publique, d’Épidémiologie Clinique et de Toxicologie-Liban), Beirut 0961, Lebanon
6
Department of Primary Care and Population Health, University of Nicosia Medical School, 2408 Nicosia, Cyprus
7
World Health Organization Regional Office for the Eastern Mediterranean, Cairo 11371, Egypt
*
Author to whom correspondence should be addressed.
Sustainability 2021, 13(16), 8753; https://doi.org/10.3390/su13168753
Submission received: 24 June 2021 / Revised: 27 July 2021 / Accepted: 2 August 2021 / Published: 5 August 2021

Abstract

:
This study aims to explore the prevalence and correlates of food insecurity among Lebanese households since the ordeals of COVID-19, economic crisis, and Beirut port explosions. At the core of the study, a mobile application entitled Nutrition Assessment System (NAS) that simplified the data collection was used as toolkit and a technical test was carried out in all Lebanese governorates between November 2020 and March 2021. Findings show that food insecurity is an immediate problem for households in Beirut and in many governorates in Lebanon. Nine in every 16 households ate less than 2 meals per day and more than 70% of them skipped their meals to spare food. Even though half the population studied had a low food consumption score, 82.4% of the people were not relying on livelihood coping strategies. However, more than three out of ten of these households relied on at least three food-based coping strategies. In addition, as for the livelihoods, this assessment found that most Lebanese households reported a drop in income along with an expansion in debt incurrence in the last 24 months to be able to buy food. Improving food security in Lebanon requires effort not only on the part of the government, but through regional and international actions.

1. Introduction

Food insecurity can cause a deleterious impact on all age categories. According to the 2020 State of Food Security and Nutrition in the World (SOFI) report, to the global report on food security in 2020, and to the 2020 International Food Policy Research Institute report, the COVID-19 pandemic induced chronic hunger in an additional 83 million–132 million in 2020 compared to 2019 [1]. Furthermore, according to the Global Humanitarian Overview (GHO) 2021, and the fourth Progress Report for the Global Humanitarian Response Plan (GHRP) for COVID-19 it was estimated that 265 million people warranted humanitarian assistance in 2021 [1]. It was estimated that 54.5 million people were acutely food-insecure in the Eastern Mediterranean region (EMR) due to the compounding effect of COVID-19 [2]. Moreover, an increase in food insecurity was observed in the Middle Eastern countries, where hunger has quadrupled [2]. Six out of 12 Eastern Mediterranean countries, were using in 2020, assistances as cash-based transfers and short-term assistances including Algeria, Libya, Tunisia, Sudan, Palestine, and Lebanon [2]. Lebanon is a small country of 10,452 square kilometers and approximately 6,855,713 million people [3] subject to heightened demographic pressures, possessing limited crop land, renewable fresh water (approximately 770 m3 per capita per year) [3] groundwater which accounts for 50% of irrigation water and 80% of potable water [4].
After the famine between 1915 and 1918, the political dynamics and regional and national socio–economic conditions in Lebanon were continuously influencing the agricultural development in Lebanon. In 1920, the creation of Greater Lebanon motivated the government to implement food security imperatives. Thus, to ensure that Mount Lebanon would not suffer famine again, Akkar, the Beqaa Valley, and South Lebanon—all predominantly agricultural areas—were added to Mount Lebanon. Nevertheless, this addition faced political challenges. Between 1923 and 1943, the French Mandate (1923–1943) implemented a rural development plan to gain support from rural landlords. During the rise of what became known as the “merchant republic” between 1943 and 1958, the inflow of regional capital and low-wage Palestinian refugee labor to Lebanon along with the oil boom that increased trade opportunities with the Arab Gulf states, little importance was given to take advantage of economic growth to depend economically on agriculture. In the late 1950s and early 1960s, the Chehabist reforms did not alter the system. Export-oriented agriculture and politically affiliated agro–industrial investments failed to induce any economic development. In 1975, due to the lack of rural opportunities that led to an increased migration toward Beirut and the growth of the city’s poverty belt, the civil war began and ended after 15 years. Lebanon found itself, in 1990, divided into several political and territorial spaces lacking any initiative to support agriculture, and the sector relied on the intervention of international donors. In 2011, despite a lack of governmental support, the Lebanese agricultural sector adapted quickly in response to food security shocks and generated social stability and resilience in rural areas. Akkar and northern Beqaa Valley regions show the expansion of agricultural land. This local investment was based on initiative and opportunities from Lebanese people in assistant of Syrian refugee agricultural workers. Today, the financial crisis and the collapse of the Lebanese pound have aggravated the food security of vulnerable Lebanese and refugees as well [5].
Lebanon is highly reliant on food imports, as an example, more than 99% of all cereals and more than 65% of the food basket are imported [6]. Heavily indebted, Lebanon is also import dependent on the very foods that it consumes the most, such as bread and other cereals. The annual variability of production is quite pronounced, and the gap between total demand and production has continued to increase over the years [6]. Because of the extreme dependence on imports of food, agricultural and food trade balance in Lebanon is heavily in deficit. Up to 80% of the country’s food needs are imported in any given year. Since 1990, the end of the civil war, governments have come and gone and policy has been shattered, not least with respect to food and nutrition security. These successive governments have adopted the behavior of borrowing, mostly from local banks [5]. Lebanon has faced multiple shocks over the past 12 months. The socio–economic situation, political distress, the deterioration in the country’s health system struggling under severe pressure because of COVID-19, the Beirut Port Explosions on 4 August which resulted in the loss of life of over 200 people, 6500 injured, 300,000 people homeless and the destruction of large parts of the city [7] altogether increased the number of households sinking into poverty, and aggravating the situation of already vulnerable communities. The financial crisis pressurized Lebanon’s capacity to produce food and affected food security by increasing prices of raw materials, feed materials, pesticides, grains, and other agricultural products. Thus, the agricultural system has now fallen down, putting Lebanon’s agricultural production capacity at risk. A loss of income-generating opportunities for many Lebanese was due to the pound’s devaluation which has reached levels as high as 18,000 Lebanese pounds to USD 1.00. Both the impact of the financial crisis and COVID-19 confinement measures led to an inflation of 183% in the price of the food basket comprised of eight items of the Survival Minimum Expenditure Basket (SMEB) between October 2019 and December 2020 [8]. In the context of many challenges facing food security and agriculture in Lebanon including the Beirut port explosions, the financial and economic crisis, and the COVID-19 pandemic, and in an effort to better understand food insecurity and identify strategies for its prevention we must identify what characteristics and resources may keep families from experiencing it. Based on systems theory and findings from previous research, two research questions and two hypotheses have been formulated to guide this study. Each research question and hypothesis are summarized below.
  • Research question one: What characteristics and correlates contribute to the food insecurity of Lebanese households?
It is hypothesized that relationships will be found between many characteristics including socio–economic and socio–demographic factors in addition to the economic crisis, the Beirut port explosions, and the COVID-19 pandemic with food insecurity among Lebanese households.
2.
Research questions two: What is the impact of all the previous listed factors on Lebanese households’ food consumption and what are the food-based coping strategies and livelihood coping strategies followed by these households?
It is expected that households that frequently struggle from critical conditions are more at risk of food insecurity, eating unhealthy diets, and being able to eat.
To investigate these hypotheses and with the targets of Sustainable Development Goal 2 (SDG2), as well as support to the government of Lebanon and other partner efforts to eliminate food insecurity and malnutrition in the country, two strategic surveys on food security in Lebanon was conducted. The purpose of the two surveys was to meet three key objectives.
Main Objective:
  • To establish a comprehensive situational analysis of Lebanon’s food and nutrition security situation amid the multiple shocks facing Lebanon;
Specific Objectives:
  • To identify food and nutrition security goals or targets established in national plans and at regional frameworks to facilitate progress toward zero hunger;
  • To inform policy making and prioritization of interventions that would accelerate progress toward SDG target zero hunger;
Moreover, to our knowledge, there is a limited number of online digital nutrition assessment tools that accurately measure the overall nutritional situation in terms of individual or household food security during crises and the need for such a tool has been highlighted in many publications and systematic reviews [9,10,11]. The combination among the field of information technology, information sciences and nutrition has led to the generation of the concept to nutrition informatics [12]. This branch has become a novel approach for public health nutrition practitioners to practice in this field and make a profit for the health care [12]. According to the international telecommunication union report, published in 2020, an estimated 90% of the population had access to a mobile-broadband network (3G or above) and 4.1 billion people used the Internet in 2019, indicating a 5.3% increase compared to 2018. In addition, in the Arab states, 91% of the population is covered by a 3G or higher net [13]. Today, many mobile applications, available on Google Play and Apple’s online store are deliberated for the prevention and management of disease, particularly non-communicable diseases [14,15]. Rare are the mobile applications that assess food security which is one of the serious challenges and a topic of interest to academics, policy makers, practitioners, governments, and non-governmental organizations around the world and in the EMR. Thus, an innovative mobile application, entitled Nutrition Assessment System (NAS) was used to serve the above objectives.

2. Methodology

Toolkit development
The goal of the developed mobile application was to provide motivation for food security assessment by examining individual or household food security status, leading to an appropriate intervention. NAS is a cloud-based platform that uses the web-based and smart technology applications. This version of NAS was developed under Java Android studio IDE. The logo of this mobile application is shown in Figure 1a. This application was initially developed for the Android (Google, Mountain View, CA, USA) system, and it will eventually be adapted for the Apple (Cupertino, CA, USA) iOS. The software engineering methods for usability, accessibility, and availability were considered in the design and implementation phases. This assessment method was validated. The software was piloted tested on a sample of more than 2000 participants. The initiative, which runs over a 2-month period, assisted in the validation and development of the application by creating standard operating procedures for running this mobile application to support and to serve the public health sector. The user provides his or her personal information to use the main functions of the application. Personal information includes age, gender, height, weight, number of family members, and children per household. Height and weight are necessary information for body mass index analysis. The provided information is saved in the database and managed as user information. In any later phase, a registered user can log in automatically through a selection of a study or question. When consenting to enter the survey 1, adapted from the “Food Security and Livelihoods Assessment of Lebanese Host Communities: Assessment Report” [16] published by the food and agriculture organization (FAO) in 2015 and translated to native Arabic, were available to be answered. In addition, the questions of the second survey were adapted from a valid questionnaire published by Sahyoun et al. [17,18]. For instance, if a user selects to provide data on the survey 2, the mobile application provides an introduction, socio–demographic questions and food security assessment questions that are appropriate for this study as shown in Figure 1b,c; subsequently, an assessment of his/her food security status starts.. When the user completes the questionnaire, this application quantifies the answers using an algorithm. Using the analyzed NAS scores, the application provides a data that was moved to Excel sheets for further analysis. The essence of this mobile application is to provide an easy and clear standard to grasp one’s food insecurity level. As the questionnaire at the start of the application is based on the survey categories, it meaningfully compares the user’s score with the standard. This mobile application is available and can be accessed upon request.

2.1. Survey 1: Assessment of the Impact of Prolonged Crises on Household Food Insecurity in Lebanon

Survey design and sampling
Covering all governorates, the Lebanese households were interviewed using this mobile application which was able to capture 1133 participants. It was a cross-sectional survey conducted between November and December 2020. The sample representativeness was then optimized by a weighting procedure, according to the Central Administration of Statistics figures of the following variables: geographical dwelling region, gender, and education level. The survey collected quantitative data on the impacts of COVID-19 and the economic crisis on people’s livelihoods, coping strategies, their food security situation, through the questionnaire “Food Security and Livelihoods national assessment” [16]. This questionnaire was about 30 min duration and was filled through NAS in a self-administered way, after an introduction explaining the context and objectives of the survey; answering the questionnaire was an implicit informed consent. The online questionnaire included in the mobile application was available in native Arabic, the native language in Lebanon.
Variables tested
Several socio–demographic characteristics including gender, age, educational status, marital status, and number of family members were studied. Food Consumption Score (FCS), which is a proxy indicator used for food security analysis, was calculated using the frequency of consumption of different food groups consumed by a household during the 7 days before the survey [19]. The calculation formula of the score FCS is: (starches × 2) + (pulses × 3) + vegetables+ fruit+ (meat × 4) + (dairy products × 4) + (fats × 0.5) + (sugar × 0.5) [19]. Moreover, the Coping Strategy Index (CSI) had been tested using questions about household strategies to manage coping with a food shortfall that was associated with simple numeric score [20].

2.2. Survey 2. Assessment of the Impact of Prologned Crises on Household Food Insecurity in Areas Affected by the Beirut Port Explosions

Study Sampling and Design
This cross-sectional study was conducted between December 2020 and March 2021 using a representative random sampling of Lebanese households from Beirut province. A minimal sample size of 384 households was needed to allow for adequate power for statistical analyses to be carried out according to the Epi info sample size calculation with a total Beirut population size of 450,413 residents according to the population estimates of 2019, based on the Ministry of Public Health data, a 50% expected frequency and a 5% confidence limits [21]. This number was, then, multiplied by 2 to reach a representative sample of 768 households that takes cluster effect and refusals into account. A simple random selection sampling was then performed to this targeted number of households to account for all regions in Beirut and start data collection based on the number of residents obtained for each region. Even though the calculated number was a sample of 768 households, we collected more households, and we reached a total number of 1388 households. The “Arab Food Security Scales” [17,18] questionnaire was used to collect data. It was about 7 min duration and was filled through NAS in a self-administered way, after an introduction explaining the context and objectives of the survey; answering the questionnaire was an implicit informed consent. The online questionnaire included in the mobile application was also available in Arabic, the native language in Lebanon. Using this questionnaire, food insecurity in respondents using the scale Arab Family Food Security Scale (AFFS) and Food Insecurity Experience Scale (FIES) [17,18] was assessed accordingly.

2.3. Ethical Aspects

The study was conducted according to the guidelines of the Declaration of Helsinki, and approved by the Ethics Committee of the Lebanese university (protocol code #CUER 22–2020 and date of approval was on 13 May 2020). Anonymity of respondents was guaranteed throughout the process of data collection and analysis. Informed consent was obtained from all subjects involved in the study.

2.4. Statistical Tests

Data were converted from NAS database to Excel spreadsheet; they were then analyzed using SPSS version 26.0. A descriptive analysis was first conducted to evaluate sample characteristics. The sample size being higher than 1000, parametric tests were used in the bivariate analysis: means were compared using Student test and percentages using the Chi-squared test. A p-value lower than 0.05 was considered significant. A multivariate analysis was also conducted: using a binomial logistic regression, independent variables were included to explain the variability of the major dependent variable. A backward stepwise likelihood ratio method was also used. Moreover, two models were derived to optimize the probability of food insecurity.

3. Results

3.1. Survey 1. Assessment of the Impact of Prolonged Crises on Household Food Insecurity in Lebanon

3.1.1. Socio–Economic Characteristics of Respondents

The study targeted individuals above 14 years of age. Of the Lebanese respondents, and after weighting, it included 52.4% females, 19.2% university education and 73.3% school education, while 49.8% were married, and 47.1% were single (Table 1). The mean age of participants was 32 years (SD = 12). For work status, 29.3% do not work (housewives and retired, mainly), 21.6% were university students, 10.8% were licensed from work and 38.4% were active workers (Table 1). Among current workers, 60% were healthcare workers. The current household income was inexistent for 20.1% of participants, less than USD 1000 for 45.8%, USD 1000–2000 for 26.8%, and more than USD 2000 for 6.9%. A total of 29% were current regular smokers (Table 1). Although most households in all governorates have between 4 and 6 members, the highest number of children per family was observed only in Akkar (Appendix A). As for the financial situation, more than 40% of households in Akkar, 39% of households in Beqaa, more than 20% of households in North Lebanon, South Lebanon and Baalbek–El Hermel have no monthly income (p < 0.001) (Appendix A). Most households in all governorates have a monthly income of less than USD 1000 (Appendix A). As for chronic diseases, 20% of respondents declared having at least one diagnosed chronic disease, where 8.5% suffer from hypertension, 4.5% from diabetes, 3.9% from anemia, 3.9% from hypercholesterolemia, 1.6% from cancer, 4.2% from chronic lung disease (asthma/chronic obstructive pulmonary disease), 6.9% from obesity, 4.9% from depression and 8.0% from anxiety and depression (Data not shown). Women (22.2%) were reporting more chronic diseases compared to men (17.2%) (p = 0.035) (Data not shown).

3.1.2. Impact of COVID-19 on Economic Situation

To investigate the COVID-19 impact on economic situation in Lebanon, the households were asked to assess their economic situation during the pandemic compared to the phase before and whether their ability to execute their work has been threaten as a consequence of containment measures. Around 38.3% of Lebanese respondents reported being poor since the outbreak of COVID-19 (Table 2). The percentage of respondents from both genders who reported being below the poverty line tripled from 4.6% before the pandemic to 13.5% since the outbreak (Table 2). More than 60% of respondents from both genders were afraid of poverty and according to the InCharge Financial Distress/Financial Well-Being Scale, used to assess the feelings of overpressure in respondents during the last 4 weeks, all respondents from all governorates were feeling overpressure concerning their financial situation (Table 2).
When asked about taking debt or being helped financially in the past 24 months to cover basic needs, about 54.1% of Lebanese households reported incurring debts (Table 2). The highest percentage of debts was observed in Beqaa and Akkar (p < 0.001) (Appendix B). Debt was incurred to cover the cost of food (37.9%), rent payments (18.3%), education expenses (8.3%), health expenses (8.1%) and for investment (8.2%) (Table 2). As for assistances, the highest number of assistances were reported to Beqaa households (41%) and the lowest to Akkar households (6.6%) where the majority were receiving food vouchers (14.7%) (Appendix B).

3.1.3. Indicators of Household Food Security

  • Food groups consumption score
It was observed that almost all respondents eat main food groups in a frequency of fewer than 3 days per week (Table 3). Men were consuming fewer white tubers (i.e., potatoes, onions and carrots) (p = 0.014), less vegetables (p = 0.045), less fruit (p = 0.006), less dairy products (p = 0.002), more fats and oils (p = 0.004), more sweets (p = 0.002) and more spices and condiments (p < 0.001) compared to women (Table 3). Both genders were eating cereals, meats, eggs, pulses, nuts and fish similarly (p > 0.05). Most households in all governorates except in Nabatieh and South Lebanon consumed non-diversified food groups (Appendix C). According to this assessment, 53% of the Lebanese household had a poor FCS. On the other hand, 29% had an acceptable FCS (Table 4). Among those who had poor FCS, the highest percentage was in the age range between 20 and 54 years (p < 0.001) (Data not shown). Beqaa has the largest proportion of households with a poor FCS, with 83% of households calculated to have a poor FCS, followed by Akkar which sees 73% of its inhabitants with a poor FCS (Table 4). On the other hand, Nabatieh has the highest proportion of households with an acceptable FCS (more than 40%) (Table 4). In further analyses that were not reported in this assessment, the households with poor FCS were relying mainly on cereals and vegetables. Fruit, pulses, meat, and dairy products were less consumed due to the price inflations discussed previously in this paper. On the other hand, households with acceptable FCS consumed fewer amounts of vegetable, higher amounts of fruit, pulses, meat, dairy products, sugar and fat and oils compared to those who have low FCS (Data not shown).
2.
Coping strategies
Coping Strategy index and livelihood coping strategies in last 30 days
The survey found that 82.1% of households had a low reliance on livelihood coping strategies in the last 30 days. However, 11.8% of the population have a medium reliance on coping strategies and 6.1% only rely heavily on coping strategies (Table 5). At governmental level, South Lebanon, Mount Lebanon and Akkar had the biggest proportion of households that rely heavily on coping mechanisms (Appendix D).
One in two Lebanese households resorted to severe crisis or emergency livelihood coping strategies including spent savings (27.7%), selling household (38.1%) and practices assets (24.1%). It was observed that women were coping with lack of food by asking charities to provide assistances compared to men (p = 0.012) who borrowed money, sold productive assets, took high risk labor or any type of labors to meet basic food needs (Table 5).
Food-based coping strategies in the previous 7 days
In the last 7 days, 23.5% of households, reported eating cheaper food in more than 4 days per week (Table 5). Moreover, 17.3% of households borrowed foods or received assistances, and more than 25% ate less meals and less portions and sizes in the last week of response. In addition, more than 30% of the respondents reported eating less to spare food for their children (Table 5). This latter was remarked mainly in women (35.9%) compared to men (27.7%) (p = 0.05). Baalbek–El Hermel had the biggest percentage of people relying on coping strategies in frequency of 4 days and more per week (Appendix D).
Food-based coping strategies in the previous 30 days
Nearly 9 in every 16 households were eating less than 2 meals per day while more than 70% of them considered this pattern as “usual pattern” (Table 5). Furthermore, apparent large percentages (70%) of the respondents from all governorates reported skipping their meals to spare food in the 30 last days. Moreover, 13.7% were worried about not having enough to eat, 5.4% were unable to eat healthy food and 7% ate few kinds of foods. Furthermore, 5% ate less, spend their days not eating the whole day and staying hungry (Figure 2).
3.
Sources of drinking water and planting crops
A majority (40%) of households were drinking water from market stores and no one reported drinking water from municipal connection. Half the women were buying water from market stores compared to 31% men (p < 0.001) (Data not shown). Even though most of the respondents (more than 60%), were interested in planting crops, and 62% of them requested training in agricultural production, only 23% of respondents were planting crops except for Nabatieh and Baalbek–El Hermel (p < 0.001) (Data not shown). Almost all 75% of the crops were consumed by the household itself and 25% were bought to increase monthly income or freely given for community support (Data not shown).
4.
Physical access to food: Markets, shopping behaviors, and food stocks
Market accessibility is an important indicator to physical access of food. To evaluate the access to markets, this assessment asked Lebanese households about the markets accessed to purchase food, transportation tool they use to travel there, and the duration to reach these markets. Nearly 68% of households all over Lebanon access local shops to purchase food and only 17.1% access open air markets. A total of 85% of the respondents need around 30 min to access food markets and around half the respondents use cars to reach markets. Only 28.5% walk on feet. People who plant crops were asked about the place of selling their products; the majority 38.2% sell their crops at the marketplaces and around 12% sell at farms and agriculture cooperatives (Data not shown).

3.1.4. Correlates of Household Food Insecurity

The binary logistic regression model shows the relationship between several independent variables and the dependent variables FCS and CSI. Initially, 10 variables were introduced to the model for both FCS and CSI. Subjects were then grouped into 3 categories (poor, borderline, and high) based on their calculated FCS and CSI as follows: fewer than 28, between 28–42, more than 42 for FCS, and fewer than 18.6, between 18.6–37.5 and more than 37.5 for CSI, respectively. Other subgroups were also analyzed according to the following subgroups: acceptable FCS (≥42) versus unacceptable FCS (<42) and acceptable CSI (≥37.5) versus unacceptable CSI (<37.5).
  • Food consumption score
According to Table 6, many factors were affecting the FCS of the Lebanese households of which: age, place of living, number of children, incurring debts, planting crops, the time needed to access the market, education, and monthly income. As per the binary logistic analyses, it was shown that older participants heading the household have lower FCS compared to youngers. Those between 35 to 54 years showed 96% less FCS compared to participants between 14 and 19 years old (OR = 0.03, 95% CI [0.19, 0.67]). Similarly, the head of households with age range between 25 and 34 years showed 49% less FCS than those between 14 and 19 years (OR = 0.50, 95% CI [0.270, 0.949]). The FCS of university educated participants, heading the households, was 2.4-fold higher than the FCS of people who did not attend colleges and universities (OR = 2.3, 95% CI [1.59, 3.48]). Additionally, households in South presented 65% less FCS compared to those residing in Akkar (OR = 0.34, 95% CI [0.16, 0.72]). It was shown that households who have not yet children had 1.8 times higher FCS compared to those with fewer than 3 children (OR = 1.83, 95% CI [1.26, 2.65]). In addition, those with more than 3 children had 4 times higher FCS compared to the households with fewer than 3 children (OR = 4.2, 95% CI [2.5, 6.6]). Moreover, it was shown that households who incurred debts in the previous 24 months, spent their money on buying food and had 2.7-fold higher FCS compared to those who did not incurred debts (OR = 2.72, 95% CI [1.93, 3.82]). Respondents who lived far from market and spend more than 1 h to reach it had 91% lower FCS compared to those who lived nearby (OR = 0.09, 95% [0.01, 0.58]). In addition, people who had an income of less than 3 million Lebanese pounds (equivalent to USD 234) and more than 3 million Lebanese pounds had a lower FCS ranging between 87% and 52% lower than those who had an income of more than USD 2000, respectively.
2.
Coping strategy index
The investigation, through binary logistic regression, of the correlates affecting CSI in the survey’s respondents showed rare significance of almost all the factors studied in relation to CSI except for the factors “number of family members” “debts incurrence” and “receiving assistances”. Households in which family members incurred debts and assistances were coping more than 10-fold higher than those who did not (OR = 14.212, 95CI [1.85, 109.10]) and (OR 12.1, 95% CI [1.20, 122.4]), respectively. In addition, households with more than 3 children were coping 20 times more compared to those with fewer than 3 children (OR = 20.7, 95% CI [1.73, 248.1]).

3.2. Survey 2. Assessment of the Impact of Prologned Crises on Household Food Insecurity in Areas Affected by the Beirut Port Explosions

3.2.1. Socio–demographic Characteristics of the Study Population

A sample of 1388 respondents was reached. It includes 52.5% females, 70.5% school education, while 10.3% were illiterate. A total of 72.7% were married, and the majority (76.1%) have more than 4 family members and fewer than 3 children (74.6%) in the same household. The mean age of respondents was 41.5 years (SD = 14.2). Concerning work status, 20.1% were active workers where only 7.7% worked in the health sector, 43.7% do not work (housewives and retired), and 31.5% were licensed from work.
Almost all the respondents were current smokers and around 1.9% of alcohol drinker consume more than 1 cup per day. Among participants, 88.8% declared being severely affected, as households, by the Beirut Port Explosions on August 4, 2020 (Table 7).

3.2.2. Food Insecurity Experience Scale

Using the scale Arab Family Food Security Scale (AFFSS), the majority (75.4%) of households were severely food-insecure. Similarly, the majority (43%) of respondents also were shown to be severely food-insecure, using Food Insecurity Experience Scale (FIES). Using both scales AFFSS and FIES, more than 60% of people (heading households) were food-insecure, and the highest percentage of food insecurity was observed in the age category between 14 and 47 years (youth group). The survey respondents were asked about the most appropriate sentence describing the household status during the previous 6 months. A total of 31% of households were consuming what they want to consume in enough quantity. On the other hand, the same percentage of people were also consuming enough quantity of food but not as they want. Furthermore, there was a percentage of households, in a range between 3% and 9%, who did not have enough to eat. The same result was observed also when asking the head of each household men and women each alone (Appendix E). The results of the Pearson correlation analysis used to investigate the association between food insecurity and the factors studied showed that any factors influenced the food security status of these households affected by the Beirut explosions including the number of family members, the number of children in each household, education, and occupation as presented in Table 8.

4. Discussion

Food insecurity can change over time for a variety of reasons. Between 1914 and 1918, as the First World War raged across Europe and beyond, a dark chapter unfolded in what was then known as Greater Syria. During this period, food shortages were so severe that civilians in the Ottoman territories saw their cost-of-living rise to unprecedented levels and at a much higher rate than civilians in for example Paris, London, and Berlin. For example, the price of wheat in Beirut, according to one account, rose from by a factor of eight from five ghurūsh per roṭl in February 1916 to forty ghurūsh in November of the same year, whereas in Paris and London prices doubled and tripled in Berlin [5].In fact, the crisis of civilian provisioning in some regions of the empire—urban Beirut and rural Mount Lebanon most notably—escalated into a fully fledged famine; a famine so cruel and relentless that it would dominate the memory of World War I as the “war of famine” for generations. Indeed, the effects of the “war of famine” were so severe that by its end in 1918, all that seemed to have been left were cities filled with starving refugees and villages emptied of their young men if not all their residents and drained of their political opposition and exhausted from hunger. This marked the beginning of a period that is now often just a footnote in the history books: the Great Famine of 1915–1918, which left an estimated 500,000 people dead. With a lack of accurate data, estimates range from 100,000 to 200,000 deaths in Mount Lebanon alone. At this time, the population of Lebanon was estimated at about 400,000, meaning that half its people died. It is perhaps imprecise to say that capitalism ‘caused’ the famine. The crisis happened because the interests of French industrial capital and the local bourgeoise dominated Lebanese social organization. In that regard, it was an exception in the rural Ottoman Empire. Lebanon’s tragedy can only be explained regarding capitalism’s proclivity for producing crises in the human relationship with the rest of the environment. In 1920, the implementation of food insecurity came hand by hand with the creation of Greater Lebanon. Thus, to ensure that Mount Lebanon would not suffer famine again, Akkar, the Beqaa Valley, and South Lebanon—all predominantly agricultural areas—were added to Mount Lebanon. Nevertheless, this addition faced political challenges. Since 1947 (Palestinian war), passing by 2003 (Iraqi war) and 2011 (Syrian war), Lebanon hosts the largest number of Syrian refugees per capita, with a government estimate of 1.5 million Syrian refugees. It also hosts an additional 18,500 refugees from Ethiopia, Iraq, Sudan, and other countries, as well as more than 200,000 Palestinian refugees under UNRWA’s mandate [22]. The influx of such high numbers of displaced people has had a serios impact on the political and socio–economic situation in Lebanon, contributing to increased instability. Displaced populations were competing with Lebanese citizens for jobs, markets, public services, and infrastructure mainly for already scarce and fragile natural resources such as land, water, and forests. Increased competition between local workers and displaced populations resulted in reduced household incomes among host communities. In addition, decreases in wages and increases in expenditures are also potential threats to the food security situation of host communities. All these issues together pushed poor and very poor households of the host communities into asset depletions, poverty, and increased vulnerability to future shocks. The impact of the Palestinian and Syrian crises on Lebanon’s rural economy and agriculture sector is another concern. Since the end of the civil war in 1990, the political tempo has been high; governments have come and gone and policy has been fragmented, not least with respect to food and nutrition security. Tax bases have remained low while successive governments have adapted to spending requirements through borrowing, mostly from local banks. The political turmoil has resulted in economic growth not keeping pace with rising debt which now stands as one of the highest in the world compared to the gross domestic product. Partially as a result, social safety nets remain underdeveloped, and the poverty rate has remained high. Heavily indebted, Lebanon is also import dependent on the very foods that it consumes the most, such as bread and other cereals. In addition, while it can maintain a reasonably sufficient supply of food, economic access to food and nutrition creates a raft of issues, especially during price shocks. To our knowledge, and since the ordeals of COVID-19, economic crisis, and the Beirut port explosions, the present study is the first to inspect the prevalence and correlates of food insecurity among a representative sample of Lebanese households. Findings show that food insecurity is an immediate problem for households in Beirut and in many governorates in Lebanon. Between November 2020 and March 2021, 9 in every 16 households ate less than 2 meals per day and more than 70% of them skipped their meals to spare food. These findings were higher than the results reported by the WFP report published in June 2020, prior to the Beirut explosions, in which 19% of households used to skip meals or stay hungry all days or nights. Even though half the population studied had a low FCS, 82.4% of the people were not relying on livelihood coping strategies. However, more than three out of ten of these people relied on at least three food-based coping strategies. In the present study, the number of people whose FCS was poor (53%) was found to be higher compared to those reported previously in 2015 (11.1%) [18] and higher than those reported in other middle-income countries in the MENA region, including Jordan (15%), Syrian Arab republic (9% to 22% between June and September 2020) [23] and Palestine (13%) [24]. According to our findings, at government level, Beqaa and Akkar have the largest proportion of households with a poor FCS, with 83% and 73% of households are calculated to have a poor FCS, respectively. These results came hand by hand with the data published by the world Food Program (WFP) in October 2020, in which Beqaa and Akkar presented the lowest FCS compared to other governorates [25]. In addition, as for livelihoods, our findings found that most Lebanese households reported a decline in income along with an expansion in debt incurrences in the last 24 months; the top reasons for it being the inflations in prices and the unemployment. Moreover, the main reason behind debt incurrence by households was food purchase. In addition, the high rate of unemployment has caused an inflation in salary cuts, which in return reduces the ability to afford adequate and sufficient food. This was obvious in our study, where an increase in income showed an improvement in the FCS. Households who were suffering for monetary instabilities and unemployment, were among the group of poor FCS who were facing failure to meet fundamental needs which this can lead to future physical and mental well-being issues, including malnutrition and depression.
When investigating correlates of coping strategies, our findings showed that households CSI was linked with socioeconomical characteristics including monthly income, monetary debts, and number of family members. According to many studies, similar coping strategies were previously observed among Syrian, Iraqi and Palestinian refugees in Lebanon [26,27,28], such consuming cheaper food items and borrowing money to purchase food. Such strategies among households with children can have serious impact on the overall health status of children in the short and long term, and it should warrant further attention [29].
According to the area affected by the Beirut port explosions, three out of four households were severely food-insecure as per AFFSS and one out two households were shown to be severely food-insecure, using FIES. Many factors influenced the food security status of households affected by the Beirut explosions including the number of family members, the number of children in each household, low educational attainment, and unemployment. Recent studies support our finding, including 18 countries in the Eastern Mediterranean region (including Lebanon, Palestine, Egypt, Jordan) highlight that the five common correlates of food insecurity across these countries were low levels of education, low household income and unemployment [30,31]. Between 2014 and 2018, the percentage of Lebanese household food insecurity per year ranged between 24% and 34%, respectively. However, today, according to our findings, the percentage of food-insecure households doubled, mainly in those affected by the Beirut explosions.
All the above findings indicate an alarming situation that is due to the financial and economic crisis that in turn led to a macro-financial failure that included defacement of the banking sector which led to loss of peoples’ deposits. In addition, the exchange rate had collapsed resulting in a triple-digit inflation rates along with a severe contraction in the banking sector due to the impacts from the COVID-19 pandemic, including necessary lockdowns that further exacerbated the whole situation [32]. In addition, and since 2011, the overabundance from the Syrian Arab republic resulted in providing the larging refugee population per capita in the world. Moreover, the blast limited the trade of food products, destroyed the plant and animal quarantines offices in Beirut port and destroyed the equipment and laboratories that were in charge for measuring the quality of imported wheat. To add, the small-scale fishing industry was devastated due to the massive death in fishes available close to the epicenter of the blast. As known, new imports must be funded with US Dollars obtained after November 2019, and require advanced payment to foreign suppliers. The restriction on the foreign currency transactions, placed since October 2019, limited the sectors of agribusinesses and the importation of food markets, meats, fish, and chicken resulting in potential shortages in imported food products and animal feeds. All these factors together led to an increase in the cost of the food component of the SMEB that reached an aggregate expansion of 109% between September 2019 and May 2020 [32]. Additionally, a decrease by 14.4% of food imports was observed between October 2019 and March 2020 compared to October 2018 and March 2019, which caused an overpressure on the prices due to reduce in food availability [32].

5. Limitations

The current study has several strengths. It is the first to explore the prevalence and correlates of household food insecurity among Lebanese households since the ordeals of COVID-19, economic crisis, and the Beirut port explosions. The demographic and socio–economic characteristics of the study sample were found to be comparable to national figures most recently available in Lebanon [25,33]. Other strengths of the study include the use of a culturally sensitive questionnaire and a locally validated household food security access scale. Innovatively and unlike any other information gathering exercise ever conducted before in Lebanon, this assessment fully uses a mobile phone application called NAS which means that no paper forms are used, anyone with a smart-phone can participate, and results are automatically analyzed. For no charge, users had a chance to answer many multiple-choice and open questions regarding their food security status. However, results from the present study need to be interpreted in the light of several limitations. The NAS mobile technology considers people who are literate Internet users, with connectivity to the Internet, hence, the sample was not necessarily representative of all populations but provided trends to help decision-making at administrative level for the Lebanese. Another limitation is the inability to collect data face to face but through technology-based mobile application where there was a gap in collecting anthropometric data. The cross-sectional design of the study allowed us only to examine associations rather than explore potential causal pathways between food insecurity and many other factors. Food insecurity was also measured at the household level, and it may not reflect the severity of food insecurity that is witnessed specifically at the individual level.

6. Conclusions

In conclusion, food insecurity is a food system disruptor with serious repercussions for the health and future sustainability of Lebanese households. Three potential areas of consequences of food insecurity at the household level were apparent in these current surveys, namely physical, psychological, and socio–familial. This national assessment of food security in Lebanon was conducted to provide humanitarian and development actors, the government of Lebanon and other non-governmental partners with baseline information to facilitate the development of a comprehensive evidence-based strategy for food security interventions targeting Lebanese communities. Given the multiple dimensions of food security, it is time to track all food security indicators including food availability, access, consumption, and use, and promote sustainable food systems. Key issues include how the intervention in the field of food security can help work towards more resilient households, communities, and food systems, how they can contribute to stability, sustainability, bridging humanitarian and development programming in protracted crisis areas. Achieving food security for all and realizing the right to food is the key aspect of any further assessment and/or intervention.

Author Contributions

Conceptualization, M.H.; Data curation, M.H., S.E.G., R.M. (Reem Mhanna), F.S.-A. and P.S.; Formal analysis, M.H., R.M. (Rania Mansour), R.M. (Reem Mhanna) and F.S.-A.; Investigation, M.H. and A.A.-J.; Methodology, M.H. and Y.A.-A.; Project administration, A.A.-J.; Software, Y.A.-A. and H.J.; Supervision, M.H. and A.A.-J.; Validation, A.A.-J.; Writing—original draft, M.H.; Writing—review & editing, Y.A.-A., H.J., S.E.G., R.M. (Rania Mansour), R.M. (Reem Mhanna), F.S.-A., P.S. and A.A.-J. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

The study was conducted according to the guidelines of the Declaration of Helsinki and approved by the Institutional Review Board (or Ethics Committee) of the Lebanese university (#CUER 22-2020).

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

This study did not report any data yet.

Acknowledgments

The authors would like to acknowledge all the students from the Faculty of Public Health and The Faculty of Pharmacy who contributed to data collection. Moreover, the authors are grateful to the non-governmental organizations “We Do Association” for their assistance in data collection as well.

Conflicts of Interest

The authors declare no conflict of interest.

Disclaimer

The authors alone are responsible for the views expressed in this article and they do not necessarily represent the views, decisions, or policies of the World Health Organization or the other institutions with which the authors are affiliated.

Appendix A

Table A1. Socio–demographic and socio–economic characteristics of the survey respondents by their place of living.
Table A1. Socio–demographic and socio–economic characteristics of the survey respondents by their place of living.
Place of Living
BeirutMount LebanonNorthSouthBeqaaNabatiehBaalbek–El HermelAkkar
N (%)N (%)N (%)N (%)N (%)N (%)N (%)N (%)Sig.
Age categoriesAge not reported204.91110.122.44514.6921.115.8923.13524.10.000
14–195814.4119.71826.33711.824.703.912.421.1
20–247418.13229.057.54514.449.1545.9924.62114.6
25–3410225.2108.62537.27022.61024.8433.824.45336.3
35–5412531.03834.51725.510533.71740.318.21745.52617.9
55+266.497.911.092.900.002.400.096.0
GenderFemale23457.67063.74768.614446.34096.51083.02874.02014.00.000
Male17242.44036.32131.416753.713.5217.01026.012686.0
Marital StatusSingle19447.95045.43854.914145.22355.9870.61130.26846.60.000
Married21152.05146.03144.815449.41844.1327.52669.27047.7
Widow00.000.000.000.000.000.000.000.2
Divorced00.198.500.3175.400.001.900.685.5
Number of family members1–3 members9623.84238.53145.53310.81125.4539.6923.73524.00.000
4–6 members29973.96559.42130.123876.53173.5646.92873.96644.9
7–9 members92.321.91724.33912.601.1213.511.82819.0
More than 9 members00.000.200.000.100.000.000.61812.1
Number of children0 children13834.12220.01826.410232.92866.6648.325.83725.10.000
Fewer than 3 children15939.26054.54058.916753.81228.1437.72668.95537.4
More than 3 children10826.72825.51014.64113.325.2214.01025.35537.5
EducationIlliterate82.000.000.092.800.000.000.096.00.000
Primary92.100.01724.5258.200.000.000.085.5
intermediate30074.27568.13348.123575.73277.200.03386.612183.0
University8821.73531.91927.44113.31022.812100.0513.485.6
OccupationWorking17342.84036.33449.113443.113.4648.31026.73624.70.000
Fired307.41917.500.3299.300.603.9821.23524.0
Not working10526.02724.91014.58627.63378.4112.1923.76041.0
Student9723.92321.32536.16220.0717.7435.71128.41510.3
Health OccupationYes276.7119.645.572.236.1431.9923.100.20.000
No37893.310090.46594.530497.83993.9868.12976.914699.8
SmokingYes7418.33632.31826.010533.8921.314.4923.78054.60.000
No29873.67265.24870.518760.23378.71086.92874.95839.9
Sometimes307.421.823.093.000.016.300.685.5
Old smoker30.710.600.4103.100.002.400.800.0
Monthly incomeNo income317.611.02029.08126.11639.214.4922.66947.30.000
less than 1,500,000 LBP14636.05246.83043.213844.51844.0328.026.23725.6
1,500,000–3,000,000 LBP11127.52219.81419.84514.449.5431.41949.32013.8
More than 3,000,000 LBP194.81311.523.441.223.9326.100.011.0
Less than USD 10004611.421.711.1309.611.703.9821.296.0
USD 1000–2000 409.82018.210.841.111.216.300.600.0
More than USD 2000 122.910.922.8103.100.600.000.096.3

Appendix B

Table A2. Depts incurrence and assistance related to the survey’s respondents according to gender and their place of living.
Table A2. Depts incurrence and assistance related to the survey’s respondents according to gender and their place of living.
Place of Living
BeirutMount LebanonNorthSouthBeqaaNabatiehBaalbek–El HermelAkkar
N (%)N (%)N (%)N (%)N (%)N (%)N (%)N (%)Sig.
Incurred any debts in the last 24 monthsYes18946.67467.43044.013543.53685.8541.52772.411679.30.000
No21653.43632.63856.017656.5614.2758.51027.63020.7
Amount of dept the participant currently hasmore than or equal USD 10,000 61.51110.3812.110.300.703.900.01812.50.000
less than USD 10,000 7618.61312.011.44615.01740.8215.413.200.2
no debt23758.46458.24870.421970.6615.3865.32770.15638.5
less than 15 million LBP7318.0119.61014.43411.0922.119.6924.36242.6
more than or equal 15 million LBP143.5119.911.7103.2921.115.812.496.3
When the participant took the deptMissing21653.43632.63856.017656.5614.2758.51027.63020.70.000
one month ago102.510.800.010.200.001.900.696.1
during the last 6 months379.211.3913.54213.41843.2217.91744.32718.4
during the last 12 months5112.62017.8913.8289.000.603.9923.13524.3
during the last 24 months or more9022.35247.41116.76520.81842.1217.924.44530.5
Way of dept paymentMissing21653.43632.63856.017656.5614.2758.51027.63020.70.000
total payments10.300.211.193.000.000.000.096.3
monthly payments18846.37467.12942.912640.43685.8541.52772.410773.0
Receiving assistance in the last 12 monthsYes8019.72421.81014.99229.51842.119.61025.0106.60.000
No32580.38678.25885.121970.52457.91190.42875.013693.4
Type of assistance the participant getsMissing32580.38678.25885.121970.52457.91190.42875.013693.40.000
Food6014.72320.511.94715.01739.915.8924.496.3
Cash122.910.9912.63511.412.201.900.600.0
Non-food items00.000.000.000.100.001.900.000.0
Education82.010.500.392.800.000.000.000.0
Health10.100.000.000.100.000.000.000.2
Protection00.000.000.000.000.000.000.000.0
Shelter00.000.000.000.100.000.000.000.0
WASH00.000.000.000.000.000.000.000.2
Source of assistanceMissing32680.38678.25885.121970.52457.91190.42875.013693.40.000
Government112.711.3812.2278.701.101.900.600.2
NGO204.900.410.8185.900.700.000.600.0
Charity287.01210.600.492.91638.601.901.200.0
UN agency82.000.000.3175.500.001.900.096.1
religious organization10.2108.600.410.200.003.900.600.0
local people102.510.600.3113.401.100.0822.000.2
family aboard10.300.300.492.900.600.000.000.2

Appendix C

Table A3. Food groups consumption per week in the previous 7 days for respondents according to their place of living.
Table A3. Food groups consumption per week in the previous 7 days for respondents according to their place of living.
Place of Living
BeirutMount LebanonNorthSouthBeqaaNabatiehBaalbek–El HermelAkkar
N (%)N (%)N (%)N (%)N (%)N (%)N (%)N (%)Sig.
Number of meals per day one day before2 meals and less24761.15045.52231.519562.72048.8759.91949.97249.30.000
3 meals and more15838.96054.54768.511637.32151.2540.11950.17450.7
being as usual, less, or moreas usual30575.29687.06797.221870.22457.2975.32875.06645.20.000
less than usual112.810.900.4103.200.018.200.000.2
more than usual8922.01312.122.48326.61842.8216.41025.08054.6
Cereal consumption per weekfewer than 3 days28269.66861.66088.117656.53787.6434.33695.612686.00.000
4 days and more12330.44238.4811.913543.5512.4865.724.42014.0
White tubers consumption per weekfewer than 3 days29673.18476.54870.518358.83175.2864.33798.214498.60.000
4 days and more10926.92623.52029.512841.21024.8435.711.821.4
Vegetable consumption per weekfewer than 3 days26966.36861.86290.821167.92968.4654.13796.212585.50.000
4 days and more13633.74238.269.210032.11331.6545.913.82114.5
Fruit consumption per weekfewer than 3 days27367.38476.04464.921970.32866.6542.52874.412585.50.000
4 days and more13332.72624.02435.19229.71433.4757.51025.62114.5
Eggs consumption per weekfewer than 3 days31277.19888.84971.826384.54095.0866.23798.013592.70.000
4 days and more9322.91211.21928.24815.525.0433.812.0117.3
Pulse and nuts consumption per weekfewer than 3 days35988.610696.26594.726384.63377.9973.42976.813693.20.000
4 days and more4611.443.845.34815.4922.1326.6923.2106.8
Dairy products consumption per weekfewer than 3 days31678.08274.14565.822070.93789.8761.82976.913592.70.000
4 days and more8922.02925.92334.29129.1410.2538.2923.1117.3
Fat and oils consumption per weekfewer than 3 days30775.98072.84667.518659.73890.9754.62975.612786.70.000
4 days and more9824.13027.22232.512540.349.1545.4924.41913.3
Sweets consumption per weekfewer than 3 days32078.99788.24666.821067.53789.7756.52874.412686.30.000
4 days and more8621.11311.82333.210132.5410.3543.51025.62013.7
Spices and condiments consumption per weekfewer than 3 days31076.67063.74566.424679.32968.8759.92874.213592.30.000
4 days and more9523.44036.32333.66520.71331.2540.11025.8117.7
Meat consumption per weekfewer than 3 days30575.29384.06391.923375.03994.2972.52154.614599.40.000
4 days and more10024.81816.068.17825.025.8327.51745.410.6
Fish consumption per weekfewer than 3 days39196.510191.56798.129294.04198.31188.43078.813793.70.001
4 days and more143.598.511.9196.011.7111.6821.296.3

Appendix D

Table A4. Food-based coping strategies in the previous 7 days for respondents according to their place of living.
Table A4. Food-based coping strategies in the previous 7 days for respondents according to their place of living.
Place of Living
BeirutMount LebanonNorthSouthBeqaaNabatiehBaalbek–El HermelAkkar
N (%)N (%)N (%)N (%)N (%)N (%)N (%)N (%)Sig.
Eating cheaper foodsfewer than 3 days15786.23875.43297.19050.62799.1471.32698.310684.90.000
4 days and more2513.81224.612.98849.400.9128.701.71915.1
Borrowing foodfewer than 3 days7674.52098.810100.08175.80100.0175.08100.054100.00.000
4 days and more2625.501.200.02624.200.0025.000.000.0
Eating less meals to spare food for childrenfewer than 3 days9271.74180.62197.98351.82698.0392.21867.512493.20.000
4 days and more3628.31019.402.17748.212.007.8932.596.8
Eating small amountsfewer than 3 days10183.62674.01496.88452.02698.1495.0952.111592.60.000
4 days and more2016.4926.003.27848.011.905.0947.997.4
Adults eat less to spare food for childrenfewer than 3 days10479.33274.82098.85842.82598.01100.004.69778.40.000
4 days and more2720.71125.201.27757.212.000.01095.42721.6

Appendix E

Table A5. Sentences describing the household status during the previous 6 months.
Table A5. Sentences describing the household status during the previous 6 months.
OverallGender
FM
N (%)N (%)N (%)p-Value
Which of these sentences applies the most to the food eaten by your household in the past 6 months?We had enough to eat of the kinds of food we wanted (quantity and quality)1289.27810.7507.6
We had enough to eat but not always the kinds of food we wanted (only quantity)43531.323632.419930.20.024
Sometimes we did not have enough to eat (quantity)44632.123632.421031.9
Often, we did not have enough to eat33424.116322.417125.9
Don’t Know/Refuse to answer453.2162.2294.4
In the last 6 months, was there a time when you were concerned that you would run out of food for your household for the next month?Don’t Know/Refuse to answer402.9212.9192.90.007
No1389.99012.3487.3
Yes121087.261884.859289.8
Did the following statement apply to your household in the last 6 months? "The food that we bought was not enough and we didn’t have money to get more."Don’t Know/Refuse to answer513.7283.8233.50.041
No18913.611515.87411.2
Yes114882.758680.456285.3
Are there any foods you feel your family does not eat enough of?Don’t Know/Refuse to answer473.4243.3233.50.31
No16011.59312.86710.2
Yes118185.161284.056986.3
In the past 6 months, did you or any other adult in your household ever cut the size of your meal because there was not enough food?Don’t Know/Refuse to answer634.5375.1263.90.001
No24817.915521.39314.1
Yes107777.653773.754081.9
In the past 6 months, did you or any other adult ever skip a meal because there was not enough food?Don’t Know/Refuse to answer644.6314.3335.00.007
No38828.023031.615824.0
Yes93667.446864.246871.0
In the past 6 months did you or any adult in your household not eat for a whole day or go to bed hungry because there was not enough food?Don’t Know/Refuse to answer644.6344.7304.60.25
No84761.045963.038858.9
Yes47734.423632.424136.6
During the last 6 months, was there a time when you or any adult in your household were unable to eat healthy and nutritious food because of a lack of money or other resources?Don’t Know/Refuse to answer453.2253.4203.00.001
No24517.715421.19113.8
Yes109879.155075.454883.2
During the last 6 months, was there a time when you or any adult in your household were hungry but did not eat because there was not enough money or other resources for food?Don’t Know/Refuse to answer896.4405.5497.40.001
No64146.237050.827141.1
Yes65847.431943.833951.4
During the last 6 months, was there a time when you or any adult in your household went without eating for a whole day because of a lack of money or other resources?Don’t Know/Refuse to answer100.750.750.80.099
No82959.745562.437456.8
Yes54939.626936.928042.5

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Figure 1. Application screen shots: (a) register user information and logo; (b) The introduction part and socio–demographic questions of survey 2; (c) Questions of Survey 2.
Figure 1. Application screen shots: (a) register user information and logo; (b) The introduction part and socio–demographic questions of survey 2; (c) Questions of Survey 2.
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Figure 2. Food-based coping strategies in last 30 days.
Figure 2. Food-based coping strategies in last 30 days.
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Table 1. Socio–demographic and socio–economic characteristics of the survey respondents as overall and by gender.
Table 1. Socio–demographic and socio–economic characteristics of the survey respondents as overall and by gender.
Gender
OverallFemaleMale
N (%)N (%)N (%)p-Value
Age categories (years)Age not reported13211.8508.48215.20.000
14–1912911.28814.8417.5
20–2419517.310016.99517.7
25–3427624.711920.115729.2
35–5434730.421035.413725.3
55+534.8264.4275.1
GenderFemale59350.0593100.000.0-
Male53950.000.0539100.0
Marital StatusSingle53447.425042.128452.60.000
Married56349.631753.424645.7
Widow00.000.000.0
Divorced353.1264.491.7
Number of family members1–326223.313723.212523.30.001
4–675366.540668.534764.4
7–9988.7498.2499.1
More than 9181.710.2173.2
Number of childrenNone35331.613723.121640.10.000
Fewer than 352346.129649.922742.2
More than 325622.416027.09617.8
EducationIlliterate252.381.4173.20.000
Primary595.3244.1356.5
Intermediate83073.739566.643580.7
University21818.816628.0529.6
OccupationWorking43439.213622.929855.40.000
Fired12211.2233.99918.4
Not working33128.527045.56111.4
Student24421.316427.78014.9
Health OccupationYes635.5559.381.60.000
No106994.653890.753198.4
SmokingYes33130.16911.726248.50.000
No73564.050084.223543.7
Sometimes524.7223.8305.6
Old smoker141.320.3122.2
Monthly incomeNo income22720.39415.913324.70.000
less than 1.5 million LBP42737.822137.320638.2
1.5–3 million LBP23820.914023.69818.2
More than 3 million LBP443.9305.1142.6
Less than USD 1000 968.6508.5468.6
USD 1000–2000 655.7528.8132.5
More than USD 2000 343.161.0285.2
Table 2. Economic status, InCharge Financial Distress/Financial Well-Being Scale, depts incurrence, and assistance related to the survey’s respondents by overall and according to gender.
Table 2. Economic status, InCharge Financial Distress/Financial Well-Being Scale, depts incurrence, and assistance related to the survey’s respondents by overall and according to gender.
Gender
OverallFemaleMale
N (%)N (%)N (%)p-Value
Economic Status
Income changeYes32728.916728.116029.70.56
No80671.142771.937970.3
Ongoing incomeYes46941.326544.720437.80.000
Half income16014.19115.36912.9
Less than half income787.1244.15410.0
Without income anymore42737.721436.021339.4
Monthly income59252.330551.428753.2
Economic situation before COVID-19Below the poverty line524.7172.8356.60.000
Poor15013.5406.711020.3
Moderate condition86876.448581.738371.0
Rich272.4162.7112.0
No answer373.2366.110.2
Economic situation after COVID-19Below the poverty line15313.9457.610820.10.000
Poor43438.521035.422441.5
Moderate condition50444.230751.819736.5
Rich111.020.391.7
No answer302.6294.910.2
InCharge Financial Distress/Financial Well-Being Scale
Afraid of poverty because of the COVID-19 pandemicScore 1 to 5 = Not afraid41737.020835.120938.80.197
score 6 to 10 = Afraid71563.138564.933061.2
Financial stress Overpressure75566.739266.136367.30.658
Less pressure or no pressure37733.320133.917632.7
Satisfaction of the current financial situationOverpressure80170.939466.440775.40.001
Less pressure or no pressure33229.119933.613324.6
Ability to meet normal expensesOverpressure75867.138665.137269.00.161
Less pressure or no pressure37433.020734.916731.0
Payment of financial emergency amount of USD 1000 Overpressure76067.139967.236166.90.944
Less pressure or no pressure37333.019532.817833.1
Affordability of doing leisure activitiesOverpressure70362.235259.335165.10.042
Less pressure or no pressure43037.824240.718834.9
Satisfaction of financial managementOverpressure76167.536862.039372.90.000
Less pressure or no pressure37132.622538.014627.1
Debts and assistances
Incurred debts in the last 24 monthsYes61354.230751.730656.70.092
No51945.828648.323343.3
Amount of dept More than or equal USD 10,000 454.1162.7295.40.001
Less than USD 10,000 15713.79215.46512.0
No debt66658.736060.630656.7
Less than 15 million LBP20918.510918.310018.6
More than or equal 15 million LBP565.1172.9397.2
Duration of debt incurrence Not reported51945.828648.323343.30.000
One month before 212.030.6183.3
During the last 6 months15313.58814.96512.1
During the last 12 months15313.76210.59116.8
During the last 24 months or more28525.215325.813224.5
Receiving assistance in the last 12 monthsYes24421.514023.610419.30.08
No88978.645476.443580.7
Type of assistanceNot reported88978.645476.443580.70.05
Food16614.69115.47513.8
Cash585.1305.0285.2
Non-food items00.100.000.1
Education181.5172.810.1
Health10.210.200.1
Source of assistanceNot reported88978.645476.543580.70.001
Government504.4223.6285.1
NGO393.5203.4193.6
Charity665.8488.1183.4
UN agency353.1172.8183.3
Religious organization121.1111.910.2
Local people312.8132.1183.4
Family aboard111.091.620.3
Table 3. Food groups consumption per week in overall population and by gender.
Table 3. Food groups consumption per week in overall population and by gender.
Gender
Overall Female Male
N (%)N (%)N (%)p-Value
Number of meals per day one day before2 meals and less63355.834457.928953.60.146
3 meals and more50044.325042.125046.4
The actual number of meals reported as usual, less, or moreas usual81371.645075.836367.30.003
less than usual232.1132.3101.9
more than usual29626.313021.916630.7
Food groups consumption in the previous 7 days
Cereal fewer than 3 days78869.740969.037970.40.623
4 days and more34430.318431.016029.6
White tubersfewer than 3 days83273.741870.441476.90.014
4 days and more30126.417629.612523.1
Vegetable fewer than 3 days80671.440768.739974.10.045
4 days and more32628.618631.314025.9
Fruit fewer than 3 days80671.340167.640575.00.006
4 days and more32728.719232.413525.0
Eggs fewer than 3 days94283.249984.144382.20.378
4 days and more19016.99415.99617.8
Pulse and nutsfewer than 3 days100088.352889.047287.50.394
4 days and more13311.86511.06812.5
Dairy productsfewer than 3 days87377.343673.443781.10.002
4 days and more26022.815826.610218.9
Fat and oils fewer than 3 days82072.640868.741276.40.004
4 days and more31327.518631.312723.6
Sweets fewer than 3 days87177.143573.343680.90.002
4 days and more26222.915926.710319.1
Spices and condiments fewer than 3 days87177.540167.647087.30.000
4 days and more26122.619232.46912.7
Meat fewer than 3 days90880.147680.243280.00.955
4 days and more22619.911819.810820.0
Fish fewer than 3 days107094.556094.351094.60.801
4 days and more635.6345.7295.4
4 days and more15231.87235.98027.7
Table 4. Food consumption score of respondents among governorates.
Table 4. Food consumption score of respondents among governorates.
FCSOverall (%)Beirut (%)Mount Lebanon (%)North (%)South (%)Beqaa (%)Nabatieh (%)Baalbek–El
Hermel (%)
Akkar (%)
Poor53.053.538.858.146.983.226.126.272.9
Borderline18.417.137.34.814.03.925.648.719.3
Acceptable28.629.324.037.139.113.048.325.07.8
Table 5. CSI, livelihood coping strategies in the last 30 days and food-based coping strategies in the previous 7 days in overall population and by gender.
Table 5. CSI, livelihood coping strategies in the last 30 days and food-based coping strategies in the previous 7 days in overall population and by gender.
Gender
OverallFemaleMale
N (%)N (%)N (%)Sig.
CSI CategoriesLow93082.149783.843280.20.021
Borderline13311.87112.06211.6
High696.1254.2448.2
Livelihood Coping Strategies in the Last 30 days
In the past 30 days, spending saving to meet basic food needsYes31427.617529.413925.80.359
No61754.531853.529955.4
Done before20217.910117.010118.8
In the past 30 days, borrowing money to meet basic food needsYes15213.8437.310920.30.000
No88878.247680.141276.3
Done before938.07512.6183.4
In the past 30 days, asking for remittances to meet basic food needsYes1119.9579.65410.10.219
No96084.751186.144983.3
Done before625.5264.3366.7
In the past 30 days, spending less money on other needs to meet basic food needsYes43238.122638.120638.10.707
No61154.032454.628753.3
Done before898.0437.3468.6
In the past 30 days, selling household assets to meet basic food needsYes43238.122638.120638.10.707
No61154.032454.628753.3
Done before898.0437.3468.6
In the past 30 days, selling productive assets to meet basic food needsYes27324.410016.817332.00.000
No80370.547379.733061.2
Done before585.2213.5376.8
In the past 30 days, taking high risk jobs to meet basic food needsYes19617.8518.714526.90.000
No90979.853389.837669.7
Done before272.591.6183.3
In the past 30 days, doing any type of labor to meet basic food needsYes23821.57312.316530.60.000
No85875.251186.034764.4
Done before373.4101.7275.1
In the past 30 days, sending adult household members to beg to meet basic food needsYes292.720.3275.10.000
No107795.057496.750393.3
Done before272.4183.091.7
In the past 30 days, sending children household members to beg to meet basic food needsYes544.9101.6448.10.000
No105292.856695.448690.1
Done before282.4183.0101.8
In the past 30 days, asking charity for food to meet basic food needsYes12711.18113.7468.50.012
No96184.949483.246786.6
Done before454.0193.1264.9
In the past 30 days, receiving E-cards from UN to meet basic food needsYes736.6203.3539.80.000
No101689.654892.346886.8
Done before443.9264.4183.4
Food-based coping strategies in the previous 7 days
Eating cheaper foodsfewer than 3 days48076.621076.427076.7
4 days and more14723.56523.68223.3
Borrowing foodfewer than 3 days24982.19679.015385.2
4 days and more5317.92621.02714.8
Eating less meals to spare food for children fewer than 3 days40874.016973.223974.7
4 days and more14326.16226.88125.3
Eating small amounts fewer than 3 days38074.815871.922277.6
4 days and more12625.36228.16422.4
Adults only eat less to spare food for children fewer than 3 days33768.212864.120972.3
4 days and more15231.87235.98027.7
Table 6. Backwards Odds ratios (OR) according to food consumption score (borderline is merged with poor category).
Table 6. Backwards Odds ratios (OR) according to food consumption score (borderline is merged with poor category).
Food Consumption Score
Food Security CorrelatesOR95% C.I. for EXP(B)p-Value
LowerUpper
Age Categories <0.001
55 + vs. [14–19]0.0380.1970.7450.005
[35–54] vs. [14–19]0.0360.1990.6710.001
[25–34] vs. [14–19]0.5070.2700.9490.034
[20–24] vs. [14–19]0.6290.2471.6060.333
Education <0.001
University educated vs. non-university educated2.3541.5903.484<0.001
Place of Living 0.001
Beirut vs. Akkar0.7210.3421.5200.391
Mount Lebanon vs. Akkar1.0070.4202.4120.988
North vs. Akkar0.6310.2581.5430.313
South vs. Akkar 0.3450.1630.7270.005
Bekaa vs. Akkar1.2130.3434.2890.765
Nabatieh vs. Akkar0.7240.1673.1380.666
Baalbeck vs. Akkar0.3740.1321.0620.065
Number of Children <0.001
0 children vs. having fewer than 3 children1.8351.2662.6590.001
Having more than 3 children vs. having fewer than 3 children4.2122.5586.639<0.001
Incurring debts <0.001
Incurring debts vs. not incurring 2.7211.9373.824<0.001
Time to reach market
more than 1 h vs. less than 1 h0.0930.0150.5880.12
Income <0.001
no income vs. more than USD 2000 0.2810.1700.465<0.001
less than 3 million vs. more than USD 2000 0.1260.0530.298<0.001
more than 3 million vs. more than USD 2000 0.4810.2540.9090.024
less than USD 2000 vs. more than USD 20000.1140.0420.305<0.001
Table 7. Socio–demographic and socio–economic characteristics of the survey respondents as overall and by gender.
Table 7. Socio–demographic and socio–economic characteristics of the survey respondents as overall and by gender.
N%
GenderFemale72952.5
Male65947.5
EducationElementary44532.1
High school22416.1
Illiterate14310.3
Primary31022.3
University26619.2
Marital statusDivorced745.3
Married100972.7
Single23917.2
Widowed664.8
Family members3 and less33223.9
4 or more105676.1
Number of children3 or less103074.6
4 and more35025.4
Number of rooms3 and less115283.0
4 and more23617.0
OccupationFired43731.5
House-wife/men60743.7
Student654.7
Working27920.1
Health fieldNo128192.3
Yes1077.7
Medical insuranceNo health insurance98771.1
Other public insurance342.4
Private insurance413.0
Social security32623.5
Alcohol0 cups per day136198.1
less than 2 cups per d241.7
more than 2 cups per d30.2
CigaretteNon smoker00.0
1–1094668.2
10–3031122.4
more than 301319.4
BlastNo15511.2
Yes123388.8
Table 8. Factors affecting the food security status of the study population.
Table 8. Factors affecting the food security status of the study population.
Pearson Chi-Square Tests
Family MembersNumber of ChildrenEducationOccupation
Which of these sentences applies the most to the food eaten by your household in the past 6 months?Sig.0.0380.0560.0000.000
In the last 6 months, was there a time when you were concerned that you would run out of food for your household for the next month?Sig.0.0690.0010.0000.000
Did the following statement apply to your household in the last 6 months? “The food that we bought was not enough and we didn’t have money to get more.”Sig.0.1070.0660.0000.000
Are there any foods you feel your family does not eat enough of?Sig.0.1160.0230.0000.000
In the past 6 months, did you or any other adult in your household ever cut the size of your meal because there was not enough food?Sig.0.3490.1130.0000.000
In the past 6 months, did you or any other adult ever skip a meal because there was not enough food?Sig.0.1020.0070.0000.000
In the past 6 months did you or any adult in your household not eat for a whole day or go to bed hungry because there was not enough food?Sig.0.2790.0020.0000.000
During the last 6 months, was there a time when you or any adult in your household were unable to eat healthy and nutritious food because of a lack of money or other resources?Sig.0.7580.3050.0000.000
During the last 6 months, was there a time when you or any adult in your household were hungry but did not eat because there was not enough money or other resources for food?Sig.0.1590.0000.0000.000
During the last 6 months, was there a time when you or any adult in your household went without eating for a whole day because of a lack of money or other resources?Sig.0.3210.0200.0000.000
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Hoteit, M.; Al-Atat, Y.; Joumaa, H.; Ghali, S.E.; Mansour, R.; Mhanna, R.; Sayyed-Ahmad, F.; Salameh, P.; Al-Jawaldeh, A. Exploring the Impact of Crises on Food Security in Lebanon: Results from a National Cross-Sectional Study. Sustainability 2021, 13, 8753. https://doi.org/10.3390/su13168753

AMA Style

Hoteit M, Al-Atat Y, Joumaa H, Ghali SE, Mansour R, Mhanna R, Sayyed-Ahmad F, Salameh P, Al-Jawaldeh A. Exploring the Impact of Crises on Food Security in Lebanon: Results from a National Cross-Sectional Study. Sustainability. 2021; 13(16):8753. https://doi.org/10.3390/su13168753

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Hoteit, Maha, Youssef Al-Atat, Hussein Joumaa, Suheir El Ghali, Rania Mansour, Reem Mhanna, Fatima Sayyed-Ahmad, Pascale Salameh, and Ayoub Al-Jawaldeh. 2021. "Exploring the Impact of Crises on Food Security in Lebanon: Results from a National Cross-Sectional Study" Sustainability 13, no. 16: 8753. https://doi.org/10.3390/su13168753

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