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Predictors of households at risk for food insecurity in the United States during the COVID-19 pandemic

Published online by Cambridge University Press:  27 January 2021

Brianna N Lauren
Affiliation:
Division of General Medicine, Department of Medicine, Columbia University Irving Medical Center, 622 W 168th St, PH9E-105, New York, NY10032, USA
Elisabeth R Silver
Affiliation:
Division of General Medicine, Department of Medicine, Columbia University Irving Medical Center, 622 W 168th St, PH9E-105, New York, NY10032, USA
Adam S Faye
Affiliation:
Division of Digestive and Liver Diseases, Department of Medicine, Columbia University Irving Medical Center, New York, NY, USA
Alexandra M Rogers
Affiliation:
Division of General Medicine, Department of Medicine, Columbia University Irving Medical Center, 622 W 168th St, PH9E-105, New York, NY10032, USA
Jennifer A Woo-Baidal
Affiliation:
Division of Pediatric Gastroenterology, Hepatology, and Nutrition, Department of Pediatrics, Columbia University Irving Medical Center, New York, NY, USA
Elissa M Ozanne
Affiliation:
Department of Population Health Sciences, University of Utah, School of Medicine, Salt Lake, UT, USA
Chin Hur*
Affiliation:
Division of General Medicine, Department of Medicine, Columbia University Irving Medical Center, 622 W 168th St, PH9E-105, New York, NY10032, USA Division of Digestive and Liver Diseases, Department of Medicine, Columbia University Irving Medical Center, New York, NY, USA Herbert Irving Comprehensive Cancer Center, Columbia University Irving Medical Center, New York, NY, USA
*
*Corresponding author: Email [email protected]
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Abstract

Objective:

To examine associations between sociodemographic and mental health characteristics with household risk for food insecurity during the COVID-19 outbreak.

Design:

Cross-sectional online survey analysed using univariable tests and a multivariable logistic regression model.

Setting:

The United States during the week of 30 March 2020.

Participants:

A convenience sample of 1965 American adults using Amazon’s Mechanical Turk platform. Participants reporting household food insecurity prior to the pandemic were excluded from analyses.

Results:

One thousand two hundred and fifty participants reported household food security before the COVID-19 outbreak. Among this subset, 41 % were identified as at risk for food insecurity after COVID-19, 55 % were women and 73 % were white. On a multivariable analysis, race, income, relationship status, living situation, anxiety and depression were significantly associated with an incident risk for food insecurity. Black, Asian and Hispanic/Latino respondents, respondents with an annual income <$100 000 and those living with children or others were significantly more likely to be newly at risk for food insecurity. Individuals at risk for food insecurity were 2·60 (95 % CI 1·91, 3·55) times more likely to screen positively for anxiety and 1·71 (95 % CI 1·21, 2·42) times more likely to screen positively for depression.

Conclusions:

An increased risk for food insecurity during the COVID-19 pandemic is common, and certain populations are particularly vulnerable. There are strong associations between being at risk for food insecurity and anxiety/depression. Interventions to increase access to healthful foods, especially among minority and low-income individuals, and ease the socioemotional effects of the outbreak are crucial to relieving the economic stress of this pandemic.

Type
Research paper
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Copyright
© The Author(s), 2021. Published by Cambridge University Press on behalf of The Nutrition Society

As the economic consequences of the COVID-19 pandemic ripple through the United States, foodbanks across the country have reported unprecedented demand, with many distribution centres falling short of community need(Reference Kulish1,Reference Zhou2) . Unemployment has skyrocketed to Depression-era rates(Reference Long and Van Dam3), and schools offering free or reduced-price meals have closed, potentially leaving households more vulnerable to food insecurity than ever before.

Emerging national data demonstrate an increase in household food insecurity across the country. During the week of 7 May 2020, the US Census Bureau received almost 42 000 responses to their Household Pulse Survey. This survey estimated that 10 % of US adults experienced food scarcity in the past 7 d(Reference Fields, Hunter-Childs and Tersine4), although other national surveys have reported even higher numbers. The COVID Impact Survey, conducted by NORC at the University of Chicago for the Data Foundation, recruited a nationally representative sample of 2190 adults during the week of 20 April. Within this sample, 28 % reported often or sometimes worrying about food running out within the past 30 d. In addition, 22 % reported that food often or sometimes did not last and they did not have money to buy more(Reference Wozniak, Willey and Benz5). Finally, about 9000 non-elderly adults responded to the Urban Institute’s nationally representative Health Reform Monitoring Survey between 25 March and 10 April, which found that 21·9 % of respondents reported household food insecurity(Reference Karpman, Zuckerman and Gonzalez6).

Past work examining food insecurity in the wake of major natural disasters in the United States has found that risk factors for becoming food-insecure include race/ethnicity (particularly black and Hispanic/Latino individuals), lower household income, poorer mental health and poorer physical health(Reference Clay, Papas and Gill7,Reference Clay and Ross8) . The COVID-19 pandemic has disproportionately impacted these same communities(Reference Mays and Newman9). The Health Reform Monitoring Survey found that black and Hispanic adults were more than twice as likely to report household food insecurity compared to non-Hispanic white adults (33·9 % and 33·3 % v. 16·3 %, respectively)(Reference Karpman, Zuckerman and Gonzalez6). During the week of 19 March 2020, researchers from the University of Michigan School of Public Health found that 44 % of low-income US adults with <250 % of the Federal Poverty Line were food-insecure, and another 20 % reported only marginal food security(Reference Wolfson and Leung10). As with past major disasters, the pandemic exacerbates existing systemic inequalities in access to material resources that support health and well-being.

Food insecurity is associated with poor health outcomes, including CVD, BMI >30 and diabetes(Reference Gundersen and Ziliak11,Reference Mendy, Vargas and Cannon-Smith12) . These conditions are associated with developing severe COVID-19 symptoms(Reference Wang, Fang and Cai13). Thus, identifying those who are most vulnerable to household food insecurity amid the economic fallout of COVID-19 is of crucial public health importance. To this end, we conducted a cross-sectional survey of American adults to assess sociodemographic characteristics associated with incident household food insecurity in the wake of the COVID-19 outbreak.

Methods

We conducted a cross-sectional survey of American adults through Amazon’s Mechanical Turk (MTurk), an online labour market of over 225 000 US workers who complete online tasks and surveys(Reference Robinson, Rosenzweig and Moss14). Participants were recruited using convenience sampling. MTurk workers were invited to take part in an online survey, administered using Qualtrics, that included questions regarding demographics, social distancing, food security before and after the COVID-19 outbreak and anxiety and depression (described below in Measures and in the Supplementary Material). Surveys were completed between 30 March 2020 and 2 April 2020, after many states had imposed stay-at-home orders(Reference Mervosh, Lu and Swales15). Participants were compensated with $0·50 for completing the survey, which took 10–15 min to complete.

Measures

Demographics

Demographic variables included age, gender, race/ethnicity, annual household income, postal code, relationship status, employment status at time of survey and whether participants lived with children of age <18.

Household risk for food insecurity

We assessed household risk for food insecurity using a validated two-item screen(Reference Hager, Quigg and Black16). Households at risk for food insecurity were defined as those with responses of ‘sometimes true’ or ‘often true’ for either or both items. Participants reported answers to each of these questions for the periods before and after the COVID-19 outbreak.

Anxiety and depression

Anxious and depressive symptoms were assessed as part of the PROMIS-29 +2 (PROPr) scale(Reference Dewitt, Feeny and Fischhoff17). Participant responses were expected to reflect their mental state at the time of the survey. Based on past work(Reference Beleckas, Wright and Prather18), anxiety subscale t-scores ≥62·3 were categorized as positive for anxiety, and depression subscale t-scores ≥59·9 were categorized as positive for depression.

Additional measures

Additional survey questions asked respondents about the effect of COVID-19 on diet, exercise and health-related quality of life. A descriptive report of findings from these measures is currently under review. These variables were not included in the present analyses as they were unrelated to our primary aims.

Analysis

Univariable analysis

The study population was restricted to respondents with household food security before the COVID-19 outbreak. We compared baseline demographic characteristics and anxiety and depression across respondents with and without incident household risk for food insecurity. We used χ 2 tests of independence for categorical variables, and Fisher’s exact test when expected values were ≤5. Respondents with missing data for a particular analysis were excluded. Statistical significance was defined as P < 0·05.

Multivariable analysis

We constructed a multivariable logistic regression model assessing household risk for food insecurity as our outcome variable. Gender and age were included as covariables a priori. We included additional demographic characteristics if P < 0·20 on univariable analyses. Respondents with missing data for included variables were excluded from the model. Statistical testing was performed in R (version 3.6.3).

Results

A total of 1965 participants across the United States completed our survey between 30 March and 2 April 2020. Among the total survey respondents, 1250 (63 %) reported household food security before the outbreak. Subsequent analyses were based on this subset of the population.

Within the population of food-secure participants pre-COVID-19, 55 % identified as female, 72 % were between the ages of 25 and 55, 73 % were white, 11 % were Asian, 6 % were black and 6 % were Hispanic. In addition, 65 % reported an annual household income of >$50 000, and 63 % reported full-time employment at the time of the survey. Roughly 41 % of previously food-secure participants were identified as at risk for food insecurity after the outbreak (Table 1). Figure 1 illustrates the change in household risk for food insecurity by annual income level after the COVID-19 outbreak. Respondents at each income level reported incident risk for food insecurity, ranging from 26 % to 48 % of the population at different income levels.

Table 1 Summary of sample characteristics

Fig. 1 Effect of COVID-19 on household risk for food insecurity by income (n 1250). , became at risk for food insecurity; , stayed food-secure

On an univariable analysis, age, race, income, living situation, anxiety and depression were most strongly associated with incident household risk for food insecurity (Table 2). Respondents aged 25–34 represented a larger percentage of the population with incident household risk for food insecurity compared to the population without (33 % v. 29 %, respectively; P < 0·01). Racial/ethnic minorities and respondents with lower incomes also represented larger proportions of individuals with incident household risk for food insecurity (P < 0·01). Respondents living with children or others represented the largest proportions of the population with an incident risk for food insecurity (35 % and 51 %, respectively; P < 0·01). Among the participants identified as at risk for food insecurity, 49 % screened positive for anxiety compared to 23 % of participants who remained food-secure (P < 0·01). Similarly, 33 % of participants identified as at risk for food insecurity screened positive for depression compared to 15 % of participants who remained food-secure (P < 0·01). Employment status and region were also significantly associated with incident household risk for food insecurity (P = 0·049 and 0·015, respectively).

Table 2 Summary of univariable analysis of sample characteristics by household risk of food insecurity

* Percentages may not sum to 100 due to missing cases.

Two-tailed P-values.

On a multivariable analysis, race, income, living situation, relationship status, anxiety and depression were all independently associated with an incident risk for food insecurity (Fig. 2). Black, Asian and Hispanic respondents were significantly more likely to experience an incident risk for food insecurity compared to white respondents (adj. OR (95 % CI): 2·12 (1·24, 3·66); 2·22 (1·47, 3·34); and 2·13 (1·26, 3·63), respectively). Relative to those with an annual income >$150 000, those with annual incomes <$100 000 were significantly more likely to be newly at risk for food insecurity, with the greatest effect observed for those with annual incomes <$20 000 (adj. OR 4·01, 95 % CI 1·97, 8·34). In addition, respondents who were married or co-habitating were significantly more likely to experience an incident household risk for food insecurity compared to single/casually dating respondents (OR 1·61, 95 % CI 1·09, 2·40). Respondents living with children or others were also significantly more likely to be newly at risk for food insecurity compared to those living alone (adj. OR (95 % CI): 1·84 (1·14, 2·97) and 1·62 (1·08, 2·44), respectively). Finally, respondents screening positive for anxiety or depression were significantly more likely to report an incident household risk for food insecurity (OR (95 % CI): 2·60 (1·91, 3·55) and 1·71 (1·21, 2·42), respectively).

Fig. 2 Summary of multivariable analysis of sample characteristics by household risk for food insecurity (n 1250)

Discussion

In this cross-sectional survey of American adults, we found that 41 % of previously food-secure respondents became newly at risk for food insecurity following the COVID-19 outbreak. By contrast, the USDA reported that only 11 % of total US households were food-insecure in 2018(Reference Coleman-Jensen, Rabbitt and Gregory19). Our results suggest that this percentage will rise steeply as many more households become newly vulnerable during COVID-19. The risk for incident food insecurity was significantly higher among black, Asian and Hispanic participants, as well as respondents who were married or co-habitating, living with children or others or reported household incomes <$100 000 at the time of the survey. In addition, there was a significant association between incident household risk for food insecurity and screening positive for anxiety or depression. These results suggest that the COVID-19 pandemic exacerbates existing societal inequalities, with potential downstream consequences for health and pandemic recovery efforts.

Emerging data suggest that black and Hispanic individuals are disproportionately impacted by the COVID-19 pandemic(20). In New York City, the epicentre of COVID-19 in the United States at the time of this study, black and Hispanic/Latino COVID-19 patients are twice as likely to die of the disease than whites(Reference Mays and Newman9). Moreover, black and Hispanic populations are disproportionately affected by CVD(Reference Singh, Daus and Allender21), which is associated both with food insecurity(Reference Gundersen and Ziliak11,Reference Mendy, Vargas and Cannon-Smith12) and severe COVID-19 disease(Reference Wang, Fang and Cai13). While the results of our study provide further evidence of these disparities, it also suggests vulnerability among Asian populations as well. Black, Hispanic and Asian individuals were over twice as likely to be newly at risk for food insecurity, even after adjusting for other factors such as income and employment status. Targeted efforts to increase household food security among black, Hispanic and Asian communities are needed to alleviate the disproportionate impact of COVID-19 on people of colour.

In addition to highlighting existing disparities, our results underscore the far-reaching impacts of COVID-19. Among respondents with an annual household income between $50 000 and $100 000, 43 % experienced an incident household risk for food insecurity after the outbreak. This proportion was lower for respondents with an annual household income >$150 000, but still remained at a surprising 26 %. By contrast, the USDA reported only 5·4 % of households with annual incomes at or above 185 % of the federal poverty line ($47 110 for a family of four) experienced household food insecurity in 2018(Reference Coleman-Jensen, Rabbitt and Gregory19). While the rate of risk for food insecurity we found (41 %) was lower than those reported a week earlier by Wolfson and Leung(Reference Wolfson and Leung10), our sample included both high- and low-income individuals and excluded those who had been food-insecure before the COVID-19 outbreak. As a result, we were able to distinguish incident from chronic food insecurity, highlighting the extent and acute nature of the pandemic’s effects – many Americans, even those in higher income brackets, are becoming newly vulnerable to household food insecurity.

Our finding regarding the relationship between risk for food insecurity and anxiety/depression is consistent with past work documenting a bidirectional relationship between food insecurity and poor mental health and emotional well-being(Reference Bruening, Dinour and Chavez22). More specifically, our study found that respondents experiencing an incident household risk for food insecurity were roughly twice as likely to experience anxiety or depression, even after controlling for other factors. This is of particular concern as previous studies have demonstrated the negative effect both food insecurity and parental depressive symptoms have on the physical health and future developmental, behavioural and psychiatric function of children(Reference Thomas, Miller and Morrissey23,Reference Stickley and Leinsalu24) . Given that the relationship between poor mental health and food insecurity is exacerbated by social isolation(Reference Martin, Maddocks and Chen25), increasing the accessibility of mental healthcare during this time may augment more direct efforts to bolster food security and, in turn, support child health and development initiatives as well.

Our study has limitations. First, our cross-sectional approach precludes causality inferences and relies on retrospective reports of food insecurity prior to the COVID-19 outbreak. Second, we collected data through MTurk, potentially creating a response bias and limiting the generalizability of our findings. Our sample included proportionally fewer black and Hispanic individuals (6 % v. 13 % and 6 % v. 18 %, respectively) and proportionally more Asian individuals (11 % v. 6 %) than the larger US population(26). The survey did not specify whether participants were immigrants or born in the United States, limiting our ability to analyse the risk for food insecurity among immigrants, a particularly vulnerable subgroup(Reference Berube and Bateman27). Our data collection method also restricted our sample to English-competent respondents with internet access. Those segments of the population with limited English proficiency(28) and those who are least likely to have internet access (people of colour, low-income adults, those without high school diplomas and those living in rural areas)(Reference Anderson, Perrin and Jiang29) were, therefore, invisible to our study. Moreover, our data were collected in late March, when the economic impacts of the outbreak were just beginning to affect many nationwide. We hypothesize that this may partially explain the unexpected result that unemployment was not a predictor of an incident risk for food insecurity. Although the validated food insecurity screening questions that we used in our study specifically referenced an ability to afford food (rather than an inability to buy or find food due to shortages), our finding of an increased risk of food insecurity among those with an annual income between $50 000 and $100 000 is also surprising. Given the nationwide food shortages that were occurring at this time, it is possible that participants’ inability to find food could have led to an overestimation of their risk for food insecurity. Additionally, because we did not specify a timeframe for these earnings, participants’ responses may reflect historical income rather than concurrent changes in annual income resulting from the pandemic. The documented stress and anxiety also could have influenced the way participants responded to the screening questions. Lastly, the use of the two-item screener rather than the eighteen-item US Household Food Security Module limited our ability to definitively classify participants’ household food security. Nevertheless, the screener allowed us to quickly identify those at risk for food insecurity and glimpse into the acute changes happening in US households. Continued research on the effects of the pandemic on food insecurity and how best to mitigate many households’ newfound risk, particularly in larger community-based samples, is necessary to fully understand its impacts and respond effectively.

Our study quantifies the effects of COVID-19 on the risk for food insecurity among a subset of US households and highlights associated risk factors. Our results suggest that the economic and socioemotional fallout of the pandemic has made many households newly vulnerable, with minorities, low-income individuals and those with poorer mental health at higher risk. As such, targeted relief efforts are needed as we look towards economic recovery.

Acknowledgements

Acknowledgements: Not applicable. Financial support: This research received no specific grant from any funding agency, commercial or not-for-profit sectors. Conflict of interest: There are no conflicts of interest. Authorship: B.N.L.: conceptualization, study design, analysis, manuscript writing and editing; E.R.S.: conceptualization, study design, analysis, manuscript writing and editing; A.S.F.: analysis, manuscript editing; A.M.R.: manuscript writing and editing; J.A.W.B.: study design, manuscript editing; E.M.O.: study design, manuscript editing; C.H.: conceptualization, study design, analysis, manuscript writing and editing, supervision. Ethics of human subject participation: This study was conducted according to the guidelines laid down in the Declaration of Helsinki, and all procedures involving research study participants were approved by the Columbia University Institutional Review Board. Electronic informed agreement to participate was obtained from participants.

Supplementary material

For supplementary material accompanying this paper visit https://doi.org/10.1017/S1368980021000355

Footnotes

Brianna N Lauren and Elisabeth R Silver contributed equally.

References

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Figure 0

Table 1 Summary of sample characteristics

Figure 1

Fig. 1 Effect of COVID-19 on household risk for food insecurity by income (n 1250). , became at risk for food insecurity; , stayed food-secure

Figure 2

Table 2 Summary of univariable analysis of sample characteristics by household risk of food insecurity

Figure 3

Fig. 2 Summary of multivariable analysis of sample characteristics by household risk for food insecurity (n 1250)

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