The Food and Agricultural Organization of the United Nations defines food insecurity as lack of regular access to safe enough and nutritious food for normal growth and development and an active and healthy life(1). In 2019, 10 % of households in the USA experienced food insecurity(Reference Coleman-Jensen, Rabbitt and Gregory2), and one in five of these households included an older adult(Reference Hartline-Grafton3). Food insecurity disproportionately affects low-income households(Reference Coleman-Jensen, Rabbitt and Gregory2) and older adults with low income are particularly vulnerable to food insecurity due to factors such as social isolation, lack of transportation, disability and poor health(Reference Vilar-Compte, Gaitán-Rossi and Pérez-Escamilla4). Experiencing food insecurity is associated with malnourishment, poor chronic disease management(Reference Gundersen and Ziliak5) and all-cause mortality(Reference Banerjee, Radak and Khubchandani6). Therefore, reducing food insecurity could improve overall health in this population.
Studies across North America have suggested that specific chronic conditions such as cancer, CVD, diabetes, high blood pressure and chronic lung disease are associated with food insecurity(Reference Gucciardi, Vogt and DeMelo7–Reference Mendy, Vargas and Cannon-Smith13). For older adults, burden of chronic conditions, measured by having multiple chronic conditions (MCC), has also been linked to higher levels of food insecurity(Reference Jih, Stijacic-Cenzer and Seligman14–Reference Tarasuk, Mitchell and McLaren16). Evaluating the extent to which MCC and food insecurity are associated is important considering that almost two-thirds of adults 65 years or older in the USA have MCC(Reference Boersma, Black and Ward17). It has been hypothesised that food insecurity may contribute to chronic disease risk through stress and poor diet(Reference Jih, Stijacic-Cenzer and Seligman14,Reference Tarasuk, Mitchell and McLaren16) , and that chronic disease may contribute to food insecurity among lower-income populations through high health care costs which leave less disposable income for food(Reference Leung, Kullgren and Malani15). Additionally, having lower income or wealth is a common cause of both food insecurity(Reference Wight, Kaushal and Waldfogel18) and chronic disease(Reference Oates, Jackson and Partridge19).
Unlike most other high-income nations, the USA lacks universal healthcare coverage(Reference Weaver, Nandakumar and Joffe20). Instead, the US health care system is unaffordable and inaccessible particularly for historically marginalised communities(Reference Derose, Gresenz and Ringel21). However, for individuals with MCC, the health care setting may be a critical venue for addressing unmet social determinants of health such as food insecurity(Reference Alley, Asomugha and Conway22). In one US study, not having enough money for balanced meals was associated with lower health care access and quality(Reference Cole and Nguyen23). For low-income individuals with MCC, the potential impact of health care access on food insecurity is twofold. First, health care coverage reduces personal health care spending which in turn may diminish the need to choose between health care and food. Second, access to health care may provide an opportunity to be screened for food insecurity(Reference Pooler, Hoffman and Karva24) and connected with resources that address food insecurity, such as the Supplemental Nutrition Assistance Program (SNAP) in the USA, meal programmes, fruit and vegetable financial incentive programmes or charitable food sources. Identifying which aspects of healthcare access is associated with food insecurity among older adults with MCC may inform more targeted screening methods and interventions to improve the health of a highly vulnerable population.
The first aim of this study was to investigate the relationship between MCC and food insecurity using data from the 2019 Washington State (WA) Behavioral Risk Factor Surveillance System (BRFSS) survey. We hypothesised that food insecurity would be more prevalent among lower-income older adults with MCC compared to lower-income older adults without MCC. The second aim of this study was to determine, among lower-income older adults with MCC, if health care access was associated with food insecurity. We hypothesised that food insecurity would be more prevalent among individuals with MCC and poorer health care access compared to those with MCC and better access. To our knowledge, no studies have examined the association between health care access and food insecurity among older adults with MCC.
Methods
Study design and data source
We used cross-sectional data from the 2019 WA BRFSS survey to examine the association between MCC and food insecurity among lower-income older adults (WA Department of Health, Center for Health Statistics, Behavioral Risk Factor Surveillance System, supported in part by the Centers for Disease Control and Prevention, Cooperative Agreement U58/DP006066–05 (2019)). BRFSS is an annual phone survey that samples non-institutionalised adults, 18 years or older, in the USA(25). BRFSS includes core questions (standardised questions every state and territory are required to use each year), optional modules (standardised questions that states and territories can optionally use) and state-added questions (state-specific questions selected to reflect state health priorities). Data about chronic health conditions and healthcare use are collected as core questions each year and food insecurity data were collected as a new WA state-added question in 2019.
Study population
Our study focused on lower-income older adults, 50 years or older, who lived in WA. Washington is a state in the northwest region of the USA and includes both highly populated metropolitan areas and rural agricultural areas. It is the thirteenth most-populated state in the USA with a population of more than 7·7 million people. Compared to the general USA, it has a higher socio-economic standing but the rural regions tend to have higher levels of poverty compared with the urban centers (about 20 % of the state population lives in rural regions) (26). We used annual household income as a percentage of the 2019 US Federal Poverty Level (% FPL)(27) to define which participants were lower income. We set the upper bound of lower income at 250 % FPL(Reference Silverman, Krieger and Kiefer28), corresponding to an annual income of $31 225 USD or less for an individual living alone in 2019. We excluded participants who had an income > 250 % FPL, missing responses to five or more of the chronic condition questions, or a missing response to the food insecurity question.
Measures
Exposures
There were two exposures of interest in this study. The first exposure was having MCC, which we defined as having ≥2 chronic conditions. BRFSS asks participants to self-report a history of eleven chronic health conditions: high blood pressure, high cholesterol, myocardial infarction, CHD, stroke, asthma, other cancers (excluding skin cancer), chronic obstructive pulmonary disease, kidney disease, diabetes and arthritis (Supplementary Table). For each condition, the participant was asked, ‘Have you EVER been told by a doctor, nurse or other health professional that you have/had (chronic condition)?’. Counting each affirmative response as one point, we created a variable for the total number of self-reported chronic conditions and then dichotomised it as has MCC (≥ 2) v. does not have MCC (0–1). The data source used for this study did not include items about medication use for every chronic condition we studied. However, a few of the chronic conditions, such as high blood pressure and high cholesterol, did ask about medication use. Within our study population that answered yes to either of these questions, 83·7 % and 62·4 % of the participants also responded yes to taking a medication for the condition which suggests that the majority of individuals with chronic conditions in the study were using medication.
The second exposure was healthcare access which was based on three questions: ‘Was there a time in the past 12 months when you needed to see a doctor but could not because of cost?’; ‘Do you have any kind of health care coverage, including health insurance, prepaid plans such as Health Maintenance Organisation, and government plans such as Medicare or Indian Health Service?’; and ‘Do you have one person you think of as your personal doctor or health care provider?’. Based on previous work(Reference Fang, Yang and Ayala29), the three healthcare access variables were coded so the exposed group would be poorer access: was unable to afford to see a doctor because of the cost v. was not unable to see a doctor because of cost; has no health care coverage v. has health care coverage; and does not have a primary care provider (PCP) v. has a PCP. In the USA, a PCP is a physician, nurse practitioner or physician assistant who has undergone primary care training. A PCP is the equivalent of a family practice or general practice physician in other countries.
Outcome
The outcome was food insecurity and was assessed based on the question, ‘The food that I/we bought just didn’t last, and I/we didn’t have money to get more.’ Was that often, sometimes or never true for you in the last 12 months?’ Participants who responded ‘often true’ or ‘sometimes true’ were categorised as experiencing food insecurity and participants who responded ‘never true’ were categorised as not experiencing food insecurity. This question is the second item from a two-item screener previously validated against the eighteen-item USDA Food Security Survey Module in paediatric settings(Reference Hager, Quigg and Black30). While it is customary to use both items from the screener to categorise individuals with an affirmative response to either item as food-insecure, our data source only used the second item. An affirmative response to the second item alone has a sensitivity of 82 % and a specificity of 95 %(Reference Hager, Quigg and Black30).
Confounders
We selected confounders a priori based on a minimum set of confounders identified using causal diagrams created separately for our two exposures (see online supplementary material, Supplemental Fig. 1 and 2). For our first exposure, MCC, we included the following confounders: sex, age, race/ethnicity, relationship status, educational attainment, employment status and annual household income as % FPL. For our analysis limited to those with MCC, we used the same set of confounders with the addition of metropolitan residence.
Sex was a binary variable (male, female) based on the BRFSS imputed version of the question, ‘Are you male or female?’. It is unclear whether survey participants answered their sex assigned at birth or gender identity(Reference Moseson, Zazanis and Goldberg31). We categorised age into two groups (50–64 years, ≥ 65 years). We categorised race/ethnicity as White Non-Hispanic (NH), Black NH, Asian NH, American Indian/Alaska Native NH, Hispanic, and Other NH. Relationship status was based on a question about marital status with six response options that we dichotomised into partnered (married, member of an unmarried couple) and not partnered (divorced, widowed, separated, and never married). Educational attainment was grouped into four categories (did not complete high school, high school degree or general equivalency diploma (GED), some college, college degree or higher). Employment status had three categories (employed, unemployed and retired), where ‘employed’ included those who were employed for wages or self-employed and ‘unemployed’ included those who were out of work, homemakers or those who were unable to work. We calculated annual household income as % FPL. The FPL is set annually by the US Department of Health and Human Services and is calculated based on household size(27). Since BRFSS measures income as a categorical variable, we used a random uniform distribution to assign a continuous income value to each individual based on their income category. This method has been shown to accurately estimate % FPL in low-income populations(Reference Hest32). Based on prior work(Reference Seligman, Laraia and Kushel8), we then categorised % FPL into five groups (< 51 %, 51–100 %, 101–130 %, 131–200 % and 201–250 %), with the additional delineation of the 201–250 % category to account for the eligibility cutoff for WA food assistance at < 200 % FPL(33). Metropolitan residence (metropolitan and non-metropolitan) was based on the two-tiered rural-urban commuting area (RUCA) scale which was developed to compare population size and commuting patterns of different census tracts based on zip code(34).
Statistical analysis
We excluded any participants with ‘don’t know,’ ‘refused’ or missing responses for the confounder variables included in each analysis (available-case analysis). First, we conducted descriptive analyses by estimating the weighted prevalence of MCC in the total study population and within confounder subgroups. Weights were based on BRFSS survey design weighting that is performed to account for bias from selection probabilities, noncoverage and demographic differences between the sample population and the source population(35). Then, we used modified Poisson regression(Reference Zou36) to generate unadjusted prevalence ratios and confounder-adjusted prevalence ratios with 95 % CI. For our first aim, MCC was the exposure and food insecurity was the outcome. For our second aim, MCC was an inclusion criterion, poorer health care access was the exposure and food insecurity was the outcome. We chose modified Poisson regression because it is reliable with small sample sizes and accounts for overdispersion which is common in binary outcome data(Reference Zou36). We used R version 4.0.3 for all statistical analyses.
Results
There were 2326 lower-income older adults who participated in the WA BRFSS survey in 2019. All respondents answered five or more of the chronic condition questions. We excluded 208 (8·9 %) individuals because they had a missing response for food insecurity. Our final sample consisted of 2118 lower-income older adults.
Among the lower-income older adults living in WA in this study, 1580 had MCC (weighted prevalence = 81·8 %). Almost half (44·6 %) of study participants were male, 52·0 % were 50–64 years old and 44·7 % were partnered (Table 1). The majority of study participants were White NH (74·3 %), unemployed or retired (71·9 %), and resided in metropolitan areas (78·3 %). Respondents with MCC were more likely to be older, not partnered, unemployed or retired, and have an annual household income < 101 % FPL compared to those who did not have MCC.
GED, general equivalency diploma; FPL, Federal Poverty Level.
* We defined lower-income as < 250 % FPL (corresponding to an annual income of $31 225 USD or less for an individual living alone in 2019) and included older adults who were at least 50 years old.
† At least two chronic conditions from a list eleven chronic conditions: high blood pressure, high cholesterol, myocardial infarction, CHD, stroke, asthma, any cancer (excluding skin cancer), chronic obstructive pulmonary disease, kidney disease, diabetes and arthritis.
‡ This binary variable is an imputed version of the question that asked ‘Are you male or female?’ on the Behavioral Risk Factor Surveillance System survey. It is unclear if a participant would answer the question based on their gender identity or sex assigned at birth.
§ Includes individuals who are married and members of an unmarried couple.
|| Includes individuals who are divorced, widowed, separated, and never married.
¶ Includes self-reported homemakers, students, or those unable to work.
** The FPL is set annually by the US Department of Health and Human Services and is calculated based on household size.
†† Derived from the Rural-Urban Commuting Area (RUCA).
The prevalence of food insecurity among all lower-income older adults in the study was 26·0 %. The prevalence of food insecurity was greater among lower-income older adults with MCC compared to those without MCC (29·1 % v. 17·5 %; prevalence ratio = 1·66; 95 % CI 1·26, 2·18) (Table 2). After adjusting for sex, age, race/ethnicity, relationship status, educational attainment, employment status and annual household income as % FPL, the prevalence of food insecurity was 1·50 times greater (95 % CI 1·16, 1·95) among participants with MCC compared to those without MCC.
PR, prevalence ratio; % FPL, Percentage of the Federal Poverty Level.
The sample sizes for the unadjusted PR and the adjusted PR were 2118 and 2111, respectively.
* We defined lower-income as < 250 % FPL (corresponding to an annual income of $31 225 USD or less for an individual living alone in 2019) and included older adults who were at least 50 years old.
† At least two chronic conditions from a list eleven chronic conditions: high blood pressure, high cholesterol, myocardial infarction, CHD, stroke, asthma, any cancer (excluding skin cancer), chronic obstructive pulmonary disease, kidney disease, diabetes and arthritis.
‡ Adjusted for sex, age, race/ethnicity, relationship status, educational attainment, employment status and annual household income as %FPL.
Almost half of lower-income older adults with MCC who reported they were unable to afford visiting a doctor in the past 12 months also reported food insecurity compared to only 24·8 % of those who were able to afford a doctor in the past 12 months (adjusted prevalence ratio 1·83; 95 % CI 1·46, 2·28) (Table 3). The unadjusted prevalence ratio between not having health care coverage and food insecurity was 1·73 (95 % CI 1·26, 2·39). After adjusting for the confounders, the association was attenuated (adjusted prevalence ratio 1·49; 95 % CI 0·98, 2·24). The prevalence of food insecurity did not significantly differ between the lower-income older adults with MCC who did not and did have a PCP (adjusted prevalence ratio 1·10; 95 % CI 0·77, 1·57).
PR, prevalence ratio; %FPL, Percentage of the Federal Poverty Level.
For inability to afford seeing a doctor in the past 12 months, the sample sizes for the unadjusted PR and adjusted PR were 1575 and 1535, respectively. For health care coverage, the sample sizes for the unadjusted PR and adjusted PR were 1579 and 1539, respectively. For a primary health care provider, sample sizes for the unadjusted PR and adjusted PR were 1573 and 1533, respectively.
* We defined lower-income as < 250 % FPL (corresponding to an annual income of $31 225 USD or less for an individual living alone in 2019) and included older adults who were at least 50 years old.
† At least two chronic conditions from a list eleven chronic conditions: high blood pressure, high cholesterol, myocardial infarction, CHD, stroke, asthma, any cancer (excluding skin cancer), chronic obstructive pulmonary disease, kidney disease, diabetes and arthritis.
‡ Adjusted for sex, age, race/ethnicity, relationship status, educational attainment, employment status, annual household income as %FPL and metropolitan residence.
Discussion
Among the lower-income older adults in this study, the prevalence of food insecurity was higher among participants who had MCC compared to those who did not have MCC. This finding is consistent with findings from other studies among low-income older adults(Reference Jih, Stijacic-Cenzer and Seligman14–Reference Tarasuk, Mitchell and McLaren16). The high healthcare and medication costs associated with having MCC may be one reason that this population faces a high burden of food insecurity. The association of MCC and food insecurity could also be bidirectional. Financial strains stemming from high healthcare costs could lead to food insecurity, and the poor nutrition resulting from food insecurity could also put individuals at a greater risk of developing chronic disease. Addressing the common systemic causes of food insecurity and chronic conditions (e.g. unaffordable health care, low-income or wealth, housing instability and structural racism) is crucial to alleviate the burden of food insecurity in lower-income older adults in the USA.
We found that being unable to afford to see a doctor was associated with food insecurity, which lends support to our hypothesis that financial insecurity could be a common cause of food insecurity and chronic conditions among older adults. Similar to our finding, at least two previous studies have found that food-insecure older adults were more likely to have cost-related non-adherence to medication compared to their food-secure counterparts(Reference Afulani, Herman and Coleman-Jensen37,Reference Bengle, Sinnett and Johnson38) . The consequences of food-insecure individuals with MCC being unable to afford visiting a doctor and being non-adherent to medication potentially include exacerbation of existing chronic conditions and more severe impacts of chronic disease such as hospitalisation or death. Each of these consequences may contribute to increased personal health care spending and perpetuate a feedback loop of poor health, financial hardship and food insecurity. In addition to the financial costs of MCC, patients likely also face time and opportunity costs due to MCC, which may contribute to food insecurity. These include spending more time getting to doctor’s appointments and to the pharmacy to pick up prescriptions (i.e. transportation costs), inability to work full time or to find work that accommodates limitations imposed by medical conditions and chronic disease management tasks such as checking insulin for patients with diabetes(Reference Syed, Gerber and Sharp39).
Contrary to our hypothesis, lacking health care coverage and having a PCP were not associated with food insecurity in adjusted analyses. To our knowledge, this is the first study to examine the association between health care insurance, having a PCP and food insecurity among older adults with MCC. There are a few possible explanations for why health care coverage was not statistically significantly related to food insecurity. First, individuals in our study who were 65 years or older (48·0 % of the study sample) have access to health care coverage through Medicare, the federal health insurance programme in the USA for all people who are 65 years or older which includes hospital and medical insurance. Medication coverage is an optional Medicare plan with additional costs. Since all individuals 65 years or older in this study were eligible for Medicare, our measure may not have been sensitive enough to detect whether an individual was able to get needed care when covered under Medicare. In addition, there is substantial variation in the quality and types of services provided by different health care plans within Medicare and across other or additional sources of coverage, which range from employer-based coverage, low-income coverage and coverage related to military service. Another potential explanation is that health care costs including medications are burdensome regardless of coverage status. This is consistent with previous work that suggested Medicare health coverage alone does not cover the cost of medications for older adults with chronic conditions(Reference Afulani, Herman and Coleman-Jensen37). Compared to a measure of the extent of health care coverage, any health care coverage may not be a good indicator of whether an individual has substantially reduced financial burden because of their health care coverage.
One potential reason why we did not find a significant association between not having a PCP and food insecurity could be that having a PCP does not impact the ability to afford food and does not operate on the monetary pathway between MCC and food insecurity we have hypothesised. Another potential reason is that participants’ PCP did not screen them for food insecurity. Previous work has shown that PCP do not routinely screen for food insecurity, and when they do, they prioritise screening in families with young children(Reference Barnidge, LaBarge and Krupsky40,Reference Hoisington, Braverman and Hargunani41) . This is understandable given that screening for social determinants of health like food insecurity is a relatively new practice(Reference Patil, Craven and Kolasa42). In addition, when PCP do screen for food insecurity, it is not clear whether they refer patients to services, how accessible those services are and whether patients would use the services. However, recent qualitative work has found that providers are receptive to incorporating screening measures for older adults and would be interested in referring patients to food assistance programs when necessary(Reference Pooler, Hoffman and Karva24). Future work should consider how older adult patients would respond to screening and referral to such programmes.
Almost 30 % of lower-income older adults with MCC in this study experienced food insecurity. Food insecurity among older adults is a growing problem as the population of older adults increases globally(43). In addition, the COVID-19 pandemic led to an unprecedented increase in food insecurity among low-income families(Reference Wolfson and Leung44). Potential interventions aimed at reducing existing food insecurity could include connecting lower-income older adults with MCC to food assistance programs and increasing funding for meal programs for older adults. Food assistance programs, such as SNAP in the USA, are effective at reducing food insecurity but are typically underutilised by older adults(Reference Gundersen and Ziliak5) in part because of stigma around food assistance participation. However, further research about the barriers that older adults face in accessing support is warranted. Alternatively, universal meal programmes for older adults are an attractive option because they do not rely on meeting eligibility requirements like SNAP and may not have the same stigma(Reference Gualtieri, Donley and Wright45). These programmes have additional benefits such as home delivery of food which can overcome transportation and mobility challenges that older adults with chronic conditions face. In order for these programmes to be successful, adequate funding is necessary as current funding levels cannot provide for all older adults who are in need(Reference Gualtieri, Donley and Wright45).
While food assistance programmes and charitable food aid can be used to address existing food insecurity, they do not directly address the root causes of food insecurity nor do they prevent it. This would instead require system-wide changes(Reference Tarasuk46). In the USA, systems that propagate health disparities include unaffordable and inaccessible health care, low wages, housing instability and structural racism. Health care access interventions include providing coverage for people younger than 65 who cannot work due to MCC, lowering the age eligibility for Medicare to provide a smoother transition from prior employer-based or private health care coverage, reducing opportunity costs by improving clinic office hours and providing transportation to clinics and removing cost-related barriers to care such as choosing low-cost medications, limiting prescriptions for unnecessary medications or increasing insurance coverage for medications. Addressing other underlying causes of food insecurity will require dismantling inequitable systems and improving the social safety net for older adults. In addition, policies must take into account the life-long impacts of differential access to resources in order to support healthy aging.
Limitations
There are several limitations to this study. First, the observational data are cross-sectional, which precludes our ability to determine the temporal relationships amongst variables of interest and potentiates that unmeasured confounders impacted the results. While our data provide evidence of the relationships, future studies should incorporate longitudinal data to investigate temporal relationships(Reference Noonan, Corman and Reichman47) and collect information on additional potential confounders including food assistance use and social support provided by people other than partners. Second, food insecurity was a state-added question in WA in only a single year, so the sample size is relatively small and the study may not generalise to the entire USA or to individuals with MCC that could not be reached by phone. Although the prevalence of food insecurity among residents of WA is similar to that of the US population(48), the health care system in WA may differ from other states and countries. Future work should consider these associations in locations with differing levels of health care access. Third, to measure food insecurity, our study used a single item from a two-item screener that was previously validated in a pediatric setting. The second item in the screener, which assesses worry about food insecurity, was not included. For this reason and because the screener is not validated in older adults, it is possible that food insecurity was underestimated in our study(Reference McKechnie, Turrell and Giskes49). However, the prevalence of food insecurity in the study was similar to previous measurements which suggest the outcome may not have been meaningfully biased(Reference Jih, Stijacic-Cenzer and Seligman14). Finally, BRFSS is a self-reported survey conducted via telephone interviews, which may have resulted in misclassification for MCC due to recall bias or undiagnosed health conditions. This misclassification likely attenuated the observed association between having MCC and food insecurity.
These findings provide evidence that lower-income older adults with MCC have a high burden of food insecurity and that being unable to afford to see a doctor is related to food insecurity. Interventions could promote participation in food assistance programs through improved screening and referral programs for social determinants of health like food insecurity in the health care setting. In addition, food insecurity among older adults with MCC could be reduced by developing interventions aimed at reducing the financial and opportunity costs of health care. For instance, the age eligibility for Medicare participation could be lowered or Medicaid eligibility could be increased (i.e. Medicaid expansion). Introducing interventions to alleviate the burden of high health care costs in vulnerable populations could mitigate the high prevalence of food insecurity among lower-income older adults with MCC.
Acknowledgements
Acknowledgements: None. Financial support: This research received no specific grant from any funding agency, commercial or not-for-profit sectors. Authorship: C.M.H., A.S.T. and K.H. were responsible for formulating the research questions, designing the study, carrying it out, analysing the data and writing the article. A.J.L. and J.C.J.S. were responsible for formulating the research questions, designing the study and writing the article. Ethics of human subject participation: This study was classified as ‘not human subjects research’ by the University of Washington Institutional Review Board.
Conflict of interest:
There are no conflicts of interest.
Supplementary material
For supplementary material/s referred to in this article, please visit https://doi.org/10.1017/S1368980022001240