According to the FAO, food insecurity (FI) is defined by ‘a situation that exists when people lack secure access to sufficient amounts of safe and nutritious food for normal growth and development and an active and healthy life’ (p. 50)( 1). This definition includes multiple dimensions (food availability, food access, food utilization and stability) which are complex to evaluate using simple quantitative questions on a larger scale, so that common tools used to measure FI are focused on food access related to the economic dimension( Reference Stuff, Casey and Szeto2, Reference Gregório, Rodrigues and Graça3).
FI, according to its economic-related aspects, is related to different nutritional outcomes, either undernutrition or overnutrition. Lower nutrient intakes are shown to be common among adults with FI. However, studies have also shown that FI may coexist with obesity. Bhattacharya et al. ( Reference Bhattacharya, Currie and Haider4) showed that food-insecure people had less healthy diets, were more prone to have lower serum nutrient levels and were more likely to be obese. Obesity among food-insecure people might be explained by the increased consumption of affordable energy-dense food( Reference Bhattacharya, Currie and Haider4, Reference Dinour, Bergen and Yeh5), thus showing that FI is not merely a condition of insufficient food quantity but also of incapacity to have a healthy diet. Notable is that the association between FI and obesity is gender- and age-dependent, with a stronger association among women( Reference Hernandez, Reesor and Murillo6). Given that poor dietary intake is related to poor health, poor immunity and development of chronic diseases( Reference Dixon, Winkleby and Radimer7, Reference Mokdad, Ford and Bowman8), it is expected that people who suffer from FI have worse health outcomes.
Thus, FI, given its link with poor health, might lead to negative externalities like increased health-care utilization and absenteeism, which increase the perceived burden of FI on the economy. For example, in Ontario, Canada, Tarasuk et al. ( Reference Tarasuk, Cheng and de Oliveira9) observed that households’ FI was associated with higher health-care utilization and costs.
However, a reverse mechanism may also occur. Having poor health may predispose people to become food insecure or aggravate their FI( Reference Craig and Seligman10), since the need for medical care possibly competes with the need for food, a condition usually referred to as ‘treat or eat’( Reference Berkowitz, Seligman and Choudhry11). This bidirectional link between FI and health might culminate in hindered access to health care. Existing evidence shows, for example, that food-insecure households are more likely to suffer from medication underuse( Reference Berkowitz, Seligman and Choudhry11, Reference Herman, Afulani and Coleman-Jensen12). Specifically, Berkowitz et al. ( Reference Berkowitz, Seligman and Choudhry11) estimated that one-third of chronic disease patients in the USA struggled to buy food, medication or both, which corroborates the hypothesis that FI can be associated with decreased access to health care.
Kushel et al. ( Reference Kushel, Gupta and Gee13) provided insights on the relationship between FI and both health-care access and use among low-income American adults. Using a national representative sample, they found that being food insecure was positively related to inpatient stays and emergency department visits. In addition, the authors found a positive relationship between FI and having suspended medication and postponing needed medical care, a sign that FI is also associated with poor access to health care in the USA.
Regarding the relationship between FI and work productivity, there are, to the best of our knowledge, no studies on the subject, although the literature has been putting forward the hypothesis of a negative association( Reference Hamelin, Habicht and Beaudry14, Reference McIntyre, Bartoo and Emery15). The reasoning is that, by increasing the likelihood of being sick, FI can decrease the number of working days due to increases in the number and duration of sickness leaves. Besides, it can decrease productivity since workers have to conduct their work under suboptimal physical conditions. Reversely, Heflin et al. ( Reference Heflin, Corcoran and Siefert16) put forward the hypothesis that more working hours per week is associated with higher income or other unobservable characteristics such as family structure or tenacity, which decrease the likelihood of suffering from FI. There is some work on how having a healthy diet is associated with reduced absenteeism (missing work due to sickness)( Reference Fitzgerald, Kirby and Murphy17) and how interventions to improve workers’ diet within companies translate into decreased absenteeism and presenteeism (work underperformance due to sickness)( Reference Jensen18). Both findings suggest an association between FI and productivity.
Therefore, we developed two hypotheses. First, FI may be associated with greater health-care use and absenteeism because it may amplify the effect of diseases, thus not having a relationship with health-care access. Second, FI may be associated with reduced access to health care because it reflects economic vulnerability, which may also translate into reduced access to health care. Certainly, this second hypothesis depends on health systems; we expect lower access to care being more likely in countries where it is related to the ability to pay than in countries with universal free health care. The case of Portugal is not straightforward, as the universal National Health Service (NHS) suffers from important weaknesses, so that many people use the private system, creating severe inequities in health-care use( Reference Tavares and Zantomio19).
In Portugal, our work group( Reference Gregório, Rodrigues and Graça3) estimated that approximately one in five persons suffers from FI. In the present study we examine the association between FI and health-care use and access, and between FI and absenteeism, using data generated by the nationally representative Epidemiology of Chronic Diseases Cohort Study (EpiDoC3) survey, collected between 2015 and 2016 in Portugal with 5648 non-institutionalized adults.
Methods
Data
We used data of the EpiDoC3, the third wave of data collection of a nationally representative sample of 5648 non-institutionalized adults collected between September of 2015 and July of 2016, with the purpose of studying the determinants and outcomes of health. Rodrigues et al. ( Reference Rodrigues, Gouveia and da Costa20) and Gregório et al. ( Reference Gregório, Rodrigues and Graça3) provide additional information about the EpiDoC cohort, specifying how the data were collected, how each variable was measured, the ethics committee approval and detailed descriptive statistics of each variable.
Dependent variables
We modelled health-care utilization using the self-reported number of hospitalizations, medical appointments and taking medication. Health-care access was measured using the suspension of medication and having to cut consultations due to financial constraints. Specifically, two ‘yes’ or ‘no’ questions were asked: ‘In the last 12 months, did you reduce the number of medical appointments or stop attending appointments because it was too expensive?’ and ‘In the last 12 months, did you skip or stop taking medication because it was too expensive?’. Finally, absenteeism was measured by number of weeks of sickness leave.
Explanatory variables
Our variable of interest, FI, was measured through a psychometric household food insecurity scale validated for the Portuguese population( Reference Gregório, Nogueira, Graça and Gregório21) that was adapted from the Brazilian FI survey and based on the previous work conducted by Radimer et al. ( Reference Radimer, Olson and Greene22, Reference Radimer, Olson and Campbell23), Campbell( Reference Campbell24) and the Community Childhood Hunger Identification Project( Reference Wehler, Scott and Anderson25). This scale focused on the 3 months prior to the FI survey and is composed of eight questions for households without children and fourteen for households with children. As an example, there were the two following questions: ‘Have you worried that your household runs out of food before you have enough money to buy more?’ and ‘Has any household member skipped a meal for not having enough money?’( Reference Gregório, Rodrigues and Graça3). This FI survey enables the classification of respondents into one of four degrees of food security: (i) food secure, (ii) mildly food insecure, (iii) moderately food insecure and (iv) severely food insecure. Since there were few observations of both moderate and severe FI categories (286 and 144, respectively), we decided to merge them. For a more detailed description on the construction of this measure see Gregório et al. ( Reference Gregório, Rodrigues and Graça3).
Covariates
We used as covariates aspects related to the individual’s demographic and socio-economic profile, namely age (treated as continuous in order to capture the average effect on health-care use and access) and gender. These variables were included to avoid a possible confounding bias, as we expect older people and women to be more frequent health-care users and to suffer more from FI. We also included economic insecurity (people were asked to rate their economic condition as ‘strongly secure’, ‘secure’, ‘insecure’ and ‘strongly insecure’, which we coded as 0 if the person was economically secure and 1 otherwise); educational level (more than 12 years of education; between 10 and 12 years; between 5 and 9 years; less than 5 years); employment status (employed, unemployed, retired, student, homemaker, suffering from temporary incapacity to work); and whether they had private insurance (people were asked to detail their health insurance system, which we coded as 0 for those who benefited only from the NHS and 1 for those covered by any other health insurance system). These variables were considered as potential confounders because it is very likely that people suffering from food insecurity have a low socio-economic status, while a low socio-economic status is known to increase health-care use( Reference Van Doorslaer, Masseria and Koolman26).
The survey also integrated the Portuguese validated version of the European Quality of Life – 5 Dimensions questionnaire (EQ-5D)( Reference Ferreira, Ferreira and Pereira27, Reference Ferreira, Ferreira and Pereira28), which measures health-related quality of life on a scale from 0 to 1, where 0 is death and 1 is the best possible health state, although negative values are also accepted for states worse than death.
Statistical methods
We modelled access, use and productivity for each person i as a function of FI and other covariates:
where α 0 is the constant term; α 1 to α 3 are the regressors’ coefficients; ϵ i is the error term; Mild_FI i is a dummy variable that takes the value 1 if person i is mildly food insecure, and 0 otherwise; Moderate/Severe_FI i is a dummy variable that takes the value 1 if person i is moderately or severely food insecure, and 0 otherwise; and X i is a vector of covariates (age; age squared; female; educational level; professional status; economic insecurity; health-related quality of life; having insurance). All analyses were performed by introducing the independent variables sequentially.
For the binary dependent variables (being hospitalized, taking medication, suspending medication, reducing the number of consultations), we applied logistic regressions. Regarding the number of appointments and given the overdispersed distribution (variance higher than the mean) and excess of zeros (10 % of the sample was zeros), we used a negative binomial regression( Reference Cameron and Trivedi29).
Following Fitzgerald et al. ( Reference Fitzgerald, Kirby and Murphy17) in their study of the association between productivity and diet, for the number of weeks of sickness leave we used a zero-inflated negative binomial regression since the variable is overdispersed and has a great number of zeros (79·6 %). The zero-inflated negative binomial regression suits our data well because it takes into account two potential mechanisms that generate zeros: (i) being sick and not using sickness leave; and (ii) being healthy and not needing sickness leave. In this two-part model, we first estimated the likelihood of a person being healthy and not being absent (the inflated model) by applying a logistic regression. Then, we used a negative binomial regression to estimate the likelihood of the number of weeks of sickness leave that a person took, as depicted in equation (1)( Reference Cameron and Trivedi29, Reference Burger, Van Oort and Linders30). We confirmed that both variables were overdispersed by applying the test for overdispersion( Reference Cameron and Trivedi31).
Results
Descriptive statistics
People with severe FI were on average older, with a worse quality of life, and went to the doctor more often. We did not find any statistically significant difference across FI levels regarding missing work days (Table 1).
EpiDoC3, Epidemiology of Chronic Diseases Cohort Study; EQ-5D, European Quality of Life – 5 Dimensions questionnaire.
* P < 0·10, ***P < 0·01.
† The presented means and sd are estimates for the population. The null hypothesis of the F test is that all food insecurity categories’ means are equal, per variable.
Food-insecure people represented 19 % of the sample (Table 2). Among economically insecure people, 44·8 % suffered from FI whereas the prevalence of FI among economically secure people was 6·6 %. Both mild and moderate/severe FI had the highest prevalence among people who only completed primary school (30·1 %), contrasting with people who attended college (6·0 %). FI was also more frequent among unemployed people (32·3 %), retired people (24·5 %), women (23·5 %) and people without health insurance (23·6 %). In addition, 27·8 and 23·5 % of people who had been hospitalized or took medication, respectively, suffered from FI. People who for economic reasons suspended medication or decreased the number of medical appointments had an FI prevalence of 59 and 51 %, respectively, compared with 41 and 49 % among people without FI. All proportions proved to be statistically significantly different from each other across the different categorical variables.
EpiDoC3, Epidemiology of Chronic Diseases Cohort Study.
*** P < 0·01.
† Absolute frequencies.
‡ Weighted percentages per category.
§ Includes students, household work and people with temporary incapacity.
Multivariate analysis
The number of consultations and having been hospitalized were strongly associated with FI (Models 1 and 4 of Table 3), but when adjusting for health-related quality of life and socio-economic characteristics (Models 2, 3, 5 and 6), associations with mild or moderate/severe FI became non-significant (Table 3). In addition, people who suffered from economic insecurity displayed a statistically significant and positive association with all measures of health-care utilization.
EpiDoC3, Epidemiology of Chronic Diseases Cohort Study; AOR, adjusted odds ratio; EQ-5D, European Quality of Life – 5 Dimensions questionnaire; NB, negative binomial.
* P < 0·10, **P < 0·05, ***P < 0·01.
† All regressions are adjusted for age, sex, education level, professional status and having some type of health insurance.
‡ Models 1, 4 and 7: health-care use is modelled as a function of food insecurity; Models 2, 5 and 8: health-care use is modelled as a function of food insecurity, adjusting for quality of life; Models 3, 6 and 9: health-care use is modelled as a function of food insecurity, adjusting for quality of life and economic insecurity.
Suffering from mild FI (adjusted OR (AOR) = 2·46; 95 % CI 1·79, 3·40) and moderate/severe FI (AOR = 4·68; 95 % CI 3·11, 6·82) increased the likelihood of suspending medication. We found a strong association of mild FI (AOR = 2·39; 95 % CI 1·68, 3·40) and moderate/severe FI (AOR = 3·98; 95 % CI 2·49, 6·37) with reduced number of medical appointments due to financial constraints. The magnitude of the associations was higher for the most severe cases of FI. Economically insecure people were also more likely to suspend medication (AOR = 2·87; 95 % CI 2·04, 4·04) and to reduce the number of appointments (AOR = 2·25; 95 % CI 1·56, 3·26). Besides, adjusting for socio-economic variables and quality of life reduced the magnitude of the coefficients but not their statistical significance (Models 3 and 6 of Table 4).
EpiDoC3, Epidemiology of Chronic Diseases Cohort Study; AOR, adjusted odds ratio; EQ-5D, European Quality of Life – 5 Dimensions questionnaire.
*** P < 0·01.
† All regressions are adjusted for age, sex, education level, professional status and having some type of health insurance.
‡ Models 1 and 4: health-care access is modelled as a function of food insecurity; Models 2 and 5: health-care access is modelled as a function of food insecurity, adjusting for quality of life; Models 3 and 6: health-care access is modelled as a function of food insecurity, adjusting for quality of life and economic insecurity.
Suffering from FI or being economically insecure had no association with the number of weeks of sickness leave (Table 5). Healthiness levels displayed a negative association with absenteeism; hence, people who had better health were less prone to miss work due to sickness.
EpiDoC3, Epidemiology of Chronic Diseases Cohort Study; AOR, adjusted odds ratio; EQ-5D, European Quality of Life – 5 Dimensions questionnaire; ZINB, zero-inflated negative binomial.
*** P < 0·01.
† All regressions are adjusted for age, sex, education level, professional status and having some type of health insurance.
‡ Model 1: absenteeism is modelled as a function of food insecurity; Model 2: absenteeism is modelled as a function of food insecurity, adjusting for quality of life; Model 3: absenteeism is modelled as a function of food insecurity, adjusting for quality of life and economic insecurity.
Discussion
We found FI to be associated with hindered access to health care, in accordance with previous research(Reference Berkowitz, Seligman and Choudhry11, Reference Kushel, Gupta and Gee13). By contrast, we found no evidence of an independent association between FI and health-care use, or between FI and absenteeism. Note, however, that FI was strongly associated with the number of consultations and being hospitalized until we adjusted for quality of life, which highly reduced the association, and for socio-economic covariates, which eliminated it.
The non-significant association with health-care use contradicted the findings obtained by Kushel et al. (Reference Kushel, Gupta and Gee13) and Tarasuk et al. (Reference Tarasuk, Cheng and de Oliveira9). First, we employed a more detailed measure of FI, which makes our results hardly comparable to those obtained by Kushel et al. (Reference Kushel, Gupta and Gee13). As for Tarasuk et al. (Reference Tarasuk, Cheng and de Oliveira9), the authors measured utilization as a dichotomous variable while we employed three measures of utilization. Specifically, our measures not only allow differentiating the type of care but also taking into account the intensity of utilization(32). Also, Tarasuk et al. (Reference Tarasuk, Cheng and de Oliveira9) did not control for the individuals’ health conditions, as we did. Moreover, to measure health-care use, Tarasuk et al. (Reference Tarasuk, Cheng and de Oliveira9) used administrative health data on food-insecure people, while we had self-reported assessments of utilization, which might contribute for the different results. Hence, the different nature of our measures makes comparisons hard to establish.
Note that even though poor nutrition and having a low socio-economic status might lead to poor health(Reference Dixon, Winkleby and Radimer7, Reference Mokdad, Ford and Bowman8, Reference Ettner33, Reference Marmot34), which may be related to high levels of health-care utilization and absenteeism, this association was not reflected through FI in our results.
Let us recall our two hypotheses. First, a positive relationship between FI and health-care use and absenteeism was expected due to poor health. Second, a hindered access was expected because FI is associated with economic vulnerability and the ‘treat or eat’ dilemma. Our results partially support the first hypothesis and clearly support the second hypothesis.
First, the magnitude of the association between FI and health-care use was reduced when we introduced quality of life in the regression model. On the one hand, this result may signify that FI provokes a worse health condition (i.e. quality of life), which leads people to seek for more care. This interpretation would be in line with our first hypothesis. On the other hand, the association reduced even more and lost significance when economic insecurity was introduced in the regression model. Hence, it may be that both FI and higher care are a consequence of a worse socio-economic condition, so that there would be no real causal pathway from FI to health-care use. In fact, the literature points to a strong association between FI status and individuals’ socio-economic characteristics, specifically income(Reference Sarlio-Lähteenkorva and Lahelma35, Reference Rose, Gundersen and Oliveira36), education, household size, house ownership(Reference Rose, Gundersen and Oliveira36), unemployment status and childhood economic insecurity. Thus, FI serves as a direct measurement of well-being(Reference Rose, Gundersen and Oliveira36) that may contribute to depict a more precise picture of a person’s socio-economic profile, given that not only poor households suffer from FI(Reference Rose, Gundersen and Oliveira36). Hence, assessing FI levels might be important to understand material deprivation across different layers of society, contributing to the well-known evidence on socio-economic inequalities in health and health care.
Second, the lack of access suggests the occurrence of the ‘treat or eat’ phenomenon, a sign of enhanced socio-economic vulnerability. Although we thought that the association between FI and access would be mitigated by the existence of a universal NHS, even in a universal health-care system there are costs that might discourage people with low socio-economic status to seek care. In Portugal, Barros et al. (Reference Barros, Lourenço and Moura37) found that medication and co-payments were the highest costs for the patient when seeking health care. Indeed, if co-payments are low and many people are exempt for consultations, this is not the case for drugs, with high co-payments and no exemptions. If these costs are competing with food, then FI constitutes a barrier to access.
Regarding productivity, theoretical considerations suggest a positive association between FI and absenteeism, a result that we did not confirm. A possible explanation is the simultaneous occurrence of the two hypotheses. On the one hand, food-insecure people may be more likely to miss work for being more prone to be sick; on the other hand, they may attend work in suboptimal health conditions in order to ensure economic security. In Portugal, individuals lose some of their income if they miss days at work even if they present a medical justification (Artigo 255º do Código do Trabalho). These two events may have an opposite effect on absenteeism.
Hence, we cannot conclude that FI generates negative externalities on the economy either through a higher consumption of health resources or through decreases in productivity due to absenteeism. Still, it is associated with hindered access to health care, highlighting that universal coverage through the NHS might not be sufficient to overcome inequalities in health care.
The present study has some limitations. First, our results suffer from recall bias since we are using self-reported data. People recall absenteeism or levels of health-care utilization more accurately if the recall period is short(Reference Short, Goetzel and Pei38). As we measure absenteeism in weeks, we should not suffer from a major recall bias in our productivity analysis. Regarding the number of appointments, our results may be more subject to recall bias, given that we used the annual number of appointments. However, annual experiences such as hospitalizations were shown to be recalled precisely(Reference Short, Goetzel and Pei38), and no bias is expected in what concerns the self-reporting of taking medication, as the question asks whether a person was currently undergoing any medication. Second, we worked with a cross-sectional data set which does not allow to infer a causal relationship between FI, health-care access, use and productivity. Third, the survey used to measure FI includes questions that are linked to economic insecurity, so that it is difficult to disentangle the nutrition component of FI from its socio-economic component. Nevertheless, our understanding is that the concept of FI is beyond lack of nutritional intake but instead, a multidimensional indicator that reflects various levels of precariousness. Fourth, the questions related to FI and the outcome variables have a different time span. While FI was asked relative to the last 3 months prior to the survey, the outcome variables recalled the last 12 months. Therefore, we assumed that the individuals’ FI status remained constant throughout the year, which is very plausible but may not be always the case.
According to our results, food-insecure households in Portugal face barriers in access that can be addressed by implementing policies for which there is evidence of FI mitigation, namely food assistance programmes that are nutritionally adequate(Reference Rose, Gundersen and Oliveira36, Reference Gundersen, Kreider and Pepper39) and other safety net programmes for vulnerable groups like the unemployed(Reference Loopstra, Reeves and McKee40), the elderly(Reference McIntyre, Dutton and Kwok41) and low-income families(Reference Schmidt, Shore-Sheppard and Watson42). That is, those groups who had the highest prevalence of FI in our study. Food-insecure people might also benefit from workplace nutritional interventions for which there is strong evidence of improved workers’ diet and productivity(Reference Fitzgerald, Kirby and Murphy17, Reference Jensen18). These policies have the potential of decreasing FI and increasing access to health care. Their implementation may no longer force people to have to choose between food and health care.
Overall, and in line with previous studies, we found a positive and strong association between FI and hindered access to health care, which suggests that FI might be a proxy of precariousness, thus reinforcing its multidimensional relevance beyond its role as a nutritional measure. These results highlight that the ‘treat or eat’ dilemma may be a reality despite the universal health-care coverage through an NHS. The greater use of health care among food-insecure people is fully explained by their worse quality of life and lower socio-economic condition, so that the specific role of poor nutrition is unclear.
Acknowledgements
Financial support: This study was funded by a NOVASaude unrestricted research grant; and the Public Health Initiatives Programme (PT06), financed by EEA Grants Financial Mechanism 2009–2014. The funders had no role in the design, analysis or writing of this article. Conflict of interest: None. Authorship: A.M.R., H.C., M.J.G., R.D.d.S. and S.S.D. launched the idea of assessing the association between food insecurity and health-care use, access and absenteeism. A.M., J.P. and M.A.M. performed the analysis. A.M., M.A.M. and J.P. contributed in the writing of the manuscript. A.M., A.M.R., H.C., J.P., M.A.M. and M.J.G. revised the manuscript. All authors read and approved the manuscript. Ethics of human subject participation: The EpiDoC 3 study was conducted according to the guidelines laid down in the Declaration of Helsinki and approved by the National Committee for Data Protection and by the NOVA Medical School Ethics Committee. All subjects provided informed consented to participate in the study. More detailed information regarding the EpiDoc study can be found in Rodrigues et al. (Reference Rodrigues, Gouveia and da Costa20).