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U.S. Department of Agriculture/Economic Research Service, Washington DC 200365831
* To whom correspondence should be addressed. E-mail: marknord{at}ers.usda.gov.
| ABSTRACT |
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| Introduction |
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Individuals from food insecure households are at increased risk for poor nutritional status and negative health outcomes. Food insecurity and food insufficiency (a closely related condition) have been shown to be associated with poorer diets in adults (2,3), lower intakes of several nutrients for adults (3), health status of adults with diabetes (4), poor self-rated general health status and lower scores on physical and mental health scales for adults (5), poorer cognitive, academic, and psychosocial development of children (6), several adverse health outcomes for infants and toddlers (7), meeting diagnostic screening criteria for major depression in women (8), and obesity and weight gain among women and (less clearly) among men (9). Some of these risks may be especially high for elderly persons, particularly if they have existing health problems that may make it difficult to purchase, prepare, and eat nutritious foods. Lee and Frongillo found that elderly persons from food insecure households had lower skinfold thickness and significantly lower intakes of energy and other key nutrients than food secure elderly (10).
Food insecurity, by definition, is closely linked to income. Poor households were 3 times as likely to be food insecure than higher income households in 2004 (1). And food insecure households typically spend less money on food than other households. This reflects in part the often difficult tradeoffs poor households must make between spending for food and other goods and services that are essential to health and well-being. Such tradeoffs may be particularly difficult for low-income households facing seasonally high home heating or cooling costs.
Previous research on the association between nutritional status and home fuel expenditures consists almost entirely of the work by Bhattacharya et al. (11). Combining monthly data from the Bureau of Labor Statistics Consumer Expenditure Survey (198088) with monthly ground temperature data from the National Oceanic and Atmospheric Administration (NOAA) they found that poor households increased fuel spending and decreased food expenditures during cold months in the northern United States. Bhattacharya et al. also observed reduced levels of energy intake in poor households during winter months (and to a lesser extent in the fall) in northern regions, using data from the 198894 National Health and Nutrition Examination Survey. However, they did not find evidence of reduced food expenditures or reduced energy intake during periods of high temperatures in the south.
This analysis extends and complements that research by examining the relation between seasonal differences in temperature, measured as heating degree days and cooling degree days, and households' food insecurity. Food insecurity is hypothesized to be a mediating condition that links constrained household resources with reduced food spending and food intake. As a proximate outcome of constrained household resources, food insecurity may be more consistently related than food expenditures to seasonal temperature differences and may, therefore, also reveal a link to seasonally high home-cooling costs as well as heating costs.
Using nationally representative data on food security from Current Population Survey Food Security Supplements (CPS-FSS)2 from 19952001 (1214) and data on heating and cooling degree days from the National Oceanic and Atmospheric Administration (NOAA) (15), we examined the extent to which greater proportions of poor households, especially poor elderly households, experienced very low food security (the more severe range of food insecurity) during times of the year when home heating and cooling costs were high, controlling for important covariates. The analysis takes advantage of the fact that during this time period, the CPS-FSS data collection alternated between winter and early spring (April) when costs for home heating during the previous 30 d are high in northern regions and low in the South, and summer (August/September) when the opposite condition prevails for cooling costs.
| Data and Methods |
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15 y of age from
50,000 households representative of the U.S. civilian noninstitutional population. The CPS-FSS, sponsored annually by USDA, obtains information on food security, food spending, and food program participation, providing the national data on which USDA's annual reports on household food security in the U.S. are based (1,1621). The food security status of each household is assessed by interviewing 1 member of the household using a standardized survey instrument. Households are classified as food secure or food insecure based on their responses to a series of questions about food-related behaviors, experiences, and conditions that are known to characterize households having difficulty meeting their food needs. Food-insecure households are further classified as having low food security or very low food security. The questions cover a wide range of severity of food deprivation from worrying about running out of food to not eating for a whole day. Each question specifies a lack of money or other resources to obtain food as the reason for the condition or behavior, so the measure is not affected by behaviors such as voluntary dieting or fasting.
Household expenditures for heating and cooling were estimated using state-level monthly data on heating degree days and cooling degree days from the National Climatic Data Center of the National Oceanic and Atmospheric Administration. Data were mean heating degree days in February and mean cooling degree days in July from 1970 to 2000.
Analysis sample. The analysis sample consisted of CPS-FSS households during 7 y, 19952001, with valid 30-d food security data and valid income data. In some years, 1 or more of the 8 CPS "rotation groups" lacked 30-d food security data because households in these rotation groups were asked experimental food security questions in place of the standard questions. These households were excluded from the sample and appropriate weighting adjustments were made so that their exclusion did not compromise the sample's representative character.
Our sample was further restricted to households with reported incomes below the federal poverty line and with no school-age children (i.e., none >4 y of age), for a total of 20,058 households. The main outcome of interest, reduced food security due to seasonally high home heating or cooling costs, was expected to affect primarily low-income households. Related research suggests that seasonal patterns of food insecurity in households with school-age children are quite distinct from those with no school-age children and may be affected by distinct factors, such as summer child-care costs, receipt of free or reduced-price meals through the National School Lunch Program and meals received through the Summer Food Service Program (22). These factors would complicate and possibly bias the analysis.
Two sample subsets were also analyzed separately: households consisting entirely of elderly persons (age
65, n = 5768), and households with no elderly members (n = 12,775). These analyses explored whether the "heat or eat" phenomenon was predominantly an experience of the elderly. Households composed of mixed elderly and nonelderly were also analyzed. Results (not reported) for those households were intermediate between those of households with no elderly and those with only elderly. The elderly were of particular interest because many of them have fixed incomes and might be particularly vulnerable to seasonal differences in expenses for home heating and cooling. Furthermore, anecdotal evidence suggests that tradeoffs in spending for various basic needs are especially problematic for poor elderly households.
Very low food security: main outcome. The dependent variable for all the analyses was very low food security during the 30 d prior to the CPS-FSS. Very low food security is a severe range of food insecurity that the USDA described as "food insecurity with hunger" in reports prior to 2006. It refers to households that have reported multiple indications of reduced food intake and disrupted eating patterns due to inadequate resources for food. USDA made this change in response to a recommendation by the Committee on National Statistics (23).
Household food security was assessed for the period 30 d prior to each survey using methods described by Nord (24). The 30-d scale is based on the same concepts and statistical methods as the standard 12-mo U.S. Food Security Scale. The 30-d referenced scale was essential for this study because it measures conditions in the household during specific periods of the year when home heating or cooling costs were high. To minimize the measurement effects associated with the presence of infants and young children (04 y) in some households, we assessed household food security using only the 7 adult-referenced items in the standard 30-d scale (25,26). That is, we used the same scale for all households that would normally be applied to households without children.
Predictor variables. The season in which the CPS-FSS households were surveyed (August/September or April) was represented by a single dichotomous variable, summer, with a value of 1 for surveys in August/September (summer) and 0 for April (winter) surveys.
The difference between summer cooling and winter heating costs in each state was represented by the variable cool heat, the mean difference between cooling degree days in July and heating degree days in February during 19702000. Cooling and heating degree days were assessed for periods of 1 to 2 mo prior to the food security surveys so that the billing and payment period for the associated cooling and heating expenses would coincide with the 30-d period prior to the survey, i.e., the period for which food security was assessed.
Cool heat was normalized (to mean 0 and SD 1) across states. It ranged from
2 in Alaska to +2 in Florida. Weighted by households rather than by states, the mean was +0.38 for households in the primary analysis sample, reflecting the preponderance of residents in the warmer regions of the U.S. An interaction term, summer x cool heat, was created to estimate the extent to which seasonal differences in food security vary between high-heating and high-cooling states.
Control variables. Particular attention was given to controlling income and employment that may vary seasonally or from year to year and could, therefore, confound the seasonal association between very low food security and home heating and cooling costs. Annual household income was entered as a ratio of household income to the federal poverty line for the household (income/poverty). Two additional variables based on this ratio were also included to control for income effects on food insecurity; the square of income/poverty and a dichotomous variable identifying households with incomes <50% of the federal poverty line. In combination, these variables assess associations with income as a nonlinear (quadratic) function, but adjust for deviations from that overall relation in the lowest income ranges. Labor-force participation and employment of all adult members in the household were described by 13 dichotomous variables that summarize the standard labor force classifications of all members.
Control variables were also included in the analysis for socioeconomic and demographic factors that are known to be associated with food insecurity, including gender of household head, race and ethnicity (non-Hispanic black, non-Hispanic white, or Hispanic) and citizenship status of household reference person, educational attainment of the most highly educated adult, home ownership, and residential mobility (indicating that the household had moved to its current address since the beginning of its participation in the CPS).
Statistical analysis. A series of multivariate logistic regression models were estimated to assess the association between very low food security and seasonally high home heating and cooling costs. Descriptive data were generated in SAS Proc Means. The logistic regression analyses were implemented using SAS Proc Logistic.
For the entire low-income sample and each of the 2 subset samples, logistic regression models were first estimated with the single independent variable, summer, to assess the extent to which very low food security differed between seasons. Then a second model was estimated for each sample with the additional independent variables, cool heat and summer x cool heat. The size of the regression coefficient on the interaction variable, summer x cool heat, indicated the extent to which the seasonal difference in very low food security was associated with household residence in states with higher summer cooling costs relative to winter heating costs. The final models included socioeconomic and demographic control variables to confirm that the associations of home heating and cooling costs with seasonal differences in very low food security did not result from alternative causal factors.
| Results |
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Control factors. The addition of control variables for socioeconomic and demographic factors did not reduce the strength of the association of seasonal differences in very low food security with seasonal variations in home heating and cooling costs (Table 3). In fact, for elderly only households, the coefficient on the interaction term, summer x cool heat, was somewhat larger with the controls added to the model (adjusted OR 1.58, 95% CI 1.16, 2.15) than without them. The association of interest appears, therefore, to represent a causal effect of home heating and cooling costs and not to be a spurious artifact caused by other seasonally variable economic factors. If anything, the effects of seasonally high home heating and cooling costs on food insecurity may be somewhat ameliorated by seasonal differences in economic factors.
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For all poor households without school-age children, neither of the coefficients on the interaction terms was significant, but they were jointly significant (analysis not shown) and of about the same magnitude. For poor, elderly only households, only the summer x cool interaction was significant (OR 1.75, 95% CI 1.11, 2.77) whereas the summer x heat interaction was near 0 and insignificant (OR 1.02, 95% CI 0.65, 1.58). These findings suggest that the "cool or eat" phenomenon is at least as strong as the "heat or eat" tradeoff found by Bhattacharya et al. (11).
| Discussion |
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65 y of age, the odds of very low food security in high-heating states were 43% lower in the summer than in the winter; in high-cooling states, the odds were 27% higher in the summer than in the winter. The observed pattern for households with no elderly members was similar, although smaller in magnitude and not statistically significant. This research builds on the earlier work by Bhattacharya et al. (11) by examining the seasonal effects of home heating and cooling costs on households' economic access to food. These effects are presumed to underlie the changes in food spending and energy intake observed by Bhattacharya et al. Our findings support the "heat or eat" phenomenon identified by Bhattacharya et al. that low-income households reduce food spending and caloric intake during cold periods in northern states. Our findings also suggest that the "cool or eat" effect, i.e., the effect of high home cooling costs on food insecurity, is nearly as strong as the "heat or eat" effect. Bhattacharya et al. did not find strong evidence for the "cool or eat" effect on food spending and caloric intake, possibly because those outcomes are more distal and more difficult to measure than food insecurity.
The associations between food insecurity, season of data collection, and state-level heating and cooling costs provide evidence that, for many poor households, the tradeoffs between food spending and seasonally high heating and cooling costs are not made easily, that is, without human cost or within a zone of comfort. The difficulty of these tradeoffs may be exacerbated if home energy costs become unusually high due to supply disruptions or unusually high demand. Our findings also suggest that public assistance programs that support spending for home energy needs may provide a measure of protection against severe levels of food insecurity. Future research might usefully examine whether factors such as home ownership, energy assistance, and participation in food assistance programs moderate seasonal effects of home heating and cooling costs.
| FOOTNOTES |
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2 Abbreviations used: CPS, Current Population Survey, CPS-FSS, Current Population Survey Food Security Supplement; OR, odds ratio. ![]()
Manuscript received 28 April 2006. Initial review completed 30 June 2006. Revision accepted 1 September 2006.
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