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Food insecurity and maternal depression in rural, low-income families: a longitudinal investigation

Published online by Cambridge University Press:  01 August 2009

Catherine Huddleston-Casas
Affiliation:
Department of Child, Youth and Family Studies, University of Nebraska–Lincoln, Omaha Campus, 102 Arts and Sciences Hall, Omaha, NE 68182-0214, USA
Richard Charnigo
Affiliation:
College of Public Health 203-B, Department of Biostatistics, University of Kentucky, Lexington, KY 40536-0003, USA
Leigh Ann Simmons*
Affiliation:
Departments of Family Studies and Health Services Management, University of Kentucky, 315 Funkhouser Building, Lexington, KY 40506-0054, USA
*
*Corresponding author: Email [email protected]
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Abstract

Objective

The purpose of the present study was to examine the relationship between household food insecurity and maternal depression in a rural sample to determine whether food insecurity predicted mothers’ depression over time or vice versa.

Design

The study employed a prospective design using three waves of data from ‘Rural Families Speak’, a multi-state study of low-income rural families in the USA. Food insecurity was measured using the Core Food Security Module and depression was measured using the Center for Epidemiologic Studies–Depression Scale. A structural equation model was fit to the data using the AMOS software package.

Setting

Sixteen states in the USA (California, Indiana, Kentucky, Louisiana, Massachusetts, Maryland, Michigan, Minnesota, Nebraska, New Hampshire, New York, Ohio, Oregon, South Dakota, West Virginia, Wyoming) between 2000 and 2002.

Subjects

Subjects included 413 women with at least one child under the age of 13 years living in the home.

Results

Findings based on the 184 subjects with complete data indicated that the causal relationship between household food insecurity and depression is bidirectional (P = 0·034 for causation from depression to food insecurity, P = 0·003 for causation from food insecurity to depression, χ2/df = 1·835, root-mean-square error of approximation = 0·068, comparative fit index = 0·989). Findings based on all 413 subjects after imputation of missing values also indicated bidirectionality.

Conclusions

The recursive relationship between food insecurity and depression has implications for US nutrition, mental health and poverty policies. The study highlights the need to integrate programmes addressing food insecurity and poor mental health for the population of rural, low-income women.

Type
Research Paper
Copyright
Copyright © The Authors 2008

Poverty is a significant social problem in the USA that is associated with a number of public health concerns, including poor mental and physical health status and disparities in health care(Reference Probst, Ladtika, Moore, Harun, Powell and Baxley1). The most recent statistics show the national poverty rate increased to 9·8 % between 2000 and 2006(Reference DeNavas-Walt, Proctor and Smith2). In rural areas this rate is even higher, with recent data showing that the rural poverty rate exceeds 14 %(3). These data reflect an ongoing trend of poverty and related problems faced by rural Americans over the last 50 years(4).

One of the problems associated with rural poverty is food insecurity, which is defined as being uncertain of having or unable to acquire enough food to meet the needs of all family members due to insufficient money or other resources(5). The rate of food insecurity nationwide increased from 9·8 % to 11·0 % between 2001 and 2006(Reference Nord, Andrews and Carlson6), and the rural food insecurity rate reached 12 % in 2006(Reference Nord, Andrews and Carlson6). The prevalence of food insecurity varies among household types. Households headed by single mothers and households with incomes below the federal poverty line have higher rates of food insecurity than those in the general population(Reference Nord, Andrews and Carlson6). Minority households also have a higher rate of food insecurity. Recent data revealed Black and Latino households to have twice the rate of food insecurity as White households. Similarly, households with children were almost twice as likely to be food-insecure as households without children (15·6 % v. 8·5 %)(Reference Nord, Andrews and Carlson6). In rural areas food insecurity is particularly concerning, because rural residents have more limited access to affordable food than their urban counterparts. Compared with urban consumers, rural residents face higher prices for food(7) and are less likely to receive food stamps despite eligibility(Reference Wolkwitz8).

A growing body of research has demonstrated a link between food insecurity and depression, although most of these studies were cross-sectional in nature. A study of California women showed that poor mental health was linked to food insecurity, but the authors noted that the direction of effect could not be determined(Reference Kaiser, Baumrind and Dumbauld9). In a qualitative study of poor women in Philadelphia, Chilton and Booth(Reference Chilton and Booth10) found that food-insecure women experienced ‘hunger of the mind’, which they defined as a sense of hopelessness and depression. In a study of women with young children, Casey and colleagues(Reference Casey, Goolsby and Berkowitz11) found that nearly 53 % of women who reported food insecurity scored positive on a depression screen. Similarly, a cross-sectional study of nearly 3000 mothers of 3-year-olds showed that the percentage of respondents with major depressive disorder increased with greater levels of food insecurity. Among food-secure mothers, 15·7 % had major depressive disorder, compared with 20·2 % of marginally food-secure mothers and 28·5 % of food-insecure mothers. This research is underscored by findings from the Women’s Employment Study, which revealed that urban welfare recipients in Michigan who experienced food insufficiency also were more likely to experience depression(Reference Heflin, Siefert and Williams12Reference Siefert, Heflin, Corcoran and Williams14). As other researchers have noted, the authors of the Michigan studies acknowledged that the direction of effect could not be ascertained.

The relationship between food insecurity and depression is concerning in light of the high rates of depression among rural women. Although assessments of the prevalence of depressive symptomatology and major depressive episodes (MDE) among rural populations are limited, Hauenstein and colleagues(Reference Hauenstein, Petterson, Merwin, Rovnyak, Heise and Wagner15) argue that population mental health deteriorates as the level of rurality increases. The prevalence of clinically depressive symptomatology among rural women has been shown to range from 24 % to 69 %(Reference Hauenstein and Boyd16Reference Simmons, Huddleston-Casas and Berry22), and low-income women appear to be particularly vulnerable(Reference Hauenstein and Boyd16Reference Wijinberg and Reding18, Reference Hauenstein and Peddada21, Reference Simmons, Huddleston-Casas and Berry22).

Given the high prevalence rates of both food insecurity and depression among rural women, and given previous studies suggesting that food insecurity and depression are associated, the purpose of the present study was to examine the longitudinal relationship between food insecurity and depression in a sample of low-income, rural women. Since previous studies have failed to document a direction of effect between food insecurity and depression, our goal was to examine whether: (i) food insecurity predicts depression; (ii) depression predicts food insecurity; or (iii) the relationship between food insecurity and depression is bidirectional. Additionally, to our knowledge this is the first longitudinal study of the relationship between food insecurity and depression among rural, low-income women in the USA. Findings have the potential to affect public policy and practice aimed at reducing the rates of both food insecurity and depression in this vulnerable population.

Methods

Sample

We utilized data from NC-223, ‘Rural Families Speak’ (RFS), a multi-state (California, Indiana, Kentucky, Louisiana, Massachusetts, Maryland, Michigan, Minnesota, Nebraska, New Hampshire, New York, Ohio, Oregon, South Dakota, West Virginia, Wyoming) study of rural, low-income women and their families. The study was approved by a research ethics board at all participating institutions, and all respondents provided informed consent. Between 2000 and 2002, three waves of data were collected in twenty-three rural counties on an annual basis at each participating research site. Investigators defined rural using Butler and Beale’s(Reference Butler and Beale23) coding system for metropolitan and non-metropolitan areas. Of the participating counties, seventeen were coded as 6 (population of 2500 to 19 999, adjacent to a metropolitan area), 7 (population of 2500 to 19 999, not adjacent to a metropolitan area) or 8 (completely rural or less than 2500 urban population, adjacent to a metropolitan area). The remaining six counties were in states without counties having Beale codes of 6–8. Four counties were in rural areas with no urban centres of populations exceeding 10 000, and two counties had no population centre greater than 10 000.

A convenience sample of 413 respondents was recruited in wave 1 from programmes and places serving low-income families, including Welfare-to-Work programmes, Head Start programmes, the Special Supplemental Nutrition Program for Women, Infants, and Children (WIC), public health clinics, and low-income housing. This approach to sample selection allowed the research team to access this hard-to-reach population through contacts known to and trusted by the participants. Trust is an extremely important issue for families in rural communities where anonymity and privacy are difficult to acquire and maintain. Thus, convenience sampling was preferable over randomized sampling. To be eligible for participation, women had to be at least 18 years of age, have at least one child aged 13 years or younger, and be eligible for food stamps in their state. All data were collected via an interviewer-administered questionnaire typically lasting 1·5–2·0 h. Of the original 413 respondents interviewed at wave 1, 325 were re-interviewed at wave 2 and 270 were re-interviewed at wave 3 for an overall attrition rate of 34·6 %.

Measures

Food insecurity was measured at all three waves by the Core Food Security Module (CFSM), an eighteen-item scale with a 12-month time reference administered as part of the Current Population Survey conducted by the US Census Bureau for the Bureau of Labor Statistics. The scale has good validity and reliability, with a reliability coefficient of α = 0·81 for households with children(Reference Hamilton, Cook and Thompson24). The CFSM is similarly reliable for populations of racial and ethnic minorities(Reference Frongillo25). Reliability for this rural sample matched reported reliability (α = 0·81).

Depression was measured at all three waves using the Center for Epidemiologic Studies–Depression Scale (CES-D), which was designed to measure depressive symptomatology in the general population(Reference Radloff26). The measure includes twenty items, each rated on a 4-point scale ranging from ‘rarely’ to ‘most or all of the time’. Respondents are asked to report on how they have been feeling over the last week. Statements include: (i) ‘I felt depressed’; (ii) ‘I felt everything I did was an effort’; and (iii) ‘I felt lonely’. There are four subscales, which include depressed affect, negative affect, interpersonal relationships and somatic symptoms. The four questions for negative affect are framed positively and then reverse scored. Reliability for the CES-D is α = 0·85 in the general population and α = 0·90 in psychiatric populations. Reliability in this sample matched the reliability reported for the general population (α = 0·85).

Five sociodemographic variables also were measured at wave 1, including age, ethnicity, household income, martial status and education. Age and household income were measured continuously. Martial status was measured in five categories (single, married, living with partner, divorced, separated). Ethnicity was measured in four categories (White, Black, Latina, other). Education was measured in six categories (8th grade or less, some high school, high school degree or general education equivalent, technical training, some college/associate’s degree, college degree or higher).

Data analysis

Since the food insecurity scores at each wave had a positively skewed distribution, we applied a logarithmic transformation to these scores before carrying out the following analyses. Bivariate associations among the depression scores and food insecurity scores were assessed using Pearson correlations. Each Pearson correlation was based on all subjects for whom measurements on both variables were available; the number of such subjects varied according to which two variables were considered. We then formulated a structural equation model encompassing all three waves of depression scores and food insecurity scores. A schematic for the model is presented in Fig. 1. The coefficients α 1 and α 2 link a depression score to a subsequent depression score, α 3 and α 4 link a food insecurity score to a subsequent food insecurity score, α 5 and α 6 link a depression score to a subsequent food insecurity score, and α 7 and α 8 link a food insecurity score to a subsequent depression score.

Fig. 1 Schematic for the structural equation model. Depression at wave 2 was modelled as a function of depression at wave 1, food insecurity at wave 1, and an error variable E 1. Depression at wave 3 was modelled as a function of depression at wave 2, food insecurity at wave 2, and an error variable E 2. Food insecurity at wave 2 was modelled as a function of depression at wave 1, food insecurity at wave 1, and an error variable E 3. Food insecurity at wave 3 was modelled as a function of depression at wave 2, food insecurity at wave 2, and an error variable E 4. Depression and food insecurity at wave 1 were assumed to be correlated, as were the two error variables affecting depression and the two error variables affecting food insecurity. The coefficients α 1 to α 8 were estimated using the structural equation modelling capabilities of AMOS version 7

We fit two versions of the structural equation model. The primary version was based on the 184 subjects for whom depression scores were recorded at all three waves (i.e. were not missing at any wave), food insecurity scores were recorded at all three waves, and income was recorded at the first wave. We required the availability of income for a test of whether α 1 to α 8 were the same across the two median-determined income strata, as previous work(Reference Simmons, Braun, Charnigo, Havens and Wright27) had documented a significant association between income and depression scores. Besides testing whether the coefficients were the same across income strata, we tested two other null hypotheses. One of these was that α 5 = α 6 = 0, meaning that depression would not impact food insecurity; the other was that α 7 = α 8 = 0, meaning that food insecurity would not impact depression.

The secondary version of the structural equation model was based on all 413 subjects, with missing values estimated by regression imputation prior to fitting the model. Since standard errors of coefficient estimates are inversely related to the square root of the sample size, the secondary version of the structural equation model should offer more precise, although slightly biased, coefficient estimates. All analyses were carried out using the Statistical Package for the Social Sciences version 15 and AMOS version 7 statistical software packages (SPSS Inc., Chicago, IL, USA).

Three complementary fit statistics were utilized to evaluate the structural equation models. First is the ‘χ 2/df’ lack-of-fit statistic. The χ 2 value pertains to a null hypothesis that the population covariance matrix of the observed variables equals the covariance matrix implied by the model. Because this null hypothesis is generally presumed to be false, most researchers do not formally accept or reject it. Rather, they divide the χ 2 value by its degrees of freedom. A large quotient (>5) indicates serious lack of fit and a small quotient (<3) suggests little lack of fit(Reference Bollen and Long28). Second is the root-mean-square error of approximation (RMSEA) lack-of-fit statistic, which is a non-negative quantity expressing the discrepancy between the population covariance matrix and that implied by the model. A large RMSEA (>0·10) reflects serious lack of fit, while a small RMSEA (<0·05) implies little lack of fit(Reference Bollen and Long28). Third is the comparative fit index (CFI) goodness-of-fit statistic, which is a quantity between 0 and 1 describing how much the model improves upon a straw-man ‘independence model’. A large CFI (>0·95) indicates good fit(Reference Mueller29).

Results

Demographic data have been summarized elsewhere(Reference Simmons, Braun, Charnigo, Havens and Wright27). Briefly, the majority of respondents were married or living with a partner, non-Hispanic White, and had a high school education, general education equivalent, or less. The mean age of participants was 30·1 years and median household income was $14 826. There was a significant association between income and depression scores, but depression scores were not significantly associated with marital status, race, education or age.

Pearson correlations for the depression scores and food insecurity scores are presented in Table 1. All of the correlations were positive and significantly different from 0 (all P < 0·01). Particularly strong correlations were found between wave 1 depression scores and wave 2 depression scores (0·534), between wave 2 depression scores and wave 3 depression scores (0·620), and between any two sets of food insecurity scores (0·524, 0·540, 0·547).

Table 1 Pearson correlations for depression and food insecurity: rural, low-income women with at least one child <13 years of age living in the home, USA, 2000–2002

Pearson correlations were calculated, using SPSS version 15, to quantify the bivariate associations for all pairs of variables that could be chosen from among depression at wave 1, depression at wave 2, depression at wave 3, food insecurity at wave 1, food insecurity at wave 2, and food insecurity at wave 3. Each Pearson correlation was based on all subjects for whom measurements on both variables were available. All Pearson correlations were significantly different from 0 at the 0·01 level.

The results for the primary version of the structural equation model, supposing that α 1 to α 8 are the same across income strata, are summarized in the ‘Complete case analysis’ columns of Table 2. The estimates of α 1, α 2, α 3, α 4 and α 7 were positive and significantly different from 0 (all P < 0·001). The estimates of α 5, α 6 and α 8 were not significantly different from 0 (all P > 0·10). However, coefficient estimates based on a sample size as small as 184 are fairly imprecise, so non-significant estimates do not imply that the coefficients equal 0. More importantly, a test of the null hypothesis α 5 = α 6 = 0 yielded χ 2 = 6·754 on 2 df (P = 0·034). Thus, while we cannot make the specific claim that α 5 ≠ 0 and cannot make the specific claim that α 6 ≠ 0, we can infer that at least one of these two coefficients is non-zero. Hence, the model cannot be simplified by omitting the links from depression to food insecurity, which is to say that there is a causal relationship from depression to food insecurity. In addition, a test of the null hypothesis α 7 = α 8 = 0 yielded χ 2 = 11·786 on 2 df (P = 0·003). Therefore, the model cannot be simplified by omitting the links from food insecurity to depression, which is to say that there is a causal relationship from food insecurity to depression. In sum, the model asserts a bidirectional relationship between food insecurity and depression, and fit statistics support this: χ 2/df = 1·835, RMSEA = 0·068, CFI = 0·989. Following the guidelines in the data analysis section, we determined that the structural equation model adequately represents the empirical patterns among depression scores and food insecurity scores, and the assertion of a bidirectional relationship is credible.

Table 2 Structural equation modelling results for the relationship between depression and food insecurity: rural, low-income women with at least one child <13 years of age living in the home, USA, 2000–2002

For the structural equation model depicted in Fig. 1, the coefficients α 1 to α 8 were estimated using AMOS version 7. The results under ‘Complete case analysis’ are based on the 184 subjects for whom there were no missing values on depression or food insecurity and for whom income at wave 1 was not missing. The results under ‘Analysis with missing values imputed’ are based on all 413 subjects, with any missing values imputed using AMOS version 7 prior to fitting the structural equation model. Each P value pertains to a null hypothesis that the corresponding coefficient is 0.

Finally, to justify the supposition that α 1 to α 8 are the same across income strata, we refit the model allowing α 1 to α 8 (along with variance/covariance parameters) to be estimated separately for subjects with wave 1 income below the median ($14 826) and for subjects with wave 1 income above the median. We then tested the null hypothesis that α 1 to α 8 (along with variance/covariance parameters) are the same across income strata. We obtained χ 2 = 18·074 on 17 df (P = 0·384), which justifies the supposition.

The results for the secondary version of the structural equation model are summarized in the ‘Analysis with missing values imputed’ columns of Table 2. The estimates of α 1, α 2, α 3, α 4, α 5, α 6 and α 7 were positive and significantly different from 0 (P for α 5 = 0·023, all other P < 0·001). The estimate of α 8 was not significantly different from 0 (P = 0·427). A test of the null hypothesis α 5 = α 6 = 0 yielded χ 2 = 23·558 on 2 df (P < 0·001), while a test of the null hypothesis α 7 = α 8 = 0 yielded χ 2 = 22·636 on 2 df (P < 0·001). Hence, the secondary version of the model also supports the conclusion of a bidirectional relationship between food insecurity and depression, and model fit statistics confirm this: χ 2/df = 2·454, RMSEA = 0·059, CFI = 0·994. These statistics suggest that the secondary version of the model adequately captures the empirical patterns among depression scores and food insecurity scores, adding further credibility to the conclusion of a bidirectional relationship.

Discussion

The present study found evidence of a simultaneous causal relationship between food insecurity and depression in a sample of rural, low-income women. To our knowledge, this study is the first of its kind to examine longitudinally the relationship between food insecurity and depression in the USA. This finding is important, not only because it underscores previous research showing food insecurity and depression are closely related, but also because it demonstrates the relationship is recursive. Thus, interventions aimed at reducing the prevalence of food insecurity in low-income rural households and depression in women living in these households can be approached on multiple levels.

Interventions aimed at increasing household food security in rural areas must target barriers systemically, including addressing high prices and increasing access to food stamps. Rural supermarket prices are on average 4 % higher than in suburban areas(7). Further, there are fewer supermarkets and more small grocery stores, the latter of which have prices averaging 10 % higher than chain supermarkets nationwide. Low-income rural residents are particularly vulnerable to paying higher prices for food. Thus, tax incentives should be provided to major supermarket chains to establish a presence in rural areas with low supermarket penetration.

Beyond paying higher prices for food, one-third of rural residents eligible to receive food stamps do not participate in the programme(Reference Wolkwitz8), which further limits access. Food stamp programmes should include campaigns to educate rural residents about eligibility requirements and increase access to this important resource. Further, research suggests that the effectiveness of food stamp redemption could be increased. A US Department of Agriculture analysis of food stamp redemptions in low-income, rural areas revealed that supermarkets accounted for only 52·8 % of redemptions, compared with 76·7 % of redemptions in supermarkets nationwide(7). These data suggest that rural families receiving food stamps are more likely than their urban counterparts to spend these benefits in smaller grocery stores where food is more expensive, thus decreasing the buying power of the stamps. Support for strategies to maximize the value of food stamps is needed. Travel vouchers to offset the expense of travelling to a supermarket in a neighbouring community in conjunction with budgeting and meal planning would assist families in making the most of food stamp participation.

Given the recursive relationship between food insecurity and depression, other possible interventions might occur at the level of the food stamp nutrition education programmes (FSNEP). In light of data demonstrating that deficiencies in vitamin B6(Reference Hvas, Juul, Bech and Nexo30) and folic acid(Reference Alpert and Fava31, Reference Alpert, Mischoulon, Nierenberg and Fava32) contribute to depressive illness, FSNEP could educate participants on how to economically increase their intakes of these nutrients. Further, FSNEP could develop and test brief depression screening and referral programmes. Such programmes might improve identification of depression in a population whose members are less likely to be seen for mental health problems than their urban and suburban counterparts(Reference Spoth33). Screening for maternal depression in other non-traditional settings has been shown to be beneficial(Reference Olson, Dietrich, Prazar and Hurley34).

As with food insecurity, research shows that rural women living in low-income households are vulnerable to depression, specifically undiagnosed depression. Hauenstein and Boyd(Reference Hauenstein and Boyd16) found that 41·4 % of 181 rural women interviewed by telephone reported clinically depressive symptomatology on the CES-D. Within their sample, young, unemployed and poorly educated women were most likely to report depressive symptoms. Sears et al.(Reference Sears, Danda and Evans17) assessed depression in 136 rural, low-income, predominantly female primary care patients using the Primary Care Evaluation of Mental Disorders (PRIME-MD) and found that 46 % screened positive for depression; fifty-three of those sixty-three patients (40 % of the total sample) were further evaluated and classified as depressed. A qualitative investigation of the daily hassles faced by thirty-three rural, poor single mothers found that nearly 69 % of the sample reported clinically depressive symptomatology (CES-D scores of 16 or greater)(Reference Wijinberg and Reding18). Hauenstein and Peddada(Reference Hauenstein and Peddada21) sampled 982 impoverished rural women attending a community health centre for a routine visit and found approximately half screened positive for depressive symptoms. Follow-up assessments revealed that 14·3 % of the positive screeners had current MDE.

Despite these high prevalence rates, rural residents often do not receive treatment. Research shows that rural residents with a history of depression are less likely to seek professional help(Reference Arons35, Reference Rost, Smith and Taylor36). Further, stigma(Reference Hauenstein37, Reference Hoyt, Conger, Valde and Weihs38) and lack of anonymity(Reference Kelleher and Robbins39) prevent many rural residents from seeking psychological care. These social barriers are compounded by structural barriers, including the shortage of qualified mental health professionals in rural areas and the lack of service outreach(Reference Spoth33). Additionally, Hauenstein(Reference Hauenstein37) found that even when care is available, rural women may not access it, because traditional mental health care is not congruent with how women discuss and understand their depression. Thus, mental health interventions in rural areas might include education to de-stigmatize depression and its treatments (both pharmacological and talk therapy) as well as programmes to increase access to mental health care, such as mobile mental health services and tele-health programmes. Further, given the simultaneous relationship between food insecurity and depression, mental health care providers in rural areas might include as part of their psychosocial evaluation an assessment of food security and dietary status. Such screenings may identify poor nutritional intake as an important contributor to poor mental health status and result in improved access to important food supports, such as food stamps.

Limitations

Findings from the present study must be considered within the context of its limitations. Although these data highlight the complexity of the relationship between food insecurity and depression over time in an under-researched population, this sample is not nationally representative, thus limiting generalizability to the broader rural population in the USA. Further, because the sample consists of rural residents only, the recursive relationship between food insecurity and depression found here may not extend to urban/suburban populations. Additionally, although results were similar for the primary model (missing data excluded) and the secondary model (missing data imputed), there is always the possibility of bias with incomplete data. Similarly, bias is also possible with self-reported data despite the use of standardized instruments to measure food insecurity and depression.

Conclusions

The present study highlights the importance of food security to good mental health and the importance of good mental health to food security. This is especially relevant for professionals serving populations that are vulnerable to both food insecurity and depression, such as rural low-income women. Resources directed at the health and well-being of such populations may be made more effective by simultaneously addressing nutrition and mental health. Programmes directed at the food security and nutrition needs of low-income families could address the potential influence of depression on food insecurity by assessing the need for mental health services. Individuals requiring mental health care could be referred to appropriate providers or programmes. Reciprocally, programmes and services designed to enhance the mental health of rural low-income families could include food security and nutritional health evaluations as part of their psychological intake assessment. Mental health providers treating individuals confronting depression as well as food insecurity and nutrition issues could refer their clients to the appropriate programmes and services. Public health nutritionists would benefit from education about the association between food insecurity and depression within rural populations. Additionally, these professionals could work with mental health professionals to simultaneously and comprehensively address the consequences of poor nutrition and poor mental health in rural settings. Future research focused on complementary nutrition and mental health interventions is warranted.

Acknowledgements

This research was supported in part by USDA/CSREES/NRICGP Grant 2001-35401-10215, 2002-35401-11591 and 2004-35401-14938, and by NIH/NIDA Grant 5 K12 DA014040-07 (to L.A.S.). The opinions expressed herein are solely those of the authors. There are no additional conflicts of interest. C.H.-C. contributed to the writing of the manuscript. R.C. conducted the analyses and contributed to the writing. L.A.S. conceptualized the study, contributed to the writing, and assisted with primary data collection for the ‘Rural Families Speak’ project.

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Figure 0

Fig. 1 Schematic for the structural equation model. Depression at wave 2 was modelled as a function of depression at wave 1, food insecurity at wave 1, and an error variable E1. Depression at wave 3 was modelled as a function of depression at wave 2, food insecurity at wave 2, and an error variable E2. Food insecurity at wave 2 was modelled as a function of depression at wave 1, food insecurity at wave 1, and an error variable E3. Food insecurity at wave 3 was modelled as a function of depression at wave 2, food insecurity at wave 2, and an error variable E4. Depression and food insecurity at wave 1 were assumed to be correlated, as were the two error variables affecting depression and the two error variables affecting food insecurity. The coefficients α1 to α8 were estimated using the structural equation modelling capabilities of AMOS version 7

Figure 1

Table 1 Pearson correlations for depression and food insecurity: rural, low-income women with at least one child <13 years of age living in the home, USA, 2000–2002

Figure 2

Table 2 Structural equation modelling results for the relationship between depression and food insecurity: rural, low-income women with at least one child <13 years of age living in the home, USA, 2000–2002