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Erschienen in: BMC Public Health 1/2019

Open Access 01.12.2019 | Research article

Relationship between area mortgage foreclosures, homeownership, and cardiovascular disease risk factors: The Hispanic Community Health Study/Study of Latinos

verfasst von: Earle C. Chambers, David B. Hanna, Simin Hua, Dustin T. Duncan, Marlene Camacho-Rivera, Shannon N. Zenk, Jessica L. McCurley, Krista Perreira, Marc D. Gellman, Linda C. Gallo

Erschienen in: BMC Public Health | Ausgabe 1/2019

Abstract

Background

The risk of mortgage foreclosure disproportionately burdens Hispanic/Latino populations perpetuating racial disparities in health. In this study, we examined the relationship between area-level mortgage foreclosure risk, homeownership, and the prevalence of cardiovascular disease risk factors among participants of the Hispanic Community Health Study/Study of Latinos (HCHS/SOL).

Methods

HCHS/SOL participants were age 18–74 years when recruited from four U.S. metropolitan areas. Mortgage foreclosure risk was obtained from the U.S. Department of Housing and Urban Development. Homeownership, sociodemographic factors, and cardiovascular disease risk factors were measured at baseline interview between 2008 and 2011. There were 13,856 individuals contributing to the analysis (median age 39 years old, 53% female).

Results

Renters in high foreclosure risk areas had a higher prevalence of hypertension and hypercholesterolemia but no association with smoking status compared to renters in low foreclosure risk areas. Renters were more likely to smoke cigarettes than homeowners.

Conclusion

Among US Hispanic/Latinos in urban cities, area foreclosure and homeownership have implications for risk of cardiovascular disease.
Abkürzungen
95% CI
95% Confidence Interval
APR
Adjusted Prevalence Ratio
BMI
Body Mass Index
CT
Census Tract
HCHS/SOL
Hispanic Community Health Study/Study of Latinos
HUD
U.S. Department of Housing and Urban Development
PR
Prevalence Ratios

Background

Racial residential segregation made Hispanic/Latino and black households particularly vulnerable to predatory lending practices and these populations were thus hardest hit by the U.S. housing crisis beginning in 2007 [1]. Whether the housing crisis placed an additional burden on cardiovascular health in the Hispanic/Latino population is unclear. Hypertension, high cholesterol, and smoking are referred to by the Centers for Disease Control and Prevention (CDC) as key risk factors for heart disease [2]. Nearly half of U.S. adults have at least one of these heart disease risk factors [3]. Prior studies examining the relationship between foreclosure and cardiovascular disease risk have included body mass index (BMI) [46], blood pressure [79], fasting glucose [7], mental health [10], and risk for hospitalization for heart attack and stroke [9, 11, 12]. These results, however, have been inconsistent. For example, Arcaya and colleagues [8] showed that adults living in close proximity to a foreclosed property were more likely to have elevated blood pressure, whereas Christine et al. [7] showed a small inverse relationship between foreclosures in a neighborhood and blood pressure. Studies of associations of area foreclosures and BMI are similarly inconsistent [46]. Inconsistent findings among these studies may reflect differences in measurement of foreclosures at the neighborhood levels or possibly differing mechanisms driving the association between foreclosures and various cardiovascular disease risk factors.
As research further uncovers the mechanisms linking foreclosures to health, examining the role of homeownership can be an important step in guiding policy. Homeowners are generally considered the most vulnerable during a foreclosure crisis but studies showing an association between neighborhood foreclosures and health suggest that both homeowners and renters can be affected by high foreclosures in the area. [4, 11, 12]. A high level of neighborhood foreclosures may influence health outcomes by reflecting conditions that contribute to environmental-related stress of residents [8, 10]; limited access to health care [11, 12]; and/or limited access to resources for a healthy diet and physical activity for residents [13]. More research is needed to confirm prior findings of the association of neighborhood foreclosures and cardiovascular disease. These studies should characterize the risk among homeowners and renters and examine a wider range of cardiovascular disease risk factors such as high cholesterol and cigarette smoking.
Despite a growing literature on the associations between neighborhood foreclosure and health [14], as well as homeownership and health [15], existing studies examining cardiovascular disease risk factors suffer from a variety of limitations. First, most studies do not examine more nuanced associations between neighborhood foreclosure, homeownership, and health. For example, among residents living in proximity to foreclosed properties, it is not clear whether residents who rent are as likely to show the poor health-related association of living in a high foreclosure risk neighborhood as residents who own their own home. Second, few studies include health behaviors associated with cardiovascular disease such as smoking. Third, many studies have not included large samples of racial and ethnic minorities, including Hispanic/Latinos – the largest ethnic minority population in the U.S. Fourth, many studies focus on single cities or limited geographical areas, which limits generalizability. The purpose of this study was to examine the relationship between neighborhood foreclosure risk, homeownership, and cardiovascular disease risk factors - i.e., hypertension, hypercholesterolemia, cigarette smoking - among Hispanic/Latino adults living in 4 major metropolitan areas in the U.S. We further examined whether the association of neighborhood foreclosure risk on cardiovascular disease risk factors differed between homeowners and renters, rarely addressed in previous research.

Methods

Study population and design

The Hispanic Community Health Study/Study of Latinos (HCHS/SOL) is a community-based prospective cohort study of 16,415 self-identified Hispanic/Latino persons aged 18–74 years at screening from randomly selected households in four U.S. field centers (Chicago, IL; Miami, FL; Bronx, NY; San Diego, CA) with baseline examination (2008 to 2011) and yearly telephone follow-up assessment. The goals of the HCHS/SOL, sample design, and cohort selection have been previously described [16, 17]. The baseline clinical examination included comprehensive biological (e.g., anthropometrics, blood draw), behavioral (e.g., tobacco use assessed by self-report), and socio-demographic (e.g., socioeconomic status, nativity) assessments. The Institutional Review Board at each field center approved the study. All participants gave written informed consent in either English or Spanish.

Exposures of interest

Mortgage foreclosure risk

In 2008, the U.S. Department of Housing and Urban Development (HUD) created a novel mortgage foreclosure risk metric which estimates mortgage foreclosure risk for the year 2007 and the first six months of 2008 as a function of area decline in home values as of June 2008; unemployment rate as of June 2008; and high cost mortgage loans between 2004 and 2006. The mortgage foreclosure risk metric is estimated at the census tract level and reflects areas in the country that have started or could potentially become areas of abandonment and disinvestment. This measure was used to inform where state and local resources should be targeted to stabilize neighborhoods and stem the decline of house values of homes in these areas. More details on the methodology HUD used to calculate mortgage foreclosure risk is available on the HUD website [18].

Homeownership

Homeownership was determined by a question asked during the baseline HCHS/SOL visit: Is your house, apartment, or mobile home… (1) “Owned by you or someone in the household free and clear --- without a mortgage or loan”; (2) “Owned by you or someone in the household--- with a mortgage or loan”; (3) “Rented”; or (4) occupied without rent. In order to be consistent with other studies that do not distinguish between mortgage status among owners, both of the ‘owned’ categories were combined into one category and compared with renters. [19, 20]

Cardiovascular disease risk factors

Each cardiovascular disease risk factor was measured during the baseline clinic visit of HCHS/SOL participants. Three seated blood pressure measurements were obtained after a 5-min rest period using an automatic sphygmanometer. The average of the second and third measurement was used in analysis. Hypertension was defined as a systolic blood pressure ≥ 140 mmHg, diastolic blood pressure ≥ 90 mmHg, and/or receiving antihypertensive medication. Hypercholesterolemia was defined as total cholesterol ≥240 mg/gL, LDL cholesterol ≥160 mg/ dL, or HDL cholesterol < 40 mg/ dL or receiving cholesterol lowering medications. Cigarette smoking was categorized as never, former, and current use.

Covariates

Participants’ height was measured to the nearest centimeter and body weight to the nearest 0.1 kg. BMI was calculated as weight in kilograms divided by height in meters squared. BMI categories were defined as underweight (< 18.5 kg/m2), normal weight (18.5–24.9 kg/m2), overweight (25.0–29.9 kg/m2), and obese (≥ 30.0 kg/m2). Potential confounders. Socio-demographic characteristics self-reported during the baseline exam included: age, sex, household income, education, employment, nativity (foreign-born vs. US-born), and Hispanic/Latino background. Neighborhood percent poverty was defined as the percentage of families per census tract (CT) whose income in the past 12 months was below the poverty line, based on data from 2007 to 2011 American Community Survey 5-year estimates [21, 22].

Statistical analyses

All participants of the HCHS/SOL cohort with complete information for study variables were included in the current analysis (n = 13,856) with several specific exceptions. Residents indicating that they occupy their home without paying rent were excluded from analysis (n = 422). Since we were interested in examining risk factor for cardiovascular disease and to reduce the likelihood of reverse causation of residents with pre-existing cardiovascular disease preferentially residing in high foreclosure areas, participants with preexisting cardiovascular disease at the baseline interview were also excluded from analysis (n = 1166). Preexisting cardiovascular disease included prevalent coronary heart disease, defined as self-report of history of heart attack or procedure (angioplasty, stent, bypass) or electrocardiogram showing old myocardial infarction; or cerebrovascular disease, defined as self-reported medical history of stroke, mini-stroke or transient ischemic attack, or carotid revascularization or balloon angioplasty or surgery to the arteries in the neck at baseline assessment.
A mortgage foreclosure risk value was attributed to each participant based on his or her residential census tract. The mortgage foreclosure risk variable was linked based on 2000 census tract boundaries, whereas the percent poverty variable was linked to each participant’s census tract based on 2010 census tract boundaries. In this study, 97% of addresses were successfully geocoded. Participants not able to be geocoded were dropped from the analysis (n = 551).
We computed descriptive statistics (e.g. proportions) across all study variables. We initially compared all study variables including homeownership across tertiles of mortgage foreclosure risk. Poisson regression models were used to estimate prevalence ratios (PR) with 95% confidence intervals (95% CI) for hypertension, hypercholesterolemia, and smoking by homeownership status and mortgage foreclosure risk, with robust variance estimation used to account for clustering by census tract. Additional stratified analyses were done to examine the association of mortgage foreclosure risk with cardiovascular disease risk factors by homeownership status. Analyses were primarily adjusted for age, sex, education level, employment status, income level, nativity, Hispanic/Latino group, and percent poverty level.
All reported values (means, prevalences, and prevalence ratios) were weighted to account for the disproportionate selection of the sample and to partially adjust for any bias due to differential nonresponse in the selected sample at the household and individual levels. The adjusted weights were also trimmed to limit precision losses due to the variability of the adjusted weights, and calibrated to the 2010 Census characteristics by age, sex, and Hispanic/Latino background in each field site’s target population. All analyses also account for cluster sampling and the use of stratification in sample selection.
Statistical significance was determined at the P < 0.05 level. All analyses were performed using SAS 9.4 software (SAS Institute, Cary, NC) and SUDAAN software Release 11.0 (RTI International, Research Triangle Park, NC).

Results

There were 13,856 HCHS/SOL participants whose data contributed to the study. Table 1 shows the distribution of baseline characteristics of HCHS/SOL participants by tertile of neighborhood mortgage foreclosure risk. Most HCHS/SOL participants lived in a rental unit (74%). A higher percentage of renters lived in high mortgage foreclosure risk areas, than low mortgage foreclosure risk areas; and more homeowners lived in low mortgage foreclosure risk areas than in high mortgage foreclosure risk areas. Participants who identified as Cuban were largely located in areas of high foreclosure risk, while participants who identified as Mexican were largely in areas of low and medium foreclosure risk (Table 1). The census tract-level correlation between mortgage foreclosure risk and percent poverty was r = 0.16 (P < 0.01), indicating that high mortgage foreclosure risk areas were not uniformly congruent with high poverty areas.
Table 1
Demographic, homeownership status, and health characteristics of the HCHS/ SOL cohort by census tract-level mortgage foreclosure risk
 
Census tract-level Mortgage Foreclosure Risk
Overall
Low
Medium
High
N
Median (IQR) or % (95% CI)
N
Median (IQR) or % (95% CI)
N
Median (IQR) or % (95% CI)
N
Median (IQR) or % (95% CI)
Foreclosure rate
13, 851
7.5 (6.2, 9.5)
4444
5.8 (5.0, 6.3)
4737
7.5 (7.0, 8.0)
4670
10.5 (9.2, 11.2)
Homeownership
 Renters
9935
74.1 (71.8, 76.4)
3023
69.8 (64.3, 74.8)
3260
73.3 (69.8, 76.5)
3652
79.0 (75.9, 81.9)
 Owners
3916
25.8 (23.6, 28.2)
1421
30.2 (25.2, 35.7)
1477
26.7 (23.5, 30.3)
1018
21.0 (18.1, 24.1)
Demographics
Age Categories, years
 18–44
5919
61.8 (60.3, 63.3)
1887
62.5 (59.8, 65.1)
2080
65.6 (63.1, 68.0)
1952
57.9 (55.4, 60.4)
 45–64
6970
30.8 (29.6, 32.0)
2213
31.0 (28.9, 33.2)
2348
28.9 (26.7, 31.1)
2409
32.3 (30.4, 34.3)
 65+
962
7.4 (6.7, 8.2)
344
6.6 (5.4, 8.0)
309
5.5 (4.6, 6.6)
309
9.8 (8.5, 11.4)
Sex
 Female
8379
52.6 (51.5, 53.8)
2725
53.9 (51.8, 56.0)
2895
51.7 (49.5, 54.0)
2759
52.1 (50.4, 53.9)
 Male
5472
47.4 (46.2, 48.6)
1719
46.1 (44.0, 48.3)
1842
48.3 (46.0, 50.5)
1911
47.9 (46.1, 49.6)
Education
  < High school
5133
31.4 (29.9, 32.9)
1709
31.5 (28.6, 34.6)
1872
34.3 (31.9, 36.7)
1552
28.8 (26.6, 31.2)
 High school
3622
28.5 (27.3, 29.7)
1097
26.2 (24.2, 28.4)
1229
29.3 (27.0, 31.6)
1296
29.9 (28.1, 31.8)
  > High school
5096
40.2 (38.5, 41.9)
1638
42.3 (38.7, 46.0)
1636
36.5 (34.1, 38.9)
1822
41.3 (38.7, 43.9)
Annual Income, $
  < 20,000
6001
41.2 (39.4, 42.9)
1793
37.4 (34.0, 40.9)
1952
40.9 (38.0, 43.8)
2256
44.9 (42.5, 47.4)
 20,000-50,000
5404
38.3 (36.9, 39.8)
1687
37.6 (35.3, 39.9)
2029
41.9 (39.4, 44.4)
1688
36.1 (33.6, 38.6)
  > 50,000
1390
12.1 (10.6, 13.8)
658
18.1 (14.8, 22.0)
466
11.1 (9.4, 13.1)
266
7.2 (6.0, 8.7)
 Don’t Know/Refused
1056
8.4 (7.6, 9.3)
306
6.9 (5.9, 8.2)
290
6.1 (5.1, 7.3)
460
11.8 (10.2, 13.6)
Hispanic/Latino background
 Dominican
1202
9.4 (8.1, 10.9)
668
15.5 (12.6, 18.9)
363
8.9 (6.9, 11.5)
171
4.1 (2.4, 6.7)
 Central American
1526
7.8 (6.7, 9.0)
316
4.8 (3.9, 5.9)
304
5.1 (3.9, 6.7)
906
12.8 (10.4, 15.7)
 Cuban
2036
20.6 (17.4, 24.2)
67
2.2 (1.5, 3.1)
170
6.3 (4.4, 8.9)
1799
50.0 (43.7, 56.3)
 Mexican
5606
38.3 (35.1,41.7)
1788
44.4 (38.9, 50.1)
2823
55.7 (50.5, 60.8)
995
18.0 (13.1, 24.3)
 Puerto Rican
2128
14.9 (13.4, 16.5)
1074
22.6 (19.5, 26.0)
708
16.0 (13.5, 18.8)
346
6.7 (4.9, 8.9)
 South American
933
5.0 (4.4, 5.7)
353
5.6 (4.5, 6.9)
249
4.1 (3.3, 5.2)
331
5.2 (4.2, 6.5)
 Mixed/other
420
4.0 (3.5, 4.6)
178
4.9 (4.0, 6.0)
120
3.9 (2.9, 5.3)
122
3.2 (2.5, 4.1)
Employment
 Retired
1128
7.0 (6.3, 7.8)
443
7.3 (6.0, 8.8)
360
5.8 (4.9, 6.9)
325
7.7 (6.6, 9.1)
 Unemployed
5429
40.8 (39.4, 42.2)
1603
38.4 (36.1, 40.9)
1818
39.9 (37.5, 42.4)
2008
43.8 (41.4, 46.1)
 Part-time
2435
17.6 (16.7, 18.5)
794
18.1 (16.6, 19.8)
884
19.2 (17.7, 20.8)
757
15.7 (14.2, 17.4)
 Full-time
4859
34.6 (33.3, 36.0)
1604
36.1 (33.8, 38.6)
1675
35.1 (32.7, 37.6)
1580
32.8 (30.8, 34.9)
Nativity
 Foreign Born
11,432
77.2 (75.5, 78.8)
3411
70.0 (67.6, 72.3)
3799
73.9 (71.2, 76.5)
4222
86.7 (83.7, 89.2)
 US Born (50 States and District of Columbia)
2419
22.8 (21.2, 24.6)
1033
30.0 (27.7, 32.4)
938
26.1 (23.5, 28.8)
448
13.3 (10.8, 16.3)
Tertiles of % poverty
 Low
4742
34.3 (30.4, 38.5)
1934
46.6 (39.3, 54.0)
2041
38.8 (31.5, 46.5)
767
19.1 (14.8, 24.3)
 Medium
4603
30.8 (26.8, 35.2)
1248
24.1 (18.6, 30.6)
1518
32.1 (25.2, 39.8)
1837
36.2 (28.6, 44.6)
 High
4506
34.8 (30.8, 39.1)
1262
29.4 (23.7, 35.7)
1178
29.2 (23.0, 36.2)
2066
44.7 (36.5, 53.2)
Health
 Hypertension
3806
21.8 (20.7, 23.1)
1243
19.4 (17.6, 21.3)
1173
18.8 (16.9, 20.8)
1390
26.7 (24.7, 28.9)
 Hypercholesterolemia
6064
40.6 (39.3, 41.8)
1903
38.1 (35.9, 40.3)
2015
39.1 (36.9, 41.3)
2146
44.2 (42.2, 46.2)
 Current Cigarette Use
2616
20.7 (19.6, 21.8)
753
18.4 (16.7, 20.1)
833
19.9 (18.1, 21.9)
1030
23.5 (21.7, 25.5)
BMI, kg/m2
 Underweight (< 18.5)
106
1.1 (0.9, 1.5)
34
1.5 (0.9, 2.3)
27
0.6 (0.4, 1.0)
45
1.2 (0.8, 1.8)
 Normal (18.5–24.9)
2750
22.7 (21.7, 23.8)
878
22.7 (21.0, 24.5)
911
21.8 (19.9, 23.8)
961
23.5 (21.9, 25.1)
 Overweight (25–29.9)
5244
37.6 (36.3, 38.8)
1681
38.0 (35.6, 40.4)
1810
37.9 (35.6, 40.3)
1753
36.9 (35.238.6)
 Obese (≥30)
5751
38.6 (37.3, 39.9)
1851
37.9 (35.5, 40.3)
1989
39.6 (37.3, 42.1)
1911
38.4 (36.5, 40.4)
Center
 Bronx
3204
26.8 (24.1, 29.7)
1900
46.1 (39.7, 52.7)
987
27.5 (21.8, 34.0)
317
8.0 (4.9, 12.8)
 Chicago
3662
16.7 (14.7, 18.8)
1472
21.0 (16.5, 26.3)
1301
19.9 (15.0, 26.0)
889
9.8 (6.3, 15.0)
 Miami
3543
30.3 (26.2, 34.8)
94
2.9 (1.7, 4.7)
347
10.9 (7.8, 15.0)
3102
72.4 (64.8, 79.0)
 San Diego
3442
26.3 (23.0, 29.8)
978
30.0 (23.1, 38.0)
2102
41.7 (35.1, 48.6)
362
9.8 (5.7, 16.2)
Census tract-level Mortgage Foreclosure Risk: Low: foreclosure rates ≤6.65%; Medium: 6.65–8.44%; High: > 8.44% in the HCHS/SOL cohort
Hypertension is defined as: systolic or diastolic BP is greater than or equal to 140/90 mmHg or if the participant self-reported as currently taking antihypertensive mediations. Participants without a blood pressure measurement and no medication use were assumed to be not hypertensive
Dyslipidemia is defined as: total cholesterol ≥240 or Low Density Lipoprotein cholesterol ≥160 or High Density Lipoprotein cholesterol < 40 or use of lipid lowering drugs
Crude PR showed that each increase in tertile of foreclosure was associated with an increasing trend in prevalence of hypertension and current smoking status and a decreasing trend in hypercholesterolemia [Table 2]. In adjusted models, high foreclosure risk was positively associated with prevalence of hypertension and hypercholesterolemia among renters but not among homeowners [Table 2]. Homeownership was associated with a lower prevalence of smoking (APR: 0.83; 95% CI: 0.72–0.96) but was not associated with hypertension (APR: 1.08; 95% CI: 0.98–1.18), or hypercholesterolemia (APR: 0.98; 95% CI: 0.90–1.06) in adjusted models including foreclosure risk, BMI, and confounding variables.
Table 2
Multivariable Poisson regression analysis of census tract-level mortgage foreclosure risk and prevalence of cardiovascular disease risk factors stratified by homeownership status among HCHS/SOL participants
 
Owners
Renters
 
Crude PR (95% CI)
Adjusteda PR (95% CI)
Crude PR (95% CI)
Adjusteda PR (95% CI)
Census tract-level mortgage foreclosure risk
Hypertension
 High
1.09 (0.87, 1.37)
0.87 (0.68, 1.11)
1.52 (1.31, 1.76)
1.25 (1.08, 1.46)
 Medium
0.90 (0.71, 1.14)
0.99 (0.84, 1.17)
1.01 (0.86, 1.20)
1.10 (0.96, 1.28)
 Low (referent)
Hypercholesterolemia
 High
0.89 (0.75, 1.05)
0.94 (0.80, 1.11)
1.04 (0.95, 1.14)
1.12 (1.01, 1.24)
 Medium
0.98 (0.85, 1.14)
0.98 (0.84, 1.13)
1.14 (1.03, 1.25)
1.01 (0.92, 1.11)
 Low (referent)
Current Smoking
 High
1.27 (0.97, 1.67)
1.16 (0.80, 1.68)
1.10 (0.95, 1.27)
1.12 (0.95, 1.31)
 Medium
1.22 (0.91, 1.63)
0.95 (0.72, 1.25)
1.02 (0.86, 1.20)
1.06 (0.91, 1.24)
 Low (referent)
CI confidence interval, PR prevalence ratio. Census tract-level mortgage foreclosure risk: Low: foreclosure rates ≤6.65%; Medium: 6.65–8.44%; High: > 8.44% in the HCHS/SOL cohort. a Adjusted for age, sex, education, income, ethnicity, body mass index, cigarette use (except in smoking model), nativity, employment, and neighborhood poverty

Discussion

The HUD mortgage foreclosure risk metric identifies at-risk neighborhoods on the verge of economic instability and crisis. It is a measure that captures areas starting to decline providing a window to prevention where policy may influence cardiovascular disease. Using a sample of Hispanics/Latinos sheds light on the health consequences of a largely growing demographic in the U.S. hardest hit by the 2007 housing crisis. Our results showing a significant association of area foreclosure risk with hypertension and hypercholesterolemia among renters but not homeowners suggest that renters are particularly vulnerable in areas where the risk for foreclosures is high. The null finding among homeowners may suggest that residents owning their homes are better able to weather the economic downturn than renters. This is consistent with data showing that homeowners have stronger social ties within the communities that they live in and are better able to access the resources in their neighborhood that promote healthier lifestyle choices and overall wellbeing [2325]. In our study, we also showed that renters were more likely to be current cigarette smokers than homeowners. This is consistent with reports showing smoking risk to be almost three times more likely among renters than homeowners [26]. Renting, in this study, may indicate a less stable housing environment; and living in less stable housing undermines prioritizing healthy behaviors [27, 28].
Saegert proposes a model where home foreclosures also contribute to racial disparities in housing and place racial and ethnic minorities in housing niches where once a household is in this niche they are exposed to cumulative hazards that affect current and future generations [29, 30]. This is an interesting approach to understanding the health consequences of area foreclosures as a contextual exposure influencing access to resources over time. More research is needed to further elucidate the pathways that might link neighborhood foreclosures and cardiometabolic disease. Considering the intersection of foreclosure, homeownership, and health can inform housing policies with the potential to broaden public health impact and reduce racial and ethnic and socio-economic status-related health disparities [31, 32].
The strength of our foreclosure metric is that it is consistent with federal guidelines used to determine the allocation of resources to communities in most need. The health consequences of the foreclosure crisis that preceded the Great Recession affected renters as well as homeowners. [9] In our study, we posit that neighborhood foreclosure risk is a useful measure of the neighborhood cost of economic decline particularly as it relates to housing insecurity, which can affect all of those living in an area, renters and homeowners alike. Foreclosure risk as measured in this study has some precedent in its use in understanding adverse health outcomes. In a sample of breast cancer survivors, Schootman et al. [20] used a HUD predicted measure of area foreclosures to show that women living in high foreclosure risk areas are more likely to report fair-poor health than women in low foreclosure risk areas. This suggests that residents can begin to feel the distress of living in an at-risk area prior to an actual increase in foreclosure rates. This measure is directly applicable to federal housing-related policies that use this metric to distribute aid to vulnerable communities.

Limitations

This study is cross-sectional; therefore, it is not possible to determine the temporal relationship between foreclosure, homeownership, and cardiovascular disease risk factors. By limiting our analysis to participants without cardiovascular disease, however, we sought to limit reverse causation where participants with illness were more likely to be in a neighborhood with more foreclosure risk and less likely to be a homeowner. Furthermore, all analyses assume no residential movement between mortgage foreclosure risk assessment and the baseline interview/clinical assessment of HCHS/SOL participants. It may be that residents who moved had foreclosure exposure inconsistent with the census tract associated with their health-related outcomes at the time of clinical measurement. While we are unable to determine how many participants this affects, approximately 14% of Hispanics/Latinos in the U.S. change residence in a given year, compared to 11% of non-Hispanic whites [33]. Healthier people with more resources to buffer the negative influence of adverse exposures in their neighborhood may selectively move to better neighborhoods with lower risk of foreclosure. As a result, the data showing better health outcomes in neighborhoods with a lower foreclosure risk could suffer from some selection bias. This is a common limitation of cross-sectional area-level studies that can best be addressed with a longitudinal study design. Another limitation of our study is that our data do not allow us to determine which residents are personally undergoing a foreclosure at the time of data collection. Prior research indicates that these residents may be more likely to experience stress due to their impending foreclosure status [34]. It is possible that the stress of an impending eviction may limit an individual’s ability to access health promoting resources.. Our data only allow an examination of the relationship between living in a place with high foreclosure risk and CVD risk factors and is unable to determine the association of a personal foreclosure experienced by residents with CVD risk. Finally, as this study was conducted among Hispanic/Latino adults in four urban metropolitan areas, these results might not be generalizable to other populations. Additional research is needed to examine differences in foreclosure experiences and health affects among diverse racial and ethnic groups.

Conclusion

There are substantial burdens of cardiovascular disease risk factors in the U.S. among all major Hispanic/Latino background groups [35], and greater risks in low-income individuals [3]. As the pathways that contribute to these racial/ethnic and SES disparities in cardiovascular health are uncovered, housing has been identified as an important upstream social determinant that requires interdisciplinary interventions to address [36]. The growing evidence including the results from this study show that home mortgage foreclosures can negatively affect community health. Public health practitioners are increasingly looking outside of health care to housing policy to address many social and economic determinants of health [36, 37]. Housing policies that provide pathways to stable housing for homeowners and renters may bolster cardiovascular disease prevention campaigns within neighborhoods. For example, Making Home Affordable (MHA) programs are resources available to homeowners to help keep them in their homes should they be faced with the possibility of a foreclosure. Among renters, preventing eviction and displacement by implementing legislation that provides rental relief for tenants that pay more than 30% of their gross income on rent and utilities such as that proposed under the Rental Relief Act; or providing legal representation in housing court for low-income residents as is being done in New York City can be useful strategies to stabilize housing for vulnerable residents. Providing opportunities for residents to stay securely housed has the potential to curb the adverse health outcomes that accompany unstable housing.

Acknowledgements

Not applicable.

Funding

This work was supported by the National Heart, Lung, and Blood Institute (NHLBI) grant K01HL125466 and 1R03HL140265 to Dr. Earle Chambers; and the Hispanic Community Health Study/Study of Latinos was carried out as a collaborative study supported by contracts from the National Heart, Lung, and Blood Institute (NHLBI) to the University of North Carolina (N01-HC65233), University of Miami (N01-HC65234), Albert Einstein College of Medicine (N01-HC65235), Northwestern University (N01-HC65236), and San Diego State University (N01-HC65237). The following Institutes/Centers/Offices contribute to the HCHS/SOL through a transfer of funds to the NHLBI: National Center on Minority Health and Health Disparities, the National Institute of Deafness and Other Communications Disorders, the National Institute of Dental and Craniofacial Research, the National Institute of Diabetes and Digestive and Kidney Diseases, the National Institute of Neurological Disorders and Stroke, and the Office of Dietary Supplements. Dr. David Hanna was supported by K01HL137557.

Availability of data and materials

Data is available through the coordinating center of the HCHS/SOL (https://​sites.​cscc.​unc.​edu/​hchs/).
The Institutional Review Boards of the Albert Einstein College of Medicine, the University of Illinois at Chicago, the University of Miami, San Diego State University, and the University of North Carolina at Chapel Hill (each field center and the coordinating center of the HCHS/SOL) approved the study protocol. All participants gave written informed consent in either English or Spanish.
Not applicable.

Competing interests

The authors declare that they have no competing interests.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://​creativecommons.​org/​licenses/​by/​4.​0/​), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The Creative Commons Public Domain Dedication waiver (http://​creativecommons.​org/​publicdomain/​zero/​1.​0/​) applies to the data made available in this article, unless otherwise stated.
Literatur
1.
Zurück zum Zitat Rugh JS, Massey DS. Racial segregation and the American foreclosure crisis. Am Sociol Rev. 2010;75(5):629–51.CrossRef Rugh JS, Massey DS. Racial segregation and the American foreclosure crisis. Am Sociol Rev. 2010;75(5):629–51.CrossRef
3.
Zurück zum Zitat Fryar CD, Chen T, Li X. Prevalence of uncontrolled risk factors for cardiovascular disease: United States, 1999–2010. NCHS data brief. 2012;103:1–8. Fryar CD, Chen T, Li X. Prevalence of uncontrolled risk factors for cardiovascular disease: United States, 1999–2010. NCHS data brief. 2012;103:1–8.
4.
Zurück zum Zitat Arcaya M, Glymour MM, Chakrabarti P, Christakis NA, Kawachi I, Subramanian SV. Effects of proximate foreclosed properties on individuals' weight gain in Massachusetts, 1987-2008. Am J Public Health. 2013;103(9):e50–6.CrossRef Arcaya M, Glymour MM, Chakrabarti P, Christakis NA, Kawachi I, Subramanian SV. Effects of proximate foreclosed properties on individuals' weight gain in Massachusetts, 1987-2008. Am J Public Health. 2013;103(9):e50–6.CrossRef
5.
Zurück zum Zitat Christine PJ, Moore K, Crawford ND, Barrientos-Gutierrez T, Sanchez BN, Seeman T, Diez Roux AV. Exposure to neighborhood foreclosures and changes in Cardiometabolic health: results from MESA. Am J Epidemiol. 2017;185(2):106–14.CrossRef Christine PJ, Moore K, Crawford ND, Barrientos-Gutierrez T, Sanchez BN, Seeman T, Diez Roux AV. Exposure to neighborhood foreclosures and changes in Cardiometabolic health: results from MESA. Am J Epidemiol. 2017;185(2):106–14.CrossRef
6.
Zurück zum Zitat Downing J, Karter A, Rodriguez H, Dow WH, Adler N, Schillinger D, Warton M, Laraia B. No spillover effect of the foreclosure crisis on weight change: the diabetes study of northern California (DISTANCE). PLoS One. 2016;11(3). Downing J, Karter A, Rodriguez H, Dow WH, Adler N, Schillinger D, Warton M, Laraia B. No spillover effect of the foreclosure crisis on weight change: the diabetes study of northern California (DISTANCE). PLoS One. 2016;11(3).
7.
Zurück zum Zitat Christine PJ, Moore K, Crawford ND, Barrientos-Gutierrez T, Sanchez BN, Seeman T, Diez Roux AV. Exposure to neighborhood foreclosures and changes in Cardiometabolic health: results from MESA. Am J Epidemiol. 2016. Christine PJ, Moore K, Crawford ND, Barrientos-Gutierrez T, Sanchez BN, Seeman T, Diez Roux AV. Exposure to neighborhood foreclosures and changes in Cardiometabolic health: results from MESA. Am J Epidemiol. 2016.
8.
Zurück zum Zitat Arcaya M, Glymour MM, Chakrabarti P, Christakis NA, Kawachi I, Subramanian SV. Effects of proximate foreclosed properties on individuals' systolic blood pressure in Massachusetts, 1987 to 2008. Circulation. 2014;129(22):2262–8.CrossRef Arcaya M, Glymour MM, Chakrabarti P, Christakis NA, Kawachi I, Subramanian SV. Effects of proximate foreclosed properties on individuals' systolic blood pressure in Massachusetts, 1987 to 2008. Circulation. 2014;129(22):2262–8.CrossRef
9.
Zurück zum Zitat Currie J, Tekin E. Is there a link between foreclosure and health? Am Econ J-Econ Polic. 2015;7(1):63–94.CrossRef Currie J, Tekin E. Is there a link between foreclosure and health? Am Econ J-Econ Polic. 2015;7(1):63–94.CrossRef
10.
Zurück zum Zitat Tsai AC. Home Foreclosure, Health, and Mental health: a systematic review of individual, aggregate, and Contextual Associations. Plos One. 2015;10(4). Tsai AC. Home Foreclosure, Health, and Mental health: a systematic review of individual, aggregate, and Contextual Associations. Plos One. 2015;10(4).
11.
Zurück zum Zitat Pollack CE, Kurd SK, Livshits A, Weiner M, Lynch J. A case-control study of home foreclosure, health conditions, and health care utilization. J Urban Health. 2011;88(3):469–78.CrossRef Pollack CE, Kurd SK, Livshits A, Weiner M, Lynch J. A case-control study of home foreclosure, health conditions, and health care utilization. J Urban Health. 2011;88(3):469–78.CrossRef
12.
Zurück zum Zitat Pollack CE, Lynch J. Health status of people undergoing foreclosure in the Philadelphia region. Am J Public Health. 2009;99(10):1833–9.CrossRef Pollack CE, Lynch J. Health status of people undergoing foreclosure in the Philadelphia region. Am J Public Health. 2009;99(10):1833–9.CrossRef
13.
Zurück zum Zitat Alley DE, Lloyd J, Pagan JA, Pollack CE, Shardell M, Cannuscio C. Mortgage delinquency and changes in access to health resources and depressive symptoms in a nationally representative cohort of Americans older than 50 years. Am J Public Health. 2011;101(12):2293–8.CrossRef Alley DE, Lloyd J, Pagan JA, Pollack CE, Shardell M, Cannuscio C. Mortgage delinquency and changes in access to health resources and depressive symptoms in a nationally representative cohort of Americans older than 50 years. Am J Public Health. 2011;101(12):2293–8.CrossRef
14.
Zurück zum Zitat Duncan D, Kawachi I. Neighborhoods and health. 2nd ed. Oxford, UK: Oxfodr University Press; 2018. Duncan D, Kawachi I. Neighborhoods and health. 2nd ed. Oxford, UK: Oxfodr University Press; 2018.
15.
Zurück zum Zitat Arcaya M. Neighborhood foreclosure and health. 2nd ed. Oxford, UK: Oxford University Press; 2018.CrossRef Arcaya M. Neighborhood foreclosure and health. 2nd ed. Oxford, UK: Oxford University Press; 2018.CrossRef
16.
Zurück zum Zitat Lavange LM, Kalsbeek WD, Sorlie PD, Aviles-Santa LM, Kaplan RC, Barnhart J, Liu KA, Giachello A, Lee DJ, Ryan J, et al. Sample design and cohort selection in the Hispanic community health study/study of Latinos. Ann Epidemiol. 2010;20(8):642–9.CrossRef Lavange LM, Kalsbeek WD, Sorlie PD, Aviles-Santa LM, Kaplan RC, Barnhart J, Liu KA, Giachello A, Lee DJ, Ryan J, et al. Sample design and cohort selection in the Hispanic community health study/study of Latinos. Ann Epidemiol. 2010;20(8):642–9.CrossRef
17.
Zurück zum Zitat Sorlie PD, Aviles-Santa LM, Wassertheil-Smoller S, Kaplan RC, Daviglus ML, Giachello AL, Schneiderman N, Raij L, Talavera G, Allison M, et al. Design and implementation of the Hispanic community health study/study of Latinos. Ann Epidemiol. 2010;20(8):629–41.CrossRef Sorlie PD, Aviles-Santa LM, Wassertheil-Smoller S, Kaplan RC, Daviglus ML, Giachello AL, Schneiderman N, Raij L, Talavera G, Allison M, et al. Design and implementation of the Hispanic community health study/study of Latinos. Ann Epidemiol. 2010;20(8):629–41.CrossRef
19.
Zurück zum Zitat Ortiz SE, Zimmerman FJ. Race/ethnicity and the relationship between homeownership and health. Am J Public Health. 2013;103(4):e122–9.CrossRef Ortiz SE, Zimmerman FJ. Race/ethnicity and the relationship between homeownership and health. Am J Public Health. 2013;103(4):e122–9.CrossRef
20.
Zurück zum Zitat Schootman M, Deshpande AD, Pruitt SL, Jeffe DB. Neighborhood foreclosures and self-rated health among breast cancer survivors. Qual Life Res. 2012;21(1):133–41.CrossRef Schootman M, Deshpande AD, Pruitt SL, Jeffe DB. Neighborhood foreclosures and self-rated health among breast cancer survivors. Qual Life Res. 2012;21(1):133–41.CrossRef
21.
Zurück zum Zitat The 2007–2011 ACS 5-Year Summary File Technical Documentation. U.S. Departtment of Commence. Economic and Statistics Administration. U.S: Census Bureau; 2012. The 2007–2011 ACS 5-Year Summary File Technical Documentation. U.S. Departtment of Commence. Economic and Statistics Administration. U.S: Census Bureau; 2012.
22.
Zurück zum Zitat Duncan DT, Kawachi I, White K, Williams DR. The geography of recreational open space: influence of neighborhood racial composition and neighborhood poverty. J Urban Health. 2013;90(4):618–31.CrossRef Duncan DT, Kawachi I, White K, Williams DR. The geography of recreational open space: influence of neighborhood racial composition and neighborhood poverty. J Urban Health. 2013;90(4):618–31.CrossRef
23.
Zurück zum Zitat Lindblad MR, Manturuk KR, Quercia RG. Sense of community and informal social control among lower income households: the role of homeownership and collective efficacy in reducing subjective neighborhood crime and disorder. Am J Community Psychol. 2013;51(1–2):123–39.CrossRef Lindblad MR, Manturuk KR, Quercia RG. Sense of community and informal social control among lower income households: the role of homeownership and collective efficacy in reducing subjective neighborhood crime and disorder. Am J Community Psychol. 2013;51(1–2):123–39.CrossRef
24.
Zurück zum Zitat Rossi PH, Weber E. The social benefits of homeownership: empirical evidence from National Surveys. Housing Policy Debate. 1996;7(1):1–35.CrossRef Rossi PH, Weber E. The social benefits of homeownership: empirical evidence from National Surveys. Housing Policy Debate. 1996;7(1):1–35.CrossRef
25.
Zurück zum Zitat Rohe WM, Stewart LS. Homeownership and neighborhood stability. Housing Policy Debate. 1996;7(1):37–81.CrossRef Rohe WM, Stewart LS. Homeownership and neighborhood stability. Housing Policy Debate. 1996;7(1):37–81.CrossRef
26.
Zurück zum Zitat Laaksonen M, Rahkonen O, Karvonen S, Lahelma E. Socioeconomic status and smoking. Eur J Pub Health. 2005;15(3):262–9.CrossRef Laaksonen M, Rahkonen O, Karvonen S, Lahelma E. Socioeconomic status and smoking. Eur J Pub Health. 2005;15(3):262–9.CrossRef
27.
Zurück zum Zitat Reid KW, Vittinghoff E, Kushel MB. Association between the level of housing instability, economic standing and health care access: a meta-regression. J Health Care Poor Underserved. 2008;19(4):1212–28.CrossRef Reid KW, Vittinghoff E, Kushel MB. Association between the level of housing instability, economic standing and health care access: a meta-regression. J Health Care Poor Underserved. 2008;19(4):1212–28.CrossRef
28.
Zurück zum Zitat Baggett TP, Lebrun-Harris LA, Rigotti NA. Homelessness, cigarette smoking and desire to quit: results from a US national study. Addiction. 2013;108(11):2009–18.CrossRef Baggett TP, Lebrun-Harris LA, Rigotti NA. Homelessness, cigarette smoking and desire to quit: results from a US national study. Addiction. 2013;108(11):2009–18.CrossRef
29.
Zurück zum Zitat Saegert S, Evans GW. Poverty, housing niches, and health in the United States. J Soc Issues. 2003;59(3):569–89.CrossRef Saegert S, Evans GW. Poverty, housing niches, and health in the United States. J Soc Issues. 2003;59(3):569–89.CrossRef
30.
Zurück zum Zitat Saegert S, Fields D, Libman K. Mortgage foreclosure and health disparities: serial displacement as asset extraction in African American populations. Journal of Urban Health-Bulletin of the New York Academy of Medicine. 2011;88(3):390–402.PubMedPubMedCentral Saegert S, Fields D, Libman K. Mortgage foreclosure and health disparities: serial displacement as asset extraction in African American populations. Journal of Urban Health-Bulletin of the New York Academy of Medicine. 2011;88(3):390–402.PubMedPubMedCentral
31.
Zurück zum Zitat Libman K, Fields D, Saegert S. Housing and health: a social ecological perspective on the US foreclosure crisis. Hous Theory Soc. 2012;29(1):1–24.CrossRef Libman K, Fields D, Saegert S. Housing and health: a social ecological perspective on the US foreclosure crisis. Hous Theory Soc. 2012;29(1):1–24.CrossRef
32.
Zurück zum Zitat Roux AVD. The foreclosure crisis and cardiovascular disease. Circulation. 2014;129(22):2248–9.CrossRef Roux AVD. The foreclosure crisis and cardiovascular disease. Circulation. 2014;129(22):2248–9.CrossRef
33.
Zurück zum Zitat Ihrke D: Reason for moving: 2012–2013. In.: U.S. Department of Commerce Economics and Statistics Administration. U.S. CENSUS BUREAU 2014. Ihrke D: Reason for moving: 2012–2013. In.: U.S. Department of Commerce Economics and Statistics Administration. U.S. CENSUS BUREAU 2014.
34.
Zurück zum Zitat Cannuscio CC, Alley DE, Pagan JA, Soldo B, Krasny S, Shardell M, Asch DA, Lipman TH. Housing strain, mortgage foreclosure and health. Nurs Outlook. 2012;60(3):134–42.CrossRef Cannuscio CC, Alley DE, Pagan JA, Soldo B, Krasny S, Shardell M, Asch DA, Lipman TH. Housing strain, mortgage foreclosure and health. Nurs Outlook. 2012;60(3):134–42.CrossRef
35.
Zurück zum Zitat Daviglus ML, Pirzada A, Talavera GA. Cardiovascular disease risk factors in the Hispanic/Latino population: lessons from the Hispanic community health study/study of Latinos (HCHS/SOL). Prog Cardiovasc Dis. 2014;57(3):230–6.CrossRef Daviglus ML, Pirzada A, Talavera GA. Cardiovascular disease risk factors in the Hispanic/Latino population: lessons from the Hispanic community health study/study of Latinos (HCHS/SOL). Prog Cardiovasc Dis. 2014;57(3):230–6.CrossRef
36.
Zurück zum Zitat Krieger J, Higgins DL. Housing and health: time again for public health action. Am J Public Health. 2002;92(5):758–68.CrossRef Krieger J, Higgins DL. Housing and health: time again for public health action. Am J Public Health. 2002;92(5):758–68.CrossRef
37.
Zurück zum Zitat Libman K, Fields D, Saegert S. Toward a research agenda at the intersections of housing and health. Hous Theory Soc. 2012;29(1):47–55.CrossRef Libman K, Fields D, Saegert S. Toward a research agenda at the intersections of housing and health. Hous Theory Soc. 2012;29(1):47–55.CrossRef
Metadaten
Titel
Relationship between area mortgage foreclosures, homeownership, and cardiovascular disease risk factors: The Hispanic Community Health Study/Study of Latinos
verfasst von
Earle C. Chambers
David B. Hanna
Simin Hua
Dustin T. Duncan
Marlene Camacho-Rivera
Shannon N. Zenk
Jessica L. McCurley
Krista Perreira
Marc D. Gellman
Linda C. Gallo
Publikationsdatum
01.12.2019
Verlag
BioMed Central
Erschienen in
BMC Public Health / Ausgabe 1/2019
Elektronische ISSN: 1471-2458
DOI
https://doi.org/10.1186/s12889-019-6412-2

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