Literature DB >> 35287642

Food insecurity, home ownership and income-related equity in dental care use and access: the case of Canada.

Margherita Giannoni1,2, Michel Grignon3,4.   

Abstract

BACKGROUND: It has been documented that income is a strong determinant of dental care use in Canada, mostly due to the lack of public coverage for dental care. We assess the contributions of food insecurity and home ownership to income-related equity in dental care use and access. We add to the literature by adding these two variables among other socio-economic determinants of equity in dental care use and access to dental care. Evidence on equity in access to and use of dental care in Canada can inform policymaking.
METHODS: We estimate income-related horizontal inequity indexes for the probability of 1) receiving at least one dental visit in the last 12 months; and 2) lack of dental visits during the 3 years before the interview. We conduct the analyses using data from the 2013-2014 Canadian Community Health Survey (CCHS) at the national and regional level.
RESULTS: There is pro-rich inequity in the probability of visiting a dentist or an orthodontist and in access to dental care in Ontario. Inequities vary across jurisdictions. Housing tenure and food insecurity contribute importantly to both use of and access to dental care, adding information not captured by standard socio-economic determinants.
CONCLUSIONS: Redistributing income may not be enough to reduce inequities. Careful monitoring of equity in dental care is needed together with interventions targeting fragile groups not only in terms of income but also in improving house and food security.
© 2022. The Author(s).

Entities:  

Keywords:  Dental care; Equity health care utilization; Food insecurity

Mesh:

Year:  2022        PMID: 35287642      PMCID: PMC8919598          DOI: 10.1186/s12889-022-12760-6

Source DB:  PubMed          Journal:  BMC Public Health        ISSN: 1471-2458            Impact factor:   3.295


Background

There is some evidence of socio-economic inequalities in oral health [1, 2]. Pro-rich socio-economic inequalities and income-related inequities in the utilization of some health care services in Canada, particularly dental care, have been documented [3-10]. Also, during and after the global financial crisis of 2008–9, food insecurity and housing problems have increased in Canada as well as in the US and Europe [11, 12]. There are good reasons to believe that food insecurity and home ownership may affect the extent of social inequalities and income-related inequity in dental care use in Canada. In this study, we propose to enrich the description of socio-economic status (SES) in assessing equity in access and utilization of dental care by adding these two measures of household economic and financial insecurity as non-need independent variables beside income. Annual income provides much information on what commodities a household can afford and, as a result, whether the household can afford dental care services without jeopardizing its other consumption. We posit that it does not, however, capture all relevant information, and we propose to enrich the description of SES by adding these two household characteristics. Food insecurity is a measure of how likely it is that a household cannot afford the required quantity and quality of food [11]. A general definition of household food insecurity is given by Anderson [13] and refers to having a limited or uncertain availability of nutritionally adequate and safe food, or to having to acquire foods in socially unacceptable ways. This is a measure of purchasing power, and we posit that purchasing power may vary across households with similar income levels, especially since the big recession of 2008. The second characteristic is home ownership: here, we hypothesize that two households with the same income may have different purchasing power and situations relative to uncertainty depending on whether they own their house, especially in Canadian urban centres where housing prices have increased dramatically [14, 15]. As a result, home ownership status may affect the affordability of dental care services, conditional on income, and we want to test this is the case. There is evidence for both Canada and the US that both food insecurity [16-25] and housing insecurity [26-29] have a negative impact on individual physical and mental health. Duncan and Bonner [30] for Canada find a detrimental effect of food insecurity on oral health. Access to healthy food is considered a factor that affects oral health [31, 32]. There is conflicting evidence on the link between food insecurity and health care use. Tarasuk et al. find an effect for Canada for ambulatory care [33] and for mental health care [25]. Kushel et al. [26] find an effect for the US and both ambulatory and emergency care. However, Bhargava and Lee [34] find no effect among the 50+ in Georgia, US. On dental care in particular, Allin et al. [5] find that, in Europe and the US, inequalities in dental care use are more pronounced across wealth than income quintiles. Muirhead et al. [35] show that food insecurity has a powerful impact on dental care use among Ontario working poor: 40% of those who are food insecure report seeing a dentist only when in pain, versus 18% of those who are food secure; 52% of those who are food insecure reported unmet dental care need, versus 24% of those who are food secure. Previous work on unmet needs for dental care in Canada found evidence that individuals with low income and without dental insurance coverage had the highest probability of reporting financial barriers to dental care and that reported unmet needs due to costs were associated with lower dental visit frequency and poorer oral health outcomes after controlling for the effects of income and insurance coverage [36]. However, the impact of both the lack of house ownership and food insecurity on income-related inequities in dental care use and unmet access to dental care has never been studied. We will add to the literature on income-related inequities by introducing these two variables among other socio-economic (non-need) determinants and by estimating their contribution on horizontal equity in dental care use. We will also add a rich set of controls describing chronic conditions, testing their role on dental care utilization. It has been shown for other countries like Italy that equity in the use of and unmet needs for health care services may vary not only by region [37] but also by type of chronic disease [38]. There is evidence for Canada that the use of health care services varies with the type of chronic conditions [4] and that being affected by diabetes tends to be associated with lower access to dental care [10]. However, evidence is needed on the role of food insecurity and home ownership in income-related inequities in access to dental care in Canada.

Data

The data used were from the 2013–2014 Canadian Community Health Survey (CCHS) annual component, conducted by Statistics Canada [39]. This is a large survey representative of the Canadian population and at the provincial level. CCHS includes both a mandatory core set of questions that are completed by respondents in all provinces and a set of optional components completed at the discretion of individual provinces. We based our analysis on the full national sample with non-missing values on all the variables used and the adult population aged more than 17 years old. We firstly estimated models for the probability of using dental care by using CCHS data for all Canadian main regions. For our purposes, respondents living in Ontario (approximately one-third of the population) were asked questions on unmet need for dental care, which we used to study access to dental care for that province only and we estimated models for the probability of reporting unmet need for dental care with the richer set of independent variables on dental care that was only available for Ontario (dental care inclusion modules 1 and 2 of the CCHS). The details of the selection process of the datasets used are reported in additional online resources (Additional file 1).

Dependent variables

Our two dependent variables measured dental health care use and lack of access to dental care. The measure for dental care utilization was based on a standard question regarding whether individuals consulted a dentist, dental hygienist or orthodontist during the 12 months preceding the interview (consulting meaning either seen or talked to).1 To study access, we used a question posed to respondents living in Ontario (and Northwest Territories) only, relative to not having visited a dentist over the past 3 years. Respondents who reported no visit in the past 3 years were classified as having unmet access to dental care, under the assumption that any individual should visit a dentist at least once every 3 years. We also used a more subjective variable in a sensitivity analysis: those who reported no visits in 3 years were asked the reason for this, and we created a variable of unmet access for financial reasons by giving a value of 1 to respondents stating the reason was due to costs. Last, we used a question posed to respondents in Ontario only to run a sensitivity analysis on our analysis of dental care use (first analysis): “It was reported earlier that you have ‘seen’ or ‘talked to’ a dentist in the past 12 months. Did you actually visit one?”, the variable on utilization in the past 12 months being restricted to those who had visited one.

Independent variables

Need variables

The need variables included age, gender, poor self-assessed health, poor self-assessed mental health, and low perceived life satisfaction. Following previous studies [38], we tested the inclusion of additional chronic health indicators, including a dummy set for the main chronic diseases reported by respondents (rheumatic diseases, cardiovascular, respiratory, diabetes, cancer, digestive diseases, back problems and scoliosis, anxiety, and other chronic diseases).2 After this, we kept the only chronic condition variable that had a significant impact in all our models, having been diagnosed with diabetes. Unfortunately, information on oral health (a potential important determinant of the need for dental health care) was available only for respondents living in Ontario. We ran a sensitivity analysis on that sub-population, including information on oral health, and concluded that including it did not change the statistical significance or values of the other estimated effects. For analyses conducted on respondents from Ontario, we used the following variable for oral health: we constructed an index for oral health status by Cronbach’s alpha, pooling a set of 14 questions on oral health conditions.3 We then used a variable which takes the value of 1 if the individual belongs to the lowest tertile of the distribution of this index, reporting a poor dental health status, and zero otherwise.

Non-need variables

We divided income by the square root of household size and then took the logarithm of this equalized income. Food insecurity (FI) is measured by Statistics Canada with an indicator on Household Food Insecurity Status, based on a set of 18 questions, and describes the food security situation of the household in the previous 12 months. It captures three kinds of situations: 1–Food secure: no sign of difficulty with income-related food access; 2–Moderately food insecure: sign of compromised quality and/or quantity of food consumed; 3–Severely food insecure: sign of reduced food intake and disrupted eating patterns. This variable is adopted from the Health Canada model of food security status. FI is measured in the US and in Canada with a standard questionnaire. We used data from the Group Food Security Module of the CCHS survey. This is based on the definition of FI as “The uncertainty and insufficiency of food availability and access that are limited by resource constraints, and the worry or anxiety and hunger that may result from it” (Wunderlich and Norwood, p.49) [40]. Those households classified as food secure did not report issues. Households classified as moderately food insecure had problems in the quality and/or quantity of food consumed among adults and/or children, whereas severely food insecure showed more extensive compromises, including reduced food intake among adults and/or children because of a lack of money for food (see Statistics Canada [39]; Tarasuk [20]).4 We therefore used two dummy variables if the individuals lived respectively in a severely or moderately food insecure family, and zero otherwise. Housing status in the survey was captured by a question relative to house tenure status, where individuals were asked if they were living in a rented home or had home ownership. We used the dummy for home rented as a proxy for house insecurity, as opposed to house security with home ownership. There was no possibility to distinguish between those owning their home with or without debt. In our estimates we controlled for a set of further non-need variables such as marital status, immigrant status, race/ethnicity (aboriginal, non-white), smoking status (daily smoking), obesity, regular alcohol consumption, and living in rural areas. The provinces in which individuals live were collapsed into six regions, and a dummy variable for each one was created: (1) Atlantic, which includes Nova Scotia, New Brunswick, Prince Edward Island and Newfoundland-Labrador; (2) Quebec; (3) Prairies, which includes Alberta, Saskatchewan and Manitoba; (4) Territories, which includes Yukon, Northwest Territories and Nunavut; (5) British Columbia; and (6) Ontario. We added one variable related to dental hygiene lifestyle. In the special module available only for Ontario, individuals were also asked their frequency of brushing teeth (“How often do you brush your teeth?”). We used a dummy variable that takes the value of 1 if this was at least twice a day, and zero otherwise. Last, we used another dummy, taking the value of 1 if individuals were covered by dental insurance, and zero otherwise. Our reference individual for the models on dental visits utilization was a white local citizen, married (or common-law) middle income and middle-aged (46–55 years) woman, living in Ontario, not actively working as employee or self-employed i.e. being either unemployed, housework, student, receiving social support or in other non-active conditions, with secondary education level, with at least a fair health/mental health/life satisfaction status, not affected by diabetes, not obese, neither currently smoking nor practicing heavy drinking, not physically active, not food insecure, not having to pay rent for a home, living in an urban area. For the models on unmet access to dental visits, the reference individual had the same characteristics as above and, in addition, had at least a fair or good oral health, no dental insurance, and did not brush her/his teeth at least twice a day. Descriptive statistics for the main dependent and independent variables used are shown in Table 1.
Table 1

Variables and descriptive statistics

VariablesSample sizeaWeighted %b
Dependent variables:
Dental or orthodontal care in the last 12 monthsYES33,71266%
NO17,36734%
Unmet access to dental visits (last time visited dentist replied 3 years or more) (Ontario)cYES231814%
NO14,23686%
A) Need variables
  Self- assessed health statusPOOR OR VERY POOR561911%
FAIR, GOOD OR VERY GOOD45,46089%
  Self- assessed mental health statusPOOR OR VERY POOR30706%
FAIR, GOOD OR VERY GOOD48,10294%
  Self-assessed dental health status (Ontario)cPOOR3292%
FAIR, GOOD OR VERY GOOD16,22598%
  Age18–25715114%
26–35868317%
36–45919418%
46–55919418%
56–65868317%
65+817316%
  SexMALE25,02949%
NON MALE26,05051%
  Chronic conditions:
   DiabetesYES35767%
NO47,50393%
B) Non-need variables
  Lifestyles:
   ObeseYES10,21620%
NO40,86380%
   Daily smokerYES715114%
NO43,92886%
   Regular drinkerYES32,69164%
NO18,38836%
   Brush teeth at least 2 times a day (Ontario)cYES12,74777%
NO380723%
  Other socioeconomic:
   Migrant statusIMMIGRANT13,28126%
NOT IMMIGRANT37,79874%
   Cultural racial background:NON-WHITE10,21620%
WHITE40,86380%
   Aboriginal identityYES15323%
NO49,54797%
  Level of education:LESS THAN SECONDARY612912%
SECONDARY10,21620%
SOME POST SECONDARY30656%
POST-SECONDARY CERTIFIED31,66962%
  Occupational status:EMPLOYED28,60456%
SELF-EMPLOYED561911%
OTHER (RETIRED, UNEMPLOYED, ETC.)16,85633%
  Housing tenure status: rented houseYES13,79127%
NO37,28873%
  Marital status:WIDOW/SEPARATED/ DIVORCED664013%
SINGLE12,25924%
MARRIED26,05051%
COMMON LAW612912%
  Household food insecurity:NO FOOD INSECURITY48,01494%
MODERATE20434%
HIGH10222%
  Dental insurance coverage (Ontario)cYES778047%
NO877453%
  Geographic factors:RURAL919418%
URBAN41,88582%
ATLANTIC35177%
QUEBEC11,95623%
BRITISH_COL671913%
PRAIRIES918618%
TERRITORIES1510%
ONTARIO19,55038%
C) Other socioeconomic continuous variablesDescriptionMeanSt. Dev
  IncomeHOUSEHOLD TOTAL INCOME (CAD)89,139300,081
  Household sizeHOUSEHOLD SIZE2.821.43
  Equalized income=INCOME/SQRT (HOUSEHOLD SIZE)54,857174,678
  Natural log of equalized income=LN (EQUALIZED INCOME)10.60.95

Data source: CCHS 2013–2014

aWeighted statistics. Total sample size with non-missing observations was 51,079 (see Additional file 1)

bWeighted proportions

cWeighted statistics. Ontario special Dental module sample size with non-missing observations was 16,554

Variables and descriptive statistics Data source: CCHS 2013–2014 aWeighted statistics. Total sample size with non-missing observations was 51,079 (see Additional file 1) bWeighted proportions cWeighted statistics. Ontario special Dental module sample size with non-missing observations was 16,554

Methods

According to the principle of horizontal equity in health care, access should depend only on need, while socio-economic factors unrelated to need should not influence utilization [41]. We tested for income-related equity in health care use, applying the indirect standardization by regression method [41-45]. The horizontal inequity index (HI) is defined as the difference between income-related inequality in the observed health care use (CM) and income-related inequality in “need-expected” use (CN). The need-expected use is obtained by setting at their sample mean all non-need variables. The concentration index CM is positive (negative) whenever better-off individuals (worse-off) use dental care more than worse-off individuals (better-off). If the need distribution is favouring those who are worse off (better off), then we observe that the value of CN is negative (positive). There is no inequity in access to care when CM equals CN or the difference is not statistically significant. A positive (negative) value of the inequity implies inequity favouring those who are better off (worse off). Conversely, when the dependent variable measures unmet access to dental care, a negative (positive) value of HI implies inequity favouring those who are better off (worse off). An intuitive interpretation of the HI results can be obtained by multiplying HI by 75; for example, a HI value of 0.2 implies that equity can be achieved by redistributing 15% (0.2 × 75) of care from the rich to the poor [41]. For more details on the methodology see the additional resource (Additional file 2). In order to estimate CN, we estimated two set of logit models for: 1–the probability of having consulted a dentist or an orthodontist in the last 12 months in Canada; 2–the probability of having visited a dentist or an orthodontist in the last 12 months and of reporting lack of access to dental visits in the last 3 years in Ontario. The model for the lack of access to dental visits in Ontario was also estimated for the subset of individuals that indicated the main reason for not having visited a dentist in the last 3 years to be dental care costs. In all models we distinguished independent variables between need and non-need variables (Table 1). Non-need variables were set to their sample mean for obtaining CN [41, 45]. We estimated the income-related HI index for 1) the probability of using dental care services (all Canada and provinces) and 2) for the probability of unmet access to dental visits in the last 3 years (Ontario). All estimates were derived from weighted models using the population weights provided by Statistics Canada with the survey data. The estimated standard errors were based on the bootstrap method using weights provided by Statistics Canada.

Results

The proportion of Canadians visiting a dentist in 2013–2014 was approximately 67%; the proportion of those who reported they did not access a dental visit in the last 3 years—our measure for unmet access to dental care1—in Ontario and Northwest Territories was 16% (Table 1), and 14% in Ontario alone.5 Of all individuals in Canada, 6% were living in food insecurity (4% moderate and 2% severe) (Table 1). Those living in a rented house were 27% of the total population, but this proportion more than doubles among the moderately food insecure (63%) and is almost three times higher among the severely food insecure (75%). Those who reported dental visits in the past 12 months were slightly less likely to be moderately (3.9%) or severely (1.6%) food insecure than the general population, and only 19% were tenants. These proportions were much higher among individuals reporting not having seen a dentist in the last 3 years in Ontario, of which approximately 17% were moderately (11%) or severely (6%) food insecure and 44% were tenants. Among those who reported unmet access, 30% were tenants and had food insecurity (either moderate or severe), i.e., five times the proportion of those who did not report problems in access (6%). Overall, individuals who were better off were more likely to use dental care than the poor and less likely to report unmet access to dental visits during the 3 years preceding the interview. Tables 2 and 3 show the estimated odds ratios for all the logistic models. As expected, the probability of visiting a dentist or an orthodontist in Canada and of reporting problems in access to dental care is overall significantly associated with health care needs. With respect to the reference individual, being male, younger or elderly, being obese, and having diabetes are all factors associated with lower odds of use and higher odds of unmet access to dental care. Higher income is associated with higher odds of using dental care and conversely of unmet access to dental care, as high education and being employed. People with a high level of education and living in British Columbia were also more likely to access dental care. Ethnicity, marital status, and lifestyle all have associations with dental care access: being non-white or aboriginal, being a widow, being obese, smoking, and regular alcohol use are all associated with lower odds of using dental care. Engaging in regular physical exercise is associated with higher odds of visiting a dentist.
Table 2

Logit estimates for the probability of using dental visits by geographic areas (Odds Ratios)a

VariablesOntarioAtlanticQuebec
Odds RatiozP > |z|[95% Conf. Interval]Odds RatiozP > |z|[95% Conf. Interval]Odds RatiozP > |z|[95% Conf. Interval]
Health and lifestyles:
 Poor or very poor self-assessed health status (ref good or fair)0.74−2.60.0090.5980.9280.90−10.3410.7181.1210.86−1.20.2210.6671.098
 Affected by diabetes (ref. no diabetes)0.83−1.60.1070.6571.0420.86−1.30.1910.6841.0790.75−2.30.0230.5800.960
 Obese (ref. Not obese)0.92−10.3250.7841.0840.81−2.20.0300.6740.9800.93−0.70.4770.7511.143
 Current smoker (ref. Non-smoker or past smoker)0.56−5.70.0000.4610.6840.64−3.70.0000.5030.8110.67−3.90.0000.5440.818
 Regular drinker (ref. Non-drinker or, occasional drinker)1.484.680.0001.2571.7481.595.30.0001.3401.8881.665.270.0001.3742.002
Immigration and Ethnicity:
 Immigrant (ref. Local)0.78−2.40.0180.6290.9560.93−0.30.7560.5861.4750.89−0.70.4780.6431.229
 Non-white (ref. White)0.87−1.10.2910.6781.1240.77−0.90.3900.4211.4020.87−0.70.4590.5941.266
 Aboriginal (ref. Non aboriginal)0.86−0.90.3680.6131.1990.92−0.50.5970.6821.2460.86−0.70.4750.5621.309
 Education level low education secondary (ref.)0.49−60.0000.3900.6190.50−5.50.0000.3880.6370.54−5.20.0000.4330.685
 Education level high1.212.020.0441.0051.4551.161.590.1120.9651.4021.191.80.0720.9851.428
Material resources:
 Living in a house rented (ref. home owner)0.57−6.20.0000.4800.6830.79−20.0440.6290.9940.73−2.90.0040.5880.903
Food insecurity:
 No Food insecurity (ref.) Moderately food insecure0.59−3.30.0010.4350.8100.60−2.50.0130.4050.8980.78−10.2970.4911.243
 Highly Food insecure0.73−1.40.1500.4801.1190.89−0.30.7330.4541.7420.40−2.80.0050.2100.758
 Equivalized personal Income (log)1.242.510.0121.0491.4761.625.840.0001.3811.9121.574.620.0001.2961.900
Geographical factors:
 Living in a rural area (ref. urban area)0.77−3.40.0010.6630.8980.89−1.40.1590.7601.0460.71−3.80.0000.6000.851
 Atlantic
 Quebec
 British_Col
 Prairies
 Territories
Statistics:
 N16,54666199650
 k262626
 chi2624451.223524
 p000
CN0.0010.810.416−0.0000.002−0.0010.00−3.0700.002−0.010.0127.20.0000.0060.011
CM0.11322.70.0000.1040.1230.1410.0117.8600.0000.1250.14117.90.0000.1250.156
HI0.11322.80.0000.1030.1230.1440.0118.4400.0000.1290.12916.80.0000.1130.148
VariablesPrairiesTerritoriesB. Columbia
Odds RatiozP > |z|[95% Conf. Interval]Odds RatiozP > |z|[95% Conf. Interval]Odds RatiozP > |z|[95% Conf. Interval]
Health and lifestyles:
 Poor or very poor self -assessed health status (ref good or fair)0.62−40.0000.4870.7800.55−2.50.0140.3440.8871.040.220.8230.7431.452
 Affected by diabetes (ref. no diabetes)1.140.910.3650.8611.5020.99−00.9890.4822.0510.92−0.40.6820.6311.352
 Obese (ref. Not obese)0.94−0.60.5270.7801.1361.030.220.8260.7671.3940.69−2.70.0080.5320.907
 Current smoker (ref. Non-smoker or past smoker)0.61−4.60.0000.4920.7530.87−0.70.4920.5931.2860.61−3.20.0020.4480.828
 Regular drinker (ref. Non-drinker or, occasional drinker)1.252.490.0131.0491.4951.271.350.1790.8951.8131.262.10.0361.0151.554
Immigration and Ethnicity:
 Immigrant (ref. Local)0.95−0.40.6650.7411.2111.240.640.5220.6372.4270.84−1.50.1360.6621.058
 Non-white (ref. White)0.74−1.80.0700.5411.0250.56−1.60.1020.2741.1240.95−0.30.7440.7221.262
 Aboriginal (ref. Non aboriginal)0.64−2.50.0140.4500.9150.94−0.30.7700.6131.4381.321.040.2960.7862.202
 Education level low education secondary (ref.)0.71−2.60.0100.5470.9221.481.270.2030.8102.6890.47−4.80.0000.3450.639
 Education level high1.181.790.0740.9841.4141.491.920.0540.9922.2481.261.880.0600.9901.593
Material resources:
 Living in a house rented (ref. home owner)0.77−2.60.0100.6260.9380.69−1.90.0570.4691.0120.65−3.30.0010.5060.845
Food insecurity:
 No Food insecurity (ref.) Moderately food insecure0.74−1.40.1680.4791.1370.68−1.30.2080.3741.239n.a
 Highly Food insecure0.78−0.60.5660.3291.8391.220.410.6800.4773.106n.a
 Equivalized personal Income (log)1.344.070.0001.1621.5351.382.830.0051.1031.7141.383.710.0001.1631.631
Geographical factors:
 Living in a rural area (ref. urban area)0.93−0.70.4990.7571.1451.090.380.7030.7121.6550.70−2.70.0070.5460.908
Statistics:
 N10,75812986269
 k262626
 chi226767.056229.3
 p000
CN0.0126.480.0000.0050.0090.000−0.10.960−00.0030.0022.210.0270.0020.004
CM0.10512.90.0000.0890.1210.1236.140.0000.0840.1630.09511.40.0000.0790.112
HI0.098120.0000.0760.1080.1235.390.0000.0710.1520.09311.10.0000.0770.11
VariablesCanada
Odds RatiozP > |z|[95% Conf. Interval]
Health and lifestyles:
 Poor or very poor self assessed health status (ref good or fair)0.79−3.80.0000.7030.892
 Affected by diabetes (ref. no diabetes)0.87−2.20.0260.7650.983
 Obese (ref. Not obese)0.89−2.60.0100.8100.972
 Current smoker (ref. Non smoker or past smoker)0.62−90.0000.5600.689
 Regular drinker (ref. Non driker or, occasional drinker)1.437.880.0001.3111.568
Immigration and Ethnicity:
 Immigrant (ref. Local)0.88−20.0420.7730.995
 Nonwhite (ref. White)0.84−2.20.0310.7200.984
 Aboriginal (ref. Non aboriginal)0.84−1.90.0530.7061.003
 Education level low education secondary (ref.)0.54−9.70.0000.4820.615
 Education level high1.234.370.0001.1211.351
Material resources:
 Living in a house rented (ref. Home owner)0.66−80.0000.5990.732
Food insecurity:
 No Food insecurity (ref.) Moderately food insecure0.66−3.90.0000.5400.816
 Highly Food insecure0.64−3.10.0020.4750.850
 Equivalized personal Income (log)1.355.70.0001.2191.501
Geographical factors:
 Living in a rural area (ref. urban area)0.80−5.10.0000.7290.868
Region:
 Ontario (ref.)
 Atlantic0.59−9.60.0000.530.657
 Quebec0.62−8.60.0000.560.695
 British_Col0.81−3.40.0010.7150.915
 Prairies0.54−120.0000.4860.599
 Territories0.83−1.60.1210.651.051
Statistics:
 N51,079
 k31
 chi21903.7
 p0
CN0.00410.70.0000.0040.005
CM0.11636.10.0000.1090.122
HI0.111350.0000.1050.117

Bootstrap Normal-based standard errors. Data source: CCHS 2013–2014

aEstimates obtained after controlling for age, sex, marital status, urbanization level, occupational status

Table 3

Logit models for dental care use and for unmet access to dental care use – Ontarioa

VariablesHas seen a dentist or orthodontist in the last 12 monthsNo dental visits during the last 3 yearsNo dental visits during the last 3 years- reason:Costs
OddsBootstrapP > |z|Normal-basedOddsBootstrapP > |z|Normal-basedOddsBootstrapP > |z|Normal-based
RatioStd. Err.z[95% Conf. Interval]RatioStd. Err.z[95% Conf. Interval]RatioStd. Err.z[95% Conf. Interval]
Health and lifestyles:
 Poor or very poor self-assessed dental health status (ref good or fair1.070.08850.810.4170.9091.25790.820.0927−1.720.0860.66111.02770.600.1209−2.540.0110.40360.8898
 Brushe teeth at least twice a day1.420.13683.660.0001.1781.71700.590.0751−4.160.0000.45720.75460.670.1279−2.080.0380.46520.9781
 Affected by diabetes (ref. no diabetes)0.800.1077−1.660.0970.6141.04111.320.24221.520.1270.92341.89332.060.53772.770.0061.23613.4368
 Obese (ref. Not obese)0.910.0867−1.020.3060.75201.09360.870.1146−1.080.2820.66971.12400.950.1879−0.270.7890.64311.3983
 Current smoker (ref. Non-smoker or past smoker)0.590.0645−4.810.0000.4790.73371.650.20054.090.0001.29622.08971.540.27622.410.0161.08392.1890
 Regular drinker (ref. Non driker or, occasional drinker)1.430.13273.870.0001.1931.71630.710.0799−3.040.0020.56950.88520.890.1598− 0.650.5130.62501.2644
Immigration and Ethnicity:
 Immigrant (ref. Local)0.850.0976−1.440.1500.6761.06171.000.15120.030.9800.74721.34861.290.29291.130.2590.82802.0144
 Nonwhite (ref. White)0.850.1190−1.180.2380.6431.11581.180.21300.930.3520.83071.68300.570.1512−2.130.0330.33610.9561
 Aboriginal (ref. Non aboriginal)0.720.1298−1.810.0700.5081.02751.740.39212.480.0131.12342.71051.240.33850.770.4410.72182.1134
Education level:
 Low education secondary (ref.)0.620.0881−3.350.0010.4720.82171.230.19841.270.2030.89501.68570.980.2412−0.090.9260.60251.5852
 Education level high1.200.11881.80.0720.9841.45240.670.0771−3.470.0010.53640.84131.000.19250.010.9930.68741.4597
Material resources:
 Living in a house rented (ref. home owner)0.630.0592−4.960.0000.5200.75341.730.22624.210.0001.34102.23742.140.39604.090.0001.48453.0710
Food insecurity:
 (ref. not food insecure) Moderately food insecure0.690.1098−2.310.0210.5090.94661.460.28911.890.0580.98692.14911.650.44581.860.0630.97372.8038
 Highly Food insecure0.660.1543−1.780.0760.4181.04381.990.54772.510.0121.16403.41622.280.72382.590.0091.22334.2472
 Has dental insurance (ref. no dental insurance)3.670.325914.620.0003.0814.36470.270.0322−10.940.0000.21000.33750.090.0184−12.030.0000.06330.1371
 Equivalized personal Income (log)1.160.06522.730.0061.04381.29990.860.0410−3.270.0010.77850.93930.840.0442−3.260.0010.76090.9343
Statistics:
 k28.0028.0028.00
 chi2585.18528.80388.27
 p0.000.000.00
ObservedBootstrapNormal-basedObservedBootstrapNormal-basedObservedBootstrapNormal-based
Coef.Std. Err.zP > |z|[95% Conf. Interval]Coef.Std. Err.zP > |z|[95% Conf. Interval]Coef.Std. Err.zP > |z|[95% Conf. Interval]
CN−0.0030.0007−4.000.000−0.0044−0.00150.0240.00288.330.0000.01810.02930.0270.00416.460.0000.01850.0346
CM0.1130.005022.700.0000.10360.1232−0.3620.0215−16.850.000−0.4044−0.3201− 0.4150.0412−10.070.000−0.4959− 0.3343
HI0.1160.005023.370.0000.10660.1261−0.3860.0213− 18.160.000−0.4276−0.3443− 0.4420.0405−10.910.000−0.5209− 0.3623

Bootstrap Normal-based standard errors. Data source: CCHS 2013–2014

aEstimates obtained after controlling for age, sex, marital status, urbanization level, occupational status

Logit estimates for the probability of using dental visits by geographic areas (Odds Ratios)a Bootstrap Normal-based standard errors. Data source: CCHS 2013–2014 aEstimates obtained after controlling for age, sex, marital status, urbanization level, occupational status Logit models for dental care use and for unmet access to dental care use – Ontarioa Bootstrap Normal-based standard errors. Data source: CCHS 2013–2014 aEstimates obtained after controlling for age, sex, marital status, urbanization level, occupational status The results show that food insecurity is an important non-need factor of both equity in the use of and access to dental care. In particular, food insecurity is associated with lower odds of using dental care (Table 2) and higher odds of reporting lack of access to dental care (Table 3). Importantly, another component of financial insecurity related to housing, as measured by having to pay rent and not owning a house, is an important non-need factor in both horizontal equity in the use (Table 2) and unmet access to dental care (Table 3). Overall, the probability of visiting a dentist would be higher if people were not living in high food insecurity and/or owned their dwelling (Fig. 1). There is pro-rich inequity in the probability of visiting a dentist or an orthodontist (Table 2). Inequities vary across jurisdictions. Atlantic (HI = 0.14; P = 0.008; CI:0.000 0.129) and Quebec (HI = 0.13; P = 0.000; CI:0.113 0.148) show the highest inequity in the probability of dental care, Ontario (HI = 0.11; P = 0.000; CI:0.103 0.123) and the Territories (HI = 0.12; P = 0.000; CI = 0.071 0.152) are similar to the national average (HI = 0.11; P = 0.000; CI:0.105 0.117), whereas British Columbia (HI = 0.09; P = 0.000; CI: 0.077 0.11) and the Prairies (HI = 0.10; P = 0.000; CI: 0.076 0.108) show values below the national average (Fig. 2, Table 2). In comparison with previous articles based on data for the period 2000–2005, dental care is still distributed in favour of the richest [5, 7, 9]. We obtained almost identical results by using either the more general question, “Have you seen a dentist or orthodontist”, available at the national level for all regions, or the more specific question, “You reported that you have seen a dentist or orthodontist in the last 12 months: have you actually visited one?” (Table 3). This confirms the robustness of results obtained at the national and regional levels without the extended set of variables on dental care. There are high inequities in unmet access to dental visits in Ontario (HI = -0.39, P = 0.000, CI:-0.4276 0.3443); again, high food insecurity and housing insecurity appear autonomous non-need factors contributing to the probability of reporting problems in access to dental care (Table 3). Our results show that the HI for unmet access does not change substantially using the richer set of variables from the special modules variables on dental care inclusion in Ontario if the reason for unmet visits is due only to costs (HI-0.44, P = 0.000, CI: − 0.5209 0.3623) (Table 3). Estimates for Ontario show that high and moderate food insecurity are associated with higher odds of reporting unmet access to dental care and lower odds of using dental care. Differently from the countrywide estimates, the odds of high food insecurity are higher than the odds of moderate food insecurity for both use of and unmet access to dental care. Similar to the nationwide estimates, living in a rented house is associated with lower odds of using dental care and higher odds of having problems in access (Table 3).
Fig. 1

Average marginal effect of high food insecurity and house rented on the probability of seeing a dentist or an orthodontist over samples of different income quantiles (quintile). Legend: Data source: CCHS 2013–2014

Fig. 2

HI index estimation by Regions in Canada - Probability of having seen a dentist or an orthodontist in the last 12 months (estimates and their 95%confidence intervals). Legend: Data source: CCHS 2013–2014

Average marginal effect of high food insecurity and house rented on the probability of seeing a dentist or an orthodontist over samples of different income quantiles (quintile). Legend: Data source: CCHS 2013–2014 HI index estimation by Regions in Canada - Probability of having seen a dentist or an orthodontist in the last 12 months (estimates and their 95%confidence intervals). Legend: Data source: CCHS 2013–2014

Discussion

We can see from these results that not having food security and living in a rented house are associated with lower probability of using dental care, everything else being the same. These two variables also affect access to dental care in Ontario. Like in other countries such as Italy, we found that inequities in utilization are smaller than those in unmet access to dental care [37]. In the case of Ontario, inequities in access are three times higher than inequities in use of dental care. Estimates obtained by using the extended set of variables available for Ontario are similar to those obtained with the common set of variables available at the country level. This reinforces the results obtained with the core set of variables available nationwide. Our data are cross-sectional so we cannot infer causality. However, our evidence for Canada reinforces the view that reducing food insecurity in Europe and North America could counterbalance the negative effect of food insecurity on health care use [33, 46, 47]. Results are in line with previous evidence for Ontario showing that public spending on housing can offset the relationship between rising unemployment and food insecurity [47]. As a further test, we performed a decomposition analysis of the HI index for the probability of using dental care.6 This confirmed the results that housing and food insecurity are relevant determinants, together accounting for the largest contribution after income on the HI index (see Additional file 3).7

Conclusions

Estimates of the HI (horizontal inequity) index for the probability of using dental care show that, overall, inequities in dental care use in Canada are persisting. This work adds to the literature by also estimating inequities in unmet access to dental care in selected areas of Canada for which data were made available (Ontario and NW Territories). As expected, in these areas inequities in access are much higher than inequities in use. Therefore, it seems important for Canada to systematically report on indicators not only on the use of dental care but also on unmet access to dental care. The methodology applied aimed at describing the contribution of other non-need factors to horizontal inequity than the traditionally considered such as income, education etc. We newly showed that both food insecurity and home ownership are non-need factors contributing to income-related inequity in dental care access and use. This study is based on cross-sectional data, and therefore inference on causality is limited. We cannot interpret this as a causal relationship from food and housing insecurity to dental care use, as these two variables can be influenced by unobservable characteristics that can also affect dental care use. We could not fully explore the links among insurance coverage, food insecurity, and home ownership due to data limitations at the national level. Future work will be targeted at analysing in detail such links by allowing the confounders and mediators of the relationship between each of the covariates and dental services to vary. Moreover, further work is required to see if and how extended insurance coverage for dental care could at least partially offset the difficulty of living in food insecurity and without home ownership in terms of improving access to dental care. Despite its limitations, this study favours the argument that it is important to tackle the food and housing insecurity of households in order to reduce existing inequities in access to and use of dental care, thus improving the overall equity performance of Canada’s health care system. There is a need for interventions aiming at improving equity in access to dental care, such as increasing public dental care coverage for fragile groups. Our study suggests that redistributing income may not be enough to reduce inequities in dental care use and access to dental care. What matters is to also act on other dimensions of purchasing power, such as housing tenure status and food security. Additional file 1. Sample definition. Description of the sample used for the analysis. Additional file 2. Measuring horizontal inequity. Description of the methodology for measuring horizontal inequity. Additional file 3. Decomposition of the HI Index for the probability of having visited a dentist during the last 12 months – CANADA (*). File containing a figure showing results from the HI decomposition.
  32 in total

1.  Income-related inequality in health and health care in the European Union.

Authors:  Eddy van Doorslaer; Andrew M Jones
Journal:  Health Econ       Date:  2004-07       Impact factor: 3.046

2.  Income, dental insurance coverage, and financial barriers to dental care among Canadian adults.

Authors:  David Locker; John Maggirias; Carlos Quiñonez
Journal:  J Public Health Dent       Date:  2011-08-19       Impact factor: 1.821

3.  Housing instability and food insecurity as barriers to health care among low-income Americans.

Authors:  Margot B Kushel; Reena Gupta; Lauren Gee; Jennifer S Haas
Journal:  J Gen Intern Med       Date:  2006-01       Impact factor: 5.128

4.  Rising food insecurity in Europe.

Authors:  Rachel Loopstra; Aaron Reeves; David Stuckler
Journal:  Lancet       Date:  2015-05-23       Impact factor: 79.321

5.  Effects of income and dental insurance coverage on need for dental care in Canada.

Authors:  Laura Duncan; Ashley Bonner
Journal:  J Can Dent Assoc       Date:  2014       Impact factor: 1.316

6.  Examining effects of food insecurity and food choices on health outcomes in households in poverty.

Authors:  Margaret Lombe; Von Eugene Nebbitt; Aakanksha Sinha; Andrew Reynolds
Journal:  Soc Work Health Care       Date:  2016-04-04

7.  The global burden of oral diseases and risks to oral health.

Authors:  Poul Erik Petersen; Denis Bourgeois; Hiroshi Ogawa; Saskia Estupinan-Day; Charlotte Ndiaye
Journal:  Bull World Health Organ       Date:  2005-09-30       Impact factor: 9.408

Review 8.  Public policy and the market for dental services.

Authors:  J L Leake; S Birch
Journal:  Community Dent Oral Epidemiol       Date:  2008-08       Impact factor: 3.383

Review 9.  Housing and health inequalities: a synthesis of systematic reviews of interventions aimed at different pathways linking housing and health.

Authors:  Marcia Gibson; Mark Petticrew; Clare Bambra; Amanda J Sowden; Kath E Wright; Margaret Whitehead
Journal:  Health Place       Date:  2010-09-29       Impact factor: 4.078

10.  Food insecurity and social protection in Europe: Quasi-natural experiment of Europe's great recessions 2004-2012.

Authors:  Rachel Loopstra; Aaron Reeves; Martin McKee; David Stuckler
Journal:  Prev Med       Date:  2016-05-17       Impact factor: 4.018

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