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. 2016 Aug 17;16:807. doi: 10.1186/s12889-016-3467-1

Sexual orientation identity disparities in health behaviors, outcomes, and services use among men and women in the United States: a cross-sectional study

Chandra L Jackson 1,, Madina Agénor 2,3, Dayna A Johnson 4, S Bryn Austin 2,5, Ichiro Kawachi 2
PMCID: PMC4989521  PMID: 27534616

Abstract

Background

Research shows that sexual minorities (e.g., lesbian, gay, and bisexual individuals) experience higher levels of discrimination, stigma, and stress and are at higher risk of some poor health outcomes and health behaviors compared to their heterosexual counterparts. However, the majority of studies have examined sexual orientation disparities in a narrow range of health outcomes and behaviors using convenience samples comprised of either men or women living in restricted geographic areas.

Methods

To investigate the relationship between sexual orientation identity and health among U.S. women and men, we used Poisson regression with robust variance to estimate prevalence ratios for health behaviors, outcomes, and services use comparing sexual minorities to heterosexual individuals using 2013 and 2014 National Health Interview Survey data (N = 69,270).

Results

Three percent of the sample identified as sexual minorities. Compared to heterosexual women, lesbian (prevalence ratio (PR) = 1.65 [95 % confidence interval (CI): 1.14, 2.37]) and bisexual (PR = 2.16 [1.46, 3.18]) women were more likely to report heavy drinking. Lesbians had a higher prevalence of obesity (PR = 1.20 [1.02, 1.42]), stroke (PR = 1.96 [1.14, 3.39]), and functional limitation (PR = 1.17 [1.02, 1.34] than heterosexual women. Gay men were more likely to have hypertension (PR = 1.21 [1.03, 1.43]) and heart disease (PR = 1.39 [1.02, 1.88]). Despite no difference in health insurance status, sexual minorities were more likely than heterosexual individuals to delay seeking healthcare because of cost; however, members of this group were also  more likely to have received an HIV test and initiated HPV vaccination.

Conclusion

Sexual minorities had a higher prevalence of some poor health behaviors and outcomes.

Keywords: Sexual orientation, Health behaviors, Health outcomes, United States

Background

The U.S. Department of Health and Human Services has identified understanding and improving the health of lesbian, gay, bisexual, and transgender (LGBT) populations as a national priority. Indeed, Healthy People 2020 has set new objectives and targets for monitoring and promoting LGBT health [1]. Moreover, the Institute of Medicine released a report underscoring the need to conduct additional research on the health of all LGBT populations across the life course, including using national probability samples [2].

Studies show that many sexual minorities – namely, individuals who self-identify as gay, lesbian, or bisexual and who engage in same-gender sexual behavior or report same-gender sexual attractions but do not self-identify as such – have a higher prevalence of health risk behaviors [3, 4] and poor health outcomes [48] and a lower prevalence of access to health insurance as well as healthcare [4, 5, 7, 9] compared to their heterosexual counterparts, even after controlling for socioeconomic position (SEP). Few studies, however, have generated nationally representative estimates for a range of health and healthcare measures by sexual orientation identity while using a sample size large enough to provide estimates for both U.S. men and women in the same study.

Therefore, we examined sexual orientation identity disparities in health behaviors, health outcomes, and healthcare access and utilization indicators using data from the 2013 and 2014 National Health Interview Survey (NHIS), which is based on a national probability sample of adult U.S. men and women. We also investigated the relationship between sexual orientation identity and health and healthcare indicators stratified by two age groups. Our study extends the findings of a recent study that used NHIS data to assess sexual orientation identity disparities in health by investigating understudied aspects of sexual minority health related to a broad set of health behaviors, outcomes, and healthcare services and utilization measures [10]. This study also extends previous findings by adjusting for potential confounders and using a larger sample size among both men and women. Based on the minority stress model, which postulates that sexual orientation disparities in health are due to sexual minorities’ unique exposure to stigma and discrimination that can be experienced differently depending on gender and age group [1115], we hypothesized that sexual minorities have a higher prevalence of health behaviors and poor health outcomes and a lower prevalence of health services use compared to heterosexual persons across gender and age groups. These data will help future studies identify potential drivers of disparities among sexual minorities and test mechanisms posited by the Minority Stress Model.

Methods

The national health interview survey

We analyzed data from the National Health Interview Survey (NHIS), which is a series of cross-sectional, nationally representative surveys that use a three-stage stratified cluster probability sampling design to conduct in-person interviews in the households of non-institutionalized U.S. civilians. A detailed description of NHIS procedures has been published elsewhere [16]. Briefly, a probability sample of households was interviewed by trained interviewers from the U.S. Census Bureau to obtain information about health and sociodemographic characteristics of the sampled household on a continuous basis each week. Data were collected using computer-assisted personal interviewing. A randomly selected adult and child (not included in this analysis) provided more specific health-related information. The final response rate for sample adults was 81.7 % for 2013 and was 80.5 % for 2014. The NHIS received written informed consent from each study participant. The Harvard T.H. Chan School of Public Health’s Institutional Review Board approved our study.

Study participants

Participants included individuals who self-identified as non-Hispanic white, non-Hispanic black/African American, Latino/a or Hispanic, Native American/Alaska Native, and Asian (henceforth, white, black, Latino/a, Native American, Asian) adults aged 18 to 85+ years. Participants were excluded if they had missing data (<3 %) on sexual orientation identity. Our final analytic sample consisted of 69,270 adults.

Measures

Sexual orientation identity

Participants who were asked “Which of the following best represents how you think of yourself?” Response options included: “gay” or “lesbian,” “straight, that is, not lesbian or gay,” “bisexual,” “something else,” and “I don’t know the answer.” The wording of the question differed slightly for men and women, with men being asked if they were “gay” or “straight, that is, not gay” and women being asked if they were “lesbian or gay” or “straight, that is, not lesbian or gay.” Persons who responded “something else” or “I don’t know the answer” were asked follow-up questions about what they meant by “something else” or “don’t know,” but due to sample size constraints and confidentiality, these follow-up responses and potential explanations were not included in the publicly available data.

Health behaviors

Leisure-time physical activity was categorized as none, low, or high. Participants engaging in at least some level of activity and providing a specific number of activity bouts were dichotomized at the midpoint and classified as low or high. Participants reporting ‘never’ or ‘unable to do this type activity’ were categorized as ‘none.’ Current smoking status (based on smoking at least 100 cigarettes in entire life) and lifetime alcohol consumption (based on having at least 12 drinks in lifetime and drinking or not in the past year) was categorized as current, former, or never. Based on dietary guidelines, heavy drinking was considered ≥2 drinks per day for men and >1 drink per day for women [17]. We also considered those who consumed five or more drinks on at least 2 days among men and women for 2013 and five or more drinks on at least 2 days among men and four or more drinks on at least 2 days among women for 2014.

Participants reported how many hours of sleep they, on average, obtained in a 24-hour period. Sleep was categorized as <7 h, 7 h, and >7 h. Seven hours of sleep was used as the reference because it has been associated with the lowest levels of morbidity and mortality [18, 19]. As a measure of sadness, participants responded to the question, “During the past 30 days, how often did you feel so sad that nothing could cheer you up?” Participants responded either “all of the time,” “most of the time,” “some of the time,” “a little of the time,” or “none of the time.”

Health outcomes

Adults were asked if they had ever been told by a doctor or other health professional that they had “hypertension, also called high blood pressure” and, separately, if they had ever been told they had “diabetes or sugar diabetes,” “cancer,” or a “stroke.” Participants were also asked if a doctor or other health professional ever diagnosed them as having coronary heart disease or any kind of heart condition or disease other than coronary heart disease, angina pectoris, or a myocardial infarction. Self-reported height and weight were used to calculate body mass index (BMI) by dividing measured weight in kilograms by height in meters squared. Obesity was defined as BMI ≥30 kg/m2, overweight as 25.0–29.9 kg/m2, normal weight as 18.5–24.9 kg/m2, and underweight as BMI <18.5 kg/m2. Participants were considered to have a functional limitation if they reported being limited in engaging in specific activities because of a physical, mental, or emotional health problem that did not include pregnancy. Participants were considered to have experienced an injury if they reported at least one injury or poisoning episode serious enough to seek medical advice or treatment in the past 3 months.

Healthcare access and utilization indicators

Participants reported if they currently had health insurance coverage and whether they had at least one place they usually went when sick or needed health advice. Participants also indicated if they had Medicaid coverage over the past month and the number of times they went to an emergency room regarding their health during the past 12 months, which we categorized as < or ≥2 visits. Participants reported whether, during the past 12 months, they delayed seeking medical care (not including dental care) because of worry about the cost. Men and women aged 18 to 64 years were asked if they ever had an HPV vaccine. Participants were asked if they ever had an HIV test (not including any tests during blood donations). We placed self-reported general health status into three categories (excellent or very good, good, and fair or poor).

Sociodemographic characteristics

Participants self-identified with 1 or more of the following categories: white, black/African American, American Indian/Alaskan Native, Asian, and multiple race. Marital status was categorized as married or living with partner, divorced, separated, or widowed, and never married. Educational attainment was categorized as < high school, high school (including general equivalency diploma), some college, and ≥ college-level education. Annual household income was classified as ‘$0–34,999,”35,000–74,999’ and ‘≥$75,000,’ and poverty status was dichotomized for a family or individual income at and above or below the U.S. Census Bureau’s poverty threshold. Based on type of work, we combined occupations into ‘Professional/management,’ ‘Support Services’ and ‘Laborer’ categories.

Statistical analysis

We used sampling weights to account for the unequal probabilities of selection resulting from the sample design, survey non-response, and planned oversampling of black, Latino/a, and Asian American individuals and adults aged 65 years and over. Standard errors or variance estimations were calculated using Taylor series linearization. The “subpop” command in Stata, version 13 (Stata Corporation, College Station, Texas, USA) was used for correct variance estimation using the analytic sample. A two-sided p-value <0.05 was considered statistically significant.

We used the direct-adjustment method to calculate age-standardized prevalence estimates of sociodemographic characteristics, health behaviors, health outcomes, and healthcare access and utilization indicators among U.S. men and women (separately) by sexual orientation identity. The age distribution from the 2010 U.S. Census was used as the standard population.

Poisson regression with robust error variance was used to estimate gender-specific prevalence ratios for health behaviors, health outcomes, and services use comparing sexual minority and heterosexual individuals [20]. Prevalence ratios were also estimated separately for younger and older age groups. Determined by sample size and distribution, the younger age group included individuals aged 18–30 years, and the older age group was composed of individuals aged 31–85+ years. The aforementioned covariates selected a priori as potential confounders included age, race/ethnicity, educational attainment, annual household income, occupational class, health status, and region of residence.

Results

Characteristics of the study sample

The final analytic sample consisted of 69,270 participants. Table 1 shows the age-standardized prevalence of sociodemographic characteristics, health behaviors, health outcomes, and health services use by sexual orientation identity among U.S. men and women. Participants’ mean age was 49.9 ± 0.07 years; 52 % were women, and 3 % identified as sexual minorities. Gay and bisexual men and lesbians were generally more likely than heterosexual individuals to have at least a college education. Participants who reported not knowing their sexual orientation identity or responded “don’t know or something else” were more likely than heterosexual individuals to live in poverty and be in fair or poor general health. Many bisexual men had at least a college education (46 %) and some lived in poverty (15 %). In comparison, fewer heterosexual men had a college education (30 %), but fewer heterosexual men live in poverty (11 %).

Table 1.

Age-standardized Socio-demographic Characteristics, Health Behaviors, and Health Outcomes by Sexual Orientation Identity among U.S. Men and Women, National Health Interview Survey, 2013 and 2014 (N = 69,270)

Men (n = 30,961) Women (n = 38,309)
Heterosexual Gay Bisexual “Something else”/Do not know Heterosexual Lesbian Bisexual “Something else”/Do not know
n % n % n % n % n % n % n % n %
Sample size 29,967 97.2 624 1.8 162 0.4 208 0.5 37,185 97.2 525 1.4 353 0.9 246 0.5
Sociodemographics
 Race/ethnicity
  White 18,848 70.1 413 76.2 105 73.1 96 52.7 22,542 68.3 315 71.4 231 73.5 123 56.4
  Black 3,918 10.7 79 9.8 19 7.6 34 14.6 5,699 12.3 100 12.7 61 16.0 38 11.0
  Latino/Hispanic 4,787 13.0 96 10.8 21 7.8 43 19.8 6,086 12.9 77 12.5 43 7.2 51 17.5
  Native American 398 1.0 5 0.4 2 1.1 5 1.5 446 0.9 9 1.1 9 2.6 7 1.3
  Asian/Pacific Islander 1,873 5.2 28 2.8 15 10.4 29 11.4 2,235 5.6 18 2.3 4 0.7 25 13.8
 Educational attainment
  < High school 8,832 29.4 130 19.9 28 18.0 53 29.0 10,182 28.2 116 22.8 84 21.0 69 25.4
  High school graduate 3,831 11.8 24 5.8 14 6.8 47 22.7 4,826 11.1 31 3.9 41 12.7 65 25.8
  Some college 8,651 28.5 197 33.1 63 28.9 44 24.1 11,776 31.6 190 34.9 122 37.3 54 25.6
  ≥ College 8,534 30.3 273 41.2 57 46.3 58 24.2 10,242 29.1 187 38.4 106 29.0 53 23.2
 Marital status
  Married 14,501 61.1 78 19.2 31 22.0 38 20.6 15,370 52.7 89 23.6 60 30.8 53 30.8
  Divorced/separated/widowed 6,652 17.3 71 16.1 35 26.6 52 24.8 12,741 27.6 103 22.2 95 32.9 77 27.6
  Never married 8,761 21.6 472 64.7 96 51.4 116 54.6 8,972 19.7 329 54.2 194 36.3 116 41.6
 Unemployed (yes) 19,407 37.5 438 40.9 98 52.2 107 49.8 19,634 47.3 344 43.1 215 49.2 124 51.1
 Annual Household income (<$35,000 per year) 10,769 29.3 229 31.9 78 36.0 120 43.3 15,607 34.7 215 32.7 192 45.4 147 53.7
 Living in poverty (<100 % Federal Poverty Level) 4,284 11.1 79 10.4 33 15.2 70 29.4 6,885 14.1 102 12.3 105 23.3 73 25.9
 Occupation
  Professional/management 6,339 74.0 191 75.4 38 77.9 26 74.3 5,213 73.1 110 72.9 53 70.1 20 74.4
  Support Services 7,262 15.6 279 12.5 61 11.0 49 8.9 20,892 20.3 264 18.3 199 16.9 110 21.6
  Laborers 14,578 10.4 140 12.1 53 11.1 110 16.8 7,615 6.6 120 8.8 79 13.0 68 4.0
 Region of residence
  Northeast 4,797 18.0 114 19.6 24 16.1 36 16.3 6,036 17.7 103 22.9 52 13.8 35 16.7
  Midwest 6,392 23.1 92 13.9 28 22.3 40 18.4 7,654 22.4 92 19.0 70 27.6 45 17.6
  South 10,528 36.5 221 35.7 47 32.5 63 33.3 13,754 38.0 189 33.5 120 32.5 85 38.4
  West 8,250 22.4 197 30.8 63 29.1 69 32.0 9,741 21.9 141 24.6 111 26.1 81 27.3
Health behaviors
 Sleep duration
  < 7 h 9,157 30.6 198 30.5 52 25.8 60 30.2 11,570 30.7 190 33.6 123 29.6 74 32.5
  7 h 8,835 29.7 190 30.4 53 36.4 61 32.6 10,062 28.1 140 27.4 86 32.9 47 17.4
  > 7 h 11,708 39.7 232 39.1 57 37.8 80 37.2 15,155 41.2 188 39.0 139 37.5 111 50.1
 Smoking status
  Never 15,919 52.1 307 48.1 87 50.4 110 51.8 24,306 64.8 265 50.5 178 51.7 164 73.1
  Former 7,941 29.2 152 30.2 32 23.4 46 21.6 7,166 20.6 113 28.2 73 32.4 45 16.5
  Current 6,067 18.7 164 21.7 43 26.2 51 26.6 5,666 14.6 147 21.3 102 15.9 37 10.4
 Alcohol consumption
  Never 4,402 14.7 46 6.4 20 9.5 41 19.9 9,874 26.0 74 14.2 51 24.1 92 42.6
  Current 20,545 69.0 516 81.1 126 80.1 128 60.0 21,360 58.7 381 67.2 274 64.7 115 41.3
  Former 4,722 16.3 59 12.5 16 10.4 38 20.1 5,674 15.3 67 18.6 28 11.2 37 16.1
  Heavy drinking a 1,761 6.8 42 6.5 15 12.9 15 6.1 1,785 5.7 41 9.7 46 15.6 18 6.3
  5+ drinks on at least 2 days b 7,538 32.2 188 29.7 61 45.0 43 30.5 4,357 17.5 117 24.1 107 31.7 33 19.1
 Leisure-time physical activity
  Never/unable 9,010 30.7 129 22.1 41 25.7 64 32.8 12,858 34.3 158 32.1 69 18.1 89 31.8
  Low 9,660 32.8 209 34.4 53 35.5 67 29.8 11,568 31.6 174 35.0 120 35.0 75 35.7
  High 11,169 36.5 285 43.5 68 38.8 76 37.4 12,669 34.1 190 32.9 161 46.9 80 32.5
Sad (past 30 days) (≥mostly) 850 2.7 28 3.4 3 2.4 11 4.8 1,487 3.7 32 5.6 31 6.8 15 8.0
Health outcomes
 Overweight prevalence c 20,868 72.1 372 63.8 91 48.4 117 61.3 20,885 58.5 325 63.8 199 64.3 132 57.1
 Obesity prevalence d 8,506 29.8 145 25.0 45 19.1 44 18.8 10,724 29.4 183 36.7 123 38.3 72 33.1
 Hypertension (yes) 9,915 37.0 189 39.0 40 32.2 73 34.4 12,491 35.5 134 32.2 68 32.1 82 36.5
 Diabetes (yes) 3,183 12.5 54 10.2 13 11.4 26 10.4 3,857 10.7 38 7.7 17 7.1 33 16.2
 Cancer (yes) 2,471 10.2 58 13.4 10 12.7 10 4.2 3,718 10.8 46 11.0 31 16.0 13 4.4
 Heart disease (yes) 3,543 13.5 75 15.2 18 16.9 27 15.6 3,905 10.8 44 9.9 26 7.2 27 11.1
 Stroke (yes) 937 3.5 10 1.9 3 1.1 11 8.2 1,198 3.2 27 5.8 7 3.4 10 2.8
 Functional limitation (yes) 9,481 34.8 181 35.4 56 37.7 95 52.0 15,472 43.1 226 49.6 147 46.8 125 53.2
 Any Injury (3 months) 970 3.0 29 3.5 6 1.5 6 2.2 1,264 2.9 26 4.9 33 6.5 11 2.6
Healthcare access and utilization
 Health insurance (no) 5,096 14.0 96 12.4 26 17.8 52 24.5 4,982 12.0 80 12.0 69 11.9 40 15.4
 Medicaid (yes) 2,081 6.1 47 7.5 13 7.6 35 14.6 4,490 9.5 77 10.9 59 18.3 42 14.5
 Usual place of care (yes) 23,695 84.2 505 87.3 121 82.5 142 72.5 32,937 90.9 432 87.4 283 89.7 197 85.5
 # ER visits in past year ≥2 1,689 31.7 36 36.4 13 37.1 19 49.0 3,153 38.8 60 37.1 58 52.6 30 44.1
 Delayed healthcare because of cost (yes) 2,986 8.2 99 10.8 33 20.5 31 12.7 4,288 10.5 105 15.6 86 13.1 39 10.8
 HPV vaccine (initiation, yes) 535 2.0 31 4.8 8 4.5 5 3.7 2,756 8.6 59 10.1 85 18.2 15 5.0
 HIV testing (ever, yes) 10,257 32.0 525 79.0 95 62.5 83 38.5 14,591 36.0 268 48.7 222 52.1 93 29.9
Health status
 Excellent/very good 17,795 58.2 397 62.7 94 59.2 95 41.9 21,130 57.4 298 55.1 199 47.6 111 47.5
 Good 7,940 27.2 149 23.7 43 20.5 66 30.7 10,338 27.5 138 24.6 92 39.0 81 34.3
 Fair/poor 4,223 14.6 78 13.6 25 20.3 47 27.4 5,694 15.1 89 20.3 62 13.4 51 18.2

Note. All estimates are weighted for the survey’s complex sampling design

ER emergency room; a heavy drinking= > 2 drinks per day for men and >1 drink per day for women; b 5+ drinks on at least 2 days among men and women in 2013 and 4+ drinks on at least 2 days among women in 2014 only; c Overweight = ≥25 kg/m2; d Obesity = ≥30 kg/m2; HPV human papillomavirus, HIV human immunodeficiency virus

Association between sexual orientation identity and health behaviors

Adjusting prevalence ratios for potential confounders, heavy drinking ranged from 65 % (prevalence ratio (PR) = 1.65 [95 % confidence interval (CI): 1.14, 2.37]) higher for lesbians to an over 2-fold higher prevalence (PR = 2.16 [1.46, 3.18]) among bisexual women compared to their heterosexual counterparts (Table 2). Bisexual men and women were also more likely than heterosexuals to report consuming ≥5 drinks on at least 2 days in the past year. Bisexual women and men and those who responded “don’t know or something else” were less likely to report never engaging or being unable to engage in physical activity. In contrast, there were no differences in sleep duration by sexual orientation identity among men and women.

Table 2.

Fully-Adjusted Prevalence Ratios for Health Behaviors and Healthcare Access and Utilization Indicators in Relation to Sexual Orientation Identity among U.S. Men and Women, National Health Interview Survey, 2013 and 2014 (N = 69,270)

Men (n = 30,961) (reference: heterosexual) Women (n = 38,309) (reference: heterosexual)
Gay PR (95 % CI) Bisexual PR (95 % CI) “Something else”/Do not know PR (95 % CI) Lesbian PR (95 % CI) Bisexual PR (95 % CI) “Something else”/Do not know PR (95 % CI)
Sample size n = 624 n = 162 n = 208 n = 525 n = 353 n = 246
Health Behavior
 Alcohol consumption (reference: never)
  Current 1.09 (1.06–1.13) 1.09 (1.03–1.16) 0.94 (0.80–1.11) 1.14 (1.08–1.20) 1.03 (0.93–1.14) 0.86 (0.70–1.06)
  Former 1.23 (0.99–1.53) 1.07 (0.71–1.61) 0.88 (0.63–1.23) 1.30 (1.05–1.60) 0.65 (0.37–1.16) 0.88 (0.57–1.35)
  Heavy drinkinga 0.89 (0.58–1.38) 1.81 (0.98–3.33) 0.95 (0.44–2.02) 1.65 (1.14–2.37) 2.16 (1.46–3.18) 1.92 (1.08–3.39)
  5+ drinks on at least 2 daysb 0.97 (0.82–1.15) 1.29 (1.05–1.57) 0.95 (0.65–1.38) 1.22 (0.98–1.52) 1.34 (1.08–1.66) 1.37 (0.94–1.98)
 Leisure-time physical activity (reference: high)
  Low 0.89 (0.76–1.04) 0.99 (0.75–1.29) 0.88 (0.66–1.18) 1.05 (0.91–1.20) 0.92 (0.75–1.13) 0.97 (0.75–1.26)
  Never/Unable 0.89 (0.73–1.09) 0.94 (0.68–1.32) 0.78 (0.59–1.05) 1.01 (0.85–1.19) 0.56 (0.42–0.75) 0.74 (0.55–0.99)
 Smoking status (reference: never)
  Current 1.39 (1.14–1.70) 1.17 (0.91–1.51) 1.32 (0.95–1.82) 1.47 (1.21–1.80) 1.26 (0.98–1.61) 0.87 (0.54–1.40)
  Former 1.11 (0.94–1.32) 0.90 (0.94–1.32) 0.85 (0.62–1.17) 1.49 (1.22–1.82) 1.43 (1.09–1.86) 0.82 (0.56–1.20)
 Sleep duration (reference: 7 h)
  <7 h 1.09 (0.95–1.24) 0.78 (0.50–1.20) 0.93 (0.63–1.36) 1.00 (0.86–1.15) 1.02 (0.86–1.22) 1.20 (0.97–1.48)
  >7 h 1.08 (0.96–1.22) 0.95 (0.74–1.23) 0.99 (0.80–1.21) 0.87 (0.75–1.01) 1.04 (0.89–1.22) 1.16 (0.99–1.36)
Healthcare access and utilization
 Health insurance (no) 1.12 (0.86–1.45) 1.05 (0.68–1.62) 1.24 (0.82–1.62) 1.05 (0.80–1.38) 1.09 (0.81–1.48) 1.12 (0.66–1.90)
 Usual place for care (yes) 1.06 (1.01–1.11) 1.04 (0.94–1.14) 0.94 (0.82–1.08) 0.94 (0.90–0.99) 0.92 (0.84–1.01) 0.96 (0.89–1.05)
 ER visits (≥2 in past year) 1.04 (0.71–1.52) 1.28 (0.69–2.38) 1.36 (0.82–2.24) 1.01 (0.79–1.30) 0.92 (0.69–1.22) 1.22 (0.83–1.79)
 Delay healthcare because of costs (yes) 1.40 (1.08–1.81) 2.00 (1.44–2.79) 0.98 (0.57–1.68) 1.47 (1.15–1.88) 1.65 (1.28–2.13) 0.95 (0.60–1.51)
 HPV vaccine (initiation) 2.45 (1.53–3.92) 2.31 (1.00–5.35) 1.77 (0.67–4.68) 1.10 (0.81–1.50) 1.46 (1.16–1.84) 0.55 (0.26–1.17)
 HIV test (ever) 2.25 (2.12–2.40) 1.67 (1.41–1.97) 1.24 (0.97–1.58) 1.22 (1.09–1.36) 1.17 (1.02–1.34) 0.82 (0.62–1.07)

PR prevalence ratio, CI confidence interval; aheavy drinking= > 2 drinks per day for men and >1 drink per day for women; b5+ drinks on at least 2 days among men and women in 2013 and 4+ drinks on at least 2 days among women in 2014 only; h hours, ER emergency room, HPV human papillomavirus, HIV human immunodeficiency virus. Adjusted for age, race/ethnicity, educational attainment, income, occupational class, health status, and region of residence. Note. All estimates are weighted for the survey’s complex sampling design. Boldface indicates statistically significant results at the 0.05 level

Association between sexual orientation identity and health outcomes

Compared to heterosexual women, lesbians had a 20 % higher prevalence of obesity PR = 1.20 [1.02, 1.42]), 96 % higher prevalence of stroke (PR = 1.96 [1.14, 3.39]), and 17 % higher prevalence of having a functional limitation (PR = 1.17 [1.02, 1.34]) (Table 3). Bisexual women had over a two-fold higher prevalence of sustaining an injury or poisoning in the past 3 months (PR = 2.49 [1.44, 4.32]) and of mostly feeling so sad that nothing could cheer them up during the past 30 days (PR = 2.10 [1.25, 3.54]). Gay men were 21 % (PR = 1.21 [1.03, 1.43]) more likely to have hypertension and 39 % (PR = 1.39 [1.02, 1.88]) more likely to have heart disease compared to heterosexual men. Similarly, sexual minority men were more likely than heterosexual men to have a functional limitation.

Table 3.

Fully-adjusted Prevalence Ratios for Health Outcomes in Relation to Sexual Orientation Identity Disparities among U.S. Men and Women, National Health Interview Survey, 2013 and 2014 (N = 69,270)

Men (n = 30,961) (reference: heterosexual) Women (n = 38,309) (reference: heterosexual)
Gay PR (95 % CI) Bisexual PR (95 % CI) “Something else”/Do not know PR (95 % CI) Lesbian PR (95 % CI) Bisexual PR (95 % CI) “Something else”/Do not know PR (95 % CI)
n = 624 n = 162 n = 208 n = 525 n = 353 n = 246
Sad (past 30 days) (≥mostly) 1.73 (0.98–3.06) 1.58 (0.98–3.06) 1.54 (0.60–3.99) 1.31 (0.82–2.08) 2.10 (1.25–3.54) 2.53 (0.97–6.63)
Hypertension (yes) 1.21 (1.03–1.43) 0.83 (0.57–1.22) 0.76 (0.57–1.03) 0.91 (0.74–1.12) 0.96 (0.71–1.31) 0.98 (0.75–1.28)
Overweight a (yes) 0.85 (0.77–0.93) 0.81 (0.65–1.00) 0.85 (0.71–1.01) 1.09 (0.98–1.22) 1.07 (0.93–1.22) 0.96 (0.80–1.15)
Obesity b (yes) 0.90 (0.74–1.09) 0.97 (0.69–1.37) 0.56 (0.38–0.83) 1.20 (1.02–1.42) 1.16 (0.93–1.45) 1.06 (0.79–1.42)
Diabetes (yes) 0.83 (0.59–1.16) 0.93 (0.47–1.84) 0.58 (0.33–1.05) 0.88 (0.58–1.34) 0.63 (0.33–1.20) 1.31 (0.82–2.11)
Cancer (yes) 1.32 (0.95–1.83) 1.23 (0.48–3.10) 0.33 (0.14–0.80) 1.13 (0.78–1.63) 1.94 (1.18–3.17) 0.34 (0.16–0.71)
Heart disease (yes) 1.39 (1.02–1.88) 1.38 (0.79–2.43) 1.03 (0.60–1.78) 0.91 (0.61–1.35) 0.73 (0.40–1.35) 0.68 (0.37–1.24)
Stroke (yes) 0.76 (0.34–1.70) 0.04 (0.005–0.26) 1.33 (0.54–3.30) 1.96 (1.14–3.39) 1.68 (0.71–3.97) 0.45 (0.17–1.21)
Any functional limitation (yes) 1.24 (1.05–1.46) 1.30 (1.00–1.70) 1.35 (1.10–1.66) 1.17 (1.02–1.34) 1.41 (1.15–1.73) 1.14 (0.88–1.47)
Any Injury (past 3 months) (yes) 0.96 (0.59–1.56) 0.81 (0.29–2.31) 0.44 (0.14–1.41) 1.84 (0.95–3.57) 2.49 (1.44–4.32) 1.10 (0.44–2.76)

Note. All estimates are weighted for the survey’s complex sampling design and adjusted for age (18–30, 31–49, 50–64, 65+) race/ethnicity, educational attainment, income, occupational class, health status, and region of residence; Boldface indicates statistically significant results at the 0.05 level

PR prevalence ratio, CI confidence interval. a Overweight = ≥25 kg/m2; b Obesity = ≥30 kg/m2

Association between sexual orientation identity and healthcare access and utilization

Despite no difference in health insurance status and emergency room visits, gay men (PR = 1.40 [1.08, 1.81]) and lesbians (PR = 1.47 [1.15, 1.88]) as well as bisexual men (PR = 2.00 [1.44, 2.79]) and women (PR = 1.65 [1.28, 2.13]) were more likely than their heterosexual counterparts to delay seeking healthcare because of cost. In contrast, these groups were more likely to have initiated HPV vaccination and received an HIV test. Gay (PR = 1.06 [1.01, 1.11]) but not bisexual (PR = 1.04 [0.94, 1.14]) men were more likely to have a usual place for care compared to heterosexual men.

Age differences in health behaviors and outcomes by sexual orientation identity

Table 4 shows fully adjusted prevalence ratios for health behaviors and healthcare access and utilization indicators in relation to sexual orientation identity among men and women, stratified by age group (aged 18–30 years and 31–85+ years) based on sample size. Compared to their heterosexual counterparts, younger and older gay men and lesbians were more likely to report being current drinkers. Younger bisexual women were 44 % (PR = 1.44 [1.01, 2.05]) more likely to be current alcohol consumers compared to their heterosexual counterparts. Older lesbian and bisexual women were more likely than older heterosexual women to be former drinkers and former cigarette smokers. Younger lesbian and bisexual women and older bisexual women were more likely than their heterosexual counterparts to report heavy drinking. Younger (PR = 1.68 [1.09, 2.61]) and older (PR = 1.25 [1.04, 1.52]) gay men were more likely than their heterosexual counterparts to be current smokers.

Table 4.

Fully-Adjusted Prevalence Ratios of Sexual Orientation Disparites in Health Behaviors and Healthcare Access and Utilization Indicators among 69,270 U.S. Men and Women by Younger and Older Age Group, National Health Interview Survey, 2013 and 2014

Men (n = 30,961) (reference: heterosexual) Women (n = 38,309) (reference: heterosexual)
Gay PR (95 % CI) Bisexual PR (95 % CI) Lesbian PR (95 % CI) Bisexual PR (95 % CI)
n = 624 n = 162 n = 525 n = 353
Younger, PR (95 % CI) Older, PR (95 % CI) Younger, PR (95 % CI) Older, PR (95 % CI) Younger, PR (95 % CI) Older, PR (95 % CI) Younger, PR (95 % CI) Older, PR (95 % CI)
n = 147 n = 477 n = 59 n = 103 n = 143 n = 382 n = 172 n = 181
Health behavior
 Alcohol consumption (reference: never)
  Current 1.68 (1.09–2.61) 1.25 (1.04–1.52) 1.27 (0.85–1.88) 1.14 (0.83–1.57) 1.51 (1.08–2.10) 1.47 (1.16–1.87) 1.44 (1.01–2.05) 1.18 (0.85–1.64)
  Former 0.90 (0.49–1.66) 1.13 (0.95–1.35) 0.54 (0.16–1.88) 0.99 (0.62–1.56) 0.83 (0.29–2.33) 1.53 (1.25–1.88) 1.24 (0.68–2.25) 1.57 (1.18–2.08 )
  Heavy drinkinga 0.72 (0.32–1.59) 0.96 (0.58–1.59) 2.01 (0.86–4.66) 1.63 (0.66–3.99) 2.69 (1.57–4.62) 1.29 (0.80–2.07) 1.81 (1.01–3.22) 2.61 (1.60–4.24)
  5+ drinks on at least 2 daysb 1.00 (0.76–1.31) 0.95 (0.77–1.18) 1.42 (1.19–1.69) 1.14 (0.78–1.68) 1.11 (0.79–1.56) 1.34 (1.01–1.77) 1.13 (0.86–1.49) 1.75 (1.29–2.37)
 Leisure-time physical activity (reference: high)
  Low 0.68 (0.46–1.03) 0.96 (0.82–1.13) 0.76 (0.46–1.26) 1.11 (0.82–1.51) 1.07 (0.83–1.39) 1.04 (0.89–1.22) 0.93 (0.68–1.25) 0.92 (0.71–1.19)
  Never/unable 0.88 (0.52–1.51) 0.89 (0.73–1.09) 1.03 (0.50–2.11) 0.93 (0.66–1.30) 0.96 (0.68–1.36) 1.01 (0.83–1.22) 0.63 (0.39–1.00) 0.51 (0.36–0.72)
 Smoking status (reference: never)
  Current 1.68 (1.09–2.61) 1.25 (1.04–1.52) 1.27 (0.85–2.61) 1.14 (0.83–1.52) 1.51 (1.08–2.10) 1.47 (1.16–1.87) 1.88 (1.08–3.27) 1.18 (0.85–1.87)
  Former 0.90 (0.49–1.66) 1.13 (0.95–1.35) 0.54 (0.16–1.88) 0.99 (0.62–1.56) 0.83 (0.29–2.33) 1.53 (1.25–1.88) 1.32 (0.60–2.91) 1.57 (1.18–2.08)
 Sleep duration (reference: 7 h)
  <7 h 1.11 (0.83–1.50) 1.07 (0.93–1.24) 1.07 (0.83–1.50) 0.93 (0.65–1.32) 0.83 (0.61–1.13) 1.05 (0.89–1.23) 1.06 (0.82–1.37) 1.01 (0.79–1.28)
  >7 h 1.08 (0.86–1.37) 1.08 (0.94–1.24) 0.95 (0.65–1.38) 0.96 (0.67–1.36) 0.88 (0.69–1.12) 0.88 (0.73–1.06) 0.96 (0.73–1.25) 1.14 (0.95–1.35)
Healthcare access and utilization indicator
 Health insurance (no) 0.90 (0.61–1.33) 1.18 (0.85–1.63) 0.68 (0.30–1.54) 1.51 (0.94–2.42) 1.20 (0.84–1.72) 1.00 (0.66–1.53) 1.26 (0.82–1.93) 1.07 (0.75–1.54)
 Usual healthcare place (yes) 1.13 (1.01–1.27) 1.04 (0.99–1.09) 1.09 (0.82–1.45) 1.23 (1.01–1.50) 0.87 (0.75–1.02) 0.96 (0.92–1.01) 0.88 (0.75–1.05) 0.96 (0.88–1.04)
 ER visits (≥2 in past year) 0.63 (0.29–1.37) 1.23 (0.82–1.86) 1.40 (0.57–3.41) 1.43 (0.68–3.04) 1.08 (0.76–1.53) 0.97 (0.69–1.36) 0.85 (0.57–1.26) 1.16 (0.82–1.63)
 Delay healthcare because of costs (yes) 1.44 (0.78–2.67) 1.40 (1.04–1.89) 3.94 (2.10–7.39) 1.91 (1.27–2.89) 1.65 (1.11–2.44) 1.46 (1.07–1.99) 2.25 (1.59–3.21) 1.25 (0.87–1.78)
 HPV shot/vaccine (initiation) 1.77 (0.93–3.35) 4.58 (2.32–9.04) 2.55 (1.05–6.20) 1.76 (0.25–12.38) 1.01 (0.73–1.40) 1.69 (0.80–3.55) 1.40 (1.10–1.80) 2.07 (1.02–4.21)
 HIV test (ever) 2.24 (1.91–2.62) 2.23 (2.10–2.36) 1.76 (1.15–2.69) 1.67 (1.33–2.09) 1.05 (0.85–1.29) 1.27 (1.11–1.45) 1.14 (0.92–1.41) 1.32 (1.14–1.53)

Note. Sample size for the ‘Something else/Don’t know’ sexual minority group was too small for robust statistical estimation. All estimates are weighted for the survey’s complex sampling design and adjusted for age, race/ethnicity, educational attainment, income, occupational class, health status, and region of residence; Boldface indicates statistically significant results at the 0.05 level

PR prevalence ratio, CI confidence interval; younger adults were aged 18–30 years; older adults were aged 31–85+ years; a heavy drinking ≥2 drinks per day for men and >1 drink per day for women; b 5+ drinks on at least 2 days among men and women in 2013 and 4+ drinks on at least 2 days among women in 2014 only; ER emergency room, HPV human papillomavirus, HIV human immunodeficiency virus

While there were no statistically significant sexual orientation differences in health insurance status across age groups, all sexual minorities (with the exception of younger gay men) were more likely than their heterosexual counterparts to delay healthcare due to cost concerns. There were also no sexual orientation differences in emergency room visits across age groups. Both younger (PR = 2.24 [1.91, 2.62]) and older (PR = 2.23 [2.10, 2.36]) gay men as well as younger (PR = 1.76 [1.15, 2.69]) and older (PR = 1.67 [1.33, 2.09]) bisexual men were more likely to report ever getting tested for HIV compared to heterosexual men. Relative to their heterosexual counterparts, older gay (PR = 4.58 [2.32, 9.04]) and younger (PR = 2.55 [1.05, 6.20]) bisexual men as well as younger (PR = 1.40 [1.10, 1.80]) and older (PR = 2.07 [1.02, 4.21]) bisexual women were more likely to initiate HPV vaccination. Only older lesbian (PR = 1.27 [1.11, 1.45]) and bisexual (PR = 1.32 [1.14, 1.53]) women were more likely to have ever been tested for HIV relative to their heterosexual counterparts.

Discussion

We identified important disparities in health behaviors, health outcomes, and healthcare access and utilization indicators between sexual minorities and heterosexual individuals in a nationally representative sample of U.S. men and women; several of these disparities varied by specific sexual orientation identity, gender, and age groups. We found that heavy drinking ranged from 65 % to an over two-fold higher prevalence among sexual minorities compared to heterosexual individuals. Lesbians were more likely to be obese than heterosexual women, to have suffered a stroke, and to have a functional limitation. Bisexual women had over a two-fold higher prevalence of sustaining an injury/poisoning in the past 3 months, which may be related to alcohol abuse. Potentially related to preventable factors like increased stress or HIV, gay men were more likely to have hypertension and heart disease. Sexual minority men were more likely to have a functional limitation. Regarding age-group differences, younger bisexual women were 44 % more likely to be current alcohol consumers, and older lesbian and bisexual women were more likely than heterosexual women to be former drinkers and former cigarette smokers.

Our study appears fairly consistent with prior studies. For instance, prior research has found that alcohol, tobacco, and other drug use (as well as the morbidities associated with these exposures) were higher among sexual minorities than heterosexuals [2126]. These studies show that lesbians are more likely to be in recovery and to have been in treatment for alcohol use related problems compared to heterosexual women [25]. High rates of risk factors for heavy drinking and drinking problems – namely, childhood sexual abuse, depression, and suicidal ideation – among lesbians in other studies may explain the sexual orientation disparities in alcohol use that we observed in our analysis [25]. Further, a meta-analysis found that sexual minorities across North America and Europe were much more likely than heterosexual individuals to experience anxiety, depression, and suicidal ideation [27] as well as panic attacks and psychological distress [28], which may explain higher rates of alcohol use and cigarette smoking among sexual minority women, possibly to cope with stigma, discrimination, and stress. Lastly, it is possible that higher rates of obesity among sexual minority women may be due to a higher prevalence of binge eating in this population relative to heterosexual women, which has been linked to minority stress [29].

In this study, older gay men, younger bisexual men, and bisexual women were more likely than their heterosexual counterparts to report initiating HPV vaccination. Agénor et al. found that lesbians aged 15–25 years were less likely to have initiated HPV vaccination relative to their heterosexual counterparts [30]. The difference in these study findings may be due to differences in study population age. Although all sexual minorities (except younger gay men) were more likely than heterosexual persons to delay healthcare because of cost, we observed no sexual orientation identity disparities in health insurance status. In contrast, prior studies have found that sexual minorities were less likely to have health insurance, have received a checkup within in the past year, and have unmet medical needs compared to their heterosexual counterparts [9, 31]. A different study found results similar to ours for women but showed that healthcare access among men in same-sex relationships was the same as or greater than among men in opposite-sex relationships [32]. However, this study used a different dimension of sexual orientation (i.e., gender of sexual partners vs. sexual orientation identity) than our study, which may explain the disparate findings. The demographics of the participants in each study could also contribute to disparate findings. For instance, both affluent and impoverished sexual minorities are included in our nationally representative sample and other studies may have had disproportionate representation from either group. Furthermore, although our study did not identify any difference in sleep duration between sexual minority and heterosexual individuals, prior research has found evidence of shorter sleep duration among sexual minorities compared to their heterosexual counterparts [33].

According to the minority stress model [34], experiences of stigma, discrimination, and victimization related to being a sexual minority may lead to a stress response that increases the risk of poor mental and physical health outcomes among sexual minorities. Specific parts of the stress process linked to being a sexual minority are believed to include expectations of rejection, sexual orientation identity masking, internalized homophobia, and coping by, for instance, attempting to decrease minority stress through problem solving, expressing emotions, and using substances to cope [35]. Discrimination may be a particularly important mechanism by which inequities related to being a sexual minority in U.S. society are related to suboptimal health among sexual minorities. For example, a prior study found that gay and bisexual individuals reported more experiences of lifetime and day-to-day discrimination than heterosexual individuals, and approximately 42 % of sexual minorities attributed this, at least in part, to their sexual orientation. Experiencing discrimination was positively associated with poor quality of life and psychiatric morbidity in this study [36]. Further, interpersonal and institutional discrimination based on sexual orientation identity also contributes to a lack of supportive social and health services for sexual minorities [37] and may help explain sexual orientation identity disparities in healthcare access and utilization among U.S. women and men. Further investigations of the influence of social contexts or norms/mainstream culture on health disparities among sexual minorities are needed.

This study has several limitations. First, we used data from a cross-sectional survey that included only one dimension of sexual orientation (i.e., sexual orientation identity), although the relationship between sexual orientation and health may differ based on the measure of sexual orientation (e.g., sexual attraction, sex of sexual partners) used. Sexuality is fluid and sexual orientation categories are historically contingent. It is possible for participants to shift, for example, from the “something else/don’t know” category to another category over time. Therefore, we need longitudinal studies to examine sexual orientation disparities over the lifecourse and historical time [38, 39]. Second, all data are based on self-report, and some estimates (e.g. BMI), therefore, may be conservative. Third, data on social stressors (e.g., stigma, discrimination) or stress responses were not available for analysis in our study, although they are likely to partially, if not fully, mediate the relationship between sexual orientation identity and many of the health and healthcare outcomes that we considered in this study. Pap smear testing among women was also unavailable. Fourth, there could also be differences in reporting of health and healthcare experiences by sexual orientation identity, which could bias our results; however, such differences have not been documented. Also, the two categories we used to investigate age or cohort differences were broad due to sample size limitations, but it is important to acknowledge that developmental and generational differences exist especially among those aged 31 through older than 85 years.

This study also has important strengths. Specifically, our analyses used data from a large national probability sample of the U.S. population with very little missing data. Therefore, we were able to robustly stratify estimates of health and healthcare by sexual orientation identity by both gender and age, which will help inform future studies and evidence-based interventions that are tailored to the unique needs of sexual minorities with different social, developmental, and health and healthcare needs. We also present findings on understudied aspects of gay and bisexual men’s health as well as results pertaining to the health and healthcare of lesbian and bisexual women, for whom nationally representative data are scarce [40].

Conclusions

In conclusion, sexual minorities had a higher prevalence of some poor health behaviors and outcomes. In order to help inform evidence-based programs and policies that promote the health and healthcare of sexual minorities, future research identifying the factors that may mediate the relationship between sexual orientation identity and health behaviors, outcomes, and services use is needed – including among U.S. women and men separately given the complex interplay between sexual orientation and gender [41, 42]. Additionally, the interaction between other social factors (e.g., race/ethnicity, SEP) and sexual orientation identity should be investigated in order to inform future health interventions that meet the needs of diverse groups of sexual minorities – including those of color and those from low-income backgrounds, who remain understudied and underserved.

Acknowledgements

Not applicable.

Funding

Dr. Jackson was supported by the Harvard Catalyst Clinical and Translational Science Center (grant 1UL1 TR001102-07). Dr. Agénor was supported by National Institutes of Health grant R25CA057711-20. Dr. Johnson was supported by The National Heart, Lung, And Blood Institute of the National Institutes of Health (R01HL110068). Dr. Austin is supported by U.S. Maternal and Child Health Bureau training grants T71-MC00009 and T76-MC00001. The funding sources were not involved in the data collection, data analysis, manuscript writing and publication.

Availability of data and material

The datasets generated during and analysed during this study are available at the National Center for Health Statistics National Health Interview Survey website (http://www.cdc.gov/nchs/nhis/data-questionnaires-documentation.htm).

Authors’ contributions

CLJ conceived the study, acquired the data, participated in its design, performed the statistical analyses, and drafted the manuscript. MA, DA, SBA, and IK participated in the design of the study and contributed to the critical revision of the manuscript. IK additionally provided adminstrative, technical, and material support. All authors (CLJ, MA, DA, SBA, IK) read and approved the final manuscript.

Competing interests

The authors declare that they have no competing interests.

Consent for publication

Not applicable.

Ethics approval and consent to participate

The Harvard T.H. Chan School of Public Health’s Institutional Review Board approved our study. The NHIS received written informed consent from each study participant.

Contributor Information

Chandra L. Jackson, Phone: 617-432-7046, Email: Chandra_Jackson@hms.harvard.edu

Madina Agénor, Email: magenor@mail.harvard.edu.

Dayna A. Johnson, Email: Djohnson@research.bwh.harvard.edu

S. Bryn Austin, Email: Bryn.Austin@childrens.harvard.edu.

Ichiro Kawachi, Email: ikawachi@hsph.harvard.edu.

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