Literature DB >> 19526346

Homonegativity, substance use, sexual risk behaviors, and HIV status in poor and ethnic men who have sex with men in Los Angeles.

Steven Shoptaw1, Robert E Weiss, Brett Munjas, Christopher Hucks-Ortiz, Sean D Young, Sherry Larkins, Gregory D Victorianne, Pamina M Gorbach.   

Abstract

This study evaluates associations between internalized homonegativity and demographic factors, drug use behaviors, sexual risk behaviors, and HIV status among men who have sex with men (MSM) and with men and women (MSM/W). Participants were recruited in Los Angeles County using respondent-driven sampling (RDS) and completed the Internalized Homonegativity Inventory (IHNI) and questionnaires on demographic and behavioral factors. Biological samples were tested for HIV and for recent cocaine, methamphetamine, and heroin use. The 722 MSM and MSM/W participants were predominantly African American (44%) and Hispanic (28%), unemployed (82%), homeless (50%), and HIV positive (48%) who used drugs in the past 6 months (79.5%). Total and Personal Homonegativity, Gay Affirmation, and Morality of Homosexuality IHNI scores were significantly higher for African American men than for other ethnicities, for MSM/W than for MSM, for recent cocaine users than for recent methamphetamine users, and for HIV-seronegative men than for HIV-seropositive men. Linear regression showed the Gay Affirmation scale significantly and inversely correlated with the number of sexual partners when controlling for effects of ethnicity/race and sexual identification, particularly for men who self-identified as straight. Highest IHNI scores were observed in a small group of MSM/W (n = 62) who never tested for HIV. Of these, 26% tested HIV positive. Findings describe ways in which internalized homophobia is a barrier to HIV testing and associated HIV infection and signal distinctions among participants in this sample that can inform targeted HIV prevention efforts aimed at increasing HIV testing.

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Mesh:

Year:  2009        PMID: 19526346      PMCID: PMC2705491          DOI: 10.1007/s11524-009-9372-5

Source DB:  PubMed          Journal:  J Urban Health        ISSN: 1099-3460            Impact factor:   3.671


Introduction

Incident HIV cases (i.e., recent infection) and new AIDS diagnoses are disproportionately among African Americans and Latinos in Los Angeles County1. The Los Angeles AIDS epidemic primarily involves men who have sex with men (MSM) and men who have sex with men and women (MSM/W), groups who account for 76.1% of all AIDS cases. Increasing numbers of women with AIDS, particularly African Americans and Latinas, have been reported, which raises questions about the direction of the epidemic1. Factors that might promote HIV moving from a concentrated epidemic involving MSM and MSM/W to a more generalized epidemic involving women remain poorly specified. One factor that may contribute is high-risk sexual behavior of men with both male and female sexual partners driven by internalized homonegativity2,3. Construction of study sample. Internalized homonegativity (or homophobia) reflects a lack of positive beliefs about being gay, about valuation of the larger gay community, and about the morality of being gay2. In MSM and MSM/W, internalized homophobia correlates with low self-esteem and high-risk sex4. By contrast, levels of internalized homophobia inversely correspond with sexual satisfaction ratings among White MSM5. Some have speculated that MSM with high levels of internalized homophobia are not exposed to cultural norms and corresponding HIV-risk reduction messages that reinforce safer sexual behaviors6. Recent data show that MSM/W, however, restrict unprotected sex solely to regular/main male or female partners7. The men presumably are more likely to know the HIV status of these regular/main partners and consequently limit unprotected sex with other men or women in response to perceived messages regarding HIV risks associated with unprotected sex with status unknown partners7. Higher scores of internalized homophobia have been associated with higher expectations that substance use during sex would enhance sexual experiences, both factors that associate with practice of unprotected anal intercourse (UAI)8. Internalized homonegativity and sexual risk behaviors are factors that may be strongly correlated in communities of MSM and MSM/W of color; experiences with internalized homophobia are thought to be particularly profound and involve incorporation of disapproval of MSM from both minority and dominant cultures9. Some MSM and MSM/W of color may resist or even reject adoption of a sexual identity that recognizes their experiences with other men and instead nurture a heterosexual identity10. Long-term consequences to maintaining a heterosexual identity while engaging in same sex behaviors include high-risk sex, substance abuse, psychological distress, and negative physical health effects, including HIV11. In turn, substance abuse is significantly associated with levels of internalized homonegativity and UAI. Use of stimulants and other drugs cover feelings of shame and internalized homonegativity to facilitate sexual behaviors for MSM and MSM/W that are not possible when not under the influence12,13. Prior studies show that MSM, including men of color, use substances to facilitate sex14, though African American MSM use significantly less substances than White MSM for this purpose15. This study evaluates associations between reported demographic factors, drug use behaviors, sexual risk behaviors, HIV status, and levels of internalized homonegativity among MSM and MSM/W who are poor, urban, and of ethnic descent in Los Angeles.

Methods

Participants Participants were MSM or MSM/W who participated in one of the two waves of data collection (2005–2006; 2006–2008) at the Los Angeles site for NIDA’s Sexual Acquisition and Transmission of HIV—Cooperative Agreement Program (SATH-CAP). Participants were: (1) over 18 years of age; (2) MSM or MSM/W who engaged in the past 6 months in any anal intercourse (AI) and/or a male or female drug user (i.e., self-reported use of powder cocaine, crack cocaine, heroin, methamphetamine, or any injection drug use)—or a sexual partner of a SATH-CAP participant. Only MSM and MSM/W are included in this analysis as only they completed the homonegativity questions. Study Sample The sample was compiled using respondent-driven sampling16. For each of two waves of data collection, “seeds” (individuals willing to participate in the study) were passively recruited via flyers that described the research project, subsequently made an appointment, arrived at the clinic, completed questionnaires and provided biological samples for which they were compensated $50. Upon completion, participants were provided with coupons to recruit people to the study who they knew to be MSM and/or drug users or who were their sexual partners, with the potential of earning an additional $140 in vouchers for the referrals (see Iguchi et al., this volume). Measures An audio computer-assisted self-interview (ACASI) collected detailed information regarding: (1) drug use—past 6 months use of powder cocaine, crack cocaine, methamphetamine, heroin, and speedballs (heroin plus cocaine); (2) sexual risk behaviors—numbers of male and female sexual partners in the prior 6 months, numbers of specific behaviors engaged in over the past 6 months while having sex with male and female partners (particularly those under the influence of drugs), numbers of specific sexual and drug use behaviors with each of the last three sexual and drug-using partners over the past 6 months; (3) the Internalized Homonegativity Inventory2—a 23-item questionnaire that yielded a total score and three subscales (Personal Homonegativity, Gay Affirmation, Morality of Homosexuality). Personal Homonegativity included 11 items on feelings of shame, anxiety, and resentment over being homosexual. Gay Affirmation included seven items on pride and acceptance of being homosexual. Morality of Homosexuality included five items on the morality of homosexuality. The total and subscales are compiled using sums; (4) self-reported variables measuring “outness,” i.e., the number of men you know who have sex with other men, the number of friends/family who know you have sex with other men; (5) self-reported sexual identification, defined as (a) Gay or homosexual, (b) Bisexual, (c) Straight, (d) Down Low, Same Gender Loving, Messing Around on the Other Team, (e) Male to Female Transgender, (f) No Label; (6) biological specimens—oral HIV rapid test with confirmatory ELISA for positive results, and urine drug screens tested for metabolites of cocaine, methamphetamine, and heroin (opioids). Men in the sample who reported having had sex with other men, but not within the previous 6 months, were categorized as having had “no sex.” Data analysis Prior to addressing study questions, the pattern of missing data was explored. For cases missing three or fewer items on the IHNI, subject means were imputed for missing items to avoid casewise deletion. This allows retention of a significant number of cases that would otherwise be lost in the analyses. Psychometric properties of the IHNI total and the subscales were assessed using Cronbach’s alphas for internal consistency and a principal components factor analysis for latent structure of the data. IHNI scores were correlated with self-reported measures of “outness” to examine content validity.Chi-square analyses compared the distributions of percentages of MSM and MSM/W among demographic, drug and sex variables. Participants reporting no sex in the previous 6 months who identified as MSM or MSM/W were included separately. ANOVAs tested univariate differences between IHNI scores and interval level demographic, drug and sex variables. Hypotheses for condom use in the last three reported sexual partners were fit with a random intercept model in Proc GLIMMIX in SAS version 9.1 (SAS Institute, Cary, NC, USA) and were used to evaluate whether internalized homonegativity scores predicted condom use when controlling for ethnicity/race and sexual identification. Linear regression was used to evaluate the effect of IHNI and subscale scores on the number of reported sexual partners and the number of reported AI partners. When evaluating the effects of IHNI score and subscale scores on sexual risk behaviors, ethnicity/race and self sexual identification were used as covariates. Logistic regression was used to determine the association of demographic, drug use, and sexual risk behaviors with confirmed HIV status.All scientific and research procedures were overseen by the UCLA Human Subjects Protection Committee and the RAND Institutional Review Board.

Results

Study Sample Figure 1 describes sample composition. The final sample of 722 MSM and MSM/W included data from 55 participants who had three or fewer IHNI items missing and were imputed. Participants with three or fewer missing items differed significantly from those with complete data only along biological and self-report of HIV serostatus (both p < 0.001). Participants with imputed IHNI items were more likely to be HIV seronegative than those who completed the survey. The sample was MSM and MSM/W, predominantly African American (44%) or Latino (28%) men, likely to report drug use in the past 6 months (79.5%) and many who are HIV positive (47.5%). Biological testing for HIV showed Latino men had the highest HIV prevalence (64.6%) followed by White (43.4%) and Black (39.2%) men. Among the smaller number of men with other ethnicities, 47.7% tested HIV positive. In the smaller group of men who did not know their HIV status, 26% (of 66) who reportedly had tested previously but did not know their results and 26% (of 62) men who reportedly never tested were confirmed HIV positive. Table 1 shows significant associations between MSM and MSM/W by demographic, drug use, sexual behavior, and HIV status characteristics. While 52% of MSM/W informed their female partners about having sex with men, only 18% of MSM/W reported informing their male partners that they also have had sex with women.
Table 1

Demographic factors, drug use, sexual risk behaviors, and HIV status for male participants who reported having sex with men (MSM) and with men and women (MSM/W) in the past 6 months

NNo sex (%)MSM (%)MSM/W (%)Chi-sq(df), p value
Demographic variables
Ageχ2(8) = 22, 0.0041
<3084116227
30–39181136028
40–49299155332
50–59122302545
> = 6020164044
Raceχ2(6) = 47, <0.0001
White152135730
Black312154144
Hispanic198146917
Other44184834
Education levelχ2(4) = 23, 0.0001
Less than high school156224730
High school233154540
More than high school316116128
Employment statusχ2(4) = 15, 0.0045
Unemployed581154935
Part-time5696823
Full-time69136819
Income in past month (legal)χ2(4) = 23, 0.0001
$0–$500424144639
$501–$1,000171185923
>$1,000102106625
Homeless in past yearχ2(2) = 17, 0.0002
No351156026
Yes355144640
Marital statusχ2(6) = 37, <0.0001
Single461165827
Married/cohabitating70145927
Formerly married160113652
Other15204040
Drug use variables
Inject drugs—past 30 daysχ2(2) = 11, 0.0051
No572135631
Yes130184042
Inject drugs—everχ2(2) = 5, 0.0688
No494155530
Yes212154739
Urine drug screen, cocaineχ2(2) = 10, 0.0069
Negative580145631
Positive125184042
Urine drug screen, methamphetamineχ2(2) = 16, 0.0004
Negative639145235
Positive66246412
Urine drug screen, heroinχ2(2) = 7, 0.0359
Negative663145333
Positive42265519
Self-report, methamphetamine, last 6 monthsχ2(2) = 0.1, 0.9567
No379145333
Yes326155233
Self report, cocaine/crack, last 6 monthsχ2(2) = 30, <0.0001
No265176320
Yes440134740
Self-report, heroin, last 6 monthsχ2(2) = 26, <0.0001
No576145729
Yes128183349
Self-report, speedball, last 6 monthsχ2(2) = 27, <0.0001
No597155629
Yes108143253
Self-report, any drug, last 6 monthsχ2(2) = 13, 0.0016
No144116623
Yes560164935
Sexual behaviors
Number of sexual partners—past 6 monthsχ2(6) = 742, <0.0001
None10310000
110608515
212705347
3 or more37005842
Condom use last 6 monthsχ2(2) = 154, <0.0001
No unprotected sex313334720
Unprotected sex37205644
Sexual identificationχ2(10) = 314, <0.0001
Gay or homosexual32117803
Bisexual19372766
Straight60301060
DL, same gender, mess around57123058
Male > female3020773
No label32132563
Sexual behaviorχ2(8) = 459, <0.0001
Only with men35717821
Mostly with men10854946
Equal with men and women5181280
Mostly with women1519981
Only with women2665431
HIV status
Confirmed HIV statusχ2(2) = 161, <0.0001
Negative370133354
Positive335167410
Self-report HIV statusχ2(6) = 178, <0.0001
Test, don’t know65155529
Negative283113158
Positive29815768
No test59253737
Demographic factors, drug use, sexual risk behaviors, and HIV status for male participants who reported having sex with men (MSM) and with men and women (MSM/W) in the past 6 months Psychometric Properties IHNI scores in this sample were substantially higher for both the total scores and for all three subscale scores in comparison to the original sample used in test construction (higher scores indicate higher levels of internalized homonegativity). Cronbach’s alphas for the IHNI total (α = 0.91) and the Personal Homonegativity (α = 0.90), Gay Affirmation (α = 0.83), and Morality of Homosexuality (α = 0.76) scales were in the excellent-to-good range. The factor analysis yielded two factors that confirmed the first two factors (Personal Homonegativity, Gay Affirmation)2; the items that did not load on the two large factors were on the Morality of Homosexuality subscale. As there were no statistically significant differences between Waves along IHNI or subscale scores, the data from both samples were combined for analyses.Table 2 shows means and standard deviations for the IHNI total and the Personal Homonegativity, Gay Affirmation, and Morality of Homosexuality scores by demographic, drug use, sexual behavior, and HIV status characteristics. Univariate analyses showed statistically significant differences by age on the IHNI total, Gay Affirmation, and Morality subscales, with scores increasing with age. Scores for the IHNI total, Gay Affirmation, and Morality scores were significantly higher for African American men than for those of other ethnicities. Higher scores were observed for the IHNI total, Personal Homonegativity, Gay Affirmation, and Morality of Homosexuality scores for participants who attained high school or less educational levels. Significant differences also were found by employment status and income levels for the past month with IHNI total, Gay Affirmation, and Morality of Homosexuality scores being lower among those who reported full-time employment and higher monthly income levels. Homeless men scored significantly higher on the IHNI total score than those who denied homelessness. IHNI total, Gay Affirmation, and Morality of Homosexuality subscales differed significantly by marital status, with higher levels observed for participants who were formerly married. IHNI scores varied significantly by drug use; injection drug users (lifetime and in the past 30 days) scored significantly higher on the IHNI total and Gay Affirmation scores than those who denied injection drug use. The Personal subscale was significantly higher for lifetime injectors only. The Morality subscale was significantly higher for recent injectors (past 30 days), though not for injectors lifetime. Urine drug screening results for heroin were not associated with IHNI or subscale scores, though self-report of use of heroin and of speedballs (heroin plus cocaine) was significantly associated with increased IHNI total and the Personal, Gay Affirmation, and Morality subscales. Participants who tested positive for cocaine screens were significantly higher on the IHNI total, Gay Affirmation, and Morality subscale scores than those who tested negative. Methamphetamine drug screen results showed opposing patterns with participants who tested positive for methamphetamine being significantly lower on the IHNI total, Personal, Gay Affirmation, and Morality subscales than those who tested methamphetamine negative. Self-report of methamphetamine use was not associated with IHNI scores.IHNI total and subscale scores were highest for MSM/W, lowest for MSM, and intermediate for the men who reported having no sex (all p < 0.0001). An HIV seropositive test strongly and significantly correlated with lower IHNI total and subscale scores. A similar pattern was observed for participants’ self-report of HIV status, with lower scores for those who reported being HIV positive. As expected, IHNI scores were highest for men who self-identified as straight or as any label indicating bisexuality. Lowest IHNI scores were observed among men who identified as gay or homosexual.Table 3 shows that when the effects of ethnicity/race and sexual identification were controlled for, the Gay Affirmation subscale significantly and inversely predicted the number of sexual partners over the past 6 months. Sexual identification significantly predicted the number of AI partners. There were no associations between IHNI scores and use of condoms. These analyses adjusted for ethnicity/race and sexual identification but not the factor of MSM/MSM/W (sexual orientation in the past 6 months) due to collinearity. Only the Gay Affirmation subscale correlated significantly with number of sexual partners in the previous 6 months when controlling for race and self sexual identification, with higher Gay Affirmation scores associating with fewer partners. Evaluation of the coefficients in this model showed this effect significantly pronounced for the men who identified as straight (−0.42, SE = 0.19; t = −2.18; p = 0.0295), with very high Gay Affirmation scores and few sexual partners.
Table 2

Mean internalized homonegativity index scores by demographic, drug use, sexual behaviors, and HIV status

NIHNI totalPersonalGay AffirmationMorality
MeanSDMeanSDMeanSDMeanSD
Demographics
AgeF(4,717) = 2.5, p = 0.04F(4,717) = 0.27, p = 0.89F(4,717) = 5.1, p = 0.0005F(4,717) = 2.5, p = 0.04
<308659.524.826.513.822.09.311.05.8
30–391357.622.825.713.020.88.710.95.7
40–4936061.322.526.412.922.99.312.06.2
50–5912764.922.427.013.125.29.112.75.8
> = 602067.422.028.514.225.88.913.27.2
Ethnicity/raceF(3,718) = 9.2, p < 0.0001F(3,718) = 2.5, p = 0.05F(3,718) = 12.9, p < 0.0001F(3,718) = 10.5, p < 0.0001
White15356.924.624.814.122.19.210.15.9
Black31965.822.127.813.225.09.013.06.1
Hispanic20656.520.625.311.420.28.811.05.3
Other4460.326.527.614.920.79.212.06.8
EducationF(2,717) = 12.3, p < 0.0001F(2,717) = 6.6, p = 0.002F(2,717) = 7.5, p = 0.0006F(2,717) = 13.0, p < 0.0001
Less than high school15963.020.126.811.723.79.412.55.7
High school23865.723.128.613.824.18.812.96.2
More than high school32356.423.324.613.021.39.310.55.8
Employment statusF(2,719) = 5.1, p = 0.007F(2,719) = 2.1, p = 0.12F(2,719) = 5.7, p = 0.003F(2,719) = 3.4, p = 0.036
Unemployed59362.022.926.813.223.39.212.06.1
Part-time5959.523.026.512.721.79.311.35.6
Full-time7053.022.023.412.019.59.010.15.5
Income in past month (legal)F(2,708) = 9.2, p = 0.0001F(2,708) = 2.5, p = 0.08F(2,708) = 15.4, p < 0.0001F(2,708) = 5.8, p = 0.003
$0–$50043263.822.827.313.324.29.112.46.1
$501–$1,00017457.520.724.911.521.59.311.15.5
>$1,00010555.025.125.414.219.18.510.56.3
Homeless in past yearF(1,720) = 3.9, p = 0.05F(1,720) = 1.9, p = 0.17F(1,720) = 3.5, p = 0.06F(1,720) = 2.6, p = 0.107
No36159.322.725.812.822.19.311.46.0
Yes36162.623.127.113.323.49.112.16.0
Marital statusF(3,717) = 7.2, p < 0.0001F(3,717) = 2.2, p = 0.09F(3,717) = 11.9, p < 0.0001F(3,717) = 2.9, p = 0.033
Single47559.823.426.013.222.29.311.66.0
Married/cohabitating7055.222.624.812.319.88.410.75.8
Formerly married16167.720.828.613.126.28.512.96.1
Other1553.517.924.611.718.56.610.45.1
Drug use variables
Inject drugs—past 30 daysF(1,716) = 9.7, p = 0.002F(1,716) = 3.1, p = 0.08F(1,716) = 13.3, p = 0.0003F(1,716) = 6.0, p = 0.015
No58759.622.526.012.822.19.211.55.9
Yes13166.423.928.213.925.49.212.96.1
Inject drugs—lifetimeF(1,720) = 8.8, p = 0.003F(1,720) = 4.7, p = 0.03F(1,720) = 9.28, p = 0.003F(1,720) = 3.6, p = 0.059
No50759.322.525.712.722.19.311.56.0
Yes21564.823.628.013.824.39.012.46.1
Urine drug screen, cocaineF(1,719) = 12.0, p = 0.0006F(1,719) = 2.5, p = 0.11F(1,719) = 14.6, p = 0.0001F(1,719) = 15.0, p = 0.0001
Negative58959.523.226.013.022.19.311.45.9
Positive13267.120.728.013.625.58.713.66.4
Urine drug screen, methamphetamineF(1,719) = 13.8, 0 = 0.0002F(1,719) = 8.7, p = 0.003F(1,719) = 9.6, p = 0.002F(1,719) = 8.7, p = 0.003
Negative65561.922.926.913.223.19.212.06.0
Positive6651.020.921.911.319.49.19.75.4
Urine drug screen, heroinF(1,719) = 0.8, p = 0.38F(1,719) = 0.6, p = 0.46F(1,719) = 0.08, p = 0.77F(1,719) = 1.8, p = 0.19
Negative67960.722.926.313.122.79.211.76.0
Positive4263.923.827.913.823.19.513.06.2
Self-report, methamphetamine, last 6 monthsF(1,719) = 0.8, p = 0.36F(1,719) = 0.01, p = 0.93F(1,719) = 2.1, p = 0.15F(1,719) = 1.2, p = 0.28
No38861.621.326.512.823.29.212.06.0
Yes33360.124.726.413.522.29.211.56.0
Self-report, cocaine/crack, last 6 monthsF(1,719) = 8.0, p = 0.005F(1,719) = 1.9, p = 0.17F(1,719) = 14.3, p = 0.0002F(1,719) = 3.9, p = 0.048
No27457.922.725.613.221.19.511.26.0
Yes44762.822.926.913.123.88.912.16.0
Self-report, heroin, last 6 monthsF(1,718) = 26.4, p < 0.0001F(1,718) = 13.8, p = 0.0002F(1,718) = 26.2 p < 0.0001F(1,718) = 12.3, p = 0.0005
No59058.922.325.612.721.99.211.45.9
Yes13070.123.430.214.026.48.413.46.5
Self-report, speedball, last 6 monthsF(1,719) = 25.1, p < 0.0001F(1,719) = 14.0, p = 0.0002F(1,719) = 22.2, p < 0.0001F(1,719) = 15.7, p < 0.0001
No61059.122.325.712.722.19.211.45.8
Yes11171.023.830.714.326.58.713.86.6
Self-report, any drug, last 6 monthsF(1,718) = 4.6, p = 0.03F(1,718) =0 .9, p = 0.35F(1,718) = 9.2, p = 0.003F(1,718) = 2.1, p = 0.144
No14957.321.025.512.620.79.111.16.0
Yes57161.823.326.613.223.39.211.96.0
Sexual behaviors
Number of sexual partners—past 6 monthsF(3,702) = 0.5, p = 0.66F(3,702) = 0.5, p = 0.69F(3,702) = 3.6, p = 0.014F(3,702) = 0.8, p = 0.49
None10361.021.725.212.623.510.412.46.2
110660.725.126.114.322.49.912.26.5
212763.221.326.813.024.88.411.65.9
3 or more37060.223.326.813.021.98.911.55.9
Condom use last 6 monthsF(1,683) = 1.0, p = 0.31F(1,683) = 3.3, p = 0.07F(1,683) = 0.02, p = 0.88F(1,683) = 0.02, p = 0.87
No unprotected sex31360.022.825.513.022.79.611.86.0
Unprotected sex37261.823.027.313.122.68.911.86.0
Sex of sex partnersF(2,703) = 55.5, p < 0.0001F(2,703) = 26.8, p < 0.0001F(2,703) = 54.8, p < 0.0001F(2,703) = 29.7, p < 0.0001
Men, but no sex last 6 months10361.021.725.212.623.510.412.46.2
Men only37256.721.423.712.119.78.710.35.4
Men and women23172.621.331.413.627.27.513.96.1
Female partners know have sex with menaF(1,128) = 6.0, p = 0.015F(1,128) = 1.8, p = 0.18F(1,128) = 6.3, p = 0.013F(1,128) = 5.0, p = 0.028
Yes6367.620.929.513.625.47.612.76.0
No6776.017.932.612.828.46.014.95.5
Male partners know have sex with womenaF(1,128) = 0.00, p = 0.97F(1,128) = 0.1, p = 0.71F(1,128) = 0.04, p = 0.84F(1,128) = 0.2, p = 0.63
Yes10771.919.531.312.926.96.813.75.6
No2371.821.530.214.927.27.914.47.1
Sexual identificationF(5,703) = 32.8, p < 0.0001F(5,703) = 11.9, p < 0.0001F(5,703) = 39.8, p < 0.0001F(5,703) = 19.6, p < 0.0001
Gay or homosexual33051.620.423.011.718.98.69.75.1
Bisexual19769.120.829.912.525.87.413.46.0
Straight6077.322.730.616.231.27.415.57.1
DL, same gender, mess around5772.218.830.113.028.28.113.95.9
Male > female3149.916.520.98.618.39.310.73.8
No label3465.224.329.214.623.68.912.56.5
Sexual behaviorF(4,704) = 41.8, p < 0.0001F(4,704) = 16.3, p < 0.0001F(4,704) = 52.8, p < 0.0001F(4,704) = 23.6, p < 0.0001
Only with men36651.820.122.911.518.98.710.05.2
Mostly with men11063.521.528.612.623.28.211.75.9
Equal with men and women5372.421.932.013.826.17.514.46.3
Mostly with women15474.851.631.214.329.06.714.66.3
Only with women2671.711.925.712.131.18.415.06.1
HIV status
Confirmed HIV statusF(1,719) = 55.4, p < 0.0001F(1,719) = 24.4, p < 0.0001F(1,719) = 52.6, p < 0.0001F(1,719) = 38.1, p < 0.0001
Negative37666.822.828.713.525.09.113.16.4
Positive34554.521.323.912.220.28.710.45.3
Self-report HIV statusF(3,717) = 22.6, p < 0.0001F(3,717) = 10.6, p < 0.0001F(3,717) = 20.1, p < 0.0001F(3,717) = 15.9, p < 0.0001
Test, don’t know6666.024.329.115.324.28.812.77.0
Negative28765.822.828.313.524.89.212.76.2
Positive30653.221.023.411.619.86.910.15.2
Never tested6270.920.030.212.726.28.414.65.5

aOnly answered by those who answered that they have had sex with both men and women in the past 6 months, n = 275

Table 3

Multivariate analysis of IHNI total and subscale scores by sexual risk behavior variables

Number of sexual partners last 6 months (natural log)Number of unprotected anal sex partners reported (natural log)Condom use last 3 sexual partnersa
estSDF / Tdfp valueestSDF / Tdfp valueestSDF / Tdfp value
IHNI score
Race0.43(3,683)0.73001.70(3,663)0.16530.56(3,571)0.6410
Sex ID3.41(5,683)0.00472.37(5,663)0.03821.03(5,571)0.4016
IHNI score−0.00060.0016−0.390.6933−0.00110.0017−0.650.51690.00290.00370.780.4344
Personal score
Race0.54(3,683)0.65501.81(3,663)0.14440.59(3,572)0.1253
Sex ID3.34(5,683)0.00552.62(5,663)0.02360.99(5,572)0.4240
Personal score0.00390.00271.450.14720.00120.00290.420.67700.00950.00621.540.1253
Gay Affirmation score
Race0.51(3,683)0.67801.83(3,663)0.13960.47(3,571)0.7016
Sex ID3.43(5,683)0.00462.08(5,663)0.06661.13(5,571)0.3440
Gay Affirmation score−0.00930.0041−2.250.0247−0.00660.0044−1.510.1322−0.00180.0096−0.190.8502
Morality score
Race0.33(3,683)0.80541.55(3,663)0.19990.44(3,572)0.7955
Sex ID3.37(5,683)0.00512.30(5,663)0.04361.14(5,572)0.3381
Morality score−0.00870.0060−1.450.1481−0.00730.0065−1.130.2579−0.00370.0141−0.260.7955

aThis was run using the last three partner data for every participant. This is a fixed effects (repeated measure logistic regression) model of condom use (unprotected sex = 1/no unprotected sex = 0) for up to three possible partners. Only those with at least 20 items and with at least one sexual partner data were included in the analyses

Mean internalized homonegativity index scores by demographic, drug use, sexual behaviors, and HIV status aOnly answered by those who answered that they have had sex with both men and women in the past 6 months, n = 275 Multivariate analysis of IHNI total and subscale scores by sexual risk behavior variables aThis was run using the last three partner data for every participant. This is a fixed effects (repeated measure logistic regression) model of condom use (unprotected sex = 1/no unprotected sex = 0) for up to three possible partners. Only those with at least 20 items and with at least one sexual partner data were included in the analyses

Discussion

Findings showed the IHNI scale to have adequate psychometric properties and similar factor structure to the scale’s original sample2. IHNI scores averaged ten points or more higher than the original sample, which suggests aspects of internalized homonegativity are more pronounced in poor, urban MSM and MSM/W of color than white middle-class, Midwest gay men. The IHNI total score and the three subscales captured distinct aspects of internalized homonegativity and described meaningful differences along meaningful participant characteristics, including social indicators of the participant’s “outness.” Levels of internalized homonegativity increased with age, with lower educational levels, with African American ethnicity, with experiences of poverty and homelessness, with recent use of cocaine (lower levels of homonegativity with methamphetamine use), with experiences of being incarcerated, with being a man who is behaviorally bisexual, and with being HIV seronegative. The sampling frame involving RDS did not promote immediate convergence of IHNI scores for participants enrolled in the first versus the latter halves of each Wave of data collection. In both Waves of data collection, enrollment of African Americans (and concomitant higher IHNI scores) increased as the linked referrals proceeded. IHNI scores for each Wave, however, were similar. This application of RDS did not yield a sample that could be considered representative of the general population of MSM or MSM/W in Los Angeles County, particularly along the factors of ethnicity/race, poverty and HIV. Hence, findings are understood to reflect a unique sample of very poor MSM and MSM/W of color in Los Angeles County. Drug-specific behaviors interacted with the IHNI scores and ethnicity/race such that African American MSM/W were more likely to have positive urine cocaine screens and higher IHNI scores, while White and Hispanic MSM were more likely to provide positive urine methamphetamine screens and lower IHNI scores. Although substance use is an efficient method to cover over feelings of internalized homophobia17, its functions appear to be divergent for cocaine and for methamphetamine using men. Another distinction is the finding that African American men reported similar levels of drug use as White and Latino men, which contrasts with work showing lower levels of substance use in African American MSM/W15. High IHNI scores for African American MSM/W validates the work of many and indicates that the sociocultural milieu of most African American men prohibit expressions of non-heterosexual behaviors and identities10,17,18. African American MSM/W may face potential rejection of cultural affiliation when openly acknowledging either male–male sexual behaviors or gay or bisexual identities7,19. Consistent with prior work15, the highest homonegativity scores were reported by MSM/W who reportedly had no prior tests for HIV; HIV prevalence in this group was high. As such, homonegativity may function within this group of men as a barrier to HIV testing. Still, this sample of men with high homonegativity scores completed their rapid tests and learned their results. Design of prevention strategies with the goal of increasing HIV testing among men who have never tested may benefit from rapid testing procedures and/or monetary incentives. IHNI scores generally did not predict HIV-related sexual risk behaviors after controlling for race/ethnicity and self sexual identification. One exception is that high scores on the Gay Affirmation subscale significantly predicted low numbers of sexual partners, particularly for men who self-identified as “straight.” That only one model showed significant associations between IHNI scores and behavioral outcomes after holding race/ethnicity and self sexual identification constant indicates that there is no homogenous experience of sexual behaviors and internalized homonegativity for MSM and MSM/W of differing racial/ethnic groups who adhere to differing sexual identification labels. Findings were limited by several factors. These include collecting all data from a single convenience sample in Los Angeles County and reliance primarily on subject reports. Yet, participants were scattered throughout the Los Angeles basin and comprised a coherent sample of predominantly low-income MSM and MSM/W of color. The size of the sample allowed sufficient design effect for findings to be considered significant, even if some participants misrepresented self-reports. As well, ACASI was used to increase privacy and findings comparing urine data with self-report of drug use indicating participants approached the questionnaire straightforwardly. Finally, there is a limitation to the concept of internalized homonegativity that involves emphasis on individual pathology rather than on institutional/societal oppression3. Other limitations to these findings deserve mention that are related to the RDS method. In our use of dual cores of drug users and/or MSM in the RDS procedure, we compiled a sample that showed high levels of similarity between participants and the recruits they referred into the study (i.e., homophily) for most of the variables measured. These included HIV status, race/ethnicity, drug use, and levels of income, even though the sample was overwhelmingly poor. Implementation of RDS failed to yield a “representative” sample of drug users and/or MSM in both this and another RDS study in Los Angeles20, which also recruited a very poor sample with high HIV prevalence. This suggests findings should be constrained to similar urban groups of older MSM and MSM/W of color with high HIV prevalence and who are drug users. Despite these limitations, findings still show internalized homonegativity to correlate significantly and strongly with a variety of demographic factors, drug use, sexual behaviors, and HIV status in this sample of very poor, largely minority MSM and MSM/W, which provide a rare glimpse into associations between internalized homonegativity, sexual behaviors, and drug use for the men in this understudied group. Findings also emphasize the value of using rapid testing procedures with those who do not know their HIV status and imply that optimally effective prevention interventions that address homonegativity and sexual risk may be constructed differently for MSM methamphetamine users than for MSM/W cocaine users.
  16 in total

Review 1.  Internalized homophobia and health issues affecting lesbians and gay men.

Authors:  I R Williamson
Journal:  Health Educ Res       Date:  2000-02

2.  Black men who have sex with men and the HIV epidemic: next steps for public health.

Authors:  David J Malebranche
Journal:  Am J Public Health       Date:  2003-06       Impact factor: 9.308

3.  Explaining disparities in HIV infection among black and white men who have sex with men: a meta-analysis of HIV risk behaviors.

Authors:  Gregorio A Millett; Stephen A Flores; John L Peterson; Roger Bakeman
Journal:  AIDS       Date:  2007-10-01       Impact factor: 4.177

Review 4.  Focusing "down low": bisexual black men, HIV risk and heterosexual transmission.

Authors:  Gregorio Millett; David Malebranche; Byron Mason; Pilgrim Spikes
Journal:  J Natl Med Assoc       Date:  2005-07       Impact factor: 1.798

5.  Longitudinal modeling of methamphetamine use and sexual risk behaviors in gay and bisexual men.

Authors:  Perry N Halkitis; Preetika Pandey Mukherjee; Joseph J Palamar
Journal:  AIDS Behav       Date:  2008-07-26

6.  Methodological issues in research on sexual behavior with Latino gay and bisexual men.

Authors:  Maria Cecilia Zea; Carol A Reisen; Rafael M Díaz
Journal:  Am J Community Psychol       Date:  2003-06

7.  Social and psychological context for HIV risk in non-gay-identified African American men who have sex with men.

Authors:  Don Operario; Carla Dillard Smith; Susan Kegeles
Journal:  AIDS Educ Prev       Date:  2008-08

8.  Homophobia, self-esteem, and risk for HIV among African American men who have sex with men.

Authors:  J P Stokes; J L Peterson
Journal:  AIDS Educ Prev       Date:  1998-06

9.  Beyond the Down Low: sexual risk, protection, and disclosure among at-risk Black men who have sex with both men and women (MSMW).

Authors:  Brian Dodge; William L Jeffries; Theo G M Sandfort
Journal:  Arch Sex Behav       Date:  2008-10

10.  Understanding differences in HIV sexual transmission among Latino and black men who have sex with men: The Brothers y Hermanos Study.

Authors:  Gary Marks; Gregorio A Millett; Trista Bingham; Lisa Bond; Jennifer Lauby; Adrian Liau; Christopher S Murrill; Ann Stueve
Journal:  AIDS Behav       Date:  2008-08-28
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  63 in total

1.  Psychosocial Health Disparities Among Black Bisexual Men in the U.S.: Effects of Sexuality Nondisclosure and Gay Community Support.

Authors:  M Reuel Friedman; Leigh Bukowski; Lisa A Eaton; Derrick D Matthews; Typhanye V Dyer; Dan Siconolfi; Ron Stall
Journal:  Arch Sex Behav       Date:  2018-04-05

2.  Special issue: Sexual Acquisition and Transmission of HIV Cooperative Agreement Program (SATHCAP), July 2009: commentary.

Authors:  Richard Rothenberg; Richard Jenkins; Elizabeth Lambert
Journal:  J Urban Health       Date:  2009-07       Impact factor: 3.671

3.  HIV risk among substance-using men who have sex with men and women (MSMW): findings from South Florida.

Authors:  M Reuel Friedman; Steven P Kurtz; Mance E Buttram; Chongyi Wei; Anthony J Silvestre; Ron Stall
Journal:  AIDS Behav       Date:  2014-01

4.  FROM BIAS TO BISEXUAL HEALTH DISPARITIES: ATTITUDES TOWARD BISEXUAL MEN AND WOMEN IN THE UNITED STATES.

Authors:  M Reuel Friedman; Brian Dodge; Vanessa Schick; Debby Herbenick; Randolph Hubach; Jessamyn Bowling; Gabriel Goncalves; Sarah Krier; Michael Reece
Journal:  LGBT Health       Date:  2014-12       Impact factor: 4.151

5.  Predictors of Recent HIV Testing Among Chinese Men Who Have Sex with Men: A Barrier Perspective.

Authors:  Wenjian Xu; Yong Zheng; Michelle R Kaufman
Journal:  AIDS Patient Care STDS       Date:  2018-09-20       Impact factor: 5.078

6.  Evaluation of respondent-driven sampling in a study of urban young men who have sex with men.

Authors:  Lisa M Kuhns; Soyang Kwon; Daniel T Ryan; Robert Garofalo; Gregory Phillips; Brian S Mustanski
Journal:  J Urban Health       Date:  2015-02       Impact factor: 3.671

7.  Correlates of a Single-Item Indicator Versus a Multi-Item Scale of Outness About Same-Sex Attraction.

Authors:  J Michael Wilkerson; Syed W Noor; Dylan L Galos; B R Simon Rosser
Journal:  Arch Sex Behav       Date:  2015-08-21

8.  A Randomized Trial of an Online Risk Reduction Intervention for Young Black MSM.

Authors:  Lisa B Hightow-Weidman; Sara LeGrand; Kathryn E Muessig; Ryan A Simmons; Karina Soni; Seul Ki Choi; Helene Kirschke-Schwartz; Joseph R Egger
Journal:  AIDS Behav       Date:  2019-05

9.  Latent Classes of Sexual Risk Among Black Men Who Have Sex with Men and Women.

Authors:  Derek T Dangerfield; Nina T Harawa; Laramie R Smith; William L Jeffries; Lourdes Baezconde-Garbanati; Ricky Bluthenthal
Journal:  Arch Sex Behav       Date:  2018-03-14

10.  Correlates of unprotected vaginal or anal intercourse with women among substance-using men who have sex with men.

Authors:  Emily Greene; Victoria Frye; Gordon Mansergh; Grant N Colfax; Sharon M Hudson; Stephen A Flores; Donald R Hoover; Sebastian Bonner; Beryl A Koblin
Journal:  AIDS Behav       Date:  2013-03
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