Despite salient strides in HIV elimination efforts in the United States, some populations, most notably young men who have sex with men (YMSM), remain disproportionately affected (CDC, 2014b). Among them, young Black MSM (YBMSM) bear the heaviest burden of new HIV infections, accounting for more than any other subgroup by race/ethnicity, age and sex (CDC, 2016). Reasons for these race and age-based disparities are varied and not well understood, especially as YBMSM tend to demonstrate lower levels of many of the factors generally assumed to be related to HIV risk, such as number of sex partners, engagement in condomless sex, and frequency of HIV testing (Millett, Flores, Peterson, & Bakeman, 2007).
More recently, the social networks of young racial/ethnic and sexual minorities have been positioned as critical factors in understanding their HIV vulnerability (Fujimoto, Flash, Kuhns, Kim, & Schneider, 2018; Fujimoto, Williams, & Ross, 2013; Millett et al., 2007). This
For most young adults, online social-networking sites (SNS) — i.e., the Internet-based platforms that enable connection and communication between users (Holloway et al., 2014) — are increasingly salient features of their social lives (Greenwood, Perrin, & Duggan, 2016). Although the exact number of MSM who use SNS is difficult to assess (Liau, Millett, & Marks, 2006), it is known that about 90% of young adults are engaged with SNS (Perrin, 2015) and that LGBT young adults use SNS more than their heterosexual counterparts (Harris, 2008; Taylor, 2013).
As young adults spend increasing amounts of time online, a new wave of digital public health research has been ushered in (Capurro et al., 2014; Yonker, Zan, Scirica, Jethwani, & Kinane, 2015) that draws on SNS as explanatory mechanisms of heath behavior engagement (Holloway et al., 2014; Rice, Holloway, et al., 2012; S. D. Young, Szekeres, & Coates, 2013). However, in HIV prevention research, the almost singular focus on popular online dating sites for MSM (e.g., Grindr) (Goedel & Duncan, 2015; Landovitz et al., 2013; Rice, Holloway, et al., 2012; Winetrobe, Rice, Bauermeister, Petering, & Holloway, 2014) have come at the cost of understanding how broader socializing behaviors on other commonly used SNS (e.g., Facebook, Instagram, Snapchat) are related to their HIV prevention and risk engagement. Furthermore, little attention has been paid to understanding how SNS networks factor into a larger and richer suite of online and offline relationships theorized to be associated with critical HIV-related behaviors. We refer to the richness of an individual’s social environment as its
In this study, we acknowledge the multiplexity of YBMSMs’ networks (i.e., the multiple contexts in which YBMSM interact with one another) and their increasing prioritization of online social networking contexts that extend beyond the narrow realm of dating applications. Specifically, we investigate the degree to which features of YBMSMs’ personal Facebook networks — still the most popular social media platform used by young adults (Greenwood et al., 2016) and most ubiquitously used among the YBMSM in this study — are related to their HIV prevention and sex behaviors, while also accounting for the effects of their self-reported sex and confidant (i.e., social support) networks. Using multiple logistic regressions, we examine the effects of structural and compositional features of distinct Facebook, sex, and confidant networks that we regard as constituting YBMSMs’ multiplex network environments on three prevention outcomes and three sex behavior outcomes. Our statistical models control for individual and structural factors known to be related to HIV prevention engagement and HIV-related sex behaviors. The results presented will sharpen our understanding of which network contexts contribute most to prevention and sex behavior engagement and will provide insights on which aspects of YBMSMs’ multiplex network environments offer opportunities for intervention.
Interest in contextual factors related to HIV has grown considerably in recent years and has yielded research that enables a better understanding of the network mechanisms of HIV prevention and risk (Fujimoto et al., 2018; Kuhns, Hotton, Schneider, Garofalo, & Fujimoto, 2017; L. E. Young, Fujimoto, & Schneider, 2018). Epidemiological studies tend to highlight how sexual contact networks function as engines of viral transmission (Friedman et al., 1997; Parker, Ward, & Day, 1998; Périssé & Nery, 2007) through network features like partner concurrency (Morris & Kretzschmar, 1995), network position (Fichtenberg et al., 2009), personal network density (Doherty, Schoenbach, & Adimora, 2009), and assortative mixing (Adimora, Schoenbach, & Doherty, 2006; Schneider et al., 2013). Meanwhile, socio-behavioral research tends to not only emphasize the way in which social networks function as transmitters of information and influence (J. A. Kelly et al., 1997; Latkin, Sherman, & Knowlton, 2003), but also as progenitors of social norms, like needle sharing practices (Lakon, Ennett, & Norton, 2006; Latkin, Forman, et al., 2003), condom use (Barrington et al., 2009; Yang, Latkin, Luan, & Nelson, 2010), and exchange sex (Latkin, Hua, & Forman, 2003), and as sources of instrumental and emotional support, which have been linked to utilization of health care services and medical adherence among people living with HIV (Gardenier, Andrews, Thomas, Bookhardt-Murray, & Fitzpatrick, 2010; Tobin & Latkin, 2017).
As YMSM increasingly turn to the Internet to seek community and interact with peers, interest in understanding the link between HIV risk and online social networks has mounted. To date, much of this work adopts a behavioral surveillance approach, focusing on MSM who use online dating applications (e.g., Grindr) and the role these platforms play in structuring their sexual contact networks. Results of this research are mixed thus far, with some studies revealing positive associations between online partner-seeking and sexual risk behaviors (Garofalo, Herrick, Mustanski, & Donenberg, 2007; Horvath, Bowen, & Williams, 2006; Landovitz et al., 2013), others finding no association (Chiasson et al., 2007; Grosskopf, LeVasseur, & Glaser, 2014; Mustanski, Lyons, & Garcia, 2011), and still others identifying positive associations with protective behaviors (Rice, Holloway, et al., 2012).
Alternatively, other studies (Black, Schmiege, & Bull, 2013; Buhi et al., 2013; Moreno, Parks, Zimmerman, Brito, & Christakis, 2009; Whiteley et al., 2011; S. D. Young et al., 2013) have directed attention to the risk and protective potentials of more general purpose SNS like Facebook, where the user base is broader and the content more diverse. Although some of this work has maintained an emphasis on partner-seeking behaviors in these networks (Buhi et al., 2013), others have moved beyond this paradigm. For decades, social influence research has underscored the role of formal and informal peer groups — such as friendships, schoolmates, and peers who meet at entertainment venues such as bars — for norm formation and informal social control, which are known mechanisms of HIV risk- and prevention-oriented behaviors (Friedman et al., 2013; Fujimoto, Wang, Ross, & Williams, 2015; Schneider et al., 2013). Peer groups are best able to exert influence on an individual’s HIV-related behaviors through routine and reinforced communication and when an individual feels some degree of affinity and/or similarity with other members of their peer group (Lapinski & Rimal, 2005).
By extension, digital peer networks like those on Facebook are generally assumed to exert the same normative influences (Boyd & Ellison, 2007; Traud, Mucha, & Porter, 2012). For example, studies of adolescent SNS users have demonstrated that the topics adolescents discuss with their peers and the photos they share are important predictors of their actual HIV risk and protective behaviors (S. D. Young & Rice, 2011), as well as their perceptions of behavioral norms (S. D. Young & Jordan, 2013). Still, others have investigated network signatures of emerging behavioral norms by focusing on relational clusters of sexual risk behavior in SNS peer networks. For example, Moreno, Brockman, Rogers, and Christakis (2010) showed that adolescents who posted explicit sexual references were more likely to have online friends who did the same, while L. E. Young et al. (2018) reported that YMSM who engaged in condomless sex tended to cluster around a common set of Facebook groups.
What remains to be explored, however, is how normative features of online social networks — like the degree to which YMSM are connected with other MSM and the types of topics they discuss in Facebook groups — impact HIV prevention and sex behavior engagement relative to: (1) features of other, more well-studied sex partner or support networks; and (2) non-network factors that lie at individual and structural levels. To this end, we adopt a social epidemiological perspective (Rhodes et al., 2012) to structure our empirical investigation. From this point of view, the production of HIV prevention and sex behaviors is situated in an interplay of factors that lie at individual, social, and structural levels (Rhodes, Singer, Bourgois, Friedman, & Strathdee, 2005) as shown in Figure 1.
As Figure 1 depicts, the micro environmental level includes the individual-level factors known to impede or facilitate HIV prevention and sex behavior engagement, for example socio-demographics (Mimiaga et al., 2009), sexual identity (Gamarel et al., 2017; Gould, 1967; Harawa et al., 2008; Millett, Malebranche, Mason, & Spikes, 2005), other individual risk and prevention behaviors (Schneider et al., 2013; L. E. Young et al., 2017), and HIV status. Meanwhile, at the macro environmental level are the factors that influence HIV-related behaviors through more distal economic and social structural vulnerabilities, like health insurance coverage (Mimiaga et al., 2009), housing instability (Kipke, Montgomery, Simon, Unger, & Johnson, 1997; Rice, Barman-Adhikari, Milburn, & Monro, 2012; Rice, Milburn, & Rotheram-Borus, 2007), and criminal justice involvement (Brewer et al., 2014; Javanbakht et al., 2009).
In between individual and structural levels are the meso-level social factors that relate to an individual’s embeddedness in peer networks. From this perspective, the extent to which an individual is at risk for HIV (or protected from it) depends on where they are located within a given network (i.e., network structure/position) and the patterns of behavior, infection, and related characteristics among the other network members to which they are connected (i.e., network composition) (Schneider, 2013). For example, a centrally located individual in a high risk sexual contact network may be at greater risk of viral exposure, while an individual who has close friends who encourage condom use may experience normative pressure to engage in prevention practices.
This study underscores the role of an individual’s network multiplexity. Therefore we include features of an individual’s confidant, sex partner, Facebook friendship and Facebook group affiliation networks. In Figure 2, we exemplify what relational multiplexity looks like at the ego-network level through the lens of a hypothetical ego (or study respondent) and his connections to 12 identified peers and 8 Facebook groups. Dyadic multiplexity — when two individuals interact in more than one relational context — is shown by the presence of multiple ties between ego and a peer. For example, the relationship between ego and peer 10 is the highest level of multiplexity, as they interact as confidants, sex partners, and Facebook friends. Although the analysis featured in this study does not include an explicit measure of dyadic multiplexity as a covariate, the fact that an individual’s personal social environment includes more than one relational context, in which peers can engage, warrants including features of each type of relationship when articulating network contextual models of HIV-related behaviors.
As described in previous work (L. E. Young et al., 2018), data used in this study was collected as part of uConnect (2013-2016), a longitudinal cohort study of YBMSM living in Chicago. The analysis featured here draws from data collected at Wave 2 of the study. This study was approved by the institutional review boards of the University of Chicago and the National Opinion Research Center (NORC) at the University of Chicago and was supported by grants from the National Institute on Drug Abuse (NIDA) and National Institute of Mental Heath (NIMH).
Participants were recruited using a variant of classic link-tracing called Respondent Driven Sampling (RDS) (Heckathorn, 1997). Widely used in public health studies (Goel & Salganik, 2010), RDS methodology enables us to recruit “hard to reach” populations (e.g., people who inject drugs, sex workers, men who have sex with men) by providing a sampling design. Additionally, it provides us with an estimation method for obtaining parameter estimates of the target population.
A group of 62 initial RDS “seeds”, drawn from a variety of social spaces that YMSM occupy, including LGBTQ social venues, online networking sites, community-based organizations, and HIV treatment and prevention programs, were used to generate referral chains. Each respondent was given up to six vouchers to recruit others who met the same eligibility criteria. Respondents received $60 for their participation and $20 for each recruit who enrolled into the study. Candidate participants were eligible to be interviewed if they: 1) self-identified as African American or Black; 2) were assigned male at birth; 3) were between 16 and 29 years of age (inclusive); 4) reported oral or anal sex with a male within the past 24 months; and 5) were willing and able to provide informed consent at the time of the study visit. Sampling procedures resulted in a baseline sample of 618 YBMSM, 525 of which were retained at Wave 2 of the study, which is the cross-sectional data used for this analysis.
Respondents completed an interviewer-administered questionnaire, which included modules pertaining to demographics, sexual health and other sex behaviors, and relational information about their personal confidant and sexual networks. The confidant network name generator elicited up to five confidants using the prompt,
Facebook friendships and group affiliations were obtained from consenting respondents using a third party software application that accessed Facebook’s application programming interface (API) (Khanna, Schumm, & Schneider, 2017). Using the application interface, respondents logged into their primary Facebook account, which then enabled the application to retrieve lists of the respondent’s Facebook friends and Facebook groups. Since this data was collected, Facebook made changes to its API permissions that have subsequently made this method of data collection obsolete. Of the 525 respondents retained at Wave 2 of the study, 423 self-reported having an active Facebook profile, 347 of whom consented to Facebook data collection (L. E. Young et al., 2018). We restricted the Facebook friendship network to include only study participants and the Facebook friendship ties among them, as our primary interest was in learning how SNS connections, specifically among other YBMSM, impact their HIV-related behaviors. As such, results should be interpreted with this caveat in mind.
The main features of Facebook groups that we explored in this study were their primary subject matter and privacy status, which is the degree to which the group is visible to non-member Facebook users. While the subject matter of a Facebook group is suggestive of the interests of its members and what they talk about in these settings, the privacy status of a group speaks to the degree to which its members (and their identities) are protected from outside scrutiny. Both features are believed to have implications for HIV care and sex behavior engagement (L. E. Young et al., 2018).
To classify groups by their primary subject matter, we drew on two pieces of information – the name of a group and the brief group description provided on its profile page. As not all groups provide a description, those without one were excluded from the analytic sample. The subject categories were derived from a survey of the literature and from an environmental scan of a random sample of Facebook groups in our analytic sample. We used an iterative process of pilot-testing and refining the subject category codebook to ensure adequate capture of subjects represented. In total, nine subject categories were identified and are described in Table 1.
Subject Classification Scheme for Facebook Groups
Subject Category | Definition |
---|---|
Sexual Attraction * | Groups that underscore physical/sexual attractiveness and that enable partner “cruising”, flirtatious exchange, sexual networking, and sexual expression |
Chat * | Groups that provide a casual forum for posting and conversational exchange among members; posts tend not to be subject specific and content tends to be random (e.g., gossip groups) |
LGBTQ Identity * | Groups that are about gay pride or gay identity; the focus is on celebrating gay identity and “being” in the LGBTQ community (e.g., LGBTQ advocacy groups) |
Ballroom Culture * | Ballroom Houses are queer surrogate kinship groups that take on the role structure of traditional hetero-normative families (e.g., mothers, fathers, children, siblings) and participate in gender expression competitions/performances. These are groups for members of specific Ballroom Houses and Gay Families, groups about Ballroom culture, groups about performance styles (e.g., vogueing) |
Events | Groups that promote events — e.g., nightlife/club events, festivals, community events, live shows, etc. |
Recreational Interests | Groups about past time interests and hobbies pursued for fun, amusement, or entertainment. Examples include: sports, gaming, dance, poetry, art, reading, listening to music, watching TV etc. |
Personal / Professional Promotion | Groups that promote an individual’s image and/or talent for that person’s gain; groups that enable professional networking, promote personal businesses and jobs, money-making opportunities, career advancement etc. |
Health & Well being | Groups that provide information and/or support to members with respect to physical, emotional, and spiritual health and well being. |
Community | Groups about place-based community life (e.g. school alumni groups, neighborhood alumni groups, church groups, groups about living in Chicago, etc.) |
Subject categories included in the featured analysis; In the analysis presented here
We then trained two student coders to code each Facebook group for its subject based on what they could derive from its name and description. First, they used a multiple choice selection scheme – i.e., identifying all subjects that were applicable to each group. This was followed by a forced choice selection of its
Data featured in this study comes from Wave 2 of the uConnect study. Of the 525 respondents in Wave 2, 423 self-reported having an active Facebook profile, 351 of whom consented to Facebook data collection. As a key aim of the study was to examine the effects of Facebook network features relative to features of self-reported confidant and sex networks, the analytic sample was restricted to include only those who had at least one Facebook friend and belonged to at least one Facebook group among the 347 participants who consented to the Facebook download. This resulted in a final analytic sample of 268 YBMSM. The filtered cases (n=257) did not differ significantly from the analytic sample (n=268) by any of the prevention or sex behavior outcomes. However, the YBMSM in the analytic sample were more likely to be HIV positive [Odds ratio (OR)=1.72, p<0.05]. Subsumed in the filtered cases are study participants who reported having a Facebook profile, but refused to provide consent to the Facebook data collection (n=72). YBMSM in the analytic sample were more likely to receive HIV prevention and care services [OR=2.14, p<0.005] and to have heard about PrEP [OR=2.28, p<0.003] than the individuals who refused to consent. These differences mean that results should be interpreted with this caveat in mind.
Descriptive statistics (percentage for dichotomous variables and mean and standard deviation for continuous variables) were calculated for all outcomes and covariates. Multivariate logistic regression analyses were performed to examine associations of network features with each prevention and sex behavior outcome, while also controlling for individual and structural factors. Adjusted odds ratios (aORs) and their 95% confidence intervals (95% CIs) were calculated. All models were fit using RDS sampling weights, specifically Gile’s Sequential Sampling (SS) estimator (Gile, 2011; Gile & Handcock, 2010), an extension to the RDS-II estimator developed by Volz and Heckathorn (2008) to handle bias from the sampling-with-replacement assumption. All statistical analyses were performed using STATA 15 statistical software package (StataCorp, 2017).
Table 2 shows the characteristics of the YBMSM in our analytic sample (N=268).
Characteristics of young Black men who have sex with men in Chicago, USA (N=268)
Characteristics | Percent |
---|---|
Received HIV care (prevention or treatment) from provider | 68.3 |
Tested for HIV or STIs at least 3 times in the last 9 months | 83.6 |
Heard of PrEP | 77.2 |
Condomless sex | 59.3 |
Sex drug use | 35.1 |
Group sex | 17.2 |
Mean Age | 23.47 (2.90; 17, 29) |
Sexual orientation (bisexual) | 26.1 |
HIV status (HIV+) | 41.4 |
Health insurance coverage | 77.2 |
Housing instability (in last 12 months) | 20.5 |
Criminal justice involvement (ever) | 11.9 |
Member of a ball house or gay family | 31.3 |
Recreational marijuana use (daily or more) | 29.5 |
Mean number of confidants | 2.21 (1.11; 0, 5) |
At least one confidant who is MSM | 45.5 |
At least one confidant who knows respondent is MSM | 39.9 |
At least one confidant who is biological / play family | 10.1 |
Mean number of partners in past 6 months | 2.72 (1.58; 0, 6) |
At least one partner who is HIV+ | 24.6 |
At least one partner met through mutual friends | 47.8 |
At least one partner met at bars, clubs, or ball events | 14.9 |
At least one partner met in public spaces | 20.2 |
At least one partner met online | 46.3 |
Number of Facebook friends | 44.65 (27.60; 0, 162) |
Number of Facebook group affiliations | 11.00 (14.01; 1, 89) |
At least one | 56.4 |
At least one | 51.5 |
At least one | 60.5 |
At least one | 73.7 |
Mean range of subjects among Facebook groups | 3.95 (2.19; 1, 9) |
Note: Numbers in parentheses are estimated standard deviation, minimum, maximum
A series of separate multiple logistic regression analyses were performed for each prevention and sex behavior outcome to determine which network features among offline confidant and sex networks and online Facebook networks predict each outcome. Table 3 presents results for prevention outcomes and Table 4 presents results for sex behavior outcomes.
Odd ratios from multiple logistic regressions showing predictive factors for prevention outcomes among young Black men who have sex with men in Chicago, USA
Characteristics | HIV Care | HIV/STI Testing | PrEP Awareness | |||
---|---|---|---|---|---|---|
aOR | 95% CI | aOR | 95% CI | aOR | 95% CI | |
Age | 0.94 | 0.81-1.08 | 0.86 | 0.72- | 1.11 | 0.95- |
Sexual orientation (bisexual) | 0.61 | 0.27-1.34 | 0.74 | 0.25- | 0.39 | 0.15- |
HIV status (HIV+) | 0.67 | 0.25- | 1.54 | 0.61- | ||
Health coverage | 1.16 | 0.49-2.71 | 1.24 | 0.41- | 1.14 | 0.49- |
Housing instability (in last 12 months) | 1.35 | 0.55-3.32 | 0.94 | 0.27- | 0.75 | 0.27- |
Criminal justice involvement (ever) | 1.19 | 0.41-3.45 | 5.75 | 0.59- | 0.72 | 0.27- |
Member of a ball house or gay family | 1.67 | 0.67-4.18 | 0.85 | 0.22- | 0.63 | 0.25- |
1.49 | 0.70-3.20 | 1.07 | 0.44- | 0.82 | 0.34- | |
Recreational marijuana use (daily or Condomless Sex | 1.21 | 0.55-2.68 | 1.92 | 0.84- | 1.37 | 0.58- |
Sex drug use | 1.00 | 0.46-2.19 | 1.25 | 0.43- | 0.73 | 0.31- |
Group sex | 1.06 | 0.36-3.10 | 3.10 | 0.62- | 1.20 | 0.39- |
HIV care | — | — | 1.11 | 0.44- | ||
HIV/STI tester | 1.01 | 0.41-2.48 | — | — | 1.40 | 0.44- |
PrEP aware | 1.20 | 0.44- | — | — | ||
Number of confidants | 1.14 | 0.83-1.57 | 0.81 | 0.53- | 1.20 | 0.79- |
At least one confidant who is biological/ | 2.17 | 0.57-8.19 | 1.48 | 0.36- | 0.52 | 0.12- |
At least one confidant who is MSM | 0.62 | 0.27-1.39 | 1.24 | 0.43- | 0.90 | 0.35- |
At least one confidant who knows they | 2.03 | 0.87-4.72 | 0.43 | 0.14- | 1.09 | 0.40- |
Number of partners in past 9 months | 1.14 | 0.87-1.49 | 0.78 | 0.50- | ||
At least one partner who is HIV+ | 1.75 | 0.71-4.31 | 1.75 | 0.52- | 2.67 | 0.88- |
At least one partner met through mutual | 0.64 | 0.29-1.38 | 0.43 | 0.17- | 0.76 | 0.33- |
At least one partner met at bars, clubs, or | 2.17 | 0.61-7.66 | 1.09 | 0.25- | 1.03 | 0.22- |
At least one partner met in public spaces | 1.06 | 0.43-2.59 | 2.17 | 0.69- | 1.51 | 0.47- |
At least one partner met online | 0.98 | 0.43-2.23 | 0.51 | 0.14- | 2.93 | 0.95- |
Number of Facebook friends | 1.01 | 0.86-1.19 | 1.25 | 0.99- | 1.10 | 0.94- |
Number of Facebook group affiliations | 0.98 | 0.94-1.01 | 1.09 | 0.99- | 1.03 | 0.98- |
At least one | 0.67 | 0.26-1.71 | 1.47 | 0.47- | 0.87 | 0.30- |
At least one | 1.06 | 0.42-2.68 | 0.33 | 0.10- | 1.12 | 0.40- |
At least one | 0.72 | 0.27- | 1.46 | 0.55- | ||
At least one | 1.08 | 0.41-2.86 | 2.61 | 0.83- | 0.69 | 0.27- |
Range of subjects among Facebook | 1.04 | 0.72-1.50 | 0.84 | 0.53- | 0.86 | 0.58- |
p<0.05
p<0.01
p<0.001
Odd ratios from multiple logistic regressions showing predictive factors for sex behavior outcomes among young Black men who have sex with men in Chicago, USA (N=268)
Characteristics | Condom less Sex | Sex Drug Use | Group Sex | |||
---|---|---|---|---|---|---|
aOR | 95% CI | aOR | 95% | aOR | 9 | |
Age | 0.95 | 0.83-1.09 | 1.06 | 0.93- | 1.11 | 0 |
Sexual orientation (bisexual) | 1.75 | 0.73-4.18 | 0.76 | 0.32- | 1.64 | 0 |
HIV status (HIV+) | 0.60 | 0.28-1.29 | 1.44 | 0.67- | 0.71 | 0 |
Health coverage | 1.09 | 0.41- | 0.43 | 0 | ||
Housing instability (in last 12 months) | 0.57 | 0.25-1.31 | 1.20 | 0.50- | 1.06 | 0 |
Criminal justice involvement (ever) | 0.87 | 0.30- | 2.00 | 0 | ||
Member of a ball house or gay family | 0.43 | 0.17-1.07 | 0.80 | 0.36- | 2.70 | 0 |
Recreational marijuana use (daily or more) | 1.08 | 0.48-2.43 | 2.03 | 0.98- | 1.29 | 0 |
Condomless Sex | — | — | 1.87 | 0.83- | 0.50 | 0 |
Sex drug use | 1.82 | 0.83-4.01 | — | — | 2.35 | 0 |
Group sex | 0.41 | 0.14-1.21 | 1.94 | 0.68- | — | — |
HIV care | 1.08 | 0.50-2.31 | 0.99 | 0.45- | 1.23 | 0 |
HIV/STI tester | 1.82 | 0.78-4.28 | 1.01 | 0.37- | 3.35 | 0 |
PrEP aware | 1.54 | 0.68-3.47 | 0.77 | 0.33- | 1.54 | 0 |
Number of confidants | 1.01 | 0.74- | 1.23 | 0 | ||
At least one confidant who is biological / play family | 0.71 | 01.22- | 1.08 | 0 | ||
At least one confidant who is MSM | 0.93 | 0.42-2.06 | 1.09 | 0 | ||
At least one confidant who knows they are MSM | 1.76 | 0.74-4.17 | 1.04 | 0.47- | 0.50 | 0 |
Number of partners in past 9 months | 1.13 | 0.86-1.47 | 0.97 | 0.75- | 1.41 | 1 |
At least one partner who is HIV+ | 1.55 | 0.72- | 1.04 | 0 | ||
At least one partner met through mutual friends | 1.59 | 0.78- | 0.62 | 0 | ||
At least one partner met at bars, clubs, or ball events | 2.91 | 0.88-9.58 | 1.10 | 0.41- | 2.71 | 0 |
At least one partner met in public spaces | 1.83 | 0.73- | 0.44 | 0 | ||
At least one partner met online | ||||||
Number of Facebook friends | 0.91 | 0 | ||||
Number of Facebook group affiliations | 0.98 | 0.95-1.02 | 1.03 | 0.99- | 0.97 | 0 |
At least one | 1.11 | 0.42- | 1.12 | 0 | ||
At least one | 0.78 | 0.30-2.07 | 0.88 | 0.39- | 2.00 | 0 |
At least one | 1.07 | 0.42-2.72 | 1.45 | 0.61- | 1.08 | 0 |
At least one | 0.78 | 0.28-2.21 | 1.20 | 0.50- | 1.60 | 0 |
Range of subjects among Facebook groups | 1.31 | 0.91-1.90 | 0.94 | 0 |
p<0.05
p<0.01
p<0.001
Again, when examining sex drug use, several network features stand out as significant predictors. Among confidant and sex partner network features, having a confidant who is also an MSM [aOR = 2.32; 95% CI: 1.09-4.94] and meeting a partner online [aOR = 2.96; 95% CI: 1.28-6.85] were positive predictors of sex drug use. Additionally, among Facebook network features, having more YBMSM Facebook friends [aOR = 1.17; 95% CI: 1.01-1.36] and a smaller subject matter range in one’s Facebook group portfolio [aOR = 0.68, 95% CI: 0.48-0.95] were significant predictors of sex drug use. Meanwhile, recreational use of marijuana [aOR = 2.03] was positively associated with sex drug use, albeit only marginally at the p<0.10 level.
Finally, meeting a sex partner online [aOR = 5.30, 95% CI: 1.38-20.27] positively predicted engagement in group sex. Although having more sex partners [aOR = 1.41] and belonging to the ballroom house or gay family communities [aOR = 2.70] were marginally significant at the p<0.10 levels.
The ubiquity and popularity of online social networking sites (SNS) among young racial/ethnic and sexual minorities present opportunities for public health research to learn how these social environments impact critical HIV prevention and sex behaviors. To date, relatively little research has attempted to situate SNS networks within a larger, more multiplex suite of online and offline social network contexts theorized to be related to critical HIV-related behaviors. As such, the multifaceted nature of different types of networks and their structural and compositional features has gone unaddressed. In adopting a multiplex network contextual approach to our analysis, this study aimed to investigate whether or not individual, network and structural factors are associated with engagement in HIV-related behaviors, while remaining particularly focused on the effects of one type of online network — i.e., Facebook — relative to “offline” counterparts.
Our analysis revealed several features of Facebook networks that stand out as significant predictors of YBMSMs’ prevention and sex behavior engagement. With respect to prevention behaviors, individuals who belonged to at least one Chat Facebook group were significantly more likely to have received HIV prevention or treatment services from their health provider. Whether or not this means that YBMSM actually discuss HIV-related topics in these settings is difficult to determine, but the association nonetheless suggests that Facebook groups that are specifically designed to facilitate general conversations may be good intervention models for engaging YBMSM around other more specific prevention topics like PrEP. We also glean from this finding that YBMSM who
Regarding sex behaviors, the degree to which an individual’s network is comprised of other gay men has been linked in previous work to sexual risk behaviors like condomless sex (B. C. Kelly, Carpiano, Easterbrook, & Parsons, 2012). In this study, we found further support for those findings. Specifically, we learned that an individual’s Facebook degree centrality (i.e., their popularity) among the other YBMSM study respondents is a positive predictor of having condomless sex and using sex drugs. Considering that we also controlled for the effect of having MSM confidants on each sex behavior, we take the effect of having MSM Facebook friends as being a unique one. For field practitioners, this presents an opportunity to engage clusters of YBMSM Facebook friends in prevention outreach.
Finally, also with respect to sex behaviors, we learned that two features of YBMSMs’ Facebook group affiliations function as a layer of protection. YBMSM who belonged to Facebook groups that focus on topics related to LGBTQ identity (e.g., being a member of the ballroom community) were less likely to engage in condomless sex, and those who belonged to a more diverse pool of Facebook groups were less likely to engage in sex drug use. Taken together, these findings suggest that YBMSM who use Facebook to seek out opportunities to talk openly with peers about being LGBTQ or to satisfy a wider variety of interests are less prone to behaviors that may put them at risk. Although prospective research is needed to better understand the mechanisms behind these associations, we interpret these results as a sign that by enabling expression of identity and interests, Facebook and other SNS can be healthy outlets for YBMSM.
We also observed a number of noteworthy higher-level trends in our findings. First, our results affirm that social networks do indeed play an integral role in carving out conditions that make YBMSM more or less vulnerable to HIV. In fact, with only one exception (PrEP awareness), we find that some aspect of an individual’s multiplex network environment — whether it is a feature of confidant, sex partner, or Facebook networks — is associated with each prevention and sex behavior. These effects can be protective in nature, as is seen in the negative association between engagement in condomless sex and having a confidant who is a family member and the positive association between having more sex partners and engaging in regular HIV/STI testing. Conversely, network effects can also be potentially risky, as is evident in the relationships between meeting a partner online and having more YBMSM Facebook friends and engagement in condomless sex. Furthermore, not only can we see that networks matter, but our findings also support the notion that multiple types of relational contexts matter, as significant effects emerge from each of the three network environments featured in our analysis.
That said, taken as a whole, network factors play a more significant role in explaining engagement in sex behaviors than prevention behaviors. This is particularly evident with respect to the factors associated with condomless sex and sex drug use, for which features of all three network environments (i.e., confidant, sex partner, and Facebook) play critical roles. Somewhat surprisingly, the network factors that we account for played no role in predicting PrEP awareness among YBMSM as others have previously found (Khanna et al., 2017); only receiving HIV prevention or treatment services from a provider helps explain who has heard about PrEP and who has not. Although it is encouraging to see that information about PrEP reaches YBMSM through health care providers, this leaves uninfluenced those who are not linked to any formal healthcare outlet. Thus, finding ways to diffuse this information through informal peer networks like those studied here will play a critical role in further increasing levels of PrEP awareness in this vulnerable community.
From the analysis featured in this study, it is difficult to explain with any kind of certainty why social networks are more predictive of sex behaviors than prevention behaviors. However, one can deduce that it may have to do with what young adults in general, and YBMSM in particular, do and do not talk about with their peers in these relational contexts. As noted previously, what YBMSM discuss in their networks often reflects their interests and norms and therefore is an important tool to leverage when trying to gain acceptance for a new idea or behavior. That being said, it is probable that many young adults might consider talking about HIV prevention with peers as antithetical to generally accepted norms, making it critical for interventionists to create spaces and opportunities within network settings where young adults can learn to talk to one another about HIV prevention and, consequently, develop new prevention-oriented communication norms.
Finally, our findings also show that there are few consistencies in the factors that significantly influence each prevention and sex behavior outcome. From a socio-environmental perspective, this demonstrates that the individual, social, and structural conditions that impact prevention and sex behaviors are unique to the behavior, even among different prevention behaviors or among different sex behaviors. The lack of generalizability across behavioral outcomes is a reminder that each behavior has its own ecology in which it thrives or declines and, therefore, must be studied and understood on its own terms. The one notable exception to this pattern is in the consistent positive associations between each sex behavior and meeting partners online, thus affirming what prior work has found with respect to users of popular online dating applications and other internet-based venues (Garofalo et al., 2007; Horvath et al., 2006; Landovitz et al., 2013).
The findings presented here have several practical implications for HIV intervention efforts among YBMSM. First, the association between number of sex partners and following a recommended HIV and STI testing regime is promising in that having more sex partners is typically considered a first order risk factor associated with heightened HIV vulnerability. Second, having a confidant who is a member of an individual’s biological or play family was shown to have protective effects with respect to engaging in condomless sex. As prior work suggests, family structures can offer a naturally occurring mechanism through which to support the uptake of a range of HIV-prevention interventions (Schneider et al., 2012). Linkage to prevention or treatment services, for example, might be strengthened if family networks are involved in the process. Third, by focusing on how (or where) YBMSM meet their partners, we were able to identify two key locations – online venues and public spaces – associated with higher risk sex behaviors. As such, future interventions engaging YBMSM need to meet YBMSM in those spaces with targeted prevention messaging and behavioral interventions. Fourth, the negative association between belonging to Facebook groups that discuss LGBTQ identity and engaging in condomless sex suggests that there may be a certain type of discourse, rooted in an openness about being a member of the LGBTQ community, that can be leveraged explicitly for spreading awareness about sexual health and HIV prevention. And finally, the positive association between belonging to Chat groups and receiving HIV care services from a health provider inadvertently identifies a potentially vulnerable group of YBMSM — those who do not receive HV-related services from a health provider—who may be more difficult to reach in their organic online networks. Instead, targeted interventions that strategically build online spaces where prevention topics can be discussed in private may be a more impactful way to employ online tools to engage these individuals in HIV-related care.
As with any study, our findings must be interpreted within the context of its limitations. First, our data are cross-sectional and, therefore, prevent us from making any attributions of causality. Furthermore, the cross-sectional nature of our networks impedes our ability to assess how changes in network structure and composition are potentially related to prevention and sex behavior outcomes. Future research in this area is needed, as it could help researchers identify important network dynamics implicated in ongoing HIV prevention and risk engagement.
Second, although we were able to include features of three different networks in our models, those features were limited almost entirely to compositional characteristics (i.e., characteristics of an individual’s network alters), leaving network structure largely unaddressed. The decision to prioritize network composition over structure had much to do with the egocentric methods used to collect confidant and sex partner networks, which restricted our ability to effectively capture sociocentric structure in those contexts.
Third, our analysis was designed to reveal how potentially intersecting/overlapping social contexts (i.e., socio-environmental multiplexity) independently affect HIV-related behavior engagement. That being said, it did not explicitly investigate the joint impact of these social contexts. In other words, the analysis remained agnostic on the overlap in social contexts as a distinct network effect.To fully understand the relationship between socio-environmental multiplexity and HIV prevention and risk engagement, we should be sure to account for the effects if tie- or network-level measures of relational overlap.
Finally, despite being the most ubiquitous SNS platform among Internet using adults, we acknowledge that Facebook is only one of many platforms that YBMSM use to engage with their peers. Other SNS like Instagram and Snapchat are rapidly increasing in popularity, especially among young racial/ethnic minorities (Greenwood et al., 2016). As such, our limited focus on Facebook meant that we captured only a single slice of what is certainly a much larger and more diverse portfolio of online networking sites being used. Prospective research is needed that explores the impacts of a wider range of SNS networks on HIV-related outcomes, which will help researchers identify a broader range of online social spaces in which at-risk YBMSM can be engaged.
Despite these limitations, this study provides critical insights on how features of YBMSMs’ multiplex network contexts may have an impact on their HIV prevention and sex behaviors, while also accounting for other known risk factors at the individual and structural levels. As the contexts in which YBMSM socialize increasingly expand into virtual social networking spaces, it behooves the research community to broaden their scope and investigate whether online peer networks support or challenge protective norms in their own right, independently of other well-studied “offline” social environments. Only then will we begin to understand the feasibility and potential impact of engaging YBMSM in their virtual networks.