Changes in HIV Preexposure Prophylaxis Awareness and Use Among Men Who Have Sex with Men — 20 Urban Areas, 2014 and 2017

Teresa Finlayson, PhD1; Susan Cha, PhD1; Ming Xia, MD2; Lindsay Trujillo, MPH1,3; Damian Denson, PhD1; Joseph Prejean, PhD1; Dafna Kanny, PhD1; Cyprian Wejnert, PhD1; National HIV Behavioral Surveillance Study Group (View author affiliations)

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Summary

What is already known about this topic?

Men who have sex with men (MSM) can reduce their risk for human immunodeficiency virus (HIV) infection by using preexposure prophylaxis (PrEP) consistently. Increasing PrEP use is a principal strategy of the Ending the HIV Epidemic initiative.

What is added by this report?

From 2014 to 2017, PrEP awareness among MSM in 20 urban areas increased from 60% to 90%, and PrEP use increased from 6% to 35%. PrEP use increased in almost all demographic subgroups but remains lower among black and Hispanic MSM.

What are the implications for public health practice?

By routinely testing patients for HIV, assessing HIV-negative patients for risk behaviors, and prescribing PrEP as needed, health care providers can play a critical role in ending the HIV epidemic.

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The figure is a Visual Abstract urging health care providers to help end the HIV epidemic by prescribing preexposure prophylaxis as needed.

In February 2019, the U.S. Department of Health and Human Services proposed a strategic initiative to end the human immunodeficiency (HIV) epidemic in the United States by reducing new HIV infections by 90% during 2020–2030* (1). Phase 1 of the Ending the HIV Epidemic initiative focuses on Washington, DC; San Juan, Puerto Rico; and 48 counties where the majority of new diagnoses of HIV infection in 2016 and 2017 were concentrated and on seven states with a disproportionate occurrence of HIV in rural areas relative to other states. One of the four pillars in the initiative is protecting persons at risk for HIV infection using proven, comprehensive prevention approaches and treatments, such as HIV preexposure prophylaxis (PrEP), which is the use of antiretroviral medications that have proven effective at preventing infection among persons at risk for acquiring HIV. In 2014, CDC released clinical PrEP guidelines to health care providers (2) and intensified efforts to raise awareness and increase the use of PrEP among persons at risk for infection, including gay, bisexual, and other men who have sex with men (MSM), a group that accounted for an estimated 68% of new HIV infections in 2016 (3). Data from CDC’s National HIV Behavioral Surveillance (NHBS) were collected in 20 U.S. urban areas in 2014 and 2017, covering 26 of the geographic areas included in Phase I of the Ending the HIV Epidemic initiative, and were compared to assess changes in PrEP awareness and use among MSM. From 2014 to 2017, PrEP awareness increased by 50% overall, with >80% of MSM in 17 of the 20 urban areas reporting PrEP awareness in 2017. Among MSM with likely indications for PrEP (e.g., sexual risk behaviors or recent bacterial sexually transmitted infection [STI]), use of PrEP increased by approximately 500% from 6% to 35%, with significant increases observed in all urban areas and in almost all demographic subgroups. Despite this progress, PrEP use among MSM, especially among black and Hispanic MSM, remains low. Continued efforts to improve coverage are needed to reach the goal of 90% reduction in HIV incidence by 2030. In addition to developing new ways of connecting black and Hispanic MSM to health care providers through demonstration projects, CDC has developed resources and tools such as the Prescribe HIV Prevention program to enable health care providers to integrate PrEP into their clinical care.§ By routinely testing their patients for HIV, assessing HIV-negative patients for risk behaviors, and prescribing PrEP as needed, health care providers can play a critical role in this effort.

NHBS staff members in 20 urban areas collected cross-sectional behavioral survey data and conducted HIV testing among MSM at recruitment events using venue-based sampling (4). Eligible participants** completed a standardized questionnaire administered in person by trained interviewers. All participants were offered anonymous HIV testing and incentives for the interview and HIV test.†† Analysis was limited to eligible participants at risk for HIV infection who were likely to meet clinical indications for PrEP§§ (2). Specifically, the analysis was limited to MSM who had a negative NHBS HIV test result, did not report a previous HIV-positive test result, had either one male sex partner who was HIV-positive or two or more male sex partners in the past 12 months, and reported either condomless anal sex or a bacterial STI (i.e., syphilis, gonorrhea, or chlamydia) in the past 12 months. PrEP awareness and use were measured differently in 2014 and in 2017. In 2014, participants were asked whether they had “ever heard of people who do not have HIV taking anti-HIV medicines, to keep from getting HIV” and whether, in the past 12 months, they had “taken anti-HIV medicines before sex because you thought it would keep you from getting HIV.” In 2017, participants were informed that PrEP is an antiretroviral medicine taken for months or years by a person who is HIV-negative to reduce the risk for getting HIV and then asked whether they had ever heard of PrEP and whether, in the past 12 months they had taken PrEP to reduce the risk of getting HIV. Log-linked Poisson regression models with generalized estimating equations clustered on recruitment event were stratified by subgroup to estimate prevalence ratios and 95% confidence intervals (CIs) for PrEP awareness and use by year. Stratified models for each subgroup were adjusted for income, health insurance, and region. Analyses were conducted using SAS software (version 9.4; SAS Institute).

In 2014 and 2017, 18,610 sexually active MSM were interviewed (9,640 in 2014; 8,970 in 2017) in the 20 urban areas. Of those, this analysis is limited to 7,873 MSM (42%) who had a negative HIV test result but were at risk for HIV infection and likely met the clinical indications for PrEP (3,821 [40%] in 2014; 4,052 [45%] in 2017). From 2014 to 2017, awareness of PrEP among these MSM increased overall from 60% to 90% (adjusted prevalence ratio [aPR] = 1.45; 95% CI = 1.41–1.50) and increased in all urban areas and subgroups (Table 1). In 2017, >80% of MSM in 17 of 20 urban areas and in most demographic subgroups were aware of PrEP. From 2014 to 2017, use of PrEP among MSM increased overall from 6% to 35% (aPR = 5.66; 95% CI = 4.85–6.61) and increased in all urban areas and in almost all demographic subgroups (Table 2). Substantial increases in PrEP use occurred among black, Hispanic, and young (aged 18–29 years) MSM from 2014 to 2017. In 2017, the differences in PrEP use between Hispanic (30%) and white (42%) MSM (aPR = 0.91; 95% CI = 0.78–1.06) and between young (32%) and older (38%) MSM (aPR = 0.97; 95% CI = 0.89–1.05) were no longer significant after controlling for income, health insurance, and region. However, the difference in reported PrEP use between black (26%) and white (42%) MSM remained significant after controlling for these three factors (aPR = 0.78; 95% CI = 0.66–0.92). During 2017, PrEP use increased with education and income, and 39% of the MSM who saw a health care provider in the past 12 months reported PrEP use.

Discussion

From 2014 to 2017, PrEP awareness among MSM in this analysis increased by 50%. More importantly, in 2017, >80% of MSM in all racial and ethnic groups and in 17 of the 20 urban areas were aware of PrEP. This finding is encouraging and suggests that efforts designed to increase PrEP awareness among populations at risk for HIV infection are having a positive impact. These efforts have included media and social marketing campaigns (e.g., Act Against AIDS¶¶). In addition, national HIV prevention goals were updated in 2015 to expand efforts to prevent HIV infection using a combination of effective, evidence-based approaches among populations with the highest prevalences of HIV infection, including among black and Hispanic MSM (5). Thus, continued increases of awareness among MSM, especially among black and Hispanic MSM, are expected.

Although PrEP use by MSM in this analysis increased approximately 500% from 2014 to 2017, only approximately one in three men at risk for HIV infection reported using PrEP. Models examining the impact of PrEP use on incidence predict that the use of PrEP by 30%–40% of MSM with PrEP indications in a community could result in approximately one third of new HIV infections being averted over a 10-year period, with a greater predicted impact if coverage is increased (6). The reported increase in PrEP use among MSM is promising, but higher coverage is needed to reduce incidence of new infections by 90% within the 10 years of the Ending the HIV Epidemic initiative.

The overall impact and efficiency of PrEP at averting new infections is greater in communities with a high prevalence of HIV (7,8). Therefore, efforts focused on increasing PrEP use among black and Hispanic MSM, who have a higher prevalence of HIV infection (3), might substantially reduce the incidence of HIV infections. The large percentage increases in PrEP use among black and Hispanic MSM in this analysis are promising, but PrEP use in these groups remains low; continued efforts will be needed to meet the goals of the Ending the HIV Epidemic initiative. Because of the structural barriers associated with race that influence access to quality health care (9), demonstration projects for the Targeted Highly-Effective Interventions to Reverse the HIV Epidemic (THRIVE) program*** are underway in seven U.S. cities. These projects establish community collaboratives that provide comprehensive HIV prevention and care services for black and Hispanic MSM. Lessons learned from these efforts might help further inform how best to increase PrEP use among these populations.

Some health care providers might be missing opportunities to provide PrEP to patients who would benefit from its use. MSM included in this analysis reported behaviors that put them at substantial risk for HIV infection, yet only 39% of those who saw a health care provider in the past 12 months reported using PrEP. CDC’s HIV PrEP clinical practice guideline offers comprehensive information to providers for prescribing and managing PrEP and recommends that health care providers take routine sexual histories of all their patients (2). However, some providers only take a sexual history if it is related to the patient’s complaint and ask nonspecific questions about sex (10). To increase PrEP use, health care providers might need training and resources to ensure they know how to assess their patients for indications for PrEP and are confident discussing PrEP medication. As part of CDC’s Act Against AIDS communication campaign, the Prescribe HIV Prevention program offers an online toolkit to help health care providers use PrEP to prevent new HIV infections among patients at high risk. This toolkit includes resources such as answers to frequently asked questions about PrEP medication and its related clinical care, campaign posters to help raise PrEP awareness, patient materials, a tool to aid health care providers in discussing sexual histories with their patients, and continuing medical education courses on PrEP. To fulfill their critical role in reducing new HIV infections in the United States, health care providers will need to routinely test patients for HIV, link those with HIV infection to care, and discuss HIV prevention options (e.g., condoms and PrEP) with those who are not infected.

The findings in this report are subject to at least six limitations. First, NHBS data do not correspond directly with the criteria for PrEP indication in the clinical guidelines. NHBS uses a 12-month period for assessing risk behaviors versus a 6-month period specified in the clinical guidelines. Second, this analysis used having two or more sex partners in the past year as a proxy for a nonmonogamous relationship, but these partnerships might not have overlapped in time. Thus, the analysis might include some men without indications for PrEP use. Their inclusion in the denominator might underestimate the percentage of men in NHBS using PrEP. Third, different questions were used to assess PrEP awareness and use in 2014 and 2017. The measure of PrEP use in 2017 was more specific than that in 2014, so estimates of PrEP use increases are potentially underestimated. Fourth, NHBS is not nationally representative and might not be generalizable to all cities, nonurban areas, or MSM. Fifth, because data were not weighted to account for the complex sampling methods used to recruit MSM, estimates might be biased by over- or underestimating subgroups of the population. Finally, data on self-reported behaviors might be subject to recall and social desirability biases. Although the impact of recall bias on the analysis is unknown, social desirability bias might lead to overreporting PrEP awareness and use.

HIV PrEP awareness and use is increasing in the United States among MSM who are at risk for acquiring HIV, but higher coverage is needed, especially among black and Hispanic MSM, to end the HIV epidemic in the United States by 2030. By routinely testing their patients for HIV, assessing HIV-negative patients for risk behaviors, and prescribing PrEP as needed, health care providers can play a critical role in this effort.

Acknowledgments

National HIV Behavioral Surveillance participants; CDC National HIV Behavioral Surveillance Team.

National HIV Behavioral Surveillance Study Group

Meaghan Abrego, Nassau and Suffolk counties, New York; Alia Al-Tayyib, Denver, Colorado; Bridget Anderson, Nassau and Suffolk counties, New York; Narquis Barak, New Orleans, Louisiana; Lissa Bayang, San Diego, California; Jeremy M. Beckford, New Orleans, Louisiana; Nanette Benbow, Chicago, Illinois; Barbara Bolden, Newark, New Jersey; Kathleen A. Brady, Philadelphia, Pennsylvania; Mary-Grace Brandt, Detroit, Michigan; Sarah Braunstein, New York City, New York; Richard Burt, Seattle, Washington; Rosalinda Cano, San Diego, California; Sidney Carrillo, New York City, New York; Jie Deng, Dallas, Texas; Rose Doherty, Boston, Massachusetts; Anna Flynn, San Diego, California; Colin Flynn, Baltimore, Maryland; David Forrest, Miami, Florida; Dawn Fukuda, Boston, Massachusetts; Danielle German, Baltimore, Maryland; Sara Glick, Seattle, Washington; Henry Godette, Newark, New Jersey; Vivian Griffin, Detroit, Michigan; Emily Higgins, Detroit, Michigan; Theresa Ick, San Francisco, California; Tom Jaenicke, Seattle, Washington; Antonio D. Jimenez, Chicago, Illinois; Salma Khuwaja, Houston, Texas; Monina Klevens, Boston, Massachusetts; Irene Kuo, Washington, D.C; Marlene LaLota, Miami, Florida; Zaida Lopez, Houston, Texas; Yingbo Ma, Los Angeles, California; Kathryn Macomber, Detroit, Michigan; Stephanie Masiello Schuette, Chicago, Illinois; Melanie Mattson, Denver, Colorado; David Melton, Atlanta, Georgia; Sandra Miranda De León, San Juan, Puerto Rico; Alan Neaigus, New York City, New York; Willie Nixon, Miami, Florida; Chrysanthus Nnumolu, Philadelphia, Pennsylvania; Alicia Novoa, Dallas, Texas; Conall O’Cleirigh, Boston, Massachusetts; Jenevieve Opoku, Washington, D.C; Paige Padgett, Houston, Texas; Jonathon Poe, Dallas, Texas; Nikhil Prachand, Chicago, Illinois; H. Fisher Raymond, San Francisco, California; Hafeez Rehman, Houston, Texas; Kathleen H. Reilly, New York City, New York; Alexis Rivera, New York City, New York; William T. Robinson, New Orleans, Louisiana; Yadira Rolón-Colón, San Juan, Puerto Rico; Kimi Sato, Atlanta, Georgia; John-Mark Schacht, Miami, Florida; Ekow Kwa Sey, Los Angeles, California; Shane Sheu, Dallas, Texas; Jennifer Shinefeld, Philadelphia, Pennsylvania; Mark Shpaner, Philadelphia, Pennsylvania; Amber Sinclair, Nassau and Suffolk counties, New York; Lou Smith, Nassau and Suffolk counties, New York; Emma Spencer, Miami, Florida; Ashley Tate, Nassau and Suffolk counties, New York; Hanne Thiede, Seattle, Washington; Jeff Todd, Atlanta, Georgia; Veronica Tovar-Moore, San Diego, California; Margaret Vaaler, Dallas, Texas; Chris Wittke, Boston, Massachusetts; Afework Wogayehu, Newark, New Jersey; Pascale Wortley, Atlanta, Georgia; Meagan C. Zarwell, New Orleans, Louisiana

Corresponding author: Teresa Finlayson, TFinlayson@cdc.gov, 404-639-2083.


1Division of HIV/AIDS Prevention, National Center for HIV/AIDS, Viral Hepatitis, STD, and TB Prevention, CDC; 2ICF International, Fairfax, Virginia; 3Oak Ridge Institute for Science and Education, Oak Ridge, Tennessee.

All authors have completed and submitted the ICMJE form for disclosure of potential conflicts of interest. No potential conflicts of interest were disclosed.


* https://www.hiv.gov/federal-response/ending-the-hiv-epidemic/overview?s_cid=ht_endinghivinternet0002.

https://aidsvu.org/ending-the-epidemic/.

§ https://www.cdc.gov/actagainstaids/campaigns/prescribe-hiv-prevention/index.html.

The number of U.S. urban areas collecting data differed in 2014 and 2017. The following 20 urban areas collected data both years: Atlanta, Georgia; Baltimore, Maryland; Boston, Massachusetts; Chicago, Illinois; Dallas, Texas; Denver, Colorado; Detroit, Michigan; Houston, Texas; Los Angeles, California; Miami, Florida; Nassau and Suffolk counties, New York; New Orleans, Louisiana; New York City, New York; Newark, New Jersey; Philadelphia, Pennsylvania; San Diego, California; San Francisco, California; San Juan, Puerto Rico; Seattle, Washington; and Washington, DC. The following three urban areas that collected data in 2017 were not included in this analysis: Memphis, Tennessee; Norfolk, Virginia; and Portland, Oregon.

** Men who were born male and identified as male, reported having ever had oral or anal sex with another man, resided in the interview city, were aged ≥18 years, and could complete the interview in English or Spanish.

†† The incentive format (cash or gift card) and amount varied by city according to formative assessment and local policy. A typical format included $25 for completing the interview and $25 for providing a specimen for HIV testing.

§§ NHBS data do not correspond directly with the criteria for PrEP indication in the clinical guidelines. The guidelines recommend that men use PrEP if they are without acute or established HIV infection, have had sex with a nonmonogamous male partner who has not recently tested HIV-negative, and have had at least one of the following: any anal sex without a condom in the past 6 months or a bacterial STI (i.e., syphilis, gonorrhea, or chlamydia) diagnosed or reported in the past 6 months. NHBS data flag persons who are likely indicated for PrEP use because of behavior from a longer period (12 months versus 6 months) and use multiple sex partners as a proxy for a nonmonogamous partner.

¶¶ https://www.cdc.gov/actagainstaids/index.html.

*** https://www.cdc.gov/hiv/research/thrive/about.html.

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TABLE 1. Number and percentage of men who have sex with men who are at risk for human immunodeficiency virus (HIV) infection* and reported awareness of HIV preexposure prophylaxis, by demographic characteristics — National HIV Behavioral Surveillance System, United States, 2014 and 2017Return to your place in the text
Characteristic 2014 2017 Adjusted prevalence ratio (95% CI)
No. (%) Total No. (%) Total
Overall 2,286 (59.8) 3,821 3,664 (90.4) 4,052 1.45 (1.41–1.50)
Age group (yrs)
18–29 1,115 (57.5) 1,939 1,717 (91.2) 1,882 1.52 (1.45–1.59)
≥30 1,171 (62.2) 1,882 1,947 (89.7) 2,170 1.40 (1.34–1.46)
Racial/Ethnic group
Black 376 (47.1) 798 729 (86.2) 846 1.76 (1.62–1.92)
Hispanic/Latino 529 (48.9) 1,081 1,032 (86.6) 1,191 1.66 (1.55–1.77)
White 1,152 (71.7) 1,607 1,555 (94.5) 1,645 1.30 (1.25–1.35)
Other§ 216 (68.4) 316 322 (93.6) 344 1.36 (1.25–1.48)
Sexual identity
Heterosexual 12 (38.7) 31 12 (60.0) 20 1.55 (0.87–2.76)
Homosexual or gay 2,038 (63.3) 3,222 3,126 (92.2) 3,389 1.41 (1.36–1.45)
Bisexual 227 (40.9) 555 513 (81.4) 630 1.90 (1.71–2.12)
Education
High school degree or less 353 (38.8) 910 604 (80.5) 750 1.98 (1.79–2.17)
Some college or vocational school 695 (56.2) 1,237 1,184 (90.5) 1,309 1.56 (1.48–1.65)
College degree or graduate studies 1,237 (73.9) 1,673 1,875 (94.1) 1,992 1.26 (1.22–1.30)
Household income
$0–$24,999 593 (45.5) 1,303 838 (82.2) 1,019 1.73 (1.61–1.85)
$25,000–$49,999 622 (61.5) 1,012 1,000 (91.0) 1,099 1.46 (1.38–1.55)
$50,000–$74,999 428 (66.9) 640 755 (93.8) 805 1.39 (1.31–1.48)
≥$75,000 620 (75.7) 819 1,058 (95.3) 1,110 1.26 (1.20–1.31)
Currently have health insurance
No 463 (51.1) 906 621 (85.5) 726 1.59 (1.48–1.72)
Yes 1,818 (62.6) 2,906 3,039 (91.6) 3,319 1.42 (1.37–1.47)
Visited a health care provider within the past 12 months
No 332 (47.1) 705 409 (78.8) 519 1.60 (1.46–1.76)
Yes 1,953 (62.7) 3,114 3,254 (92.1) 3,532 1.42 (1.37–1.47)
Usual source of health care
No usual place for health care 386 (46.3) 834 570 (83.3) 684 1.72 (1.58–1.87)
Clinic or health care center 599 (61.8) 970 1,053 (91.3) 1,153 1.43 (1.35–1.51)
Doctor’s office or HMO 1,218 (64.8) 1,881 1,888 (92.6) 2,039 1.39 (1.34–1.44)
Other place for health care 57 (62.0) 92 115 (87.8) 131 1.42 (1.19–1.69)
Participated in a behavioral Intervention within the past 12 months
No 1,627 (57.2) 2,842 2,486 (88.9) 2,797 1.49 (1.43–1.55)
Yes 659 (67.3) 979 1,176 (93.9) 1,253 1.33 (1.27–1.40)
Tested for HIV within the past 12 months
No 348 (41.5) 838 452 (75.1) 602 1.73 (1.57–1.91)
Yes 1,935 (65.0) 2,976 3,207 (93.1) 3,444 1.39 (1.35–1.43)
Region
Midwest 216 (61.2) 353 289 (80.7) 358 1.29 (1.13–1.46)
Northeast 471 (59.4) 793 718 (90.4) 794 1.51 (1.40–1.62)
South 755 (55.9) 1,350 1,239 (89.6) 1,383 1.53 (1.44–1.62)
U.S. territories 63 (27.6) 228 82 (66.7) 123 2.25 (1.75–2.89)
West 781 (71.2) 1,097 1,336 (95.8) 1,394 1.34 (1.28–1.41)
Urban area
Atlanta, GA 119 (62.0) 192 184 (92.5) 199 1.43 (1.25–1.64)
Baltimore, MD 87 (55.4) 157 89 (82.4) 108 1.52 (1.28–1.81)
Boston, MA 106 (73.1) 145 203 (96.7) 210 1.33 (1.18–1.49)
Chicago, IL 162 (82.2) 197 186 (94.4) 197 1.13 (1.05–1.22)
Dallas, TX 59 (33.1) 178 224 (89.2) 251 2.28 (1.76–2.97)
Denver, CO 122 (58.1) 210 270 (93.8) 288 1.61 (1.41–1.83)
Detroit, MI 54 (34.6) 156 103 (64.0) 161 1.80 (1.41–2.31)
Houston, TX 93 (49.7) 187 212 (86.5) 245 1.67 (1.38–2.01)
Los Angeles, CA 177 (68.3) 259 287 (97.3) 295 1.44 (1.31–1.57)
Miami, FL 98 (46.4) 211 134 (78.8) 170 1.67 (1.40–2.00)
Nassau and Suffolk counties, NY 73 (45.9) 159 68 (84.0) 81 1.83 (1.50–2.23)
New Orleans, LA 100 (55.2) 181 156 (94.5) 165 1.66 (1.42–1.94)
New York City, NY 125 (80.1) 156 236 (95.2) 248 1.17 (1.08–1.27)
Newark, NJ 22 (25.0) 88 48 (88.9) 54 3.73 (2.69–5.18)
Philadelphia, PA 145 (59.2) 245 163 (81.1) 201 1.36 (1.18–1.57)
San Diego, CA 139 (63.8) 218 277 (94.2) 294 1.47 (1.30–1.67)
San Francisco, CA 158 (90.8) 174 261 (97.4) 268 1.05 (1.00–1.12)
San Juan, PR 63 (27.6) 228 82 (66.7) 123 2.25 (1.75–2.89)
Seattle, WA 185 (78.4) 236 241 (96.8) 249 1.24 (1.16–1.33)
Washington, DC 199 (81.6) 244 240 (98.0) 245 1.19 (1.12–1.27)

Abbreviations: CI = confidence interval; HMO = health maintenance organization.
* Men who were at risk for HIV infection and likely to meet clinical indications for HIV preexposure prophylaxis. This was defined as men who had a negative HIV test result at the time of the interview, did not report a previous HIV-positive test result, had either one male sex partner who was HIV-positive or multiple male sex partners in the past 12 months, and reported either condomless anal sex or a sexually transmitted bacterial infection in the past 12 months.
Models adjusted for income, health insurance, and region.
§ Includes American Indian, Alaskan Native, Asian, Native Hawaiian, Pacific Islander, or multiple races.
Midwest region includes Chicago, IL and Detroit, MI. Northeast region includes Boston, MA; Nassau and Suffolk counties, NY; New York City, NY; Newark, NJ; and Philadelphia, PA. South region includes Atlanta, GA; Baltimore, MD; Dallas, TX; Houston, TX; Miami, FL; New Orleans, LA; and Washington, DC. U.S. territories region includes San Juan, PR. West region includes Denver, CO; Los Angeles, CA; San Diego, CA; San Francisco, CA; and Seattle, WA.

TABLE 2. Number and percentage of men who have sex with men who are at risk for human immunodeficiency virus (HIV) infection* and reported using HIV preexposure prophylaxis, by demographic characteristics — National HIV Behavioral Surveillance System, United States, 2014 and 2017Return to your place in the text
Characteristic 2014 2017 Adjusted prevalence ratio (95% CI)
No. (%) Total No. (%) Total
Overall 216 (5.7) 3,821 1,425 (35.1) 4,052 5.66 (4.85–6.61)
Age group (yrs)
18–29 90 (4.6) 1,939 608 (32.3) 1,882 6.36 (5.05–8.02)
≥30 126 (6.7) 1,882 817 (37.6) 2,170 5.21 (4.30–6.32)
Racial/Ethnic group
Black 30 (3.8) 798 222 (26.2) 846 6.44 (4.36–9.51)
Hispanic/Latino 41 (3.8) 1,081 357 (30.0) 1,191 6.92 (5.08–9.44)
White 133 (8.3) 1,607 697 (42.4) 1,645 4.83 (3.96–5.88)
Other§ 12 (3.8) 316 137 (39.8) 344 9.53 (5.36–16.96)
Sexual identity
Heterosexual 2 (6.5) 31 3 (15.0) 20 2.33 (0.42–12.78)
Homosexual or gay 196 (6.1) 3,222 1,273 (37.6) 3,389 5.65 (4.81–6.63)
Bisexual 18 (3.2) 555 144 (22.9) 630 6.43 (3.96–10.45)
Education
High school degree or less 19 (2.1) 910 192 (25.6) 750 10.76 (6.69–17.33)
Some college or vocational school 55 (4.4) 1,237 390 (29.8) 1,309 6.77 (5.14–8.92)
College degree or graduate studies 142 (8.5) 1,673 842 (42.3) 1,992 4.80 (3.99–5.77)
Household income
$0–$24,999 48 (3.7) 1,303 264 (25.9) 1,019 6.20 (4.51–8.52)
$25,000–$49,999 45 (4.4) 1,012 346 (31.5) 1,099 6.82 (5.00–9.32)
$50,000–$74,999 34 (5.3) 640 294 (36.5) 805 6.89 (4.89–9.71)
≥$75,000 88 (10.7) 819 521 (46.9) 1,110 4.29 (3.43–5.37)
Currently have health insurance
No 23 (2.5) 906 134 (18.5) 726 6.63 (4.35–10.10)
Yes 192 (6.6) 2,906 1,290 (38.9) 3,319 5.53 (4.70–6.51)
Visited a health care provider within the past 12 months
No 5 (0.7) 705 37 (7.1) 519 9.81 (3.87–24.85)
Yes 211 (6.8) 3,114 1,388 (39.3) 3,532 5.38 (4.60–6.28)
Usual source of health care
No usual place for health care 18 (2.2) 834 111 (16.2) 684 7.08 (4.36–11.48)
Clinic or health care center 59 (6.1) 970 426 (37.0) 1,153 5.68 (4.36–7.38)
Doctor’s office or HMO 136 (7.2) 1,881 850 (41.7) 2,039 5.34 (4.41–6.46)
Other place for health care 2 (2.2) 92 30 (22.9) 131 9.69 (2.38–39.38)
Participated in a behavioral Intervention within the past 12 months
No 118 (4.2) 2,842 858 (30.7) 2,797 6.64 (5.38–8.19)
Yes 98 (10.0) 979 565 (45.1) 1,253 4.03 (3.31–4.90)
Tested for HIV within the past 12 months
No 3 (0.4) 838 19 (3.2) 602 8.33 (2.46–28.24)
Yes 213 (7.2) 2,976 1,406 (40.8) 3,444 5.26 (4.51–6.12)
Region
Midwest 27 (7.6) 353 117 (32.7) 358 3.91 (2.35–6.52)
Northeast 46 (5.8) 793 293 (36.9) 794 5.78 (4.21–7.95)
South 69 (5.1) 1,350 409 (29.6) 1,383 5.44 (4.18–7.08)
U.S. territories 2 (0.9) 228 7 (5.7) 123 5.08 (1.19–21.74)
West 72 (6.6) 1,097 599 (43.0) 1,394 6.36 (4.87–8.30)
Urban area
Atlanta, GA 12 (6.3) 192 56 (28.1) 199 4.29 (2.08–8.84)
Baltimore, MD 8 (5.1) 157 20 (18.5) 108 3.39 (1.53–7.55)
Boston, MA 11 (7.6) 145 105 (50.0) 210 6.33 (3.16–12.65)
Chicago, IL 23 (11.7) 197 93 (47.2) 197 3.79 (2.22–6.47)
Dallas, TX 4 (2.2) 178 63 (25.1) 251 11.12 (3.52–35.16)
Denver, CO 4 (1.9) 210 92 (31.9) 288 15.71 (5.97–41.30)
Detroit, MI 4 (2.6) 156 24 (14.9) 161 5.49 (2.05–14.66)
Houston, TX 9 (4.8) 187 60 (24.5) 245 4.66 (2.48–8.75)
Los Angeles, CA 11 (4.2) 259 109 (36.9) 295 9.13 (4.97–16.78)
Miami, FL 5 (2.4) 211 30 (17.6) 170 7.75 (3.26–18.41)
Nassau and Suffolk counties, NY 3 (1.9) 159 15 (18.5) 81 9.81 (3.03–31.79)
New Orleans, LA 5 (2.8) 181 65 (39.4) 165 12.99 (5.55–30.43)
New York City, NY 8 (5.1) 156 101 (40.7) 248 6.88 (3.61–13.10)
Newark, NJ 1 (1.1) 88 13 (24.1) 54 21.15 (2.97–150.41)
Philadelphia, PA 23 (9.4) 245 59 (29.4) 201 3.20 (2.03–5.04)
San Diego, CA 12 (5.5) 218 120 (40.8) 294 7.34 (4.11–13.13)
San Francisco, CA 26 (14.9) 174 164 (61.2) 268 3.93 (2.55–6.04)
San Juan, PR 2 (0.9) 228 7 (5.7) 123 5.08 (1.19–21.74)
Seattle, WA 19 (8.1) 236 114 (45.8) 249 5.44 (3.34–8.85)
Washington, DC 26 (10.7) 244 115 (46.9) 245 4.54 (3.08–6.70)

Abbreviations: CI = confidence interval; HMO = health maintenance organization.
* Men who were at risk for HIV infection and likely to meet clinical indications for HIV preexposure prophylaxis. This was defined as men who had a negative HIV test result at the time of the interview, did not report a previous HIV-positive test result, had either one male sex partner who was HIV-positive or multiple male sex partners in the past 12 months, and reported either condomless anal sex or a sexually transmitted bacterial infection in the past 12 months.
Models adjusted for income, health insurance, and region.
§ Includes American Indian, Alaskan Native, Asian, Native Hawaiian, Pacific Islander, or multiple races.
Midwest region includes Chicago, IL and Detroit, MI. Northeast region includes Boston, MA; Nassau and Suffolk counties, NY; New York City, NY; Newark, NJ; and Philadelphia, PA. South region includes Atlanta, GA; Baltimore, MD; Dallas, TX; Houston, TX; Miami, FL; New Orleans, LA; and Washington, DC. U.S. territories region includes San Juan, PR. West region includes Denver, CO; Los Angeles, CA; San Diego, CA; San Francisco, CA; and Seattle, WA.


Suggested citation for this article: Finlayson T, Cha S, Xia M, et al. Changes in HIV Preexposure Prophylaxis Awareness and Use Among Men Who Have Sex with Men — 20 Urban Areas, 2014 and 2017. MMWR Morb Mortal Wkly Rep 2019;68:597–603. DOI: http://dx.doi.org/10.15585/mmwr.mm6827a1.

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