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  • Research article
  • Open Access
  • Open Peer Review

Behavioural and demographic correlates of undiagnosed HIV infection in a MSM sample recruited in 13 European cities

  • 1Email authorView ORCID ID profile,
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  • 3,
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  • 5,
  • 6,
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BMC Infectious Diseases201818:368

https://doi.org/10.1186/s12879-018-3249-8

  • Received: 14 February 2018
  • Accepted: 10 July 2018
  • Published:
Open Peer Review reports

Abstract

Background

Reducing the number of people with undiagnosed HIV infection is a major goal of HIV control and prevention efforts in Europe and elsewhere. We analysed data from a large multi-city European bio-behavioural survey conducted among Men who have Sex with Men (MSM) for previously undiagnosed HIV infections, and aimed to characterise undiagnosed MSM who test less frequently than recommended.

Methods

Data on sexual behaviours and social characteristics of MSM with undiagnosed HIV infection from Sialon II, a bio-behavioural cross-sectional survey conducted in 13 European cities in 2013/2014, were compared with HIV-negative MSM. Based on reported HIV-testing patterns, we distinguished two subgroups: MSM with a negative HIV test result within 12 months prior to the study, i.e. undiagnosed incident infection, and HIV positive MSM with unknown onset of infection. Bivariate and multivariate associations of explanatory variables were analysed. Distinct multivariate multi-level random-intercept models were estimated for the entire group and both subgroups.

Results

Among 497 participants with HIV-reactive specimens, 234 (47.1%) were classified as previously diagnosed, 106 (21.3%) as incident, and 58 (11.7%) as unknown onset based on self-reported status and testing history. MSM with incident HIV infection were twice as likely (odds ratio (OR) = 2.22, 95% confidence interval (95%CI): 1.17–4.21) to have used recreational substances during their last anal sex encounter and four times more likely (OR = 3.94, 95%CI: 2.14–7.27) not to discuss their HIV status with the last anal sex partner(s). MSM with unknown onset of HIV infection were 3.6 times more likely (OR = 3.61, 95%CI: 1.74–7.50) to report testing for a sexually transmitted infection (STI) during the last 12 months.

Conclusions

Approximately one third of the study participants who are living with HIV were unaware of their infection. Almost two-third (65%) of those with undiagnosed HIV appeared to have acquired the infection recently, emphasizing a need for more frequent testing. Men with the identified behavioural characteristics could be considered as primary target group for HIV Pre-Exposure Prophylaxis (PrEP) to avoid HIV infection. The increased odds of those with unknown onset of HIV infection to have had an STI test in the past year strongly suggests a lost opportunity to offer HIV testing.

Keywords

  • HIV
  • Men having sex with men
  • Europe
  • Biobehavioural survey
  • Undiagnosed HIV infection

Background

In recent years a range of efforts and new initiatives have been implemented across Europe to increase Human Immunodeficiency Virus (HIV) testing among key populations and to reduce the number of undiagnosed HIV infections and late diagnoses [1]. Despite some progress in terms of increased testing uptake, a recent report from the European Centre for Disease Prevention and Control (ECDC) estimates that the proportion of undiagnosed HIV among Men having Sex with Men (MSM) in six European countries is 17% [2]. This falls short of the internationally agreed goal of diagnosing at least 90% of the people who are infected [3]. Furthermore, approximately one third of HIV diagnoses among MSM in the European Union (EU) are late (CD4 < 350 cells/μl at diagnosis). Reducing late HIV diagnoses would result in substantial individual (i.e. reduced morbidity and mortality) and public health benefits (reduced transmission and reduction of health care costs) [4, 5]. In addition to adverse health outcomes, late diagnoses and late initiation of antiretroviral therapy are associated with increased risks for transmitting HIV unknowingly to sexual partners.

In countries with unrestricted access to antiretroviral treatment undiagnosed HIV infections are thought to be the main sources of new HIV infections. Early diagnosis of HIV and successful treatment are thus important for the successful management of the disease in individual patients as well as major tools supporting the implementation of the WHO strategy for anti-retroviral treatment as prevention [3, 6, 7].

The level of undiagnosed infections is driven by HIV incidence on the one hand and by the testing rate on the other. Factors increasing HIV incidence are likely to contribute to the increased level of undiagnosed infections, even among frequent testers. Additionally, barriers to testing and low testing uptake may cause accumulation of infections, including late stage infections [8, 9].

Little is known about the characteristics and sexual behaviours of people with undiagnosed infections. Some information can be retrieved from HIV testing sites from people newly diagnosed with HIV [1012], although the demographic data collected and analysed are quite limited from such clinical sites [13, 14]. People presenting for testing self-select and therefore such samples may be biased. Another way to collect such information is from longitudinal cohort studies including HIV-uninfected people at risk for HIV. However, such studies are time consuming, costly, and rarely conducted in Europe. In addition, participants may not be representative of the population at risk in real world settings. Bio-behavioural studies, such as the multi-city Sialon II study, may therefore be better suited to systematically collect information on people who are unknowingly infected with HIV [15, 16] with more scientific rigour and fewer biases.

In general, the risk of HIV infection among MSM is associated with sexual risk practices such as the lack of condom use, number of partners with whom condomless anal intercourse is practised, drug use associated with sex, and attending gay sex venues where risky sexual behaviours are part of the sub-culture [17]. However, such risk practices are driven by a complex set of intertwined factors, ranging from the personal level factors (e.g. age, personal skills and self-efficacy, mental health) to interpersonal factors (partner dynamics, communication and negotiation on sex practices), to community and service provision-related factors (social and sexual norms, perceived homonegativity in communities; access to testing and other medical services) and structural factors (policies and legislation). The intersection of these factors is further shaped by high HIV prevalence in subgroups of MSM [18].

Barriers to HIV testing have also been extensively described in the literature: testing for HIV is more likely for individuals who perceive themselves at risk for HIV and who anticipate personal benefits from testing, while fears of consequences of receiving an HIV diagnosis hinders HIV testing. The latter has been shown to be associated with fear of discrimination and personal rejection [19, 20]. Research has also shown that multiple social-cognitive factors (e.g. knowledge, attitudes, perceived behavioural control) play a role in explaining testing for HIV and sexually transmitted infections (STI) among MSM [20]. In addition to patient-level factors, a review demonstrated the influence of health-systems and structural factors on uptake of HIV testing [8].

The present study used data from a large multi-city European bio-behavioural survey conducted among MSM within the framework of the European Public Health Project Sialon II. The analysis has two objectives – 1) to identify factors correlating with early undiagnosed infections among testers, which are most likely driven by HIV incidence among repeat testers; and 2) to characterise groups that are not adhering to testing recommendations in order to properly inform appropriate testing campaigns targeted towards them.

Methods

Study design and procedures

Sialon II was a multi-site bio-behavioural cross-sectional survey carried out in 13 European cities. The cities were: Brussels (Belgium), Sofia (Bulgaria), Hamburg (Germany), Verona (Italy), Vilnius (Lithuania), Warsaw (Poland), Lisbon (Portugal), Bucharest (Romania), Bratislava (Slovakia), Ljubljana (Slovenia), Barcelona (Spain), Stockholm (Sweden), and Brighton (UK). In 2013/2014, MSM were recruited to participate in the survey using time-location-sampling (TLS) in community-based settings in nine European cities, and using respondent-driven-sampling (RDS) in social networks of MSM in four European cities (Bucharest, Bratislava, Verona, Vilnius). In TLS cities participants were recruited during 2013, in RDS cities recruitment started in 2013 and finished in 2014. Recruitment methods, study procedures, questions asked as well as sample collection and testing have been described in detail elsewhere [21]. The study protocol was approved by ethical review committees in all participating countries and by the WHO Research Project Review Panel (WHO-RP2) and the WHO Research Ethics Review Committee (WHO-ERC) before the data collection phase.

The bio-behavioural survey data generated from the Sialon II project provided the opportunity to combine data on testing history and self-reported HIV test result, and to link them with the laboratory determined HIV status to identify men with an undiagnosed HIV infection at the time of the survey implementation. In this analysis, sexual behaviours and social characteristics of these men with undiagnosed HIV infection are assessed and compared with their uninfected peers.

Measures

Participants filled in a short questionnaire and provided either an oral fluid (in TLS cities) or blood (in RDS cities) specimen for HIV antibody testing. Based on self-reported HIV status and the HIV testing result of the collected specimen, participants were classified as HIV-uninfected (nHIV), previously diagnosed with HIV infection (pHIV), and HIV-infected but as yet undiagnosed (uHIV). As far as the time of HIV diagnosis is concerned, three different patterns can be distinguished: 1) early diagnosis, when testing is predominantly triggered by symptoms of acute HIV infection and/or awareness of transmission risk; 2) intermediate diagnosis, when testing is triggered by health concerns not immediately related to acute HIV disease or transmission risk awareness; 3) late diagnosis, often triggered by symptoms or health complaints associated with compromised immune status. These three patterns may be associated with different demographic and behavioural characteristics (see below). Since data on HIV testing intentions were not collected, we used HIV testing history to distinguish between a group with likely high testing frequency and incident HIV infection (uHIVinc - negative test result reported within 12 months before the study specimen was collected) and MSM who were tested a longer time ago or never tested for HIV infection of unknown onset (uHIVunk). The uHIVinc subgroup may represent pattern 1 and partially pattern 2 testers, while the uHIVunk subgroup may represent the complementary part of pattern 2 and pattern 3 testers.

The following questionnaire items were used to determine if the case had been previously diagnosed: a question whether and if yes, when the last HIV antibody test was performed and a question on the result of the last HIV antibody test. If these questions were not answered or information was inconsistent HIV status knowledge was classified as undetermined and respondents were excluded from the analysis. In addition, participants recruited in Sofia had to be excluded from the two test recency subgroup analyses because the answers were invalid due to an incorrect translation of the respective question.

Lab testing of biological samples

In line with the TLS protocols, oral fluid (OF) specimens were collected and tested for HIV antibodies using Genscreen HIV 1/2 version 2, BIO-RAD. A total IgG antibodies ELISA test Human IgG ELISA Kit 1 × 96, Quantitative / Immunology Consultants Laboratory was used for OF specimen testing suitability and quality control. All HIV-reactive specimens were re-tested with Vironostika HIV Ag/Ab, bioMérieux. Specimens tested positive with the first HIV ELISA test, but negative with the second were classified as negative.

MSM who participated to the survey in cities where RDS was used as recruitment method received pre/post-test counselling during the enrolment and follow up process. Blood samples were collected and serum extracted in line with the local standard procedures. Serum samples were tested with an HIV 4th generation ELISA/CLIA screening test. A Western blot test was used to confirm positive cases. In case of a confirmed HIV positive result, a referral procedure was put in place in line with the local standard procedures to ensure linkage to care and proper case management.

Secondary variables

Based on published literature on factors associated with HIV acquisition risk, undiagnosed HIV infection or infrequent HIV testing and late diagnosis among MSM (as mentioned in the introduction), associations of uHIV, uHIVinc and uHIVunk status were analysed with:
  • Demographic variables such as age (calculated using the self-reported year of birth), education level (secondary school or lower, high school or post-secondary or university/ higher), migration status (native: born & living in the study country; emigrant: born in the study country & living abroad; immigrant: born abroad & living in the study country; visitor: born & living abroad);

  • Behavioural variables such as number of sexual partners and number of partners with whom condomless anal intercourse (AI) had been practiced in the previous 6 months, frequency of visiting gay sex venues in the last 3 months, type and number of drugs used during last AI (categorised as alcohol; cannabis; sexual performance enhancing substances: erectile dysfunction medication and inhaled amyl nitrite; party drugs: cocaine, ecstasy, amphetamines; chemsex drugs: GHB, ketamine, mephedrone, crystal meth);

  • Type of partners for last AI (steady, non-steady, more than one), self-reported HIV serostatus disclosure to the last AI partner, sexual role during last AI (top, bottom, versatile), condom use during last AI;

  • HIV and STI testing in the previous 12 months, and “outness” about sexual orientation towards relatives, friends, and co-workers.

The self-administered questionnaire filled-in by the study participants is available as Additional file 1.

Statistical analysis

We conducted analyses of bivariate and multivariate associations of explanatory variables with uHIV, and the two subgroups uHIVinc and uHIVunk, using nHIV for comparison. For the two subgroups, the comparison group was also determined by their last reported HIV test date, i.e. the comparison group for uHIVinc was tested negative within the previous 12 months, and the comparison group for uHIVunk was never tested or tested more than 12 months ago.

A multivariate multi-level logistic random-intercept model (random effect of study site) was estimated to account for the hierarchical structure of the data [22]. The multi-level analysis was conducted to identify factors associated with each subgroup separately and with the combined group. Predictors associated with the outcome variable with a probability < 0.05 were considered significant.

Stata Version 14.2 was used (College Station, TX: StataCorp LP).

The dataset used for the analysis presented in this manuscript is available as Additional file 2. The Stata syntax of the analysis is available as Additional file 3.

Results

Study sample

A detailed description of the study sample has been published in the study report [23]. At most study sites, approximately 400 men had been recruited as requested by the study protocol, with exception of Bucharest, where only 183 participants were enrolled. There were significant age differences between study sites. The proportion of study participants tested for HIV in the last 12 months before completing the study questionnaire among those not known to have been diagnosed with HIV ranged between 35.5% in Bratislava and 66.2% in Barcelona (see Table 1).
Table 1

Sialon II study participants by study site, testing history and measured HIV status after exclusion of participants already known to have HIV and with indeterminate HIV status knowledge

city

HIV negative (n)

percentage tested for HIV in the last 12 months (%)

undiagnosed HIV infection (n)

percentage with undiagnosed HIV (%)

undiagnosed HIV, negative HIV pre-test within recent 12 months (n)

undiagnosed HIV infection, no pre-test or test longer ago than 12 months (n)

percentage of undiagnosed HIV that may not be recent (%)

Total (N)

Barcelona

334

66.2%

21

5.9%

16

5

23.8%

355

Bratislava

376

35.5%

15

3.8%

6

9

60.0%

391

Brighton

331

56.7%

15

4.3%

10

5

33.3%

346

Brussels

327

63.5%

7

2.1%

5

2

28.6%

334

Bucharest

146

42.9%

15

9.3%

7

8

53.3%

161

Hamburg

336

52.1%

15

4.3%

11

4

26.7%

351

Lisbon

300

63.8%

29

8.8%

23

6

20.7%

329

Ljubljana

329

50.9%

7

2.1%

5

2

28.6%

336

Sofiaa

344

 

12

3.4%

   

356

Stockholm

334

49.9%

3

0.9%

2

1

33.3%

337

Verona

367

41.9%

10

2.7%

2

8

80.0%

377

Vilnius

314

38.9%

5

1.6%

2

3

60.0%

319

Warsaw

346

57.9%

22

6.0%

17

5

22.7%

368

Total

4184

 

176

4.0%

   

4360

Total w/o Sofia

3840

51.9%

164

 

106

58

33.0%

4004

adata on recency of last HIV testing are missing for Sofia due to incorrect translation of the question in the Bulgarian questionnaire version

Formative research conducted in preparation of the bio-behavioural survey established that HIV testing sites, including sites providing free and anonymous HIV testing and rapid testing existed in all study cities at the time when study recruitment occurred [24]. Further qualitative assessments of gay-friendliness, accessibility and acceptability of available testing services were not conducted. HIV home tests and home collection tests were unavailable.

A valid HIV test result was available for 4716 participants. The antibody test result was non-reactive for 4219 specimens, and reactive for 497 specimens (11.8%). From the 4219 participants with non-reactive specimens 4184 (99%) were classified as nHIV, 35 were classified as indeterminate due to conflicting or missing self-reported data on HIV infection status. From the participants with reactive specimens 234 (47%) were classified as pHIV, 102 (20.5%) as uHIVinc, and 49 (9.9%) as uHIVunk based on self-reported infection status and testing history. Twelve participants from Sofia with undiagnosed HIV infection could not be classified in these two subgroups. The remaining 100 (20.1%) participants with reactive specimens had to be classified as indeterminate based on questionnaire data due to incomplete information on testing history and status knowledge (e.g. non-response to the question on previous HIV test and/or test result).

A weak positive correlation between the percentage of the participants tested for HIV by study site in the recent 12 months and the percentage of undiagnosed HIV in the study sites was observed (r = .275 - see Table 1).

Undiagnosed HIV infections and associations with demographics and behaviours

The distribution of all and of undiagnosed infections by age group is shown in Fig. 1.
Fig. 1
Fig. 1

Age distribution and prevalence of HIV infection and undiagnosed HIV by age group in the Sialon II participants, Sialon II biobehavioural survey, 2013–2014

The percentage of undiagnosed infections from all prevalent infections is approaching 50% in age groups younger than 35 years-old and declines to less than 30% in older age groups.

Table 1 shows the distribution of undiagnosed HIV infections by study sites. The proportion of study participants with undiagnosed HIV infection ranged from 0.9% in Stockholm to 9.3% in Bucharest. The overall proportion of undiagnosed HIV infections among men without a recent test result was almost one-third of the undiagnosed infections, ranging from 20.7% in Lisbon to 80% in Verona. The proportions of undiagnosed HIV among infrequent testers were consistently higher than 50% in the four cities Bratislava, Bucharest, Vilnius and Verona, in which RDS was used for recruitment.

Table 2 shows the reported last test dates among study participants who did not report having HIV or a last HIV test within the 12 months before they were recruited to the Sialon study.
Table 2

Distribution of Sialon II study participants who were not aware of having HIV by laboratory-determined HIV status and year of last HIV test - overall and by test recency group

uHIV - study sample

uHIVunk - last HIV test not within 12 months of recruitment into the study

Year of last reported test

HIV negative

HIV positive, undiagnosed

Year of last reported test

HIV negative

HIV positive, undiagnosed

1987

1

0

1987

1

0

1988

1

0

1988

1

0

1989

2

0

1989

2

0

1990

5

0

1990

5

0

1991

1

0

1991

1

0

1992

3

0

1992

3

0

1993

2

0

1993

2

0

1994

1

0

1994

1

0

1995

4

1

1995

4

1

1996

2

1

1996

2

1

1997

5

1

1997

5

1

1998

7

0

1998

7

0

1999

6

0

1999

6

0

2000

18

0

2000

18

0

2001

10

0

2001

10

0

2002

13

1

2002

13

1

2003

15

0

2003

15

0

2004

14

0

2004

14

0

2005

39

2

2005

39

2

2006

22

2

2006

22

2

2007

39

0

2007

39

0

2008

61

0

2008

61

0

2009

80

4

2009

80

4

2010

151

13

2010

151

13

2011

267

8

2011

267

8

2012

785

47

2012

205

10

2013

1306

70

2013

30

2

2014

32

0

never tested/year missing

864

13

year missinga

1292

26

Total

1868

58

Total

4184

176

   
   

uHIVinc - last test within 12 months before recruitment into the study

   

2012

580

37

   

2013

1276

68

   

2014

32

0

   

year missing, test within the last 12 months reported

84

1

   

Total

1972

106

aincludes 356 participants from Sofia whose last HIV test date could not be determined

Table 3 shows results of bivariate analysis of associations between potential explanatory variables and the outcomes 1) undiagnosed HIV infection, acquired within the previous 12 months - uHIVinc; 2) undiagnosed HIV infection of unknown onset - uHIVunk; 3) undiagnosed HIV infection irrespective of date of previous HIV test (1 and 2 combined - uHIV).
Table 3

Associations between demographic and behaviour variables and undiagnosed HIV infection in participants of the European Sialon II biobehavioural survey

 

uHIVinc

uHIVunk

uHIV

N

Odds Ratio

p-value

[95% Conf. Interval]

Odds Ratio

p-value

[95% Conf. Interval]

Odds Ratio

p-value

[95% Conf. Interval]

 

Age group

18–24

ref.

           

923

25–34

3.34

0.00

1.58

7.07

1.69

0.25

0.70

4.07

2.65

0.00

1.56

4.50

1730

35–44

3.05

0.01

1.37

6.80

2.82

0.02

1.18

6.73

2.90

0.00

1.66

5.06

970

45–54

2.37

0.07

0.94

5.97

2.00

0.19

0.72

5.59

2.16

0.02

1.11

4.19

488

55+

1.36

0.66

0.35

5.20

1.39

0.64

0.35

5.46

1.34

0.54

0.52

3.44

244

Migration status

native

ref.

           

3565

emigrant

2.14

0.20

0.63

7.20

6.78

0.02

1.45

31.84

3.06

0.01

1.29

7.27

54

immigrant

1.03

0.92

0.58

1.81

1.32

0.48

0.61

2.83

1.17

0.49

0.75

1.84

503

visitor: born & live abroad

0.70

0.45

0.28

1.96

1.78

0.73

0.19

3.26

0.78

0.53

0.36

1.69

226

Any STI test in last 12 months

no

ref.

           

2249

yes

1.15

0.62

0.67

1.95

3.01

0.00

1.56

5.84

1.94

0.00

1.42

2.66

2007

STI diagnoses

no diagnosis

ref.

           

3946

1 diagnosis

0.71

0.36

0.34

1.48

6.31

0.00

2.10

18.05

1.24

0.43

0.72

2.14

310

2 diagnoses

1.03

0.97

0.31

3.35

4.96

0.14

0.60

41.01

1.40

0.52

0.50

3.88

74

3 diagnoses

1.07

0.95

0.14

8.10

1.00

1.44

0.73

0.19

10.88

18

4 diagnoses

1.00

1.00

1.00

8

5 diagnoses

6.04

0.12

0.62

58.66

1.00

8.15

0.07

0.84

78.82

4

any STI diagnosis

0.82

0.52

0.46

1.49

5.98

0.00

2.23

16.06

1.31

0.26

0.82

2.09

414

Number of sex partners

no partner

ref.

           

269

1 partner

0.64

0.38

0.24

1.72

4.82

0.13

0.62

37.34

1.37

0.46

0.59

3.17

819

2–3 partners

0.78

0.59

0.31

1.96

3.73

0.21

0.47

29.34

1.34

0.48

0.59

3.07

981

4–5 partners

0.79

0.63

0.30

2.08

4.57

0.16

0.56

37.45

1.49

0.36

0.64

3.51

626

6–10 partners

0.67

0.43

0.25

1.80

8.35

0.04

1.08

64.42

1.62

0.26

0.70

3.73

701

> 10 partners

0.99

0.89

0.40

2.47

10.21

0.03

1.30

79.90

2.28

0.05

1.01

5.14

748

Number of partners with condomless anal intercourse

no partner

ref.

           

1499

1 partner

0.57

0.06

0.32

1.02

1.30

0.54

0.57

2.96

0.85

0.49

0.55

1.33

1108

2–3 partners

1.13

0.65

0.67

1.90

2.11

0.07

0.95

4.68

1.36

0.16

0.89

2.07

839

4–5 partners

0.67

0.46

0.24

1.92

5.03

0.00

1.92

13.16

1.50

0.22

0.79

2.85

235

6–10 partners

1.17

0.75

0.45

3.05

2.94

0.10

0.80

10.67

1.79

0.09

0.92

3.50

182

> 10 partners

2.68

0.02

1.14

6.30

12.84

0.00

3.75

43.93

3.55

0.00

1.83

6.88

106

Type of partners in last 6 months

steady partner(s)

ref.

           

653

non-steady partner(s)

1.18

0.65

0.58

2.38

1.08

0.86

0.49

2.35

1.12

0.66

0.68

1.85

1297

s + ns partner(s)

1.31

0.42

0.68

2.55

1.00

1.00

0.49

2.04

1.23

0.39

0.77

1.97

2001

no partner

1.67

0.35

0.56

4.97

0.22

0.15

0.03

1.71

0.78

0.60

0.31

1.95

216

Anal sex in last 6 months

no anal sex

ref.

           

857

anal intercourse (with condom)

0.87

0.65

0.47

1.59

1.21

0.67

0.50

2.95

1.12

0.65

0.69

1.84

1005

condomless anal intercourse

0.80

0.43

0.47

1.38

1.95

0.05

0.99

3.85

1.30

0.21

0.86

1.98

2498

Type of partner at last anal sex

steady partner

ref.

           

1880

non-steady partner

1.01

0.96

0.65

1.67

1.04

0.07

0.95

3.17

1.30

0.13

0.93

1.82

1760

more than one partner

2.06

0.04

1.03

4.11

2.33

0.13

0.77

7.04

2.22

0.01

1.24

3.97

207

Sexual role with last AI partner

top

ref.

           

1324

bottom

1.11

0.71

0.64

1.94

1.07

0.93

0.49

1.94

0.98

0.93

0.65

1.48

1265

versatile

2.08

0.00

1.27

3.42

1.00

1.00

0.48

2.09

1.61

0.02

1.09

2.37

1035

Serostatus disclosure to last AI partner

no disclosure

ref.

           

2400

disclosure

0.27

0.00

0.15

0.48

1.18

0.82

0.56

2.06

0.50

0.00

0.33

0.75

1262

Number of drugs consumed at last anal sex

0

ref.

           

1959

1

2.31

0.00

1.37

3.91

0.91

0.75

0.50

1.66

1.50

0.03

1.04

2.16

1394

2

2.98

0.00

1.58

5.61

0.99

0.99

0.41

2.42

1.74

0.02

1.08

2.79

516

3

4.30

0.00

2.03

9.09

1.00

2.31

0.01

1.19

4.49

167

4

5.59

0.00

1.79

11.80

2.04

0.50

0.26

15.97

3.33

0.00

1.46

7.55

76

5

4.69

0.02

1.32

16.70

1.00

2.66

0.11

0.80

8.87

40

6

9.38

0.01

1.89

54.64

7.66

0.07

0.83

70.60

8.19

0.00

2.25

29.82

15

7

4.17

0.18

0.51

34.29

1.00

2.98

0.30

0.38

23.46

12

8

1.00

1.00

1.00

6

9

18.76

0.02

1.64

214.37

1.00

10.93

0.04

1.12

106.62

4

Type of drugs

no party drug

ref.

           

3875

party

2.90

0.00

1.77

4.77

0.36

0.32

0.05

2.66

2.04

0.00

1.29

3.22

307

no chemsex drug

ref.

           

4063

chemsex

2.14

0.04

1.04

4.39

1.89

0.54

0.25

14.45

2.42

0.01

1.24

4.71

111

no sexual performance substance

ref.

           

3326

sexual performance substance

2.41

0.00

1.61

3.61

1.79

0.07

0.95

3.37

2.15

0.00

1.55

2.98

853

no cannabis

ref.

           

3869

cannabis

2.20

0.01

1.27

3.79

0.89

0.85

0.27

2.91

1.75

0.02

1.08

2.83

304

no alcohol

ref.

           

2.324

alcohol

1.90

0.00

1.26

2.84

0.70

0.23

0.40

1.25

1.33

0.07

0.98

1.80

1859

Satisfaction with sex life

unsatisfied

ref.

           

950

satisfied

1.70

0.08

0.94

3.08

1.16

0.67

0.59

2.27

1.48

0.06

0.98

2.22

3.124

Compared with HIV uninfected survey participants, men assigned to the uHIVinc group were more likely to be 25–44 years of age (compared to the reference age group 18–24), and showed higher odds for the use of drugs during last anal sex, they were less likely to have disclosed their presumed negative HIV serostatus to their last anal sex partner(s), more likely to have been versatile during their last anal sex encounter, and more likely to have had more than 10 partners in the last 6 months with whom they had condomless anal intercourse.

Men assigned to the uHIVunk group were more likely to be older (age groups 35–44) than HIV-uninfected men who had not been tested for HIV in the last 12 months, to report any condomless anal intercourse in the last 6 months, and to have higher numbers of partners in the last 6 months with whom they had condomless anal sex, they were more likely to have been tested for and diagnosed with an STI in the last 12 months, and more likely to be an emigrant on home visit to his country of origin, but they were mostly inconspicuous in terms of substance use and most other potential explanatory variables.

In multivariate analysis assignment to the uHIVinc group remained significantly associated with age 25–34, and versatility, lack of serostatus disclosure, and use of party and sexual performance enhancing drugs during the last anal sex event (see Table 4). The only factors remaining associated with uHIVunk in multivariate analysis were age 35–54, higher number of partners with whom condomless anal sex had been practiced in the last 6 months, and more frequent STI testing in the last 12 months.
Table 4

Multivariate multilevel models to estimate associations between undiagnoseda HIV infection and demographic and behavioural parameters among participants of the Sialon II study

  

Odds Ratio

p-value

[95% Conf. Interval]

uHIVinc (n = 1713)

 Age group

18–24

ref.

   

25–34

2.27

0.04

1.03

4.99

35–44

1.62

0.29

0.67

3.90

45–54

1.37

0.56

0.48

3.96

55+

1.08

0.91

0.26

4.46

 Sexual role with last AI partner

top

ref.

   

bottom

1.12

0.73

0.60

2.07

versatile

2.05

0.01

1.18

3.55

 Type of drugs during last anal sex

no use of ecstasy, cocaine, amphetamine

ref.

   

ecstasy, cocaine, amphetamine

2.22

0.02

1.17

4.21

no use of sexual performance substances (poppers, erectile dysfunction medication)

ref.

   

sexual performance substances (poppers, erectile dysfunction medication)

1.96

0.01

1.17

3.28

 Serostatus disclosure to last AI partner

disclosure

ref.

   

no disclosure

3.94

0.00

2.14

7.27

 _cons

 

0.01

0.00

0.00

0.01

 city

0.40

0.11

1.45

uHIVunk (n = 1639)

 Age group

18–24

ref.

   

25–34

2.00

0.16

0.76

5.27

35–44

3.73

0.01

1.41

9.84

45–54

3.31

0.04

1.08

10.12

55+

0.90

0.93

0.10

7.84

 Number of partners with condomless anal intercourse

no partner

ref.

   

1 partner

1.46

0.38

0.63

3.36

2–3 partners

2.66

0.02

1.17

6.04

4–5 partners

6.08

0.00

2.26

16.40

6–10 partners

2.01

0.38

0.43

9.44

> 10 partners

12.83

0.00

3.60

45.65

 STI testing in last 12 months

no testing

ref.

   

any STI testing

3.61

0.00

1.74

7.50

 _cons

 

0.02

0.00

0.01

0.07

 city

0.00

uHIV (n = 3745)

 Age group

18–24

ref.

   

25–34

2.36

0.00

1.33

4.19

35–44

2.22

0.01

1.19

4.13

45–54

1.90

0.09

0.91

3.94

55+

0.85

0.78

0.27

2.66

 HIV test in last 12 months and knowing the result

not tested

ref.

   

tested and knowing the result

1.51

0.03

1.04

2.19

 Number of partners with condomless anal intercourse

no partner

ref.

   

1 partner

0.85

0.50

0.54

1.35

2–3 partners

1.28

0.30

0.81

2.03

4–5 partners

1.35

0.39

0.68

2.69

6–10 partners

1.56

0.25

0.74

3.29

> 10 partners

2.80

0.01

1.34

5.85

 Type of drugs during last anal sex

no use of sexual performance substances (poppers, erectile dysfunction medication)

ref.

   

sexual performance substances (poppers, erectile dysfunction medication)

1.91

0.00

1.32

2.76

 _cons

 

0.01

0.00

0.01

0.02

 city

 

0.32

0.10

1.01

athe three models estimate associations in three groups:

uHIVinc – undiagnosed HIV in a group of men reporting a last negative HIV test result within the previous 12 months

uHIVunk – undiagnosed HIV in a group of men who never tested for HIV or whose last negative HIV test result is older than 12 months

uHIV – undiagnosed HIV in the combined group of men irrespective of the time of the last negative HIV test

Education, migration status, outness, frequency of visiting gay sex venues in the last 6 months, partnership status, type of partner for the last anal intercourse, condom use during last anal intercourse, and sexual role during last anal intercourse were not significantly different between men with and without undiagnosed HIV infection.

Discussion

Approximately one third of the study participants who were living with HIV and for whom their HIV status knowledge could be assessed were unaware of being infected. This is much higher than proportions reported from some modelling studies or estimates reported to ECDC for Dublin Declaration monitoring [2, 25, 26]. This apparent contradiction is likely explained by an age related effect in our sample: as we can show in our analyses, the proportion of undiagnosed HIV is highly age-dependent. A large proportion of MSM living with HIV in the Western European countries, where the HIV epidemic amongst MSM started already in the 1980s, is already older than 40 years. These higher age groups are underrepresented among the visitors of gay venues that often cater to younger MSM clients. When the different age composition of the Sialon sample and the MSM population in modelling studies are considered, the results in terms of the proportions of undiagnosed infections are essentially comparable [own unpublished comparisons between modelling results of the German undiagnosed fraction and Sialon results for Hamburg]. Contrastingly, in Eastern European countries, where the HIV epidemic among MSM is more recent and the fraction of older infections in aging survivors is much smaller, the Sialon results are comparable with modelling studies [27]. Another aspect that needs to be considered when comparing Sialon II results with national modelling studies is that Sialon II was conducted in large cities while modelling studies include whole countries. Regardless, our findings underline that in many settings where MSM congregate and seek sexual partners, a considerable proportion of those who are living with HIV are unaware of their HIV status.

Our analysis further shows that men with an undiagnosed HIV infection are a heterogeneous group of people. In our European multi-city sample, approximately two-third of those with undiagnosed HIV infection reported to have received a negative HIV test result in the previous 12 months, indicating the relatively recent acquisition of the infection and substantial incidence in this group. Moreover, this subgroup of men appears to test more frequently and be aware of risks. Taking this into account, the probability is high that many of them would have been tested again and diagnosed in the near future. It might also be that some of them tested in the HIV window period and received a false negative test result. To improve early HIV diagnosis in this group, men with these characteristics presenting for HIV testing should be offered laboratory testing with 4th generation HIV antigen/antibody tests to increase the probability to detect recent infections. If sufficient resources are available, even targeted PCR testing could be considered if this subgroup can be identified among the clients of the testing facilities, e.g. based on a combined symptoms and behaviours score [28, 29].

The men with undiagnosed infection following a negative test within the past 12 months had high odds of having used recreational drugs during their last anal sex encounter and high odds of not discussing their HIV status with the last anal sex partner(s) [30]. Because viral load and transmissibility of HIV are very high during the phase of acute HIV infection [3133], many of their recent sexual partners may have been at high risk for acquiring HIV infection if they engaged in condomless anal intercourse relying on an assumed negative HIV status. In the literature, the associations between repeat testing and risk behaviours are complex. Receiving a negative result may trigger different reactions from reassurance in safe practices to feeling lucky or invulnerable, or reinforce risky behaviour that is associated with a subsequent higher frequency of unprotected sex [34].

These findings clearly point to the need of recommending more frequent testing in selected groups of MSM, especially to those using recreational drugs. More importantly, the testers could be considered as primary target group for HIV pre-exposure prophylaxis (PrEP) to avoid HIV infection in the first place, as also suggested by other authors [35].

Approximately one-third of the men with undiagnosed HIV in the Sialon II sample infrequently test for HIV, although they tend to have multiple condomless anal sex encounters. Higher proportions were observed particularly in the four RDS cities, which may suggest that more hidden subgroups within the MSM populations were reached (see also Limitations). This, from a public health perspective, is an advantage of this sampling methodology compared to TLS method and probably to National HIV surveillance systems as well. While the study was not designed to answer the research question on identifying characteristics and behaviours of undiagnosed HIV-infected participants, only number of partners with whom condomless anal intercourse was practiced and more frequent STI testing was associated with the outcome variable (undiagnosed HIV infection) in this group. While age was significantly and independently associated with being undiagnosed in this group, more research will be necessary to characterize MSM living with undiagnosed HIV infection who do not test frequently for this infection in order to develop evidence-based interventions to increase test uptake. However, in the bivariate analysis we also found high odds for having been diagnosed with a STI during the last 12 months in this group. This strongly suggests that contrary to guidelines and recommendations HIV testing had not been offered or not been conducted in the context of these STI diagnoses. We are unable to determine whether this missed opportunity for an earlier diagnosis of HIV is related to a lack of discussion and disclosure of sexual orientation with the STI test and treatment provider or to a lack of compliance with testing guidelines by the STI treatment providers.

Partnership status and type of partner for last anal intercourse were not significantly associated with undiagnosed HIV, suggesting that condomless sex within steady partnerships may not always be as safe as people tend to assume, particularly if HIV status has not been checked mutually and/or if condomless anal sex is practiced concurrently with non-steady partners.

Limitations

For correct interpretation of our findings it must be considered that we report on associations with undiagnosed HIV infections in a very specific group. Factors associated with undiagnosed HIV may partly be different from factors associated with transmission risk, because a part of those who acquire HIV will be diagnosed and detected early. For MSM who infrequently test for HIV it may be difficult to detect behavioural correlates for their infection risk because we asked for behaviours in the previous 6 months. The moment when these men acquired HIV may be longer ago and their behaviour may have changed. MSM who have never been tested for HIV may be underrepresented in our sample. Never tested MSM are often less integrated into gay communities and rarely visit gay venues; this explains why they would have a lower chance to be recruited in our study, at least when considering the cities where a TLS approach has been adopted to enrol study participants [36]. This means that our uHIVunk group may mainly represent pattern 2 testing (triggered by health concerns not immediately related to acute HIV disease or transmission risk awareness) and less pattern 3 testing. A further limitation is that HIV status knowledge was based on self-reports and some participants may have felt uncomfortable reporting their HIV status in the questionnaire. Underreporting of a positive HIV status would have weakened any association we found between being undiagnosed and other factors.

Conclusions

Our study findings reinforce the recommendations for healthcare provider-initiated HIV testing when certain indicator diseases such as STIs are diagnosed. The findings may also inform community-based low-threshold HIV testing strategies such as home-collection sampling and test promotion campaigns to reduce the proportion of the hidden HIV epidemic. Such strategies should include certain elements of information (e.g. on the sensitivity of different tests during acute HIV infection), focus on interpersonal skills and community norms (e.g. communication with sexual partners about serostatus) and highlight additional risks associated with recreational drug use, while recognising the diversity of MSM with undiagnosed HIV across Europe. In addition, novel strategies such as home-testing should be discussed in the light of safeguarding linkage to care [37]. Since data were collected in different European cities, the findings allow for a high degree of tailoring local prevention campaigns, i.e. developing targeted HIV and STI testing campaigns considering the local contexts in both community-based HIV testing and counselling and advice offered at such HIV testing sites [38, 39].

More importantly, tailored strategies based on the established HIV testing patterns should be embedded within an overall combined prevention approach [40], which should include the addition of PrEP to the available effective prevention tools [4042] for instance for those MSM reporting condomless anal sex with multiple partners in the last 6 months.

Abbreviations

AI: 

Anal intercourse

CD4: 

T-helper lymphocytes

CLIA: 

Chemoluminescence-Immunoassay

ECDC: 

European Centre for Disease Prevention and Control

ELISA: 

Enzyme Linked Immuno Sorbent Assay

EU: 

European Union

GHB: 

γ-hydroxybutric acid

HIV Ag/Ab: 

HIV Antigen/Antibody

HIV: 

Human Immunodeficiency Virus

IgG: 

Immunoglobulin G

MSM: 

Men having sex with men

nHIV: 

HIV-uninfected

OF: 

Oral fluid

pHIV: 

Previously diagnosed with HIV infection

PrEP: 

Pre-exposure prophylaxis

RDS: 

Respondent-driven-sampling

STI: 

Sexually transmitted infection

TLS: 

Time-location-sampling

uHIV: 

HIV-infected but as yet undiagnosed

uHIVinc: 

Incident HIV infection - negative test result reported within 12 months before the study specimen was collected

uHIVunk: 

HIV infection of unknown onset

UK: 

United Kingdom

WHO: 

World Health Organization

WHO-ERC: 

WHO Ethics Review Committee

WHO-RP2: 

WHO Research Project Review Panel

Declarations

Acknowledgements

The authors would like to acknowledge the contributions of the Sialon II network which made this study possible, and of all study participants who dedicated their time to fill in the questionnaire and gave a biological specimen for laboratory testing.

The Sialon II Network (extended list).

Massimo Mirandola, Lorenzo Gios, Stefano Benvenuti, Ruth Joanna Davis, Silvana Menichelli, Michele Breveglieri, (Coordinamento Regionale per il Management e la Progettazione Europea, Azienda Ospedaliera Universitaria Integrata, Verona, Italy); Wim Vanden Berghe, Peter de Groot, Christiana Nöstlinger, Veronica van Wijk, Katrien Fransen, Tine Vermoesen, Michiel Vanackere (Institute of Tropical Medicine, ITG, Antwerp, Belgium); Fourat Benchikha, Sandra Van den Eynde, Boris Cruyssaert, Mark Sergeant, Karel Blondeel, Pieter Damen (Sensoa, Antwerp, Belgium); François Massoz, Erwin Carlier (Rainbowhouse Brussels, Belgium); Michael François, Stephen Karon (Ex Aequo, Belgium); Safia Soltani, Thierry Martin (Belgium); Alan De Bruyne (The Belgian Pride, Belgium); Francoise Bocken (Alias, Belgium); Myriam Dieleman (Observatoire du sida et des sexualités, Belgium); Ivailo Alexiev, Reneta Dimitrova, Anna Gancheva, Dobromira Bogeva, Maria Nikolova, Mariya Muhtarova, Todor Kantarjiev, (National Center of Infectious and Parasitic Diseases, Sofia, Bulgaria); Viara Georgieva (National Center of Infectious and Parasitic Diseases, Sofia, Bulgaria; Ministry of Health, Sofia, Bulgaria); Emilia Naseva, Petar Tsintsarski, Hristo Taskov, Tonka Varleva (Program “Prevention and Control of HIV/AIDS”, Ministry of Health, Sofia, Bulgaria); Elena Birindjieva, Aneliya Angelova, Manol Antonov (Association “Health without borders”, Bulgaria); Ulrich Marcus, Susanne Barbara Schink, Sandra Dudareva-Vizule, Matthias an der Heiden, Sami Marzougui, Viviane Bremer, Andrea Kühne, Kerstin Schönerstedt-Zastrau, Ruth Zimmermann (Robert Koch Institute, Berlin, Germany); Andreas Wille (Institut für Hygiene und Umwelt, Hamburg, Germany); Kai Eckstein, Norman Buch, Philipp Moskophidis, Marc Grenz, Danilo Schmogro, (Hein & Fiete, Hamburg, Germany); Giuseppe Cornaglia, Antonella Zorzi, Elisabetta Tonolli, Giuliana Lo Cascio, Teresa Todeschini, Manuela Recchia, Lorella Pattini, Maria Rocca, Alessandra Bighignoli, Anita Galardi, Loredana Martini, Francesco Cobello, Chiara Bovo (Azienda Ospedaliera Universitaria Integrata, Verona, Italy); Giulia Bisoffi, Oscar Bortolami, Laura Crestani (Unità Supporto alla Ricerca e Biostatistica, Azienda Ospedaliera Universitaria Integrata, Verona, Italy); Fabiano Comperini (Italy); Ercole Concia, Emanuela Lattuada, Massimiliano Lanzafame, Paola Del Bravo (Infectious Diseases Section, Department of Pathology-Verona University Hospital - Veneto Region, Verona, Italy); Maddalena Cordioli, Fabio Rigo, Emanuele Guardalben, Ivan Marchesoni (Università degli studi di Verona, Verona, Italy); Barbara Suligoi, Vincenza Regine, Lucia Pugliese (Centro Operativo AIDS, Istituto Superiore di Sanità, Rome, Italy); Saulius Caplinskas, Irma Caplinskiene, Rima Krupenkaite (Centre for Communicable Diseases and AIDS, Vilnius, Lithuania); Gediminas Sargelis, Arturas Rudomanskis, (“Tolerant Youth Association”, Vilnius, Lithuania); Sónia Dias, Ana Gama, Oriana Brás (Global Health and Tropical Medicine, GHTM, Instituto de Higiene e Medicina Tropical, IHMT, Universidade Nova de Lisboa, Portugal); João Piedade (Medical Microbiology Unit, Instituto de Higiene e Medicina Tropical, Lisbon, Portugal); Ricardo Fuertes, Nuno Pinto, João Brito, Júlio Esteves, Jesus Rojas, Fernando Ferreira, Miguel Rocha, Hugo Machado, Maria José Campos, (CheckpointLX, Portugal); Luís Mendão (GAT, Grupo Português de Ativistas sobre Tratamentos de VIH/SIDA – Pedro Santos, Portugal); Magdalena Rosińska, Bożena Kucharczyk, Marta Niedźwiedzka-Stadnik, Łukasz Henszel, Andrzej Zieliński, Michał Czerwiński, (NIZP-PZH, Warsaw, Poland); Michał Pawlęga, Ewelina Burdon, Małgorzata Gajdemska, Agnieszka Guściora, Nikodem Klasik, Katarzyna Rżanek, Michał Sawicki, Michał Tęcza, Ewelina Burdon, Małgorzata Gajdemska, Agnieszka Guściora, Nikodem Klasik, Katarzyna Rżanek, (Lambda Warszawa, Warsaw, Poland); Mateusz Dębski, Anna Maciejewska, Izabela Pazdan (SKA Warsaw, Poland); Izabela Pazdan (SKA, VCT side, Warsaw, Poland); Alexandru Rafila, Daniela Pitigoi, Adrian Abagiu (National Institute for infectious Diseases Prof. Dr. Matei Bals, Bucharest, Romania); Carolina Marin, Ioana Panzariu, Alexandru Miroiu, (ACCEPT Association, Bucharest, Romania); Madalina Popa, Monica Likker (National Institute for infectious Diseases Prof. Dr. Matei Bals, Bucharest, Romania); Maria Georgescu, Galina Musat, Dan Cojocaru, Mihai Lixandru, Raluca Teodorescu (Romanian Anti-AIDS Association – ARAS, Bucharest, Romania); Danica Staneková, Monika Hábeková, Tatiana Drobková, Zuzana Chabadová, Soňa Wimmerova, Maria Mojzesová (Slovak Medical University, NRC for HIV/AIDS prevention, Bratislava, Slovakia); Filip Kunč, Michal Skurák, Peter Bodnar, Katarína Horniaková, Mária Krahulcová, Jarmila Präsensová (Slovakia); Martin Smoleň, Peter Záhradník, Pavol Tibaj (NGO Dúhové srdce, Bratislava, Slovakia); Irena Klavs, Tanja Kustec, Claudia Adamič (National Institute of Public health, Ljubljana, Slovenia); Mario Poljak, Robert Krošelj, Jana Mlakar (Institute of Microbiology and Imunology, Medical faculty, University of Ljubljana, Ljubljana, Slovenia); Miran Šolinc (Association SKUC, Ljubljana, Slovenia); Cinta Folch, Laia Ferrer, Alexandra Montoliu,Jordi Casabona, Anna Esteve, Montserrat Galdon (Centre for Epidemiological Studies on HIV/STI in Catalonia CEEISCAT, Agència de Salut Pública de Catalunya, Barcelona, Spain); Victoria Gonzalez (Microbiology Service, Hospital Universitari Germans Trias i Pujol, Barcelona, Spain); Rafael Muñoz (StopSida, Barcelona, Spain); Maria Axelsson, Torsten Berglund, Sharon Kuhlmann-Berenzon, Achilleas Tsoumanis, Inga Velicko, Christer Janson, Bartek Lindh, Kajsa Aperia (Public Health Agency of Sweden, Stockholm, Sweden); Buddha Babulanam, Hans Carlberg, Malte Davidsson, Nedo Entenza Gutierrez, Viktor Hildingsson, Henrik Klasson, Moises Peña Ramos, Cristian Quintero Rojas, Sven-Olof Sandberg, Andreas Samuelson,Eric Sjöberg, Tommy Sjölund,Simon Svensson, Iván Valencia (Sweden); Filip Garcia, Olov Lindblad (RFSL Stockholm, Sweden); Jon Voss (Stockholm Gay Life, Sweden); Ronnie Ask, Anders Blaxhult, Maarit Maliniemi, (Venhälsan, Stockholm South General Hospital, Stockholm, Sweden); Monica Ideström, Nils Blom (Public Health Agency of Sweden, Stockholm, Sweden); Nigel Sherriff, Christina Panton, Glynis Flood (School of Health Sciences, University of Brighton, Brighton, UK); Katrien Fransen, Tine Vermoesen (Aids reference laboratory, Institute of Tropical Medicine, Antwerp, Belgium); Ross Boseley, Marc Tweed (Terrence Higgins Trust, South, UK); Jonathon Roberts (Claude Nicol Centre, Royal Sussex County Hospital, Brighton, UK); Cinthia Menel Lemos (Executive Agency for Health and Consumers); Paolo Guglielmetti, Wolfgang Philipp, Matthias Schuppe (DG SANTE); Andrew Amato, Irina Dinca, Karin Haar, Anastasia Pharris, Teymur Noori (European Centre for Disease Prevention and Control ECDC); Igor Toskin, Armando Seuc, Natalie Maurer (Department of Reproductive Health & Research of the World Health Organization WHO); Lev Zohrabyan, Alexandrina Iovita, Maddalena Campioni, Patrick Noack (Joint United Nations Programme on HIV/AIDS UNAIDS); Rosanna Peeling (London School of Hygiene and Tropical Medicine); Lisa Johnston (USA).

Availability of data and materials

The self-administered questionnaire filled-in by the study participants is available as Additional file 1. The dataset used for the analysis presented in this manuscript is available as Additional file 2. The Stata syntax of the analysis is available as Additional file 3.

Funding

This document/paper is based on data from the SialonII “Capacity building in combining targeted prevention with meaningful HIV surveillance amongst MSM” project, funded under the European Commission’s (EC) Public Health Programme 2008–2013 (Work Plan 2010), reference number 100880. The sole responsibility lies with the authors of this document/paper and the Commission is not responsible for any use that may be made of the information contained therein. The funder had no role in the design of the study and collection, analysis, and interpretation of data and in writing the manuscript.

Authors’ contributions

Most authors (UM, CN, MR, NS, LG, SFD, AFG, IA, EN, MM) participated in the design of the survey questionnaire and the organisation and implementation of the survey in the survey cities. IT was involved in the conception of the study and in the ethics approval by WHO. This analysis was conceived by UM. Data were analysed by UM, SBS. The first manuscript draft was written by UM. All authors (UM, CN, MR, NS, LG, SFD, AFG, IT, IA, EN, SBS, MM) contributed writing to the second and final draft. All authors approved the final draft.

Ethics approval and consent to participate

The study protocol was approved by the World Health Organization (WHO) Research Project Review Panel (RP2: A65- SIALON II: Capacity building in combining targeted prevention with meaningful HIV surveillance among men who have sex with men (MSM), Multi-country (Europe) protocol) and the WHO Research Ethics Review Committee (WHO-ERC: RPC557 - Capacity building in combining targeted prevention with meaningful HIV surveillance among MSM), and by ethics review committees in all participating countries (see list below). In all countries informed consent was obtained from the study participants. Ethics review committees in most countries required written informed consent from the participants, others such as Sweden and Germany required only verbal informed consent.

Country

City

Date of approval

Number of the doc

Name of the Ethics Committee

Belgium

Brussels

18/3/2013

ITG 860/13

Ethics Committee – University of Antwerp

Bulgaria

Sofia

26/3/2013

Ethics Committee – National Centre of Infectious and Parasitic Diseases Sofia

Germany

Hamburg

28/2/2013

EA1/024/ 13

Ethics Committee – Charité University

Italy

Verona

22/05/2013

Prot.N.25334; N.Prog. 2341

Ethics Committee - Verona University Hospital

Lithuania

Vilnius

14/05/2013

N. 158,200–13–608-188

Regional Ethics Committee Biomedical Research – Vilnius

Poland

Warsaw

18/4/2013

1/2013

Ethics Committee – Warsaw

Portugal

Lisbon

14/6/2013

12–2013-PI

Ethics Committee - Instituto de Higiene e Medicina Tropical

Romania

Bucharest

18/04/2013

C. 1937

Ethics Committee Institute M. Bals – Bucharest

Slovakia

Bratislava

16/05/2013

Ethics Committee of the Slovak Medical University

Slovenia

Ljubljana

16/4/2013

87/04/13

Ethics Committee Republic of Slovenia

Spain

Barcelona

17/4/2013

PI 13014

Ethics Committee – Germans Trias i Pujol Hospital

Sweden

Stockholm

14/5/2013

2013/3:5–2013–05-02

Ethics Committee – Folkhalsomyndigheten

UK

Brighton

26/01/2013

FREGC-13-001.R1

Faculty of Health and Social Science Research Ethics and Governance Committee

Consent for publication

Not applicable.

Competing interests

The authors declare that they have no competing interests.

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Authors’ Affiliations

(1)
Department of Infectious Diseases Epidemiology, Robert Koch-Institute, Berlin, Germany
(2)
Department of Public Health, Institute of Tropical Medicine, Antwerp, Belgium
(3)
Department of Epidemiology, National Institute of Public Health, Warsaw, Poland
(4)
Health Sciences, University of Brighton, Brighton, UK
(5)
Infectious Diseases Section, Department of Diagnostics and Public Health, University of Verona, Verona, Italy
(6)
Escola Nacional de Saúde Pública Universidade, Centro de Investigação em Saúde Pública, Universidade Nova de Lisboa, Lisbon, Portugal
(7)
Instituto de Higiene e Medicina Tropical, Global Health and Tropical Medicine, Universidade Nova de Lisboa, Lisbon, Portugal
(8)
Department of Reproductive Health and Research, World Health Organization, Geneva, Switzerland
(9)
National Centre of Infectious and Parasitic Diseases, National Reference Laboratory of HIV, Sofia, Bulgaria
(10)
Ministry of Health, Program “Prevention and control of HIV/AIDS”, Sofia, Bulgaria

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