| Literature DB >> 32590964 |
Robert Whittaker1,2, Kelsey K Case3, Øivind Nilsen4, Hans Blystad4, Susan Cowan5, Hilde Kløvstad4, Ard van Sighem6.
Abstract
BACKGROUND: In line with the Joint United Nations Programme on HIV/AIDS (UNAIDS) 90-90-90 target, Norway aims for at least 90% of people living with HIV (PLHIV) to know their HIV-status. We produced current estimates of the number of PLHIV and undiagnosed population in Norway, overall and for six key subpopulations: Norwegian-born men who have sex with men (MSM), migrant MSM, Norwegian-born heterosexuals, migrant Sub-Saharan Africa (SSA)-born heterosexuals, migrant non-SSA-born heterosexuals and people who inject drugs.Entities:
Keywords: AIDS; HIV; Incidence; Norway; Prevalence; Statistical models
Mesh:
Year: 2020 PMID: 32590964 PMCID: PMC7318482 DOI: 10.1186/s12879-020-05178-1
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Input data used for running the ECDC HIV modelling tool and CSAVR tool in Norway
| Model | Input data item | Data source |
|---|---|---|
| ECDC HIV modelling tool | New HIV diagnosesa | National surveillance data from 1987 to 2018 ( |
| New AIDS diagnoses | National surveillance data from 1983 to 1995b ( | |
| New HIV/AIDSc diagnoses | National surveillance data from 1987 to 2018 ( | |
| CD4 count at diagnosis among non-HIV/AIDS diagnoses categorised into four strata (≥500, 350–499, 200–349, < 200) | Default model assumptions on CD4 distribution for whole study period OR Default model assumptions until 2003 and Danish national CD4 count data from 2004 to 2018, adjusted for route of transmission and region of birthd. | |
| All-cause mortality and outmigration | National surveillance data from 1987 to 2018 ( | |
| CSAVR tool | New HIV diagnosesa | National surveillance data from 1987 to 2018 ( |
| AIDS deaths | Adjusted estimates of AIDS-related deaths from 1990 to 2017 ( |
a All new HIV diagnoses, including those with AIDS at first diagnosis b AIDS diagnoses after 1995 were not used because the probability of progressing to AIDS would be affected by the use of combination ART, the effect of which is not incorporated into the model. c HIV diagnosis for which the reported clinical picture was AIDS. d Before 2004, the data completeness for CD4 count in Denmark was < 10%. In 2004 it was 48%, and over 80% from 2009 onwards (88% in 2018). e Data on outcome was known for 14% of HIV diagnoses (n = 759), all of which were reported as dead or out-migrated. f Estimates produced by the Institute of Health Metrics and Evaluation for the Global Burden of Disease Study [26]
ECDC HIV modelling tool results, excluding and including CD4 count proxy from Denmark, Norway, 2018
| Population | Number of new HIV infections (95%CI) | Median number of years from infection to diagnosis (interquartile range) | Number of PLHIVa (95%CI) | Number of undiagnosed HIV infections (95%CI) | Proportion undiagnosed (95%CI) |
|---|---|---|---|---|---|
| Overall | 79 (34–129) | 2.2 (1.1–4.1) | 4964 (4789–5181) | 355 (259–449) | 7.1% (5.3–8.9) |
| Norwegian-born MSM | 9 (5–25) | 1.7 (0.8–3.1) | 1245 (1163–1350) | 45 (30–75) | 3.6% (2.4–5.7) |
| Migrant MSM | 21 (4–36) | 2.0 (1.0–3.7) | 495 (446–568) | 68 (39–111) | 13.7% (8.6–20.1) |
| Norwegian-born heterosexuals | 19 (4–55) | 3.9 (1.9–7.0) | 864 (794–1009) | 134 (81–250) | 15.5% (10.2–24.8) |
| Migrant SSA-born heterosexuals | 13 (5–27) | 1.3 (0.7–2.4) | 1544 (1451–1641) | 35 (21–55) | 2.3% (1.3–3.6) |
| Migrant non-SSA-born heterosexuals | 31 (4–52) | 3.3 (1.6–6.0) | 649 (558–737) | 123 (62–180) | 18.9% (10.7–25.3) |
| PWID | 6 (1–22) | 3.1 (1.5–5.6) | 244 (185–308) | 20 (2–64) | 8.2% (0.8–21.7) |
| Overall | 86 (29–143) | 3.0 (1.5–5.7) | 5080 (4898–5262) | 520 (411–627) | 10.2% (8.3–12.1) |
| Norwegian-born MSM | 13 (5–28) | 1.7 (0.9–3.2) | 1239 (1151–1351) | 52 (33–82) | 4.2% (2.6–6.2) |
| Migrant MSM | 16 (4–35) | 2.0 (1.0–3.9) | 494 (445–558) | 64 (36–103) | 13.0% (8.4–19.0) |
| Norwegian-born heterosexuals | 28 (5–62) | 3.5 (1.7–6.3) | 866 (799–1001) | 138 (91–238) | 16.0% (10.7–24.0) |
| Migrant SSA-born heterosexuals | 28 (10–44) | 4.3 (1.9–8.1) | 1673 (1592–1788) | 162 (105–206) | 9.7% (6.4–12.3) |
| Migrant non-SSA-born heterosexuals | 41 (6–78) | 5.4 (2.7–9.6) | 711 (598–812) | 191 (95–268) | 26.8% (15.9–34.5) |
| PWID | 12 (1–32) | 5.7 (2.7–10.0) | 257 (206–328) | 46 (12–92) | 17.9% (5.9–27.3) |
Overall: 5318 HIV diagnoses in the input data, 41% reported to be infected before migration to Norway; Norwegian-born MSM: 1332; migrant MSM: 465, 33%; Norwegian-born heterosexuals: 814; migrant SSA-born heterosexuals: 1625, 94%; migrant non-SSA-born heterosexuals: 548, 78%; PWID: 414, 12%. We did not model all routes of transmission due to the low number of cases for which another known route of transmission was reported. Thus, the sum of the number of HIV diagnoses in the input data for the key subpopulations does not add up to the overall number of HIV diagnoses in the input data. See Additional file 1, Table A for a breakdown of the input data by region of birth, sex and route of transmission. Also, as estimates are done separately for each key subpopulation, the sum of the number of new infections or undiagnosed infections for the key subpopulations may differ from the corresponding estimates for the overall population. a Excludes diagnoses among persons previously diagnosed in another country who were not reported to have died or out-migrated by the end of 2018. MSM men who have sex with men, SSA Sub-Saharan Africa, PWID people who inject drugs, PLHIV people living with HIV
Fig. 1Number of new HIV diagnoses, and estimated HIV incidence curves, by year, Norway. Dotted line: Input data on new HIV diagnoses used in the models. Dashed line: Estimates of incidence from the ECDC HIV modelling tool using default model assumptions for CD4 distribution. Solid area: 95% confidence interval from the ECDC HIV modelling tool using default model assumptions for CD4 distribution. Solid line: Estimates of incidence from the CSAVR tool. Dotted area: Uncertainty bound from the CSAVR tool
Fig. 2Estimated number of people living with HIV by year using different estimation methods, Norway. Dashed line: ECDC HIV modelling tool using default model assumptions for CD4 distribution. Solid line: Spectrum using the CSAVR tool. Dotted line: Spectrum using incidence estimates from the ECDC HIV modelling tool using default model assumptions for CD4 distribution. Estimates exclude diagnoses among persons previously diagnosed in another country who were not reported to have died or out-migrated by the end of 2018. The Spectrum models incorporate previous positive cases in the PLHIV estimate through the assumption that migrants have the same HIV prevalence as the resident population
Fig. 3Estimated undiagnosed HIV infections overall and by key subpopulation, Norway, 1980–2018. a overall; b among Norwegian-born MSM; c migrant MSM; d Norwegian-born heterosexuals; e migrant SSA-born heterosexuals; f migrant non-SSA-born heterosexuals; g PWID. Dashed line: Estimates of undiagnosed infections from the ECDC HIV modelling tool using default model assumption for CD4 distribution. Solid area: 95% confidence interval from the ECDC HIV modelling tool using default model assumption for CD4 distribution. Solid line: Estimates of undiagnosed infections from the ECDC HIV modelling tool including the Danish CD4 proxy. Dotted area: 95% confidence interval from the ECDC HIV modelling tool including the Danish CD4 proxy. MSM = men who have sex with men. SSA = Sub-Saharan Africa. PWID = people who inject drugs