| Literature DB >> 27905895 |
Eran Bendavid1,2, David Stauffer3, Eric Remera4, Sabin Nsanzimana4,5, Steve Kanters6, Edward J Mills6.
Abstract
BACKGROUND: HIV is the leading cause of death among adults in sub-Saharan Africa. However, mortality along the HIV care continuum is poorly described. We combine demographic, epidemiologic, and health services data to estimate where are people with HIV dying along Rwanda's care continuum.Entities:
Keywords: Antiretroviral coverage; Care cascade; Care continuum; HIV; Loss from care; Mortality; Rwanda; Universal test and treat
Mesh:
Substances:
Year: 2016 PMID: 27905895 PMCID: PMC5134104 DOI: 10.1186/s12879-016-2052-7
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Selected model parameters and base case assumptions
| Parameter | Base case value | Uncertainty | Source(s) | |
|---|---|---|---|---|
|
| ||||
| Life expectancy, 2003 | ||||
| Male | 50.9 | World Population Prospects [ | ||
| Female | 52.9 | World Population Prospects [ | ||
| Male circumcision prevalence | 30% | [20–40] | Binagwaho et al. [ | |
| Number of sexual partnerships in 12-month period | 2010 Rwanda DHS [ | |||
| 0 | 56% | +/− 19% | ||
| 1 | 36% | +/− 9% | ||
| 2 | 7% | +/− 2% | ||
| 3+ | 1% | +/− 0.25% | ||
|
| ||||
| HIV testing: annual probability of receiving HIV test | ||||
| 2003–2010 | 20% | 10–30% | Rwanda DHS [ | |
| 2010–2014 | 40% | 35–45% | Nsanzimana [ | |
| Portion of those tested who are connected to care | ||||
| 2003–2010 | 70% | Nsanzimana [ | ||
| 2010–2014 | 90% | Nsanzimana [ | ||
| Rate of loss from pre-ART care | 0.5% monthly | 0.3–0.7% | Nsanzimana [ | |
| ART initiation threshold (CD4 counts, cells/mm3) | ||||
| 2003–2008 | 250 | Nsanzimana [ | ||
| 2008–2014 | 350 | |||
| 2014 | 500 | |||
| Rate of loss to follow-up from ART care | 0.0875% monthly | 0.05–0.125% | Nsanzimana [ | |
| Probability of return after loss from ART care | 25% | 20–30% | Nsanzimana [ | |
|
| ||||
| Age-specific mortality | Yearly | Age-specific nqx | WHO life tables [ | |
| CD4-specific mortality | 6 CD4 bins | Mortality rate by CD4 | 95% CI for each rate | Nsanzimana [ |
| OD-specific risk by CD4 | 6 CD4 bins | Mortality rate by CD4 | 95% CI for each rate | Holmes [ |
| Portion of the population ever tested for HIV, 2010 | ||||
| 2005 | 30% | Rwanda DHS | ||
| 2010 | 65% | Rwanda DHS | ||
| 2013 | 78% | Nsanzimana [ | ||
Fig. 1Panel 1a shows overall prevalence calibration (2003–2013) and projection (2014–2025). Dots and uncertainty bars represent prevalence estimates from UNAIDS (2003 and 2004) and DHS (2005, 2010, and 2013). Red line represents model prevalence, and the shaded area represents 25–75 percentile range from 100 model runs. Panel 1b shows calibration results of prevalence for 5-year age and gender groups. This figure shows that 7 years after the initial model setup, age- and gender-specific prevalence match estimates from the 2010 population-level DHS survey
Fig. 2The proportion of deaths among people with HIV by stage of care. Mortality is high among those unlinked to care in the early years of treatment scale-up, as testing identifies many people with late-stage disease. Over time, the proportion of deaths among those unlinked declines and those LTFU increases. The portion of deaths among those on ART remains stable, though the mix of AIDS-related and non-AIDS-related deaths changes over time
Fig. 3Mortality rate (defined as the number of deaths divided by 1000 person-years lived in the year) among people with HIV. The estimates are age-adjusted by providing an average of the mortality weighted by the proportion of individuals in each 5-year age group for each health state. Each panel contains overall HIV mortality rate (dashed black line, right-hand axis) and the mortality rate in different care continuum groups. The first panel represents the trends assuming base case level of care. Subsequent panels represent the trends with the indicated improvements to HIV care starting in 2014. A combined intervention with improvements to all aspects of HIV care is projected to lead to the greatest reduction in mortality rates