| Literature DB >> 23253095 |
Lawrence Mbuagbaw1, Lehana Thabane, Pierre Ongolo-Zogo, David Yondo, Stephen Noorduyn, Marek Smieja, Lisa Dolovich.
Abstract
BACKGROUND: The benefits of antiretroviral therapy (ART) cannot be experienced if they are not taken as prescribed. Yet, not all causes of non-adherence are dependent on the patient. Having to pay for medication reduces adherence rates. Non- adherence has severe public health implications which must be addressed locally and globally. This paper seeks to describe the trends in adherence rates reported in Cameroon and to investigate the determinants of adherence to ART in the Cameroon Mobile Phone SMS (CAMPS) trial.Entities:
Year: 2012 PMID: 23253095 PMCID: PMC3537690 DOI: 10.1186/1742-6405-9-37
Source DB: PubMed Journal: AIDS Res Ther ISSN: 1742-6405 Impact factor: 2.250
Characteristics of studies reporting adherence to ART in Cameroon
| 2000-2003 | Douala | Cross-sectional retrospective (788) | <50% μ | Scheduled visits attended | 128 | |
| 2002-2003 | Yaoundé | Prospective cohort (60) | 88.7%, (97.5%) | Biological markers, (Self Report) | 51.2 (free for participants) | |
| 2002-2005 | Limbe | Cross-sectional retrospective α (2920) | 10.1% | Scheduled visits attended | 51.2 | |
| 2006 | Yaoundé | Cross-sectional (532) | 56.6% | Self Report β | 12.8 | |
| 2006 | Yaoundé | Prospective cohort (312) | 64% (78%) | Pharmacy data (Self report) | 12.8 | |
| 2006-2007 | Multiple locations | Cross-sectional (3151) | 53.9% | Self report β | 12.8 | |
| 2006-2008 | Yaoundé | Prospective cohort (401) | 61-73% | Self report β | 12.8 | |
| 2007-2008 | Tokombere | Cross-sectional (56) | 95% (80%) | self report β (Pharmacy data) | 0 | |
| 2010 | Dschang | Cross-sectional (356) | 80.2% (48.7) | Self report β (Pharmacy data) | 0 | |
| 2010 | Yaoundé | Cross-sectional (200) | 90.5% | Self report β | 0 |
*Costs vary per regimen, the highest costs are reported.
α Cross- sectional analysis of previously collected data without planning for needs of an investigation.
β All methods in which all information used to measure adherence was obtained by interviewing the participant with either one question or a series of questions.
μ 50% was imputed to represent the trend graphically.
Figure 1Trends in adherence rates to antiretroviral therapy and monthly cost of medication.
Factors associated with adherence to ART in literature reports from Cameroon
| | |
| Female gender | Rougemont et al. (↑) |
| Age>49 years | Newman et al.* (↑); Freeman et al.**(↑) |
| High monthly income | Rougemont et al. (↓); Boyer et al. ([ |
| Education | Freeman et al. (↑)* |
| Binge drinking | Boyer et al. ([ |
| Drug use | Freeman et al.(↓)* |
| Tobacco use | Freeman et al.(↓)* |
| Lack of family support for adherence | Boyer et al. ([ |
| Experiencing discrimination and stigma | Boyer et al. ([ |
| Positive perception of treatment | Roux et al. (↑) |
| Being transferred-in to HIV clinic | Mbopi-Keou (↑) |
| | |
| Switching regimen | Boyer et al. ([ |
| High motivation | Roux et al.(↑) |
| Using a reminder method | Roux et al.(↑) |
| | |
| Satisfaction with information provided by physician | Roux et al.(↑) |
| | |
| Advanced stage of disease | Rougemont et al. (↓); Roux et al.(↑) |
| Increased duration on medication | Roux et al.(↓); Freeman et al.(↑)*Mbopi-Keou (↑) |
| Higher CD4¥ count at initiation of ART β | Mbopi-Keou (↑) |
| | |
| Cost of care/Having to pay for care | Mosoko et al.(↓), Boyer et al. ([ |
| Increased distance from clinic | Mosoko et al. (↓) |
| Large hospital size | Boyer et al. ([ |
| No task shifting from physician to other staff | Boyer et al. ([ |
↓Reduces adherence; ↑increases adherence; * Cohort included participants from Cameroon, Burundi and the Democratic Republic of Congo; ** Cohort included females from Cameroon, Burundi and the Democratic Republic of Congo; ¥ CD4-positive-T-lymphocyte; β Antiretroviral therapy.
Baseline characteristics of participants in the CAMPS trial
| 40.1 (10.10) | |
| | 157 (79.3) |
| | 41 (20.7) |
| | |
| | 147 (73.5) |
| | |
| | 78 (39.0) |
| | 122 (61.0) |
| 180 (90.0) | |
| 62 (31.0) | |
| 25.2 (4.00) | |
| | 4 (2.2) |
| | 90 (48.6) |
| | 91 (49.2) |
| 146 (73.0) | |
| | |
| | 179 (90.9) |
| | 18 (9.1) |
| 28.5 (9.0, 48.0) | |
| 336.0 (200.5,487.7) | |
| | |
| | 90.5 (12.76) |
| | 1.0 (0.00) |
| | 127 (65.1) |
| | 108 (54.0) |
| | |
| | 54 (27.0) |
| | 23 (11.5) |
| | 7 (3.5) |
| | 8 (4.0) |
| | 2 (1.0) |
| | 5 (2.5) |
| | |
| | 127 (63.5) |
| | 43 (21.5) |
| | 30 (15.0) |
| | |
| | 49 (25.7) |
| | 125 (65.4) |
| | 17 (8.5) |
SD: standard deviation; BMI: body mass index; *Centres for Disease Control, § =CDC classifications: A3, B3, C1, C1, C3 [39]; α= 2missing; δ=3 missing; β=15 missing; ε= 10 missing ¥= 9missing; μ= 5 missing.
The reminder methods reported were: personal verbal reminders by individuals, phone alarms, meal times, timing with TV shows and watches.
Figure 2Multivariable analysis using different measures of adherence.