| Literature DB >> 29090394 |
Andrew Abaasa1, Craig Hendrix2, Monica Gandhi3, Peter Anderson4, Anatoli Kamali5, Freddie Kibengo6, Eduard J Sanders7, Gaudensia Mutua8, Namandjé N Bumpus2, Frances Priddy5, Jessica E Haberer9.
Abstract
Measuring PrEP adherence remains challenging. In 2009-2010, the International AIDS Vaccine Initiative randomized phase II trial participants to daily tenofovir disoproxil fumarate/emtricitabine or placebo in Uganda and Kenya. Adherence was measured by electronic monitoring (EM), self-report (SR), and drug concentrations in plasma and hair. Each adherence measure was categorised as low, moderate, or high and also considered continuously; the incremental value of combining measures was determined. Forty-five participants were followed over 4 months. Discrimination for EM adherence by area under receiver operating curves (AROC) was poor for SR (0.53) and best for hair (AROC 0.85). When combining hair with plasma or hair with self-report, discrimination was improved (AROC > 0.9). Self-reported adherence was of low utility by itself. Hair level was the single best PK measure to predict EM-assessed adherence; the other measurements had lower discrimination values. Combining short-term (plasma) and long-term (hair) metrics could be useful to assess patterns of drug-taking in the context of PrEP.Entities:
Keywords: Hair; Plasma; PrEP drug-taking patterns of adherence electronic monitoring
Mesh:
Substances:
Year: 2018 PMID: 29090394 PMCID: PMC5878836 DOI: 10.1007/s10461-017-1951-y
Source DB: PubMed Journal: AIDS Behav ISSN: 1090-7165
Adherence categories for each of the five adherence metrics
| Adherence level | MEMS | Self-reported doses per week | Plasma TFV-DP (ng/ml) | Hair TFV-DP (ng/mg) |
|---|---|---|---|---|
| Low | 0– < 29% | 0–2 | ≤ 5.9 | ≤ 0.012 |
| Moderate | 29– < 71% | 3–5 | > 5.9– < 52.2 | > 0.012– < 0.038 |
| High | 71–100% | 6–7 | 52.2 + | 0.038 + |
MEMS medication event monitoring system, TFV tenofovir, TFV-DP tenofovir diphosphate
Fig. 1Study profile on randomization and follow up of participants at both Uganda and Kenya sites
Concordance and correlations (Pearson’s coefficients) between non-PK and PK adherence measures among volunteers in Uganda (bold) and Kenya (italics)
| Methods | Agreement | EM | Self-report | Plasma | Hair | ||||
|---|---|---|---|---|---|---|---|---|---|
| CC | N (%) | CC | N (%) | CC | N (%) | CC | N (%) | ||
| EM, N = 45 | Concordant | 1.0 | 1.0 |
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| Discordant (EM > other) |
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| Discordant (EM < other) |
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| Self-report, N = 21 | Concordant |
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| 1.0 | 1.0 |
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| Discordant (SR > other) |
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| Discordant (SR < other) |
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| Plasma, N = 36 | Concordant |
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| − |
| 1.0 | 1.0 |
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| Discordant (plasma > other) |
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| Discordant (plasma < other) |
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| Hair, N = 42 | Concordant |
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| − |
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| 1.0 | 1.0 |
| Discordant (hair < other) |
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| Discordant (hair < other) |
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Data reflect measurements at 8 and 16 weeks of follow-up for a total of 45 assessments in Uganda and 39 in Kenya
EM electronic monitoring, CC correlation coefficient
**Statistically significant p < 0.05
Fig. 2Maximal discrimination between high and moderate or low EM adherence based on a single alternate adherence measure or combinations of adherence measures
Ability of each adherence measure individually or in combination to discriminate among low, moderate, and high electronic monitoring adherence
| Measure | Area under the curve (AROC) 95% CI |
|---|---|
| Single measure | |
| Self-report | 0.54 (0.40–0.69) |
| Plasma | 0.69 (0.52–0.87) |
| Hair | 0.85 (0.74–0.97) |
| Combination of two measures | |
| Self-report + hair | 0.99 (0.85–0.99) |
| Plasma + hair | 0.99 (0.88–0.99) |
| Self-report + plasma | 0.95 (0.79–0.99) |
| Combination of three measures | |
| Self-report + plasma + hair | 0.99 (0.92–0.99) |
Values indicate the C-statistic (area under the curve). Data from both sites were combined due to sample size limitations
Electronic monitoring adherence compared to each of the other adherence measures individually or in combination (adjusting for different measures) using univariate and multivariate linear models
| Measures | Prediction of EM adherence | |
|---|---|---|
| Uganda | Kenya | |
| Adjusted R | Adjusted R | |
| Single measure | ||
| Self-report | 0.0 | 0.0 |
| Plasma | 3.9 | 41.9 |
| Hair | 17.0 | 41.0 |
| Combination of two measures | ||
| Self-report + plasma | 4.1 | 53.0 |
| Self-report + hair | 17.4 | 40.6 |
| Plasma + hair | 16.2 | 61.4 |
| Combination of three measures | ||
| Self-report + plasma + hair | 20.0 | 63.5 |