| Literature DB >> 29029637 |
Seema T Meloni1, Beth Chaplin1, John Idoko2,3, Oche Agbaji2,3, Sulaimon Akanmu4, Godwin Imade2,3, Prosper Okonkwo5, Robert L Murphy6, Phyllis J Kanki7.
Abstract
BACKGROUND: For patients on antiretroviral therapy (ART), treatment interruptions can impact patient outcomes and result in the accumulation of drug resistance mutations leading to virologic failure. There are minimal published data on the impact of an ART stock shortage on development of drug resistance mutations (DRMs). In this report, we evaluate data from patients enrolled in the Government of Nigeria National ART Program that were receiving treatment at the time of a national drug shortage in late 2003.Entities:
Keywords: Antiretroviral therapy; Drug resistance; Drug shortage; Mutations; Nigeria; Unstructured treatment interruption
Mesh:
Substances:
Year: 2017 PMID: 29029637 PMCID: PMC5640939 DOI: 10.1186/s12981-017-0184-5
Source DB: PubMed Journal: AIDS Res Ther ISSN: 1742-6405 Impact factor: 2.250
Baseline demographic and clinical characteristics of included patients
| Total | Drug regimen interruption | p value | ||
|---|---|---|---|---|
| Yes | No | |||
| Sex, n (%) | 0.006 | |||
| Female | 34 (60.7) | 12 (42.9) | 22 (78.6) | |
| Male | 22 (39.3) | 16 (57.1) | 6 (21.4) | |
| Median age (IQR) | 37 (31.5–45.0) | 39.5 (34.5–45.5) | 36.0 (29.5–41.5) | 0.08 |
| Education, n (%) | 0.14 | |||
| Primary | 7 (12.5) | 2 (7.1) | 5 (17.9) | |
| Secondary | 21 (37.5) | 14 (50.0) | 7 (25.0) | |
| Tertiary | 28 (50.0) | 12 (42.9) | 16 (57.1) | |
| Occupation type, n (%) | 0.30 | |||
| Non-income generating | 10 (17.9) | 3 (10.7) | 7 (25.0) | |
| Income-generating | 46 (82.1) | 25 (89.3) | 21 (75.0) | |
| WHO stage at entry | 0.41 | |||
| 1 | 24 (42.9) | 15 (53.6) | 9 (32.1) | |
| 2 | 18 (32.1) | 7 (25.0) | 11 (39.3) | |
| 3 | 12 (21.4) | 5 (17.9) | 7 (25.0) | |
| 4 | 2 (3.6) | 1 (3.6) | 1 (3.6) | |
| Subtype | 0.07 | |||
| A1 | 3 (5.4) | 2 (7.1) | 1 (3.6) | |
| A3 | 1 (1.8) | 0 (0.0) | 1 (3.6) | |
| G | 9 (16.1) | 3 (10.7) | 6 (21.4) | |
| G’ | 15 (26.8) | 4 (14.3) | 11 (39.3) | |
| CRF02_AG | 23 (41.1) | 16 (57.1) | 7 (25.0) | |
| CRF06_cpx | 1 (1.8) | 1 (3.6) | 0 (0.0) | |
| Unknown | 4 (7.1) | 2 (7.1) | 2 (7.1) | |
| CD4+ Count at entry, n (%) (cells/mL) | 0.62 | |||
| < 100 | 14 (25.0) | 8 (28.6) | 6 (21.4) | |
| 100–199 | 17 (30.4) | 9 (32.1) | 8 (28.6) | |
| 200–349 | 15 (26.8) | 8 (28.6) | 7 (25.0) | |
| ≥ 350 | 10 (17.9) | 3 (10.7) | 7 (25.0) | |
| VL at entry, n (%) (cp/mL) | 0.58 | |||
| < 400 (undetectable) | 12 (21.4) | 5 (17.9) | 7 (25.0) | |
| 400-999 | 6 (10.7) | 3 (10.7) | 3 (10.7) | |
| 1000-9999 | 8 (14.3) | 5 (17.9) | 3 (10.7) | |
| 10,000-99,999 | 18 (32.1) | 11 (39.3) | 7 (25.0) | |
| ≥ 100,000 | 12 (21.4) | 4 (14.3) | 8 (28.6) | |
| Days from program entry to sample, median (IQR) | 362 (196–365) | 365 (364–378) | 213 (168–340) | < 0.0001 |
| Days from ART initiation to sample, median (IQR) | 745 (581–1036) | 1036 (986–1107) | 601 (176–704) | < 0.0001 |
| Undetectable VL between program entry and sample dates, n (%) | 15 (26.8) | 6 (21.4) | 9 (32.1) | 0.37 |
| VL at sample date, n (%) (cp/mL) | < 0.001 | |||
| 1000–9999 | 18 (32.1) | 0 (0.0) | 18 (64.3) | |
| 10,000–99,999 | 31 (55.4) | 24 (85.7) | 7 (25.0) | |
| ≥ 100,000 | 7 (12.5) | 4 (14.3) | 3 (10.7) | |
| CD4 count at sample date, median (IQR) | 177 (83–301) | 123 (41–216) | 257 (151–360) | 0.004 |
| Average % adherence entry to sample date*, n (%) | 0.11 | |||
| < 70 | 3 (5.4) | 0 (0.0) | 3 (10.7) | |
| 70–79 | 3 (5.4) | 2 (7.1) | 1 (3.6) | |
| 80–89 | 8 (14.3) | 5 (17.9) | 3 (10.7) | |
| 90–94 | 8 (14.3) | 6 (21.4) | 2 (7.1) | |
| 95–99 | 13 (23.2) | 8 (28.6) | 5 (17.9) | |
| 100 | 21 (37.5) | 7 (25.0) | 14 (50.0) | |
Fig. 1Drug resistance by stock-out status. a DRMs by stock-out status; b Drug resistance to recommended 1L antiretroviral drugs by stock-out status. * Statistically significant difference by stock-out status detected