| Literature DB >> 32033571 |
Nontokozo D Matume1, Denis M Tebit1,2, Pascal O Bessong3.
Abstract
BACKGROUND: Entry inhibitors, such as Maraviroc, hold promise as components of HIV treatment and/or pre-exposure prophylaxis in Africa. Maraviroc inhibits the interaction between HIV Envelope gp120 V3-loop and CCR5 coreceptor. HIV-1 subtype C (HIV-1-C) is predominant in Southern Africa and preferably uses CCR5 co-receptor. Therefore, a significant proportion of HIV-1-C CXCR4 utilizing viruses (X4) may compromise the effectiveness of Maraviroc. This analysis examined coreceptor preferences in early and chronic HIV-1-C infections across Africa.Entities:
Keywords: Africa; Chronic infections; Co-receptor tropism; Early infections; HIV-1 subtype C
Year: 2020 PMID: 32033571 PMCID: PMC7006146 DOI: 10.1186/s12981-020-0263-x
Source DB: PubMed Journal: AIDS Res Ther ISSN: 1742-6405 Impact factor: 2.250
Fig. 1Flow chart illustrating the study procedure: sequence extraction, categorization, co-receptor prediction and diversity analysis
Co-receptor prediction using sequences from African HIV-1 subtype C early (< 6 months of seroconversion) and chronically (> 6 months of seroconversion) infected individuals
| African countries | Predicted biotype | |||||
|---|---|---|---|---|---|---|
| Early | Chronic | |||||
| Total (%) | X4 (%) | R5 (%) | Total (%) | X4 (%) | R5 (%) | |
| Total sequences analyzed | 6316 | 518 (8.2%; 95% CI 0.7–9.3) | 5798 (91.8%; 95% CI 90.7–99.3) | 7338 | 612 (8.34%; 95% CI 2.4–16.2) | 6726 (91.7%; 95% CI 84.8–97.5) |
| Botswana (BW) | 1401 (22.2) | 68 (4.9) | 1333 (95.1) | 1604 (21.9) | 96 (6) | 1508 (94) |
| Burundi (BI) | NA | NA | NA | 4 (0.05) | 0 | 4 (100) |
| Congo (CD) | NA | NA | NA | 18 (0.25) | 0 | 18 (100) |
| Ethiopia (ET) | 20 (0.32) | 3 (15) | 17 (85) | 164 (2.2) | 56 (34) | 108 (66) |
| Gabon (GA) | NA | NA | NA | 2 (0.03) | 0 | 2 (100) |
| Gambia (GM) | NA | NA | NA | 3 (0.04) | 1 (33.3) | 2 (66.6) |
| Guinea-Bissau (GW) | NA | NA | NA | 7 (0.1) | 0 | 7 (100) |
| Kenya (KE) | 2 (0.03) | 0 | 2 (100) | 12 (0.2) | 0 | 12 (100) |
| Malawi (MW) | 2100 (33.2) | 339 (16.1) | 1761 (83.9) | 2591 (35.3) | 164 (6.3) | 2427 (93.7) |
| Rwanda (RW) | 109 (3) | 0 | 109 (100) | 8 (0.1) | 0 | 8 (100) |
| Senegal (SN) | 3 (0.06) | 0 | 3 (100) | NA | NA | NA |
| South Africa (ZA) | 1246 (19.7) | 59 (4.7) | 1187 (95.3) | 1151 (15.7) | 121 (10.5) | 1030 (89.5) |
| Tanzania (TZ) | 86 (1.4) | 5 (5.8) | 81 (94.2) | 376 (5.1) | 62 (16.5) | 314 (83.5) |
| Zambia (ZM) | 1345 (21.3) | 44 (3.3) | 1301 (96.7) | 1353 (18.4) | 100 (7.4) | 1253 (92.6) |
| Zimbabwe (ZW) | 4 (0.06) | 0 | 4 (100) | 44 (0.6) | 12 (26) | 32 (74) |
| Uganda (UG) | NA | NA | NA | 1 (0.01) | 0 | 1 (100) |
NA not available
Co-receptor prediction using sequences from HIV-1 subtype C mother-to-child and heterosexual transmissions
| Predicted biotype | ||||||
|---|---|---|---|---|---|---|
| Early | Chronic | |||||
| Total (%) | X4 (%) | R5 (%) | Total (%) | X4 (%) | R5 (%) | |
| Mother-to-child transmission | ||||||
| Total sequence | 1052 | 46 (4.4%; 95% CI − 1.5 to 6.5) | 1006 (95.6%; 95% CI 93.5, 101.5) | 2115 | 143 (6.8%; 95% CI − 10.9 to 31.5) | 1972 (93.2%; 95% CI 68.5–110.9) |
| Malawi (MW) | 691 (65.6) | 41 (5.9) | 650 (94.1) | 1693 (80) | 63 (3.7) | 1630 (96.3) |
| South Africa (ZA) | 11 (1.1) | 0 | 11 (100) | 151 (7.1) | 61 (40.4) | 90 (59.6) |
| Tanzania (TZ) | 49 (4.7) | 3 (6.1) | 46 (93.9) | 1 (0.04) | 0 | 1 (100) |
| Zambia (ZM) | 297 (28.2) | 2 (0.7) | 295 (99.3) | 263 (12.4) | 19 (7.2) | 244 (92.8) |
| Zimbabwe (ZW) | 4 (0.4) | 0 | 4 (100) | 7 (0.33) | 0 | 7 (100) |
| Heterosexual transmission | ||||||
| Total sequences analyzed | 3289 | 385 (11.7%; 95% CI − 1.8 to 13.9) | 2904 (88.3%; 95% CI 86.4–101.8) | 2480 | 231 (9.3%; 95% CI − 0.9 to 13.5) | 2249 (90.7%; 95% CI 86.5–100.9) |
| Botswana (BW) | 29 (0.9) | 1 (3.4) | 28 (96.6) | 4 (0.16) | 0 | 4 (100) |
| Ethiopia (ET) | 1 (0.03) | 0 | 1 (100) | 10 (0.4) | 0 | 10 (100) |
| Kenya (KE) | 1 (0.03) | 0 | 1 (100) | 22 (0.7) | 0 | 22 (100) |
| Malawi (MW) | 1237 (37.6) | 274 (28.5) | 963 (71.5) | 856 (34.3) | 89 (11) | 762 (89) |
| Rwanda (RW) | 96 (2.9) | 0 | 96 (100) | 6 (0.2) | 0 | 6 (100) |
| South Africa (ZA) | 927 (28.2) | 66 (7.1) | 861 (92.9) | 506 (20.4) | 19 (3.6) | 487 (96.4) |
| Tanzania (TZ) | 36 (1.1) | 2 (5.5) | 34 (94.5) | 174 (7) | 55 (32.4) | 119 (67.6) |
| Uganda (UG) | NA | NA | NA | 1 (0.04) | 0 | 1 (100) |
| Zambia (ZM) | 962 (29.3) | 42 (4.4) | 920 (95.6) | 875 (35.3) | 61 (7) | 814 (93) |
| Zimbabwe (ZW) | NA | NA | NA | 26 (1) | 2 (8.3) | 24 (91.7) |
NA not available
Co-receptor prediction using sequences from HIV-1 subtype C slow and rapid progressors during early and chronic infections
| Predicted biotype | ||||||
|---|---|---|---|---|---|---|
| Early | Chronic | |||||
| Total (%) | X4 (%) | R5 (%) | Total (%) | X4 (%) | R5 (%) | |
| Slow progressors | ||||||
| Total sequences | 145 | 0 (0) | 145 (100) | 158 | 2 (1.3) | 156 (98.7) |
| South Africa (ZA) | 63 (43.4) | 0 (0) | 63 (100) | 158 (100) | 2 (1.3) | 156 (98.7) |
| Zambia (ZM) | 82 (56.6) | 0 (0) | 82 (100) | NA | NA | NA |
| Rapid progressors | ||||||
| Total sequences | 169 | 0 (0) | 169 (100) | 141 | 55 (39) | 86 (61) |
| South Africa (ZA) | 97 (57.4) | 0 (0) | 97 (100) | 141 (100) | 55 (39) | 86 (61) |
| Zambia (ZM) | 72 (42.6 | 0 (0) | 72 (100) | NA | NA | NA |
95% confidence intervals for all the prevalences were zero
NA not available
HIV-1 subtype C V3 loop N-glycosylation site and V3 loop crown motif variation in African countries
| Country | % of sequences that lost N-glycosylation site | |||
|---|---|---|---|---|
| Early | Chronic | |||
| R5 | X4 | R5 | X4 | |
| Zambia (ZM) | 4.5 | 17.2 | 5 | 30 |
| South Africa (ZA) | 0.1 | 18.4 | 0.7 | 6.2 |
| Tanzania (TZ) | 0 | 0 | 0 | 0 |
| Malawi (MW) | 1.1 | 0 | 1.3 | 22.7 |
| Ethiopia (ET) | 6 | 67 | 1.7 | 46.9 |
| Botswana (BW) | 4 | 0 | 2 | 3 |
| Variation at the GPGQ Crown motif (%) | ||||
| Zambia (ZM) | 0 | → RPGQ (1.8) → GPRQ (1.8) | → GPGR (0.2) → RPRQ (0.4) → RPGQ (0.5) → GPEQ (0.07) | → GPGR (1.25) → RPGQ (6.3) |
| South Africa (ZA) | → GPGK (0.1) → GPGR (0.1) | 0 | → GPGR (0.09) → GPGT (0.9) → GPGI (0.19) | → GPGY (27.4) → GPGA (10.6) → GRGQ (7.1) → GPGT (4.4) → GRGQ (5.3) → GPGH (1.8) → GPRQ (1.8) → GPGL (0.9) → GQRQ (0.9) |
| Tanzania (TZ) | 0 | 0 | → GPGH (0.3) → GLGQ (1.1) → GSGQ (0.6) | 0 |
| Malawi (MW) | 0 | → GPGK (9.2) → GPGR (1.2) | → GPGR (0.6) → GPGK (0.5) → GPGH (0.08) → EPGQ (0.04) → GRGH (0.04) → RPGQ (0.04) | → GPGK (7.6) → RPGQ (0.8) → GSGQ (0.8) |
| Ethiopia (ET) | 0 | 0 | → GPRT (1.7) → RPRQ (1.7) | → GPGH (43.8) → GRGQ (18.8) |
| Botswana (BW) | → GPGK (0.15) | → GPGK (35.8) → GPGR (40.3) | → GPGR (0.6) → RPGQ (0.3) → GQGQ (0.06) → GPGP (0.06) → GGGK (0.8) | → GPGR (77) → GPGK (22.6) |
Fig. 2Inter-country variation within the V3 region of subtype HIV-1-C R5 and X4 viruses in early and chronic infection. a–d Are entropy plots for variations at each amino acid position for the different African countries
Fig. 3Amino acid alignment of 126 representative sequences of early and chronic R5 and X4 infections. Highlighted areas (blue) indicate the N-glycosylation site and the V3 loop crown motive
V3 loop amino acid diversity (amino acid length, deletions, insertions, net charge) of X4 and R5 viruses in early and chronic infections
| Country | Early X4/R5 | Chronic X4/R5 | ||||||
|---|---|---|---|---|---|---|---|---|
| AA length | Deletion position | Insertion position | AA net positive charge | AA length | Deletion position | Insertion position | AA net positive charge | |
| Zambia (ZM) | 34–35/35 | 24/None | None/none | 4–8/2–6 | 35/35 | None/none | None/none | 1–6/1–6 |
| South Africa (ZA) | 34–35/36 | 10, 23/22 | None/9–10 | 4–8/2–6 | 34–37/34–35 | 22/22 | 7–8, 9–10, 13–14/none | 4–10/2–6 |
| Tanzania (TZ) | 34–35/34–35 | 22, 24/22, 24 | None/none | 3–6/2–6 | 34–35/34–35 | 25/22, 23 | None/none | 4–6/1–6 |
| Malawi (MW) | 34–35/34–35 | 24/24 | None/none | 3–5/3–5 | 34–35/34–38 | 22, 25/24 | None/13–14, 14–15 | 2–7/2–6 |
| Ethiopia (ET) | 35/35 | None/none | None/none | 4–6/2–5 | 35–37/35 | None/none | 12–13/none | 3–8/0–6 |
| Botswana (BW) | 35/35 | None/none | None/none | 3–6/1–6 | 34–35/34–37 | 22/22 | None/13–14 | 2–6/1–6 |
Fig. 4Neigbour joining phylogenetic tree of 126 representative sequences of early and chronic R5 and X4 infections from 6 African countries. Majority of these sequences cluster based on predicted biotypes
Current registration and recommended use of Maraviroc in African countries
| African countries | Year of registration (Registering authority) | Recommendation in treatment guidelines/remarks | URL links |
|---|---|---|---|
| South Africa | 2013 (Medicines Control Council) | Not included in the national treatment guidelines, but the Southern African HIV Clinicians Society recommends its use as salvage therapy | Accessed 20 Jan 2020 Accessed 14 Jan 2020 |
| Tanzania | Information on registration or of the registering authority is not available | Recommended in the national treatment guidelines as a component in third line treatment by the Ministry of Health, Community Development, Gender, Elderly, and Children | Accessed 14 Jan 2020 |
| Uganda | 2008 (National drug register of Uganda Human Medicines) | Currently not recommended in the national treatment guidelines | Accessed 14 Jan 2020 |
| Zambia | Information on registration or the registering authority is not available | Recommended in the national treatment guidelines as a component in third line treatment by the Ministry of Health | Accessed 14 Jan 2020 |
In these four countries, a specialist committee recommends the use of maraviroc based on HIV drug resistance genotyping data for virologic failure, and HIV tropism test