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A High HIV-1 Strain Variability in London, UK, Revealed by Full-Genome Analysis: Results from the ICONIC Project

View ORCID ProfileGonzalo Yebra, Dan Frampton, Tiziano Gallo Cassarino, Jade Raffle, Jonathan Hubb, R Bridget Ferns, Zisis Kozlakidis, Andrew Hayward, Paul Kellam, Deenan Pillay, Duncan Clark, Eleni Nastouli, Andrew J. Leigh Brown, on behalf of the ICONIC consortium
doi: https://doi.org/10.1101/139642
Gonzalo Yebra
1Institute of Evolutionary Biology, University of Edinburgh, Edinburgh, UK
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  • For correspondence: Gonzalo.Yebra@ed.ac.uk
Dan Frampton
2UCL Division of Infection and Immunity, Faculty of Medical Sciences, London, UK
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Tiziano Gallo Cassarino
2UCL Division of Infection and Immunity, Faculty of Medical Sciences, London, UK
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Jade Raffle
2UCL Division of Infection and Immunity, Faculty of Medical Sciences, London, UK
3Department of Clinical Virology, UCL Hospital NHS Foundation Trust, London, UK
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Jonathan Hubb
4Department of Virology, Barts Health NHS Trust, London, UK
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R Bridget Ferns
3Department of Clinical Virology, UCL Hospital NHS Foundation Trust, London, UK
5NIHR UCLH/UCL Biomedical Research Centre, London, UK
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Zisis Kozlakidis
2UCL Division of Infection and Immunity, Faculty of Medical Sciences, London, UK
6UCL Institute of Disease Informatics, Farr Institute of Health Informatics Research, London, UK
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Andrew Hayward
7UCL Institute of Epidemiology and Health Care
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Paul Kellam
8Division of Infectious Diseases, Department of Medicine, Imperial College London, UK
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Deenan Pillay
2UCL Division of Infection and Immunity, Faculty of Medical Sciences, London, UK
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Duncan Clark
4Department of Virology, Barts Health NHS Trust, London, UK
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Eleni Nastouli
3Department of Clinical Virology, UCL Hospital NHS Foundation Trust, London, UK
9Department of Population, Policy and Practice, UCL GOS Institute of Child Health, London, UK
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Andrew J. Leigh Brown
1Institute of Evolutionary Biology, University of Edinburgh, Edinburgh, UK
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Abstract

Background & Methods The ICONIC project has developed an automated high-throughput pipeline to generate HIV nearly full-length genomes (NFLG, i.e. from gag to nef) from next-generation sequencing (NGS) data. The pipeline was applied to 420 HIV samples collected at University College London Hospital and Barts Health NHS Trust (London) and sequenced using an Illumina MiSeq at the Wellcome Trust Sanger Institute (Cambridge). Consensus genomes were generated and subtyped using COMET, and unique recombinants were studied with jpHMM and SimPlot. Maximum-likelihood phylogenetic trees were constructed using RAxML to identify transmission networks using the Cluster Picker.

Results The pipeline generated sequences of at least 1Kb of length (median=7.4Kb) for 375 out of the 420 samples (89%), with 174 (46.4%) being NFLG. A total of 365 sequences (169 of them NFLG) corresponded to unique subjects and were included in the down-stream analyses. The most frequent HIV subtypes were B (n=149, 40.8%) and C (n=77, 21.1%) and the circulating recombinant form CRF02_AG (n=32, 8.8%). We found 14 different CRFs (n=66, 18.1%) and multiple URFs (n=32, 8.8%) that involved recombination between 12 different subtypes/CRFs. The most frequent URFs were B/CRF01_AE (4 cases) and A1/D, B/C, and B/CRF02_AG (3 cases each). Most URFs (19/26, 73%) lacked breakpoints in the PR+RT pol region, rendering them undetectable if only that was sequenced. Twelve (37.5%) of the URFs could have emerged within the UK, whereas the rest were probably imported from sub-Saharan Africa, South East Asia and South America. For 2 URFs we found highly similar pol sequences circulating in the UK. We detected 31 phylogenetic clusters using the full dataset: 25 pairs (mostly subtypes B and C), 4 triplets and 2 quadruplets. Some of these were not consistent across different genes due to inter- and intra-subtype recombination. Clusters involved 70 sequences, 19.2% of the dataset.

Conclusions The initial analysis of genome sequences detected substantial hidden variability in the London HIV epidemic. Analysing full genome sequences, as opposed to only PR+RT, identified previously undetected recombinants. It provided a more reliable description of CRFs (that would be otherwise misclassified) and transmission clusters.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted August 29, 2017.
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A High HIV-1 Strain Variability in London, UK, Revealed by Full-Genome Analysis: Results from the ICONIC Project
Gonzalo Yebra, Dan Frampton, Tiziano Gallo Cassarino, Jade Raffle, Jonathan Hubb, R Bridget Ferns, Zisis Kozlakidis, Andrew Hayward, Paul Kellam, Deenan Pillay, Duncan Clark, Eleni Nastouli, Andrew J. Leigh Brown, on behalf of the ICONIC consortium
bioRxiv 139642; doi: https://doi.org/10.1101/139642
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A High HIV-1 Strain Variability in London, UK, Revealed by Full-Genome Analysis: Results from the ICONIC Project
Gonzalo Yebra, Dan Frampton, Tiziano Gallo Cassarino, Jade Raffle, Jonathan Hubb, R Bridget Ferns, Zisis Kozlakidis, Andrew Hayward, Paul Kellam, Deenan Pillay, Duncan Clark, Eleni Nastouli, Andrew J. Leigh Brown, on behalf of the ICONIC consortium
bioRxiv 139642; doi: https://doi.org/10.1101/139642

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