Open Access
Prediction of VRC01 neutralization sensitivity by HIV-1 gp160 sequence features
Craig A Magaret
1
,
David Benkeser
2
,
Bhavesh R Borate
1
,
Lindsay N. Carpp
1
,
Ivelin S. Georgiev
4
,
Ian Setliff
4
,
Adam S. Dingens
5
,
Noah Simon
3
,
Marco Carone
3
,
Christopher Simpkins
1
,
Galit Alter
7
,
Wen-Han Yu
7
,
Michal Juraska
1
,
Paul T. Edlefsen
1
,
Shelly Karuna
1
,
Nyaradzo M. Mgodi
8
,
Srilatha Edugupanti
9
,
3
8
Publication type: Journal Article
Publication date: 2019-04-01
scimago Q1
wos Q1
SJR: 1.503
CiteScore: 7.2
Impact factor: 3.6
ISSN: 1553734X, 15537358
PubMed ID:
30933973
Molecular Biology
Genetics
Computational Theory and Mathematics
Cellular and Molecular Neuroscience
Ecology, Evolution, Behavior and Systematics
Ecology
Modeling and Simulation
Abstract
The broadly neutralizing antibody (bnAb) VRC01 is being evaluated for its efficacy to prevent HIV-1 infection in the Antibody Mediated Prevention (AMP) trials. A secondary objective of AMP utilizes sieve analysis to investigate how VRC01 prevention efficacy (PE) varies with HIV-1 envelope (Env) amino acid (AA) sequence features. An exhaustive analysis that tests how PE depends on every AA feature with sufficient variation would have low statistical power. To design an adequately powered primary sieve analysis for AMP, we modeled VRC01 neutralization as a function of Env AA sequence features of 611 HIV-1 gp160 pseudoviruses from the CATNAP database, with objectives: (1) to develop models that best predict the neutralization readouts; and (2) to rank AA features by their predictive importance with classification and regression methods. The dataset was split in half, and machine learning algorithms were applied to each half, each analyzed separately using cross-validation and hold-out validation. We selected Super Learner, a nonparametric ensemble-based cross-validated learning method, for advancement to the primary sieve analysis. This method predicted the dichotomous resistance outcome of whether the IC50 neutralization titer of VRC01 for a given Env pseudovirus is right-censored (indicating resistance) with an average validated AUC of 0.868 across the two hold-out datasets. Quantitative log IC50 was predicted with an average validated R2 of 0.355. Features predicting neutralization sensitivity or resistance included 26 surface-accessible residues in the VRC01 and CD4 binding footprints, the length of gp120, the length of Env, the number of cysteines in gp120, the number of cysteines in Env, and 4 potential N-linked glycosylation sites; the top features will be advanced to the primary sieve analysis. This modeling framework may also inform the study of VRC01 in the treatment of HIV-infected persons.
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31
Total citations:
31
Citations from 2024:
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(25.81%)
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GOST
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Magaret C. A. et al. Prediction of VRC01 neutralization sensitivity by HIV-1 gp160 sequence features // PLoS Computational Biology. 2019. Vol. 15. No. 4. p. e1006952.
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Magaret C. A., Benkeser D., Williamson B. R., Borate B. R., Carpp L. N., Georgiev I. S., Setliff I., Dingens A. S., Simon N., Carone M., Simpkins C., Montefiori D. C., Alter G., Yu W., Juraska M., Edlefsen P. T., Karuna S., Mgodi N. M., Edugupanti S., Gilbert P. G. Prediction of VRC01 neutralization sensitivity by HIV-1 gp160 sequence features // PLoS Computational Biology. 2019. Vol. 15. No. 4. p. e1006952.
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TY - JOUR
DO - 10.1371/journal.pcbi.1006952
UR - https://dx.plos.org/10.1371/journal.pcbi.1006952
TI - Prediction of VRC01 neutralization sensitivity by HIV-1 gp160 sequence features
T2 - PLoS Computational Biology
AU - Magaret, Craig A
AU - Benkeser, David
AU - Williamson, Brian R.J.
AU - Borate, Bhavesh R
AU - Carpp, Lindsay N.
AU - Georgiev, Ivelin S.
AU - Setliff, Ian
AU - Dingens, Adam S.
AU - Simon, Noah
AU - Carone, Marco
AU - Simpkins, Christopher
AU - Montefiori, David C.
AU - Alter, Galit
AU - Yu, Wen-Han
AU - Juraska, Michal
AU - Edlefsen, Paul T.
AU - Karuna, Shelly
AU - Mgodi, Nyaradzo M.
AU - Edugupanti, Srilatha
AU - Gilbert, Peter G.
PY - 2019
DA - 2019/04/01
PB - Public Library of Science (PLoS)
SP - e1006952
IS - 4
VL - 15
PMID - 30933973
SN - 1553-734X
SN - 1553-7358
ER -
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BibTex (up to 50 authors)
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@article{2019_Magaret,
author = {Craig A Magaret and David Benkeser and Brian R.J. Williamson and Bhavesh R Borate and Lindsay N. Carpp and Ivelin S. Georgiev and Ian Setliff and Adam S. Dingens and Noah Simon and Marco Carone and Christopher Simpkins and David C. Montefiori and Galit Alter and Wen-Han Yu and Michal Juraska and Paul T. Edlefsen and Shelly Karuna and Nyaradzo M. Mgodi and Srilatha Edugupanti and Peter G. Gilbert},
title = {Prediction of VRC01 neutralization sensitivity by HIV-1 gp160 sequence features},
journal = {PLoS Computational Biology},
year = {2019},
volume = {15},
publisher = {Public Library of Science (PLoS)},
month = {apr},
url = {https://dx.plos.org/10.1371/journal.pcbi.1006952},
number = {4},
pages = {e1006952},
doi = {10.1371/journal.pcbi.1006952}
}
Cite this
MLA
Copy
Magaret, Craig A., et al. “Prediction of VRC01 neutralization sensitivity by HIV-1 gp160 sequence features.” PLoS Computational Biology, vol. 15, no. 4, Apr. 2019, p. e1006952. https://dx.plos.org/10.1371/journal.pcbi.1006952.