Skip to main content

Computational analysis of antibody dynamics identifies recent HIV-1 infection.

Publication ,  Journal Article
Seaton, KE; Vandergrift, NA; Deal, AW; Rountree, W; Bainbridge, J; Grebe, E; Anderson, DA; Sawant, S; Shen, X; Yates, NL; Denny, TN; Liao, H-X ...
Published in: JCI Insight
December 21, 2017

Accurate HIV-1 incidence estimation is critical to the success of HIV-1 prevention strategies. Current assays are limited by high false recent rates (FRRs) in certain populations and a short mean duration of recent infection (MDRI). Dynamic early HIV-1 antibody response kinetics were harnessed to identify biomarkers for improved incidence assays. We conducted retrospective analyses on circulating antibodies from known recent and longstanding infections and evaluated binding and avidity measurements of Env and non-Env antigens and multiple antibody forms (i.e., IgG, IgA, IgG3, IgG4, dIgA, and IgM) in a diverse panel of 164 HIV-1-infected participants (clades A, B, C). Discriminant function analysis identified an optimal set of measurements that were subsequently evaluated in a 324-specimen blinded biomarker validation panel. These biomarkers included clade C gp140 IgG3, transmitted/founder clade C gp140 IgG4 avidity, clade B gp140 IgG4 avidity, and gp41 immunodominant region IgG avidity. MDRI was estimated at 215 day or alternatively, 267 days. FRRs in untreated and treated subjects were 5.0% and 3.6%, respectively. Thus, computational analysis of dynamic HIV-1 antibody isotype and antigen interactions during infection enabled design of a promising HIV-1 recency assay for improved cross-sectional incidence estimation.

Duke Scholars

Altmetric Attention Stats
Dimensions Citation Stats

Published In

JCI Insight

DOI

EISSN

2379-3708

Publication Date

December 21, 2017

Volume

2

Issue

24

Location

United States

Related Subject Headings

  • Time Factors
  • Retrospective Studies
  • Incidence
  • Immunoglobulin G
  • Humans
  • HIV-1
  • HIV Infections
  • HIV Antigens
  • HIV Antibodies
  • Computational Biology
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Seaton, K. E., Vandergrift, N. A., Deal, A. W., Rountree, W., Bainbridge, J., Grebe, E., … Tomaras, G. D. (2017). Computational analysis of antibody dynamics identifies recent HIV-1 infection. JCI Insight, 2(24). https://doi.org/10.1172/jci.insight.94355
Seaton, Kelly E., Nathan A. Vandergrift, Aaron W. Deal, Wes Rountree, John Bainbridge, Eduard Grebe, David A. Anderson, et al. “Computational analysis of antibody dynamics identifies recent HIV-1 infection.JCI Insight 2, no. 24 (December 21, 2017). https://doi.org/10.1172/jci.insight.94355.
Seaton KE, Vandergrift NA, Deal AW, Rountree W, Bainbridge J, Grebe E, et al. Computational analysis of antibody dynamics identifies recent HIV-1 infection. JCI Insight. 2017 Dec 21;2(24).
Seaton, Kelly E., et al. “Computational analysis of antibody dynamics identifies recent HIV-1 infection.JCI Insight, vol. 2, no. 24, Dec. 2017. Pubmed, doi:10.1172/jci.insight.94355.
Seaton KE, Vandergrift NA, Deal AW, Rountree W, Bainbridge J, Grebe E, Anderson DA, Sawant S, Shen X, Yates NL, Denny TN, Liao H-X, Haynes BF, Robb ML, Parkin N, Santos BR, Garrett N, Price MA, Naniche D, Duerr AC, CEPHIA group, Keating S, Hampton D, Facente S, Marson K, Welte A, Pilcher CD, Cohen MS, Tomaras GD. Computational analysis of antibody dynamics identifies recent HIV-1 infection. JCI Insight. 2017 Dec 21;2(24).

Published In

JCI Insight

DOI

EISSN

2379-3708

Publication Date

December 21, 2017

Volume

2

Issue

24

Location

United States

Related Subject Headings

  • Time Factors
  • Retrospective Studies
  • Incidence
  • Immunoglobulin G
  • Humans
  • HIV-1
  • HIV Infections
  • HIV Antigens
  • HIV Antibodies
  • Computational Biology