Linkage of viral sequences among HIV-infected village residents in Botswana: estimation of linkage rates in the presence of missing data.

Linkage analysis is useful in investigating disease transmission dynamics and the effect of interventions on them, but estimates of probabilities of linkage between infected people from observed data can be biased downward when missingness is informative. We investigate variation in the rates at whi...

Full description

Bibliographic Details
Main Authors: Nicole Bohme Carnegie, Rui Wang, Vladimir Novitsky, Victor De Gruttola
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS Computational Biology
Online Access:http://europepmc.org/articles/PMC3886896?pdf=render
id doaj-ce9570987623455cb4e02b8d17e5139e
record_format Article
spelling doaj-ce9570987623455cb4e02b8d17e5139e2020-11-25T02:27:30ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582014-01-01101e100343010.1371/journal.pcbi.1003430Linkage of viral sequences among HIV-infected village residents in Botswana: estimation of linkage rates in the presence of missing data.Nicole Bohme CarnegieRui WangVladimir NovitskyVictor De GruttolaLinkage analysis is useful in investigating disease transmission dynamics and the effect of interventions on them, but estimates of probabilities of linkage between infected people from observed data can be biased downward when missingness is informative. We investigate variation in the rates at which subjects' viral genotypes link across groups defined by viral load (low/high) and antiretroviral treatment (ART) status using blood samples from household surveys in the Northeast sector of Mochudi, Botswana. The probability of obtaining a sequence from a sample varies with viral load; samples with low viral load are harder to amplify. Pairwise genetic distances were estimated from aligned nucleotide sequences of HIV-1C env gp120. It is first shown that the probability that randomly selected sequences are linked can be estimated consistently from observed data. This is then used to develop estimates of the probability that a sequence from one group links to at least one sequence from another group under the assumption of independence across pairs. Furthermore, a resampling approach is developed that accounts for the presence of correlation across pairs, with diagnostics for assessing the reliability of the method. Sequences were obtained for 65% of subjects with high viral load (HVL, n = 117), 54% of subjects with low viral load but not on ART (LVL, n = 180), and 45% of subjects on ART (ART, n = 126). The probability of linkage between two individuals is highest if both have HVL, and lowest if one has LVL and the other has LVL or is on ART. Linkage across groups is high for HVL and lower for LVL and ART. Adjustment for missing data increases the group-wise linkage rates by 40-100%, and changes the relative rates between groups. Bias in inferences regarding HIV viral linkage that arise from differential ability to genotype samples can be reduced by appropriate methods for accommodating missing data.http://europepmc.org/articles/PMC3886896?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Nicole Bohme Carnegie
Rui Wang
Vladimir Novitsky
Victor De Gruttola
spellingShingle Nicole Bohme Carnegie
Rui Wang
Vladimir Novitsky
Victor De Gruttola
Linkage of viral sequences among HIV-infected village residents in Botswana: estimation of linkage rates in the presence of missing data.
PLoS Computational Biology
author_facet Nicole Bohme Carnegie
Rui Wang
Vladimir Novitsky
Victor De Gruttola
author_sort Nicole Bohme Carnegie
title Linkage of viral sequences among HIV-infected village residents in Botswana: estimation of linkage rates in the presence of missing data.
title_short Linkage of viral sequences among HIV-infected village residents in Botswana: estimation of linkage rates in the presence of missing data.
title_full Linkage of viral sequences among HIV-infected village residents in Botswana: estimation of linkage rates in the presence of missing data.
title_fullStr Linkage of viral sequences among HIV-infected village residents in Botswana: estimation of linkage rates in the presence of missing data.
title_full_unstemmed Linkage of viral sequences among HIV-infected village residents in Botswana: estimation of linkage rates in the presence of missing data.
title_sort linkage of viral sequences among hiv-infected village residents in botswana: estimation of linkage rates in the presence of missing data.
publisher Public Library of Science (PLoS)
series PLoS Computational Biology
issn 1553-734X
1553-7358
publishDate 2014-01-01
description Linkage analysis is useful in investigating disease transmission dynamics and the effect of interventions on them, but estimates of probabilities of linkage between infected people from observed data can be biased downward when missingness is informative. We investigate variation in the rates at which subjects' viral genotypes link across groups defined by viral load (low/high) and antiretroviral treatment (ART) status using blood samples from household surveys in the Northeast sector of Mochudi, Botswana. The probability of obtaining a sequence from a sample varies with viral load; samples with low viral load are harder to amplify. Pairwise genetic distances were estimated from aligned nucleotide sequences of HIV-1C env gp120. It is first shown that the probability that randomly selected sequences are linked can be estimated consistently from observed data. This is then used to develop estimates of the probability that a sequence from one group links to at least one sequence from another group under the assumption of independence across pairs. Furthermore, a resampling approach is developed that accounts for the presence of correlation across pairs, with diagnostics for assessing the reliability of the method. Sequences were obtained for 65% of subjects with high viral load (HVL, n = 117), 54% of subjects with low viral load but not on ART (LVL, n = 180), and 45% of subjects on ART (ART, n = 126). The probability of linkage between two individuals is highest if both have HVL, and lowest if one has LVL and the other has LVL or is on ART. Linkage across groups is high for HVL and lower for LVL and ART. Adjustment for missing data increases the group-wise linkage rates by 40-100%, and changes the relative rates between groups. Bias in inferences regarding HIV viral linkage that arise from differential ability to genotype samples can be reduced by appropriate methods for accommodating missing data.
url http://europepmc.org/articles/PMC3886896?pdf=render
work_keys_str_mv AT nicolebohmecarnegie linkageofviralsequencesamonghivinfectedvillageresidentsinbotswanaestimationoflinkageratesinthepresenceofmissingdata
AT ruiwang linkageofviralsequencesamonghivinfectedvillageresidentsinbotswanaestimationoflinkageratesinthepresenceofmissingdata
AT vladimirnovitsky linkageofviralsequencesamonghivinfectedvillageresidentsinbotswanaestimationoflinkageratesinthepresenceofmissingdata
AT victordegruttola linkageofviralsequencesamonghivinfectedvillageresidentsinbotswanaestimationoflinkageratesinthepresenceofmissingdata
_version_ 1724842753568800768