Dynamic causal modelling of immune heterogeneity

Abstract An interesting inference drawn by some COVID-19 epidemiological models is that there exists a proportion of the population who are not susceptible to infection—even at the start of the current pandemic. This paper introduces a model of the immune response to a virus. This is based upon the...

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Main Authors: Thomas Parr, Anjali Bhat, Peter Zeidman, Aimee Goel, Alexander J. Billig, Rosalyn Moran, Karl J. Friston
Format: Article
Language:English
Published: Nature Publishing Group 2021-05-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-91011-x
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spelling doaj-c5a0622510dd4edd9d484209203bee982021-06-06T11:34:54ZengNature Publishing GroupScientific Reports2045-23222021-05-0111111710.1038/s41598-021-91011-xDynamic causal modelling of immune heterogeneityThomas Parr0Anjali Bhat1Peter Zeidman2Aimee Goel3Alexander J. Billig4Rosalyn Moran5Karl J. Friston6Wellcome Centre for Human Neuroimaging, Queen Square Institute of NeurologyWellcome Centre for Human Neuroimaging, Queen Square Institute of NeurologyWellcome Centre for Human Neuroimaging, Queen Square Institute of NeurologyRoyal Stoke University HospitalUCL Ear Institute, University College LondonCentre for Neuroimaging Science, Department of Neuroimaging, IoPPN, King’s College LondonWellcome Centre for Human Neuroimaging, Queen Square Institute of NeurologyAbstract An interesting inference drawn by some COVID-19 epidemiological models is that there exists a proportion of the population who are not susceptible to infection—even at the start of the current pandemic. This paper introduces a model of the immune response to a virus. This is based upon the same sort of mean-field dynamics as used in epidemiology. However, in place of the location, clinical status, and other attributes of people in an epidemiological model, we consider the state of a virus, B and T-lymphocytes, and the antibodies they generate. Our aim is to formalise some key hypotheses as to the mechanism of resistance. We present a series of simple simulations illustrating changes to the dynamics of the immune response under these hypotheses. These include attenuated viral cell entry, pre-existing cross-reactive humoral (antibody-mediated) immunity, and enhanced T-cell dependent immunity. Finally, we illustrate the potential application of this sort of model by illustrating variational inversion (using simulated data) of this model to illustrate its use in testing hypotheses. In principle, this furnishes a fast and efficient immunological assay—based on sequential serology—that provides a (1) quantitative measure of latent immunological responses and (2) a Bayes optimal classification of the different kinds of immunological response (c.f., glucose tolerance tests used to test for insulin resistance). This may be especially useful in assessing SARS-CoV-2 vaccines.https://doi.org/10.1038/s41598-021-91011-x
collection DOAJ
language English
format Article
sources DOAJ
author Thomas Parr
Anjali Bhat
Peter Zeidman
Aimee Goel
Alexander J. Billig
Rosalyn Moran
Karl J. Friston
spellingShingle Thomas Parr
Anjali Bhat
Peter Zeidman
Aimee Goel
Alexander J. Billig
Rosalyn Moran
Karl J. Friston
Dynamic causal modelling of immune heterogeneity
Scientific Reports
author_facet Thomas Parr
Anjali Bhat
Peter Zeidman
Aimee Goel
Alexander J. Billig
Rosalyn Moran
Karl J. Friston
author_sort Thomas Parr
title Dynamic causal modelling of immune heterogeneity
title_short Dynamic causal modelling of immune heterogeneity
title_full Dynamic causal modelling of immune heterogeneity
title_fullStr Dynamic causal modelling of immune heterogeneity
title_full_unstemmed Dynamic causal modelling of immune heterogeneity
title_sort dynamic causal modelling of immune heterogeneity
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-05-01
description Abstract An interesting inference drawn by some COVID-19 epidemiological models is that there exists a proportion of the population who are not susceptible to infection—even at the start of the current pandemic. This paper introduces a model of the immune response to a virus. This is based upon the same sort of mean-field dynamics as used in epidemiology. However, in place of the location, clinical status, and other attributes of people in an epidemiological model, we consider the state of a virus, B and T-lymphocytes, and the antibodies they generate. Our aim is to formalise some key hypotheses as to the mechanism of resistance. We present a series of simple simulations illustrating changes to the dynamics of the immune response under these hypotheses. These include attenuated viral cell entry, pre-existing cross-reactive humoral (antibody-mediated) immunity, and enhanced T-cell dependent immunity. Finally, we illustrate the potential application of this sort of model by illustrating variational inversion (using simulated data) of this model to illustrate its use in testing hypotheses. In principle, this furnishes a fast and efficient immunological assay—based on sequential serology—that provides a (1) quantitative measure of latent immunological responses and (2) a Bayes optimal classification of the different kinds of immunological response (c.f., glucose tolerance tests used to test for insulin resistance). This may be especially useful in assessing SARS-CoV-2 vaccines.
url https://doi.org/10.1038/s41598-021-91011-x
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