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Towards a Phylogenetic Measure to Quantify HIV Incidence

  • Pieter Libin
  • , Nassim Versbraegen
  • , Ana B. Abecasis
  • , Perpetua Gomes
  • , Tom Lenaerts
  • , Ann Nowé

Resultado de pesquisa: ???type-name??????researchoutput.researchoutputtypes.contributiontobookanthology.conference???revisão de pares

Resumo

One of the cornerstones in combating the HIV pandemic is the ability to assess the current state and evolution of local HIV epidemics. This remains a complex problem, as many HIV infected individuals remain unaware of their infection status, leading to parts of HIV epidemics being undiagnosed and under-reported. We first present a method to learn epidemiological parameters from phylogenetic trees, using approximate Bayesian computation (ABC). The epidemiological parameters learned as a result of applying ABC are subsequently used in epidemiological models that aim to simulate a specific epidemic. Secondly, we continue by describing the development of a tree statistic, rooted in coalescent theory, which we use to relate epidemiological parameters to a phylogenetic tree, by using the simulated epidemics. We show that the presented tree statistic enables differentiation of epidemiological parameters, while only relying on phylogenetic trees, thus enabling the construction of new methods to ascertain the epidemiological state of an HIV epidemic. By using genetic data to infer epidemic sizes, we expect to enhance our understanding of the portions of the infected population in which diagnosis rates are low.

Idioma original???core.languages.en_GB???
Título da publicação do anfitriãoArtificial Intelligence and Machine Learning - 31st Benelux AI Conference, BNAIC 2019, and 28th Belgian-Dutch Machine Learning Conference, BENELEARN 2019, Revised Selected Papers
EditoresBart Bogaerts, Gianluca Bontempi, Pierre Geurts, Nick Harley, Bertrand Lebichot, Tom Lenaerts, Gilles Louppe
EditoraSpringer Science and Business Media Deutschland GmbH
Páginas34-50
Número de páginas17
ISBN (impresso)9783030651534
DOIs
Estado da publicação???researchoutput.status.published??? - 2020
Evento31st Benelux Conference on Artificial Intelligence, BNAIC 2019 and 28th Belgian Dutch Machine Learning Conference, BENELEARN 2019 - Brussels
Duração: 6 nov. 20198 nov. 2019

Série de publicação

NomeCommunications in Computer and Information Science
Volume1196
ISSN (impresso)1865-0929
ISSN (eletrónico)1865-0937

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???event.eventtypes.event.conference???31st Benelux Conference on Artificial Intelligence, BNAIC 2019 and 28th Belgian Dutch Machine Learning Conference, BENELEARN 2019
País/TerritórioBelgium
CidadeBrussels
Período6/11/198/11/19

ODS da ONU

Este resultado contribui para o(s) seguinte(s) Objetivo(s) de Desenvolvimento Sustentável

  1. ODS 3 - Boa saúde e bem-estar
    ODS 3 Boa saúde e bem-estar

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