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Evaluating the performance of malaria genomics for inferring changes in transmission intensity using transmission modelling

Evaluating the performance of malaria genomics for inferring changes in transmission intensity using transmission modelling

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dc.contributor.author Oliver J Watson
dc.contributor.author Lucy C Okell
dc.contributor.author Joel Hellewell
dc.contributor.author Hannah C Slater
dc.contributor.author H Juliette T Unwin
dc.contributor.author Irene Omedo
dc.contributor.author Philip Bejon
dc.contributor.author Robert W. Snow
dc.contributor.author Abdisalan M Noor
dc.contributor.author Kirk A. Rockett
dc.contributor.author Christina Hubbart
dc.contributor.author Joaniter I. Nankabirwa
dc.contributor.author Bryan Greenhouse
dc.contributor.author Hsiao-Han Chang
dc.contributor.author Azra C. Ghani
dc.contributor.author Robert Verity
dc.date.accessioned 2021-01-11T13:51:58Z
dc.date.available 2021-01-11T13:51:58Z
dc.date.issued 2019
dc.identifier.uri https://combine.alvar.ug/handle/1/49755
dc.description.abstract Abstract Advances in genetic sequencing and accompanying methodological approaches have resulted in pathogen genetics being used in the control of infectious diseases. To utilise these methodologies for malaria we first need to extend the methods to capture the complex interactions between parasites, human and vector hosts, and environment. Here we develop an individual-based transmission model to simulate malaria parasite genetics parameterised using estimated relationships between complexity of infection and age from 5 regions in Uganda and Kenya. We predict that cotransmission and superinfection contribute equally to within-host parasite genetic diversity at 11.5% PCR prevalence, above which superinfections dominate. Finally, we characterise the predictive power of six metrics of parasite genetics for detecting changes in transmission intensity, before grouping them in an ensemble statistical model. The best performing model successfully predicted malaria prevalence with mean absolute error of 0.055, suggesting genetic tools could be used for monitoring the impact of malaria interventions.
dc.publisher Cold Spring Harbor Laboratory
dc.title Evaluating the performance of malaria genomics for inferring changes in transmission intensity using transmission modelling
dc.type Preprint
dc.identifier.doi 10.1101/793554
dc.identifier.mag 2978871426
dc.identifier.lens 126-425-019-392-298
dc.identifier.spage 793554
dc.subject.lens-fields Statistical model
dc.subject.lens-fields Genomics
dc.subject.lens-fields Malaria
dc.subject.lens-fields Predictive power
dc.subject.lens-fields Transmission intensity
dc.subject.lens-fields Transmission (mechanics)
dc.subject.lens-fields DNA sequencing
dc.subject.lens-fields Computational biology
dc.subject.lens-fields Genetic diversity
dc.subject.lens-fields Biology


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