MGDrivE 2: A simulation framework for gene drive systems incorporating seasonality and epidemiological dynamics.

Interest in gene drive technology has continued to grow as promising new drive systems have been developed in the lab and discussions are moving towards implementing field trials. The prospect of field trials requires models that incorporate a significant degree of ecological detail, including param...

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Main Authors: Sean L Wu, Jared B Bennett, Héctor M Sánchez C, Andrew J Dolgert, Tomás M León, John M Marshall
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2021-05-01
Series:PLoS Computational Biology
Online Access:https://journals.plos.org/ploscompbiol/article/file?id=10.1371/journal.pcbi.1009030&type=printable
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author Sean L Wu
Jared B Bennett
Héctor M Sánchez C
Andrew J Dolgert
Tomás M León
John M Marshall
author_facet Sean L Wu
Jared B Bennett
Héctor M Sánchez C
Andrew J Dolgert
Tomás M León
John M Marshall
author_sort Sean L Wu
collection DOAJ
description Interest in gene drive technology has continued to grow as promising new drive systems have been developed in the lab and discussions are moving towards implementing field trials. The prospect of field trials requires models that incorporate a significant degree of ecological detail, including parameters that change over time in response to environmental data such as temperature and rainfall, leading to seasonal patterns in mosquito population density. Epidemiological outcomes are also of growing importance, as: i) the suitability of a gene drive construct for release will depend on its expected impact on disease transmission, and ii) initial field trials are expected to have a measured entomological outcome and a modeled epidemiological outcome. We present MGDrivE 2 (Mosquito Gene Drive Explorer 2): a significant development from the MGDrivE 1 simulation framework that investigates the population dynamics of a variety of gene drive architectures and their spread through spatially-explicit mosquito populations. Key strengths and fundamental improvements of the MGDrivE 2 framework are: i) the ability of parameters to vary with time and induce seasonal population dynamics, ii) an epidemiological module accommodating reciprocal pathogen transmission between humans and mosquitoes, and iii) an implementation framework based on stochastic Petri nets that enables efficient model formulation and flexible implementation. Example MGDrivE 2 simulations are presented to demonstrate the application of the framework to a CRISPR-based split gene drive system intended to drive a disease-refractory gene into a population in a confinable and reversible manner, incorporating time-varying temperature and rainfall data. The simulations also evaluate impact on human disease incidence and prevalence. Further documentation and use examples are provided in vignettes at the project's CRAN repository. MGDrivE 2 is freely available as an open-source R package on CRAN (https://CRAN.R-project.org/package=MGDrivE2). We intend the package to provide a flexible tool capable of modeling gene drive constructs as they move closer to field application and to infer their expected impact on disease transmission.
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spelling doaj-art-511e76bc633046a8912d9f5eb5d1c5082025-08-20T02:01:04ZengPublic Library of Science (PLoS)PLoS Computational Biology1553-734X1553-73582021-05-01175e100903010.1371/journal.pcbi.1009030MGDrivE 2: A simulation framework for gene drive systems incorporating seasonality and epidemiological dynamics.Sean L WuJared B BennettHéctor M Sánchez CAndrew J DolgertTomás M LeónJohn M MarshallInterest in gene drive technology has continued to grow as promising new drive systems have been developed in the lab and discussions are moving towards implementing field trials. The prospect of field trials requires models that incorporate a significant degree of ecological detail, including parameters that change over time in response to environmental data such as temperature and rainfall, leading to seasonal patterns in mosquito population density. Epidemiological outcomes are also of growing importance, as: i) the suitability of a gene drive construct for release will depend on its expected impact on disease transmission, and ii) initial field trials are expected to have a measured entomological outcome and a modeled epidemiological outcome. We present MGDrivE 2 (Mosquito Gene Drive Explorer 2): a significant development from the MGDrivE 1 simulation framework that investigates the population dynamics of a variety of gene drive architectures and their spread through spatially-explicit mosquito populations. Key strengths and fundamental improvements of the MGDrivE 2 framework are: i) the ability of parameters to vary with time and induce seasonal population dynamics, ii) an epidemiological module accommodating reciprocal pathogen transmission between humans and mosquitoes, and iii) an implementation framework based on stochastic Petri nets that enables efficient model formulation and flexible implementation. Example MGDrivE 2 simulations are presented to demonstrate the application of the framework to a CRISPR-based split gene drive system intended to drive a disease-refractory gene into a population in a confinable and reversible manner, incorporating time-varying temperature and rainfall data. The simulations also evaluate impact on human disease incidence and prevalence. Further documentation and use examples are provided in vignettes at the project's CRAN repository. MGDrivE 2 is freely available as an open-source R package on CRAN (https://CRAN.R-project.org/package=MGDrivE2). We intend the package to provide a flexible tool capable of modeling gene drive constructs as they move closer to field application and to infer their expected impact on disease transmission.https://journals.plos.org/ploscompbiol/article/file?id=10.1371/journal.pcbi.1009030&type=printable
spellingShingle Sean L Wu
Jared B Bennett
Héctor M Sánchez C
Andrew J Dolgert
Tomás M León
John M Marshall
MGDrivE 2: A simulation framework for gene drive systems incorporating seasonality and epidemiological dynamics.
PLoS Computational Biology
title MGDrivE 2: A simulation framework for gene drive systems incorporating seasonality and epidemiological dynamics.
title_full MGDrivE 2: A simulation framework for gene drive systems incorporating seasonality and epidemiological dynamics.
title_fullStr MGDrivE 2: A simulation framework for gene drive systems incorporating seasonality and epidemiological dynamics.
title_full_unstemmed MGDrivE 2: A simulation framework for gene drive systems incorporating seasonality and epidemiological dynamics.
title_short MGDrivE 2: A simulation framework for gene drive systems incorporating seasonality and epidemiological dynamics.
title_sort mgdrive 2 a simulation framework for gene drive systems incorporating seasonality and epidemiological dynamics
url https://journals.plos.org/ploscompbiol/article/file?id=10.1371/journal.pcbi.1009030&type=printable
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