Smith2016-Combination therapy to prevent bacterial coinfection during influenza.

Model Identifier
MODEL1812040005
Short description
Secondary bacterial infections (SBIs) exacerbate influenza-associated disease and mortality. Antimicrobial agents can reduce the severity of SBIs, but many have limited efficacy or cause adverse effects. Thus, new treatment strategies are needed. Kinetic models describing the infection process can help determine optimal therapeutic targets, the time scale on which a drug will be most effective, and how infection dynamics will change under therapy. To understand how different therapies perturb the dynamics of influenza infection and bacterial coinfection and to quantify the benefit of increasing a drug’s efficacy or targeting a different infection process, I analyzed data from mice treated with an antiviral, an antibiotic, or an immune modulatory agent with kinetic models. The results suggest that antivirals targeting the viral life cycle are most efficacious in the first 2 days of infection, potentially because of an improved immune response, and that increasing the clearance of infected cells is important for treatment later in the infection. For a coinfection, immunotherapy could control low bacterial loads with as little as 20 % efficacy, but more effective drugs would be necessary for high bacterial loads. Antibiotics targeting bacterial replication and administered 10 h after infection would require 100 % efficacy, which could be reduced to 40 % with prophylaxis. Combining immunotherapy with antibiotics could substantially increase treatment success. Taken together, the results suggest when and why some therapies fail, determine the efficacy needed for successful treatment, identify potential immune effects, and show how the regulation of underlying mechanisms can be used to design new therapeutic strategies. Model is encoded by Ruby and submitted to BioModels by Ahmad Zyoud
Format
SBML
(L2V4)
Related Publication
-
Quantifying the therapeutic requirements and potential for combination therapy to prevent bacterial coinfection during influenza.
- Smith AM
- Journal of pharmacokinetics and pharmacodynamics , 4/ 2017 , Volume 44 , Issue 2 , pages: 81-93 , PubMed ID: 27679506
- Department of Infectious Diseases, St. Jude Children's Research Hospital, Memphis, TN, 38105, USA. amber.smith@stjude.org.
- Secondary bacterial infections (SBIs) exacerbate influenza-associated disease and mortality. Antimicrobial agents can reduce the severity of SBIs, but many have limited efficacy or cause adverse effects. Thus, new treatment strategies are needed. Kinetic models describing the infection process can help determine optimal therapeutic targets, the time scale on which a drug will be most effective, and how infection dynamics will change under therapy. To understand how different therapies perturb the dynamics of influenza infection and bacterial coinfection and to quantify the benefit of increasing a drug's efficacy or targeting a different infection process, I analyzed data from mice treated with an antiviral, an antibiotic, or an immune modulatory agent with kinetic models. The results suggest that antivirals targeting the viral life cycle are most efficacious in the first 2 days of infection, potentially because of an improved immune response, and that increasing the clearance of infected cells is important for treatment later in the infection. For a coinfection, immunotherapy could control low bacterial loads with as little as 20 % efficacy, but more effective drugs would be necessary for high bacterial loads. Antibiotics targeting bacterial replication and administered 10 h after infection would require 100 % efficacy, which could be reduced to 40 % with prophylaxis. Combining immunotherapy with antibiotics could substantially increase treatment success. Taken together, the results suggest when and why some therapies fail, determine the efficacy needed for successful treatment, identify potential immune effects, and show how the regulation of underlying mechanisms can be used to design new therapeutic strategies.
Contributors
Submitter of the first revision: Sarubini Kananathan
Submitter of this revision: Ahmad Zyoud
Modellers: Sarubini Kananathan, Ahmad Zyoud
Submitter of this revision: Ahmad Zyoud
Modellers: Sarubini Kananathan, Ahmad Zyoud
Metadata information
is (1 statement)
isDescribedBy (1 statement)
hasTaxon (1 statement)
hasProperty (6 statements)
occursIn (1 statement)
isDescribedBy (1 statement)
hasTaxon (1 statement)
hasProperty (6 statements)
Mathematical Modelling Ontology
Ordinary differential equation model
OMIT 0027719
NCIt Antiviral Agent
NCIt Influenza
NCIt Immunotherapy
OMIT 0027719
NCIt Antiviral Agent
NCIt Influenza
NCIt Immunotherapy
occursIn (1 statement)
Curation status
Non-curated
Modelling approach(es)
Tags
Connected external resources
Name | Description | Size | Actions |
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Model files |
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Smith2016.xml | SBML L2V4 Smith2016-Combination therapy to prevent bacterial coinfection during influenza. | 34.93 KB | Preview | Download |
Additional files |
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Model.xml | SBML L2V4 Smith2016-Combination therapy to prevent bacterial coinfection during influenza_Orignal | 15.63 KB | Preview | Download |
Smith2016.cps | COPASI version 4.27 (Build 217) Smith2016-Combination therapy to prevent bacterial coinfection during influenza. | 78.31 KB | Preview | Download |
V3.cps | Copasi file for the model | 52.93 KB | Preview | Download |