Expanding behavior pattern sensitivity analysis with model selection and survival analysis
Authored by Casey L Cazer, Victoriya V Volkova, Yrjo T Grohn
Date Published: 2018
DOI: 10.1186/s12917-018-1674-y
Sponsors:
United States Department of Agriculture (USDA)
United States National Institutes of Health (NIH)
Platforms:
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Model Documentation:
Other Narrative
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Abstract
Background: Sensitivity analysis is an essential step in mathematical
modeling because it identifies parameters with a strong influence on
model output, due to natural variation or uncertainty in the parameter
values. Recently behavior pattern sensitivity analysis has been
suggested as a method for sensitivity analyses on models with more than
one mode of output behavior. The model output is classified by behavior
mode and several behavior pattern measures, defined by the researcher,
are calculated for each behavior mode. Significant associations between
model inputs and outputs are identified by building linear regression
models with the model parameters as independent variables and the
behavior pattern measures as the dependent variables. We applied the
behavior pattern sensitivity analysis to a mathematical model of
tetracycline-resistant enteric bacteria in beef cattle administered
chlortetracycline orally. The model included 29 parameters related to
bacterial population dynamics, chlortetracycline pharmacokinetics and
pharmacodynamics. The prevalence of enteric resistance during and after
chlortetracycline administration was the model output. Cox proportional
hazard models were used when linear regression assumptions were not met.
Results: We have expanded the behavior pattern sensitivity analysis
procedure by incorporating model selection techniques to produce
parsimonious linear regression models that efficiently prioritize input
parameters. We also demonstrate how to address common violations of
linear regression model assumptions. Finally, we explore the
semi-parametric Cox proportional hazards model as an alternative to
linear regression for situations with censored data. In the example
mathematical model, the resistant bacteria exhibited three behaviors
during the simulation period: (1) increasing, (2) decreasing, and (3)
increasing during antimicrobial therapy and decreasing after therapy
ceases. The behavior pattern sensitivity analysis identified bacterial
population parameters as high importance in determining the trajectory
of the resistant bacteria population.
Conclusions: Interventions aimed at the enteric bacterial population
ecology, such as diet changes, may be effective at reducing the
prevalence of tetracycline-resistant enteric bacteria in beef cattle.
Behavior pattern sensitivity analysis is a useful and flexible tool for
conducting a sensitivity analysis on models with varied output behavior,
enabling prioritization of input parameters via regression model
selection techniques. Cox proportional hazard models are an alternative
to linear regression when behavior pattern measures are censored or
linear regression assumptions cannot be met.
Tags
Agent-based model
Simulation
Dynamics
survival analysis
Sensitivity Analysis
bacteria
antibiotic resistance
Strategies
Linear regression
Antimicrobial resistance
Beef cattle
Behavior pattern