Prediction of fitness in bacteria with causal jump dynamic mode decomposition

2020 AMERICAN CONTROL CONFERENCE (ACC)(2020)

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摘要
In this paper, we consider the problem of learning a predictive model for population cell growth dynamics as a function of the media conditions. We first introduce a generic data-driven framework for training operator-theoretic models to predict cell growth rate. We then introduce the experimental design and data generated in this study, namely growth curves of Pseudomonas putida as a function of casein and glucose concentrations. We use a data driven approach for model identification, specifically the nonlinear autoregressive (NAR) model to represent the dynamics. We show theoretically that Hankel DMD can be used to obtain a solution of the NAR model. We show that it identifies a constrained NAR model and to obtain a more general solution, we define a causal state space system using 1-step, 2-step,..., τ-step predictors of the NAR model and identify a Koopman operator for this model using extended dynamic mode decomposition. The hybrid scheme we call causal-jump dynamic mode decomposition, which we illustrate on a growth profile or fitness prediction challenge as a function of different input growth conditions. We show that our model is able to recapitulate training growth curve data with 96.6% accuracy and predict test growth curve data with 91% accuracy.
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关键词
Koopman operator,Hankel DMD,Pseudomonas putida,operator-theoretic models,casein function,training growth curve data,extended dynamic mode decomposition,causal state space system,constrained NAR model,nonlinear autoregressive model,glucose concentrations,cell growth rate,generic data-driven framework,population cell growth dynamics,predictive model,causal jump dynamic mode decomposition
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