DocumentCode
189261
Title
Near-optimal selection of parallel inputs in Bayesian experimental design for systems biology
Author
Busetto, Alberto Giovanni ; Lygeros, John
Author_Institution
Autom. Control Lab., ETH Zurich, Zurich, Switzerland
fYear
2014
fDate
24-27 June 2014
Firstpage
540
Lastpage
545
Abstract
This study concerns the efficient design of experiments in the context Bayesian model selection, and is primarily motivated by applications to systems biology. We introduce a design method to select an informative subset of inputs, each with unit cost, under a given budget constraint. The inputs are applied as interventions to the biological system, either in parallel or in sequence, each time starting from the same initial conditions. The method aims at maximizing a Bayesian information-theoretic objective: the mutual information between models and data. By taking advantage of submodularity, we prove by reduction that our design method is computationally efficient and near-optimal, as it requires only a polynomial number of evaluations of the objective to yield near-optimal value. It follows from the reduction that the constant factor of the introduced approximation dominates all efficient design techniques, unless P=NP. We discuss the main theoretical properties of the method, as well as practical design choices and current limitations of the approach.
Keywords
Bayes methods; biology; design of experiments; information theory; Bayesian experimental design; Bayesian information-theoretic objective; context Bayesian model selection; design techniques; near-optimal selection; parallel inputs; practical design choices; systems biology; Approximation methods; Bayes methods; Biological system modeling; Computational modeling; Data models; Mutual information; Random variables;
fLanguage
English
Publisher
ieee
Conference_Titel
Control Conference (ECC), 2014 European
Conference_Location
Strasbourg
Print_ISBN
978-3-9524269-1-3
Type
conf
DOI
10.1109/ECC.2014.6862425
Filename
6862425
Link To Document