Analysis Of Single-cell Data: Ode Constrained Mixture Modeling And Approximate Bayesian Computation by Carolin LoosAnalysis Of Single-cell Data: Ode Constrained Mixture Modeling And Approximate Bayesian Computation by Carolin Loos

Analysis Of Single-cell Data: Ode Constrained Mixture Modeling And Approximate Bayesian Computation

byCarolin Loos

Paperback | March 23, 2016

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Carolin Loos introduces two novel approaches for the analysis of single-cell data. Both approaches can be used to study cellular heterogeneity and therefore advance a holistic understanding of biological processes. The first method, ODE constrained mixture modeling, enables the identification of subpopulation structures and sources of variability in single-cell snapshot data. The second method estimates parameters of single-cell time-lapse data using approximate Bayesian computation and is able to exploit the temporal cross-correlation of the data as well as lineage information. 

Carolin Loos is currently doing her PhD at the Institute of Computational Biology at the Helmholtz Zentrum München. She is member of the junior research group "Data-driven Computational Modeling". 
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Title:Analysis Of Single-cell Data: Ode Constrained Mixture Modeling And Approximate Bayesian ComputationFormat:PaperbackDimensions:92 pages, 21 × 14.8 × 0.02 inPublished:March 23, 2016Publisher:Springer-Verlag/Sci-Tech/TradeLanguage:English

The following ISBNs are associated with this title:

ISBN - 10:3658132337

ISBN - 13:9783658132330

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Table of Contents

Modeling and Parameter Estimation for Single-Cell Data.- ODE Constrained Mixture Modeling for Multivariate Data.- Approximate Bayesian Computation Using Multivariate Statistics.