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Analysis Of Singlecell Data Ode Constrained Mixture Modeling And Approximate Bayesian Computation 1st Edition Carolin Loos Auth

  • SKU: BELL-5485438
Analysis Of Singlecell Data Ode Constrained Mixture Modeling And Approximate Bayesian Computation 1st Edition Carolin Loos Auth
$ 31.00 $ 45.00 (-31%)

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Analysis Of Singlecell Data Ode Constrained Mixture Modeling And Approximate Bayesian Computation 1st Edition Carolin Loos Auth instant download after payment.

Publisher: Springer Spektrum
File Extension: PDF
File size: 4.46 MB
Pages: 108
Author: Carolin Loos (auth.)
ISBN: 9783658132330, 9783658132347, 3658132337, 3658132345
Language: English
Year: 2016
Edition: 1

Product desciption

Analysis Of Singlecell Data Ode Constrained Mixture Modeling And Approximate Bayesian Computation 1st Edition Carolin Loos Auth by Carolin Loos (auth.) 9783658132330, 9783658132347, 3658132337, 3658132345 instant download after payment.

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.

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