Fr. 70.00

Analysis of Single-Cell Data - ODE Constrained Mixture Modeling and Approximate Bayesian Computation

English · Paperback / Softback

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Description

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Carolin Loos introduces two novel approaches for theanalysis of single-cell data. Both approaches can be used to study cellularheterogeneity and therefore advance a holistic understanding of biologicalprocesses. The first method, ODE constrained mixture modeling, enables theidentification of subpopulation structures and sources of variability in single-cellsnapshot data. The second method estimates parameters of single-cell time-lapsedata using approximate Bayesian computation and is able to exploit the temporalcross-correlation of the data as well as lineage information. 

List of contents

Modeling and Parameter Estimation for Single-CellData.- ODE Constrained Mixture Modeling for Multivariate Data.- ApproximateBayesian Computation Using Multivariate Statistics.

Product details

Authors Carolin Loos
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 23.03.2016
 
EAN 9783658132330
ISBN 978-3-658-13233-0
No. of pages 92
Dimensions 150 mm x 210 mm x 5 mm
Weight 162 g
Illustrations XXI, 92 p. 26 illus.
Series BestMasters
Subjects Natural sciences, medicine, IT, technology > Mathematics > Miscellaneous

C, bioinformatics, Biology, life sciences, Mathematics and Statistics, Computational Mathematics and Numerical Analysis, Computer mathematics, Numerical analysis, Information technology: general issues, Computational and Systems Biology, Biomathematics, Mathematical and Computational Biology, Computational biology, Computer Appl. in Life Sciences

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