International audienceBayesian mixture models are increasingly used for model‐based clustering and the follow‐up analysis on the clusters identified. As such, they are of particular interest for analyzing cytometry data where unsupervised clustering and association studies are often part of the scientific questions. Cytometry data are large quantitative data measured in a multidimensional space that typically ranges from a few dimensions to several dozens, and which keeps increasing due to innovative high‐throughput biotechonologies. We present several recent parametric and nonparametric Bayesian mixture modeling approaches, and describe advantages and limitations of these models under different research context for cytometry data analysis....
Combinatorial mixtures refers to a flexible class of models for inference on mixture distributions wh...
Carolin Loos introduces two novel approaches for the analysis of single-cell data. Both approaches c...
Motivation: Identifying patterns of co-expression in microarray data by cluster analysis has been a ...
International audienceBayesian mixture models are increasingly used for model‐based clustering and t...
International audienceBayesian mixture models are increasingly used for model‐based clustering and t...
International audienceBayesian mixture models are increasingly used for model‐based clustering and t...
International audienceBayesian mixture models are increasingly used for model‐based clustering and t...
The advancement of biotechnologies has led to indispensable high-throughput techniques for biologica...
The advancement of biotechnologies has led to indispensable high-throughput techniques for biologica...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Modern flow cytometry platforms allow for the collection of data sets of increasing dimension and si...
Mixture distributions are commonly being applied for modelling and for discriminant and cluster anal...
This dissertation, comprising three projects, presents Bayesian statistical methods for analyzing he...
This dissertation, comprising three projects, presents Bayesian statistical methods for analyzing he...
Background: The capability of flow cytometry to offer rapid quantification of multidimensional chara...
Combinatorial mixtures refers to a flexible class of models for inference on mixture distributions wh...
Carolin Loos introduces two novel approaches for the analysis of single-cell data. Both approaches c...
Motivation: Identifying patterns of co-expression in microarray data by cluster analysis has been a ...
International audienceBayesian mixture models are increasingly used for model‐based clustering and t...
International audienceBayesian mixture models are increasingly used for model‐based clustering and t...
International audienceBayesian mixture models are increasingly used for model‐based clustering and t...
International audienceBayesian mixture models are increasingly used for model‐based clustering and t...
The advancement of biotechnologies has led to indispensable high-throughput techniques for biologica...
The advancement of biotechnologies has led to indispensable high-throughput techniques for biologica...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Modern flow cytometry platforms allow for the collection of data sets of increasing dimension and si...
Mixture distributions are commonly being applied for modelling and for discriminant and cluster anal...
This dissertation, comprising three projects, presents Bayesian statistical methods for analyzing he...
This dissertation, comprising three projects, presents Bayesian statistical methods for analyzing he...
Background: The capability of flow cytometry to offer rapid quantification of multidimensional chara...
Combinatorial mixtures refers to a flexible class of models for inference on mixture distributions wh...
Carolin Loos introduces two novel approaches for the analysis of single-cell data. Both approaches c...
Motivation: Identifying patterns of co-expression in microarray data by cluster analysis has been a ...