WANG Xian-wen, CHEN Feng, CHENG Zhi, et al. Auto Clustering Method Study of Flow Cytometry Data Based on Skew t-Mixture Models[J]. Acta Electronica Sinica, 2014, 42(12): 2527-2535.
DOI:
WANG Xian-wen, CHEN Feng, CHENG Zhi, et al. Auto Clustering Method Study of Flow Cytometry Data Based on Skew t-Mixture Models[J]. Acta Electronica Sinica, 2014, 42(12): 2527-2535. DOI: 10.3969/j.issn.0372-2112.2014.12.028.
Auto Clustering Method Study of Flow Cytometry Data Based on Skew t-Mixture Models
A major component of flow cytometry data analysis involves gating
which is the process of identifying homogeneous groups of cells.As manual gating is error-prone
non-reproducible
nonstandardized
and time-consuming
we propose a flexible statistical model-based clustering approach to identifying cell populations in flow cytometry data based on skew
t
-mixture models.This approach
which employs a finite mixture model with the density function of skew
t
-distribution
estimates parameters via an expectation maximization algorithm.Data analysis from two different experiments prove that the model-based clustering methods give better results in terms of robustness agai
nst outliers than non model-based clustering methods.Compared to the Gaussian mixture models
skew normal mixture models and
t
-mixture models
the skew
t
-mixture models have more flexibility in clustering symmetric data and leads to lower misclassification rates when handling highly asymmetric data.