3.9 Article

Improving the accuracy and internal consistency of regression-based clustering of high-dimensional datasets

Publisher

WALTER DE GRUYTER GMBH
DOI: 10.1515/sagmb-2022-0031

Keywords

disease heterogeneity; mixture modeling; supervised learning

Ask authors/readers for more resources

Component-wise Sparse Mixture Regression (CSMR) is a promising regression-based clustering method for detecting heterogeneous relationships. However, it can yield inconsistent results in high-dimensional data due to limitations in feature selection. We explored different regularized regression methods within the CSMR framework and found that substituting Adaptive-Lasso improved the clustering accuracy and internal consistency, even in high-dimensional scenarios.
Component-wise Sparse Mixture Regression (CSMR) is a recently proposed regression-based clustering method that shows promise in detecting heterogeneous relationships between molecular markers and a continuous phenotype of interest. However, CSMR can yield inconsistent results when applied to high-dimensional molecular data, which we hypothesize is in part due to inherent limitations associated with the feature selection method used in the CSMR algorithm. To assess this hypothesis, we explored whether substituting different regularized regression methods (i.e. Lasso, Elastic Net, Smoothly Clipped Absolute Deviation (SCAD), Minmax Convex Penalty (MCP), and Adaptive-Lasso) within the CSMR framework can improve the clustering accuracy and internal consistency (IC) of CSMR in high-dimensional settings. We calculated the true positive rate (TPR), true negative rate (TNR), IC and clustering accuracy of our proposed modifications, benchmarked against the existing CSMR algorithm, using an extensive set of simulation studies and real biological datasets. Our results demonstrated that substituting Adaptive-Lasso within the existing feature selection method used in CSMR led to significantly improved IC and clustering accuracy, with strong performance even in high-dimensional scenarios. In conclusion, our modifications of the CSMR method resulted in improved clustering performance and may thus serve as viable alternatives for the regression-based clustering of high-dimensional datasets.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

3.9
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available