Litcius/Paper detail

So you think you can PLS-DA?

Daniel Ruiz-Perez, Haibin Guan, Purnima Madhivanan, Kalai Mathee, Giri Narasimhan

2020BMC Bioinformatics401 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Partial Least-Squares Discriminant Analysis (PLS-DA) is a popular machine learning tool that is gaining increasing attention as a useful feature selector and classifier. In an effort to understand its strengths and weaknesses, we performed a series of experiments with synthetic data and compared its performance to its close relative from which it was initially invented, namely Principal Component Analysis (PCA). RESULTS: We demonstrate that even though PCA ignores the information regarding the class labels of the samples, this unsupervised tool can be remarkably effective as a feature selector. In some cases, it outperforms PLS-DA, which is made aware of the class labels in its input. Our experiments range from looking at the signal-to-noise ratio in the feature selection task, to considering many practical distributions and models encountered when analyzing bioinformatics and clinical data. Other methods were also evaluated. Finally, we analyzed an interesting data set from 396 vaginal microbiome samples where the ground truth for the feature selection was available. All the 3D figures shown in this paper as well as the supplementary ones can be viewed interactively at http://biorg.cs.fiu.edu/plsda CONCLUSIONS: Our results highlighted the strengths and weaknesses of PLS-DA in comparison with PCA for different underlying data models.

Topics & Concepts

Artificial intelligencePrincipal component analysisComputer sciencePattern recognition (psychology)Feature selectionPartial least squares regressionClassifier (UML)Ground truthLinear discriminant analysisSet (abstract data type)DiscriminantMachine learningData miningProgramming languageSpectroscopy and Chemometric AnalysesIdentification and Quantification in FoodMetabolomics and Mass Spectrometry Studies