Issue 47, 2021, Issue in Progress

Projection to latent correlative structures, a dimension reduction strategy for spectral-based classification

Abstract

Latent variables are used in chemometrics to reduce the dimension of the data. It is a crucial step with spectroscopic data where the number of explanatory variables can be very high. Principal component analysis (PCA) and partial least squares (PLS) are the most common. However, the resulting latent variables are mathematical constructs that do not always have a physicochemical interpretation. A new data reduction strategy, named projection to latent correlative structures (PLCS), is introduced in this manuscript. This approach requires a set of model spectra that will be used as references. Each latent variable is the relative similarity of a given spectrum to a pair of reference spectra. The latent structure is obtained using every possible combination of reference pairing. The approach has been validated using more than 500 FTIR-ATR spectra from cool-season culinary grain legumes assembled from germplasm banks and breeders' working collections. PLCS has been combined with soft discriminant analysis to detect outliers that could be particularly suitable for a deeper analysis.

Graphical abstract: Projection to latent correlative structures, a dimension reduction strategy for spectral-based classification

Article information

Article type
Paper
Submitted
29 Apr 2021
Accepted
15 Aug 2021
First published
01 Sep 2021
This article is Open Access
Creative Commons BY-NC license

RSC Adv., 2021,11, 29124-29129

Projection to latent correlative structures, a dimension reduction strategy for spectral-based classification

G. L. Erny, E. Brito, A. B. Pereira, A. Bento-Silva, M. C. Vaz Patto and M. R. Bronze, RSC Adv., 2021, 11, 29124 DOI: 10.1039/D1RA03359J

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