Back to Search Start Over

Principal Component Analysis in Application to Brillouin Microscopy Data

Authors :
Mahmodi, Hadi
Poulton, Christopher G.
Lesley, Mathew N.
Oldham, Glenn
Ong, Hui Xin
Langford, Steven J.
Kabakova, Irina V.
Publication Year :
2024

Abstract

Brillouin microscopy has recently emerged as a new bio-imaging modality that provides information on the micromechanical properties of biological materials, cells and tissues. The data collected in a typical Brillouin microscopy experiment represents the high-dimensional set of spectral information. Its analysis requires non-trivial approaches due to subtlety in spectral variations as well as spatial and spectral overlaps of measured features. This article offers a guide to the application of Principal Component Analysis (PCA) for processing Brillouin imaging data. Being unsupervised multivariate analysis, PCA is well-suited to tackle processing of complex Brillouin spectra from heterogeneous biological samples with minimal a priori information requirements. We point out the importance of data pre-processing steps in order to improve outcomes of PCA. We also present a strategy where PCA combined with k-means clustering method can provide a working solution to data reconstruction and deeper insights into sample composition, structure and mechanics.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2401.04745
Document Type :
Working Paper