Multivariate statistical image processing for molecular specific imaging in organic and bio-systems

Citation

Tyler, B. J. (2006). Multivariate statistical image processing for molecular specific imaging in organic and bio-systems. Applied Surface Science, 252(19), 6875-6882.

Abstract

Processing TOF-SIMS images to obtain clear contrast between chemically distinct regions, distinguish between chemical and topographic effects and identify chemical species can be a formidable challenge, particularly when working with organic and biological molecules that have similar spectral features. Three multivariate statistical techniques, including principal components analysis (PCA), multivariate curve resolution (MCR), and maximum auto-correlation factors (MAF) have been explored to determine their utility for processing TOF-SIMS images. The methods have been exhaustively tested on synthetic images to allow quantitative assessment of their utility. The methods are compared here based on enhancement of image contrast, enhancement of image resolution, and isolation of pure component spectra. MAF, which includes information on the nearest neighbors to each pixel, shows clear advantages over PCA and MCR for enhancing image contrast and identifying sparse components in the matrix. However, MCR is better suited to identification of unknown compounds. No single method proves superior for all of these objectives so a simple strategy is presented for combining these methods to obtain optimal results. (c) 2006 Published by Elsevier B.V.

Keyword(s)

maximum auto-correlation factors
multivariate curve resolution
multivariate statistical analysis
poisson
poisson statistics
principal component analysis
spectral imaging
tof-sims

Notes

Sp. Iss. SI
085ND
Times Cited:28
Cited References Count:10

Reference Type

Journal Article

Secondary Title

Applied Surface Science

Author(s)

Tyler, B. J.

Year Published

2006

Date Published

1753833600

Volume Number

252

Issue Number

19

Pages

6875-6882

DOI

DOI 10.1016/j.apsusc.2006.02.160