Title of article :
Simplifying the interpretation of ToF-SIMS spectra and images using
careful application of multivariate analysis
Author/Authors :
M.S. Wagner، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
As analytical problems addressed using time-of-flight secondary ion mass spectrometry (ToF-SIMS) increase in chemical complexity, multivariate
analysis (MVA) methods have become standard tools for simplifying the interpretation of ToF-SIMS spectra and images. MVA methods can
significantly simplify ToF-SIMS datasets by providing a comprehensive description of the data using a small number of variables, typically in an
automated fashion requiring minimal user intervention. However, successful and widespread application of MVA methods to SIMS data analysis is
limited by a lack of understanding of the outputs of MVA methods and optimization of these methods for ToF-SIMS data analysis. Appropriate
selection of data pre-processing and MVA tools are critical for accurate interpretation of ToF-SIMS spectra and images. As an example, an image
dataset of a selectively ion-etched polymer film was analyzed to identify and characterize the chemically distinct regions in the image. Principal
component analysis (PCA) and multivariate curve resolution (MCR) after pre-processing using normalization or Poisson-scaling were compared to
identify the etched and non-etched regions of the image. The utility of each pre-processing andMVAmethod was examined, withMCRcoupled with
Poisson-scaling being the appropriate choice for identifying the different chemical phases present in the image.However, appropriate selection of data
pre-processing and MVA methods generally depends on the specific dataset being analyzed and the goals of the analysis
Keywords :
TOF-SIMS , Principal component analysis , image analysis , Multivariate curve resolution , multivariate analysis
Journal title :
Applied Surface Science
Journal title :
Applied Surface Science