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Chemometric and statistical analyses of ToF-SIMS spectra of increasingly complex biological samples

Authors :
David O. Nelson
Kristen S. Kulp
Susan L. Fortson
Kuang Jen Wu
Ligang Wu
Elena S. F. Berman
Source :
Surface and Interface Analysis. 41:97-104
Publication Year :
2009
Publisher :
Wiley, 2009.

Abstract

Characterizing and classifying molecular variations within biological samples are critical for determining the fundamental mechanisms of biological processes. Toward these ends, time-of-flight secondary ion mass spectrometry (ToF-SIMS) was used to examine increasingly complex samples of biological relevance. The large, multivariate datasets were analyzed using five commonstatisticalandchemometrictechniques:principalcomponentanalysis(PCA),lineardiscriminantanalysis(LDA),partial least-squaresdiscriminantanalysis(PLSDA),softindependentmodelingofclassanalogy(SIMCA),anddecision-treeanalysisby recursivepartitioning.PCAwasfoundtoprovideinsightintoboththerelativegroupingsofsamplesandthemolecularbasisfor thosegroupings.Formonosaccharide,pureprotein,andcomplexproteinmixturesamples,LDA,PLSDA,andSIMCAallproduced excellent classification. For mouse embryo tissues, however, SIMCA did not classify samples as accurately. The decision-tree analysis was the least successful for all tested samples, providing neither as accurate a classification nor chemical insight. Based on these results we conclude that as the complexity of samples increases, so must the sophistication of the multivariate technique used to classify the samples. PCA is a preferred first step for understanding ToF-SIMS data that can be followed by either LDA or PLSDA for effective classification. This study demonstrates the strength of the combination of ToF-SIMS and multivariate analysis to classify increasingly complex biological samples. Applying these techniques to information-rich mass spectraldataopensthepossibilitiesfornewapplicationsincludingclassificationofsubtlydifferentbiologicalsamplesthatmay provide insights into cellular processes, disease progress, and disease diagnosis. Copyright c � 2008 John Wiley & Sons, Ltd.

Details

ISSN :
10969918 and 01422421
Volume :
41
Database :
OpenAIRE
Journal :
Surface and Interface Analysis
Accession number :
edsair.doi...........ac63c68192c7f07931d0a36118eae499
Full Text :
https://doi.org/10.1002/sia.2953