posted on 2013-12-03, 00:00authored byTheodore Alexandrov, Ilya Chernyavsky, Michael Becker, Ferdinand von Eggeling, Sergey Nikolenko
Imaging
mass spectrometry (imaging MS) has emerged in the past
decade as a label-free, spatially resolved, and multipurpose bioanalytical
technique for direct analysis of biological samples from animal tissue,
plant tissue, biofilms, and polymer films., Imaging
MS has been successfully incorporated into many biomedical pipelines
where it is usually applied in the so-called untargeted mode-capturing
spatial localization of a multitude of ions from a wide mass range. An imaging MS data set usually comprises thousands
of spectra and tens to hundreds of thousands of mass-to-charge (m/z) images and can be as large as several
gigabytes. Unsupervised analysis of an imaging MS data set aims at
finding hidden structures in the data with no a priori information
used and is often exploited as the first step of imaging MS data analysis.
We propose a novel, easy-to-use and easy-to-implement approach to
answer one of the key questions of unsupervised analysis of imaging
MS data: what do all m/z images
look like? The key idea of the approach is to cluster all m/z images according to their spatial similarity
so that each cluster contains spatially similar m/z images. We propose a visualization of both spatial
and spectral information obtained using clustering that provides an
easy way to understand what all m/z images look like. We evaluated the proposed approach on matrix-assisted
laser desorption ionization imaging MS data sets of a rat brain coronal
section and human larynx carcinoma and discussed several scenarios
of data analysis.