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Hyperspectral Visualization of Mass Spectrometry Imaging Data
Abstract
The acquisition of localized molecular spectra with mass spectrometry imaging (MSI) has a great, but as yet not fully realized, potential for biomedical diagnostics and research. The methodology generates a series of mass spectra from discrete sample locations, which is often analyzed by visually interpreting specifically selected images of individual masses. We developed an intuitive color-coding scheme based on hyperspectral imaging methods to generate a single overview image of this complex data set. The image color-coding is based on spectral characteristics, such that pixels with similar molecular profiles are displayed with similar colors. This visualization strategy was applied to results of principal component analysis, self-organizing maps and t-distributed stochastic neighbor embedding. Our approach for MSI data analysis, combining automated data processing, modeling and display, is user-friendly and allows both the spatial and molecular information to be visualized intuitively and effectively- Dataset
- Dataset
- Medicine
- Microbiology
- Cell Biology
- Genetics
- Biotechnology
- Immunology
- Cancer
- Space Science
- Biological Sciences not elsewhere classified
- Chemical Sciences not elsewhere classified
- Information Systems not elsewhere classified
- mass spectrometry imaging
- MSI data analysis
- hyperspectral imaging methods
- Mass Spectrometry Imaging DataThe acquisition
- component analysis
- data processing
- visualization strategy
- neighbor embedding
- mass spectra
- Hyperspectral Visualization
- sample locations
- overview image