Contrast optimization of mass spectrometry imaging (MSI) data visualization by threshold intensity quantization (TrIQ)
Mass spectrometry imaging (MSI) enables the unbiased characterization of surfaces with respect to their chemical composition. In biological MSI, zones with differential mass profiles hint towards localized physiological processes, such as the tissue-specific accumulation of secondary metabolites, or...
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doaj-cd58d296b49f4d88b69fe05283cd91092021-06-11T15:05:13ZengPeerJ Inc.PeerJ Computer Science2376-59922021-06-017e58510.7717/peerj-cs.585Contrast optimization of mass spectrometry imaging (MSI) data visualization by threshold intensity quantization (TrIQ)Ignacio Rosas-RománRobert WinklerMass spectrometry imaging (MSI) enables the unbiased characterization of surfaces with respect to their chemical composition. In biological MSI, zones with differential mass profiles hint towards localized physiological processes, such as the tissue-specific accumulation of secondary metabolites, or diseases, such as cancer. Thus, the efficient discovery of ‘regions of interest’ (ROI) is of utmost importance in MSI. However, often the discovery of ROIs is hampered by high background noise and artifact signals. Especially in ambient ionization MSI, unmasking biologically relevant information from crude data sets is challenging. Therefore, we implemented a Threshold Intensity Quantization (TrIQ) algorithm for augmenting the contrast in MSI data visualizations. The simple algorithm reduces the impact of extreme values (‘outliers’) and rescales the dynamic range of mass signals. We provide an R script for post-processing MSI data in the imzML community format (https://bitbucket.org/lababi/msi.r) and implemented the TrIQ in our open-source imaging software RmsiGUI (https://bitbucket.org/lababi/rmsigui/). Applying these programs to different biological MSI data sets demonstrated the universal applicability of TrIQ for improving the contrast in the MSI data visualization. We show that TrIQ improves a subsequent detection of ROIs by sectioning. In addition, the adjustment of the dynamic signal intensity range makes MSI data sets comparable.https://peerj.com/articles/cs-585.pdfAmbient ionizationMass spectrometry imagingImage processingData normalization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ignacio Rosas-Román Robert Winkler |
spellingShingle |
Ignacio Rosas-Román Robert Winkler Contrast optimization of mass spectrometry imaging (MSI) data visualization by threshold intensity quantization (TrIQ) PeerJ Computer Science Ambient ionization Mass spectrometry imaging Image processing Data normalization |
author_facet |
Ignacio Rosas-Román Robert Winkler |
author_sort |
Ignacio Rosas-Román |
title |
Contrast optimization of mass spectrometry imaging (MSI) data visualization by threshold intensity quantization (TrIQ) |
title_short |
Contrast optimization of mass spectrometry imaging (MSI) data visualization by threshold intensity quantization (TrIQ) |
title_full |
Contrast optimization of mass spectrometry imaging (MSI) data visualization by threshold intensity quantization (TrIQ) |
title_fullStr |
Contrast optimization of mass spectrometry imaging (MSI) data visualization by threshold intensity quantization (TrIQ) |
title_full_unstemmed |
Contrast optimization of mass spectrometry imaging (MSI) data visualization by threshold intensity quantization (TrIQ) |
title_sort |
contrast optimization of mass spectrometry imaging (msi) data visualization by threshold intensity quantization (triq) |
publisher |
PeerJ Inc. |
series |
PeerJ Computer Science |
issn |
2376-5992 |
publishDate |
2021-06-01 |
description |
Mass spectrometry imaging (MSI) enables the unbiased characterization of surfaces with respect to their chemical composition. In biological MSI, zones with differential mass profiles hint towards localized physiological processes, such as the tissue-specific accumulation of secondary metabolites, or diseases, such as cancer. Thus, the efficient discovery of ‘regions of interest’ (ROI) is of utmost importance in MSI. However, often the discovery of ROIs is hampered by high background noise and artifact signals. Especially in ambient ionization MSI, unmasking biologically relevant information from crude data sets is challenging. Therefore, we implemented a Threshold Intensity Quantization (TrIQ) algorithm for augmenting the contrast in MSI data visualizations. The simple algorithm reduces the impact of extreme values (‘outliers’) and rescales the dynamic range of mass signals. We provide an R script for post-processing MSI data in the imzML community format (https://bitbucket.org/lababi/msi.r) and implemented the TrIQ in our open-source imaging software RmsiGUI (https://bitbucket.org/lababi/rmsigui/). Applying these programs to different biological MSI data sets demonstrated the universal applicability of TrIQ for improving the contrast in the MSI data visualization. We show that TrIQ improves a subsequent detection of ROIs by sectioning. In addition, the adjustment of the dynamic signal intensity range makes MSI data sets comparable. |
topic |
Ambient ionization Mass spectrometry imaging Image processing Data normalization |
url |
https://peerj.com/articles/cs-585.pdf |
work_keys_str_mv |
AT ignaciorosasroman contrastoptimizationofmassspectrometryimagingmsidatavisualizationbythresholdintensityquantizationtriq AT robertwinkler contrastoptimizationofmassspectrometryimagingmsidatavisualizationbythresholdintensityquantizationtriq |
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1721382019036872704 |