4.5 Article

Mirion-A Software Package for Automatic Processing of Mass Spectrometric Images

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出版社

SPRINGER
DOI: 10.1007/s13361-013-0667-0

关键词

Mass spectrometry imaging; Software; Image processing; Data evaluation; MALDI imaging; ImzML

资金

  1. State of Hesse (LOEWE research focus AmbiProbe)
  2. Bundesministerium fur Bildung und Forschung (NGFN project) [0313442]
  3. Deutsche Forschungsgemeinschaft [Sp314/12-1, Sp314/13-1]
  4. European Union (STREP project) [LSHG-CT-2005-518194]
  5. Thermo Fisher Scientific (Bremen) GmbH

向作者/读者索取更多资源

Mass spectrometric imaging (MSI) techniques are of growing interest for the Life Sciences. In recent years, the development of new instruments employing ion sources that are tailored for spatial scanning allowed the acquisition of large data sets. A subsequent data processing, however, is still a bottleneck in the analytical process, as a manual data interpretation is impossible within a reasonable time frame. The transformation of mass spectrometric data into spatial distribution images of detected compounds turned out to be the most appropriate method to visualize the results of such scans, as humans are able to interpret images faster and easier than plain numbers. Image generation, thus, is a time-consuming and complex yet very efficient task. The free software package Mirion, presented in this paper, allows the handling and analysis of data sets acquired by mass spectrometry imaging. Mirion can be used for image processing of MSI data obtained from many different sources, as it uses the HUPO-PSI-based standard data format imzML, which is implemented in the proprietary software of most of the mass spectrometer companies. Different graphical representations of the recorded data are available. Furthermore, automatic calculation and overlay of mass spectrometric images promotes direct comparison of different analytes for data evaluation. The program also includes tools for image processing and image analysis.

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