Unsupervised learning for exploring MALDI imaging mass spectrometry 'omics' data

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Wijetunge, Chalini D.
Saeed, Isaam
Halgamuge, Saman K.
Boughton, Berin
Roessner, Ute

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Institute of Electrical and Electronics Engineers Inc.

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Abstract

Matrix Assisted Laser Desorption Ionization-Imaging Mass Spectrometry (MALDI-IMS) is an emerging data acquisition technology in biological research. It has gained its popularity in 'omics' sciences because of its ability to explore the spatial distributions of various bio-molecules in detail. The sheer volume of data generated through this technology and the often limited a priori knowledge about the molecular compositions of biological samples, call for efficient data analysis methods. In this paper, first we review the available computational methods for analyzing the high-dimensional imaging datasets highlighting their advantages and limitations. Then, we propose a more recent unsupervised method as a means of exploring MALDI-IMS data and demonstrate its competency by extracting hidden significant spatial distribution patterns of a rat brain imaging dataset. Finally, we explain the potential future advances of 'omics' research associated with MALDI-IMS and the foreseeable challenges in analyzing the resultant data.

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2014 7th International Conference on Information and Automation for Sustainability: "Sharpening the Future with Sustainable Technology", ICIAfS 2014

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