Volume 171, 2014

Non-negative matrix analysis for effective feature extraction in X-ray spectromicroscopy

Abstract

X-Ray absorption spectromicroscopy provides rich information on the chemical organization of materials down to the nanoscale. However, interpretation of this information in studies of “natural” materials such as biological or environmental science specimens can be complicated by the complex mixtures of spectroscopically complicated materials present. We describe here the shortcomings that sometimes arise in previously-employed approaches such as cluster analysis, and we present a new approach based on non-negative matrix approximation (NNMA) analysis with both sparseness and cluster-similarity regularizations. In a preliminary study of the large-scale biochemical organization of human spermatozoa, NNMA analysis delivers results that nicely show the major features of spermatozoa with no physically erroneous negative weightings or thicknesses in the calculated image.

Article information

Article type
Paper
Submitted
27 Feb 2014
Accepted
28 Apr 2014
First published
28 Apr 2014

Faraday Discuss., 2014,171, 357-371

Author version available

Non-negative matrix analysis for effective feature extraction in X-ray spectromicroscopy

R. Mak, M. Lerotic, H. Fleckenstein, S. Vogt, S. M. Wild, S. Leyffer, Y. Sheynkin and C. Jacobsen, Faraday Discuss., 2014, 171, 357 DOI: 10.1039/C4FD00023D

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