Issue 8, 2010

Label-free imaging of human cells: algorithms for image reconstruction of Raman hyperspectral datasets

Abstract

Raman microspectroscopy-based, label-free imaging methods for human cells at sub-micrometre spatial resolution are presented. Since no dyes or labels are used in this imaging modality, the pixel-to-pixel spectral variations are small and multivariate methods of analysis need to be employed to convert the hyperspectral datasets to spectral images. Thus, the main emphasis of this paper is the introduction and comparison of a number of multivariate image reconstruction methods. The resulting Raman spectral imaging methodology directly utilizes the spectral contrast provided by small (bio)chemical compositional changes over the spatial dimension of the sample to construct images that can rival fluorescence images in terms of spatial information, yet without the use of any external dye or label.

Graphical abstract: Label-free imaging of human cells: algorithms for image reconstruction of Raman hyperspectral datasets

Article information

Article type
Paper
Submitted
28 Jan 2010
Accepted
11 May 2010
First published
04 Jun 2010

Analyst, 2010,135, 2002-2013

Label-free imaging of human cells: algorithms for image reconstruction of Raman hyperspectral datasets

M. Miljković, T. Chernenko, M. J. Romeo, B. Bird, C. Matthäus and M. Diem, Analyst, 2010, 135, 2002 DOI: 10.1039/C0AN00042F

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