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Decomposition of Complex Fluorescence Spectra Containing Components with Close Emission Maxima Positions and Similar Quantum Yields. Application to Fluorescence Spectra of Proteins

Authorized Users Only
2013
Authors
Savić, Aleksandar G
Kardos, Roland
Nyitrai, Miklos
Radotić, Ksenija
Article (Published version)
Metadata
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Abstract
Despite of widely application of multivariate analysis in chemometrics, problem of resolving closely positioned components in the fluorescence spectra remained unsolved, thus limiting the usage of fluorescence spectroscopy in analytical purpose. In this paper we have described a novel procedure, adapted especially for the analysis of complex fluorescence spectra with multiple, closely positioned components' maxima. The method was first tested on the simulated spectra and then applied on the spectra of proteins whose fluorophores have similar properties of both the excitation and the emission spectra. In this paper, simple but efficient modification of the method was applied. Instead of analyzing full size emission matrix (12 spectra), 9 spectra wide windows were analyzed, and 4 factors (greatest possible number of factors with physical meaning both for actin and simulated spectra) were extracted in each pass. Obtained factor scores were grouped by using the K-means algorithm. Groups of... factor scores obtained from K-means algorithm were passed through the one more factor analysis (FA) in order to find one factor that represents each group. Our approach provides resolution of extremely closed spectral components, which is a vital data for protein conformation analysis based on fluorescence spectroscopy.

Keywords:
Proteins / Fluorescence spectra / Fixed size window factor analysis / Clustering
Source:
Journal of Fluorescence, 2013, 23, 3, 605-610
Publisher:
  • Springer/Plenum Publishers, New York
Funding / projects:
  • Study of structure-function relationships in the plant cell wall and modifications of the wall structure by enzyme engineering (RS-173017)
  • Hungarian Science Foundation (OTKA)Orszagos Tudomanyos Kutatasi Alapprogramok (OTKA) [K77840]
  • Science, Please! Research Team on Innovation [SROP-4.2.2/08/1/2008-0011]

DOI: 10.1007/s10895-013-1183-0

ISSN: 1053-0509

PubMed: 23471626

WoS: 000319079400030

Scopus: 2-s2.0-84878247122
[ Google Scholar ]
2
URI
http://rimsi.imsi.bg.ac.rs/handle/123456789/735
Collections
  • Radovi istraživača / Researchers’ publications
Institution/Community
Institut za multidisciplinarna istraživanja
TY  - JOUR
AU  - Savić, Aleksandar G
AU  - Kardos, Roland
AU  - Nyitrai, Miklos
AU  - Radotić, Ksenija
PY  - 2013
UR  - http://rimsi.imsi.bg.ac.rs/handle/123456789/735
AB  - Despite of widely application of multivariate analysis in chemometrics, problem of resolving closely positioned components in the fluorescence spectra remained unsolved, thus limiting the usage of fluorescence spectroscopy in analytical purpose. In this paper we have described a novel procedure, adapted especially for the analysis of complex fluorescence spectra with multiple, closely positioned components' maxima. The method was first tested on the simulated spectra and then applied on the spectra of proteins whose fluorophores have similar properties of both the excitation and the emission spectra. In this paper, simple but efficient modification of the method was applied. Instead of analyzing full size emission matrix (12 spectra), 9 spectra wide windows were analyzed, and 4 factors (greatest possible number of factors with physical meaning both for actin and simulated spectra) were extracted in each pass. Obtained factor scores were grouped by using the K-means algorithm. Groups of factor scores obtained from K-means algorithm were passed through the one more factor analysis (FA) in order to find one factor that represents each group. Our approach provides resolution of extremely closed spectral components, which is a vital data for protein conformation analysis based on fluorescence spectroscopy.
PB  - Springer/Plenum Publishers, New York
T2  - Journal of Fluorescence
T1  - Decomposition of Complex Fluorescence Spectra Containing Components with Close Emission Maxima Positions and Similar Quantum Yields. Application to Fluorescence Spectra of Proteins
EP  - 610
IS  - 3
SP  - 605
VL  - 23
DO  - 10.1007/s10895-013-1183-0
ER  - 
@article{
author = "Savić, Aleksandar G and Kardos, Roland and Nyitrai, Miklos and Radotić, Ksenija",
year = "2013",
abstract = "Despite of widely application of multivariate analysis in chemometrics, problem of resolving closely positioned components in the fluorescence spectra remained unsolved, thus limiting the usage of fluorescence spectroscopy in analytical purpose. In this paper we have described a novel procedure, adapted especially for the analysis of complex fluorescence spectra with multiple, closely positioned components' maxima. The method was first tested on the simulated spectra and then applied on the spectra of proteins whose fluorophores have similar properties of both the excitation and the emission spectra. In this paper, simple but efficient modification of the method was applied. Instead of analyzing full size emission matrix (12 spectra), 9 spectra wide windows were analyzed, and 4 factors (greatest possible number of factors with physical meaning both for actin and simulated spectra) were extracted in each pass. Obtained factor scores were grouped by using the K-means algorithm. Groups of factor scores obtained from K-means algorithm were passed through the one more factor analysis (FA) in order to find one factor that represents each group. Our approach provides resolution of extremely closed spectral components, which is a vital data for protein conformation analysis based on fluorescence spectroscopy.",
publisher = "Springer/Plenum Publishers, New York",
journal = "Journal of Fluorescence",
title = "Decomposition of Complex Fluorescence Spectra Containing Components with Close Emission Maxima Positions and Similar Quantum Yields. Application to Fluorescence Spectra of Proteins",
pages = "610-605",
number = "3",
volume = "23",
doi = "10.1007/s10895-013-1183-0"
}
Savić, A. G., Kardos, R., Nyitrai, M.,& Radotić, K.. (2013). Decomposition of Complex Fluorescence Spectra Containing Components with Close Emission Maxima Positions and Similar Quantum Yields. Application to Fluorescence Spectra of Proteins. in Journal of Fluorescence
Springer/Plenum Publishers, New York., 23(3), 605-610.
https://doi.org/10.1007/s10895-013-1183-0
Savić AG, Kardos R, Nyitrai M, Radotić K. Decomposition of Complex Fluorescence Spectra Containing Components with Close Emission Maxima Positions and Similar Quantum Yields. Application to Fluorescence Spectra of Proteins. in Journal of Fluorescence. 2013;23(3):605-610.
doi:10.1007/s10895-013-1183-0 .
Savić, Aleksandar G, Kardos, Roland, Nyitrai, Miklos, Radotić, Ksenija, "Decomposition of Complex Fluorescence Spectra Containing Components with Close Emission Maxima Positions and Similar Quantum Yields. Application to Fluorescence Spectra of Proteins" in Journal of Fluorescence, 23, no. 3 (2013):605-610,
https://doi.org/10.1007/s10895-013-1183-0 . .

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