Multivariate approaches in plant science

被引:33
作者
Gottlieb, DM [1 ]
Schultz, J [1 ]
Bruun, SW [1 ]
Jacobsen, S [1 ]
Sondergaard, I [1 ]
机构
[1] Statens Serum Inst, Plasma Prod Div, DK-2300 Copenhagen S, Denmark
关键词
multivariate data analysis; chemometrics; proteomics; wheat; gliadins; gluten; quality; mass spectrometry; 2D-gel electrophoresis; NIR;
D O I
10.1016/j.phytochem.2004.04.008
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
The objective of proteomics is to get an overview of the proteins expressed at a given point in time in a given tissue and to identify the connection to the biochemical status of that tissue. Therefore sample throughput and analysis time are important issues in proteomics. The concept of proteomics is to encircle the identity of proteins of interest. However, the overall relation between proteins must also be explained. Classical proteomics consist of separation and characterization, based on two-dimensional electrophoresis, trypsin digestion, mass spectrometry and database searching. Characterization includes labor intensive work in order to manage, handle and analyze data. The field of classical proteomics should therefore be extended to also include handling of large datasets in an objective way. The separation obtained by two-dimensional electrophoresis and mass spectrometry gives rise to huge amount of data. We present a multivariate approach to the handling of data in proteomics with the advantage that protein patterns can be spotted at an early stage and consequently the proteins selected for sequencing can be selected intelligently. These methods can also be applied to other data generating protein analysis methods like mass spectrometry and near infrared spectroscopy and examples of application to these techniques are also presented. Multivariate data analysis can unravel complicated data structures and may thereby relieve the characterization phase in classical proteomics. Traditionally statistical methods are not suitable for analysis of the huge amounts of data, where the number of variables exceed the number of objects. Multivariate data analysis, on the other hand, may uncover the hidden structures present in these data. This study takes its starting point in the field of classical proteomics and shows how multivariate data analysis can lead to faster ways of finding interesting proteins. Multivariate analysis has shown interesting results as a supplement to classical proteomics and added a new dimension to the field of proteomics. (C) 2004 Elsevier Ltd. All rights reserved.
引用
收藏
页码:1531 / 1548
页数:18
相关论文
共 94 条
[1]   Proteomics: applications in basic and applied biology [J].
Anderson, NL ;
Matheson, AD ;
Steiner, S .
CURRENT OPINION IN BIOTECHNOLOGY, 2000, 11 (04) :408-412
[2]  
[Anonymous], 2000, MULTIVARIATE DATA AN
[3]   AUTOMATIC CLASSIFICATION OF TWO-DIMENSIONAL GEL-ELECTROPHORESIS PICTURES BY HEURISTIC CLUSTERING ANALYSIS - A STEP TOWARD MACHINE LEARNING [J].
APPEL, R ;
HOCHSTRASSER, D ;
ROCH, C ;
FUNK, M ;
MULLER, AF ;
PELLEGRINI, C .
ELECTROPHORESIS, 1988, 9 (03) :136-142
[4]   Melanie II - a third-generation software package for analysis of two-dimensional electrophoresis images: I. Features and user interface [J].
Appel, RD ;
Palagi, PM ;
Walther, D ;
Vargas, JR ;
Sanchez, JC ;
Ravier, F ;
Pasquali, C ;
Hochstrasser, DF .
ELECTROPHORESIS, 1997, 18 (15) :2724-2734
[5]   FTIR AND NMR-STUDIES ON THE HYDRATION OF A HIGH-M(R) SUBUNIT OF GLUTENIN [J].
BELTON, PS ;
COLQUHOUN, IJ ;
GRANT, A ;
WELLNER, N ;
FIELD, JM ;
SHEWRY, PR ;
TATHAM, AS .
INTERNATIONAL JOURNAL OF BIOLOGICAL MACROMOLECULES, 1995, 17 (02) :74-80
[6]   Toward a clinical molecular scanner for proteome research: Parallel protein chemical processing before and during western blot [J].
Bienvenut, WV ;
Sanchez, JC ;
Karmime, A ;
Rouge, V ;
Rose, K ;
Binz, PA ;
Hochstrasser, DF .
ANALYTICAL CHEMISTRY, 1999, 71 (21) :4800-4807
[7]   A molecular scanner to automate proteomic research and to display proteome images [J].
Binz, PA ;
Müller, M ;
Walther, D ;
Bienvenut, WV ;
Gras, R ;
Hoogland, C ;
Bouchet, G ;
Gasteiger, E ;
Fabbretti, R ;
Gay, S ;
Palagi, P ;
Wilkins, MR ;
Rouge, V ;
Tonella, L ;
Paesano, S ;
Rossellat, G ;
Karmime, A ;
Bairoch, A ;
Sanchez, JC ;
Appel, RD ;
Hochstrasser, DF .
ANALYTICAL CHEMISTRY, 1999, 71 (21) :4981-4988
[8]  
Bokobza L, 2002, NEAR-INFRARED SPECTROSCOPY: PRINCIPLES, INSTRUMENTS, APPLICATIONS, P11
[9]  
Corthals GL, 2000, ELECTROPHORESIS, V21, P1104, DOI 10.1002/(SICI)1522-2683(20000401)21:6<1104::AID-ELPS1104>3.0.CO
[10]  
2-C