Artigo Revisado por pares

Integration of Two-Dimensional LC−MS with Multivariate Statistics for Comparative Analysis of Proteomic Samples

2006; American Chemical Society; Volume: 78; Issue: 7 Linguagem: Inglês

10.1021/ac052000t

ISSN

1520-6882

Autores

Marco Gaspari, Kitty Verhoeckx, Elwin Verheij, J. van der Greef,

Tópico(s)

Advanced Proteomics Techniques and Applications

Resumo

LC−MS-based proteomics requires methods with high peak capacity and a high degree of automation, integrated with data-handling tools able to cope with the massive data produced and able to quantitatively compare them. This paper describes an off-line two-dimensional (2D) LC−MS method and its integration with software tools for data preprocessing and multivariate statistical analysis. The 2D LC−MS method was optimized in order to minimize peptide loss prior to sample injection and during the collection step after the first LC dimension, thus minimizing errors from off-column sample handling. The second dimension was run in fully automated mode, injecting onto a nanoscale LC−MS system a series of more than 100 samples, representing fractions collected in the first dimension (8 fractions/sample). As a model study, the method was applied to finding biomarkers for the antiinflammatory properties of zilpaterol, which are coupled to the β2-adrenergic receptor. Secreted proteomes from U937 macrophages exposed to lipopolysaccharide in the presence or absence of propanolol or zilpaterol were analysed. Multivariate statistical analysis of 2D LC−MS data, based on principal component analysis, and subsequent targeted LC−MS/MS identification of peptides of interest demonstrated the applicability of the approach.

Referência(s)
Altmetric
PlumX