| Literature DB >> 16118640 |
Nadim Jessani1, Sherry Niessen, BinQing Q Wei, Monica Nicolau, Mark Humphrey, Youngran Ji, Wonshik Han, Dong-Young Noh, John R Yates, Stefanie S Jeffrey, Benjamin F Cravatt.
Abstract
Achieving information content of satisfactory breadth and depth remains a formidable challenge for proteomics. This problem is particularly relevant to the study of primary human specimens, such as tumor biopsies, which are heterogeneous and of finite quantity. Here we present a functional proteomics strategy that unites the activity-based protein profiling and multidimensional protein identification technologies (ABPP-MudPIT) for the streamlined analysis of human samples. This convergent platform involves a rapid initial phase, in which enzyme activity signatures are generated for functional classification of samples, followed by in-depth analysis of representative members from each class. Using this two-tiered approach, we identified more than 50 enzyme activities in human breast tumors, nearly a third of which represent previously uncharacterized proteins. Comparison with cDNA microarrays revealed enzymes whose activity, but not mRNA expression, depicted tumor class, underscoring the power of ABPP-MudPIT for the discovery of new markers of human disease that may evade detection by other molecular profiling methods.Entities:
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Year: 2005 PMID: 16118640 DOI: 10.1038/nmeth778
Source DB: PubMed Journal: Nat Methods ISSN: 1548-7091 Impact factor: 28.547