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    Network-based analysis of proteomic profiles

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    Type
    Presentation
    Authors
    Wong, Limsoon
    Date
    2016-01-26
    Permanent link to this record
    http://hdl.handle.net/10754/601411
    
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    Abstract
    Mass spectrometry (MS)-based proteomics is a widely used and powerful tool for profiling systems-wide protein expression changes. It can be applied for various purposes, e.g. biomarker discovery in diseases and study of drug responses. Although RNA-based high-throughput methods have been useful in providing glimpses into the underlying molecular processes, the evidences they provide are indirect. Furthermore, RNA and corresponding protein levels have been known to have poor correlation. On the other hand, MS-based proteomics tend to have consistency issues (poor reproducibility and inter-sample agreement) and coverage issues (inability to detect the entire proteome) that need to be urgently addressed. In this talk, I will discuss how these issues can be addressed by proteomic profile analysis techniques that use biological networks (especially protein complexes) as the biological context. In particular, I will describe several techniques that we have been developing for network-based analysis of proteomics profile. And I will present evidence that these techniques are useful in identifying proteomics-profile analysis results that are more consistent, more reproducible, and more biologically coherent, and that these techniques allow expansion of the detected proteome to uncover and/or discover novel proteins.
    Conference/Event name
    KAUST Research Conference on Computational and Experimental Interfaces of Big Data and Biotechnology
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    KAUST Research Conference on Computational and Experimental Interfaces of Big Data and Biotechnology, January 2016

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