Literature DB >> 19396742

New in protein structure and function annotation: hotspots, single nucleotide polymorphisms and the 'Deep Web'.

Yana Bromberg1, Guy Yachdav, Yanay Ofran, Reinhard Schneider, Burkhard Rost.   

Abstract

The rapidly increasing quantity of protein sequence data continues to widen the gap between available sequences and annotations. Comparative modeling suggests some aspects of the 3D structures of approximately half of all known proteins; homology- and network-based inferences annotate some aspect of function for a similar fraction of the proteome. For most known protein sequences, however, there is detailed knowledge about neither their function nor their structure. Comprehensive efforts towards the expert curation of sequence annotations have failed to meet the demand of the rapidly increasing number of available sequences. Only the automated prediction of protein function in the absence of homology can close the gap between available sequences and annotations in the foreseeable future. This review focuses on two novel methods for automated annotation, and briefly presents an outlook on how modern web software may revolutionize the field of protein sequence annotation. First, predictions of protein binding sites and functional hotspots, and the evolution of these into the most successful type of prediction of protein function from sequence will be discussed. Second, a new tool, comprehensive in silico mutagenesis, which contributes important novel predictions of function and at the same time prepares for the onset of the next sequencing revolution, will be described. While these two new sub-fields of protein prediction represent the breakthroughs that have been achieved methodologically, it will then be argued that a different development might further change the way biomedical researchers benefit from annotations: modern web software can connect the worldwide web in any browser with the 'Deep Web' (ie, proprietary data resources). The availability of this direct connection, and the resulting access to a wealth of data, may impact drug discovery and development more than any existing method that contributes to protein annotation.

Mesh:

Year:  2009        PMID: 19396742

Source DB:  PubMed          Journal:  Curr Opin Drug Discov Devel        ISSN: 1367-6733


  4 in total

1.  PredictProtein--an open resource for online prediction of protein structural and functional features.

Authors:  Guy Yachdav; Edda Kloppmann; Laszlo Kajan; Maximilian Hecht; Tatyana Goldberg; Tobias Hamp; Peter Hönigschmid; Andrea Schafferhans; Manfred Roos; Michael Bernhofer; Lothar Richter; Haim Ashkenazy; Marco Punta; Avner Schlessinger; Yana Bromberg; Reinhard Schneider; Gerrit Vriend; Chris Sander; Nir Ben-Tal; Burkhard Rost
Journal:  Nucleic Acids Res       Date:  2014-05-05       Impact factor: 16.971

2.  Cloud prediction of protein structure and function with PredictProtein for Debian.

Authors:  László Kaján; Guy Yachdav; Esmeralda Vicedo; Martin Steinegger; Milot Mirdita; Christof Angermüller; Ariane Böhm; Simon Domke; Julia Ertl; Christian Mertes; Eva Reisinger; Cedric Staniewski; Burkhard Rost
Journal:  Biomed Res Int       Date:  2013-07-18       Impact factor: 3.411

3.  AUTO-MUTE 2.0: A Portable Framework with Enhanced Capabilities for Predicting Protein Functional Consequences upon Mutation.

Authors:  Majid Masso; Iosif I Vaisman
Journal:  Adv Bioinformatics       Date:  2014-08-17

4.  ccPDB 2.0: an updated version of datasets created and compiled from Protein Data Bank.

Authors:  Piyush Agrawal; Sumeet Patiyal; Rajesh Kumar; Vinod Kumar; Harinder Singh; Pawan Kumar Raghav; Gajendra P S Raghava
Journal:  Database (Oxford)       Date:  2019-01-01       Impact factor: 3.451

  4 in total

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