MOTIF VECTORS

Hierarchical Motif Vectors for Protein Alignment and Functional Classification

 Coordinatore IZMIR INSTITUTE OF TECHNOLOGY 

 Organization address address: Gulbahce URLA
city: IZMIR
postcode: 35430

contact info
Titolo: Ms.
Nome: Nazife
Cognome: Sahin
Email: send email
Telefono: -7143
Fax: -7151

 Nazionalità Coordinatore Turkey [TR]
 Totale costo 75˙000 €
 EC contributo 75˙000 €
 Programma FP7-PEOPLE
Specific programme "People" implementing the Seventh Framework Programme of the European Community for research, technological development and demonstration activities (2007 to 2013)
 Code Call FP7-PEOPLE-IRG-2008
 Funding Scheme MC-IRG
 Anno di inizio 2009
 Periodo (anno-mese-giorno) 2009-11-11   -   2012-11-10

 Partecipanti

# participant  country  role  EC contrib. [€] 
1    IZMIR INSTITUTE OF TECHNOLOGY

 Organization address address: Gulbahce URLA
city: IZMIR
postcode: 35430

contact info
Titolo: Ms.
Nome: Nazife
Cognome: Sahin
Email: send email
Telefono: -7143
Fax: -7151

TR (IZMIR) coordinator 75˙000.00

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amino    group    vectors    algorithms    sequence    motif    protein    classification    functional    learning    motifs    variations    vector    alignment    hierarchical    acid    sequences    proteins   

 Obiettivo del progetto (Objective)

'This proposal introduces hierarchical motif vectors for numerical analysis of sequence motifs, and develops a novel framework for alignment and functional classification of proteins. Hierarchical motif vectors will be computed using multi-scale decompositions of property sequences obtained by converting amino acid sequences into numeric sequences of various amino acid properties. These hierarchical motif vectors will capture the variations of amino acid properties in the vicinity of each amino acid in the sequence of a given protein. We will develop alignment algorithms for amino acid sequences that match their hierarchical motif vectors. We will also use unsupervised statistical learning algorithms to identify hierarchical motif vectors specific to functional protein groups, notably the antigen binding proteins, transcription factors, growth factors, and glycosylation proteins. We will then apply these methods to protein classification, using the overlap scores from the hierarchical motif vector-based sequence alignment as well as the presence and extent of hierarchical motif vectors specific to the protein group in consideration. We will validate all methods developed in this project against existing sequence alignment, motif detection, and protein classification algorithms in the literature. Among the innovations of the project is the use of hierarchical motif vectors for characterization of local physico-chemical variations along an amino acid sequence. This allows analyzing sequence motifs by general machine learning methods via the embedded vector space arrangement. Next, sequence alignment can be tuned to different amino acid properties at various scales, improving the potential for sequence alignment-based protein similarity in functional classification. Furthermore, group-specific hierarchical motif vectors will be identified as those that occur exclusively among the members of a protein group, increasing their likelihood of bearing functional specificity.'

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