Partner: K. Prymula |
Recent publications
1. | Prymula K.♦, Piwowar M.♦, Kochańczyk M., Flis Ł.♦, Malawski M.♦, Szepieniec T.♦, Evangelista G.♦, Minervini G.♦, Polticelli F.♦, Wiśniowski Z.♦, Sałapa K.♦, Matczyńska E.♦, Roterman I.♦, In silico Structural Study of Random Amino Acid Sequence Proteins Not Present in Nature, CHEMISTRY AND BIODIVERSITY, ISSN: 1612-1872, DOI: 10.1002/cbdv.200800338, Vol.6, No.12, pp.2311-2336, 2009 Abstract: The three-dimensional structures of a set of ‘never born proteins’ (NBP, random amino acid sequence proteins with no significant homology with known proteins) were predicted using two methods: Rosetta and the one based on the ‘fuzzy-oil-drop’ (FOD) model. More than 3000 different random amino acid sequences have been generated, filtered against the non redundant protein sequence data base, to remove sequences with significant homology with known proteins, and subjected to three-dimensional structure prediction. Comparison between Rosetta and FOD predictions allowed to select the ten top (highest structural similarity) and the ten bottom (the lowest structural similarity) structures from the ranking list organized according to the RMS-D value. The selected structures were taken for detailed analysis to define the scale of structural accordance and discrepancy between the two methods. The structural similarity measurements revealed discrepancies between structures generated on the basis of the two methods. Their potential biological function appeared to be quite different as well. The ten bottom structures appeared to be ‘unfoldable’ for the FOD model. Some aspects of the general characteristics of the NBPs are also discussed. The calculations were performed on the EUChinaGRID grid platform to test the performance of this infrastructure for massive protein structure predictions. Affiliations:
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2. | Bryliński M.♦, Prymula K.♦, Jurkowski W.♦, Kochańczyk M., Stawowczyk E.♦, Konieczny L.♦, Roterman I.♦, Prediction of Functional Sites Based on the Fuzzy Oil Drop Model, PLOS COMPUTATIONAL BIOLOGY, ISSN: 1553-7358, DOI: 10.1371/journal.pcbi.0030094, Vol.3, No.5, pp.e94-0909-0923, 2007 Abstract: A description of many biological processes requires knowledge of the 3-D structure of proteins and, in particular, the defined active site responsible for biological function. Many proteins, the genes of which have been identified as the result of human genome sequencing, and which were synthesized experimentally, await identification of their biological activity. Currently used methods do not always yield satisfactory results, and new algorithms need to be developed to recognize the localization of active sites in proteins. This paper describes a computational model that can be used to identify potential areas that are able to interact with other molecules (ligands, substrates, inhibitors, etc.). The model for active site recognition is based on the analysis of hydrophobicity distribution in protein molecules. It is shown, based on the analyses of proteins with known biological activity and of proteins of unknown function, that the region of significantly irregular hydrophobicity distribution in proteins appears to be function related. Keywords:Protein structure, Amino acid analysis, Isomerases, Protein structure prediction, Genomic databases, Structural genomics, Protein structure comparison, Oils Affiliations:
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