Tang, Thomas Cheuk Kai2006-08-222006-08-2220042004http://hdl.handle.net/10012/1188This thesis investigates the correlations between short protein peptide sequences and local tertiary structures. In particular, it introduces a novel algorithm for partitioning short protein segments into clusters of local sequence-structure motifs, and demonstrates that these motif clusters contain useful structural information via two applications to structural prediction. The first application utilizes motif clusters to predict local protein tertiary structures. A novel dynamic programming algorithm that performs comparably with some of the best existing algorithms is described. The second application exploits the capability of motif clusters in recognizing regular secondary structures to improve the performance of secondary structure prediction based on Support Vector Machines. Empirical results show significant improvement in overall prediction accuracy with no performance degradation in any specific aspect being measured. The encouraging results obtained illustrate the great potential of using local sequence-structure motifs to tackle protein structure predictions and possibly other important problems in computational biology.application/pdf1460273 bytesapplication/pdfenCopyright: 2004, Tang, Thomas Cheuk Kai. All rights reserved.Computer ScienceBioinformaticsData miningClusteringSequential and Structural Motif DiscoverySecondary Structure PredictionLocal Tertiary Structure PredictionSVMDiscovering Protein Sequence-Structure Motifs and Two Applications to Structural PredictionMaster Thesis