Title :
Aligning and Clustering Patterns to Reveal the Protein Functionality of Sequences
Author :
Wong, Andrew K. C. ; Lee, En-Shiun Annie
Author_Institution :
Dept. of Syst. Design Eng., Univ. of Waterloo, Waterloo, ON, Canada
Abstract :
Discovering sequence patterns with variations unveils significant functions of a protein family. Existing combinatorial methods of discovering patterns with variations are computationally expensive, and probabilistic methods require more elaborate probabilistic representation of the amino acid associations. To overcome these shortcomings, this paper presents a new computationally efficient method for representing patterns with variations in a compact representation called Aligned Pattern Cluster (AP Cluster). To tackle the runtime, our method discovers a shortened list of non-redundant statistically significant sequence associations based on our previous work. To address the representation of protein functional regions, our pattern alignment and clustering step, presented in this paper captures the conservations and variations of the aligned patterns. We further refine our solution to allow more coverage of sequences via extending the AP Clusters containing only statistically significant patterns to Weak and Conserved AP Clusters. When applied to the cytochrome c, the ubiquitin, and the triosephosphate isomerase protein families, our algorithm identifies the binding segments as well as the binding residues. When compared to other methods, ours discovers all binding sites in the AP Clusters with superior entropy and coverage. The identification of patterns with variations help biologists to avoid time-consuming simulations and experimentations. (Software available upon request).
Keywords :
biochemistry; bioinformatics; bonds (chemical); data mining; entropy; enzymes; molecular biophysics; molecular configurations; molecular orientation; pattern clustering; sequences; statistical analysis; AP cluster conservation; AP cluster coverage; AP cluster method; aligned pattern cluster; amino acid associations; binding residue identification; binding segment identification; binding site discovery; combinatorial methods; compact pattern variation representation; computationally efficient method; cytochrome c protein families; nonredundant sequence associations; pattern alignment; pattern clustering; pattern conservation; pattern variation identification; probabilistic methods; probabilistic representation; protein family functions; protein functional region representation; protein functionality; protein sequence pattern discovery; protein sequence pattern variations; runtime; sequence coverage; statistically significant sequence associations; superior AP cluster entropy; triosephosphate isomerase protein families; ubiquitin protein families; weak AP clusters; Amino acids; Bioinformatics; Clustering algorithms; Computational biology; Proteins; Runtime; Aligned pattern cluster; hierarchical clustering; protein function prediction; sequence pattern;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/TCBB.2014.2306840