We present a novel unsupervised method for extracting meaningful motifs from biological sequence data. This de novo motif extraction (MEX) algorithm is data driven, finding motifs that are not necessarily over-represented in the data. Applying MEX to the oxidoreductases class of enzymes, containing approximately 7000 enzyme sequences, a relatively small set of motifs is obtained. This set spans a motif-space that is used for functional classification of the enzymes by an SVM classifier. The classification based on MEX motifs surpasses that of two other SVM based methods: SVMProt, a method based on the analysis of physical-chemical properties of a protein generated from its sequence of amino acids, and SVM applied to a Smith-Waterman distances matrix. Our findings demonstrate that the MEX algorithm extracts relevant motifs, supporting a successful sequence-to-function classification.
Index Terms:
motif extraction, enzyme classification
Citation:
Vered Kunik, Zach Solan, Shimon Edelman, Eytan Ruppin, David Horn, "Motif Extraction and Protein Classification," csb, pp.80-85, 2005 IEEE Computational Systems Bioinformatics Conference (CSB'05), 2005