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A Predictive Model Which Uses Descriptors of RNA Secondary Structures Derived from Graph Theory

Posted on:2012-12-08Degree:M.SType:Thesis
University:East Tennessee State UniversityCandidate:Rockney, Alissa AFull Text:PDF
GTID:2454390011953351Subject:Applied Mathematics
Abstract/Summary:
The secondary structures of ribonucleic acid (RNA) have been successfully modeled with graph-theoretic structures. Often, simple graphs are used to represent secondary RNA structures; however, in this research, a multigraph representation of RNA is used, in which vertices represent stems and edges represent the internal motifs. Any type of RNA secondary structure may be represented by a graph in this manner. We define novel graphical invariants to quantify the multigraphs and obtain characteristic descriptors of the secondary structures. These descriptors are used to train an artificial neural network (ANN) to recognize the characteristics of secondary RNA structure. Using the ANN, we classify the multigraphs as either RNA-like or not RNA-like. This classification method produced results similar to other classification methods. Given the expanding library of secondary RNA motifs, this method may provide a tool to help identify new structures and to guide the rational design of RNA molecules.
Keywords/Search Tags:Structures, Secondary, Descriptors
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