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High Sensitivity Rna Pseudoknot Prediction, Xiaolu Huang, Hesham Ali
High Sensitivity Rna Pseudoknot Prediction, Xiaolu Huang, Hesham Ali
Information Systems and Quantitative Analysis Faculty Publications
Most ab initio pseudoknot predicting methods provide very few folding scenarios for a given RNA sequence and have low sensitivities. RNA researchers, in many cases, would rather sacrifice the specificity for a much higher sensitivity for pseudoknot detection. In this study, we introduce the Pseudoknot Local Motif Model and Dynamic Partner Sequence Stacking (PLMM_DPSS) algorithm which predicts all PLM model pseudoknots within an RNA sequence in a neighboring-region-interferencefree fashion. The PLM model is derived from the existing Pseudobase entries. The innovative DPSS approach calculates the optimally lowest stacking energy between two partner sequences. Combined with the Mfold, PLMM_DPSS can also …
Method Of Predicting Splice Sites Based On Signal Interactions, Alexander Churbanov, Igor B. Rogozin, Jitender S. Deogun, Hesham Ali
Method Of Predicting Splice Sites Based On Signal Interactions, Alexander Churbanov, Igor B. Rogozin, Jitender S. Deogun, Hesham Ali
Information Systems and Quantitative Analysis Faculty Publications
Background: Predicting and proper ranking of canonical splice sites (SSs) is a challenging problem in bioinformatics and machine learning communities. Any progress in SSs recognition will lead to better understanding of splicing mechanism. We introduce several new approaches of combining a priori knowledge for improved SS detection. First, we design our new Bayesian SS sensor based on oligonucleotide counting. To further enhance prediction quality, we applied our new de novo motif detection tool MHMMotif to intronic ends and exons. We combine elements found with sensor information using Naive Bayesian Network, as implemented in our new tool SpliceScan.
Results: …