Training of Template-Specific Weighted Energy Function for Sequence-to-Structure Alignment

Threading is a protein structure prediction method that uses a library of template protein structures in the following steps: first the target sequence is matched to the template library and the best template structure is selected, secondly the predicted target structure of the target sequence is m...

Full description

Bibliographic Details
Main Author: Lee, En-Shiun Annie
Language:en
Published: 2008
Subjects:
Online Access:http://hdl.handle.net/10012/4060
id ndltd-LACETR-oai-collectionscanada.gc.ca-OWTU.10012-4060
record_format oai_dc
spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OWTU.10012-40602013-10-04T04:08:40ZLee, En-Shiun Annie2008-09-26T18:23:09Z2008-09-26T18:23:09Z2008-09-26T18:23:09Z2008http://hdl.handle.net/10012/4060Threading is a protein structure prediction method that uses a library of template protein structures in the following steps: first the target sequence is matched to the template library and the best template structure is selected, secondly the predicted target structure of the target sequence is modeled by this selected template structure. The deceleration of new folds which are added to the protein data bank promises completion of the template structure library. This thesis uses a new set of template-specific weights to improve the energy function for sequence-to-structure alignment in the template selection step of the threading process. The weights are estimated using least squares methods with the quality of the modelling step in the threading process as the label. These new weights show an average 12.74% improvement in estimating the label. Further family analysis show a correlation between the performance of the new weights to the number of seeds in pFam.enBioinformaticsProtein Structure PredictionComparative ModellingEnergy FunctionSequence-to-Structure AlignmentTemplate SelectionThreadingMachine LearningWeighted Linear Least SquaresTraining of Template-Specific Weighted Energy Function for Sequence-to-Structure AlignmentThesis or DissertationSchool of Computer ScienceMaster of MathematicsComputer Science
collection NDLTD
language en
sources NDLTD
topic Bioinformatics
Protein Structure Prediction
Comparative Modelling
Energy Function
Sequence-to-Structure Alignment
Template Selection
Threading
Machine Learning
Weighted Linear Least Squares
Computer Science
spellingShingle Bioinformatics
Protein Structure Prediction
Comparative Modelling
Energy Function
Sequence-to-Structure Alignment
Template Selection
Threading
Machine Learning
Weighted Linear Least Squares
Computer Science
Lee, En-Shiun Annie
Training of Template-Specific Weighted Energy Function for Sequence-to-Structure Alignment
description Threading is a protein structure prediction method that uses a library of template protein structures in the following steps: first the target sequence is matched to the template library and the best template structure is selected, secondly the predicted target structure of the target sequence is modeled by this selected template structure. The deceleration of new folds which are added to the protein data bank promises completion of the template structure library. This thesis uses a new set of template-specific weights to improve the energy function for sequence-to-structure alignment in the template selection step of the threading process. The weights are estimated using least squares methods with the quality of the modelling step in the threading process as the label. These new weights show an average 12.74% improvement in estimating the label. Further family analysis show a correlation between the performance of the new weights to the number of seeds in pFam.
author Lee, En-Shiun Annie
author_facet Lee, En-Shiun Annie
author_sort Lee, En-Shiun Annie
title Training of Template-Specific Weighted Energy Function for Sequence-to-Structure Alignment
title_short Training of Template-Specific Weighted Energy Function for Sequence-to-Structure Alignment
title_full Training of Template-Specific Weighted Energy Function for Sequence-to-Structure Alignment
title_fullStr Training of Template-Specific Weighted Energy Function for Sequence-to-Structure Alignment
title_full_unstemmed Training of Template-Specific Weighted Energy Function for Sequence-to-Structure Alignment
title_sort training of template-specific weighted energy function for sequence-to-structure alignment
publishDate 2008
url http://hdl.handle.net/10012/4060
work_keys_str_mv AT leeenshiunannie trainingoftemplatespecificweightedenergyfunctionforsequencetostructurealignment
_version_ 1716600083871432704