Statistical Characterization of Protein Ensembles
Conformational ensembles are models of proteins that capture variations in conformation that result from thermal fluctuations. Ensemble based models are important tools for studying Intrinsically Disordered Proteins (IDPs), which adopt a heterogeneous set of conformations in solution. In order to co...
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ndltd-harvard.edu-oai-dash.harvard.edu-1-103182082015-08-14T15:41:55ZStatistical Characterization of Protein EnsemblesFisher, CharlesbiophysicsAlzheimer's diseaseBayesian statisticsconformational ensembleintrinsically disordered proteinsConformational ensembles are models of proteins that capture variations in conformation that result from thermal fluctuations. Ensemble based models are important tools for studying Intrinsically Disordered Proteins (IDPs), which adopt a heterogeneous set of conformations in solution. In order to construct an ensemble that provides an accurate model for a protein, one must identify a set of conformations, and their relative stabilities, that agree with experimental data. Inferring the characteristics of an ensemble for an IDP is a problem plagued by degeneracy; that is, one can typically construct many different ensembles that agree with any given set of experimental measurements. In light of this problem, this thesis will introduce three tools for characterizing ensembles: (1) an algorithm for modeling ensembles that provides estimates for the uncertainty in the resulting model, (2) a fast algorithm for constructing ensembles for large or complex IDPs and (3) a measure of the degree of disorder in an ensemble. Our hypothesis is that a protein can be accurately modeled as an ensemble only when the degeneracy of the model is appropriately accounted for. We demonstrate these methods by constructing ensembles for K18 tau protein, \(\alpha\)-synuclein and amyloid beta - IDPs that are implicated in the pathogenesis of Alzheimer's and Parkinson's diseases.Stultz, Collin Melveton2013-02-20T17:30:43Z2013-02-202012Thesis or DissertationFisher, Charles. 2012. Statistical Characterization of Protein Ensembles. Doctoral dissertation, Harvard University.http://dissertations.umi.com/gsas.harvard:10223http://nrs.harvard.edu/urn-3:HUL.InstRepos:10318208en_USclosed accessHarvard University |
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biophysics Alzheimer's disease Bayesian statistics conformational ensemble intrinsically disordered proteins |
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biophysics Alzheimer's disease Bayesian statistics conformational ensemble intrinsically disordered proteins Fisher, Charles Statistical Characterization of Protein Ensembles |
description |
Conformational ensembles are models of proteins that capture variations in conformation that result from thermal fluctuations. Ensemble based models are important tools for studying Intrinsically Disordered Proteins (IDPs), which adopt a heterogeneous set of conformations in solution. In order to construct an ensemble that provides an accurate model for a protein, one must identify a set of conformations, and their relative stabilities, that agree with experimental data. Inferring the characteristics of an ensemble for an IDP is a problem plagued by degeneracy; that is, one can typically construct many different ensembles that agree with any given set of experimental measurements. In light of this problem, this thesis will introduce three tools for characterizing ensembles: (1) an algorithm for modeling ensembles that provides estimates for the uncertainty in the resulting model, (2) a fast algorithm for constructing ensembles for large or complex IDPs and (3) a measure of the degree of disorder in an ensemble. Our hypothesis is that a protein can be accurately modeled as an ensemble only when the degeneracy of the model is appropriately accounted for. We demonstrate these methods by constructing ensembles for K18 tau protein, \(\alpha\)-synuclein and amyloid beta - IDPs that are implicated in the pathogenesis of Alzheimer's and Parkinson's diseases. |
author2 |
Stultz, Collin Melveton |
author_facet |
Stultz, Collin Melveton Fisher, Charles |
author |
Fisher, Charles |
author_sort |
Fisher, Charles |
title |
Statistical Characterization of Protein Ensembles |
title_short |
Statistical Characterization of Protein Ensembles |
title_full |
Statistical Characterization of Protein Ensembles |
title_fullStr |
Statistical Characterization of Protein Ensembles |
title_full_unstemmed |
Statistical Characterization of Protein Ensembles |
title_sort |
statistical characterization of protein ensembles |
publisher |
Harvard University |
publishDate |
2013 |
url |
http://dissertations.umi.com/gsas.harvard:10223 http://nrs.harvard.edu/urn-3:HUL.InstRepos:10318208 |
work_keys_str_mv |
AT fishercharles statisticalcharacterizationofproteinensembles |
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