Protein – Ligand Binding: Estimation of Binding Free Energies

Accurate prediction of binding free energies of protein-ligand system has long been a focus area for theoretical and computational studies; with important implications in fields like pharmaceuticals, enzyme-redesign, etc. The aim of this project was to develop such a predictive model for calculating...

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Main Author: Ranganathan, Anirudh
Format: Others
Language:English
Published: KTH, Skolan för kemivetenskap (CHE) 2012
Subjects:
Online Access:http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-147527
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spelling ndltd-UPSALLA1-oai-DiVA.org-kth-1475272014-06-28T04:59:14ZProtein – Ligand Binding: Estimation of Binding Free EnergiesengRanganathan, AnirudhKTH, Skolan för kemivetenskap (CHE)2012Protein+ligand+binding+free+energyAccurate prediction of binding free energies of protein-ligand system has long been a focus area for theoretical and computational studies; with important implications in fields like pharmaceuticals, enzyme-redesign, etc. The aim of this project was to develop such a predictive model for calculating binding free energies of protein-ligand systems based on the LIE-SASA methods. Many models have been successfully fit to experimental data, but a general predictive model, not reliant on experimental values, would make LIE-SASA a more powerful and widely applicable method. The model was developed such that There is no significant increase in computational time No increase in complexity of system setup No increase in the number of empirical parameters. The method was tested on a small number of protein-ligand systems, selected with certain constraints. This was our training set, from which we obtain the complete expression for binding free energy. Expectedly, there was good agreement with experimental values for the training set On applying our model to a similar sized validation set, with the same selection constraints as for the training set, we achieved even better agreement with experimental results, with lower standard errors. Finally, the model was tested by applying it to a set of systems without such selection constraints, and again found good agreement with experimental values. In terms of accuracy, the model was comparable to a system specific empirical fit that was performed on this set. These encouraging results could be an indicator of generality. Student thesisinfo:eu-repo/semantics/bachelorThesistexthttp://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-147527application/pdfinfo:eu-repo/semantics/openAccess
collection NDLTD
language English
format Others
sources NDLTD
topic Protein+ligand+binding+free+energy
spellingShingle Protein+ligand+binding+free+energy
Ranganathan, Anirudh
Protein – Ligand Binding: Estimation of Binding Free Energies
description Accurate prediction of binding free energies of protein-ligand system has long been a focus area for theoretical and computational studies; with important implications in fields like pharmaceuticals, enzyme-redesign, etc. The aim of this project was to develop such a predictive model for calculating binding free energies of protein-ligand systems based on the LIE-SASA methods. Many models have been successfully fit to experimental data, but a general predictive model, not reliant on experimental values, would make LIE-SASA a more powerful and widely applicable method. The model was developed such that There is no significant increase in computational time No increase in complexity of system setup No increase in the number of empirical parameters. The method was tested on a small number of protein-ligand systems, selected with certain constraints. This was our training set, from which we obtain the complete expression for binding free energy. Expectedly, there was good agreement with experimental values for the training set On applying our model to a similar sized validation set, with the same selection constraints as for the training set, we achieved even better agreement with experimental results, with lower standard errors. Finally, the model was tested by applying it to a set of systems without such selection constraints, and again found good agreement with experimental values. In terms of accuracy, the model was comparable to a system specific empirical fit that was performed on this set. These encouraging results could be an indicator of generality.
author Ranganathan, Anirudh
author_facet Ranganathan, Anirudh
author_sort Ranganathan, Anirudh
title Protein – Ligand Binding: Estimation of Binding Free Energies
title_short Protein – Ligand Binding: Estimation of Binding Free Energies
title_full Protein – Ligand Binding: Estimation of Binding Free Energies
title_fullStr Protein – Ligand Binding: Estimation of Binding Free Energies
title_full_unstemmed Protein – Ligand Binding: Estimation of Binding Free Energies
title_sort protein – ligand binding: estimation of binding free energies
publisher KTH, Skolan för kemivetenskap (CHE)
publishDate 2012
url http://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-147527
work_keys_str_mv AT ranganathananirudh proteinligandbindingestimationofbindingfreeenergies
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