Bayesian inference of protein structure from chemical shift data

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Bayesian inference of protein structure from chemical shift data. / Bratholm, Lars Andersen; Christensen, Anders Steen; Hamelryck, Thomas Wim; Jensen, Jan Halborg.

In: PeerJ, Vol. 3, e861, 2015.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Bratholm, LA, Christensen, AS, Hamelryck, TW & Jensen, JH 2015, 'Bayesian inference of protein structure from chemical shift data', PeerJ, vol. 3, e861. https://doi.org/10.7717/peerj.861

APA

Bratholm, L. A., Christensen, A. S., Hamelryck, T. W., & Jensen, J. H. (2015). Bayesian inference of protein structure from chemical shift data. PeerJ, 3, [e861]. https://doi.org/10.7717/peerj.861

Vancouver

Bratholm LA, Christensen AS, Hamelryck TW, Jensen JH. Bayesian inference of protein structure from chemical shift data. PeerJ. 2015;3. e861. https://doi.org/10.7717/peerj.861

Author

Bratholm, Lars Andersen ; Christensen, Anders Steen ; Hamelryck, Thomas Wim ; Jensen, Jan Halborg. / Bayesian inference of protein structure from chemical shift data. In: PeerJ. 2015 ; Vol. 3.

Bibtex

@article{b890127b35b248c4944b74c30fa88186,
title = "Bayesian inference of protein structure from chemical shift data",
abstract = "Protein chemical shifts are routinely used to augment molecular mechanics force fields in protein structure simulations, with weights of the chemical shift restraints determined empirically. These weights, however, might not be an optimal descriptor of a given protein structure and predictive model, and a bias is introduced which might result in incorrect structures. In the inferential structure determination framework, both the unknown structure and the disagreement between experimental and back-calculated data are formulated as a joint probability distribution, thus utilizing the full information content of the data. Here, we present the formulation of such a probability distribution where the error in chemical shift prediction is described by either a Gaussian or Cauchy distribution. The methodology is demonstrated and compared to a set of empirically weighted potentials through Markov chain Monte Carlo simulations of three small proteins (ENHD, Protein G and the SMN Tudor Domain) using the PROFASI force field and the chemical shift predictor CamShift. Using a clustering-criterion for identifying the best structure, together with the addition of a solvent exposure scoring term, the simulations suggests that sampling both the structure and the uncertainties in chemical shift prediction leads more accurate structures compared to conventional methods using empirical determined weights. The Cauchy distribution, using either sampled uncertainties or predetermined weights, did, however, result in overall better convergence to the native fold, suggesting that both types of distribution might be useful in different aspects of the protein structure prediction.",
author = "Bratholm, {Lars Andersen} and Christensen, {Anders Steen} and Hamelryck, {Thomas Wim} and Jensen, {Jan Halborg}",
year = "2015",
doi = "10.7717/peerj.861",
language = "English",
volume = "3",
journal = "PeerJ",
issn = "2167-8359",
publisher = "PeerJ",

}

RIS

TY - JOUR

T1 - Bayesian inference of protein structure from chemical shift data

AU - Bratholm, Lars Andersen

AU - Christensen, Anders Steen

AU - Hamelryck, Thomas Wim

AU - Jensen, Jan Halborg

PY - 2015

Y1 - 2015

N2 - Protein chemical shifts are routinely used to augment molecular mechanics force fields in protein structure simulations, with weights of the chemical shift restraints determined empirically. These weights, however, might not be an optimal descriptor of a given protein structure and predictive model, and a bias is introduced which might result in incorrect structures. In the inferential structure determination framework, both the unknown structure and the disagreement between experimental and back-calculated data are formulated as a joint probability distribution, thus utilizing the full information content of the data. Here, we present the formulation of such a probability distribution where the error in chemical shift prediction is described by either a Gaussian or Cauchy distribution. The methodology is demonstrated and compared to a set of empirically weighted potentials through Markov chain Monte Carlo simulations of three small proteins (ENHD, Protein G and the SMN Tudor Domain) using the PROFASI force field and the chemical shift predictor CamShift. Using a clustering-criterion for identifying the best structure, together with the addition of a solvent exposure scoring term, the simulations suggests that sampling both the structure and the uncertainties in chemical shift prediction leads more accurate structures compared to conventional methods using empirical determined weights. The Cauchy distribution, using either sampled uncertainties or predetermined weights, did, however, result in overall better convergence to the native fold, suggesting that both types of distribution might be useful in different aspects of the protein structure prediction.

AB - Protein chemical shifts are routinely used to augment molecular mechanics force fields in protein structure simulations, with weights of the chemical shift restraints determined empirically. These weights, however, might not be an optimal descriptor of a given protein structure and predictive model, and a bias is introduced which might result in incorrect structures. In the inferential structure determination framework, both the unknown structure and the disagreement between experimental and back-calculated data are formulated as a joint probability distribution, thus utilizing the full information content of the data. Here, we present the formulation of such a probability distribution where the error in chemical shift prediction is described by either a Gaussian or Cauchy distribution. The methodology is demonstrated and compared to a set of empirically weighted potentials through Markov chain Monte Carlo simulations of three small proteins (ENHD, Protein G and the SMN Tudor Domain) using the PROFASI force field and the chemical shift predictor CamShift. Using a clustering-criterion for identifying the best structure, together with the addition of a solvent exposure scoring term, the simulations suggests that sampling both the structure and the uncertainties in chemical shift prediction leads more accurate structures compared to conventional methods using empirical determined weights. The Cauchy distribution, using either sampled uncertainties or predetermined weights, did, however, result in overall better convergence to the native fold, suggesting that both types of distribution might be useful in different aspects of the protein structure prediction.

U2 - 10.7717/peerj.861

DO - 10.7717/peerj.861

M3 - Journal article

C2 - 25825683

VL - 3

JO - PeerJ

JF - PeerJ

SN - 2167-8359

M1 - e861

ER -

ID: 135365292