Probabilistic models and machine learning in structural bioinformatics

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Probabilistic models and machine learning in structural bioinformatics. / Hamelryck, Thomas.

In: Statistical Methods in Medical Research, Vol. 18, No. 5, 2009, p. 505-26.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Hamelryck, T 2009, 'Probabilistic models and machine learning in structural bioinformatics', Statistical Methods in Medical Research, vol. 18, no. 5, pp. 505-26. https://doi.org/10.1177/0962280208099492

APA

Hamelryck, T. (2009). Probabilistic models and machine learning in structural bioinformatics. Statistical Methods in Medical Research, 18(5), 505-26. https://doi.org/10.1177/0962280208099492

Vancouver

Hamelryck T. Probabilistic models and machine learning in structural bioinformatics. Statistical Methods in Medical Research. 2009;18(5):505-26. https://doi.org/10.1177/0962280208099492

Author

Hamelryck, Thomas. / Probabilistic models and machine learning in structural bioinformatics. In: Statistical Methods in Medical Research. 2009 ; Vol. 18, No. 5. pp. 505-26.

Bibtex

@article{85563b60276711df8ed1000ea68e967b,
title = "Probabilistic models and machine learning in structural bioinformatics",
abstract = "Structural bioinformatics is concerned with the molecular structure of biomacromolecules on a genomic scale, using computational methods. Classic problems in structural bioinformatics include the prediction of protein and RNA structure from sequence, the design of artificial proteins or enzymes, and the automated analysis and comparison of biomacromolecules in atomic detail. The determination of macromolecular structure from experimental data (for example coming from nuclear magnetic resonance, X-ray crystallography or small angle X-ray scattering) has close ties with the field of structural bioinformatics. Recently, probabilistic models and machine learning methods based on Bayesian principles are providing efficient and rigorous solutions to challenging problems that were long regarded as intractable. In this review, I will highlight some important recent developments in the prediction, analysis and experimental determination of macromolecular structure that are based on such methods. These developments include generative models of protein structure, the estimation of the parameters of energy functions that are used in structure prediction, the superposition of macromolecules and structure determination methods that are based on inference. Although this review is not exhaustive, I believe the selected topics give a good impression of the exciting new, probabilistic road the field of structural bioinformatics is taking.",
author = "Thomas Hamelryck",
note = "Keywords: Artificial Intelligence; Computational Biology; Humans; Models, Molecular; Models, Statistical; Proteins",
year = "2009",
doi = "10.1177/0962280208099492",
language = "English",
volume = "18",
pages = "505--26",
journal = "Statistical Methods in Medical Research",
issn = "0962-2802",
publisher = "SAGE Publications",
number = "5",

}

RIS

TY - JOUR

T1 - Probabilistic models and machine learning in structural bioinformatics

AU - Hamelryck, Thomas

N1 - Keywords: Artificial Intelligence; Computational Biology; Humans; Models, Molecular; Models, Statistical; Proteins

PY - 2009

Y1 - 2009

N2 - Structural bioinformatics is concerned with the molecular structure of biomacromolecules on a genomic scale, using computational methods. Classic problems in structural bioinformatics include the prediction of protein and RNA structure from sequence, the design of artificial proteins or enzymes, and the automated analysis and comparison of biomacromolecules in atomic detail. The determination of macromolecular structure from experimental data (for example coming from nuclear magnetic resonance, X-ray crystallography or small angle X-ray scattering) has close ties with the field of structural bioinformatics. Recently, probabilistic models and machine learning methods based on Bayesian principles are providing efficient and rigorous solutions to challenging problems that were long regarded as intractable. In this review, I will highlight some important recent developments in the prediction, analysis and experimental determination of macromolecular structure that are based on such methods. These developments include generative models of protein structure, the estimation of the parameters of energy functions that are used in structure prediction, the superposition of macromolecules and structure determination methods that are based on inference. Although this review is not exhaustive, I believe the selected topics give a good impression of the exciting new, probabilistic road the field of structural bioinformatics is taking.

AB - Structural bioinformatics is concerned with the molecular structure of biomacromolecules on a genomic scale, using computational methods. Classic problems in structural bioinformatics include the prediction of protein and RNA structure from sequence, the design of artificial proteins or enzymes, and the automated analysis and comparison of biomacromolecules in atomic detail. The determination of macromolecular structure from experimental data (for example coming from nuclear magnetic resonance, X-ray crystallography or small angle X-ray scattering) has close ties with the field of structural bioinformatics. Recently, probabilistic models and machine learning methods based on Bayesian principles are providing efficient and rigorous solutions to challenging problems that were long regarded as intractable. In this review, I will highlight some important recent developments in the prediction, analysis and experimental determination of macromolecular structure that are based on such methods. These developments include generative models of protein structure, the estimation of the parameters of energy functions that are used in structure prediction, the superposition of macromolecules and structure determination methods that are based on inference. Although this review is not exhaustive, I believe the selected topics give a good impression of the exciting new, probabilistic road the field of structural bioinformatics is taking.

U2 - 10.1177/0962280208099492

DO - 10.1177/0962280208099492

M3 - Journal article

C2 - 19153168

VL - 18

SP - 505

EP - 526

JO - Statistical Methods in Medical Research

JF - Statistical Methods in Medical Research

SN - 0962-2802

IS - 5

ER -

ID: 18364116