Computer vision-based automated peak picking applied to protein NMR spectra

A detailed analysis of multidimensional NMR spectra of macromolecules requires the identification of individual resonances (peaks). This task can be tedious and time-consuming and often requires support by experienced users. Automated peak picking algorithms were introduced more than 25 years ago, b...

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Veröffentlicht in:Bioinformatics 2015-09, Vol.31 (18), p.2981-2988
Hauptverfasser: Klukowski, Piotr, Walczak, Michal J, Gonczarek, Adam, Boudet, Julien, Wider, Gerhard
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container_end_page 2988
container_issue 18
container_start_page 2981
container_title Bioinformatics
container_volume 31
creator Klukowski, Piotr
Walczak, Michal J
Gonczarek, Adam
Boudet, Julien
Wider, Gerhard
description A detailed analysis of multidimensional NMR spectra of macromolecules requires the identification of individual resonances (peaks). This task can be tedious and time-consuming and often requires support by experienced users. Automated peak picking algorithms were introduced more than 25 years ago, but there are still major deficiencies/flaws that often prevent complete and error free peak picking of biological macromolecule spectra. The major challenges of automated peak picking algorithms is both the distinction of artifacts from real peaks particularly from those with irregular shapes and also picking peaks in spectral regions with overlapping resonances which are very hard to resolve by existing computer algorithms. In both of these cases a visual inspection approach could be more effective than a 'blind' algorithm. We present a novel approach using computer vision (CV) methodology which could be better adapted to the problem of peak recognition. After suitable 'training' we successfully applied the CV algorithm to spectra of medium-sized soluble proteins up to molecular weights of 26 kDa and to a 130 kDa complex of a tetrameric membrane protein in detergent micelles. Our CV approach outperforms commonly used programs. With suitable training datasets the application of the presented method can be extended to automated peak picking in multidimensional spectra of nucleic acids or carbohydrates and adapted to solid-state NMR spectra. CV-Peak Picker is available upon request from the authors. gsw@mol.biol.ethz.ch; michal.walczak@mol.biol.ethz.ch; adam.gonczarek@pwr.edu.pl Supplementary data are available at Bioinformatics online.
doi_str_mv 10.1093/bioinformatics/btv318
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After suitable 'training' we successfully applied the CV algorithm to spectra of medium-sized soluble proteins up to molecular weights of 26 kDa and to a 130 kDa complex of a tetrameric membrane protein in detergent micelles. Our CV approach outperforms commonly used programs. With suitable training datasets the application of the presented method can be extended to automated peak picking in multidimensional spectra of nucleic acids or carbohydrates and adapted to solid-state NMR spectra. 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subjects Algorithms
Automation
Humans
Image Processing, Computer-Assisted - methods
Macromolecules
Nuclear magnetic resonance
Nuclear Magnetic Resonance, Biomolecular - methods
Pattern Recognition, Visual
Picking
Proteins
Proteins - chemistry
Spectra
Training
title Computer vision-based automated peak picking applied to protein NMR spectra
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