Integrative study of Arabidopsis thaliana metabolomic and transcriptomic data with the interactive MarVis-Graph software

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KEGG release 64.0, downloaded on October 25th 2012 via the KEGG API.
Available at http://pmn.plantcyc.org/ARA/NEW-IMAGE?&object=1.14.99.33-RXN (accessed 14 May 2013).
Available at http://pmn.plantcyc.org/ARA/NEW-IMAGE?&object=1.14.99.33-RXN (accessed 14 May 2013).

Main article text

 

Introduction

Materials and Methods

Representing metabolic networks

  • M: experimental markers for metabolites (metabolite markers),

  • C: metabolites,

  • R: reactions,

  • E: enzymes,

  • H: genes,

  • T: experimental markers for transcripts (transcript markers),

  • P: pathways.

Generation of metabolic networks

Experimental markers

Metabolite markers

Transcript markers

Identification of sub-networks

Initial scoring

Refining the scoring

  • they are not measurable: specific metabolites may not be detected by mass spectrometry analysis. Furthermore, several metabolites exist only for a short period of time within a protein complex that catalyze more than one reaction step,

  • they are filtered out by statistical analysis: transcripts may be equally expressed throughout all experimental conditions if the corresponding products are required all the time. This is especially true for enzymes that are not rate-limiting. The amount of a metabolite might not change across the different conditions when it is metabolized immediately.

Calculating sub-networks

Ranking of sub-networks

Graph size

Graph diameter

Sum of weights

Evaluation of the ranking

Results and Discussion

Preprocessing of the datasets

Resulting sub-networks

  • restart-probability r = 0.8.

    The restart-probability of the RWR algorithm controls the amount of score that is distributed equally to the neighboring reactions, i.e., (1r)×score. The higher the restart-probability the more the algorithm emphasizes near neighbors in the network. With a low restart-probability, the score is distributed widely over the network and may connect usually disconnected sub-networks.

  • score-threshold t = 0.2.

    The score-threshold determines the reactions that are considered for sub-network construction after performing the RWR algorithm and directly depends on the weights of the experimental markers given on import. When using a restart-probability of 0.8, a score-threshold of 0.2 keeps only nodes that are high-scoring by themselves, have a very high-scoring neighbor, or are enclosed by several high-scoring neighbors (see Fig. F5).

  • hub metabolite-threshold c = 10.

    The hub metabolite-threshold was chosen based on expert knowledge: a threshold of 10 was just low enough to eliminate known hub metabolites, e.g., ATP, in the AraCyc database.

Allene-oxide cyclase sub-network

Jasmonic acid biosynthesis
Jasmonic acid derivatives and hormones
Poly-hydroxy fatty acids biosynthesis
Traumatin biosynthesis
Δ12-fatty acid dehydrogenase

Conclusion

Availability

Supplemental Information

Metabolic and transcriptomic datasets

The metabolic and transcriptomic datasets were preprocessed with MarVis-Filter to obtain p-values and to rank the markers of both datasets. The datasets were cut at 25 percent (metabolite markers) and 10 percent (transcript marker) respectively.

DOI: 10.7717/peerj.239/supp-1

A. thaliana specific metabolic network with experimental markers

Metabolic network model compiled from the AraCyc 10 database with the top 10 percent metabolite marker and top 25 percent transcript marker.

DOI: 10.7717/peerj.239/supp-2

Installer for the MarVis-Graph software presented in the paper

The installer needs to be extracted and the executed. The installer was tested on Ubuntu Linux 13.04 and Windows 7.

DOI: 10.7717/peerj.239/supp-3

Sub-networks identified by MarVis-Graph

All detected sub-networks were scored by size, diameter, and sum-of-weight. Additionally, the number of metabolite marker and transcript marker within the sub-networks are listed.

DOI: 10.7717/peerj.239/supp-4

Common scoring patterns in the reaction graph

Some common reaction-scoring patterns in the reaction graph (see section “Refining the scoring”) before (drawn in the nodes if non-zero) and after (below nodes) application of the random-walk-with-restart (RWR) algorithm. The parameters were set to r = 0.8, t = 0.2 (see section “Resulting sub-networks”). The resulting sub-networks are marked by a rectangle. a) A single reaction with a score of one, e.g., from the weight of one transcript marker, will not be enough to shift its neighbors above the threshold. b) Two reactions with a score of one are still not enough to close the gap. c) If one of the two reactions has additional evidence, e.g., from a metabolite marker with several annotations, the two reactions can shift the gapping reaction above threshold. d) If two reactions with a score of one enclose a reaction with a low score (e.g., partial weight of metabolite marker linked to several reactions), these reaction will constitute a sub-network.

DOI: 10.7717/peerj.239/supp-5

Additional Information and Declarations

Competing Interests

Ivo Feussner is an Academic Editor for PeerJ. We declare no further competing interests.

Author Contributions

Manuel Landesfeind conceived and designed the experiments, performed the experiments, analyzed the data, wrote the paper.

Alexander Kaever conceived and designed the experiments, performed the experiments, contributed reagents/materials/analysis tools, wrote the paper.

Kirstin Feussner and Ivo Feussner conceived and designed the experiments, performed the experiments, analyzed the data, contributed reagents/materials/analysis tools, wrote the paper.

Corinna Thurow and Christiane Gatz analyzed the data, contributed reagents/materials/analysis tools.

Peter Meinicke conceived and designed the experiments, performed the experiments, wrote the paper.

Funding

This work has partially been funded by the German Federal Ministry of Education and Research (BMBF 0315595A) and the German Research Council (DFG). Alexander Kaever and Manuel Landesfeind were supported by the Biomolecules program of the Göttingen Graduate School for Neurosciences, Biophysics, and Molecular Biosciences (GGNB). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

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