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Wiley, The Plant Journal, 2(80), p. 367-381, 2014

DOI: 10.1111/tpj.12627

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The genome-scale metabolic network of Ectocarpus siliculosus (EctoGEM): a resource to study brown algal physiology and beyond.

This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Brown algae (stramenopiles) are key players in intertidal ecosystems and represent a source of biomass with several industrial applications. Ectocarpus siliculosus is a model to study the biology of these organisms. Its genome has been sequenced and a number of post-genomic tools have been implemented. Based on this knowledge, we report the reconstruction and analysis of a genome-scale metabolic network for E. siliculosus, EctoGEM (http://ectogem.irisa.fr/). This atlas of metabolic pathways consists of 1,866 reactions and 2,020 metabolites, and its construction was performed by means of an integrative computational approach for identifying metabolic pathways, gap filling, and manual refinement. The capability of the network to produce biomass was validated by flux balance analysis. EctoGEM enabled the reannotation of 56 genes within the E. siliculosus genome, and shed light on evolution of metabolic processes. For example, E. siliculosus has the potential to produce phenylalanine and tyrosine from prephenate and arogenate, but does not possess a phenylalanine hydroxylase as found in other stramenopiles. It also possesses the complete eukaryote molybdenum cofactor biosynthesis pathway, as well as a second molybdopterin synthase that was most likely acquired via horizontal gene transfer from cyanobacteria by a common ancestor of stramenopiles. EctoGEM represents an evolving community resource to gain deeper understanding of the biology of brown algae and the diversification of physiological processes. The integrative computational method applied for its reconstruction will be valuable to setup similar approaches for other organisms distant from biological benchmark models.This article is protected by copyright. All rights reserved.