Abstract
BackgroundRecent advances in the field of metabolic engineering have been expedited by the availability of genome sequences and metabolic modelling approaches. The complete sequencing of the C. reinhardtii genome has made this unicellular alga a good candidate for metabolic engineering studies; however, the annotation of the relevant genes has not been validated and the much-needed metabolic ORFeome is currently unavailable. We describe our efforts on the functional annotation of the ORF models released by the Joint Genome Institute (JGI), prediction of their subcellular localizations, and experimental verification of their structural annotation at the genome scale.ResultsWe assigned enzymatic functions to the translated JGI ORF models of C. reinhardtii by reciprocal BLAST searches of the putative proteome against the UniProt and AraCyc enzyme databases. The best match for each translated ORF was identified and the EC numbers were transferred onto the ORF models. Enzymatic functional assignment was extended to the paralogs of the ORFs by clustering ORFs using BLASTCLUST.In total, we assigned 911 enzymatic functions, including 886 EC numbers, to 1,427 transcripts. We further annotated the enzymatic ORFs by prediction of their subcellular localization. The majority of the ORFs are predicted to be compartmentalized in the cytosol and chloroplast. We verified the structure of the metabolism-related ORF models by reverse transcription-PCR of the functionally annotated ORFs. Following amplification and cloning, we carried out 454FLX and Sanger sequencing of the ORFs. Based on alignment of the 454FLX reads to the ORF predicted sequences, we obtained more than 90% coverage for more than 80% of the ORFs. In total, 1,087 ORF models were verified by 454 and Sanger sequencing methods. We obtained expression evidence for 98% of the metabolic ORFs in the algal cells grown under constant light in the presence of acetate.ConclusionsWe functionally annotated approximately 1,400 JGI predicted metabolic ORFs that can facilitate the reconstruction and refinement of a genome-scale metabolic network. The unveiling of the metabolic potential of this organism, along with structural verification of the relevant ORFs, facilitates the selection of metabolic engineering targets with applications in bioenergy and biopharmaceuticals. The ORF clones are a resource for downstream studies.
Highlights
Recent advances in the field of metabolic engineering have been expedited by the availability of genome sequences and metabolic modelling approaches
We previously reported the functional annotation of the gene products involved in central metabolism of C. reinhardtii using Joint Genome Institute (JGI) v3.0 gene models [19] in which we improved the existing functional and structural annotations of the ORF models
Enzymatic functional assignments to the C. reinhardtii ORFs were made by associating Enzyme Commission (EC) numbers through reciprocal BLAST searches against the UniProt enzyme database [20] (Figure 1A) supplemented with AraCyc database entries [21]
Summary
Recent advances in the field of metabolic engineering have been expedited by the availability of genome sequences and metabolic modelling approaches. To define genes and map their products to function, computational algorithms have been extensively applied to annotate the accumulated genomic data from many organisms including C. reinhartii[11,12] Most of these approaches are unable to predict the transcript structures precisely and accurately in a uniform manner due to 1) the incompleteness of the EST data, 2) the lack of comparative genomic information, in less widely studied species, and 3) the complexity of the rules governing transcription initiation, termination and splicing events. The JGI v4.0 predicted C. reinhardtii ORFeome remains for the most part unverified; the functional annotation and experimental structural verification of the encoded ORFs are urgently needed prior to use in functional studies including metabolic engineering experiments
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