Cargando…

FunGeneClusterS: Predicting fungal gene clusters from genome and transcriptome data

INTRODUCTION: Secondary metabolites of fungi are receiving an increasing amount of interest due to their prolific bioactivities and the fact that fungal biosynthesis of secondary metabolites often occurs from co-regulated and co-located gene clusters. This makes the gene clusters attractive for synt...

Descripción completa

Detalles Bibliográficos
Autores principales: Vesth, Tammi C., Brandl, Julian, Andersen, Mikael Rørdam
Formato: Online Artículo Texto
Lenguaje:English
Publicado: KeAi Publishing 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5640693/
https://www.ncbi.nlm.nih.gov/pubmed/29062935
http://dx.doi.org/10.1016/j.synbio.2016.01.002
_version_ 1783271079516569600
author Vesth, Tammi C.
Brandl, Julian
Andersen, Mikael Rørdam
author_facet Vesth, Tammi C.
Brandl, Julian
Andersen, Mikael Rørdam
author_sort Vesth, Tammi C.
collection PubMed
description INTRODUCTION: Secondary metabolites of fungi are receiving an increasing amount of interest due to their prolific bioactivities and the fact that fungal biosynthesis of secondary metabolites often occurs from co-regulated and co-located gene clusters. This makes the gene clusters attractive for synthetic biology and industrial biotechnology applications. We have previously published a method for accurate prediction of clusters from genome and transcriptome data, which could also suggest cross-chemistry, however, this method was limited both in the number of parameters which could be adjusted as well as in user-friendliness. Furthermore, sensitivity to the transcriptome data required manual curation of the predictions. In the present work, we have aimed at improving these features. RESULTS: FunGeneClusterS is an improved implementation of our previous method with a graphical user interface for off- and on-line use. The new method adds options to adjust the size of the gene cluster(s) being sought as well as an option for the algorithm to be flexible with genes in the cluster which may not seem to be co-regulated with the remainder of the cluster. We have benchmarked the method using data from the well-studied Aspergillus nidulans and found that the method is an improvement over the previous one. In particular, it makes it possible to predict clusters with more than 10 genes more accurately, and allows identification of co-regulated gene clusters irrespective of the function of the genes. It also greatly reduces the need for manual curation of the prediction results. We furthermore applied the method to transcriptome data from A. niger. Using the identified best set of parameters, we were able to identify clusters for 31 out of 76 previously predicted secondary metabolite synthases/synthetases. Furthermore, we identified additional putative secondary metabolite gene clusters. In total, we predicted 432 co-transcribed gene clusters in A. niger (spanning 1.323 genes, 12% of the genome). Some of these had functions related to primary metabolism, e.g. we have identified a cluster for biosynthesis of biotin, as well as several for degradation of aromatic compounds. The data identifies that suggests that larger parts of the fungal genome than previously anticipated operates as gene clusters. This includes both primary and secondary metabolism as well as other cellular maintenance functions. CONCLUSION: We have developed FunGeneClusterS in a graphical implementation and made the method capable of adjustments to different datasets and target clusters. The method is versatile in that it can predict co-regulated clusters not limited to secondary metabolism. Our analysis of data has shown not only the validity of the method, but also strongly suggests that large parts of fungal primary metabolism and cellular functions are both co-regulated and co-located.
format Online
Article
Text
id pubmed-5640693
institution National Center for Biotechnology Information
language English
publishDate 2016
publisher KeAi Publishing
record_format MEDLINE/PubMed
spelling pubmed-56406932017-10-23 FunGeneClusterS: Predicting fungal gene clusters from genome and transcriptome data Vesth, Tammi C. Brandl, Julian Andersen, Mikael Rørdam Synth Syst Biotechnol Article INTRODUCTION: Secondary metabolites of fungi are receiving an increasing amount of interest due to their prolific bioactivities and the fact that fungal biosynthesis of secondary metabolites often occurs from co-regulated and co-located gene clusters. This makes the gene clusters attractive for synthetic biology and industrial biotechnology applications. We have previously published a method for accurate prediction of clusters from genome and transcriptome data, which could also suggest cross-chemistry, however, this method was limited both in the number of parameters which could be adjusted as well as in user-friendliness. Furthermore, sensitivity to the transcriptome data required manual curation of the predictions. In the present work, we have aimed at improving these features. RESULTS: FunGeneClusterS is an improved implementation of our previous method with a graphical user interface for off- and on-line use. The new method adds options to adjust the size of the gene cluster(s) being sought as well as an option for the algorithm to be flexible with genes in the cluster which may not seem to be co-regulated with the remainder of the cluster. We have benchmarked the method using data from the well-studied Aspergillus nidulans and found that the method is an improvement over the previous one. In particular, it makes it possible to predict clusters with more than 10 genes more accurately, and allows identification of co-regulated gene clusters irrespective of the function of the genes. It also greatly reduces the need for manual curation of the prediction results. We furthermore applied the method to transcriptome data from A. niger. Using the identified best set of parameters, we were able to identify clusters for 31 out of 76 previously predicted secondary metabolite synthases/synthetases. Furthermore, we identified additional putative secondary metabolite gene clusters. In total, we predicted 432 co-transcribed gene clusters in A. niger (spanning 1.323 genes, 12% of the genome). Some of these had functions related to primary metabolism, e.g. we have identified a cluster for biosynthesis of biotin, as well as several for degradation of aromatic compounds. The data identifies that suggests that larger parts of the fungal genome than previously anticipated operates as gene clusters. This includes both primary and secondary metabolism as well as other cellular maintenance functions. CONCLUSION: We have developed FunGeneClusterS in a graphical implementation and made the method capable of adjustments to different datasets and target clusters. The method is versatile in that it can predict co-regulated clusters not limited to secondary metabolism. Our analysis of data has shown not only the validity of the method, but also strongly suggests that large parts of fungal primary metabolism and cellular functions are both co-regulated and co-located. KeAi Publishing 2016-02-23 /pmc/articles/PMC5640693/ /pubmed/29062935 http://dx.doi.org/10.1016/j.synbio.2016.01.002 Text en © 2016 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Article
Vesth, Tammi C.
Brandl, Julian
Andersen, Mikael Rørdam
FunGeneClusterS: Predicting fungal gene clusters from genome and transcriptome data
title FunGeneClusterS: Predicting fungal gene clusters from genome and transcriptome data
title_full FunGeneClusterS: Predicting fungal gene clusters from genome and transcriptome data
title_fullStr FunGeneClusterS: Predicting fungal gene clusters from genome and transcriptome data
title_full_unstemmed FunGeneClusterS: Predicting fungal gene clusters from genome and transcriptome data
title_short FunGeneClusterS: Predicting fungal gene clusters from genome and transcriptome data
title_sort fungeneclusters: predicting fungal gene clusters from genome and transcriptome data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5640693/
https://www.ncbi.nlm.nih.gov/pubmed/29062935
http://dx.doi.org/10.1016/j.synbio.2016.01.002
work_keys_str_mv AT vesthtammic fungeneclusterspredictingfungalgeneclustersfromgenomeandtranscriptomedata
AT brandljulian fungeneclusterspredictingfungalgeneclustersfromgenomeandtranscriptomedata
AT andersenmikaelrørdam fungeneclusterspredictingfungalgeneclustersfromgenomeandtranscriptomedata