FunGeneClusterS: Predicting fungal gene clusters from genome and transcriptome data

Tammi Camilla Vesth, Julian Brandl, Mikael Rørdam Andersen

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    Abstract

    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.
    Original languageEnglish
    JournalSynthetic and Systems Biotechnology
    Volume1
    Issue number2
    Pages (from-to)122-129
    Number of pages8
    ISSN2405-805x
    DOIs
    Publication statusPublished - 2016

    Bibliographical note

    Open Access funded by KeAi Communications Co. Under a Creative Commons license.

    Keywords

    • Secondary metabolism
    • Gene clusters
    • Transcriptomics
    • Genomics
    • Bioinformatics
    • Aspergillus niger
    • Aspergillus nidulans

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