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Co-occurrence Locus and Orthologous Cluster Identifier

Project description

CLOCI


PURPOSE

The most common gene cluster detection algorithms focus on canonical “core” biosynthetic functions many gene clusters encode, while overlooking uncommon or unknown cluster classes. These overlooked clusters are a potential source of novel natural products and comprise an untold portion of overall gene cluster repertoires. Unbiased, function-agnostic detection algorithms therefore provide an opportunity to reveal novel classes of gene clusters and more broadly define genome organization. CLOCI (Co-occurrence Locus and Orthologous Cluster Identifier) is an algorithm that identifies gene clusters using multiple proxies of selection for coordinated gene evolution. In the process, CLOCI circumscribes loci into homologous locus groups, which is an extension of orthogroups to the locus-level. Our approach generalizes gene cluster detection and gene cluster family circumscription, improves detection of multiple known functional classes, and unveils noncanonical gene clusters. CLOCI is suitable for genome-enabled specialized metabolite mining, and presents an easily tunable approach for delineating gene cluster families and homologous loci.


USAGE

Please see the wiki for installation and usage instructions.


CITING

Zachary Konkel, Laura Kubatko, Jason C Slot, CLOCI: unveiling cryptic fungal gene clusters with generalized detection, Nucleic Acids Research, 2024;, gkae625, https://doi.org/10.1093/nar/gkae625

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