Isolation of Streptomyces inhibiting multiple-phytopathogenic fungi and characterization of lucensomycin biosynthetic gene cluster
Soil microorganisms with diverse bioactive compounds such as Streptomyces are appreciated as valuable resources for the discovery of eco-friendly fungicides. This study isolated a novel Streptomyces from soil samples collected in the organic green tea fields in South Korea. The isolation process inv...
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Veröffentlicht in: | Scientific reports 2024-04, Vol.14 (1), p.7757-7757, Article 7757 |
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Sprache: | eng |
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Zusammenfassung: | Soil microorganisms with diverse bioactive compounds such as
Streptomyces
are appreciated as valuable resources for the discovery of eco-friendly fungicides. This study isolated a novel
Streptomyces
from soil samples collected in the organic green tea fields in South Korea. The isolation process involved antifungal activity screening around 2400 culture extracts, revealing a strain designated as
S. collinus
Inha504 with remarkable antifungal activity against diverse phytopathogenic fungi.
S. collinus
Inha504 not only inhibited seven phytopathogenic fungi including
Fusarium oxysporum
and
Aspergillus niger
in bioassays and but also showed a control effect against
F. oxysporum
infected red pepper, strawberry, and tomato in the in vivo pot test. Genome mining of
S. collinus
Inha504 revealed the presence of the biosynthetic gene cluster (BGC) in the chromosome encoding a polyene macrolide which is highly homologous to the lucensomycin (LCM), a compound known for effective in crop disease control. Through genetic confirmation and bioassays, the antifungal activity of
S. collinus
Inha504 was attributed to the presence of LCM BGC in the chromosome. These results could serve as an effective strategy to select novel
Streptomyces
strains with valuable biological activity through bioassay-based screening and identify biosynthetic gene clusters responsible for the metabolites using genome mining approach. |
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ISSN: | 2045-2322 2045-2322 |
DOI: | 10.1038/s41598-024-57888-0 |