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https://open.uns.ac.rs/handle/123456789/32763
Title: | Molecular Approaches for Detection of Trichoderma Green Mold Disease in Edible Mushroom Production | Authors: | Šašić Zorić, Ljiljana Janjušević Janjić, Ljiljana Đisalov Mandić, Mila Knežić, Teodora Vunduk, Jovana Milenković, Ivanka Gadjanski, Ivana |
Keywords: | edible mushrooms; green mold; in-field detection; molecular diagnostics; point-of-need devices; Trichoderma | Issue Date: | Feb-2023 | Publisher: | MDPI | Journal: | Biology | Abstract: | Due to the evident aggressive nature of green mold and the consequently huge economic damage it causes for producers of edible mushrooms, there is an urgent need for prevention and infection control measures, which should be based on the early detection of various Trichoderma spp. as green mold causative agents. The most promising current diagnostic tools are based on molecular methods, although additional optimization for real-time, in-field detection is still required. In the first part of this review, we briefly discuss cultivation-based methods and continue with the secondary metabolite-based methods. Furthermore, we present an overview of the commonly used molecular methods for Trichoderma species/strain detection. Additionally, we also comment on the potential of genomic approaches for green mold detection. In the last part, we discuss fast screening molecular methods for the early detection of Trichoderma infestation with the potential for in-field, point-of-need (PON) application, focusing on isothermal amplification methods. Finally, current challenges and future perspectives in Trichoderma diagnostics are summarized in the conclusions. | URI: | https://open.uns.ac.rs/handle/123456789/32763 | ISSN: | 2079-7737 | DOI: | 10.3390/biology12020299 |
Appears in Collections: | IBS Publikacije/Publications |
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