Identification of Magnaporthe oryzae candidate secretory effector proteins through standardizing the filtering process of the canonical parameters
Basavaraj Teli,
Birinchi Kumar Sarma
Abstract:The virulence of Magnaporthe oryzae largely hinges on its secretory effectors. Therefore, identification and thorough understanding of the effector functionality is crucial for unravelling the pathogenicity of the pathogen. In the present study, we employed a modified computational pipeline with deep machine learning techniques with an integration of Magnaporthe effector reference datasets (MOED) that predicted 434 M. oryzae candidate secretory effector proteins (MoCSEPs) from the genomic data. The reliability… Show more
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