Development, Design, and Application of Efficient siRNAs Against Cotton Leaf Curl Virus-Betasatellite Complex to Mediate Resistance Against Cotton Leaf Curl Disease

开发、设计和应用高效siRNA对抗棉花叶卷曲病毒-β卫星复合物,以介导对棉花叶卷曲病的抗性

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Abstract

Cotton leaf curl disease (CLCuD), caused by the Cotton leaf curl virus, is one of the most irrepressible diseases in cotton due to high recombination in the virus. RNA interference (RNAi) is widely used as a biotechnological approach for sequence-specific gene silencing guided by small interfering RNAs (siRNAs) to generate resistance against viruses. The success of RNAi depends upon the fact that the target site of the designed siRNA must be conserved even if the genome undergoes recombination. Thus, the present study designs the most efficient siRNA against the conserved sites of the Cotton leaf curl Multan virus (CLCuMuV) and the Cotton leaf curl Multan betasatellite (CLCuMB). From an initial prediction of 9 and 7 siRNAs against CLCuMuV and CLCuMB, respectively, the final selection was made for 2 and 1 siRNA based on parameters such as no off-targets, good GC content, high validity score, and targeting coding region. The target sites of siRNA were observed to lie in the AC3 and an overlapping region of AC2-AC1 of CLCuMuV and βC1 of CLCuMB; all target sites showed a highly conserved nature in recombination analysis. Docking the designed siRNAs with the Argonaute-2 protein of Gossypium hirsutum showed stable binding. Finally, BLASTn of siRNA-target positions in genomes of other BGVs indicated the suitability of designed siRNAs against a broad range of BGVs. The designed siRNAs of the present study could help gain complete control over the virus, though experimental validation is highly required to suggest predicted siRNAs for CLCuD resistance. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s12088-024-01191-z.

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